288 Matching Annotations
  1. Jul 2022
    1. Reviewer #1 (Public Review):

      As mentioned, this paper sought to estimate the impact of flight bans on the importation of major SARS-CoV-2 variants, especially Alpha and Delta, which caused large outbreaks in The Netherlands. The analysis also investigates intranational spread, finding (as expected) that early importations into denser source regions facilitated spread to rural regions. Finally, the authors analyze variant growth rates in different age groups, concluding that although Delta spread especially well in younger adults, displacement of Alpha by Delta was comparably fast in all age groups.

      The work is especially strong because of the systematic collection of sequences in The Netherlands over this time period, coupled with rich genomic surveillance in neighboring regions. It demonstrates conclusively that travel bans were too late to slow the rate of spread of multiple variants, including those that did not ultimately take off (Beta and Gamma), and that ground importation from other European countries continued through periods of varying restrictions. This is important evidence that flight bans, even in populations with good surveillance, are basically useless.

      The major limitation of this work is that the sequences from The Netherlands and other countries are of course not "random." Biases in sequencing (relative to the underlying distribution of infections) could distort perceived flows between regions. This has not been fully quantified, but at the same time, this paper is not trying to make strong quantitative claims about the precise rates of migration. The sequencing program in The Netherlands during this period was one of the best in the world.

      Overall, although the results here are not surprising, this paper constitutes a solid contribution to our knowledge of the spread of new variants to different populations.

    1. Reviewer #1 (Public Review):

      In "c-Myc plays a key role in IFNγ-induced persistence of Chlamydia trachomatis", Vollmuth et al. investigate how IFNγ controls Chlamydia trachomatis development and persistence via regulation of the transcription c-Myc following infection of human epithelial cells and human fallopian tube organoids. The authors show that: IFNγ induces the downregulation of c-Myc, a key regulator of host cell metabolism, in a STAT1-dependent manner; and that constitutive expression of c-Myc rescues Chlamydia trachomatis from IFNγ-induced persistence. The authors then investigate the relationship between IFNγ-mediated c-Myc repression and IFNγ-mediated tryptophan depletion on Chlamydia trachomatis infection, showing that Chlamydia trachomatis development necessitates both exogenous tryptophan/indole and stabilisation of c-Myc to overcome IFNγ-mediated persistence. The authors show that supplementation with tryptophan stabilises c-Myc, but conversely, that c-Myc exerts only a limited effect on tryptophan levels in IFNγ-treated Chlamydia trachomatis-infected host cells. Together, this suggested that c-Myc plays a role downstream of tryptophan-/indole mediated rescue of Chlamydia trachomatis development in IFNγ-treated cells. To further characterise how c-Myc achieves this, the authors perform metabolomic profiling in IFNγ-treated Chlamydia trachomatis-infected cells with or without c-Myc-induced rescue, identifying c-Myc dependent increases in TCA cycle intermediates and nucleoside metabolism as potential mediators. Finally, the authors show that IFNγ-mediated suppression of Chlamydia trachomatis development can be overcome in the absence of both constitutive c-Myc expression or tryptophan supplementation via supplementation of Chlamydia trachomatis-infected IFNγ-treated cells with TCA cycle intermediates or nucleosides.

      Collectively, this work represents a promising study delineating the pathway by which IFNγ suppresses Chlamydia development during epithelial cell infection, and provides convincing evidence for involvement of the host transcription factor c-Myc. Although promising, the work does suffer from some limitations and concerns. These include an over-reliance at times on Western blots to assess Chlamydia proliferation (most notably in Figure 4 and Figure S4); these results would greatly benefit from additional microscopy-based analysis of Chlamydia proliferation, which the authors use to great effect in Figures 1-3. Additionally, the model linking IFNγ-induced tryptophan limitation to destabilisation of the c-Myc transcription factor via PI3K-GSK3beta is not fully supported by the current evidence. In particular, the authors suggest that c-Myc is destabilised by a lack of tryptophan in IFNγ-treated host epithelial cells during Chlamydia trachomatis infection via a pathway involving first dephosphorylation of GSK3beta that, in turn, results in phosphorylation of c-Myc on threonine 58, and thus ubiquitination and proteasomal degradation. However, the authors have not actually provided direct evidence of either increased phosphorylation of threonine 58 on c-Myc or increased proteasomal degradation of c-Myc as a result of decreased levels of tryptophan upon IFNγ treatment. Rather, the authors themselves provide evidence potentially contradicting such a model, showing that the phosphorylation of threonine 58 is unchanged upon IFNγ treatment. Despite the current limitations, the paper nonetheless shows promise and should be of broad interest.

    1. Reviewer #1 (Public Review):

      In the manuscript "Diversity of funnel plasmodesmata in angiosperms: the impact of geometry on plasmodesmal resistance", the authors show using electron microscopy that the recently reported funnel shaped plasmodesmata (PDs) occur in the phloem unloading zone of a wide range of flowering plants. They also compute flow velocity profiles on detailed PD shapes extracted using electron tomography for four different species. To better understand the implications of the funnel geometry, the authors then apply a simple model. Together, these results illustrate how funnel PDs facilitate phloem unloading, an important aspect of plant growth, and provide insight into why this happens.

      Funnel PDs were first reported a few years ago by Ross-Elliot et al (2017) in Arabidopsis thaliana. The authors have adapted sample preparation protocols to become able to test how wide spread this specific PD geometry is. Based on their sample, it appears that funnel PDs occur in many if not all angiosperms. This implies that they are very relevant for the (growth) performance of most of our crop species. They have also extracted very detailed surfaces of funnel PDs in four different species using electron tomography and computed fluid flow velocities on these templates. These provide the community with a resource for assessing the worth of simple model geometries by computing the same profiles on those.

      The manuscript, specifically including the modelling work, clearly adds to the growing awareness that the shape of plasmodesmata matters. This also implies that the details of plasmodesmata models matter, particularly when it comes to quantitative conclusions. This presents a challenge to the whole field: calculations on realistic PD shapes, as presented in figure 3, require a data quality that is often not feasible for sufficient numbers of PDs to capture the relevant variability among PDs within a single interface. Moreover, such complex models are not necessarily the most insightful. So, for an optimal connection with experiments, PD models should be as simple as possible, but no simpler.

      In their modelling choices, however, I think the authors have made two simplifications that could have a large impact on their results. This holds even stronger for the manuscript in its current form, as the presentation of the results is mostly in terms of a few loose numbers, without any handles to assess how this depends on "hidden" model parameters like cell wall thickness. The results are described in a strongly quantitative way, whereas the numbers quoted are contingent on the parameters used and little effort is made to explore these dependencies or communicate them to the reader.

      First, the authors opt for the simplest possible geometry (with desmotubule) that allows for gradual widening: they represent the outer lining of the channel as part of a cone. As the narrowest part of the channel most strongly reduces the flows through the channel, however, the details of the narrow region will have a strong impact on results and conclusions. One of the cited modelling papers, Deinum et al 2019, predicts based on their results with a multiple cylinder model, that the difference between immediate widening (as here) and widening after an initial straight ("neck") section could be substantial and have a significant impact on conclusions. For example, the O. sativa PD in figure 3B appears to have an approximately straight region of say 1/4 of its length, meaning that resistances could be reduced by at most 75% rather than the 98% and 94% mentioned in the discussion based on the geometry without neck. The flow velocity distributions calculated on the reconstructed PDs also seem to support this slightly more complex geometry.

      Second, the models that are used for both diffusion and flow do not include the effects of particle size and particle behaviour in a narrow confinement. For the narrow end of PDs or the straight cylindrical geometries used as reference, this has severe impact (see Liesche and Schultz 2013, Deinum et al 2019 (both diffusive transport only) and Dolger et al 2014 (also including advection)). Including hindrance effects for diffusion and flow affects the scaling of the processes with local diameter, particularly for small diameters, and might make the quantitative results for diffusion and flow more similar, so without them, the suggestion that the model "supports the view that rapid phloem unloading in root tips proceeds mainly as bulk flow" is at best preliminary. On the other hand, including these hindrance effects, will make the "performance" of funnel PDs (or PD sections) relative to straight channels even more spectacular.

      In summary, the model of funnel PDs presented here can best be viewed as a first investigation of the impact of the conical part of a funnel PD on the resistance of that specific part, rather than a definitive model of funnel PDs themselves. As such, the model is a valuable contribution to the field.

      Even without improving the funnel PD model, the manuscript could become more insightful and have more impact if the current model with a few more calculations and some changes in presentation. I include only those could aid the reader in interpreting the results in the preprint.

      When it comes to experimental determination of the model parameters, the focus on opening angle may be suboptimal. As actual funnel PDs are far from straight cone mantles, the precise determination of the opening angle will be terribly hard. What matters most for the model outcome, however, is the diameter of the narrow part and the length of the narrow part/how long it takes to widen to a (narrowest diameter dependent) critical diameter beyond which the resistance can be neglected relative to the narrow part. With that in mind, results could be interpreted more generally with respect to wall thickness by converting opening angle to inlet aperture/sleeve width. Computing such values, moreover, can make the same data "feel" different: For example, compare: (from preprint) "As a consequence, conical channels of 4 and 2 nm minimum sleeve width showed the same diffusive resistance as a cylindrical channel with an 8 nm sleeve at angles θ of only 1.5{degree sign} and 2.8{degree sign}, respectively" with (my calculation) {{[...] by increasing sleeve with from 4 to 14.5 nm or from 2 to 19.6 nm over the length of the PD}}. Importantly, the former statement depends on wall thickness, but the latter does not.

      I find the strong focus on numerical values in the results and discussion sections misleading. It feels very exact, but in fact, these results are contingent on parameter choices (very importantly, wall thickness/PD length) and the simplified model used. Such numbers should never be quoted without the full context, but it is likely that that would happen anyway.

      Finally, the modelling part is presented as an important aspect of the paper. It is, therefore, sad that the discussion of the model choices made is very minimal. There is no comparison of model choices between this model and other published PD models. While a relatively simple model compared to others could be justified as a starting point, the authors should at least try to estimate the impact of these difference on their results.

    1. Reviewer #1 (Public Review):

      In the present study, the authors investigate mechanisms of tumor cell resistance to T cell-mediated killing. They show that, in the presence of tumor-specific T cells, tumor cells form multi-cellular structures that protect the inner core of tumor cells via the prevention of penetration by lytic molecules. When these T cells are absent or removed, the tumor cells return to their single cells. Although neoantigen 'loss' has been shown as an immunotherapy escape mechanism, this study also shows in robust fashion that relapsed tumor cells share most neoantigens with their primary tumors. Overall this is a very thorough and rigorous study and the data firmly support the conclusions.

      Strengths<br /> 1. Thorough and rigorous investigation of the hypotheses.<br /> 2. Data firmly support the conclusions.<br /> 3. Possible new mechanism of resistance to T cell-mediated tumor killing.

      Weaknesses<br /> 1. Relevance to current immunotherapy treatment regimens is weak.<br /> 2. Figure legends overall need work.

    1. Reviewer #1 (Public Review):

      In this work, the authors sought to develop a better predictor of prognosis/survival for pancreatic cancer patients. They did this by beginning with a long list of measured quantities in patients, and feeding these features into a combinatorial family of many different multi-part machine learning models built from classic ML tooling in order by studying agreement between these models to identify a small subset of features (called the AIDPS) that could serve as a 9-gene biomarker with companion ML.

      The major strengths of this paper are that it is clear about its goal in potential clinical impact, it does identify a biomarker set that shows improved accuracy for predicting prognosis in a way that may be useful for future stratification. The paper also carries out various follow-up analyses to characterize possible implications for the AIDPS signal in different biological, immunological, and clinical terms.

      The major weaknesses of the paper:

      The authors do not make very clear why this giant combinatorial family of ML models was generated. It's clear by implication that this is an approach to the challenge of feature selection. But if the problem here is feature selection, why did the authors take this approach to feature selection? Is it known that this should be a particularly effective one? Is it a particularly easy one to implement (it does not seem to be from the outside)? On the one hand, this isn't a machine learning paper, so it might feel not required to prove that a different method of feature selection couldn't as easily identify the genes that are important for this predictive problem, but the truth is that if this is not a machine learning paper, then in a sense the important thing is that the 9 genes in the AIDPS have been identified, and now what we need is to show this makes for a better predictor and try to focus on the interpretation of these features and their relationships. If that is the case, this paper takes a sidelong approach to that task, because of the identities of the genes or their success as features in a variety of ML approaches that assume those features should be focused (such as by using neural network architectures designed for greater interpretability)

      The impact on the field of this work is currently unclear. The combinatorial ensemble of ML models makes for an unwieldy methodology that is difficult to interpret or duplicate, so if this is a methods paper focused on how to do better feature selection, it has not made that case well by not comparing to other methods of feature selection. On the other hand, if this paper is about clinical implications and the origin of the AIDPS gene set is beside the point, then staying mired in the original ML methodology used to select the features once we have found a good set of features to predict from and can throw other methods at those features and learn more by doing so seems the wrong path also.

    1. Reviewer #1 (Public Review):

      The present study by Zander et al. aims at improving our understanding of CD4+ T cell heterogeneity in response to chronic viral infections. The authors utilize the murine LCMV c13 infection model and perform single cell RNA seq analysis on day 10 post infection to identify multiple, previously unappreciated, T cell subsets. The authors then go on and verify these analyses using multi-color flow cytometry before comparing the transcriptome of CD4 T cells from chronic infection to a previously generated data set of CD4 T cells obtained from acutely-resolved LCMV infection.

      The analyses are very well done and provide some interesting novel insights. In particular, the comparison of CD4 T cell subsets across acute and chronic infections is very exciting as they provide a very valuable platform that can answer a long-standing question: do CD4 T cells in chronic infection undergo exhaustion similar to CD8 T cells. While this has been proposed for an extended period, this new dataset by Zander et al. can provide some novel insights by comparing individual cell subsets cross-infection. The manuscript would, however, benefit from a more extensive analysis and focus on this interesting point.

      On that note, the authors should take advantage of more accurate and present gene datasets to compare the 'dysfunctional' state of CD4 T cells in chronic infection vs acute infection. Also, a different illustration to demonstrate the module score analyses would be more intuitive.

      Also, at multiple sections in the manuscript, the authors are missing the accurate citations as they are still mentioned as '(Ref)'.

      Nevertheless, this study does not require major revisions.

    1. Reviewer #1 (Public Review):

      Amy L. Roberts et al. Investigated the health outcomes impacts of age acquired skewing of X-chromosome inactivation (XCI) ratios occurring in blood cells in 1575 females comprised of 423 monozygotic twins pairs, 257 dizygotic twins pairs and 215 singleton. They demonstrate: (i) associating between skewing and age; (ii) skewing was independent of other biological markers of aging such as smoking, telomere length, or DNAm Grim Age acceleration and frailty index (iii). (iv) that skewing was associated with a myeloid bias with an increase monocyte to lymphocyte and neutrophil to lymphocyte ratio; (v)a strong negative association with IL-10 level and skewing; (vi) skewing was associated with increase cardiovascular risk; and that (vi) skewing was predictive of cancer.

      Age-associated XCI skewing has been described 25 years ago, yet this phenomenon remains enigmatic in terms of etiology and consequences. The study demonstrates the age-effect on skewing (which is known), but the evolution over time in a sub cohort of subject that were re-sampled. The originality of this study resides in the demonstration that age-associated skewing is associated with health outcomes. The particular strength of the study is the twin component (always aged-matched) and the iterative re-sampling of subgroup of the population study. Despite starting with a large cohort of 1552 individuals, most of the critical observations are made on smaller subsets of subjects: for ASCV risk score the total of subject is 231; IL-10 n=27. Fortunately, for the ASCV score this observation is re-enforced by the twin pairs comparison (N=34). The association with cancer risk is performed on a larger cohort (1417) and controlled for age. However, despite increased risk of Cardiovascular event and cancer, there is no significant association with overall mortality. This indicate that the effect of age-associated skewing is present but modest. The observation that there is a myeloid bias, which is associated with aging, that is more pronounced in subjects with skewing is interesting.<br /> One of the major unknown of this study is how much of the effect attributed to XCI skewing is in fact related to true clonal hematopoiesis or CHIP that is associated with both outcomes described in this study and will mascarade by changes in XCI.

    1. Review #1 Public Review

      Panda and co-workers analyzed RS fMRI recordings from healthy patients and from two types of comma: UWS and MCS. They characterized the time-resolved functional connectivity in terms of metastability (time-variance of the Kuramoto order parameter), spatiotemporal patterns via non-negative tensor factorization, and its relationship to the eigenmodes of structural connectivity. Finding greater metastability and non-stationarity of the DMN network in healthy MCS patients, than in UWS patients, they found that the best discriminators to classify the different DOCs are the number of excursions (non-stability) from the DMN, salience and FPN networks extracted by the NNTF analysis. Interestingly, the data-driven NNTF yielded a novel sub-network comprising the FPN and some subcortical structures. The excursions and dwell times from this FPN sub-network showed to be significantly lower in the UWS patients than in MCS. Surrogate data testing assures that the different methods and fits are effectively expressing the functional connectivity matrices measured.

      Overall, I think that the results are correct and they advance in the characterization and understanding of the brain under DOC. However, some improvements can be made in the way the results, and the rationale behind them, are presented.

      While reading the Results section, it is easy to have the impression of a disconnected set of analyses that just happened to be together. In particular, the section about the structural eigenmodes and their relationship with the time-resolved FC seems to have little connection with the rest of the work, except for confirming (yet again) that DOC patients have a less dynamic FC. More elaboration about the relevance of these results, and what they say about DOC (that other dynamical FC analyses don't), is needed both in the introduction and discussion. Although a clear explanation is given in the introduction, the bottom line seems to be yet another measure of metastability. Perhaps, a better explanation of what underlies the 'modulation strength of eigenmodes expression' will be helpful for distinguishing this analysis from others. How novel is the connection that is being done with the structural connectivity and why is this important? Moreover, the eigenmodes analysis has little-to-none importance in the discrimination of patients done at the end; thus, its place within the big picture is hard to evaluate.

      Something that I find counter-intuitive and that may confuse some readers, is the (apparent) contradiction between the diminished metastability in the DOC conditions and the reduced dwell times (Figure S1; also "the inability to sequentially dwell for prolonged times in a different set of eigenmodes", as stated in the Discussion). Fewer excursions and shorter dwell times can only mean that some networks are just less visited and maybe this would be enough to distinguish between conditions. Further explaining this will help to understand better the implications of the work.

      Finally, some comments about the connection(s) of these analyses with the commonly used FCD analysis (based on sliding windows of pair-wise correlations) will be useful, to put better this work into the big picture of time evolution of the functional connectivity.

    1. Reviewer #1 (Public Review):

      This manuscript investigates a role for YAP in replication. Previous work from this group has shown that Yap knock-down leads to accelerated S-phase and an abnormal progression of DNA replication in the frog eye. Here they extend this to show that YAP depletion accelerates S-phase and DNA replication in the frog embryo, and that YAP binds a DNA replication regulator called Rif1. Combing assays suggest that YAP acts on origin firing. This is an interesting new aspect of YAP function. I am not an expert on DNA replication, however, I feel that the manuscript would have been improved if more mechanistic insight was gained into how Rif1 and YAP interact, and how that interaction influences replication timing.

      The title of the manuscript is "A non-transcriptional function of YAP orchestrates the DNA replication program". It is not clear that YAP "orchestrates" DNA replication - for this to be true, it would have to be signal responsive. Since the authors did not reveal any links to YAP activity (such as YAP phosphorylation or nuclear/cytoplasmic distribution) it is not "orchestrating" DNA replication.

      Figure 1 shows that YAP is recruited onto chromatin after MCM2 and MCM7 and at the same time as PCNA and the start of DNA synthesis. Addition of geminin, an inhibitor of Cdt and MCM loading inhibits YAP loading onto chromatin. YAP immuno depletion leads to premature DNA synthesis or replication. Fig 1 B is quite confusing- the labeling in Figure 1B is likely incorrect.

      Figure 2 investigates if YAP depletion affects origin firing or fork speed, using DNA combing. Fig 2A shows that there is increased activated replication origins and decreased distance between origins. The authors say that the increase of fork density is more pronounced than the decreased distance, suggesting YAP is regulating the activation of origins. The number of replicates is low. This is especially true for the conclusion that eye length is unaltered -it appears that there is a subset of eye length that is increased in 2F, which might reach significance if triplicates were performed.

      The authors conducted AP-MS on egg extracts to identify proteins that co-IP with YAP. One of many proteins identified was RIF1 Figure 3 shows a co-IP with RIF1 and YAP. It is a very weak co-IP.

      Figure 4 shows that YAP levels increase during development and that depletion of YAP or RIF1 leads to increased cell division. The authors use Trim-away to deplete YAP and RIF1 and find that depletion of either leads to an increased number of small cells. The YAP depletion shown in Fig 4B is clear, as is the increased number of small cells in YAP depletion or RIF1 depletion.

      Figure 4 supplement 1 is arguing that trim away and morpholino combined are more effective. Quantitation of the western blots in panel A is needed for this to be convincing.

      Figure 5 shows that RIF1 is expressed in the eye in RSC and that loss of RIF1 leads to a small eye. Panel B shows that by western blot analysis RIF1 antibody is specific. However, antibodies can have very different abilities in western vs staining. The RIF1 and YAP antibodies should be validated in staining. Also, the staining in Fig5C is at low resolution for both YAP and RIF1 and the identification of foci is unclear.

      It is difficult to see the points the authors wish to communicate in Figure 6. There is almost no Edu in the YAP-MO, which questions the ability to recognize the different patterns in this region of the eye.

    1. Reviewer #1 (Public Review):

      The authors present a large body of data in a silkworm model with primary high plasma protein concentration, characterizing the model with altered proportion of differentiating blood cells, possibly delayed differentiation, increased phagocytosis capacity, transiently increased autophagy and apoptosis, with evidence of increased oxidative stress. However, some of the outcomes are not specific to a type of hematopoietic cell, others are an overinterpretation of results, and no mechanistic studies are presented, making for descriptive and somewhat incomplete evaluation. Finally, the manuscript is written in a difficult to understand manner, without clearly stated reasoning for why some experiments were performed (e.g. why was an endocrine agent used to reverse effects of a high protein model?) and the conclusions are extrapolations of insufficiently rigorous assessments to warrant those conclusions. Specific comments are listed below:

      1) Figure 1B reveals that there are more cells early (48 and 96 hours) and fewer cells late (144 and 192 hours) in AM. It is unclear at what time point is the most relevant time point and whether fewer cells late suggests that more cells are dying or there is a differentiation block. The authors suggest in Figure 1C that there is a larger proportion of granulocytes late in AM relative to CK. What would be more helpful is to clarify which cell population is more or less prone to cell death and whether these patterns are a consequence of increased cell death in non-granulocyte lineage or increased differentiation toward granulocytes.

      2) Although Figure 1D-1F demonstrate some significant changes, the main interpretable result in a decrease in Gcm expression in AM. However, this data is not specific to any lineage, taking all hemocytes together and clouding the specificity of the result. Also, Figure 1G suggests that Gcm expression is equivalent in CK and AM controls, in contrast to Figure 1F results, and Gcm loss by RNAi does not appear to impact the proportion of cells differently in AM vs CK. This raises the possibility the Gcm is not an appropriate marker to measure mechanism in the current system. The authors allude to Gcm involvement in plasma cell differentiation in the Discussion section (page 30) but the relevance to increased granulocytes is missing. It may be that the authors are suggesting that decreased plasma cell differentiation leads to increased proportion of granulocytes but this is not clear from the current manuscript and the data would be indirect evidence at best.

      3) Figure 2 presents data measuring DNA replication. Although Figure 2B suggests that there is a delay in DNA replication in AM vs CK, the statistics are not included and there is no evidence whether if maintained longer, whether DNA replication returns to baseline levels. An alternative interpretative hypothesis would be that DNA replication is increased in later time points. Because there is no specific lineage of hemocytes and they are all increasing and decreasing at different time points, this finding is difficult to interpret. Furthermore, the Edu differences appear to possibly be driven by changes in granulocytes (Figure 2C) but this is not clear from the data presentation and no specific cell lineage effect is visible in Figure 2A. Figure 2D demonstrates evaluation of cell cycle from the 96-hour time point but it is unclear why this was selected and whether the results would be comparable if a different time point was selected. Finally Figure 2G-2H is presented without a clear explanation what this adds to the manuscript.

      4) Figure 3 aims to evaluate signaling via the JAK/STAT pathway. However, it is unclear which STAT is relevant in the silkworm and whether changes in phosphorylation, which is typically how signaling occurs was evaluated. STAT mRNA expression and total STAT protein concentration are not sufficient to demonstrate signaling changes along this pathway.

      5) Figure 4 presents data demonstrating increased phagocytosis in AM. However, as already noted in Figure 1, AM results in more granulocytes which have a strong phagocytic function among blood cells. Are the authors evaluating the specific function of granulocytes or all hemocytes together? Are there more particles per cell or more cells with particles? Without focusing the analysis on granulocytes specifically, the conclusion that AM has a higher phagocytic function is an overstatement.

      6) Figure 6 demonstrates increased apoptosis in blood cells, especially granulocytes, but Figure 1 demonstrates more granulocytes. How do the authors reconcile this conundrum?

      7) Figure 8 demonstrates use of 20E but the purpose of this approach is not made clear. Furthermore, the treatment is applied at 24 hours after modeling and presented in a way that cannot be directly compared with data from treatment applied at time 0. In addition, no CM treated with 20E or JAK inhibitor A490 is presented for comparison. It is altogether unclear the mechanism by which several of the presented parameters are restored. Again, signaling via JAK/STAT cannot be assessed on the basis of mRNA expression of STAT. Finally, JAK inhibitor A490 does not appear to have a cell specific effect in Figure 8I, confounding the results in Figure 8H.

    1. Reviewer #1 (Public Review):

      The study addresses the question of what happens in each cortical layer of the severed limb's primary somatosensory cortical representation when the spinal cord is transected. The assessment is made with 32 iridium wire electrodes in a single vertical array at 50um intervals in the hind-limb area. Spontaneous activity is monitored under urethane anaesthesia before and after transection. Responses to electrical stimulation of the forepaw are assessed by field responses.

      The study finds that electrically stimulating the forelimb evokes responses in the hindlimb area almost immediately after transection where none existed before. This is a good demonstration of an effect that has been known for some time. A large amount of the literature on cortical layer specific effects of sensory deprivation is missing as are references to the seminal studies of Calford and Tweedale. In particular one might consult Calford and Tweedale 1988, 1991 in flying fox (bats) and 1991 in macaque monkey cortex. Jacob et al 2017 regarding layer specific effects of sensory deprivation may also be of particular relevance given the changes in layer 5 versus layer 2/3 responses. The incremental advance in knowledge comes from a description of the effects by cortical layer. The infra granular layer responses increase in size and, perhaps counterintuitively, increase in latency while the supragranular layers show changes in spontaneous activity.

      In general, the value of the research is lessened by using electrical rather than natural stimulation, thereby rendering the stimuli saturating, hyper-synchronous and ultimately unrealistic. Electrical stimuli will synchronously stimulate all afferents including myelinated and unmyelinated fibres synchronously, a situation that normally does not arise unless you electrocute yourself, which is obviously very painful. Any surround inhibition that might have been present will be overridden by this level of wide field high intensity stimulation. It would have been useful to know how individual digit receptive fields appeared in hindlimb cortex for example and whether they maintained some level of somatotopy. Tactile stimuli will be more relevant to the human SCI that I believe the authors are trying to understand.

      It is also disappointing that the electrodes were not implanted chronically before the recording session as 40 minutes is unlikely to give sufficient time for recovery of the cortex to insertion of the electrodes. The lower levels of responsively in superficial layers in particular are probably due to spreading depression brought about by the 32 iridium wire electrode. A different result might have resulted from implanting the electrode chronically and starting recording several weeks after the damage and inflammation had abated. It is also not clear that the observations on gamma in the urethane anaesthetised state are relatable to the situation in awake animals where gamma waves usually occur.

      I wonder whether the conceptualisation of the study as a sensory deprivation is entirely accurate. The spinal cord transection would presumably have cut axons from cortical cells in the cortico-spinal tract. What would the effect be on these neurones in the cortex? Since they consist some of the larger cortical neurones they may contribute more to the field potentials being analysed than some of the other cells.

    1. Reviewer #1 (Public Review):

      This work attempts to provide a novel understanding of the neural computations driving bottom-up attention. The Reynolds & Heeger normalization model of attention (NMA) can explain a variety of physiological and psychophysical findings in the attention literature but is agnostic as to the role of awareness. This paper provides findings to fill this gap with a series of novel experiments that ultimately conclude that bottom-up attention with awareness is driven by a bigger attentional scope (attention field size) whereas without awareness leads to a smaller attentional scope consonant with changes in the attention field parameter of the NMA. Ultimately, the authors suggest an awareness dependent constraint is necessary in the NMA.

      Strengths:

      1. It addresses an important gap in our understanding of how visual attention and visual awareness interact.

      2. It draws and tests predictions from a well-established computational theory that has reconciled a variety of attentional effects on physiological and psychophysical responses. By anchoring its predictions on extant theory, the study has a principled foundation from which it can decipher the computations underlying awareness.

      Weaknesses:

      1. The construct of awareness should be defined and operationalized. It is clear that the study operationalizes awareness as the visibility of a masked cue. However, this only becomes apparent during the Results section.

      2. It is stated on pg. 3 that "it's unclear whether there is a common neural computation governing bottom-up attention-triggered improvement in visual performance with and without awareness." This point should be further elaborated. Specifically, in the current literature, what is clear and what remains unclear about the computations underlying awareness and attention? The known computational underpinnings of awareness and how the current study can add to what is known should be discussed.

      3. The behavioral protocols conflate the effects of cue and mask. In both Distribution and Normalization experiments, cue location and mask contrast (high contrast in the "invisible" condition and low contrast in the "visible" condition) are concurrently manipulated. Consequently, one cannot isolate the effect of the cue from the impact of the mask on task performance.<br /> Although a manipulation of cue contrast was performed during the Distribution experiments, it does not completely rule out interactions between the cue and mask. With low luminance cues, cueing effect amplitudes decreased while attentional spread (i.e., scope) appeared to remain unchanged (Figure 2A vs 2D). This pattern suggests separate influences of the cue and mask, but it remains impossible to determine how the lower visibility of the cue (and thus the lower awareness thereof) affects the distribution of attentional effects and whether cue visibility interacts with or is independent from masking stimuli effects.<br /> A control experiment should be provided to ensure that attention is driving the reported behavioral effects.

      4. The authors suggest an awareness dependent constraint is necessary in the NMA. However, no extension of the model is provided in their modeling efforts nor proof that a constraint is necessary to capture the awareness results.

      5. Behavioral protocols for the Normalization experiment discourage any spatial distribution of attention. Unlike the Distribution experiments where cue or target position varied, the Normalization experiments used a single cue position and a single target position on the left and right of fixation. The fundamental assumption being made is that the spatial spreads of attention (with and without awareness) are the same in the Normalization and Distribution experiments. However, this assumption is not verified nor is it consistent with previous studies that manipulated the spread of the attention field. For instance, Herrmann et al., 2010 (cited in the manuscript) show that subtle adjustments of the target's position on a trial-by-trial basis lead to changes in the spread of bottom-up attention that modulate performance in a manner consistent with the predictions of NMA. Thus, locking the target into a single position would change the spread of attention relative to when the target's position varied.<br /> Moreover, the conclusions of the Normalization experiments become circular without an independent verification that the spread of bottom-up attention remained identical with the Distribution experiments. For example, the study cannot conclude that attention without awareness has a smaller spread because it elicited response gain modulations. Had the Normalization experiments used a similar cueing or target uncertainty protocol as the Distributions experiments, the study's conclusions would be better supported.

      6. The contrast response functions (CRFs) are coarsely sampled within the dynamic range. As a result, any conclusions about modulations of c50 (i.e., contrast gain) lack adequate support.<br /> When measuring contrast gain modulations, it is critical to finely sample the CRF to obtain accurate measures of c50. Previous simulations (García-Pérez & Alcalá-Quintana, 2005 Span. J. Psychol.) recommend at least five levels of contrast within the dynamic range when using a method of constant stimuli protocol, as is utilized in the current study. However, in this study a total of five levels are tested and only one exists within the dynamic range (8% contrast) whereas the next highest (15% contrast) borders the upper asymptote. Consequently, all but one c50 estimate exist between these two contrast levels (Figure 4D & 4E).<br /> Drawing conclusions and extracting model parameters based on the estimate of a single data point will lead to spurious and unreliable results. A hint of this weakness is apparent in Figure 5B:<br /> a) The NMA fit to the data shows response gain modulations that are as large as the observed contrast gain modulations.<br /> b) The positive correlation between the measured bottom-up spread and the NMA's attention field size is largely driven by three data points whereas the majority of the data points show a near-zero simulated attention field size.<br /> Contrast gain modulations constitute half of the study's conclusions regarding awareness and the NMA. Thus, a finer sampling of the CRFs is required to lend support to the study's main conclusions.

      7. Most of the discussion focuses on ruling out possible interpretations rather than providing new insights regarding why awareness may modify bottom-up attention.

    1. Reviewer #1 (Public Review):

      1: The authors formulate competing hypotheses on the behavioral impact of alpha oscillations using signal detection theory (SDT) (Intro and Fig. 1). SDT is indeed well suited for this, as it is used to compute the orthogonal behavioral metrics d' (discriminability) and criterion (bias). However, soon the authors write:

      "The higher d' for conservative trials may be due to the more skewed mapping between the false alarm (FA) rate to its Z-value in our d' computation. Specifically, when criterion (or the decision boundary) intersects the noise distribution at its right tail, small changes in FA rate are nonlinearly exaggerated after Z-transformation. As we did not observe a difference in accuracy between conservative and liberal trials, which is a more robust measure of perceptual discriminability when target presence rate equals 50%, we argue that the observed statistically significant d' difference is equivocal."

      And also:

      "For the binning analyses, we mainly focused on the percentage correct (i.e., accuracy),<br /> and hit and FA rates, because these metrics scale linearly (as opposed to d', which scales<br /> nonlinearly as the hit rate increases or FA rate decreases linearly) and are well defined for both<br /> behavioral data and MVPA outputs."

      And indeed from Fig. 3 onwards they do not really use SDT anymore, which is confusing given the Introduction and Fig. 1. I think it's also problematic, as accuracy, hit-rate and fa-rate are not orthogonal and are therefore much less suited to arbitrate between their competing hypotheses. As a result, I'm not convinced the paper accomplishes what it sets out to do in the Introduction.

      2: Related, if indeed the authors choose to deviate from SDT, they should put the metric "% yes-choices" on equal footing with accuracy. For example, in Fig. 3A, we can see that alpha oscillations predict a reduction of hit-rate as well as fa-rate; this suggest that the main effect is actually on choice bias (% yes-choices) rather than accuracy. If that's true, then the title of this manuscript is misleading.

      3: Have the authors considered to test for non-monotonic effects of alpha oscillations and cortical computation and behavior?

      4: The authors use challenging and sophisticated methods, but these are introduced very casually. For example:

      "To obtain a more fine-grained picture of the alpha power modulation of behavior, we applied generalized linear mixed models (GLMMs; see Methods) to account for both between-subjects and within-subject trial-by-trial response variability, and to estimate the effects of alpha oscillatory power on d' and criterion simultaneously."

      And:

      "To evaluate the quality of visual information coding, we used multivariate pattern analysis (MVPA), operationalizing the quality of visual representation as the neural classifier's classification performance. We used the priming trials to train binary classifiers to classify target-present vs. absent trials in a time-resolved manner, [...]".

      It would help a lot if the authors could unpack their rationale some more. For example, why did they consider between-subjects effects, and could they show some scatter plots with between-subjects correlations before turning to the GLMM? Also, what is the question the authors wanted to answer that required training the classifier in a time-resolved manner (which I like, on a personal note)?

      5: Throughout, the label "liberal trials" is odd, given that group-average criterion > 0 on those trials (Fig. 2C).

      6: It would be nice to explicitly bridge to the literature on (pupil-linked) arousal predicted shifts in decision-making, and to findings on the relationship between alpha oscillations and (pupil-linked) arousal.

    1. Reviewer #1 (Public Review):

      1. The authors are interested in understanding how NMDAR blockade (via Ketamine) affects the relationship between content-predictions and behavior. To do so, the authors need to establish, first, how behavior, including not only reaction times (RTs) but also accuracy, and the inverted efficiency score (IES, which quantifies the relationship between accuracy and RT), change as a function of (1) predictions regardless of drug manipulation and of (2) drug manipulations regardless of predictions. In other words, did predictions increase overall accuracy, shorten RT, and reduce IES in the pre-drug condition, regardless of drug manipulation? did Ketamine (compared to DEX and to pre-/post-drug) affect overall accuracy, RT, and IES, regardless of predictions? After having established these effects in isolation, the authors can analyze the interactions between prediction and drug manipulations on different behavioral measures and understand whether the effects reported are specific to RT.

      2. The authors are interested in understanding how NMDAR blockade (via Ketamine) affects the relationship between content-predictions and neural oscillations in the alpha and beta bands. The authors focused on cue-locked induced activity (baseline-corrected) during the delay window, after the predictive auditory cue and before the to-be-predicted visual stimulus. From the current results, it is unknow whether and how both ketamine and the control drug DEX affect resting-state/ongoing neural oscillations, i.e., in the baseline period. Are the results due to a change in resting-state oscillations or to oscillatory processes induced by predictive cues?

      3. The authors state that delay-period (pre-image) alpha power correlated with predictions. To fully understand this correlation, it is important to establish, first, whether, in the pre-drug condition and regardless of prediction manipulation, pre-image alpha power (as opposed to pre-cue alpha power), is related to any behavioral measures (accuracy or RT) using a standard approach (e.g., binning by alpha power; in line with previous studies), rather than the more complex HDDM. Do predictions or drug manipulation modulate this existing relationship between behavior and alpha power? Are these results specific to any ROI?

      4. The authors discuss the relationship between alpha oscillations and excitability. I wonder if the authors mean physiological excitability (i.e., neuronal ensemble firing activity) or something else. This is unclear from the reference cited (32-33) since they refer to studies showing a relationship between alpha power and perceptual reports, not physiological excitability. The authors could consider citing here the invasive studies reporting a link between alpha and neuronal excitability (Chapeton et al., 2019; Haegens et al., 2011; Watson et al., 2018; Bollimunta et al., 2008, 2011; Lundqvist et al., 2020; Dougherty et al., 2017; van Kerkoerle et al., 2014). Additionally, I wonder if the authors could elaborate more on how increased excitability may be related to a decreased SNR. This is particularly important to understand a strong statement the authors made: "These results suggest that ketamine blocks predictions by reducing frontal SNR." What are the neurophysiological mechanisms behind this process?

      5. The analysis of the ERP is subpar. The authors focus only on an arbitrary channel and a single limited time window. Accordingly, null effects on ERP should be interpreted with caution and statements like: "This was not due to feedforward sensory processing, as all three sounds generated similar auditory ERPs (Figure S3a)." are unwarranted. To improve this analysis, the selection of channels could be participant-specific (e.g., pick the electrodes with strongest early ERP component for each participant) and the statistical testing could be run on the entire time course, for example, using a cluster permutation test across the time dimension. The authors need to address how predictions and drug manipulations affect ERP time course, focusing especially on very early components (<100 ms) which are more likely to reflect feedforward activity. I want to highlight that the authors assume that the ERP is a direct measure of feedforward activity: however, accumulating evidence suggests that the ERP in part reflects prestimulus/baseline oscillatory activity (baseline-shift, Nikulin et al 2007, Iemi et al 2019). Accordingly, any changes of prestimulus oscillatory activity might results in changes in the ERP. Please be cautious when equating ERP to feedforward activity. Were both visual and auditory ERPs analyzed?

      6. I found the statistical results difficult to follow and incomplete. The authors refer to two analysis: regression, and repeated measures ANOVA. why were two types of tests used? What are the repeated measures in the ANOVA? is the regression single-trial? I wonder if the authors could build a more complete statistical model including all possible tests (for example, before/after drug, drug1/2, prediction condition, and interactions), thus addressing the issue of running multiple tests on the same data that is present in the current analysis. Additionally, the description of the statistical results is incomplete. Please include all statistical information for each test: e.g., whenever you report a p value, also report the corresponding statistics. Specifically, when you use ANOVA, please include F statistics, degrees of freedom (with Huynd-Feldt correction if necessary), and, critically, run post-hoc comparisons bonferroni-corrected for multiple comparisons (report t statistics and p values of relevant comparisons). While the bar plots are very helpful, they lack statistical significance lines that are necessary to understand the relevant comparisons. Additionally, please report null effects throughout the paper with an appropriate statistic allowing to test for the null hypothesis (i.e., Bayes factor Analysis). This is especially important to understand whether the effects reported are frequency-specific or specific to a region of interest.<br /> I found some statements unclear.<br /> - "This was not due to low accuracy as subjects' average accuracy was 77.8% under ketamine (85.7% without ketamine, and 81.0% under DEX)." Was the difference significant? Can this statement be substantiated with a statistical test (e.g., Bayes factor)? Can you control for accuracy differences in the RT analysis?<br /> - "ketamine average modified observer's assessment of alertness/sedation (OAA/S) score of 4.85 compared to 3.33 under DEX (5, awake - 1, unresponsive))." Can this statement be substantiated with a statistical test?<br /> - "The interaction effect confirmed that, under ketamine, delay period alpha power at the RF electrode cluster was similar across sounds (Figure 2e)." I don't understand what the significant interaction effect means if the alpha power was similar across prediction conditions. Please always explain what the significant main and interaction effects mean.<br /> - When writing: "We ran a regression analysis of prediction (HP, MP, NP) X drug condition (before drug, under drug; drug either ketamine or DEX).": please spell out the dependent variable.

      It's necessary that the authors are clear about whether the effects they report are specific to a certain frequency band, region of interest in sensor or source space. Please report null effects. Why are some analysis presented in sensor space and other in source space?

    1. Reviewer #1 (Public Review):

      This study identifies a novel Shank3 mutation from individuals with ADHD-like syndrome and tests the impacts of this mutation together with other known Shank3 mutations on protein-protein interactions of Shank3 involving the N-terminal SPN and Ank repeats. The results indicate that Shank3 mutations have diverse impacts on the intramolecular SPN-Ank domains and the interaction of Shank3 with other proteins including delta-catenin, fodrin, and CaMKIIa. Overall, the results of the study are novel and of high quality. Considering the lack of detailed biochemical understanding on various Shank3 mutations with regard to their association with PMS, ASD, and schizophrenia, this study is a meaningful step forward.

    1. Reviewer #1 (Public Review):

      Park and colleagues examined the activity and functional role of different projection neuron types in the primary motor cortex in mice performing a joystick-based forelimb movement task. The authors characterized the activity of pyramidal tract (PT) neurons and intratelencephalic (IT) neurons using electrophysiological recordings with optogenetic tagging as well as cell-type specific single cell calcium imaging. The results showed that the activity of IT neurons was better correlated with movement kinematics (reach amplitude) and contained more information about kinematics compared to PT neurons. Optogenetic inactivation of IT neurons caused a marked reduction in reach amplitude and velocity while inactivation of PT neurons had smaller effects. Inactivation of PT neurons caused a significant transient perturbation in reach direction while the change caused by IT neuron inactivation did not reach significance. Recording from neurons in the striatum, the authors show that IT neuron inactivation caused reduction in the neuronal firing in the striatum while PT neuron inactivation caused an increase.

      This study addresses a long-standing, important question in the motor cortex: the role of different projection neuron types, PT and IT neurons, in motor control. The authors performed a series of very interesting experiments and obtained an important data set. The results are presented clearly in general (but see some questions below). The authors' conclusion that IT neurons have predominant role in determining movement amplitudes while PT neurons regulate movement trajectories (presumably by determining "muscle identity") is potentially very interesting. However, there are some interpretational difficulties in the inactivation experiments. It would be helpful if the authors discuss some of the caveats of these experiments.

      Major issues:

      1. Interpretation of cell-type specific inactivation experiments does not appear to be straightforward. As shown in Figure 3a and b, optogenetic inactivation of PT neurons or IT neurons caused a significant increase in unidentified neurons. Therefore, it is unclear whether the results of inactivation experiments are due to intended inactivation of opsin-expressing neurons, or due to off-target effect due to activation of the rest of the neurons. For instance, activation of striatal neurons during PT neuron inactivation may be due to indirect activation of IT neurons (Figure 7d). Furthermore, the effect of PT inactivation on movement trajectory may be due to IT activation rather than PT inactivation (e.g. activation of some neurons might have caused an abrupt movement). Besides these specific cases, all of the inactivation experiments are likely confounded by off-target activations. These caveats are inevitable in these experiments generally, and the results need to be interpreted carefully.

      2. One of the main points of this study is that PT inactivation caused a lateral deviation in movement trajectories but IT inactivation did not. However, this result is poorly analyzed. If movement trajectory can deviate in both directions in x-axis, comparing the average trajectories between experimental and control animals might not be very informative because deviations in opposite directions can cancel out. The number of animals is also relatively low. The results should be analyzed more thoroughly to convincingly make the authors' conclusion.

      3. The authors claim that mice adjusted movement amplitudes based on thresholds set by the experimenter but the result is not very convincing. The presented result is, for instance, consistent with a time-dependent gradual increase followed by asymptotic performance, followed by some fatigue. To demonstrate that the animals actually followed the thresholds, randomizing the order of blocks would be helpful or required.

      4. A previous work from the Komiyama lab (e.g. Peters et al., 2017; PMID: 28671694) has reported that a large fraction of corticospinal neurons decrease their activity at or after the onset of forelimb movements. It would be good to cite this work.

    1. Reviewer #1 (Public Review):

      This study uses a long-term dataset of cooperatively breeding starlings to calculate lifetime fitness of two different male strategies: natal philopatry (staying to help at the natal nest site) or dispersal. Both strategies co-occur in the study population, resulting in a "mixed-kin society". The authors test (1) whether pre-natal or post-natal environmental conditions can explain the likelihood of male dispersal, and (ii) whether dispersing results in higher lifetime fitness than staying at home.

      The results reveal that pre-natal environmental conditions, rather than post-natal conditions, are the best predictor of male dispersal (males disperse more when pre-natal conditions are good). The results also show that males that disperse have similar lifetime reproductive fitness to those that do not. The authors conclude that high variability in environmental conditions, such as occurs in the habitat of the study species, may generate mixed-kin societies, as such environments oscillate between favouring dispersal and favouring philopatry. The conclusions of the study are well-supported by the data.

      The authors discuss that the mechanisms explaining why pre-natal (and not post-natal) environmental conditions predict male dispersal are not known. They propose that parental effects (e.g. physiological or epigenetic) on offspring could explain this relationship. A possible alternative explanation that is not discussed is that parents' behaviour toward male offspring is affected by pre-natal conditions, such that parents sometimes force/encourage their sons' dispersal. In either case, the mechanisms underlying this observed relationship remain for future study.

      Overall, this study makes a valuable contribution to our understanding of the factors that drive vertebrates to either stay and help at the nest or disperse to new territory, and thus the drivers of mixed-kin societies containing both philopatric and dispersing individuals.

    1. Reviewer #1 (Public Review):

      Other reviewers will concentrate on the VSG expression aspect, so I will comment only on the remaining data on differential expression.

      Last year, Vigneron et al published single-cell data for trypanosomes from salivary glands, and identified markers for epimastigotes, and clusters that they designated as early and late metacyclics. They used the 10x system, which is probably more sensitive and has fewer barcode errors than the than the "inDrop" system that was used in the current submission (see https://doi.org/10.1016/j.molcel.2018.10.020). There are also separate comparisons available for bulk RNASeq of different Tsetse compartments, as well as for in vitro-induced formation of epimastigotes and metacyclic cells (including one extremely recent study from the Tschudi lab). In comparison with Vigneron et al, the major achievement of this paper, apart from then VSG analysis, is the identification of a separate "gamete" cluster. The current submission, however, seriously lacks detailed acknowledgement of, and comparison with, existing published datasets. I found enormous discrepancies with the Vigneron et al study - perhaps this is technical but I can't tell. This could readily be amended, without any additional data.

    1. Reviewer #1 (Public Review):

      Numerous previous publications, primarily by the authors of this manuscript, have demonstrated that the CspA outer surface protein of Lyme disease Borrelia spp. can bind to host complement factor H, and thereby confer resistance to killing by the host's alternative pathway of complement activation. They also previously demonstrated that sequence variations in CspA can alter ability to bind factor H of various host species, leading to a conclusion that CspA is a determinant of whether or not a particular Borrelia strain can infect a particular species of host.

      The authors make a step forward with experiments using blood of quail, a bird species. The results are very similar to those of earlier publications. One of the tested strains ZQ1, was previously demonstrated to be killed by mammalian blood but not bird blood (Kurtenbach et al, 1998, Infect. Immun 66:1248).

      The species Borrelia burgdorferi (sensu lato) has been split into 20+ "genospecies", including B. burgdorferi (sensu stricto), B. afzelii, B. garinii, and others. The authors make an inaccurate statement on page 4, lines 71-72, claiming that B. afzelii and B. garinii "are selectively infectious in a few host taxa (e.g. B. afzelii for rodents and B. garinii for birds)". Actually, B. afzelii and B. garinii have been isolated from infected humans, with B. garinii stains exhibiting a tendency to cause neurological symptoms in human Lyme disease patients.

      A weakness is that the authors examined only three strains of Lyme Borrelia, one each of B. burgdorferi (sensu stricto), B. afzelii, and B. garinii. Therefore it is not known whether results are applicable to other than these three strains. Attempts were made to correlate sequences of CspA of those three strains to evolutionary history. Because of the small number of specimens, the significance of the conclusions remains unknown.

    1. Reviewer #1 (Public Review):

      This manuscript aims to compare automatic measurements of the facial behavior of participants with and without melancholic depression while they watch humorous and sad video stimuli. A data-driven method for representing each participants' automatically measured facial behavior dynamics was developed and demonstrated on a publicly available dataset of 27 healthy participants' facial reactions to video stimuli (DISFA) and then applied to a private dataset of 38 healthy controls and 30 participants with melancholic depression watching different video stimuli. Parameters of the model were statistically compared and visualized between groups and machine learning models trained on these parameters were compared to machine learning models trained on baseline features.

      1) The introduction, in my opinion, overstates the accuracy/reliability with which facial expressions can be automatically recognized. It is important to consider (and mention) the difference between posed and spontaneous expressions and the challenge of domain transfer (Cohn et al., 2019).

      2) Given how much these methods rely on the AU estimates and how much of the interpretation is given in terms of AUs, providing direct validity evidence for these estimates is quite important. Please report the per-AU accuracy of OpenFace in DISFA (as compared to the human coding). Note explicitly that OpenFace was trained on DISFA, so this reported accuracy is likely an overestimate of how it would do on truly new data (e.g., your depression dataset). The fact that there is not validity evidence in the depression dataset itself should be listed as a limitation.

      3) The small sample size should be noted as a limitation. I know the difficulties of collecting this type of data firsthand, but it is an important limitation on generalizability nonetheless.

      4) Are 100 bootstrap resamples enough for stable uncertainty estimation? Please provide a rationale for the selection of this number.

      5) The decision to drop one of the two positive stimulus videos from the melancholia analysis needs justification. Given that the differences between groups appeared smaller in this video (at least what was shown in visualizations, dropping this video may make the difference between groups appear larger or more consistent than we have reason to believe it is given the entire data).

      6) For the SVM described on page 24, please clarify whether the observations were assigned to folds by cluster (i.e., participant) or whether observations of the same participant could appear in both the training and testing sets on any given iteration. (The former is more rigorous.) Please also clarify whether the folds were stratified by class (as this has implications for the interpretation of the accuracy metric).

      7) The performance of the competing SVM models should be statistically compared using a mixed effects model (e.g., Corani et al., 2017).

    1. Reviewer #1 (Public Review):

      This is an extremely well-done study, revealing a fascinating phenotype of mes-4 mutant, which they show upregulates X-linked genes, leading to PGC death. These X-linked genes are mostly oogenesis genes, upregulation of which likely impedes normal proliferation of PGCs.

      The results are very concrete and supports their conclusion, and contribute significantly to the field. I do not have any major concerns except for a couple of conceptual issues. First, the title 'germline immortality' does not seem to be well aligned with the results. It is not wrong that PGCs die in mes-4 mutant, and thus the germline is 'mortal': however, the term 'germline immortality' implies multi-generational passages of germline, and the data in the present study, where mutant PGCs just die in the offspring, do not necessarily point to 'germline immortality' per se. So, I suggest to change the title to reflect the contents of the paper better. Second, although the authors speculate (in the discussion) why X activation is toxic to germ cells (discussing that upregulated X-linked genes are oogenesis genes, whose precocious activation is toxic to PGCs), there is not sufficient discussion as to why the effect is mostly limited to X chromosome, and why mes-4 is specifically involved in this. Is it because all oogenesis genes are concentrated on X chromosome? (likely not). Are autosomal genes that are upregulated in mes-4 mutant also oogenesis genes? Is this related to dosage compensation? I would like to see fuller discussions as to why X chromosome requires special regulation, also discussing the role of mes-4 in this context. I understand that the authors might have refrained from expanding discussions on matters that do not have any data, but without this discussion, I feel that many readers will be left wondering 'why?'.

    1. Reviewer #1 (Public Review)

      Strengths:

      This manuscript combines experimental, exploratory, and observational methods to investigate the big question in innovation literature--why do some animals innovate over others, and how information about innovations spread. By combining a variety of methods, the manuscript tackles this question in a number of ways, and finds support for previous work showing that animals can learn about foods via social olfactory inspection (i.e., muzzle to muzzle contact), and also presents data intended to investigate the role of dispersing animals in innovation and information spread.

      Using data from a previously-published experiment, the manuscript illustrates how investigators can numerous interesting questions while limiting the disturbances to wild animals. The manuscript's attempt at using exploratory analysis is also exciting, as exploratory analyses provide a useful tool for behavior research-indeed, Tinbergen insisted that behavior must first be described.

      Weaknesses:

      The manuscript's introduction is a bit unclear as to how the fact that dispersing males may be an important source of information ties to innovations in response to disruptions due to climate change, humans, or new predators, if at all. An introduction regarding the role of dispersed animals in introducing novel behaviors and social transmission would better prepare readers for the questions presented in the manuscript. As it stands now, the manuscript only provides one sentence discussing the theoretical relevance of investigating the role of dispersing animals in innovations.

      Additionally, while the manuscript attempts to use exploratory analysis, it does not provide enough theoretical background as to why certain questions were asked while the data were explored. While the discussion provides some background as to the role of dispersing males in innovation, the introduction provides little background, and thus does not properly frame the issue. It is unclear how dispersing males became of interest and why readers should be interested in them. As the manuscript reads now, it may be that dispersing males became interesting only as a result of the exploratory analysis-except that the predictions explicitly mentions dispersing males. Thus, manuscript at present makes it difficult to know if the questions surrounding immigrant males resulted from the exploratory analysis, or was a question the analyses were intended to answer from the beginning. If this question only came out after first reviewing the results, then this needs to be made clear in the introduction. I see no issue with reporting observations that were the result of investigations into earlier results, but it needs to be reported in a way that can be replicated in future research-I need to know the decision process that took place during the data exploration.

      The manuscript never clearly defines what counts as an immigrant male; presumably, in this species, all adult males in the group should be immigrants, as females are the philopatric sex. Sometimes, the manuscript uses "recently" to modify immigrant males, but doesn't define exactly what counts as recent, except to say that the males that innovated were in their respective groups for fewer than 3 months, but never explains why three months should be an important distinction in adult male tenure.

      Due to the above weaknesses, the provided predictions are a bit murky. It is not clear how variation between groups in accordance with who innovated, or initiated eating a novel food, or demographics is related to the central issue. The manuscript does contribute to the literature by looking at changing rates of muzzle contact over exposure to a novel food source, and provides a good extension of previous findings; that, if muzzle contacts help animals learn about new foods, then rates of muzzle contacts involving novel foods should decrease as animals become familiar with the food. However, this point isn't explicit in the manuscript. Finally, it is also unclear as to why changing rates of muzzle contact AND whether certain individual-level variables like knowledge, sex, age, and/or rank might influence muzzle contacts during opportunities to innovate.

      As for the methods, the manuscript doesn't provide enough details as to why certain decisions were made. For example, no reason is given as to why only the first four sessions after an animal ate were considered, why the first three months of tenure (but not four, as seen on one group that didn't innovate) was considered to be a critical time for which immigrant males may innovate, why (including the theoretical reasons) the structure of models for one analysis was changed (dropping one variable, adding interactions), or even how the beginning and ending of a trial was decided, despite reporting that durations varied widely,-from 5 minutes to two hours.

      The discussion contains results that are never elsewhere presented in the manuscript- (2a) Individual variation in uptake of a novel food according to who ate first).

      Finally, the largest issue with the manuscript is that its results are not as convincing as the conclusions made. An issue with all the analyses is that some grouping variables in some analyses but not others despite the fact that all of the analyses contain multiple groups (necessitating group as a grouping variable) and multiple observations of the same individuals (i.e., immigrant males tested in multiple groups, necessitating animal identity as a random effect), and not accounting for individual exposure to the experiment when considering whether animals ate the food in the allotted period (an important consideration given the massive differences in trial times), making these results difficult to interpret in their current forms. As for the results regarding muzzle contact, the analyses has a number of issues that make it difficult to determine if the claims are supported. These issues include not explaining why rank calculated a year before the experiments took place was valid or if rank was calculated among all group members or within age and sex classes, not explaining how rank was normalized, and not conducting any kind of formal model comparisons before deciding the best model.

      As for the results regarding immigrant males and innovation, little is done to help the fact that these results are from very few observations and no direct analyses. It is possible that something that occurs relatively often but in small sample sizes, like dispersing animals, could have immense power in influencing foraging traditions, and observation is a necessary step in understanding behavior. However, the manuscript doesn't consider any alternative hypotheses as to why it found what it found. No other possible difference between the groups was considered (for example, the groups that rapidly innovated appear to be quite smaller than the groups that did), making the claim that immigrant males were what allowed groups to innovate unconvincing. This is particularly true given that some groups in this study population have experimental histories (though this goes unmentioned in the current manuscript), which likely influenced neophobia-especially given work by the same research group showing that these animals are more curious compared to their unhabituated counterparts.

    1. Reviewer #1 (Public Review):

      In this study, Lonnemann et al. investigated the anti-inflammatory effects of hIL-37 in acute and chronic neuroinflammatory mouse models, using both in vivo and in vitro assays. The data provided support for the anti-inflammatory functions of IL-37 on microglial activation and cognitive functions.

      1) As a cytokine that is not naturally expressed in mice, the introduction of the physiological significance of IL-37 in human beings and the necessity of this research in the background will be insightful.

      2) A comprehensive analysis for how hIL-37 may affect metabolite content would strengthen the conclusion.

    1. Reviewer #1 (Public Review):

      Using a large neonatal dataset from the developmental Human Connectome project, Li and colleagues find that cortical morphological measurements including cortical thickness are affected by postnatal experience whereas cortical myelination and overall functional connectivity of ventral cortex developed significantly were not influenced by postnatal time. The authors suggest that early postnatal experience and time spent inside the womb differentially shape the structural and functional development of the visual cortex.

      The use of large data set is a major strength of this study, furthermore an attempt to examine both structural and functional measures, and connectivity analysis and separating these analyses based on the pre-and full-term infants is impressive and strengthens the claims made in the paper. While I find this work theoretically well-motivated and the use of the large dHCP dataset very exciting, there are some concerns, that need to be addressed.

      1. There is a bit of confusion if the authors really compared the structural-functional measures in the final analysis. If the authors wish to make claims about the relationship then there must be a compelling analysis detailing these findings.<br /> 2. There is also a bit of confusion in the terminology used in the study regarding ages; the gestational age, premenstrual age, and postanal time. I think clarifying and simplifying it down to GA and postnatal time will help the reader and avoid confusion.

    1. Reviewer #1 (Public Review):

      The authors have identified a novel method to generate the N2C strain of the rabies virus in a significantly shorter period of time and with less contamination of WT rabies. Additionally, they have developed a suite of tools that can be used with the rabies. Lastly, they provide examples of the utilization of rabies encoding tools that can be used for functional studies post rabies infection. While the work is not extremely novel, it takes us past problems that were impediments to the use of the N2C strain which is more infectious than the SAD-B19 strain and will likely invigorate monosynaptic retrograde tracing, which is powerful for understanding circuit connectivity.

    1. Reviewer #1 (Public Review):

      This study is mainly based on the comparative analysis of the impact that an Mcd1-AID degron and an Mcd1-TEV have on S. cerevisiae chromosome organization and segregation. After solving the unexpected situation generated by the Mcd1-TEV construct due to the N-rule of protein degradation, the authors confirm that a rapid depletion of cohesin achieved with the Mcd1-AID allele causes disruption of chromosome organization and segregation as well as mitotic catastrophe, whereas the TEV-cleaved Mcd1 leaves an active fragment at the CEN regions of telophase chromosomes and shows a defect in the fidelity of chromosome segregation, but does not prevent bulk nuclear separation. TEV-cleaved cohesins remain bound to chromatin for longer than degraded chromatin. The number of cohesin-binding sites per chromosome is strongly diminished in telophase-arrested cells, with only a few regions exhibiting binding that indeed belongs to telomeric regions. The authors conclude that cohesin complexes affect cohesin contacts at telophase centromeres. In addition, using a conditional mcd1-73 allele the study shows that inactivation of cohesin at telophase also causes decondensation of chromosomes in the rDNA region. The study is clear, well explained, and data convincing. However, a few points should be considered to make conclusions stronger.

    1. Reviewer #1 (Public Review):

      In this study, the authors examine the relationship between the use of antihypertensive medication and breast cancer risk using a Mendelian randomization approach.

      The strengths of the methods are that they use a two-sample design and have access to publicly available data for this. Several sensitivity analyses were carried out, as well as assessments of the assumptions in studies that use instrumental variables. In addition, the genetic instrument was validated with systolic blood pressure. However, there is some difficulty in following all that was done. Figure 1 does not give complete information. If SNPs are the instrumental variables, why aren't they listed as the "exposure" for the MR for target genes and breast cancer? In section 5 in the methods, the exposure is also indicated as gene expression (and not SNPs). It is also unclear how gene expression can easily stand in for medication use. A diagram (or preferably a DAG) could provide more information to understand the different steps in this MR study.

      The authors carried out several analyses and identified two SNPs that were associated with breast cancer risk, suggesting that antihypertensive medication use may be associated with risk.

      The results give further information on understanding the mechanisms of breast cancer. Antihypertensive medication is essential for many people, thus, the results would not really lead to less use. That said, the specific genes (and in particular their expression) are related to specific drugs. Thus, there may need to be more work to decide if some drugs are contraindicated in people with an increased risk of breast cancer.

    1. Reviewer #1 (Public Review):

      The proposed mechanism, involving a "novel pathway mediated by ATM and mTOR" appears to be preliminary, and not fully supported by the Western blots in Figure 2. The majority of the mechanistic experiments are done in a single cell line, further limiting the certainty of the mechanism.

      Major comments:

      1) Figure 1A/B show two FLT3 mutant cell lines, but subsequent mechanistic experiments are primarily done in only the MOLM13 cells. IN Figure 1B, the effect of the CM on the MV411 cells is much less striking than on the MOLM13 cells, and the fact that these cells are omitted from the mechanistic experiments is a concern.<br /> 2) The conclusion (and title of Figure 2) that the CM "reverses mTOR pathway suppression" is not fully supported by Figure 2D. The phosphorylation of mTOR at S2448 (which is a somewhat nonspecific indicator of actual mTOR activity) is higher at the start with the CM, which is not surprising given the many growth factors and nutrients in the CM and is suppressed by Quizartinib. Phospho-S6, which is a more specific indicator of mTORC1 activity is similar with and without CM. These experiments should be done in triplicate, with statistics, and other indicators of mTOR activity included (pS6K, p4EBP1) along with the total protein levels for all of the phospho-proteins including S6. These experiments should also be done in the MV411 cells.<br /> 3) In Figure S3 (AML#2), everolimus alone nearly completely suppressed the leukemic cells in the blood, consistent with the possibility that it has actions that are unrelated to Quizartinib.<br /> 4) In Figure 3G, (AML#1) why is there no vehicle data for the 21 Day treatment time point? What was the leukemia burden in the vehicle? Without this, the data are hard to interpret. It appears that the combination is not different from Quiz alone. IN Figure 3E, at the earlier time point, it appears that everolimus inhibits the leukemia burden although this did not reach significance, and it also appears that the combination is not different from Quizartinib alone.<br /> 5) Similarly, the title of Figure 4 is "Restoration of mTOR signaling by hBMSC-CM ..." but the authors have not convincingly demonstrated that mTOR signaling is being "restored" - instead this could be a combined effect of mTORC1 inhibition and Quizartinib that is not mechanistically directly linked.<br /> 6) Figure 4 again relies on a single cell line MOLM13.<br /> 7) Can the primary cells in Figure 2E and AML#1 and AML#2 be studied for mTORC1 activity by Western, as in 2D?<br /> 8) Additional genetic information should be provided if possible for the primary AML cells - what other mutations in addition to FLT3 were present? Were there any mTOR pathway alterations?

    1. Reviewer #1 (Public Review):

      Here the authors set out to use neural networks to simulate neurons, which is an intriguing inversion of scales and approaches. They achieve quite remarkable speedups, drawing on the efficiencies of neural network implementations, especially in GPUs. Overall, I find this to be a potentially very exciting development for neuronal modelling as it will bring quite large models within reach of 'ordinary' researchers who don't have easy access to massive supercomputers. I feel the authors should address a couple of major concerns about the reporting of their software and results.

    1. Reviewer #1 (Public Review):

      This is a very interesting paper. In this manuscript Hendi et al. examined how two independent mechanisms, Wnt signalling and gap junction control two critical aspects of neuronal tiling. Here they have quite elegantly used two neighboring GABAergic motor neurons to show while one specific C. elegans Wnt-homolog, EGL-20, regulates the axonal tiling; innexin UNC-9-mediated gap junction at a very specific position on these axons regulate the chemical synapse tiling on these axons. They also performed multiple experiments to show that the UNC-9 gap junctions controls chemical synapse tiling independent of their channel activity.

      Overall, the paper is interesting and would be of general interest for many neuroscience researchers, specifically to those who are studying neuronal tiling and the role of gap junctions. However, there are some concerns with this study.

      Major concerns:

      1. Authors here only looked at the tiling of axons and presynaptic clusters in DD5/DD6 axons. However, these neurites get transformed in L1 from dendrite to axon and subsequently the nature of the synaptic termini also changes from postsynaptic to presynaptic. To say that egl-20/UNC-9 specifically control axonal tiling and GABAergic presynaptic tiling the authors must check the dendritic tiling and tiling of postsynaptic termini. Specifically, a) does UNC-9 channels also affect the postsynaptic patterning in L1? b) what is the time of unc-9 puncta formation? Is it present in the L1 stage or appears at L2 stage only after the fate switch from dendrite to axon? c) does egl-20 also control dendritic tiling in L1?<br /> 2. Authors have shown that the previously known regulators for gap junction formation, NLR-1 and ZOO-1, do not regulate UNC-9 gap junction puncta on DD5/DD6 axons. Since they are cell adhesion molecule and tight junction component, respectively, presynaptic tiling should be checked in these mutants as well. Also, it is not clear whether these proteins are expressed in DD5/DD6 neurons at all. Since, NLR-1 has previously been shown to regulate unc-9 puncta in nerve ring, expression of these genes in DD5/DD6-neurons should be checked before making these conclusions.<br /> 3. Authors assumed that the relevant gap junction to be an UNC-9 homotypic homomeric channel, but DD neurons also express several other innexins (inx-1, inx-2, inx-10, inx-14 and unc-7). This raises the possibility that unc-9 channel could be heteromeric in nature. Effect of some other expressed innexins on synaptic tiling apart from unc-7 should also be tested.<br /> 4. Effect of unc-9(Del18) and unc-1 double mutant should be tested.<br /> 5. Authors have acknowledged the need to study the role of UNC-9 gap junction channels in maintaining the presynaptic pattering. This reviewer appreciates that idea and suggests the authors check whether late expression of UNC-9 is sufficient to rescue the presynaptic pattering defect observed in egl-20; unc-9 double mutant animals.

    1. Reviewer #1 (Public Review):

      In this Research Advance, the authors build on two earlier eLife papers that described and experimentally validated a mathematical model of the transcriptional response of yeast to heat shock in which unfolded proteins sequester Hsp70 away from Hsf1 promoting an Hsf1-driven transcriptional program, and report two new findings. First, they provide evidence that upon heat shock it is newly synthesized proteins rather than denatured mature proteins that sequester the Hsp70 chaperone away from Hsf1 permitting Hsf1 to bind to target genes and drive the heat shock-induced gene transcription program during the heat shock response (HSR), and, second, by analyzing the role of the Sis1 Hsp70 co-chaperone in the HSR they showed that Sis1 does not have a direct negative role in the HSR, but rather is needed for fitness during prolonged stress.

      Because recent studies using cycloheximide to block protein synthesis have suggested that it is newly synthesized proteins in the process of folding rather than denatured mature proteins that are the clients for Hsp70 responsible the HSR, the authors reconfigured their model by assuming that heat shock slows the folding of newly synthesized proteins and adding the rate of translation as a new input function. They validated their new model using a yeast strain that has an HSE-YFP reporter gene as an HSR readout, and showed that rapamycin treatment, which reduces the rate of translation, resulted in a decrease in the HSR, that is predicted with kinetics predicted by their new model. In addition, based on their own recent work showing that the Sis1, a J-protein chaperone, regulates the HSR by promoting Hsf1-Hsp70 association in the nucleus to repress Hsf1 activity under non-heat shock conditions, they also incorporated Sis1, a Hsp70 co-chaperone, as a new component of their model circuitry. By experimentally induced eviction of Sis1 from the nucleus, they observed reduced Hsf1 activity towards the HSE-YFP reporter in the absence of a temperature shift, as predicted by the model. The new model also accounted for the rapid initial and then subsequent slowing kinetics of the HSR as it reached a maximum, as well as the different levels of HSR induction at increasing temperatures above 35oC. Moreover, even though the SIS1 promoter has an HSE and its basal transcription is driven by Hsf1, the elimination of this regulatory step experimentally showed that Hsf1-driven Sis1 transcription was not required for temperature shift-induced HSR output, implying, as the model predicted, that increased Sis1 expression is not important and not needed for negative feedback inactivation of Hsf1. This was tested directly by generating a strain in which the SIS1 promoter was replaced with two copies of the SUP35 promoter to maintain the basal expression level of Sis1, which showed normal kinetics of HSR inactivation under several experimental conditions. Using a Halo-tag pulse protocol, they demonstrated that heat shock induction of newly synthesized Sis1-halo was delayed and that the new Sis1 protein was preferentially localized around the nucleolus away from Hsf1, as determined using an Nsr1-mScarlet nucleolar marker, and thus Sis1 would presumably not be in a position to promote Hsp70/Hsf1 interaction and repression of Hsf1 activity. Finally. to investigate what role Sis1 plays in heat-stressed cells, they showed that the 2xSUP35pr-SIS1 yeast strain had reduced fitness compared to the other strains after 4 hours at 37ºC, suggesting that Sis1 has an undefined role in maintaining fitness in heat-stressed cells. Consistent with this, they showed that Sis1 also has a role in maintaining fitness in yeast cells growing on a non-preferred carbon source.

      The updated model of the HSR, which still retains the two-component feedback loop consisting of the chaperone Hsp70 and the transcription factor Hsf1 of the original model but replaces the unfolded protein activation step with an equivalent step involving unfolded newly synthesized proteins, appears to be able to model cellar responses to heat shock quite accurately. This refinement of their model, coupled with the demonstration that the Sis1 J protein chaperone does not appear to play a direct role in the inactivation phase of the HSR, provide a significant advance over their earlier work.

      A main weakness is that while the evidence that Sis1 is important for fitness of heat-stressed yeast cells is reasonable, exactly how Sis1 achieves this is not clear. In a single sentence the authors suggest that Sis1 might be an orphan ribosome chaperone, partly based on its nucleolar localization, but provide no evidence for this. If this were true, then one might expect a reduction in ribosome content under stress conditions and a decreased rate of protein synthesis, which could be tested. Some further insights into this more general role of Sis1 would strengthen the authors' conclusions.

      Moreover, whether Sis1 plays a general role in the fitness of cells under stress has not been firmly established, i.e., is its mechanistic role the same in heat shock conditions and under nutrient stress conditions? Without knowing the mechanistic basis for how Sis1 maintains the fitness of heat-stressed cells, it is not possible to conclude that the same mechanism is at play in cells grown on a non-preferred carbon source.

      Figure 4: This is an ingenious experiment to study the subcellular localization of newly synthesized Sis1 in response to heat shock, compared to that of the heat-shock inducible Hsp70 Ssa1. However, based on the images presented in panel B it is hard to know how discrete the subnuclear distributions of Sis1 and Ssa1 really are, and ideally what is needed is to be able to analyze their localizations when both tagged proteins are expressed in the same cell, although this would obviously not be possible using the halo-tagged protein system. In addition, one would like to know the localization of Hsf1 in the cell at the same time. As it stands, these data seem overinterpreted, and it remains possible that dome other event such as an inactivating post-translational modification of Sis1 under heat shock conditions might be involved in inactivating its function.

      One way to establish whether Sis1 nucleolar sequestration prevents it from acting on Hsf1 during the inactivation phase of the HSR would be to selectively disrupt its nucleolar localization signal eliminated while retaining its nuclear localization and determine how expression of such a mutant perturbed the inactivation kinetics of the HSR.

    1. Reviewer #1 (Public Review):

      In this manuscript by Feng et al., the authors investigate the mechanism regulating the development of the levator veli palatini (LVP) in the posterior palate/pharyngeal region. While set up as a model to understand how myogenic progenitors migrate to discrete sites to form individual muscles, it is not clear how applicable the findings are to other subpopulations, though this is not a weakness. The mechanisms driving LVP development are of great interest to a broad group of developmental biologists, as LVP malformation is a common problem even in mild cases of cleft palate. The authors hypothesized that the perimysial population within palatal mesenchyme cells is a niche required for pharyngeal muscle development. Using exquisite analysis of scRNA-seq data from E13.5-E15.5 palatal cells, the authors illustrate that TGFb signaling is likely involved in perimysial cell development, using gene expression analysis in wild-type palatal sections to show that TGFb signaling precedes the arrival of myogenic cells. Inactivating ALk5 in palatal mesenchyme cells results in failure of LVP formation. The authors continue by identifying a number of transcription factors that presumably function downstream of TGFb signaling that drive LVP development. Among these are Fgf18, in which SMAD sites observed in the upstream region were validated to bind Smad2/3. The authors also identify Creb5 as a potential regulator of Fgf18. Overall, this is a remarkable use of scRNA-seq data, in which findings are supported by subsequent in vivo analysis of gene function using knockout mouse models. These findings will drive further analysis of LVP development and may shed light on the myogenesis of pharyngeal muscle in general.

      Strengths<br /> 1. The treatment of scRNA-seq data using a variety of bioinformatic programs illustrates the utility of this type of data when using sufficient analysis software. The description of the approach is very clear and concise and the controls appear excellent. Further, the use of multiple time points further improves the analysis.<br /> 2. The focus of perimysial cell expression patterns supports the hypothesis of the authors, though as with this type of data, one probably can make a story out of several pathways.<br /> 2. The use of RNAscope to carefully examine where TGFb signaling in the posterior pharynx occurs between E12.5 and E16.5 is critical to the setup of this manuscript and is well done. Further aiding the interpretation of these results are cartoons associated with the staining, which illustrate where the staining is occurring, though never over-stating the observed patterns.<br /> 3. Careful histological analysis illustrates the poor myogenic differentiation in the LVP of OSr1-Cre;Alk5fl/fl embryos.<br /> 4. Identifying that TGFb is more important for regulating late perimysial cell development is important in identifying the targets of TGFb signaling.<br /> 5. The use of CellChat to identify sending and receiving cells is well done and further supports the late function of TGFb signaling, in this context working through Fgf18 and Lama4.<br /> 6. The attempt to build a signaling network again using CellChat (Figure 6) is admirable, though there are a few caveats to that approach (see below).<br /> 7. While bead implant studies have been used for 40 years, the approach of culturing a piece of the pharynx and then performing a bead implant to prove that Fgf18 can positively influence myogenic development is admirable.

      Weaknesses<br /> 1. In general, the authors are careful to not suggest that staining is significant unless showing quantification, though, at several points, this is not true.<br /> 2. The authors identify five putative Smad2 sites upstream of Fgf18, using one of them in a Cut and Run assay whose results suggest enhanced Smad2/3 binding. The problem is that this likely would have worked with the other Smad sites and probably would have worked for any other putative site that one might pick. Proving that a putative site can be bound by its cognate transcription factor is not the same as proving that this occurs in vivo and is sufficient to control the process of LVP development. One would need reporter assays using that TF binding site to better support the points being made by the authors.<br /> 3. In a similar manner, the authors try to define which factors might function with TGFb signaling to regulate myogenic development. Using SCENIC, the authors found a number of genes that might be involved in perimysial fibroblast development. Of these, they illustrate that Creb5 siRNA knockdown decreases Fgf18 expression in cultured palates. The focus on Creb5 was based on it showing, "the most specific expression patterning the late perimysial cells (Figure 6H)....". In fact, Creb5 appears the most broad, appearing to be expressed across the entire LVP, not just in the area where myogenic precursors are found. Thus, "most specific" probably needs to be reworded. However, the second problem is that Creb5 knockdown reducing Fgf18 expression does not prove any direct regulation. Both of these are rather circuitous arguments.<br /> 4. While the disorganization of myogenic fibers in the posterior LVP is somewhat obvious, it is not as clear as the authors suggest. This change (which I believe) needs to be better quantified (length, width, area, etc.).

    1. Reviewer #1 (Public Review):

      The authors propose a simple model for flash dynamics in a certain species of firefly known as P. Carolinus. Remarkably, individual males of this species flash haphazardly, with no particular rhythm, yet in sufficiently large groups, they somehow manage to flash in rhythmic unison. The authors show that their model can account for this phenomenon - with no adjustable parameters - and they test their model quantitatively in idealized experiments on groups of up to 20 fireflies confined to a small, darkened, cuboid tent of dimensions 1.5 x 2 x 1.5 cubic meters.

      Strengths:

      The authors' model is unusual in that the individual fireflies are not assumed to be intrinsically rhythmic. By contrast, in most previous work on firefly synchronization the individual fireflies were modeled as "oscillators." That convenient assumption allowed a large body of theory from nonlinear dynamics to be imported. However, for the particular species of firefly being studied here, the authors show the individual males do not flash rhythmically. The authors provide a framework for dealing with this novel case.

      There are actually two parts to the framework. In the first (extremely stylized) model, the authors assume that after it flashes, each firefly waits a random time before it can flash again. All fireflies choose this random waiting time from the same probability distribution; in that sense, the fireflies are assumed to be statistically identical. Furthermore, the authors assume that when one firefly flashes, it triggers all the rest to flash instantaneously. A weakness of this extreme idealization is that synchrony is thereby built in automatically by assumption, rather than explained as a consequence of the model. But a virtue of this extreme idealization is that it correctly predicts how the variance in the interburst intervals depends on the number of fireflies in the group. In this way, the authors neatly explain a property of the emergent period that they observe in their tent experiments. Most notably, they do this without any adjustable parameters. The result follows as a consequence of their model and their measurements of individual firefly behavior. This is a beautiful instance of using individual behavior to predict collective behavior with the help of some simple, additional assumptions.

      The second part of the new framework builds on existing research on a class of oscillators known as "integrate and fire" oscillators. The new wrinkle is that the authors introduce a stochastic term in the equation (a random amount of time for the oscillator to charge up) in order to capture the erratic nature of the interburst interval for individual males of this firefly species. The virtue of this more complex model is that it allows the authors to predict a transition to group periodicity as the interaction strength between the fireflies is increased. It also allows the authors to relax the earlier (unrealistic) assumption of instantaneous triggering of all other fireflies whenever one firefly flashes.

      Weaknesses:

      The work presented here is an excellent start at understanding the collective behavior of this particular species of firefly. However, the model does not apply to other species in which individual males are intrinsically rhythmic. So the model is less general than it may appear at first.

      The modeling framework is also developed under the very stylized conditions of experiments conducted in a small tent. While that is a natural place to begin, future work should consider the conditions that fireflies encounter in the wild. Swarms that are spread out in space would require a model with a more complicated structure, perhaps with network connectivity and coupling strengths that both change in time as fireflies move around. This is not so much a weakness of the present work as a call to arms for future research.

      Overall, the paper does an excellent job of supporting its conclusions with elegant arguments and experiments.

    1. Reviewer #1 (Public Review):

      This paper tackles a very important question in somatosensory biology - the identity of the sodium channel controlling excitability in proprioceptors. While whole rainforests' worth of papers have been published on sodium channels in nociceptors, there has been a significant gap in our understanding of which NaV isoforms are at play in the large fiber proprioceptors and LTMRs. Using pharmacology, gene KO, behavior, and histology, the authors show quite convincingly that NaV1.1 in sensory neurons is essential for normal motor behavior and contributes to proprioceptor excitability. Interestingly, they find NaV1.1 is haploinsufficient. This finding is all the more exciting given the many human NaV1.1 het and homo mutants and points to future possibilities for interrogating the role of this channel in human proprioception and using human tissue (e.g. iPSCs).

    1. Reviewer #1 (Public Review):

      There is evidence to suggest that a percentage of the 8 million children conceived by in vitro fertilization (IVF) exhibit an increased risk of various maladies (e.g., altered growth rate, cardiovascular dysfunction, and glucose intolerance) compared to naturally conceived children. However, it is unclear how embryonic metabolism is affected by conditions, especially oxygen tension, used to culture blastocysts derived by IVF.

      This manuscript describes a comprehensive investigation of the effects of IVF-embryo culture conditions on the metabolism of murine blastocysts and adult mice. The authors conclude that oxidative stress caused by culture conditions used for IVF-generated blastocysts results in various metabolic alterations and possibly epigenetic changes in embryos that lead to an increased risk of various maladies in children and adults.

      In this investigation, the authors studied oxidative stress and metabolic alterations in murine blastocysts conceived by natural mating or by IVF and cultured in either 5% (physiological) or 20% (atmospheric) oxygen. The authors found that compared to blastocysts conceived by natural mating (flushed blastocysts, FB), IVF-generated blastocysts exhibited: (1) increased reactive oxygen species (ROS), (2) oxidative damage to DNA, lipids, and proteins, (3) reduction in glutathione and NAD, (4) decreased mitochondria respiration, (5) increased glycolytic activity (enhanced Warburg metabolism), (6) altered intracellular and extracellular pH, (7) decreased intracellular pyruvate levels and increased intracellular lactate levels, and (8) a reduction in lactate dehydrogenase B (LDH-B) and monocarboxylate transporter (MCT1) involved in lactate transport.

      This is a valuable contribution to the field of assisted reproductive technologies (ART) and will be of special interest to practitioners of IVF, as well as to developmental and reproductive biologists in general.

    1. Reviewer #1 (Public Review):

      Anopheles is an important disease vector and the efforts to characterize the extent of genetic variation in the system are welcome. In this piece, the authors propose a Variational Autoencoders method to assign species boundaries in a large sample of Anopheles mosquitoes using a panel of 62 nuclear amplicons. Overall, the method performs well as it can assign samples to an acceptable granularity. The main advantage of the method is that it takes reduced representation genome sampling which should cut costs in genotyping. The authors do not compare the effectiveness of their amplicon panel with other approaches to do reduced representation sequencing, or the computational method with other previously published methods. Additionally, the manuscript does not clearly state what is the importance of species assignments and the findings/method are -by definition- limited to a single biological system.

      The manuscript has three main limitations. First, there is no explicit test of the performance of ANOSPP compared to other methods of low-dimensional sampling. While the authors state that the ANOSPP panel will lead to genotyping for low cost (justifiably so), there is no direct comparison to other low-representation methods (e.g., RAD-Seq, MSG). Second, and on a related vein, the authors present NNoVAE as a novel solution to determine species boundaries in Anopheles. Perusing the very references the authors cite, it is clear that VAEs have been used before to delimit species boundaries which diminishes the novelty of the approach on its own.

      Perhaps more importantly, the manuscript does not present a comparison with other methods of species delimitation (SPEDEStem, UML -this approach is cited in the paper though-), or even of assessment of population differentiation, such as STRUCTURE, ADMIXTURE, or ASTRAL concordance factors (to mention a few among many). The absence of this comparative framework makes it unclear how this method compares to other tools already available.

      A final concern is less methodological and more related to the biology of the system. I am curious about the possibility of ascertainment bias induced by the amplicon panel. In particular, the authors conclusively demonstrate they can do species assignment with species that are already known. Nonetheless, there is the possibility of unsampled species and/or cryptic species. This later issue is brought up in passing the 'Gambiae complex classifier datasets' section but I think the possibility deserves a formal treatment. This is particularly important because the system shows such high levels of hybridization that the possibility of speciation by admixture is not trivial

      In summary, the main limitation of the manuscript is that the authors do not really elaborate on the need for this method. The manuscript does show that the method is feasible but it is not forthcoming on why this is of importance, especially when there is the possibility of generating full genome sequences. Since Anopheles is arguably one of the most important insects to characterize genetically, the ANOSPP panel is certainly important but I am not completely sure the method of species assignment is novel or groundbreaking .

    1. Reviewer #1 (Public Review):

      The Uemura lab previously reported that C4da neurons elaborate complex dendrites when larvae grow on low-yeast diets, a phenomenon called neural sparing. In the present study, they elegantly define that the inter-organ Wingless/Ror/Akt pathway between the neuron and its adjacent muscles is necessary and sufficient to mediate dendrite over branching in the low-yeast condition. This study provides a mechanistic explanation of how the dendrite hyperarborization is caused by the crosstalk among fat body, muscle, and sensory neurons. It is likely a general mechanism and phenomenon across species.

    1. Reviewer #1 (Public Review):

      Jeong and collaborators study the genomic evolution of a supergene that is very well documented in the literature. This supergene derives from an inversion that affects more than 100Mb of the genome of white-throated sparrows. This supergene has resulted from a chromosomal inversion that makes recombination very difficult. As a result of the lack of recombination, mutational changes in the inverted sequences can accumulate leading to the accumulation of deleterious variants and structural changes. This is likely to lead to the degeneration of the chromosome, as has taken place in the sexual chromosomes of birds and mammals. The study of such a large inversion that occurred relatively recently offers a great opportunity to investigate the early stages of chromosomal degeneration. However, the relaxation of selective forces that result from the small effective population size associated with the inversion facilitates the accumulation of genetic variation, that can contribute to genetic divergence and adaptation.

      The study of these two effects associated with the inversion makes this study very unique and this is combined with the use of high-quality genomic data for many individuals and very diverse analytical tools.

      The authors first analyze chromosomal degeneration by combining data on the number of scaffolds generated for a deeply sequenced super-white bird (ZAL2m homozygote), assessing the relative frequency of insertions and deletions, estimating the ratio of non-synonymous to synonymous fixed differences, etc. All these lines of evidence very convincingly show a certain degree of degeneration of the chromosome carrying the inversion.

      Selective forces acting on the inverted chromosome and its counterpart are then analyzed in detail including the study of the chromosomal sequences and gene expression in different tissues. The results show differences in the expression of alleles from each of the two chromosomal variants and reveal the presence of a smaller region within the inversion where divergent alleles are maintained by balancing selection, selective sweeps, and positive selection for some alleles. Although these results are very well supported in most cases, the results relative to differences in expression of specific genes need to be further investigated. Since many genes are potentially studied at the same time, it is important to further investigate possible false positives. Similarly, the detailed study of phenotypic effects requires in-depth analyses of many more individuals and with statistical designs that take into account the effect of covariates and multiple testing.

    1. Reviewer #1 (Public Review):

      The authors applied FreeSurfer and performed vertex-wise linear regression models for ADHD with cortical surface and volume. They note they did not test cortical thickness, as it was found to yield null findings in a prior analysis of the Generation R data.

      In initial analyses without confounders (model 1), they observed widespread associations between ADHD symptoms (measured with the Child Behavior Checklist) with surface area and volume in both datasets. In model 2, they adjusted for SES, household income, maternal education, and maternal age at childbirth. A third model added prenatal exposure to substance use (tobacco and cannabis) and postnatal maternal psychopathology. Model 2 reduced surface cluster sizes by 20% in ABCD and 49% in GenR; volume was reduced by 42% and 67%, respectively.

      Model 3 reduced surface clusters by 23% and 5% for ABCD and GerR, respectively, compared to model 2. Volume was reduced by 32% in ABCD, and increased by 7% in GenR. Similar results were obtained when ADHD was treated categorically as present or absent. A fourth model examined the complex effects of adjustment for IQ. Such adjustment further reduced the spatial extent of clusters (vs. model 3) by 23% and 57% for the area in ABCD and GenR, respectively, and 37% and 47% for volume.

      This manuscript has many strengths. It is thoughtful and addresses a major challenge in the field, using large samples and rigorous methods. It is well written and mostly quite clear.

    1. Reviewer #1 (Public Review):

      The authors report on their quite extensive study to dissect the differences in gene expression in different human lower limb muscles to explain individual differences between different muscles in the human body, not the least in order to explain the specific and often selective differences in how muscles react on gene defects in different myopathies. The intentions are well taken and the setup is ambitious with the collection of six different muscles from each of the 20 individuals.

    1. Reviewer #1 (Public Review):

      In previous work, the Salama group identified a large complex of proteins required for the distinctive shape of Helicobacter pylori. Focusing on one member of this complex, CcmA, Sichel and colleagues use a combination of genetics, biochemistry, and quantitative image analysis to identify regions of CcmA involved in shape determination and illuminate the mechanism underlying H. pylori cell shape. They pinpoint the bactofilin domain and N terminal region of CcmA as important for both CcmA polymerization and interactions between CcmA and complex members Csd5 and Csd7 which in turn influences the activity of the peptidoglycan hydrolase Csd1. Super-resolution microscopy indicates that Csd5 recruits CcmA to the cell envelope and promotes CcmA localization to the major helical axis. Synthesizing these data, the authors propose a model in which CcmA coordinates interactions with the peptidoglycan synthesis machinery and associated hydrolases to promote helical shape. Experimentally the paper is extremely solid, containing data acquired through an extensive array of approaches. I was impressed by the development of quantitative approaches to assess how much CcmA was associated with the cell envelope versus cytoplasmic. Figure 7 is beautiful. At the same time, and despite the presentation of a beautiful model figure at the end, the sheer volume of data and the dense writing make it difficult for readers to make the connection between the results and the model in a meaningful way.

    1. Reviewer #1 (Public Review):

      This manuscript describes experiments that lead to a potentially impactful result and most of the data seem very nice. The authors conducted a mutant screen to find the gene BbCrpa from a fungus resistant to cyclosporine A (CsA). Microscopy indicates that the mode of action is likely sequestration of the toxin in vacuoles, mediated through the P4-ATPase pathway. They also show that expression of BbCrpa in Verticillium renders that fungus resistant to CsA. The paper then takes a very large jump across kingdoms and toxins and asks if BbCrpa, expressed in plants, will confer resistance to a different toxin (cinnamon acetate) that is produced by Verticillium. They conduct disease assays on Arabidopsis and cotton and show promising results, but these assays are less thoroughly completed. They provide microscopic evidence that the transgenics accumulate CIA in vacuoles, which is consistent with the mode of action of the other systems. Overall, my assessment of the paper is that the authors may have a nice story, but the transition to plants needs to be better described and potentially supported by additional experiments. For example, the authors seem to conclude that this resistance mechanism will be a very broad spectrum. Is there a second toxin-producing pathogen that could be used to assess whether this is true?

    1. Reviewer #1 (Public Review):

      This paper presents a model for estimating the transmission potential of SARS-CoV-2 that can be applied during periods of low or zero case incidence, as well as during periods of sustained high incidence. This novel approach complements and generalises approaches to inferring the time-varying reproduction number from time series of new daily cases by incorporating additional data streams (Google mobility data and social survey data) that are independent of epidemic dynamics and testing. The paper is likely to be of high interest within the field of epidemiological modelling and more broadly.

      The authors have successfully developed and deployed a robust methodological framework that uses a range of data sources to estimate the potential for the spread of SARS-CoV-2. The results can be and were used in real-time to inform situational awareness and policy response, particularly in countries where incidence was low or zero for periods of time. The results are also informative in retrospectively understanding the epidemiological characteristics of different outbreaks and evaluating the effect of interventions. The method could be used by other groups for situational awareness in other countries - the epidemiological data and mobility data the model uses are relatively standardised although some work would be needed to adapt/implement the survey part of the study. The method could potentially also be adapted for other pathogens that spread via close contact.

      The main limitations of the model lie in the types of data that are routinely available and whether these will continue to be available in a comparable form in the future. These limitations are discussed in more detail in the paper. Application of the model in other jurisdictions would of course need careful re-calibration as there are likely to be differences in e.g. testing rates, idiosyncrasies of mobility data, and lack of or different survey data. And use of model results for policy advice would rely on careful and appropriate communication to policymakers of model results, the associated uncertainty and model limitations.

    1. Reviewer #1 (Public Review):

      Studies published by the authors and others have shown that many cells extend prolonged filipodia to transport Wnts to exert their functions in a distance. In this current study, the authors identified Flot2, a scaffolding protein, which interacts with Ror2 to regulate the formation of signaling filipodia to transport Wnt3 in GC cells and Wnt8a in zebrafish. However, the role of Flot2 in promoting cytoneme formation to spread morphogens has been reported in other animal models and cancer cells; and the data that support the role of Flot2 in Ror2 are not convincing. Additionally, the paper employed similar published approaches. Thus, the significance and novelty of this work are not very high.

      The quality of many data and some experimental should be improved. Specifically, most experiments used the overexpression approach. Genetic approaches would need to be employed, particularly in embryos. The dominant-negative Flot2 is the key tool utilized in the paper, but it is unclear whether this construct has been characterized in the system used and how it affects endogenous protein function. Has its impact on the endogenous Flot2 been examined? Similarly, the effectiveness and specificity of siRNA for example, the expression level of Flot2 would need to be assessed in all experiments. Furthermore, it is unclear whether the tagged constructs (eg, Flot2-GFP, Wnt8a-mcherry) have been characterized and whether the tags affect the protein function.

      Other general points:<br /> 1. Most images show one single cell. Could more cells be presented? The nature of the images should be disclosed. For example, are those confocal images (single plane or Z-stack)?<br /> 2. The P values for which group are not clear in many panels. It is not clear which groups were analyzed. For example, Fig. 4C, D, H and many other panels.<br /> 3. Statistical analyses are lacking for some panels. For example, χ2 test is needed for many panels, including Fig. 3E, and many others.

      Comments on figures:

      1. Figure 1: 1) AGS is supposed to compare with control (HFE-145). These data are missing in the chart. The cell number in AGS is significantly higher than that in other cells (25 vs, 7 and 8, line 666), which can compromise the statistical analysis. 2) Qualification data are needed to support the statement in Line 71-72. 3) Fig1D: Wnt3-positive filopodia in AGS is double compared to that in HFE-145, which is not consistent with the image shown in Fig1C. 4) Fig1H-I: The red channel is overexposed. The authors should explain why a-myox and a-evi signals were detected outside the cell (or just the background)? The more appealing evidence should be the co-localization of Myox or Evi with wnt3a on the filopodia.

      2. Figure 2 nicely showed the impact of paracrine Wnt signaling induced by producing cells. However, there are many issues with this experiment. 1) The reporter plasmids are transiently transfected, which inevitably leads to the expression at different expression levels. How could the authors compare the expression levels as a readout in different conditions if this is the case? Better and reliable methods should use stable cell lines. Thus, the authors should make a stable 7xTCF-NLS-mCherry stable line or co-transfect the cell with GFP to show the relative transfection level. This concern also applied to other figures using 7xTCF-NLS-mCherry reporter assay. 2) Thus, the mCherry positive cells in Fig2B, D and F cannot present all receiving cells, as the transfection rate should not be 100%. Also, did all experiments start with a similar cell number? Thus, the Chart in D is not accurate, and the reason that assesses the number of receiving cells is not clear. It is not clear what "per image" means in D? Is the number correct (1 cell vs 1.5 cells) in D? Additionally, is it possible to image Wnt3 is being transported to the receiving cells? 3) Fig2 C: Western blot could be added to show the mCherry expression level in each group. 4) It is better to include the red channel only in E. It is difficult to see the red signal in the current images. 5) F: How was the qualification conducted? Could the whole population be analyzed more quantitatively?

      3. Figure 4: 1) The critical data should be that the formation of wnt3a cytoneme (length, number) is impaired in Flot2-deficient cells, which are missing in the figure and the manuscript. 2) A-D: The expression of Flat2 should be presented in separated images. The membrane localization is not clear. Fig4D shows flot2 occasionally localized with Wnt3. Time-lapse experiments will provide additional evidence of the constant localization of Flot and Wnt3. 3) E: This panel has similar issues described in Figure 2. How was the transfection rate in E? Did all cells express Flot2 or dnFlot2? Their expression should be examined at the same time.

      4. Figure 5 is one of the key figures. However, the quality of the images is not high enough to support the conclusion. A-D: The membrane co-localization is not convincing. Better images with a membrane marker are needed. Also, it is better to present images in separate channels. The red color A should be magenta. Did the dominated-negative Flot2 affect the expression of endogenous Flot2? Similarly, the expression of endogenous Flot2 in siRNA expressing cells should be shown. D: Instead of showing the image of single-cell, additional experiments, for example, the western blot should provide additional evidence to show Ror2 expression on the membrane is lost. E: High magnification images should be presented to show the localization. The current images are too small to appreciate the co-localization. Similarly, separated channels should be presented. How many experiments have been conducted? It seems that the cell number is not high. For siRNA experiments, was the expression of Flot2 validated? It is necessary to describe how E-Co-efficient (PCC) was determined in more detail. F: The label for the X-axis is missing. G: The nuclei and cell boundaries are not clear; the markers for these should be included to give confidence where and how the quantification was conducted. Similarly, the expression of Flot2 should be examined in these experiments as it is likely not all cells express those constructs at similar levels. Additional experiments, for example, Western bolt to show pJNK levels, are necessary to support the conclusion further. H: The P values for which group are not clear. I-J: The mem-mCherry shows the protrusions but not the cytoneme because these did not show wnt3 labeling.

      5. Figure 6: The experimental designs are problematic. 1) Is Flot2 expressed in zebrafish embryos at the stage analyzed? The results in panels A-B using the overexpression approach do not reflect the endogenous expression of Flot2. Overexpression of Flot2-GFP could cause unintentional consequences. Also, where were those cells that were imaged? Could the authors show more cells? Images of separated channels should be shown. The cell in B seems to be round. Was the cell at the mitosis stage? 2) B: The authors nicely showed that Wnt8a-mCherry is clustered on Flot2-GFP-expressing filipodia. Because of the nature of overexpression of Wnt8a-mCherry, it is possible that Wnt8a-mCherry and Flot2-GFP were expressed in the same spots. Could the authors perform time-lapse experiments to show Wnt8a-mCherry is being delivered to the neighboring cells by Flot2-GFP-expressing filipodia? 3) The authors injected various DNAs to show the consequence of the expression. This method is very unreliable, as injection of DNA likely leads to mosaic expression of the proteins at different expression levels thus, the expression levels are very hard to be controlled. Has the expression of various constructs been compared in different conditions? RNA injection experiments are recommended, as these usually lead to uniform and reliable protein expression. 4) Did overexpression of Flot2 or Wnt8 cause severe developmental defects? Were those embryos healthy? Could the authors show live images of group embryos? The authors need to explain the "0" values in some columns (+wnt8a, flot2/wnt8s) in G. Did these results indicate those embryos did not express pax6a at all?

    1. Reviewer #1 (Public Review):

      Here the authors examined volitional neural signals during an un-cued lever pulling task. The authors impressively monitored cortical activity using widefield Ca++ imaging over many sessions (days to months).

      Mice received water-rewards to motivate them to pull the lever. The major aim in this study was to understand when neural signals corresponding to the upcoming level pull appeared within the cortex. This is an important question in sensorimotor control, namely, how and where do volitional signals associated with our actions arise in the brain? The authors compare their results at various points to human motor control, where readiness potentials appear prior to the execution of movement. Thus, the authors' study could make a meaningful contribution to understanding how neural activity changes prior to the initiation of a voluntary movement (i.e. there is no cue in their task).

      Prior to each lever pull, neural activity exhibited oscillatory patterns that sharpened in amplitude with proximity to the pulling event. These oscillations could be observed throughout the cortex: in retrosplenial, barrel, somatosensory, visual, and motor regions. As previously reported, neural activity exhibited a reduction in variance prior to movement initiation. The collapsing in variance was observed prior to the movement in all areas, excepting visual cortex. These changes in variance were echoed by convex hull analyses, which aimed to summarize the space spanned by pre-pull neural activity. As the movement approached, the convex hull gradually narrowed. The intersection between the lever pull's convex hull and the convex hull associated with all paw movements appeared to decrease with training in the task. This suggested a restructuring in neural activity whereby lever pull movements became more distinct in their neural activity patterns.

      To understand whether pre-pull neural activity was associated with the upcoming movement, the authors used an SVM to predict whether neural activity over some pre-pull window could predict the upcoming lever pull. They observed that SVM classifiers could indeed predict the upcoming action well in advance of the behavior, in some cases 10-15 sec prior to the lever pull. This result is quite notable, given that previous evidence in humans suggests that readiness potentials arise 0.5-1.5 seconds prior to movement. Thus, the authors' study suggests a much longer time horizon for volitional signals in the brain.

      The authors' question is both intriguing and important to the field of motor control, but certain details about their task complicate interpretations of their data. Most importantly, in the pre-pull period, behavior was not generally quiescent. Because the task did not use a cue, animals engaged in many behaviors in the windows preceding rewarded lever pulls. Thus, it is hard to know whether pre-pull neural activity relates to the upcoming rewarded lever pull, or earlier lever pull events (and other behaviors) that were likely to occur within the SVM window itself. While the authors used a 3-second lockout in their analysis (only considered rewarded pulls that were not preceded by lever pulls in the past 3 seconds), it remains challenging to interpret neural activity prior to threshold value (and it is currently unclear whether this lockout period excludes all lever pulls, or only some that met certain criteria). Along these lines, when the lockout window was extended in a control analysis, the SVM's time horizon for volitional signals shortened, suggesting that pre-pull behaviors indeed influenced the primary results. Thus, it remains unclear exactly when volitional signals arise in this task. The authors could greatly strengthen their paper with additional neural and behavioral analyses on these matters.

    1. Reviewer #1 (Public Review):

      In this work the authors investigated the mechanism of the cadherin-catenin F-actin catch bond interaction. They demonstrate that the catch bond is from a force-dependent switch of the ABD of αE-catenin between a five-helix bundle and a four-helix bundle bound on F-actin. In addition, they report cooperative binding of cadherin-catenin complexes on F-actin via interactions of neighboring ABDs. Overall, the findings are very interesting, the experiments are well executed, and the conclusions are backed up with experimental data.

      A notable strength of the work is the combination of single-molecule assay, analysis based on structural features, and kinetic modelling. Their proposal that the mechanism may be conserved across actin binding domains of several other actin binding proteins is convincing.

      The explanation of the observed catch bond is based on increased stability of the bound four-helix ABD compared to five-helix ABD. While this mechanism can explain the observed catch bond, alternative or additional factors need to be discussed. When the bound ABD switches from a five-helix bundle to a four-helix bundle, the stretching geometry is significantly altered. It is well known that different stretching geometries applied to the same molecule could lead to very different mechanical stability.

      It will also be helpful to add a brief discussion on how the results provide an understanding of the mechanical stability of the cadherin/beta-catenin/alpha-catenin/F-actin force-transmission linkage. At ~ 4 pN where the lifetime is the longest, the lifetime of the F-actin bound catenin complex is shorter than 10 s. Can the time scale enable robust mechanotransduction function? The time scale should sufficient to expose the vinculin binding site. After vinculin binds and engages with the same F-actin, will it stabilize (i.e., increase the lifetime) the linkage?

    1. Reviewer #1 (Public Review):

      Cheng et al. address one of the fundamental questions of gene expression regulation - what are the relative contributions of RNA-level and protein-level regulation to the final gene expression levels. In order to do that they take advantage of mainly published datasets, especially tumor datasets where matching somatic copy number alterations (SCNAs), RNA expression and protein expression data is available. Performing proteogenomic analysis (taking DNA, RNA and protein into account) they address several open questions, such as: Is gene compensation happening mainly at the RNA level, protein level or both for each gene? Is this the same across different tissue types and also cellular pathways? Taking advantage of the SCNAs in the DNA, the authors use correlation analysis of DNA to RNA and RNA to protein to determine if the expression of a gene is regulated mainly at the level of RNA or protein in the respective samples.

      Although it is mainly a very descriptive study, the meta-analysis of existing datasets (and one smaller dataset that was newly generated) yields very interesting observations, which will be of interest to the cancer and gene expression community. However, there is limited mechanistic insight into how the observations can be explained. This is not a problem in my view as the observations are interesting enough in themselves.

      The main findings of the study are:<br /> - In general genes are either regulated at the RNA-level or at the protein level, but rarely at both.<br /> - This is the first study (at least as far as I know) to look at tissue-specific RNA-level and protein-level compensation across several different tumor types. Interestingly, the authors show tissue specificity of RNA and protein-level compensation - for example lung adenocarcinoma does not show nearly any compensation.<br /> - Protein complex genes show stronger protein-level regulation than non-complex genes and the opposite trend in regards to RNA level regulation.<br /> - There seems to be an agreement for genes within the same pathway that they show a similar regulatory mode (either RNA level or protein level).<br /> - Genes involved in RNA processing, mRNA translation and mitochondrial regulation are generally upregulated at the protein-level in highly aneuploid primary tumor samples.

      However, I do think that two points need to be addressed by additional analyses to strengthen the findings.<br /> - The authors show that SCNAs are often significantly compensated at the protein-level in most tumor types. This compensation is also normally stronger than RNA level compensation. A technical issue about this finding that needs to be addressed is that this is mainly based on proteomics data that used TMT for quantification. TMT-based quantifications, although quite precise, are not always the most accurate measurements in the sense of capturing the true amplitude of changes. This is due to the so-called ratio compression of TMT mass spec data. The authors need to account for that in order to exclude that this technical limitation of TMT-based proteomics measurements is a main contributor to the protein-level compensation seen. Do the authors also have some proteomics data where label-free quantification of SILAC quantification was used? Do the same conclusions hold true when such data sets are used?<br /> - Many of the statistically significant differences seen - e.g complexed proteins versus non-complexed proteins, highly conserved proteins versus less conserved proteins - have actually a relatively small effect size. It is not 100% clear to me that the authors apply always the most stringent and appropriate statistical evaluation. For example, when two density plots are compared and it is evaluated if the distributions differ significantly from each other (e.g. the median), the authors constantly use a bootstrapping strategy (most plots in Fig 2 and Fig S2). Due to the high number of iterations, bootstrapping is very sensitive to picking up statistical differences, even if there are very small effect size differences (as is the case for many of the comparisons). Would not a KS test be more appropriate to compare two density distributions? If a KS test is applied - do the authors still recapitulate the same statistical significance tendencies as seen with their bootstrapping strategy?

    1. Reviewer #1 (Public Review):

      This paper describes a systematic biochemical analysis of UBX proteins in facilitating protein unfolding by the p97-UFD1-NPL4 (referred to here is the p97 complex). The p97 complex binds Ub and unfolds it to allow the ubiquitylated protein to be translocated into the p97 ATPase pore for unfolding. This paper demonstrates that UBX proteins are able to reduce the necessary ubiquitin chain length in order to support unfolding by p97. They explore this using ubiquitylated CMG helicase as a substrate. Removal of CMG helicase from replicated DNA is required for completion of DNA synthesis.

      First the authors demonstrate that the p97 complex only only unfolds CMG with very long Ub chains. The then show that the high threshold for Ub is reduced when UBXN7, FAF1 or FAF2 are added. These proteins bind to both the p97 complex and Ub in substrates. This is then followed up in cells by demonstrating that removal of UBXN7 and FAF1 reduces CMG disassembly and is synthetic with reduced CMG ubiquitin ligase activity.

      The conclusion that human p97 requires UBX proteins to support unfolding/segregase activity when Ub chains are short would be strengthened by more precise characterization of the length of ubiquitin chains being studied, as the methods do not precisely determine the chain lengths and how this is overlapping with the number and location of primary ubiquitylation sites on Mcm7. The in cellulo results, while consistent with a contributing role for FAF1 and UBXN7 in disassembly of the CMG by p97, indicate that either other factors are required in cells or that p97 can disassemble CMG with relative short chains in cells without the need for the UBX proteins. This needs to be reconciled with the proposed model.

    1. Reviewer #1 (Public Review):

      This study investigates low-frequency (LF) local field potentials and high-frequency (HF, >30 Hz) broadband activity in response to the visual presentation of faces. To this end, rhythmic visual stimuli were presented to 121 human participants undergoing depth electrode recordings for epilepsy. Recordings were obtained from the ventral occipito-temporal cortex and brain activity was analyzed using a frequency-tagging approach. The results show that the spatial, functional, and timing properties of LF and HF responses are largely similar, which in part contradicts previous investigations in smaller groups of participants. Together, these findings provide novel and convincing insights into the properties and functional significance of LF and HF brain responses to sensory stimuli.

      Strengths<br /> • The properties and functional significance of LF and HF brain responses is a timely and relevant basic science topic.<br /> • The study includes intracranial recordings in a uniquely high number of human participants.<br /> • Using a frequency tagging paradigm for recording and comparing LF and HF responses is innovative and straightforward.<br /> • The manuscript is well-written and well-illustrated, and the interpretation of the findings is mostly appropriate.

      Weaknesses<br /> • The writing style of the manuscript sometimes reflects a "race" between the functional significance of LF and HF brain responses and researchers focusing on one or the other. A more neutral and balanced writing style might be more appropriate.<br /> • It remains unclear whether and how the current findings generalize to the processing of other sensory stimuli and paradigms. Rhythmic presentation of visual stimuli at 6 Hz with face stimuli every five stimuli (1.2 Hz) represents a very particular type of sensory stimulation. Stimulation with other stimuli, or at other frequencies likely induce different responses. This important limitation should be appropriately acknowledged in the manuscript.

    1. Reviewer #1 (Public Review):

      Lin et al investigate the role of AP-2e in vomeronasal sensory neurons through targeted gene deletion and rescue. They report that knockout of AP-2e reduces expression of basal markers, while induced expression can rescue basal identity. Moreover, forced expression of AP-2e in mature apical neurons causes them to express some basal markers. While it would be interesting if apical sensory neurons could be reprogrammed, additional evidence regarding shifts in receptor expression is needed before these conclusions can be made.

    1. Reviewer #1 (Public Review):

      This interesting work tries to predict and analyze the overlap of BCR and TCR repertoires (mainly in COVID-19 conditions) which is one of the most important aspects of adaptive immunity that is directly related to antigen specificity. However the primary claims were not fully supported by the current data and analysis the authors presented.

      1) Since the authors showed that the TCR/BCR changed with age, whether they corrected their CMV- and CMV+ analysis with age differences?

      2) TCR repertoire (probably BCR also) changed along with the time during SARS-CoV-2 infection (especially the first several weeks after cleaning the virus). The authors should consider the time points they used in all the COVID-19 studies to validate the method.

      3) What's the difference between different infections (e.g. CMV vs SARS-CoV-2)? Or does infection lead to the same TCR/BCR changes in the study? A detailed discussion with an analysis of TCR/BCR repertoire regarding different infections CMV vs SARS-CoV-2 needs to be provided.

      4) Are there any features along with different infections compared with tumor/autoimmune conditions (I think there are many publications about TCR/BCR dynamics in various diseases)? Analysis of these data is not only important to control for validating their method but also can generate the most interesting data/conclusions on dissecting the specificity of TCR/BCR repertoire.

    1. Reviewer #1 (Public Review):

      The authors reveal dual regulatory activity of the complex nuclear receptor element (cNRE; contains hexads A+B+C) in cardiac chambers and its evolutionary origin using computational and molecular approaches. Building upon a previous observation that hexads A and B act as ventricular repressor sequences, in this study the authors identify a novel hexad C sequence with preferential atrial expression. The authors also reveal that the cNRE emerged from an endogenous viral element using comparative genomic approaches. The strength of this study is in a combination of in silico evolutionary analyses with in vivo transgenic assays in both zebrafish and mouse models. Rapid, transient expression assays in zebrafish together with assays using stable, transgenic mice demonstrate dual functionality of cNRE depending on the chamber context. This is especially intriguing given that the cNRE is present only in Galliformes and has originated likely through viral infection. Interestingly, there seem to be some species-specific differences between zebrafish and mouse models in expression response to mutations within the cNRE. Taken together, these findings bear significant implications for our understanding of dual regulatory elements in the evolutionary context of organ formation.

    1. Reviewer #1 (Public Review):

      This work by Wei-Jia Luo and colleagues elegantly employs in vitro and in vivo models to demonstrate that within the mouse liver, macrophages respond to lipopolysaccharide (LPS) by releasing active IL-12 (IL-12p70), which is a heterodimer of IL-12p35 and IL-12p40. They observed that the availability of "free" IL-12p35 to this heterodimerization process is governed by the molecular chaperone HLJ1. In response to LPS, HLJ1 separates homodimerized IL-12p35 into monomers, which then can heterodimerize with IL-12p40 to form active IL-12p70. This active IL-12 is released from macrophages in the liver, which then act on neighboring natural killer T cells to release interferon gamma. This interferon gamma circulates systemically and is responsible for mortality in a mouse model of endotoxemic shock.

      Overall, this work is mechanistically compelling and demonstrates a novel multicellular inflammatory pathway that contributes to death in a murine model of endotoxemic shock. However, it is unclear if the observed pathway is limited to this highly reductionist model, or if it applies to models that better approximate the complexity of human sepsis. Indeed, the long-standing concept of "cytokine storm" as the major mediator of sepsis has largely failed to yield benefits in clinical trials. These numerous and repeated translational failures cast doubt on the translational validity of reductionist in vivo animal models of sepsis. This raises several specific concerns with regard to the model used by the investigators:

      (1) The authors use a massive dose of LPS that rapidly leads to the death of mice in 24 hours. This massive and rapid mortality is not consistent with human sepsis, which is a more crescendo course with a mortality of ~30%. Indeed, when the authors used a more clinically-relevant model of mild endotoxemia, HLJ1 appeared to have no impact on mortality (Figure 1A).<br /> (2) LPS is a model of endotoxemia, not a model of sepsis. Accordingly, it is unclear if the protective benefit of blocking IL-12 will similarly be seen as a live-infection model of sepsis, in which inflammatory signaling may be necessary for pathogen clearance.<br /> (3) Finally, it is unclear if the findings are only relevant to mice, or if they also have relevance to humans.

    1. Reviewer #1 (Public Review):

      The Drosophila nephrocyte is a promising model to analyze filtration function and nephrocyte diaphragm integrity and podocyte function. In this study, the authors developed assays to examine slit diaphragm dynamics directly after short-term manipulation of endocytic functions to examine the filtration barrier's dynamics, specifically by examining nephrin. The authors demonstrated that lateral diffusion of ectopic nephrin is prevented by rapid dynamin-dependent endocytosis restricting slit diaphragm localization. In contrast, nephrin engaged within the proper slit diaphragm complex is constantly endocytosed flotillin2-dependently followed by recycling. The findings suggest that such turnover offers flexibility and cleanses the filtration barrier from adherent molecules, preserving its permeability. Their discovery that selective and functionally distinct routes of endocytic transport of components of the slit diaphragm to maintain the barrier's architecture and permeability is remarkable and could have clinical significance.

    1. Reviewer #1 (Public Review):

      This paper is well written, beautifully illustrated and appears to be a model of thoroughness. However, the paper does not convey an appropriate understanding of the biology of the behaviour described. Therefore, the paper is far more likely to be of interest to engineers and roboticists rather than biologists.

      There is some conceptual overlap with previously published work:

      Abstract:

      Condensed active matter systems regularly achieve cooperative emergent functions that individual constituents could not accomplish alone." This general point was made in the Princeton monograph by Camazine et al. published in 2001, even though that book did not refer, of course to the new cliché of "condensed, active-matter systems". In general, it seems an oversight that Camazine et al. (2001) and associated work has not been cited in this paper.

      Discussion:

      Our model indicates that fire ant rafts may exhibit spontaneous protrusion growth in the absence of external cues, long-range interactions, or centralized control and that the global response of these condensed active systems depends on the underlying behavior of individual constituents."

      There is overlap with the work by Worley et al. (2019), who show in their paper on flocculation the adaptive value of a collective behaviour, which occurs in the absence of long-range interactions or centralised control, and that the global response depends on the underlying behaviour of the individual constituents (Worley A, Sendova-Franks AB, Franks NR. 2019 Social flocculation in plant-animal worms. R. Soc. open sci. 6: 181626. http://dx.doi.org/10.1098/rsos.181626).

      In fairness, it could be that the originality of the current paper is that it shows collective phenomena in the absence of external cues. However, the paper states that worker activity level has a major influence over the formation of protrusions. Given that such worker activity is likely to be temperature dependent, then there is de facto an external cue, which would affect this claim to originality. Moreover, the growth of protrusions from a fire ant raft have not been shown to have any adaptive value at least in the current paper. So, the presence of absence of external cues does not appear necessarily to be of a great importance.

    1. Reviewer #1 (Public Review):

      The authors have used a structure based mutational scan of TRF2 to create a separation of function mutant in the protein that would form dimers and gets incorporated into the Shelterin complex, with a defect anticipated to be only in recruiting ORC to telomeres. The mutations used fall within a loop connecting two helices where the side chains of the wt protein are found on the outer surface of the protein. This is well done and data that the mutations are defective in recruiting ORC are convincing especially at the synthetic loci described. This is an advance over what has been done previously that has suggested through Knock down of the entire Trf2 such interactions and roles in DNA replication. The biochemical demonstration that ORC actually touches this region of TRF2 or indeed makes a direct contact to TRf2 is missing. Recruitment to chromosomes via co-localization has value but doesn't establish the point.

      The major aim of the paper is to test the notion that defects in the recruitment of ORC to telomeres results in DNA replication defects at the telomeres. The manuscript shows that in clones selected there is no DNA damage at telomeres when the mutant TRF2 replaces the wt allele. The control used is a knock -out of the wt (with a CRISPR SS DNA method) and then a replacement wt allele with a marking restriction site. Both the control and the mutants are expressed at lower levels that the parent clone, and more DNA damage is found in the control than parent. This appears confusing and is perhaps a weakness of the paper.

    1. Reviewer #1 (Public Review):

      In the presented manuscript entitled Box C/D Small Nucleolar 1 Ribonucleoproteins<br /> 2 Regulate Mitochondrial Surveillance and Innate Immunity by Tjahjono et al., the authors describe data supporting novel interactions between the box C/D snoRNA core proteins (snoRNPs), mitochondrial surveillance processes and innate immunity in C. elegans. They find that C/D snoRNPs contribute to the regulation of the unfolded protein response in mitochondria (UPRmt) and the ethanol stress response (ESRE). Loss of C/D snoRNPs is further shown to increase expression of the innate immune reporters irg-5::gfp and irg-1::gfp. The authors conclude that Box C/d snoRNPs are upstream regulators of both mitochondrial surveillance and innate immunity, and as such potentially important to combat aging-associated and infectious diseases.

      The conclusions presented in this paper are not always supported by the presented data. Reasonable alternative explanations for the observed results are not consequently considered. Further, some key controls are missing, which complicates and inclusive full assessment of the data quality and conclusions, and reduces the anticipated impact on the field significantly.

      This study and all most conclusions rely on experiments that used the technique of RNAi feeding, which is well established in C. elegans. While the authors highlight in the materials and methods section that each RNAi was sequence-verified, on-target effects of individual RNAis in the used conditions are not assessed. qPCR-based verification of key RNAis in both L1 and L3 animals would need to be performed to better understand the role of the box C/D snoRNPs in the tested assays.

      The authors used RNAi targeting ruvb-1 to demonstrate to assess of nucleolar localization of snoRNPs is required to trigger the studied phenotype. However, the authors didn't show that the ruvb-1 RNAi indeed knocks down this gene, nor do they consider ruvb-1-independent nucleolar localization of snoRNPs. To support their conclusions, the authors would need to perform subcellular fractionation / western blot or immunofluorescence staining to provide further evidence when and where the investigated snoRNPs are required.

      The authors did not validate/test that the cycloheximide treatment results in the intended inhibition of translation. Data shown e.g. in Fig. S3 or Fig. 7A, showing an increase in Pirg-1::gfp-dependent GFP expression, indicates that cycloheximide is not interfering with translational processes as expected. The utilized reporter strains, although presented as transcriptional reporters, require the transcription and translation of a gfp gene in order to give a positive result in the reporter assays. Thus, less GFP signal may always arise as a consequence of general translation inhibition. In this reviewer's opinion, this aspect is not sufficiently considered.

      Conceptually, this reviewer feels that it is a stretch to conclude from assessing a single reporter per cellular process that Box C/D snoRNPs are master upstream regulators of mitochondria and innate immune mechanisms.

    1. Reviewer #1 (Public Review):

      The authors were trying to understand published claims about the effect of population structure on fixation probabilities by generalizing the models, effectively introducing more parameters to separate possible causes. The paper is for the most part extremely well written, and the thinking crystal clear. From mathematical point of view, everything appears to hold up.

      The results certainly support the limited conclusion that whether a particular model of population structure helps or hinders selection can depend crucially on whether migration in symmetric not, but does not provide much general insight into why that is so.

    1. Reviewer #1 (Public Review):

      The study conducted by Gu et. al. has clarified the inhibitory role of miR-22 in in-vitro and in-vivo angiogenesis including tumor angiogenesis. The authors showed that miR-22 is less expressed in tumor endothelial cells (ECs) of human non-small cell lung cancer (NSCLC) tissues compared with ECs of adjacent normal tissues. The authors propose that this reduction of endothelial miR-22 could be induced by NSCLC cell-secreted TNFa and ILb. In addition, they showed that endothelial miR-22 reduces SIRT1 and FGFR1 in the ECs, leading to inactivation of AKT/mammalian target of rapamycin (mTOR) signaling. This study is novel, interesting and well-designed.

      However, the concepts established in this study would need to be extended to other common cancers. The authors would also need to define how NFkB activation induces reduction of miR-22 in endothelial cells. It is unclear how miR-22 inhibits S-phase of cell cycle, migration and sprouting in endothelial cells. What are the underlying mechanism? The explanation involving the reduction of FGFR1 and SIRT1 does not seem to be sufficient.

    1. Reviewer #1 (Public Review):

      Studies evaluating vulnerability of specific biological pathways and validation of gene essentiality are extremely slow and technically challenging in M. tuberculosis. In this study, McNeil et al employ a previously reported CRISPRi approach to evaluate gene essentiality and lethality in a high-throughput manner. They design and test sgRNA sequences against 96 genes targeting various cellular pathways. Most of the targets involved in cell wall biosynthesis or core cellular functions were found to be not only essential but gave a bactericidal phenotype when inhibited. On the other hand, the genes involved in metabolic processes although mostly essential, gave only a bacteriostatic phenotype when inhibited. This was attributed to be due to metabolic buffering upon inhibition of bacterial metabolic processes. The authors have performed an comprehensive evaluation of their CRISPRi using this 96-set of target genes. While most of their conclusions are in line with previous observations from other gene-essentiality studies, the approach could be very useful for TB researchers.

      Overall, this is a very elegant study and the manuscript is written clearly. I especially would like to commend the authors for the effort they have invested in presenting the vulnerability data in a simple and clear manner.

    1. Reviewer #1 (Public Review):

      The manuscript by Yanowski et al uses lineage tracing, single cell mRNA sequencing and in situ hybridization methods to study the developmental origin of delta cells and the transcriptional heterogeneity of beta cells in the regenerating pancreas. First, the authors use a CRE-lox approach driven by Sox9-CRE to trace the fate of Sox9-expressing cells in adult mice (12 weeks of age). They show that most Sox9-positive cells are exocrine cells - as expected. However, they also observe that most Sox9-positive cells inside the islet express Sst and therefore are delta cells. Next, they use a mouse model of beta cell regeneration triggered by pancreatic injury (partial pancreatectomy (ppx)) to characterize beta cell heterogeneity in the regenerating pancreas using single cell sequencing. In doing so, they identify beta-delta cell pairs that are characterized by lower expression of the ER stress marker Fkbp11 and higher Ins2 expression. These results are validated in situ using smFISH.

      These results lead to the conclusions that 1) delta cells originate from Sox-9 expressing cells and proliferate in ppx, 2) there are 3 distinct types/states of beta cells in the regenerating pancreas (stress, cell cycle and basal) and 3) beta-delta cell interactions appear to be specific to a beta cell subset called "int-beta".

      The study opens exciting possibilities and questions that indicate that a fraction of adult delta cells express Sox9, while implicating beta-delta cell signaling and/or physical interaction in the transcriptional heterogeneity "process" in beta cells in a regeneration setting. However further experiments are necessary to support the authors' conclusions and provide the physiological context of their observations

      Major strengths:

      - Study uses a genetic mouse model to express a fluorescent reporter in delta cells, which allows the authors to enrich isolated islet preparations with delta cells that can be studied with single cell technologies<br /> - The use of MARS-seq + PIC-seq is very exciting and it has the potential to identify important cell-cell interactions in the islet and that are mostly lost during tissue dissociation/islet isolation.<br /> - The smFISH technology is impressive. This approach allows the important validation step in situ of beta cell heterogeneity characterized by distinct gene expression profiles identified by single cell mRNA sequencing.<br /> - The combination of ppx with single cell technologies has the potential to identify the molecular signature of replicating islet cells which may play a role in pancreas regeneration, including beta cells and delta cells.<br /> - The finding that delta cells seem to be indeed capable of proliferation in adult mice is very exciting, specially since this cell types is mostly post-mitotic throughout the lifetime of adult mice

      Major weaknesses:

      - Although the study is data rich, it lacks the description of the molecular details of the different types and sub-types of cells identified and the manuscript as it is written is most times confusing in the presentation in the results and concepts. This makes it difficult for the reader to fully appreciate the degree of "heterogeneity" observed and the lack of a detailed description of these phenotypes precludes any meaningful comparison with other published results describing beta cell heterogeneity in the mouse. For example, the balance of PDX1/MAFA in the mouse islet has been shown to be important for islet function (see work by the Hodson lab), however these two transcription factors are not mentioned/analyzed in this manuscript.

      - The analysis of the imaging data, particularly of the number of delta cells in sham/ppx isolated islets is subpar. Here, the authors use whole islet fluorescence intensity (Fig2B-D) or smFISH (FigE-G) to quantify delta cell mass. These results are inconclusive since this enhanced fluorescence signal may also be explained by delta cell hypertrophy and/or an increase number of delta cell filopodia and not necessarily more delta cells.

      - The authors show that beta-cells with neighboring delta cells are likely the "int-beta" cell phenotype identified with MARS/PIC-seq. However, this important observation is only supported by the validation of two "int-beta" marker (Fkbp11, Ins2). Moreover, and given the peripheral distribution of delta cells, these results imply that beta cells in the periphery are molecularly different from other beta cells and may have overlapping features with virgin beta cells described by the Huising lab. However, no attempt is made to correlate these new findings with the published data and the physiological relevance of these findings remain mostly speculative.

    1. Reviewer #1 (Public Review):

      The manuscript by Stemm-Wolf et al. investigates the role of the splicing factor SON in centriole assembly, which was previously identified by others in a genome-wide screen for factors required for centriole duplication. The authors first confirm that SON impairs centriole duplication. They show that procentriole formation occurs, but elongation and proper centriolar microtubule triplet formation fail. Using mRNA sequencing, the authors extend the list of previously described SON splicing targets, providing the most comprehensive list to date, including many components of centrioles and centriolar satellites. The authors then attempt to identify targets crucial for SON's role in centriole assembly and found that depletion of CEP131, a centriolar satellite component, phenocopies SON depletion to some degree. They further observed alterations in centrosomal microtubule organization and a reduction in centrosome proteins in the vicinity of centrosomes after SON depletion, which makes them conclude that defective trafficking of centrosome components, as part of satellites or similar trafficking particles, is the main cause of the centriole assembly defects. However, altered centrosomal microtubule organization after SON knockdown was observed previously and there is very little data that goes beyond this finding. It also seems that, rather than conducting a more comprehensive analysis, the authors have focused on a few candidates that they thought would help to explain SON depletion phenotypes. However, those that have been tested, alone or in combination, do not or only to a limited extent recapitulate SON depletion and none was tested for an involvement in the altered centrosomal microtubule organization phenotype. Moreover, considering the long list of centrosome proteins affected by SON, the phenotype may not involve only one or two proteins. At the end the authors argue that katanin, also a splicing target of SON, may be involved in altered centrosomal microtubule organization, but there is no experiment to test this. In conclusion, despite various detailed analyses, there is not a major advance regarding mechanistic insight and the offered explanation that impaired trafficking around centrosomes causes centriole assembly defects after SON depletion is relatively vague.

    1. Reviewer #1 (Public Review):

      The authors used BioID to identify SMC5 proximal proteins in HEK293T cells. In one of the top hits, they recognized an NSE5-like domain and proposed it (SIMC1) to be the new NSE5-like subunit of the human SMC5/6 complex. Accordingly, they showed its colocalization and co-immunoprecipitation with the NSE6/SLF2 subunit. They confirmed SIMC1-SLF2 direct physical interaction by their copurification. Furthermore, using cryoEM and AlphaFold modelling, they were able to determine the structure of the SIMC1-SLF2 dimer at 3.9A resolution. They also showed that the SIMC1-SLF2 dimer is mutually exclusive to the previously described SLF1-SLF2 dimer. To make their structural data more solid, the authors should have mutated contact residues to support their structural data and their conclusion that the similar SIMC1 and SLF1 surfaces bind SLF2. Otherwise, the above data are very strong and support the author's conclusions about the new NSE5-like subunit of the human SMC5/6 complex.

      Further, the authors showed that the SMC5/6 complex is localized to SV40 T-large (LT) antigen-induced foci and PML bodies. This localization is dependent on the SIMC1 and its SUMO-interacting motifs. In addition, several SUMO pathway factors (known components of PML bodies) were identified in the SIMC1 BioID search. These data suggest a strong connection of SMC5/6 to SUMO-rich sites. Based on this connection, the authors speculate that SIMC1-SLF2 specifically regulates responses to viral challenges while SLF1-SLF2 is specifically involved in DNA damage responses. Given the roles of PML bodies in homologous recombination (DNA damage repair, alternative telomere lengthening), their experiments do not directly prove this assumption. Actually, SMC5/6 was already shown to be localized to PML bodies and involved in alternative telomere lengthening (https://pubmed.ncbi.nlm.nih.gov/17589526/). In conclusion, further experiments are required to show the exclusive roles of distinct SLF2 complexes and the specific involvement of SIMC1-SLF2 in antiviral responses.

      Major requests:<br /> 1. The biochemical data on the SIMC1-SLF2 dimer are solid. However, the authors did not verify the structural data by mutating surface residues mediating SIMC1-SLF2 interaction (although they prepared various constructs and generated "combo" mutations at the different surfaces - Fig. 7). They should mutate contact residues to support their structural data and their conclusion that the same SIMC1/SLF1 surfaces bind SLF2.<br /> 2. The claims about the exclusive roles of SIMC1-SLF2 and SLF1-SLF2 should be better substantiated. The control experiment showed (no)localization of SLF1 to LT-induced foci and PML bodies (and vice versa SIMC1 (no)localization in DNA-damaged cells like in Raschle, 2015 - https://pubmed.ncbi.nlm.nih.gov/25931565/) should be performed.<br /> 3. In addition, the sensitivity of the SIMC1-/- cells to replication stress and DNA damage agents should be compared to the other SMC5/6 mutants.<br /> 4. SIMC1 BioID (under native/denaturing conditions) experiment suggests that multiple SUMO pathway factors are proximal to SIMC1. However, there is no evidence for the interaction between SIMC1 and ZNF451 (p. 12/line 228 + p.28/line 508). The coIP experiment (Fig. 3D) was performed in a biotin-streptavidin manner suggesting the proximity of these proteins but not the interaction. The coIP experiment should be performed with anti-myc or anti-GFP antibodies.

    1. Reviewer #1 (Public Review):

      This manuscript is a continuation of the impactful work of Lee et al. (2015) [PMID: 25392270], in which the location and identity of brown adipocyte progenitors and their proliferation and differentiation driving brown adipogenesis was significantly refined. In this work, Burl and Rondini et al. attempt to elucidate the transcriptional profile of the stromal vascular fraction of murine brown adipose tissue in the context of thermogenic stimulation and activation of the depot. The authors combined a systems approach that generated detailed information on the dynamics of cellular transcriptomes over a fine time course with a reductionist approach that provides strong causal evidence for the mechanism of brown adipocyte neogenesis, namely showing its reliance on the adrenergic activation of mature brown adipocytes to indirectly stimulate progenitor proliferation and differentiation and the possible involvement of dendritic cells in this process. Additionally, the manuscript provides strong evidence of a contribution from myeloid cells in the process of progenitor proliferation and differentiation - an often noted but poorly understood process. Overall, this is a timely and well-rounded work that will provide beneficial data for public use and further resolve the complexities underlying brown adipose physiology.

    1. Reviewer #1 (Public Review):

      Understanding how changes in microRNA (miRNA) levels affect human brain development remains a crucial task that has been largely understudied. This paper is an unbiased, large-scale, important contribution to this effort. The authors first performed small RNA sequencing from mid-gestation human cortical tissue to identify expressed miRNAs. Then, they mapped 85 local-miRNA-eQTLs that rarely colocalize with mRNA-eQTLs for the host mRNA. This is a very significant discovery, with a broad impact on the field. The lack of colocalization between miRNA- and mRNA-eQTLs reinforces the theory that miRNA transcriptional mechanisms are often independent of the host gene. Interestingly, miRNA-eQTLs map less frequently to risk loci. Considering the well-known importance of miRNAs during brain development, it is likely that the expression mechanisms of miRNAs are tightly regulated, as the authors suggest. The authors then focus on one specific miRNA-eQTL that affects miR-4707-3p and show colocalization with GWAS signals for head size (smaller) and educational attainment (decreased). They hypothesize that miR-4707-3p affects brain development by altering progenitors' proliferation and they partially support the hypothesis by over-expressing miR-4704-3p in human neural progenitor cells and showing an increase in neurogenesis.

    1. Reviewer #1 (Public Review):

      The manuscript by Miyashita et al describes deubiquitylation of PAF15 by USP7 and its role in regulation of replication-coupled DNA methylation maintenance. Previous studies from the same group showed that UHRF1-mediated dual mono-ubiquitylation of PAF15 (PAF15Ub2) promotes PAF15 chromatin loading and acts as a unique and critical molecular mark to recruit DNMT1 to the DNA replication sites. Here they show that termination of PAF15Ub2 signaling is regulated by USP7-mediated deubiquitylation and ATAD5-mediated removal from chromatin. These findings provide a molecular understanding of how the maintenance DNA methylation machinery is disassembled post replication.

    1. Reviewer #1 (Public Review):

      Obesity is considered a key risk factor in the development of insulin resistance, which is itself a key component of type 2 diabetes. As such, a common experimental practice to induce insulin resistance in rodents is to render them obese by feeding them a high-fat diet. However, there are certain individuals in the human population that are obese but do not present with insulin resistance (so-called "healthy obese"). The present studies sought to determine whether obesity per se is always associated with insulin resistance. To this end, the authors fed mice either a low-fat chow diet, a high-fat diet, or a high-starch diet. The high-fat and high-starch diets both promoted equivalent weight gain and obesity. As expected, the mice rendered obese by eating the high-fat diet were insulin resistant, as determined by several experimental tests to assess insulin action. Surprisingly, the mice rendered obese by consuming the high-starch diet were not insulin resistant. When the authors measured a variety of factors in multiple tissues, they determined that mice fed a high-starch diet showed markers of the improved handling of carbohydrates, which likely explained why these mice did not display insulin resistance. These are important findings that provide nuance to the fields of obesity and diabetes by suggesting that not all forms of obesity are necessarily associated with insulin resistance. Furthermore, the molecular analyses conducted in these studies identify potential targets for improving the handling of carbohydrates in obese individuals.

      The approaches used by the investigators were outstanding. Several different experimental tests were used to assess insulin action, including glucose and insulin tolerance tests, measurements of insulin signaling, and the hyperinsulinemic-euglycemic clamp. The conclusions are largely supported by the results obtained. One minor weakness is that these studies are largely observational in that they show correlations between obesity, degrees of insulin resistance, and changes in specific genes/proteins and/or metabolites, but they do not necessarily show causation. This is considered a minor weakness since the goal of the study was not to show causation but instead to test whether obesity is always associated with insulin resistance.

    1. Reviewer #1 (Public Review):

      Johnstone et al. developed an elegant luciferase-based construct (called LABL) to investigate in vivo the transcriptional dynamics controlled by the period promoter, one of the core circadian clock genes. Compared to previously generated reporter tools, the combination of LABL and the powerful UAS-GAL4 system provides an unmatched instrument to dissect with cell- and tissue-specific resolution the rhythmic transcriptional dynamics orchestrated by tissue-specific circadian clocks. Exploiting this strategy, the authors investigated rhythmic transcriptional dynamics in neuronal and peripheral clocks and their dependence from PDF signalling, a key neuropeptide for the functioning of Drosophila brain clock. They show that both neuronal and peripheral clocks exhibit distinct oscillatory properties and that they differentially behave upon loss of PDF signalling. Moreover, they uncover a peculiar ~60 h infradian rhythmic oscillation which is PDF signalling-dependent in neuronal clocks but not in most peripheral clocks. In sum, this manuscript provides an in-depth analysis of the oscillatory properties of neuronal and peripheral clocks in Drosophila, and whether they rely on PDF signalling to stabilize or sustain their oscillatory properties.

      Strengths:<br /> The LABL construct is widely applicable in animal models with advanced genetic toolkits, and represent a major advancement in our investigation of cell- and tissue-specific dynamics underlying the rhythmic transcription driven by circadian clocks. This tool definitely represents an advancement compared to previously available reporter lines which did not allow tissue-specific or in vivo analyses. Moreover, especially the experiments dedicated to peripheral clocks provide interesting and novel insights, as they have been characterized to a less degree compared to the brain ones. Finally, the peculiar ~60 h infradian rhythmic oscillation identified represents, to my knowledge, a previously unidentified aspect of biological clocks, showing the LABL construct might provide further advancement in our understanding of molecular oscillations.

      Weaknesses:<br /> Although the LABL construct could potentially provide a great tool for the interrogation of circadian clock properties (in animal models), I personally think the authors are stretching this aspect too much towards the biomedical application. In several parts of the paper, they envisaged an application in medical and pathophysiological contexts. Although in principle I agree this might represent a future application, currently a genetically-encoded reporter construct cannot be used for human studies (if we exclude in vitro studies i.e. cell culture and organoids), limiting the actual impact that the authors did not fail to emphasize. Thus, the authors should be more specifically focused on the short-term benefits (monitoring disease progression in animal models, in vitro studies, etc...). However, this should not diminish the benefits that such a tool could provide for studies in animal models. On the other hand, the authors do not provide insights on the nature of the ~60 h infradian rhythms identified. This is a very important element of the biological findings of the paper, yet the authors simply state that such detailed investigation goes beyond the scope of the study. I personally think that such novel and unusual oscillatory dynamics should have been better explained, theoretically, and perhaps also experimentally, to strengthen the biological advances provided by this study. Additionally, the authors fail to correctly place this phenomenon in the context of the existing literature, as variation of oscillatory dynamics in constant condition (i.e. switch from ~24 h to ~12 h oscillations in marine models kept in DD), in peripheral organs (i.e. ~12 h transcriptional oscillation in mouse liver) and upon clock manipulation have been already reported, although to my knowledge not of ~60 h. Finally, a substantial part of the experiments is dedicated to unravel the contribution of PDF signalling in driving neuronal and peripheral oscillations. Although this neuropeptide is widely considered as key to synchronize brain clocks, this is not known for the peripheral clocks explored in this study. PDF has been shown to coordinate peripheral clocks (i.e. prothoracic gland, Myers et al. 2003), but to my knowledge not in muscles, gut, fat body, all tissues where the expression of the PDFR has not been reported. All considered, it is not unexpected to me how, for most of the peripheral clocks investigated, PDF signalling is not critical.

    1. Public Review:

      This manuscript uses budding yeast to uncover a new input for the central metabolic regulator TOR complex 1 (TORC1): manganese (Mn) levels. Using both genetic manipulations in vivo, as well as in vitro protein kinase assays, they show that Mn levels are direct inducers of TORC1 activity and that TORC1 activity modulates intracellular Mn levels. Importantly, they show that this dependence on Mn is conserved to humans. The combination of both in vivo and in vitro approaches as well as the demonstration of conservation of this phenomenon make the manuscript both broad and deep. While the authors do not actually measure intracellular levels of Mn at any point, they do bring a plethora of indirect evidence that Mn levels are indeed the defining parameter for TORC1 in vivo, and this is corroborated by the in vitro studies.

    1. Reviewer #1 (Public Review):

      In this manuscript, Carrier and collaborators derive a methylation signature for melanoma aggressiveness from the sequential analyses on various cell lines in different organisms and test it in a set of primary and metastatic melanoma tumours. However, I think that some of the claims are a little premature as a broader sample size would need to be tested to assess the signature robustness and applicability.

      Strengths<br /> - The approach the authors take is innovative and I agree with their premise that genes that make cells be more aggressive should be detected across different organisms.<br /> - Different organisms were evaluated.<br /> - Figures are illustrative and the narrative is very clear.

      Weaknesses<br /> - The sample size is small. In my opinion, a broader and more diverse set of samples would need to be tested if authors suggest making a diagnostic kit with the genes in their signature<br /> - A more comprehensive comparison with what other authors have found when doing similar studies would be needed to put in context their results.

    1. Reviewer #1 (Public Review):

      Burton, Wachowiak, and colleagues use an established olfactory bulb imaging preparation to perform a large-scale analysis of odor responses across the dorsal olfactory bulb. The strengths of the study involve a large odor set, and a broad odor concentration range. The major finding from this work is that most olfactory glomeruli display remarkably sharp tuning. These observations are surprising and important, given that the canonical model in the field is that odors are instead represented by combinations of low-affinity olfactory receptors. A minor issue is that responses were only analyzed in a fraction of glomeruli which were surgically accessible due to their dorsal location. Nevertheless, it seems safe to draw general conclusions given the large number of OR and TAAR glomeruli imaged. Imaging approaches seem expertly performed and conclusions appear solid.

    1. Reviewer #1 (Public Review):

      Martinez-Cervantes et al. investigate unimodal sensory preconditioning which affects odor responses even to a non-trained odor. In a previous publication, they could show that this effect was only revealed when they inhibited Rac1 in the mushroom bodies. Now, by performing functional imaging, they could additionally show that this effect is detectable in the activity level of the MBON-y1 after training. Performing rigorous experiments further revealed that the sensory preconditioning effect is strongly dependent on sensory preconditioning ISI and trial repetition, but independent of the odor type used.

      The authors nicely dissected the sensory preconditioning effect itself by varying the odor exposures, the gap between odor exposures, and the odors they used. With this, they could show that under certain conditions (short ISI of 1s), the effect is also prominent in WT flies with functioning Rac1. Furthermore, they could show that Rac1 inhibition only reveals the effect for intermediate ISIs (30s), but not very long ISIs (5 min.). Another interesting point they make is that the effect is odor type independent, and thus a general phenomenon. This characterization will be helpful to compare the effect between species and other learning paradigms. An interesting finding is also that the sensory preconditioning can affect neural activity levels, however, does not show in the behavior under certain conditions. Thus, the brain activity of a certain cell type per se not always affects the behavioral output. A very important point for the field of neuroscience.

    1. Reviewer #1 (Public Review):

      In their manuscript, Porte et al. investigate the role of Pentraxin 3 in S.pneumoniae infection. The authors provide a series of experiments in which they show that PTX3 is induced systemically and locally after S.pneumonieae infection in a time-dependent manner and its correlation with IL-1b levels in the lung. Using Ptx3 k.o. animal, the authors provide evidence that this gene confers resistance to infection. Further, it is convincingly shown that PTX3 in pneumococcus infection is derived from non-hematopoietic cells and predominantly the endothelial compartment and regulates neutrophil-mediated inflammation. This is a very elegant and complete manuscript that is a joy to read.

      I want to highlight the main strength of the manuscript, which is its the usage of bone marrow chimeras in addition to total as well as tissue specific mouse strains that support their claims.

    1. Reviewer #1 (Public Review):

      In this manuscript, the authors aim to evaluate the flexibility of the amination network in E. coli. To achieve this, they knock out key enzymes GDH and GOGAT (which supply the majority of the cell's fixed nitrogen by aminating 2-oxoglutarate to glutamate), creating a glutamate auxotroph strain (glut-aux). They first consider whether exogenous amino acids can either replace glutamate, create glutamate through transamination, or be converted directly into glutamate. They found that many amino acids rescued growth of glut-aux, either through conversion to glutamate (proline, via putA), or transamination to glutamate (many, via aspC), and validate this finding with isotopic nitrogen labeling and demonstrating concentration-growth rate dependence. Then, for some amino acids that didn't initially rescue growth in the glut-aux strain, the authors engineer growth rescue through laboratory evolution, gene deletion, and exogenous transaminase overexpression. Finally, they propose that E. coli may accommodate non-canonical (non-glutamate) ammonium assimilation. Informed by the glut-aux rescue experiments, they engineer two strains that assimilate ammonium through alternative amino acids: aspartate (via native aspA overexpression) and leucine (via exogenous leucine dehydrogenase overexpression).

      Expanding the repertoire and characterization of auxotrophic microbial strains is an important goal for synthetic biology and metabolic engineering. By creating an E. coli glutamate auxotroph strain, demonstrating and expanding growth rescue on other amino acids, and engineering alternative ammonium entry points, the authors support their claims of flexibility and promiscuity in the cellular amination network. These claims are corroborated by comprehensive growth data and isotope labeling. While certain aspects of their investigation are not novel and the manuscript could benefit from more contextualizing, their findings will be of broad interest to researchers investigating nitrogen assimilation in microbes, and those seeking to engineer E. coli for bioproduction and novel metabolic circuits.

      Strengths:

      *The collection of growth rate data is comprehensive, and in combination with nitrogen isotope labelling, paints a clear picture of amine donation (and ammonium assimilation, in figure 7). The growth rate dependence experiments represent an impressive amount of work, and are particularly informative in the strain engineering experiments in figure 6.

      *The putA and aspC knockouts are elegant demonstrations of the specificity and promiscuity of E. coli's amination network, respectively. The contextualization with previous in vitro data was very informative, and reporting the minimal effect of the ybdL knockout demonstrated the importance of the glut-aux strain in assessing the promiscuity of various transaminases in their cellular context.

      *Engineering the growth of glut-aux on four amino acids that didn't originally rescue growth is impressive, particularly getting exogenous transaminases to work as intended. As mentioned in the manuscript, this shows the potential for this particular auxotroph strain to serve as a growth-based selection platform for alternative amine sources.

      *Engineering alternative ammonium assimilation through aspartate with a simple native AspA overexpression is a very strong demonstration of the flexibility of E. coli's amination network. This result may be useful for metabolic engineers looking to optimize E. coli for growth on formate and other low-energy substrates for the production of biofuel and high-value products.

      Weaknesses:

      *The framing of hypotheses for alternative routes of amine donor assimilation are clarifying to a reader unaware of the range of amine supplementation options available to E. coli: (i) replacement of glutamate, (ii) amine donation to 2-ketoglutarate to create glutamate, (iii) indirect amine donation to 2-ketoglutarate to create glutamate, and (iv) conversion to glutamate. However, outside of the figure 1 caption and lines 97-100 in the results section, the hypotheses are not mentioned again according to this classification. Directly after introducing figure 2, the authors discuss the possible ways that various amino acids rescue the growth of glut-aux and hypothesize that amine transfer is responsible. It would be immediately helpful to organize this discussion by the i-iv classification system introduced in the preceding paragraph. Similarly, figures 5-7 can be classified in this way. For example, the action of PutA in figure 5, where you say that proline is "metabolized... to glutamate", is unclear, and presumably refers to being "metabolically converted to glutamate," hypothesis (iv).

      *Construction of a glutamate auxotroph strain, by deletion of gdhA and gltBD, is well-established (Dougherty et al, 1993), and has been standardized in the Keio collection (Baba et al, 2006). While it is critical that the authors used the same lambda-red recombinase strain for all deletions after making the glut-aux strain, it should be made clear to readers what has been done before by adding some context here.

      *Most of the experiments were conducted in M9 media with glycerol as the carbon and energy source. Glycerol is utilized by oxidative phosphorylation in E. coli, like glucose, but is not a preferred carbon source. However, glycerol leads to higher growth rates when amines are supplied by amino acids rather than ammonia, due to imbalances in 2-ketoglutarate (Anat Bren et al, Sci Rep 2016). Knowing that cellular pyruvate and 2-ketoglutarate concentrations are different depending on carbon and nitrogen source, and both are relevant for thermodynamic favorability in cellular amination networks, the authors should justify why glycerol is the carbon source used for most experiments, as they justify fumarate in figure 7.

      *In figure 3, it's unclear why AFLMPST and R are the only proteinogenic amino acids that are analyzed for 15N labeling. One might assume it's a technical issue for the mass spectroscopy data, but the relatively small selection of both amino-donor amino acids and 15N fraction amino acids makes initial interpretation of the figure confusing. Emphasizing that the 15N measurements are representative of all proteinogenic amino acids, and the amino-donors are representative of all amino acids that rescued growth for glut-aux would help. Additionally, figure 3B could benefit from greater distinction between amine groups and ammonium ions. Also, there is presumably a typo in the "external amine donor" cartoon, with 14NH4+ in the grey circle rather than 14NH3+.

      *Adaptive laboratory evolution is not a fair description of how the authors found that a dadX mutation led to growth rescue of glut-aux+alaA on alanine (line 221). Although two weeks of growth may allow for evolution of E. coli in some cases, a single growth curve over two weeks is similar in duration and concept to some of the other (non-evolution) growth curve experiments (Figure 6C). Rather than being evolved from a series of mutations, the appearance of dadX mutants is much more likely the result of highly stringent selection on mutations acquired during outgrowth before the selection was applied. Given the inoculum size of ~106 cells from overnight culture, and E. coli's spontaneous mutation rate of ~10-3 mutations per genome per generation, there is a reasonable probability of isolating one or more dadX mutant cells in the inoculum, which then expanded over two weeks (rather than evolved), given the growth rate of those mutants evident in figure 6A. Labeling this experiment as a spontaneous mutant selection of glut-aux+alaA engineered strain would make the aims and outcome of the experiment more transparent. Alternatively, one could report the growth data from the experiment, if available, or conduct a selective plating of prepared glut-aux+alaA inocula on M9+alanine plates to show the existence of a small mutant population.

      *Beta-alanine and ornithine are important non-proteinogenic amino acids, but there are hundreds of others. It is unclear to the reader why they were selected for assessing amine donation to glut-aux, or why beta-alanine was selected for adding an exogenous transamination route. Stating the relevance of these amino acids to E. coli's amination network or metabolic engineering, or stating that they were serendipitous findings of rescue and no rescue of glut-aux by non-proteinogenic amino acids, would make the choices for strain engineering seem less arbitrary. Similarly, strains engineered to utilize glycine or serine as amine donors (fig 6), or aspartate or leucine as centers of ammonium fixation (fig 7), seem to be chosen arbitrarily out of many amino acids that did or did not initially rescue growth of glut-aux. Simply stating that these were the best (or worst) amine donors based on growth rescue in figure 2 would explain why the strain engineering was not systematic over all 20 proteinogenic amino acids for ammonium fixation or amine donation.

    1. Reviewer #1 (Public Review):

      This is exciting work, with elegant experimental designs that are rigorously executed. The work will appeal to a broad readership. Specific comments are listed below.

      The relationship between lobe cannibalism and mtDNA reduction seems to be too mild. The authors first show that about half of mitochondria are removed in PGCs between the embryo and L1 stages. At this point, the number of mitoDNA/cell decreases by half compared to the embryonic stage, and based on this result, they propose that this is a bottleneck. To me (intuitively) 50% reduction does not seem strong as a bottleneck. Perhaps it is better to tone down the claim a bit here (unless they can provide stronger evidence, such as modeling, that a 50% reduction is sufficient to cause a bottleneck. Textual editing would suffice, though (unless they already have the evidence for bottleneck).

      Overall, one thing that struck me was that, when they assay 'selection' by mtDNA (e.g. the number of mtDNA, frequency of mutant mtDNA, reduction by autophagy pathway, reduction by pink1, etc), the effect seems to be way too mild. However, in Fig1c, d, and Fig2c, the amount of mitoGFP that goes to the lobe seems to be at least 80-90%. Is this because the 'striking' images were selected for presentation? Alternatively, I wonder if mito with more mtDNA actually end up surviving, and mito with fewer mitoDNA goes to the lobe (as a result, the amount of mito removed to the lobe is much higher than the amount of mtDNA removed). If so, is this actually THE selection that happens during embryo-to-L1 transition? Is there any way to measure the amount of mito and amount of mtDNA simultaneously?

    1. Reviewer #1 (Public Review):

      In this manuscript, Somaiya and colleagues make an interesting contribution to our understanding of the development of the visual system. The group has previously found that the presence of retinal ganglion cell (RGC) axon terminals in the lateral geniculate nucleus (LGN) promotes the migration of GABAergic interneurons into the LGN by stimulating FGF15 expression in astrocytes. The goal in the current paper was to test how RGCs promote this process. The authors suggest a model in which neuronal activity is not required for this, but rather Sonic Hedgehog (SHH) produced by RGCs and released from axon terminals can be received by astrocytes to stimulate FGF15 production, leading to interneuron migration.

      They present three major findings in support of this model:

      1) Transgenic expression of tetanus toxin in RGCs to prevent synaptic activity did not prevent interneuron migration into the LGN.<br /> 2) RGCs expressed SHH at the relevant developmental time point, and astrocytes within the LGN expressed Ptch1 (the canonical SHH receptor) along with other SHH signaling components.<br /> 3) Disruption of SHH - either in all neurons or in RGCs - prevented astrocytic FGF15 expression and interneuron migration into the LGN.

      In general, the manuscript was well-written and carefully reasoned. The authors concede that a key experiment to close the circle in their model could not be performed for technical reasons, namely astrocyte-specific disruption of Ptch1. Accepting this limitation, the expression analyses for SHH signaling components using RNAscope and a genetically encoded reporter were enough to convince this reviewer that astrocytes were the main cell type in the LGN capable of responding to SHH signal. However, there was an important control missing from the SHH experiments, as the authors did not show that the RGC axons successfully targeted to the LGN in the absence of SHH. This leaves open alternative explanations involving other axon-derived molecules.

    1. Reviewer #1 (Public Review):

      Here, Minkina et al., present 'The LORAX', a CRISPR-based single-cell lineage tracing to understand heritable and non-heritable variation in gene expression. To this end, they have adapted sci-RNAseq, a plate-based single-cell RNA sequencing method, to capture lineage barcodes. Additionally, they have developed a novel computational pipeline to construct lineage trees from the resulting data to identify differentially enriched genes between distinct branches of their lineage tree. To explain heritable variation in gene expression, they use allelic ratios of transcripts to infer large copy number alterations along branches of their lineage tree. Finally, to understand non-CNA-based reasons for variation in clonal gene expression, they adapted sci-ATACseq, a plate-based single-cell ATAC sequencing assay, to capture CRISPR lineage barcodes. Using an existing lineage tree derived from sci-RNAseq, they are able to assign individual sci-ATACseq cells with lineage information to distinct branches of the lineage tree and associate gene expression and chromatin accessibility landscape within sub-clones. They use this information to rule out CNAs as a source of clonal variation in gene expression for some of their candidate genes.

      This manuscript aims to study the heritability of cell state, an exciting field re-invigorated by recent technical advances in single-cell lineage tracing. However, enthusiasm for the approach is tempered for several reasons. First, the authors apply their lineage tracing method to a clonal population of HEK293T cells, an immortalized cell line. Thus, it is currently unclear what the broader biological significance will be, and whether this approach can be readily deployed in other systems. Second, the authors propose a new computational pipeline for constructing lineage trees but fail to fully benchmark its accuracy using ground truth data. Third, while the authors argue that lineage resolved chromatin accessibility landscapes could help explain some of the heritable gene expression patterns observed in their data, they do not convincingly demonstrate this with their data.

    1. Reviewer #1 (Public Review):

      The manuscript by Akalu et al. is well written and contains thoroughly executed experiments, that challenge previous conclusions obtained using the Mertk-/-V1 mouse model, in different tissue contexts.

      Using several new mouse models, the authors functionally show that Mertk loss alone is not sufficient to trigger the retinal degeneration phenotype characteristic of Mertk-/-v1. Rather, they demonstrate that retinal degeneration requires the combined loss of Mertk and Tyro3, a second TAM receptor exhibiting hypomorphic expression in the Mertk-/-v1 model, due to its expression from a DNA portion carried over from the 129 ES cell background used to generate the Mertk-/-v1 line. The study further provides compelling functional data by demonstrating that Tyro3 ablation in the newly generated Mertk-/- v2 BL6 model, is required to recapitulate the retinal degeneration phenotype.

      Interestingly, the work presented here also reports different outcomes in cancer contexts, where the authors show that the Mertk-/- v1 exhibits remarkable anti-tumor resistance in two independent "cold" cancer models (YUMM1.7 sc model and GL261 intracranial GBM model), which were not recapitulated in the newly generated Mertk-/- mouse lines on a BL6 background, namely the Mertk-/- v2 and Mertk-/- v3 as well as Mertk-/- v2 Tyro3-/-v2 that lack both Mertk and Tyro3, pointing to additional gene modifiers being at play. These findings are highly relevant for the cancer field and would certainly benefit from future experiments suggested by the authors to identify the modifier genes to bolster their significance.

      Overall, this well-executed study demonstrates that the Mertk-/-v1 model carries additional changes in its genome that affect the expression of several genes, including Tyro3, that act as confounding events and limit the direct inference of observed phenotypes to Mertk deficiency alone.

      A potential weakness in this aspect resides in the fact that the newly generated mouse models Mertk-/- v2 and Mertk-/- v3 appear to display a compensatory increase in the levels of TYRO3 protein, which needs to be discussed by the authors.

    1. Reviewer #1 (Public Review):

      The overarching objective of the study reported in this manuscript was to identify cell-membrane active agents (CMAAs) that potentiate antibiotic killing of Gram-positive pathogens by vancomycin. This work builds upon the research group's previous findings that a class of CMAAs, rhamnolipids, produced by Pseudomonas aeruginosa synergize with aminoglycosides in the killing of Staphylococcus aureus. In the current study, the group investigated the capacity of 7 additional CMAAs to potentiate vancomycin killing of S. aureus. The focus on vancomycin is appropriate given that this is the most commonly prescribed antibiotic for serious Gram-positive infections, and yet this antibiotic is also associated with a high rate of treatment failure that cannot be ascribed to resistance alone. The discovery of compounds that potentiate vancomycin activity or re-sensitize tolerant or resistant bacteria to the antibiotic is therefore of high significance to the field of infectious diseases. The authors discover that two unsaturated fatty acids, palmitoleic acid (PA) and linoleic acid (LA), potently synergize with vancomycin to kill S. aureus. Although the antimicrobial activity of select UFAs toward bacterial pathogens has long been recognized, the mechanisms by which these compounds kill bacteria or potentiate antibiotic activity are less clear. The authors, therefore, conducted a series of experiments aimed at understanding the mechanistic basis for UFA potentiation of vancomycin activity. Using a panel of antimicrobial compounds that target different steps of cell wall biosynthesis, the authors suggest that the accumulation of lipid II is necessary for the PA potentiation of vancomycin. To understand how dual PA/VAN treated cells are being killed, assays of membrane depolarization and permeability are conducted and reveal that PA/VAN treatment may increase permeability. However, in this particular experiment, it is unclear if this is different from PA treatment alone. The authors then utilize high-resolution fluorescence microscopy and TEM to demonstrate that PA/VAN treated cells have alterations in the membrane fluidity, septal architecture, and localization of cell division and peptidoglycan synthesis machinery. These findings lead the team to conclude that dual PA/VAN treatment delocalizes divisome and peptidoglycan biosynthesis machinery through the accumulation of lipid II moieties and subsequent effects on membrane fluidity. In a final experiment, the authors show that, excitingly, PA can re-sensitize vancomycin-intermediate and vancomycin-resistant Gram-positive bacteria to vancomycin.

      Strengths of the manuscript:

      1. The discovery of natural compounds that re-sensitize antibiotic-tolerant or antibiotic-resistant bacterial pathogens to commonly used antibiotics is a critical unmet need in the field of infectious diseases<br /> 2. This study will be of broad interest to researchers focused on microbial pathogenesis, drug discovery, and antimicrobial-resistant bacteria.<br /> 3. Multiple lines of evidence convincingly demonstrate the membrane and septal perturbations induced by dual PA/VANC therapy, suggesting a mechanism of action.<br /> 4. Drug doses are carefully considered based on pilot data.<br /> 5. High bacterial inocula are tested, which increases the confidence that dual therapy is capable of killing at least some tolerant/persister cells.<br /> 6. The manuscript is extremely well-written and carefully considers prior studies reporting on the antimicrobial activities of UFAs.

      Weaknesses of the manuscript:

      1. Although dual PA and vancomycin therapy shows clear efficacy against vancomycin sensitive and resistant isolates of S. aureus and the high inocula used are likely to contain some amount of stochastically-developed persister cells, it is unclear what bacterial growth phase was tested in the killing experiments. Given that some forms of antibiotic tolerance, such as "tolerance-by-lag," will not be appropriately modeled in exponential phase bacteria, it would be important to know if bacterial cultures approaching the stationary phase are also effectively killed by UFAs plus vancomycin. Although the manuscript reports a 1:1000 dilution, it is unclear how long the bacteria are grown prior to challenge with dual therapy, and therefore conclusions about tolerant cells may need to be tempered.<br /> 2. Although a strength of the manuscript is that multiple approaches are used to query membrane and septal effects of dual UFA/Vanc therapy, these studies only indirectly support the proposed mechanism regarding the accumulation of lipid II and alterations of membrane fluidity as the underlying reason for antibiotic sensitization. Future studies will be required to rigorously confirm this proposed mechanism, although this is considered a minor weakness.

    1. Reviewer #1 (Public Review):

      The study by Jimenez et al. investigates the molecular mechanism by which dosage compensating (DC) condensins spread along the X chromosomes of C. Elegans worms. It has been previously known that DC condensins are loaded onto X chromosomes at specific sites called rex, that are distributed along the whole length of the chromosome. Here, Jimenez et al showed that an insertion of one or multiple rex sites into an autosome is sufficient for DC condensin recruitment and spreading. Using ChIP-seq, they show that DC condensins spread for hundreds of kilobases on the both sides of the rex site, with occasional sites of accumulation. The authors used Hi-C to study the effect of rex insertion on the chromosome conformation. They found that individual rex sites form boundaries that insulate spatial contacts regardless of their orientation, while two adjacent insertion sites can form loop-anchored contact domains. These findings support the model, in which DC condensins spread along the chromosome via the process of loop extrusion. In addition, the authors fused the X chromosome with the chromosome V and demonstrated that condensins can spread for multiple megabases across the fusion site and induce local compaction of the affected region. Finally, the targeted dCas9-Suntag complex to multiple adjacent copies of a repeat on chrX to demonstrate that condensins can accumulate at "bulky" obstacles.

      Overall, I find the experiments in this study are sufficient to support the key statements. My only comment is minor. In the discussion, the authors seem to imply that their data supports bi-directional loop extrusion by DC condesins (p.11 line 16). Yet, their data is consistent with a model, where condensins are loaded in a random orientation, but then extrude loops only into one fixed direction. Along these lines, ref. [20] (Terekawa et al) is mentioned as supporting bi-directional extrusion, while this paper in fact demonstrated that, once loaded onto DNA, condensins keep moving into a single direction with barely any observed inversions.

    1. Reviewer #1 (Public Review):

      In this manuscript, Germanos et al present preclinical evidence of a dynamic interplay between tumor microenvironmental elements underlying prostate cancer initiation, progression, and emerging therapeutic resistance in the transgenic mouse model. The authors identify an intermediate luminal cell population trans-differentiating from a hypo-proliferative basal cell subset, meanwhile, hyper-proliferative basal cells replenish a non-differentiating basal subpopulation. The meticulous methodologic approach identifies candidate cellular interactions in fibroblasts, MDSCs, and immune cell populations associated with PTEN loss. The generalization of these findings to human data sets is of particular interest and recommended for future studies on this topic. Mechanistic studies with multi-cellular co-culture models are needed to extend and validate the findings in this report.

      Strengths and Weaknesses:<br /> The study focuses on a clinically highly relevant and timely topic. The strength of this manuscript is the meticulous description of the Methods and model development and the integration of state-of-the-art orthogonal data sets. However, the number of data points across the experiments (n = 2 or 3) with considerable variability in the Ptenfl/fl group limits the interpretation of findings. Additionally, further experiments are needed to validate these observations in human prostate cancer and establish the potential translational relevance of these findings.

      As such, the report is fairly descriptive, and expanding the discussion on the mechanistic studies needed to identify which of these interactions drives aggressive prostate cancer would improve this report.

    1. Reviewer #1 (Public Review):

      The current manuscript examined patients with inborn errors of immunity (IEI) using whole exome sequencing (WES) and identified de novo variants (DNVs) associated with the disease. They found 14 genes associated with DNVs, including four novel genes - PSMB10, DDX1, KMT2C, and FBXW11, and conducted a systematic assessment of affected genes.

      Given the level of heterogeneity underlying IEI, the sample size is limited. Although the authors clearly stated this, the analysis of the current manuscript does not add much value to describing genes affected by DNVs. The sample size is small to perform exome-wide evaluation (authors described they did "exome-wide evaluation" in Abstract - line 10 but there is no statistical evaluation to prioritize effect genes). They could go with systems biology approaches, explaining the biological pathway of affected genes or underlying cell types from immune single-cell datasets. As the authors stated that IEI constitutes a large group of heterogeneous disorders, there should be some analysis to explain the functional convergence of affected genes in disease development.

      For DNV identification, the authors filtered out variants with ExAC & gnomAD AF > 0.1% or GoNL AF > 0.5%. I think this is too lenient a cutoff for filtering for DNV. For example, gnomAD AF 0.1% is approximately ~200 individuals in population. Given the filtering parameters (<5 variation reads, <20% variant allele frequency, or low coverage DNVs), they did not use specific filtering metrics to find DNV and there might be false-positive variants in the final DNV set. As far as I can find in the manuscript, they used the GATK pipeline from the previous study (REF 29). The GATK unified genotype generates a range of filtering metrics to increase specificity in variant filtering. It is very surprising that the authors seem to use three parameters (variation reads → FORMAT:AD[1]; variant allele frequency → FORMAT:AB? and low coverage → FORMAT:DP? but the authors did not state the cutoff) to filter de novo variants, which are fragile to false-positive variant calling.

    1. Reviewer #1 (Public Review):

      Monteiro et al. sought to determine the role of various thyroid hormones (T3 and T4) in supporting circadian rhythmicity. The authors achieved this through gain of function experiments (T3) supplementation as well as comprehensive metabolic and transcriptional profiling. The authors find that T3 supplementation recapitulates a variety of manifestations of hyperthyroidism such as increased body temperature and increased food and water intake. Furthermore, the authors found that T3 supplementation leads to alterations in hepatic metabolic genes, ultimately culminating in alterations in glucose and lipid metabolism. The data generated in this manuscript will serve the field of circadian rhythm biology by providing an additional transcriptomic atlas of hepatic alterations during both times of day as well as in response to T3 supplementation.

    1. Reviewer #1 (Public Review):

      The authors of the paper provide new evidence of how prefrontal cortex of mutant mice used as a disease model of schizophrenia differs from wild type littermates. By analyzing local network dynamics at the level of specific cell type, authors shed new light on the circuit mechanisms that underlie changes in network dynamics in these mice.

      The claims in the submitted manuscript are supported by the data. I have a few comments and questions that need to be clarified.

      Average firing rates

      Authors claim that they saw a significant reduction in interneuron firing rates in Disc1 mutant mice compared to control mice Fig.1c. However, the difference could be general and not interneuron specific. Due to the high firing rates of interneurons, the statistical test will work better on interneurons than on pyramidal cells as pyramidal cells average firing rates are lower. What I suggest to do is to take interneuron cells that fire at a lower rate (lower 33% for example ) and compare the control and Disc1 groups. Also I would suggest to take pyramidal cells that have higher firing rates (upper 33% for example) and compare firing rates across the same groups. One would like to see if these differences are not due to changes in firing rates per se.

      Optogenetic tagging

      Authors indicate that light triggered and spontaneous spike waveform are similar Fig.1d. This is nice, but would be better to see all the tagged neurons. I would suggest showing all optically tagged neurons spike features. Authors can impose with a different color spike features of tagged neurons in Fig.1a. I suspect that since all PVI are narrow spiking and they must fall into the area of blue colored cells in Fig.1a.

      It was not clear why authors assessed only firing rates in last 25ms (line 348-349). If they have a clear justification for this they should provide it. But why not use the latency of the first spike also as an additional metric. A well tagged cell will respond to light pulse with short latency (within 5 ms). My concern is that non PVI cells may increase firing rate after 25ms of stimulation of PVI cells due to disinhibition.

      Spike cross-correlations

      The authors show that spike transmission probability from PYR to PVI is reduced in Disc1 mice compared to the controls Fig.2d and Fig.2e, but what happens to PVI to PYR spike transmission probability? Is it different in those groups? Answering this question is important since the authors discuss this topic in line 185-193.

      Authors could try to link oscillations with spike transmission probabilities. On line 180 authors discuss that lower synchrony between PVI might be responsible for observed reduction in gamma power in Disc1 mutant mice. With the available data authors could test this hypothesis. They can look at spike cross correlations in their pool of INT and PVI (if they have pairs of PVI recorded in the same session) population.

      An alternative way to link oscillations with lower spike transmission probabilities in PYR-PVI pairs is to use synchrony triggered LFP analysis. One could take all time points when PVI and PYR cells fired acausal spikes within 2ms window and look at the LFP around this time point. Than take the average of the synchrony-triggered LFP and look at the power spectrum.

      Cell assembly analysis

      The authors used 10ms for testing synchronization among pairs of PYR neurons in Fig.4a but 25ms for analysis of assembly dynamics. I think the authors justified why they used 25ms bin size, but it was not clear why they used 10ms? Could the authors clarify the reasons behind this decision?

    1. Reviewer #1 (Public Review):

      The data support the claims, and the manuscript does not have significant weaknesses in its present form. Key strengths of the paper include using a creative HR-based reporter system combining different inducible DSB positions along a chromosome arm and testing plasmid-based and chromosomal donor sequences. Combining that system with the visualization of specific chromosomal sites via microscopy is powerful. Overall, this work will constitute a timely and helpful contribution to the field of DSB/genome mobility in DNA repair, especially in yeast, and may inform similar mechanisms in other organisms. Importantly, this study also reconciles some of the apparent contradictions in the field.

    1. Reviewer #1 (Public Review):

      Montgomery and colleagues expand our understanding of gene dosage control by examining embryonic expression in a liverwort, the emerging model system Marchantia. Marchantia alternates between haploid and diploid phases, with the diploid, biparental embryo dependent on the haploid maternal parent. It has long been theorized that a form of genomic imprinting might exist in this context, but this has not been examined until now. By performing crosses between polymorphic parents and examining allele-specific gene expression, the authors show that transcription of the embryonic genome is primarily from the maternally-inherited alleles. Additionally, approximately half of the embryonic chromosomes are positive for H3K27me3 by immunofluorescence. By allele-specific CUT&RUN profiling, it is shown that H3K27me3 is biased towards paternally-inherited DNA. It appears that this difference is already present before the maternal and paternal pronuclei fuse. The authors take a genetic approach to determine whether H3K27me3 modifications are of consequence in the embryo. Disruption of E(z)2 and E(z)3 in the maternal parent leads to reduced H3K27me3 enrichment on paternal chromosomes and decreased maternal allele transcriptional bias. Ultimately the embryos are not viable. Taken together, the data support the idea that the maternal genome maintains widespread dominance over the paternal genome.

      1) For most experiments and analyses, embryos are the result of crosses between Cam-2 females and Tak-1 males. Since a reciprocal cross is not possible with these genotypes, the authors examine previously published data from Tak-2 females crossed to Tak-1 males. The analyses show that expression is strikingly biased towards the maternally-inherited DNA in both cases. The issue is that Tak-1 is the male in both sets of experiments. Thus, an alternative explanation is that the effect is specific to Tak-1 - that Tak-1 chromosomes are silenced in combination with either Cam-2 or Tak-2. This would be more akin to a phenomenon like nucleolar dominance - i.e. genotype-dependent rather than parent-of-origin-dependent.

      2) Some aspects of the data analysis need additional rigor. From the methods, it does not appear that any statistics were applied to determine whether genes were significantly biased away from the expected 1:1 maternal:paternal ratio. It is essential to do this - please refer to any mammalian or plant imprinting study.

      3) The authors show that e(z) mutant embryos grow more slowly and that most do not survive. They also show that mutants have reduced maternal allele bias. In terms of linking the phenotype to the gene expression change, it would be important to show that the total expression level of individual genes was altered in the mutants (for example, increased paternal allele expression might be compensated for by decreased maternal allele expression, in which case it would harder to connect the mutant phenotype to PCI). The authors should evaluate how many genes are differentially expressed between wild-type and mutant embryos.

      4) It's satisfying that when ez2 and ez3 are disrupted (Fig 5, Fig 5-fig supp 1D), that the IF for mutant embryos looks like H3K27me3 in vegetative nuclei (Fig 3A). But the paternal bias of H3K27me3 is still quite prevalent (Fig 5-fig supp1F) as is the maternal bias in transcription - the transcriptional ratio is not close to 50:50 (Fig 5B). The authors should comment or speculate on how paternal bias of H3K27me3 persists in this mutant, given their model. Perhaps the remaining H3K27me3 is from paternally supplied E(z). Since the paternal and maternal pronuclei are segregated for quite some time, a paternally supplied factor could also specifically mark one chromosome set (although it is less clear why this would be so from an evolutionary perspective). Generating paternal E(z) mutants would be interesting, but is likely beyond the current scope.

      5) From the genetic results, one can conclude that E(z)2 and E(z)3 are essential for viability and fecundity. But it is not yet clear, as claimed on line 339, that PCI is essential for viability and fecundity, as E(z)2 and E(z)3 may also have roles beyond or in addition to PCI. I suggest dividing this sentence into what one can conclude from the genetics, and what this suggests about the possible importance of PCI.

      6) Finally, paternal chromosome inactivation is perhaps too strong of a phrase to describe this very interesting phenomenon. There are thousands of genes for which expression is biased toward the maternal allele, but detectable paternal allele transcript is present in the embryos. It is important to get the name right now, because it may influence the field for a long time. For example, we now know that many genes on the "inactive X" are not inactive at all. But this phrase - X chromosome inactivation - continues to be the framing for much of the field, even though extensive caveats must be applied.

    1. Reviewer #1 (Public Review):

      Dosil et al. have extensively analyzed NK cell-derived extracellular vesicles containing miRNAs. They analyzed the miRNAs in NK cell-derived EVs and found that specific types of miRNAs are contained in NK cell-derived EVs. Furthermore, they found that NK cell-derived EVs have immunomodulatory functions for T-cell response as well as for monocytes and moDCs. This paper is well designed and provides important information on NK cell-derived EVs. However, it is unclear whether NK cell-derived EVs are different from EVs derived from other immune cells such as T cells and B cells.

      1. The authors analyzed human NK cell-derived EVs. The repertoire of miRNAs in NK-EVs may differ among individuals. It would be better to show the degree of individual differences.

      2. The authors analyzed the effect of NK-EVs on T cell response in Fig. 4. However, it is possible that EVs affect T cell responses in a nonspecific manner. It may be necessary to include control EVs.

    1. Reviewer #1 (Public Review):

      In this manuscript, Chandiran et.al explored the roles of Smad4 in regulating CTL differentiation during viral infection. By comparing the Smad4 or TgfbR2 deficient CD8 T cells during influenza infection, the authors noticed that Smad4 suppressed CD103 expression but promoted CD62L transcription. Further RNAseq experiments found that Smad4 deficient early effector CD8 T cells were endowed with tissue resident features. Among differential express genes, they observed significant changes in CD103, Eomes and CD62L expression. Using an in vitro culture system, the authors demonstrated that Smad4 could regulate Eomes mediated Itgae transcription. The authors also explored the Smad4/Eomes controlled CD62L expression during Tcm differentiation. Collectively, this manuscript stressed the reciprocal function of Smad4 and canonical TGFb pathways during the memory CD8 fate decision. While the gene expression regulation is of interest, the functional consequences of the regulation remains uncertain in the current study.

    1. Reviewer #1 (Public Review):

      This is an outstanding manuscript evaluating a mutation commonly seen in AML and MDS in the splicesome SF3B1. The authors demonstrate that this mutation leads to a shift in the production of a long-form of IRAK4 (called IRAK4-L), which is part of inflammatory signaling in immune cells. They demonstrate that IRAK4-L stabilizes the cell cycle protein CDK2, and targeting IRAK4-L with an inhibitor can induce differentiation and slow clonal uptake in murine transplantation models. The text is easy to read, there are ample supplemental figures to help explain complicated experiments. Overall this manuscript is likely to be of high interest for oncologists in that it demonstrates that AML and MDS cells with an SF3B1 mutation can be targeted in a precision medicine approach via inhibition of IRAK4. There are no major weaknesses in the manuscript.

    1. Reviewer #1 (Public Review):

      This work adds to an already abundant literature demonstrating that TR-AMs are a phenotypically and functionally distinct population of macrophages. Work in this manuscript is the first to characterize the effect of hypoxia on metabolic and inflammatory responses in TR-AMs vs macrophages derived from other sites (bone marrow).

      Strengths:<br /> 1. Findings advance our understanding of TR-AM biology and further highlight the unique characteristics of this macrophage subset.<br /> 2. Studies suggest that morbidity and mortality from pneumonia and other causes of acute lung injury may depend on the ability of TR-AMs to metabolically adapt to hypoxic conditions.<br /> 3. Studies suggest that targeting cellular metabolism may be effective in treating hypoxic respiratory conditions.

      Weaknesses:<br /> 1. Study conclusions are largely dependent on the use of non-selective pharmacological inhibitors for manipulating HIF-1 signaling, which is particularly true for the compound echinomycin.<br /> 2. Intratracheal delivery of FG-4592 will have effects on many cell types in the lung, including other leukocyte populations and may even impact viral proliferation, making it hard to judge whether endpoints are due to direct or indirect effects on TR-AMs.<br /> 3. Findings suggest that very low oxygen concentrations contribute to elevated HIF1 signaling and glycolysis in TR-AMs but further justification is needed for the oxygen concentrations used in this study since they seem a bit low for the alveolar environment. Relevant to this, it would be helpful to know whether hypoxia is a feature of the influenza mouse model.

    1. Reviewer #1 (Public Review):

      This article presents interesting proof of concept of how predictive coding based on visual inputs, coupled with a complex array of RNNs can produce head direction and egocentric/allocentric boundary responses akin (to some extent) to the neural responses found in mammalian hippocampal formation neurons. However, while an impressive technical feat, the model contradicts key experimental findings, and the developmental timeline of spatial cell responses does not support the sole reliance on visual inputs.

      Developmental considerations:<br /> Developmental studies have shown that rudimentary HD signals emerge before the unfusing of rat pup eyelids (suggesting visual inputs are not necessary for these initial responses). Head direction is fully formed more than a week before allocentric boundary responses (boundary vector cells: BVCs) emerge, and initial head direction signals predate BVC coding by 5-6 weeks in rat pups (Min, Wills, Cacucci 2017). While this does not exclude separate emergence per se, it removes the need to insist on the absence of HD inputs for the formation of BVCs. Hence it is plausible that at least HD would be available to any learning/developmental process that enables the emergence of allocentric boundary responses in the rodent brain. Not using this information would make this learning task unnecessarily difficult. Similarly, it is more plausible that egocentric boundary responses are constructed by a network that forms in a developmental time window and can later instantiate boundary responses based on visual inputs, depth perception, etc, without additional learning. The staggered emergence of spatial responses reported by experiments also strongly suggests that developmental stages build upon each other. Granted, it remains a possibility that egocentric boundary responses and head direction coding could be generated by a predictive coding framework (though the principle inputs to HD are vestibular), but there is no need to assume the head direction signal and the egocentric boundary signal wouldn't be used in a subsequent learning/maturation step that forms allocentric boundary responses from head direction and possibly egocentric boundary inputs. While I share the authors' sentiment that those previous models have not sufficiently accounted for this learning step (generating the network that allows egocentric signals to be translated to allocentric boundary representations), the appeal to a staggered developmental process is much more plausible and in line with developmental data.

      The parallel emergence of distinct spatial responses:<br /> In the paper, very little is actually said about the interaction of the learned representation in the model. Since the different RNNs learn in parallel, one yielding HD, one egocentric boundary cell (EBCs), and one BVCs, this means that EBCs and BVCs do not need to interact. Similarly, HD cells and BVCs do not need to interact. This incredibly salient prediction is not emphasised at all. It would suggest the EBCs could be lesioned without affecting BVCs in a novel environment. In alternative models, this is not the case. Such strong claims should be emphasised as this is actually one of the few novel, direct experimental predictions that can be made here. Whether or not EBCs and BVCs interact is an open, empirical question. However, taking this line of reasoning further, the present model also predicts that lesioning HD cells should leave EBC and BVC unperturbed. This is extremely unlikely for BVCs. Lesions to the mammillary bodies (where HD cells are found and where the HD attractor signal is likely generated) lead to severe memory deficits. The orientation of BVCs and place cells is likely set by head direction cells. The three populations have repeatedly been shown to rotate in concert. Object vector cells (not addressed in this article) similarly co-rotate with HD cells. The article does not present sufficient evidence (or gains in understanding) to abandon this well-established view.

      Relating the model to biological function:<br /> The normative account of the paper is interesting, but it is unclear how much (if anything) the model tells us about the biological underpinnings of spatial cognition despite the overt claim that the model would be useful to neuroscientists. The modelling approach is far from biologically plausible. This creates the unfortunate impression that a bunch of RNNs has been thrown together (with considerable technical skill), which are known to be able to extract the information inherent in the inputs. What does this tell us about how the brain generates these responses, and how can experimenters test for properties specific to the model? To provide a normative model that outlines one way for the appearance of known mammalian spatial representations based solely on interaction with the sensory world, is fine (and interesting in itself) but the method employed being so far from real biological function makes it impossible to assess if it is the correct normative explanation (see also next point).

      Experimental contradictions:<br /> BVC activity emerges immediately upon entry into a new environment, while the present model needs to be retrained on sets of environmental geometries to be able to respond correctly in all those environments. This discrepancy cannot be remedied by appealing to the theoretical notion that an animal might experience all possible geometries during some developmental phase. Given the developmental timeline of spatial responses and the fact that rat pups do not leave their nest straight away this can in all likelihood be excluded. Competing models claim that EBC responses are computed directly from perceptual inputs (utilising networks formed in development), with the consequence that EBC (and hence BVCs driven by EBCs) can straightforwardly represent any new geometry without additional learning. This would be consistent with BVC activity emerging immediately in a new environment, even when faced with a never-before-experienced environmental geometry.

    1. Reviewer #1 (Public Review):

      McLachlan and colleagues find surprisingly widespread transcriptional changes occurring in C. elegans neurons when worms are prevented from smelling food for 3 hours. Focusing most of the paper on the transcription of a single olfactory receptor, the authors demonstrate many molecular pathways across a variety of neurons that can cause many-fold changes in this receptor. There is some evidence that the levels of this single receptor can adjust behavior. I believe that the wealth of mostly very convincing data in this paper will be of interest to researchers who think about sensory habituation, but I think the authors' framing of the paper in terms of hunger is misleading.

      There is a lot to like about this paper, but I just cannot get over how off the framing is. Unless I am severely misunderstanding, the paper is about sensory habituation, but the word habituation is not used in the paper. Instead, we hear very often about hunger (6x), state (92x), and sensorimotor things (23x). This makes little sense to me. The worms are "fasted" (111x) for 3 hours, but most of the expression changes are reversed if the worms can smell, but not eat, the food. And I've heard about the fasted state, noting that worms don't eat more food after this type of "fasting". So what is with all of this hunger/state discussion?

      And the discussion of internal states is often naïve. In the second paragraph of the introduction, we are told that "Recent work has identified specific cell populations that can induce internal states", beginning with AgRP neurons, which have been known to control the hunger state in mammals for nearly 40 years |||(Clark J. T., Kalra P. S., Crowley W. R., Kalra S. P. (1984). Neuropeptide Y and human pancreatic polypeptide stimulate feeding behavior in rats. Endocrinology 115 427-429. Hahn T. M., Breininger J. F., Baskin D. G., Schwartz M. W. (1998). Coexpression of Agrp and NPY in fasting-activated hypothalamic neurons. Nat. Neurosci. 1 271-272). Instead, the authors cite three papers from 2015, whose major contribution was to show that AgRP activity surprisingly decreases when animals encounter food. These papers absolutely did not identify AgRP neurons as inducing internal states or driving behavioral changes typical of hunger (Aponte, Y., Atasoy, D., and Sternson, S. M. (2011). AGRP neurons are sufficient to orchestrate feeding behavior rapidly and without training. Nat. Neurosci. 14, 351-355. doi: 10.1038/nn.2739; Krashes, M. J., Koda, S., Ye, C., Rogan, S. C., Adams, A. C., Cusher, D. S., et al. (2011). Rapid, reversible activation of AgRP neurons drives feeding behavior in mice. J. Clin. Invest. 121, 1424-1428. Doi: 10.1172/jci46229). Nor did Will Allen's work in Karl Deisseroth's lab discover neurons that drive thirst behaviors. Later in the same paragraph, we hear that: "However, animals can exhibit more than one state at a time, like hunger, stress, or aggression. Therefore, the sensorimotor pathways that implement specific motivated behaviors, such as approach or avoidance of a sensory cue, must integrate information about multiple states to adaptively control behavior." This is undoubtedly true, but it's not clear what it has to do with any of the data in this paper - I don't even think this is really about hunger, much less the interaction between hunger and other drives.

      To summarize: I think the authors could give the writing of the paper a serious rethink. I want to stay far away from telling people how to write their papers, so if the authors insist on framing this obviously sensory paper as being about hunger and sensorimotor circuitry I think they should at least explain to their readers why they are doing that in light of the evidence against it (and I think they should state clearly that worms don't actually eat more in this fasted state).

      I was also surprised by how unsurprised the authors seemed by the incredibly widespread changes they observed after 3 hours away from food. Over 1400 genes change at least 4-fold? That seems like a lot to me. But the authors, maybe for narrative reasons, only comment on how many of them are GPCRs (16.5%, which isn't that much of an overrepresentation compared to 8.5% in the whole genome). For me, these widespread and strong changes are much of the takeaway from this paper. But it does make you wonder how important the activity of one particular GPCR (selected more or less randomly) could be to the changes the worm undergoes when it can't smell food.

      str-44 is very convincingly upregulated when worms can't smell food, but it's clear from the data that this upregulation has very little to do with the actual lack of eating, and more with the lack of being able to sense bacteria for 3 hours. In Figure 1E, when worms are fasted, but in the presence of bacteria, receptor levels are largely unchanged (there are 5 outliers, out of ~50 samples). Since receptor expression doesn't change in this case even though the worms are in the fasted state, it cannot be "state-dependent" - unless the state is not having smelled food for the last 3 hours. And, in my opinion, that would divorce the word "state" from its ordinary meaning.

      The authors argue that str-44 expression modulates food-seeking behavior in fasted worms by causing them to preferentially seek out butyl and propyl acetate. However, the behavioral data to back this up has me a little worried. For example, take Figures 2F and 2G. They are the exact same experiment: comparing how many worms choose 1:10,000 butyl acetate compared to ethanol when the worms are either fasted or fed. In the first experiment (2F), ~70% chose butyl acetate for fasted worms and ~60% for fed worms. But in the replicate, ~60% choose butyl acetate for fasted worms and ~50% for fed worms. A 10% variability in baseline behavior is fine (but not what I would call a huge state change), but when the difference between conditions is the same size as baseline variability I start to disbelieve. Can the authors explain this variability? Or am I misunderstanding?

      And I'll say it just one last time, I think the authors are overselling their results...or at least the str-44 and AWA results (they are dramatically underselling the results that show the widespread changes in the expression level of 10% of the genome in response to not smelling food for 3 hours):

      "Our results reveal how diverse external and internal cues... converge at a single node in the C. elegans nervous system to allow for an adaptive sensorimotor response that reflects a complete integration of the animal's states."

      This implies that str-44 expression AWA is the determinant of whether a worm will act fasted or fed. I have already expressed why I don't believe this is the case (inedible bacteria experiment, Figure 1E), but just because things like osmotic stress suppress the upregulation of str-44, that doesn't mean that it is the site of convergence. It could be any of the other 1400 genes that changed 4+ fold with bacterial deprivation. And even in terms of the actual AWA neuron, it was chosen because it showed modest upregulation of chemoreceptors (1.8 fold compared to ~1.5 fold in ASE and ASG), even though chemoreceptors were highly upregulated in other neurons as well.

      Overall, and despite my critiques (and possibly tone), I really like this paper and think there really is a lot of interesting data in there.

    1. Reviewer #1 (Public Review):

      This article tackles an interesting problem of using animal models in human neuroscience research through a comparative study of brain-wide gene expression patterns in mouse and human. One of the main strengths of this work is the analysis approach that builds from a set of relatively simple and well-defined assumptions and later is complemented with more sophisticated computational methods such as machine learning in order to tailor the methods for a more detailed investigation. The open and transparent use of publicly available datasets providing full data processing and analysis pipelines together with the realistic presentation and interpretation of the findings also strengthens the perceived trustworthiness of this work. Whereas the findings such as the greater similarity observed for sensorimotor compared to supramodal areas; or the fact that the introduction of the latent gene expression space in most cases only moderately improves identified regional correspondence between the species are not unexpected, they provide a novel outlook to well-known challenges in comparative neuroscience. Overall, the manuscript is methodologically sound, very well-written, and easy to follow, the key claims presented in the article are supported by the data.

      From the methodological point of view, this study is well-executed, the following are points to consider.

      Expression patterns across broad anatomical divisions such as the human cortex, subcortex, brainstem, and cerebellum demonstrate substantial differences. Similar tendencies are also observed in the mouse brain, where differences between neocortical and other brain areas tend to be much stronger compared to the differences within these divisions. The analyses presented in this work are performed on the combined datasets covering the whole brain and the resulting similarity metrics appear to be significantly skewed to the right with values broadly ranging from 0.7-1. It may be possible that transcriptional differences between broad anatomical divisions may attenuate/diminish the potential differences within these structures, e.g. within cortex/neocortex/subcortex/cerebellum.

      Currently, in the description of the processing of AHBA data there is no mention of within-donor normalization prior to data aggregation. It has been previously shown that samples acquired from the same donor tend to cluster together rather than reflecting anatomical divisions of the brain when samples across 6 brains are combined. Based on the current documentation, samples from all 6 brains are first aggregated into a sample x gene matrix and only then normalized for every gene across samples. This type of normalization retains expression differences between different donor brains and can bias the resulting sample x gene and region x gene datasets as well as subsequent analyses.

      Does the latent gene space method allows the identification of genes that are most informative in region identification?

      Some formal statistical evaluations should be presented when performing comparisons. For example, but not limited to, comparing maximal correlational values between sensimotor and supramodal areas (lines 277-280, Figure 5B).

    1. Reviewer #1 (Public Review):

      A high-throughput synaptic phenotyping platform targeting human synapses is highly valuable. The validity of the present system is supported by a small molecule inhibitor screen that has identified targets, including the BET family proteins, whose role in brain function has been previously demonstrated. The authors have gone one step further to analyze the gene expression programs impacted by the BET Inhibitors, and the observations that synaptic genes encoding proteins such as neurexin-3 and homer 1 are altered is reassuring. In addition, demonstrating that the presence of astrocytes crucially impacts the density of presynaptic marker protein is of relevance for the design of similar platforms. The general utility of the present platform in identifying synaptic changes, however, needs to be further substantiated by additional synaptic markers.

    1. Reviewer #1 (Public Review):

      This manuscript addresses the role of the p75NTR neurotrophin receptor in the development of cerebellar granule precursor cells (CGPs). This cell type is notable for having high levels of p75NTR expression in a discrete developmental window yet the specific role of the receptor in this setting has remained obscure.

      The authors show that although p75NTR expression correlates with the CGP proliferative state, expression of p75NTR is not required to maintain the proliferative state. Rather, migration CGPs in culture and within cerebellar slices is optimal only when p75NTR levels are reduced and the authors conclude that the expression of p75NTR normally reduces CGP migration. They examine signalling mechanisms that lie downstream of p75NTR to elicit this effect and show that RhoA, previously shown to be activated by p75NTR, is required to block CGP migration, that RhoA activity is lower in p75NTR-/- CGPs than in wild-type counterparts, and that RhoA inhibitors enable CGP migration, even in cells overexpressing p75NTR.

      This is an important study that uses a combination of descriptive methods and chemical and genetic gain- and loss- function approaches to demonstrate that a p75NTR-RhoA signaling pathway normally functions to limit CGP migration during development. The paper is logical and well written and the data presentation is excellent.

      Some points to consider:<br /> Figure 2A introduces the CGP cultures and shows that p75NTR levels are high in cells exposed to SHH. However, these results are difficult to interpret in the absence of controls showing p75NTR levels at the time of plating - does the SHH exposure increase p75NTR expression? Or prevent its decrease?

      I recognize the convenience of using the p75NTR-GFP construct to track migration but was surprised that the potential confounds of this approach were not examined or even mentioned. Does p75NTR-GFP activate RhoA more or less than the wild-type receptor? What experiments have been performed to ensure that this construct is an effective mimic of the wild-type receptor? Would it be possible to co-transfect p75NTR and GFP as an alternative approach?

      The authors discuss previous findings that indicate that p75NTR can play a pro-migratory role but oddly do not place their results in other contexts where p75NTR has been shown to block migration. CGPs have been quite widely used to dissect the role of p75NTR in the Rho-dependent migration blockade induced by MAG and other myelin components and interesting insights on receptor components (e.g. LINGO1) and signalling mechanisms (e.g. RhoA) that mediate these effects. The results reported here should be discussed in the context of these previous findings.

    1. Reviewer #1 (Public Review):

      Employing in vitro and Drosophila model, the authors interrogate which domain of Hsp27 binds to which region on Tau, and how these interactions facilitate the proteinaceous aggregation. They utilized various biochemical, biophysical, cellular, and genetic tools to dissect the association, and identified the structural basis for the specific recognition of Hsp27 to pathogenic p-Tau. Conceivably, Hsp27 may play some role in preventing Tau abnormal aggregation and p-Tau pathology in AD. Overall, the data support the main claim, especially, the biophysical data are very impressive. Nevertheless, the manuscript could be strengthened by complementary cellular or biochemical methods for validation. For example, the authors can use a stably transfected Tau cell line to interrogate Hsp27's role in its cellular aggregation or proteinaceous inclusions by immunoblotting. Immunofluorescent and immunohistochemical staining and IB with different antibodies may be conducted to validate the observations.

    1. Reviewer #1 (Public Review):

      The authors here follow-up on roles for signaling pathways like ERK in epithelial patterning that have been studied in an emerging literature in both, broadly, the cell competition field and, more specifically, in mouse intestinal organoids. They employ timelapse microscopy to study behavior of human colonic organoids in monolayers as the organoids initially self-organize. They then follow maintenance of organization into densely clustered nodes that have increased cells in cell cycle and the remaining more sparsely populated regions with fewer cycling cells. Nodes also show markers of in vivo colonic stem cells (Lgr5 and myc). They follow propagation of ERK waves using a genetic tool (ERK-JTR) and show that they can emerge from single apoptotic cells in between nodes.

      Strengths of the study include novelty of showing self-organization and behavior of human organoids over time, with good resolution, using microscopy, as well as sophisticated analysis techniques to interpret and present cumulative data over many experiments. Additionally, the paper adds important pieces of the puzzle with respect to how cells may compete and respond across an entire monolayer, and the tools and approaches lend themselves to studying many genes and signaling pathways besides simply Wnt vs ERK.

      Weaknesses in the current version of the manuscript:

      1) The manuscript is focused nearly exclusively on ERK and Wnt but not in terms of the broader context of interpretation of the response of a monolayer to apoptosis of single cells. Some of the original work in the field showed that apoptotic cells enacted Rho- and MLCK-dependent actomyosin contractility, which was proposed to signal neighboring cells by initially pulling them inwards via the contraction (PMIDS: 9456322, 10459006, 11283606, 21721944). But a more intestine-specific literature has long-been extant following up on the critical role of ROCK and MLCK in maintaining barrier after specifically intestinal-cell apoptosis (15825080, 21237166).

      -- A suggestion would be 1) to cite the relevant literature and 2) to interpret some of the experiments within the cytoskeletal mechanistic context already known. In addition to comments about PMA and ERK activation (see next point), the authors could test whether the ERK waves cause myosin II activation and/or are ROCK/MLCK-dependent. Given ROCK inhibition is frequently used in organoid culture, this would seem an obvious avenue to explore. Does the ERK wave propagate the cytoskeletal changes to close the gap and increase centrifugal motility and/or conversely does the actomyosin tugging of the apoptotic cell trigger ERK activation? (admittedly, the latter question may be hard to address). In short, there is a lot known about monolayer behavior in terms of dynamic cytoskeletal changes that can be addressed here to integrate with the Wnt/ERK roles.

      2) The authors use only PMA as an ERK activator. PMA is a broadly acting drug, principally known as a PI3K inducer. Obviously, Akt and other downstream action of PI3K means many other pathways are stimulated besides ERK. Indeed, ROCK and Src and other cytoskeleton-modifying pathways are modulated by PMA that may not correlate with the ERK effects. Additionally, the movies showing the effects of PMA treatment show a striking increase in apoptotic cells throughout the field, which would obviously confound the interpretation of what happens after relatively rare, internodal apoptotic cells die

      -- A strong suggestion would be to increase the routes to ERK activation the authors use. This could be via receptor tyrosine kinase stimulation (again, like ROCK, EGF is a key organoid medium component), though obviously that would not be much more specific than PMA, but the authors use EGFr inhibition to block ERK, so wouldn't stimulation be an apt converse approach? Genetic constitutively active KRAS might be introduced. Alternatively, there are pharmacological ways to increase pERK dramatically by inhibiting the dual action phosphatase (see eg PMID: 30475204 in a previous eLife paper). At the least, it would seem the authors should not use an approach that increases apoptosis dramatically.

      3) The movies clearly show many dividing cells that are between nodes, and they show apoptotic cells within nodes (eg movie 3a towards the end). While it's clear that apoptotic cells in internodal regions can elicit the wave behavior, it would seem that apoptosis does not universally do this, given the counter-examples.

      -- It would help if the authors could speak to this. Namely, in what cases are there no waves after apoptosis and what are the factors that might contribute (nearness to a node? nearness in time and space to another apoptotic cell?). Presumably, the events are relatively stochastic so there would be occasions for non-stereotypical behavior like wave front interference or augmentation in the case of closely located apoptotic cells.

    1. Reviewer #1 (Public Review):

      Microfluidics-based live-cell imaging is a powerful technique that can reveal detailed quantitative insights on for example cell growth, cell cycle, and - if coupled with fluorescent markers - molecular processes. Especially for fast growing unicellular organisms such as yeast, high-throughput imaging of multiple strains or conditions is possible over many generations. This allows biologists to quickly obtain hundreds of videos in a relatively short time-span, making the image analysis to extract useful information the bottleneck. Recent progress on convolutional neural networks such as UNet has made a strong impact on the quality of automated segmentation. However, to extract useful information, additional time-consuming steps are still necessary, which limits high-throughput experiments. With the present manuscript, Aspert et al. now make an important step towards filling this gap by establishing a fully automated approach to extract biological information on the replicative life-span of yeast cells from experiments performed with dedicated microfluidics devices that retain mother cells over multiple generation while 'washing out' newborn daughter cell.

      In their work, Aspert et al. take an innovative approach of using convolutional neural networks to classify images of single traps according to whether the mother cell is in G1, early budded phase, late budded phase, or dead. In addition, two classes of empty and crowded traps are used to clean up the results. This initial classification is then combined with an LSTM to predict cell cycle transitions over complete life-times of mother cells. As a proof-of-principle, they then also combined this approach with semantic segmentation to extract cellular features of the mother cells. In addition to the computational developments, the study also suggests a cheap experimental setup that makes using this novel image analysis routine affordable.<br /> Overall, this is an interesting and well-executed study that opens new territory of using AI for yeast live-cell imaging approaches. The main focus of this study is clearly to develop a functional assay, all the way from experiment to data analysis. The authors put effort into providing a tool that works for diverse optical setups. To achieve this aim, at some points pragmatic decisions were made, in particular with regards to the neural networks used. While these decisions are reasonable, it still leaves open the possibility that even better performance could be achieved with other state-of-the art approaches.

    1. Reviewer #1 (Public Review):

      The work is of broad interest to researchers, data scientists, and clinicians in the field of dental malformation and craniofacial dysmorphism. The strategy and technique used in this study will be of help to those who hope to delve into the molecular pathogenesis of human organ malformation where an appropriate organ sample during development cannot be easily accessible. Most of the data are solid, and the interpretation of the data is appropriate. However, the contribution of the immune system to caries development is not clear from this study. Discussion on eQTL analysis on mouse teeth would also be required.

      Authors showed an enrichment of the variants associated with dental phenotypes in enhancers of human craniofacial tissues and that of odontogenesis-associated variants in mouse craniofacial active enhancers. With ChIP-seq data, authors showed that conserved regulatory regions active in the early developmental stage-mouse face are systematically enriched for variants associated with a variety of human dental phenotypes. ChIP-seq analysis on E13.5 mouse incisors showed the highest enrichment of odontogenesis-associated variants. WGCNA revealed tooth-relevant co-expressed gene modules and identified previously undescribed genes that could contribute to common dental phenotypes.

      Reanalysis of public scRNA-seq data of E14 mandibular molar led to the identification of a novel putative enamel knot gene signature. Authors also tried to identify variants related to caries risk and showed craniofacial enhancers may play a role in the risk. One was located at the PITX1 locus, and pitx1 is an epithelial gene. Authors observed enrichment of caries risk variants in immune cell enhancers. These data suggest the possibility and feasibility to extrapolate multi-layered genomic data from developing mouse teeth to human dental development and disorders.

      The strength of this study is the multi-layered integrated analysis of genetic data with different available data from mice and humans using various methods. The data showed the potential involvement of such genes as Wif1, Pitx1, Runx2, Agap1, and others as important molecules involved in tooth differentiation in health and diseases. The study also determined the role of tooth enhancers in dental malformation/phenotype. The results from the study will also provide a useful tool for the manipulation of specific expressions of reporter genes or other genes in the tooth (or enamel)-specific manner.

    1. Reviewer #1 (Public Review):

      In this study, Ansari et al. have created a web platform called CriSNPr which serves two purposes:

      1. It provides a set of pre-designed CRISPR RNAs for dbSNP-annotated Single Nucleotide Variants (SNVs) in the human genome and variants of concern in the SARS-CoV-2 genome.

      2. For unannotated/novel SNVs in either the human or SARS-CoV-2 genomes, it designs CRISPR RNAs de novo, based on sequence information provided by the user.<br /> For both options, the platform focuses on six different CRISPR/Cas systems currently in use for CRISPR/Cas-based diagnostics, five of which - Fn/enFnCas9, LbCas12a, AaCas12b, and Cas14a - are DNA-targeting, and one of which, LwCas13a, is RNA-targeting. In addition to CRISPR RNA design, CriSNPr also identifies PCR primer pairs that could be used to generate amplicons for downstream testing and validation. Overall, the authors have clearly defined the "back-end" strategy of CriSNPr and the mismatch criteria that were considered for each CRISPR/Cas system for CRISPR RNA design. They also provide information about the proportion of dbSNP-annotated SNVs that can be targeted by each CRISPR/Cas systems, with Cas14a and LwCas13a being the most versatile and widely targeting. Lastly, the authors have experimentally demonstrated the utility of CriSNPr for designing reagents to detect a specific SARS-CoV-2 variant, S gene containing E484K mutation, using FnCas9, AaCas12b and Cas14a. However, the design of CRISPR RNAs and PCR primers for the detection of SNVs in human genomic DNA was not demonstrated. Given the size, complexity and diploid nature of the human genome, this would have enhanced the significance of the study.

      CRISPR/Cas-based diagnostics have shown great promise for sensitive/low-cost detection of nucleic acids of infectious agents as well as genetic mutations in humans, including SNVs. Some of the major bottlenecks for CRISPR/Cas-based SNV detection include: (i) the choice of CRISPR/Cas system and (ii) the fast and accurate design of specific CRISPR RNAs and PCR primers. In CriSNPr, by including six different CRISPR/Cas systems and by generating PCR primers, the authors fill an important lacuna and provide a rapid and easy, yet adaptable, platform for developing diagnostic workflows. This is the major strength of the study and I foresee that this platform will greatly accelerate the field of CRISPR/Cas-based diagnostics for SNV detection. At the same time, there is room for further development, as the authors point out - the inclusion of other organisms for which SNV information is readily available and linked to distinct phenotypes, the estimation of CRISPR RNA sensitivity and specificity for all six systems, the enhancement of the platform with additional CRISPR/Cas systems as and when they are developed for diagnostics.

    1. Reviewer #1 (Public Review):

      In this manuscript by Huisman et al., the authors leverage their strong capacity for the development of MHC yeast display to develop a method for high throughput MHC class II binding assessment. They applied their approach to comprehensively screen for HLA-DR401, -402, and -404 binding peptides derived from the whole proteomes of SARS-CoV-2 and four different dengue virus serotypes. The results obtained using this method are carefully analyzed and validated. Minor caveats that come from linker sequences are appropriately described and the context for the utility of this approach is nicely discussed. That the full set of results from these screens is provided makes this paper resourceful to the community.

      Comments:

      The authors should reference and discuss technical differences from the approach previously published by Wen et al. J. Immunological Methods, 2008 which also uses yeast display to identify MHC class II binding peptides derived from the influenza virus genome.

    1. Reviewer #1 (Public Review):

      This article presents important new findings, of particular interest to those concerned with a) estimating parental indirect genetic effects, b) distinguishing pre- and post-natal maternal effects, c) optimizing adoption designs, and d) developing cohort studies strategically. Notably, prior work has investigated pre-natal 'genetic nurture' (Armstrong-Carter et al., 2020) and used the adoption sub-sample of the UK Biobank to distinguish pre-natal and post-natal indirect genetic effects (Demange et al., 2021). Here, the authors present the first structural equation model for estimating pre- and post-natal parental indirect genetic effects using polygenic scores and adoption data. The authors found, as expected, pre- but not post-natal maternal genetic effects on birthweight. However, pre-natal maternal genetic effects on educational attainment were unfeasibly large. Their simulations convincingly suggest this is because estimates of maternal pre-natal indirect genetic effects are inflated when adoptive parents and biological parents are related. It is nice to see the authors' practical suggestions on how the UK Biobank resource should obtain more information on the adopted individuals. The key caveats are the low sample size of adoptees (especially when restricting to adoptees who have breastfeeding data), and the inclusion of only genome-wide significant SNPs in polygenic scores. Given the evidence that population stratification and assortative mating can bias estimates of parental indirect genetic effects, the authors should consider how these factors would affect their model.

    1. Reviewer #1 (Public Review):

      Human thymidylate synthase (hTS) is relatively large for NMR standards (~72 kDa dimer) and so the authors use a battery of advanced, TROSY-based NMR experiments to investigate the structure and conformational dynamics of the enzyme in multiple binding states. In particular, they have acquired multiple and single quantum methyl CPMG and CEST data to probe us-ms dynamics. These experiments showed that hTS undergoes exchange between active and inactive conformations. Analysis of residual dipolar couplings and chemical shift perturbation experiments indicated that the major conformational state revealed by CPMG and CEST corresponds to the active hTS conformation. This finding suggests that conformational selection is not the primary mechanism mediating cooperativity in hTS.

      To investigate if binding cooperativity in hTS is due to modulation of conformational entropy upon ligand binding, the authors have investigated ps-ns dynamics in hTS by means of 2H relaxation measurements. These measurements suggest that rigidification of the protein upon the first binding event is the primary origin of cooperativity in the hTS dimer. Indeed, acquisition of control experiments on systems that do not show binding cooperativity (i.e., the complex formed by dUMP with N-terminal truncated hTS and the complex formed by TMP with full-length hTS) do not show the same modulation of conformational entropy observed upon formation of the dUMP-hTS complex. Overall, I found this manuscript interesting and well-written. I found particularly fascinating the observation that cooperativity is driven by modulation of conformational disorder in the unstructured N-terminal tail, which is not directly involved in ligand binding. The experimental approach and analysis protocols are sound and the conclusions are well supported by the experimental data.

    1. Reviewer #1 (Public Review):

      The authors employed a unique species-hybrid model wherein implanted human cells from white and thermogenic adipose tissues in nude mice. The authors performed molecular analyses of implanted adipose tissues and made several intriguing observations. One of the notable findings is the expression of MAOA in human adipocytes - this is in contrast to previous findings in mice that MAOA is expressed in macrophages. The cell-autonomous role of MAOA in human adipocytes using the species-hybrid system would add additional significance to this work.

  2. Jun 2022
    1. Reviewer #1 (Public Review):

      In this manuscript, Klee and Hess et al. present the first unbiased, large-scale genetic screen for regulators of apical membrane protein trafficking in human polarized epithelial cells. Designing a sensitive and quantitative assay is critical for the successful completion of a high-throughput genetic screen of this type. To this end, the authors used fluorescence-activated cell sorting of CaCo2 cells stained with a DPP4 (a model apical membrane protein) antibody, selecting for mutant cells with a ~90% reduction in plasma membrane-localized DPP4. The authors' stringent screening criteria led to the identification of 89 genes that function in many cellular processes. For validation, the authors selected 7 target genes for more detailed phenotypic characterization.

      The main conclusion of the paper, that the screen identified novel genes required for apical membrane protein localization, is supported by the presented data. Additionally, the dozens of novel genes required for apical trafficking will be an important resource for epithelial biologists. However, phenotypic characterization of the selected target genes should be extended and better described. In particular, a quantitative analysis should be included to describe the qualitative phenotypes shown in the manuscript.

    1. Reviewer #1 (Public Review):

      This is a clearly written paper, the results of which are also clear and well supported. Putney et al. recorded the electrical activity of a subset of the flight muscles in the tobacco hawkmoth Manduca sexta during tethered flight. The moths were presented with six visual stimuli, comprising up or down pitch motions, right- or left-handed roll motions, and right- or left-handed yaw motions. The muscle recordings were analysed by: (i) filtering the signals using a gaussian kernel of variable width; (ii) linearly combining the filtered signals by projecting them into a new basis using principal components analysis (PCA); (iii) applying linear discriminant analysis (LDA) on a subset of these principal components, to classify the recordings according to stimulus condition.

      The authors demonstrate that their method allows robust classification of the visual stimulus associated with each electrophysiological recording (better than 99.5% classification accuracy for n=4 moths with complete recordings from all 10 muscles that were studied). This well-supported result is not in itself surprising given the causality of the input-output relationship and the high dimension of the output data relative to the low dimension of the input classification. It follows that the key strengths of the manuscript lie in the extent to which it explores the details of this result. This is done in several ways:

      First, the authors explore the effect of varying the width of their gaussian smoothing kernel. They demonstrate convincingly that the accuracy of classification is lost if the gaussian kernel is too broad, which amounts to showing that lowpass filtering the data eliminates important information. The authors interpret this result as showing that the analysis of their muscle recordings is "sufficient to predict behavior, but only if precise timing information in included". This summary statement, expressed in the time domain, may invite the reader to assume that the key information lies in the arrival time of each spike, so it is worth noting that it could be reframed equivalently in terms of the spectral content of the signal - as indeed it is in Fig. 4C.

      It is also worth adding that two of the N=4 moths with complete data appear to behave differently with respect to the drop-off in decoding accuracy with increasing gaussian kernel width (Fig. 3A), although there seems to be no discussion of this point.

      Second, the authors explore the effect of data reduction in terms of: (i) the number of principal components required to capture the variation in the signals, and (ii) the number of muscles included in the analysis. This is a strength of the paper insofar as it provides a high level of model reduction, and also allows the authors to include results from N=5 moths with incomplete data (i.e. moths with missing muscle recordings). Of course, this is also a weakness insofar as there is missing data and a small absolute number of individuals sampled, but this needs to be viewed in the context of the extreme challenge of making multiple muscle recordings simultaneously.

      Third, the authors use the results of their PCA-LDA analysis to identify muscle coordination patterns, from which they conclude that "while the realization of muscle activity in each of the functionally distinct pairs of behavioral states about each flight axis changes, the underlying muscle coordination patterns are conserved." This conclusion is reached by calculating the inner product of the vectors providing the best separation (i.e classification) of different directions of motion within and between flight axes. As the inner product of these unit vectors is constrained to take values between 0 and 1, it would be helpful to consider whether there is some form of randomisation analysis that could be used to identify a null distribution against which the apparently quite weak co-directionality of the vectors could be assessed. This is important because the weakness of the co-directionality forms the basis of the conclusion referred to above.

      In summary, the authors' methodological pipeline will be useful in future studies and lays important groundwork for future work combining analysis of muscle activity, wing kinematics, and force-torque output in the visuomotor responses of insects.

      Finally, whilst the context of this work is explained well in relation to previous electrophysiological studies, other relevant work exploring the mapping from visual input to force-torque in hawkmoths using similar stimulus arrangements (Windsor et al., 2014; doi:10.1098/rsif.2013.0921) is ignored, and may provide some insight into the neuromechanical couplings relevant to the discussion. This earlier work showed that whereas visual stimuli in pitch and roll produce almost pure pitch and roll torques, yaw stimuli produce coupled roll and yaw moments. This coupling ought in principle to be present within the details of muscle coordination identified in the PCA-LDA analysis.

    1. Reviewer #1 (Public Review):

      The authors have provided an impressive analysis of the effects of reporting of WGS results on IPC practices in 14 hospitals in the UK during the COVID-19 pandemic. After a median of 4 weeks, hospitals adopted a practice of "rapid" or "longer" turnaround phases for WGS reporting. After a median of 8 weeks, 8 of 9 "rapid" hospitals adopted the "longer" practice for a median of 4 weeks. After a median of 4 weeks, all 5 "longer" hospitals adopted the "rapid" practice for a median 8 weeks. Hence, there were twice as many weeks with the rapid, compared to the longer reporting practice.

      The targeted turnaround times for reporting were 48 hours for the rapid and 5-10 days for the longer phase.

      The primary outcomes of the study were: (1) incidence of IPC-defined SARS-CoV-2 HAIs per week per 100 currently admitted non-COVID-19 inpatients, and (2) for each HOCI, identification of linkage to individuals within an outbreak of SARS-CoV-2 nosocomial transmission using sequencing data as interpreted through the SRT that was not identified by pre-sequencing IPC evaluation during intervention phases.

      Secondary outcomes were: (1) incidence of IPC-defined SARS-CoV-2 hospital outbreaks per week per 100 non-COVID-19 inpatients, (2) for each HOCI, any change to IPC actions following receipt of SRT report during intervention phases, (3) any recommended change to IPC actions (regardless of whether changes were implemented). The proportion of HOCI cases for which IPC reported the SRT report to be 'useful' was added as a further outcome.

      A total of 2170 HOCIs were recorded for the study between 15 October 2020 and 26 April 2021.

      The authors conclude that "While we did not demonstrate a direct impact of sequencing on the incidence of nosocomial transmission, our results suggest that sequencing can inform IPC response to HOCIs, particularly when returned within 5 days."

      The research question is very relevant and, as said, the amount of data collected is impressive. Yet, interpretation of the data, obtained in a real-life setting with all hurdles and complexities created by the pandemic situation, is challenging. I have several questions related to data interpretation and difficulties in accepting the overall positive interpretation of the findings when it comes to feasibility and potential impact. Especially, as I consider the real-time availability of WGS results in the participating hospitals to be (much) higher than it will be in hospitals in most other countries.

      Specific questions<br /> Not clear why sites started either with rapid or longer phase. Was there a randomization process? Please clarify.

      From Figures S2 it is clear that the pandemic peaked, after which the curve declined when vaccination had started, and these curves seem to resemble the incidence rates of HOCI in the hospitals. I had difficulties in interpreting S3 and S4 where I think the authors incorporated these disease dynamics occurring outside the hospital setting on the HOCI incidences. I would be helped by a better explanation of what actually was done.

      It is not clear why the difference between the groups in the intervention (providing rapid or not so rapid WGS reports) was too small to have an impact, compared to the baseline period without WGS reporting. Surprisingly sites F and G appear to do significantly worse during the "rapid" phase, according to Fig1. Please clarify.

      The 'health economic findings' miss the health component. The costs of the intervention are described in detail, but not the benefits of the intervention. Is it possible to calculate the costs required to prevent a single case of HOCI?

    1. Reviewer #1 (Public Review):

      The authors set out to consider more the role of the predator in predator-prey interactions, particularly from a collective locomotion aspect. This is an aspect which at times has been overlooked, with many theories, experiments and models focusing largely on the prey response, independent of how the predator behaves. The major strengths are the (1) excellent writing, (2) quality of the figures, (3) quantity of data, and (4) question tackled. The major weaknesses are (1) the volume of information (as a reader, it is quite hard to distil key points from the sheer volume of what has been presented), (2) the confined captive environment making it difficult to draw comparisons with a wild-type scenario, and (3) lack of clarity about the wider implications of the work outside of the immediate field.

    1. Reviewer #1 (Public Review):

      In this study, He and collaborators analyse eight samples from six patients with acral melanoma through single-cell RNA sequencing. They describe the tumour microenvironment in these tumours, including descriptions of interactions among distinct cell types and potential biomarkers. I believe the work is thoroughly done, but I have identified a few concerns in their depiction and interpretation of their results.

      Strengths:

      1. One of the few available single-cell studies of acral melanoma, including a non-European cohort of patients.<br /> 2. Data will be very useful to study the immune landscape of these rare tumours.<br /> 3. Data include adjacent tissue, primary tumours and a metastatic sample, covering all disease stages.<br /> 4. Analyses seem to be carefully done.

      Things to improve:

      1. Figures need much more description to be understandable, in particular, axes should be clearly labeled and the colour code should be specified<br /> 2. In some places, I would recommend the authors soften their interpretation of their analyses (for example, when they suggest targeting TNFRSF9+ T cells as a novel therapy), as these are nearly all bioinformatic in a small number of samples<br /> 3. I don't think the experiments add much to the literature, as these test already known oncogenes on a common, non-acral melanoma cell line.

    1. Reviewer #1 (Public Review):

      COVID-19 epidemic conditions are rapidly changing due to behavioral changes, accumulating immunity from prior infections, vaccination roll-outs, and the emergence of new variants. In this analysis, the authors are using a simple mathematical model to reconstruct SARS-CoV-2 transmission dynamics in South Africa through different outbreaks with different prevalent variants. They estimate key characteristics of the epidemic in each of the nine South African provinces while accounting for multiple factors including changing detection rates, seasonality, nonpharmaceutical interventions, and vaccination. The paper is well written and addresses important questions in the field.

      The authors apply a model-inference system to estimate the background population characteristics (e.g., population susceptibility) before the emergence of the new variant, as well as changes in population susceptibility and transmissibility due to the new variant. They come up with projections of cumulative incidence, accumulation, and loss of population immunity over time for different provinces. Inference on the characteristics of different variants is also presented.

      The paper has a couple of key limitations.<br /> First, simple models come with strong assumptions. The simplicity of the model does not allow to account for several important epidemic drivers including i) heterogeneity in contactness, acquisition risk, and severity (especially with respect to age) which may have a strong impact on the epidemic dynamics; ii) all-or-nothing vaccine which restricts the possible mechanisms of protection to be explored and iii) using the same compartment for vaccinated and recovered from infection which leads to the same duration of immunity and efficacy for these 2 groups.<br /> Second, I suspect that the model-inference system has some identifiability issues. It is unclear how it selects between scenarios with low transmissibility but high IFR and scenarios with high transmissibility but low IFR. Some characteristics (including IFR) were estimated independently for each wave and each province. However, correlations across provinces should be expected.<br /> The paper will benefit from a more detailed explanation and sensitivity analyses that show how model assumptions influence presented results.

    1. Reviewer #1 (Public Review):

      This study by Boddupalli et al. demonstrated the roles of Gba in individual cells such as microglia, blood-derived macrophages, and astrocytes in the neuronopathic Gaucher Disease (nGD), a neurodegenerative disorder caused by biallelic mutations in Gba. The authors applied single-cell resolution of mouse nGD brains to reveal the induction of neuroinflammation pathways involving microglia, NK cells, astrocytes, and neurons. They also found that targeted rescue of Gba in microglia or neurons, respectively in Gba deficient, nGD mice reversed the buildup of glucosylceramide (GlcCer) and glucosylsphingosine (GlcSph), reduced the level of serum neurofilament light chain (Nf-L), and improved survival. Together with other related findings in this paper, this study delineated individual cellular effects of Gba deficiency in nGD brains. The experiments were well designed and conducted, the results were reasonably interpreted, and the manuscript was clearly written with logical inputs.

      One weak point is that it remained unclear or not addressed about the brain region or tissue-specific involvement in the observed phenotypes in this study.

    1. Reviewer #1 (Public Review):

      This manuscript by O'Herron et al. describes an all-optical method combining optogenetic stimulation and 2-photon microscopy imaging to simultaneously manipulate and monitor brain microvasculature contractility in three dimensions. The method itself, which represents a microvasculature-targeted variation on a theme previously elaborated for simultaneous stimulation and monitoring of ensembles of neurons, employs a spatial light modulator (SLM) to create three-dimensional activation patterns in the brains of cranial window-model transgenic mice expressing the excitatory opsin, ReaChR, in mural cells (smooth muscle cells and pericytes) under control of the PDGFRβ promoter. The authors demonstrated that, by splitting a single 1040-nm stimulating beam into multiple beamlets using an SLM, this system is capable of optogenetically activating ReaChR at discrete depths in the neocortex, depolarizing mural cells and producing highly localized constrictions in targeted, individual microvessels. Using this system to investigate the kinetics of optogenetic-induced contraction and sensory-evoked dilation, the authors found that the onset of optogenetically evoked contraction was much more rapid than that of sensory-evoked dilation, concluding that the observed lag between sensory stimulation and vascular response does not reflect intrinsic limitations of mural cell contractile mechanisms but is instead attributable to the time course of neurovascular coupling mechanisms. They further found that by titrating the stimulation duration they could completely negate the vasodilatory response to a concurrent sensory stimulus.

      1) The red-shifted opsin, ReaChR, represents an improvement over opsins used in previously described 3D neuronal activation/monitoring systems. In particular, brief single-photon stimulation (100 ms) of ReaChR led to rapid, robust arteriole constrictions throughout the activation volume, whereas a previous generation ChR2 opsin required stimulation for seconds to achieve slowly appearing constrictions.

      2) Single-photon stimulation was capable of completing stopping blood flow in a "first order pre-capillary branch". (Not clear what is meant by the phrase "pre-capillary branch"; anatomically, penetrating arterioles feed capillary branches.) While this speaks to the effectiveness of the method, it also highlights potential supraphysiological effects of stimulation and the importance of titrating stimulus intensity/duration to achieve physiologically meaningful responses.

      3) In assessing effects of laser power, the authors assert that "increasing the laser power only slightly expanded the range of constriction". This seems a bit of an overstatement, given that increasing power (30-fold) had a greater effect on the spread (3x) than the magnitude (2x) of the response.

      4) The suggestion that penetrating brain arterioles possess a mechanism for upstream conduction of constrictive responses is intriguing (although this intrigue is tempered by the lack of experimental support for the operation of such a mechanism in the brain microvasculature).

      5) The authors' premise for comparing contractile kinetics with sensory-evoked kinetics is flawed. In attempting to use the kinetics of optogenetic-induced constriction to infer something about the kinetics of sensory-evoked dilation, they are implicitly assuming that the kinetics of contraction and dilation processes intrinsic to mural cells are the same. This is highlighted by their use of the phrase "kinetics of the vasculature", which elides the possibility that dilation and contraction kinetics intrinsic to mural cells are different. Support for this latter possibility is provided by a previous report on renal afferent arterioles showing that the kinetics of myogenic constriction in arterioles are "substantially faster" than those of dilation (PMID: 24173354). Thus, their data do not rule out the possibility that the delay between sensory stimulation and vascular response reflects a slower intrinsic dilatory response rather than the time course of neurovascular coupling mechanisms. Furthermore, arterioles have an internal elastic lamina (IEL), which also determines the rates and degree of constriction and dilation. The IEL ends with the arterioles, and vessels with ensheathing contractile pericytes (and downstream) lack the constraints of the IEL.

      6) It's not at all clear how overriding sensory-evoked dilation with optogenetically generated constriction provides a means for distinguishing neural activity from vascular responses. In particular, it is not clear how performing this maneuver while monitoring neuronal activity can provide the suggested insight into "aspects" of functional hyperemia that are essential to neuronal function beyond the relatively trivial observation that there is a point at which blood flow is too low to support continued neuronal activity.

      7) With the exception of vasculo-neural coupling, where it would be the method of choice, the technology described leaves the impression of a capability in search of an application. That said, the ability to control blood flow to the point of completely stopping it may ultimately have applications in pathological settings.

    1. Reviewer #1 (Public Review):

      In this work, Ströh et al. characterize the kinetics of osmium tetroxide staining of soft mouse brain tissue samples, the first step in many protocols aimed to prepare samples for electron microscopy imaging. The authors used time-lapsed single-projection X-ray images of the sample immersed in the staining solution to monitor the staining process. They have then been able to not only accurately model osmium tetroxide diffusion in the tissue across time and depth, but also to compare the performance of osmium tetroxide to other commonly used first reagents: osmium reduced in potassium ferrocyanide and the same reduced osmium in formamide. Overall, they provide a clear insight on the kinetics of osmium diffusion in tissue - obeying a long-established quadratic law - while also provide clear insight on how osmium concentration in the sample rises above its concentration in the staining solution. Finally, the authors also manage to put in perspective the effects of osmium reduction on the osmium staining of the tissue. Their results showcase that osmium reduction triggers a washout of the osmium in the sample and not only counteracts an osmium-triggered sample expansion but also manages to reverse its sign, resulting in sample shrinkage and even leading to sample degradation if left for long periods of time (evident after several tens of hours).

      One minor weakness of the manuscript is that it does not characterize the presence of osmium in the tissue after the water washes that typically follow osmium staining. That would provide a valuable control for the interpretation of the potassium ferrocyanide-triggered osmium washout. Also, it would provide a valuable insight on the presence of bound osmium in the sample at the moment of starting the next staining step in the protocol, which would facilitate escalating the use their approach to modularly optimize complex heavy metal soft tissue staining protocols consistent of multiple successive steps.

    1. Reviewer #1 (Public Review):

      Scleratinian corals, fundamental species in the ocean for their structuring of habitats that host a diversity of up to 30% of marine known species, prevalently rely on phosynthases of their phototrophic symbionts for their energy budget at shallow depths. Possible adaptive strategies to deal with the low light regimes of deeper layer have been recurrently studied also to assess the balance between the resources provided by the phototrophic symbionts and those coming from direct feeding on suspended preys.

      Most corals synthetize photoconvertible Red Fluorescent Proteins, whose role has not yet fully assessed but it has been prevalently ascribed to photoprotection. Recent, more refined measurements on bio-optical properties and responses on a few species have casted doubts upon previous conclusions that they are not involved in photocapture of PAR.

      The authors utilize advanced bio-optical observations to provide support to the hypothesis that photoconvertible red fluorescent proteins (pcRFPs) synthetized by scleratinian corals may optimize the photon flux towards the hosted phototrophic symbionts by converting the prevalent blue-green light of deeper layers to red-orange light that penetrates more in the polyps' tissues.

      They show that the more penetrating in the tissue yellow-orange band produced by the pcRFP after absorption of blue-green light, can account to up to 100% of the available light in that band within the tissue, even though with a photon flux in the order of, or smaller than, 0.1 µE m-2 s-1, for an external photon flux ≲ 20 µE m-2 s-1. This photon flux could convey additional photons to symbionts located deeper in the tissue which may be shaded by the symbionts closer to the periphery of the polyp thus optimizing, together with internal scattering, light distribution within the polyp.

      In parallel, they show that Chromoproteins (CP) photoprotect corals in shallow, high irradiance waters and favors the recolonization by the symbionts.

      Indeed, their measurements confirm that green-orange light deriving from pcRFPs are present in the deeper parts of polyps tissues and that can account for up to 100% of the available light in that wave band but there is no estimate on the relevance of this additional source of energy for the overall energy budget of the corals. Their results also characterize the opposite effect on the penetration of blue vs. orange red band in absence or presence of chromophoric proteins.

      The hypothesis on possible role of pcGFPs as photoconverters to supply PAR to symbionts, despite several previous studies had rejected this possibility, has already been proposed by Smith et al, 2017 (cited by the authors), who supported their inference by the mapping the fluorescence of symbionts' chlorophyll in the tissue. This could also motivate the seemingly better, adaptation of orange fluorescent corals at low light regimes.

      Also the photoprotective role of CPs has been studied and characterized, among the others, by Smith et al, 2013 (also cited by the authors).

      The methods used by the authors, and their results are robust but there are some areas for improvement in the present version, because: 1. it does not add significant insight on the effective role of pcRFP in respect to what discussed by Smith et al, 2017; 2. it does not assess how relevant is this additional source of energy for the organismal nutritional budget; 3. it does not provide any physiological/molecular information which could support the link between pcRFPs internal stock and light quantity and quality availability.

    1. Reviewer #1 (Public Review):

      In this article, Ogran et al set out to map the alterations in transcription start sites (TSS) and/or the alternative promoter usage in T-Cell Leukemia/Lymphoma 1 (TCL1)-driven chronic lymphoid leukemia and their impact on the collection of efficiently translated mRNAs. To achieve this, the authors employed an Eu-TCL-1 mouse model from which they derived CLL cells and compared them to normal B cells. This revealed profound differences in transcription start site selection and alternative promoter usage in CLL vs. normal B cells using a battery of genomic analyses. Some evidence is provided that these effects are coordinated with translational programs via orchestration of the alterations in chromatin modifiers and transcription factors including c-MYC. Finally, the authors show that the forced expression of TCL-1 in an unrelated cell line (mouse embryonic fibroblasts) causes similar effects as in CLL cells, thus suggesting that their observations are not limited to Eu-TCL-1 CLL cell line. Overall, this study provides initial insights into the mechanisms that may coordinate TCL-1-dependent epigenetic, transcriptional, and translational programs and should thus be of significant interest to the broad spectrum of researchers from those focusing on gene expression to those studying hematological malignancies.

      Strengths: This study employs powerful genomic approaches (e.g., polysome-CAGE) to address an important gap in knowledge related to the coordination of epigenetic, transcriptional, and translational programs in neoplasia. Overall, it was thought that most of the studies were well executed and that provided results support most of the author's conclusions.

      Weaknesses: The major weaknesses of the study were related to the relative lack of validation and biochemical and functional characterization of the large-scale studies. To this end, the impact of the alterations in TSS and alternative promoter selection on corresponding protein stoichiometry and function remains unclear. Moreover, it was thought that more mechanistic detail linking the alterations in ORF length of chromatin modifiers and alterations in chromatin in the context of TCL-1 is required to support the author's model.

    1. Reviewer #1 (Public Review):

      Neutrophil extracellular traps (NETs) are defined as structures containing extracellular DNA co-localizing with granule-derived proteins, such as neutrophil elastase, and histones. While in in vitro assays a variety of protocols have been described to unambiguously detect and quantify neutrophil extracellular traps (NETs), in ex vivo tissue samples, quantification and demarcation of NETs from the remnants other forms of neutrophil cell death such as necrosis is still challenging. The current manuscript by Tilley and colleagues describes a novel tool to perform that important task. The authors have discovered that human histone H3 is processed by serine proteases at a specific cleavage site during NET formation. They created a mouse monoclonal antibody to this cleaved histone H3 and assessed its performance as a tool to detect NETs in vitro and ex vivo.

      The paper is well-structured and written, thus presenting a valuable contribution to the field. There are some open issues with the manuscript which are not clear at this point:

      1. One major point are the dynamics when this clipping occurs and if it occurs extra- or intracellularly. The authors have a used a serine protease inhibitor, AEBSF, which not only inhibits histone clipping but also NET formation and nuclear decondensation itself. I am therefore not sure if the conclusion can be drawn that histone H3 clipping is an intracellular event and "serine proteases cleave the N-terminus of H3 early during NET formation." This is also in open conflict to the study by Pieterse et al. (Ann Rheum Dis 2018) who demonstrated prevention of histone clipping by serine protease inhibitors working exclusively outside the cell.<br /> 2. Along these lines it is also confusing that the staining by an anti-citH3 Ab and 3D9 seems to be mutually exclusive. The authors mention this in the discussion and explain that 3D9 "may display a preference for more mature or proteolytically processed NETs." This seems to be hard to align with their claim that H3 is clipped early during NET formation. It would be important to show if citH3+ NETs progress into 3D9+ NETs. If this is not the case, that would potentially render a large part of the literature that has used citH3 staining for the detection of "NETs" useless.<br /> 3. Non-suicidal pathways of NET formation were described, where parts of the nucleus are extruded but the cell remains intact and basal cellular functions of neutrophils are still carried out. These" vital NETs" are not addressed in the manuscript.<br /> 4. The authors show that neutrophils stimulated with C. albicans released NETs not bound by 3D9, which remains unexplained.<br /> 5. The authors suggest careful validation for cross reactivity in samples under native and mild detergent condition, e.g. in serum samples. It would be good if this validation be performed in the current study.

    1. Reviewer #1 (Public Review):

      Overall the paper documents a challenging structure determination of two Topoisomerase V DNA complexes using a combination of molecular replacement and heavy atom phasing. The crystal structure of Methanopyrus kandleri Topoisomerase V DNA complexes reveal two important unique features of the topoisomerase V DNA binding mechanism. The first is that the active site toggles between opened DNA accessible state to a closed state where the active site cleft is blocked and inaccessible to nucleic acid. A second striking feature is the assembly of an array of helix-hairpin-helix motifs that wrap the duplex DNA. The authors propose the DNA wrapping facilitates a possible function of the HhH domains as a processivity factor.

      This protein harbors both topoisomerase and AP-lyase activities. A caveat of the work is that the DNA bound form of the protein does not reach either the Ap- lyase or topoisomerase active sites, so insights into the catalytic mechanism(s) of the protein is limited.

      The major limitation of the study is that none of the novel aspects of the Topoisomerase V DNA binding and Topoisomerase mechanism proposed herein are evalulated experimentally. In this sense, the study is quite preliminary and hypotheses stemming from the structural work remain untested.

    1. Reviewer #1 (Public Review):

      This study presents a model of an idealized neural circuit that learns to minimize the distortion between its inputs and outputs subject to a capacity limit on the mutual information between them. With some further assumptions about the persistence of activity, this model is used to make predictions for patterns of working memory (WM) error that are compared to existing human behavioural data, and predictions for neural responses that are compared to existing primate electrophysiology data. The authors are to be commended for their ambitious and inventive approach and attempt to bridge different fields, however:

      - Some aspects seem improbable from a biological perspective e.g. it seems the tuning width in the model depends on the information rate R, which is predicted to change over short time intervals and with external factors such as the number of stimuli. Electrophysiological observations in general do not support these kinds of tuning changes.<br /> - The selection of studies/data for comparison with the model seems selective and overlooks well-established observations about WM that might challenge the model, e.g. it seems the model would predict that WM performance improves if stimuli are presented sequentially, but this is not the usual finding.<br /> - The match between model predictions and behavioural data is qualitative at best in a field where existing models can reproduce the same data with quantitative precision. Like previous studies that have assumed an information limit on WM (i.e. a fixed number of bits), the model struggles to reproduce the effects of set size.<br /> - The neural data provides a weak test of the model: the observation that performance correlates with activity level is common in most population models. The behavioural observation in primates that trials with large errors tend to be followed by trials with smaller errors could have a range of alternative explanations.<br /> - There are very few details of how the model outlined at a theoretical level was actually implemented to generate predictions for the different experiments.<br /> - The account of the model is difficult to follow with few signposts for readers who aren't well-versed in rate-distortion theory.

    1. Reviewer #1 (Public Review):

      The authors examined the information available in mesoscopic resolution structural MRI data acquired at 0.35mm isotropic resolution. Data are acquired from about a third of the brain, but the analysis concentrates on the calcarine sulcus and Heschl's gyrus. The authors locate patterns of draining veins and laminar profiles based on T1 and T2*. Based on earlier work they advocate acquiring two sets of scans with orthogonal orientations of the phase-encoding directions and then taking a minimum intensity projection to eliminate artifacts caused by pulsatile flow. In each subject they define four regions of interest and then use a novel algorithm to flatten the convoluted data.

      The main strengths of the study are the high spatial resolution achieved, and the quantitative measurement of both T1 and T2*. In addition, the open-science approach with both data and source code are appreciated. The development of a flattening procedure that does not rely on triangular meshes is valuable.

      The weaknesses are the lack of whole brain data, which may disappoint some potential users, and the lack of motion correction, which does not significantly affect the data quality of the present paper, but could cause difficulties for others wishing to implement the acquisition protocol with less compliant subjects.<br /> A manual segmentation duration of 8-10 hours per subject is intimidating. It also seems like a missed opportunity that although multi-echo GE data were generated no attempt was made to make use of the phase information (phase maps, SWI, QSM).

      The authors clearly show that in V1 they can identify cortical profiles consistent with the presence of the stripe of Gennari, that is absent in Heschl's gyrus.<br /> The paper contributes to a body of literature showing that it is possible to obtain information on myelination using both T2* and T1 parameters. It would have been interesting to see whether the current data can hint at the presence of the lines of Baillarger in the extrastriate cortex (see for example "Lines of Baillarger in vivo and ex vivo: Myelin contrast across lamina at 7 T MRI and histology, Fracasso et al. 2016"). The availability of the processing software is a valuable contribution to the community, but I would have been interested to understand how it differs from, for example, CBS tools.

    1. Reviewer #1 (Public Review):

      The authors sought to define how inputs from type Ia sensory fibers change after spinal cord injury (SCI). The model used to answer this question involved measuring the H-reflex of participants with SCI or able-bodied controls at rest or during a voluntary contraction at 30% of maximal EMG activity. These studies were done with/without stimulation of either the common peroneal nerve (D1 inhibition) or femoral nerve just prior to measuring H-reflexes. Participants with SCI were motor-incomplete with AIS C or D injuries. Participants taking anti-spasticity medications were asked to discontinue these prior to evaluation. Some strengths of the study were the number of participants in the SCI group, the effort to ensure that differences between SCI and controls as far as baseline physiological parameters did not explain the differences in effects of Ia fibers, and the inclusion of a control group. The results showed that in persons with SCI, D1 inhibition of the H-reflex was decreased by voluntary soleus muscle contraction in controls but not persons with SCI whereas femoral nerve stimulation increased the H-reflex during voluntary contraction in controls but not persons with SCI. The results thus elucidate changes in the effects of proprioceptive signals activated by muscle stretch on motor neuron activity in persons with motor-incomplete SCI that depend on whether the proprioceptive input comes from the extensor muscle being contracted or another extensor muscle from the same limb. The large, open question posed by these studies is why there is discordance in results observed with the femoral nerve and common perineal nerve conditioning paradigms when examining H-reflexes during submaximal soleus contraction.

    1. Reviewer #1 (Public Review):

      Overall, the science is sound and interesting, and the results are clearly presented. However, the paper falls in-between describing a novel method and studying biology. As a consequence, it is a bit difficult to grasp the general flow, central story and focus point. The study does uncover several interesting phenomena, but none are really studied in much detail and the novel biological insight is therefore a bit limited and lost in the abundance of observations. Several interesting novel interactions are uncovered, in particular for the SPS sensor and GAPDH paralogs, but these are not followed up on in much detail. The same can be said for the more general observations, eg the fact that different types of mutations (missense vs nonsense) in different types of genes (essential vs non-essential, housekeeping vs. stress-regulated...) cause different effects.

      This is not to say that the paper has no merit - far from it even. But, in its current form, it is a bit chaotic. Maybe there is simply too much in the paper? To me, it would already help if the authors would explicitly state that the paper is a "methods" paper that describes a novel technique for studying the effects of mutations on protein abundance, and then goes on to demonstrate the possibilities of the technology by giving a few examples of the phenomena that can be studied. The discussion section ends in this way, but it may be helpful if this was moved to the end of the introduction.

    1. Reviewer #1 (Public Review):

      This manuscript definitively documents poorer virus-specific CD4 & CD8 responses to SARS-CoV-2 among people in South Africa with unsuppressed HIV viremia.

      The impact of these findings is significant. There is a long history of studying the synergistic impact of HIV on immune response, clinical severity, and transmission of other infections. With COVID-19, a leading hypothesis is that HIV-induced immunosuppression may facilitate prolonged infection with high SARS-CoV-2 viral loads and mutagenesis, which in turn may explain the emergence of new viral variants.

      While the results in the study are not unexpected, they required empirical proof as persons with uncontrolled HIV are somewhat surprisingly not at higher risk of severe manifestations of other respiratory viruses (at least in comparison to other immunocompromised hosts such as stem cell transplant recipients) and even the literature on COVID-19 severity in persons with HIV shows variable results.

      A strength of the study is that the authors interrogate T cell responses to SARS-CoV-2 in a detailed and rigorous fashion. They provide several results which allow a more nuanced appreciation of immune responses in persons with HIV including the observation that virally suppressed individuals mount relatively normal CoV2 specific CD4 and CD8 T cell responses and that immunodominance hierarchies and variant cross-reactivity are harmed in HIV viremic individuals.

      An unavoidable weakness is the descriptive nature of the study. Some presented data does not appear internally consistent.

      Nevertheless, the analyses appear sufficient to justify the study's conclusions.

    1. Reviewer #1 (Public Review):

      This is a lovely study focusing on the anatomical connectivity between the medial prefrontal cortex (mPFC) and the nucleus accumbens (NAc) and ventral tegmental area (VTA). The case for focusing on this circuitry is strong, with these regions' central role in motivation and reward processing. Prior work had looked at whether mPFC->NAc and mPFC->VTA neurons are separable populations, and what their other features may be. But here, the authors bring to bear a host of converging evidence, often replicating main results multiple times with different techniques, to establish the pattern: These are largely (but not wholly) separable populations, with distinct laminar and molecular profiles. I think this paper has substantial value to the field.

      My main quibble is with the framing. There are many places throughout the manuscript where the authors claim that there is a great deal of controversy about the extent of the branching of these neurons. That is true, if you ask about *all* mPFC neurons. However, the vast majority of their citations either do not look at mPFC->NAc or do not look at mPFC->VTA. Instead, they look at mPFC projections to other cortical regions, thalamus, amgydala, etc. So I don't think the contradiction is really as deep as what they suggest. It would be best to reframe those portions of the paper just about prior evidence for mPFC->NAc/mPFC->VTA neurons, not all of the others. Then, there will be plenty of space to do a deep dive into the few papers on this topic, which do actually contradict each other (particularly Gao et al., 2020 vs Pinto & Sesack 2000). Then, the broader discussion of IT vs PT cell types and other projections (amygdala, thalamus, and so on) can be shortened and mainly live in the Discussion.

    1. Reviewer #1 (Public Review):

      The key question that Huang et al. are addressing is which approach, paratransgenesis, transgenesis, or the combination of both, is the most promising to combat malaria, killing parasites without affecting the mosquito host. They explored this question by generating a transgenic mosquito line secreting two effector molecules in the midgut and salivary glands, and infecting mosquitoes with Serratia bacteria expressing effector molecules. Their major finding is that a combination of both strategies has the highest inhibition of parasite development compared to transgenesis or paratransgenesis alone. This is further confirmed by mouse infections with a rodent malaria model showing that a combination of both strategies inhibits transmission to naïve mice.

      This study is comprehensive and provides significant information on the possible use of these approaches for malaria control. The effects on parasite development are clear and convincingly confirm that these strategies have the potential for reducing malaria transmission. It cannot be ruled out, however, that the more pronounced effects on parasite development of the combined approaches may be due to differences in the fitness of these mosquitoes rather than a true additive or synergistic action between transgenesis and paratransgenesis. Another limitation is that the authors do not show when parasites are killed and do not provide direct evidence of the role of the bacterial-expressed factors in the killing mechanism.

      The authors show very convincingly that transgenic mosquitoes (all possible combinations) have comparable fitness to wild types. However, these fitness studies are lacking in Serratia-infected mosquitoes, and in the transgenic-paratransgenic combination. Are those mosquitoes as fit as WT? Fitness costs could negatively affect parasite development indirectly, rendering the comparison between the treatments impossible (and negatively impacting this possible strategy). These are key controls that need to be added to the manuscript in order to support the finding that the combination is the best approach.

      It is surprising that the Sg/E line inhibits oocyst development given it uses a salivary gland promoter. The authors hypothesize that this is most likely explained by mosquitoes ingesting saliva with the blood meal. This hypothesis is interesting but needs to be tested by determining the presence of Scorpine and MP2 protein in the blood bolus. Also, at what stage are parasites killed?

      While the authors test the expression levels of Scorpine and MP2 by qRT-PCR and western blot in transgenic mosquitoes, they did not test levels in paratransgenic ones. In which tissues are these factors produced in Serratia-infected mosquitoes? Are Scorpine and MP2 produced in the midguts and/or salivary glands? And at what level? A quantitative comparison of scorpine and MP2 protein levels in transgenic and paratransgenic mosquitoes is important to determine whether levels are correlated to the effects on parasite development.

      Related to this, the engineered Serratia bacteria appear to express 5 effector molecules rather than just MP2 and Scorpine. This obviously can affect the results and also makes a direct comparison less meaningful, but we couldn't find any information on the other effectors, or on whether they are expressed and potentially responsible for the observed anti-parasitic activity.

      More information about the experimental setup is needed. The authors used a piggybac approach that has led to multiple insertions in some of the mosquito lines. Which lines did they use for the experiments? This is not clear in the manuscript. If multiple insertions were used, this should be stated and the feasibility of maintaining them (and efficacy) over different generations should be discussed.

      Oocyst and sporozoite data are not normally distributed, and therefore presenting the median instead of the mean is more informative. Furthermore, the statistical analyses done do not appear to be appropriate for this data. The authors need to either FDR-correct for multiple comparisons or do a Kruskal-Wallis test with post hoc testing. It would also be important to do statistical analyses on the prevalence.

      When discussing the ethical consequences of this approach, the authors should also discuss the possible effects of QF2, scorpine, and MP2 secretions in humans upon a blood feed.

      The authors show Serratia vertical transmission over three generations, but as the CFUs decrease over multiple generations, they should discuss whether low levels of Serratia can still block parasite development. In general, the manuscript lacks a thorough discussion of the limitations of this study.

      The discussion around line 280 should be more nuanced. I don't think the word 'protected' can be used as mice were not immunized but were simply not infected.

    1. Reviewer #1 (Public Review):

      In this effort, the authors investigate whether sulfide ions in the nitrogenase Fe protein Fe4S4 cluster can be exchanged with selenide ions using x-ray crystallographic detection of the newly incorporated Se. Strengths include the quality of the datasets collected and the thorough nature of the experimental design. The results are convincing and well-validated. Weaknesses include a narrow scope with broader applications that may not be sufficiently defined for a general audience.

    1. Reviewer #1 (Public Review):

      In this study, the authors showed that the TNF receptor superfamily member Death Receptor-3 (DR3) is preferentially expressed on thymic NKT17 cells in both BALB/c and B6 mice. They further demonstrated that injection of agonistic anti-DR3 can directly activate thymic NKT17 cells in vivo. In addition, DR3 ligation provides costimulatory effects to α-GalCer-stimulated thymic NKT17 cells in vitro. Overall, the experiments are well-performed, and the conclusions are largely supported by the presented data. However, it is not clear whether DR3 ligation affects the function of NKT cells and whether DR3 plays a similar role in human NKT17 cells.

    1. Reviewer #1 (Public Review):

      The authors use single-cell RNA-sequencing to identify cell types and molecular mechanisms between two distinct regions in the second-trimester human placenta: the villous chorion and the smooth chorion. Two major descriptions are of important interest. Based on their elegant transcriptomic analysis, the authors identify a new subset of cytotrophoblasts (CTBs) which they termed smooth-chorion-specific CTB (SC-CTBs). Based on the transcriptomic profile, the authors suggest that the role of the SC-CTBs is in form of an epidermal-like barrier and blockage of aberrant syncytiotrophoblast (STBs) differentiation. Moreover, the authors show a close association of SC-CTBs with extravillous trophoblasts (EVTs) and they suggest that SC-CTBs secrete factors that inhibit EVT migration.

      I find that the study tries to answer a novel question in the field. Their results could be of interest to the community in the field.

      They are some additional aspects the authors could address.

      - In the method section, I would suggest the authors explain in detail how the cellular isolations of VC and SC trophoblasts were performed and not just cite other papers. In addition, it would be good to know how the samples were obtained. Were they normal pregnancies?<br /> - Would it be possible for the authors to validate their data to re-analyze other publicly available datasets on the first and third-trimester placenta. Do they find similar findings for EVTs? It would be extremely interesting if they could infer how EVTs change throughout gestation.<br /> - The findings on SC-CTB-secreted factors inhibiting EVT invasion are very intriguing. Could the authors analyze the conditioned media (via mass spec or ELISA) from SC and VC to try to identify potential candidates (e.g. SERPINE1 as mentioned in the discussion)?

    1. Reviewer #1 (Public Review):

      The authors look at a few different nematode species to compare the dynamics of anaphase. They find that in some species the spindle oscillates transversely in anaphase, and in other species it does not. They ask what accounts for this different behavior. To address this question, they use ablation of the central spindle, and conclude from the result, correctly, that after the ablation the centrosomes are pulled to the opposite poles of the cell in all species. However, the magnitude, half-time and initial velocity of the recoil differ.

      To understand what accounts for the quantitative difference, the authors

      1) use a simple viscoelastic model of a constant force, F, pulling against a spring (with constant stiffness k), while the object moves through the viscous medium.

      2) estimate the cytoplasmic viscosity from tracking yolk granules,

      3) estimate parameters F and k from fitting the exponential recoil curves. They find that the greatest correlation between having transverse oscillation or not is with lower or higher viscosity, not with magnitude of the force or stiffness of the spring.

      Two major problems with this study can be identified:

      1) Meaning and significance: It is not clear if the transverse oscillation have a functional significance. In fact, they are more likely than not simply a byproduct of complex nonlinear mechanics of the mitotic spindle. It is important to understand what we can learn about the spindle mechanics from these oscillations, but there may be no evolutionary significance here. If the authors were asking - how, in many different species, the spindle scales with the cell size in the same way (as was done in Farhadifar et al 2020, which the authors do not to cite) despite large parameter variations - that would be a different story. But asking which parameter change is responsible for the behavior change is less meaningful.

      2) The study is not convincing, mainly because the model used for the fit is overly simplistic. The force is not constant, the spring stiffness is not constant, the mechanics is not, etc. There are a few different, very complex models, of the anaphase spindle with transverse oscillations - comparing to simulations of these models would be more convincing. Also, I am not quite sure whether the volume fraction of yolk is a useful parameter. Does not measuring MSD give us the diffusion coefficient and viscosity directly? I think using the factor depending on the volume fraction artificially inflates the viscosity differences. Lastly, I do not understand the theoretical argument based on comparison with Nedelec's model: in that model, increasing viscosity only slowed the oscillations down, not abolished them.

      In short, much more thorough investigation would be needed to understand which differences between the species account for the presence or absence of the oscillations, and one may question whether the answer would have a deep impact on our understanding of spindle mechanics.

    1. Reviewer #1 (Public Review):

      This manuscript is centered around first a high-throughput screen with a nano-luciferase readout for spore germination. Hits from the initial screen are then validated using a quantitative germination assay (QGA) based on cell shape (spores are elongated, yeast cells are spherical). This combination of primary and secondary screens is a very powerful and rigorous approach for identifying small molecule inhibitors of germination. Subsequent experiments focus on the precise phenotypic nature of germination inhibition by different categories of germination behavior and elucidation of the molecular target/molecular mechanism of each validated QGA hit.

      The data in Figure 2, demonstrating that 76 of the 191 germination inhibitors can be grouped into conserved structural categories. This suggests that there are a limited number of ways to inhibit germination and supports, at least to this reviewer, the hypothesis that spore germination is a promising target for antifungal therapies and/or prophylaxis.

      The Seahorse data nicely show that several group B small molecules inhibit oxygen consumption and thus likely the electron transport chain, either directly or indirectly. The B2 profile closely resembles the known complex II inhibitor furcarbanil, but the B5 profile does not. It is not clear to me why the authors attribute B5-induced germination inhibition to targeting complex II, as despite the structural similarity to known complex II inhibitors.

      Overall, this is an exciting and rigorous paper. While inhibiting spore germination is unlikely to treat systemic fungal infections, as many patients present in clinical with an advanced infection, the authors address this in their discussion. The idea of using spore germination inhibitors as a prophylactic treatment is reasonable, and the authors include a measured discussion of overall impact. The QGA is an impressive technique with potential application to other morphological transitions in fungi. The use of robust and fundamentally different primary and secondary screens make this work an exemplary chemical/phenotypic genomics paper. Too many secondary assays end up looking for hits with the same mechanism as the primary assay. Here, the use of a primary reporter assay and secondary germination assays are very well done.

    1. Reviewer #1 (Public Review):

      Carboxy-terminal proteases, such as CtpA and CtpB, have been shown to be important for the normal functioning and the type 3 secretion system and virulence. The authors convincingly reveal the mechanism of how the inactive protease CtpA is activated by its substrate activator LbcA. Crystal structures of CtpA reveals a hexamer (trimer of dimers), with a Ser-Lys-Glu active site triad in an inactive conformation lacking proper H-bonding distance. Furthermore, in CtpA the substrate tunnel is blocked by a PDZ domain; these inactivating features are not observed in the active CtpB protein, revealing the structural rationale for protease inactivation with CtpA. Domain swapping facilitates oligomerization as does the C-terminal region extension not found in the active CtpB protease. The C-terminal region was shown to influence the interface between the dimers of CtpA and the associate with the substrate activator LbcA. This was confirmed with mutagenesis studies. Crystal structure of LbcA revealed a spiral conformation consisting a 11 helical tetratricopeptide repeats, with an inner diameter of 3nm. The spiral is proposed by the authors to wrap around substrates. CryoEM of CtpA (An inactive serine mutant) with its substrate activator LbcA, revealed a stoichiometery of 6 CtpA to 3 LbcA. The LbcA indicated weak density but two conformations were observed where LbcA has either one or two contacts with CtpA, and importantly a rotation in the PDZ domain which initially blocked the active site. The N-terminus of LbcA was shown to be important for this association using pull down assays, and for substrate degradation both in vitro and in vivo. This, of course, is likely a complicated process, and the authors nicely present two different plausible models to support the activation of the CtpA by LbcA. This work will be of interest to readers in the protease field, and in particular those that function near membranes.

    1. Reviewer #1 (Public Review):

      The authors wanted to evaluate the role of the vWA domain of the PilY1 protein in surface sensing in Pseudomonas aeruginosa. They specifically wanted to determine whether force induced conformational changes were necessary for adequate adhesion and the role this played in biofilm formation and cdG signaling. The authors very nicely used a combination of functional genetics, microbiological classical methods, comparative genomics and microscopy to evaluate the role of said domain, and more precisely that of cysteine-152 within vWA. They generally found that:

      - There is a strong dependency on cysteine-152 (C152S), as its removal results in reduced biofilm formation and lower c-d-GMP levels, similarly as does the removal of the whole or partial vWA domain.

      - C152S leads to a reduction in adhesion strength and a significant change in the magnitude and frequency of spikes and plateaus, thereby altering their mechanical behaviors during surface adherence.

      - Comparative genomic analysis of different strains of P. aeruginosa indicated that the cysteine residues in PA14 are highly conserved within that clade, but not in that of PAO1 and others. This in turn resulted in a functional deficiency to form biofilms relative to wtPA14.

      - The results obtained in this study, and previous data obtained by the same team and others, led the authors to propose a model for force induced biofilm formation and transition from planktonic to irreversible attachment to surfaces, highlighting the potential interaction between PliY1 and PilO and the downstream signaling cascade it unfolds through the subsequent interaction between PilO and SadC and, ultimately, its effect on cdG.

      Overall, the authors very systematically approached their hypotheses using appropriate methods. I think their conclusions are well supported by their data, their previous findings and that of other groups.

    1. Reviewer #1 (Public Review):

      Parag et al. propose a new method for estimation of the effective reproductive number, R, from a times series of observed cases, focusing specifically on the situation when daily observed counts are low, and when policy makers may be trying to determine if an epidemic has been locally eliminated. Their method provides several main improvements over the existing standard, the Cori method or R estimation, which performs poorly when daily counts are low:

      1. The method assumes that R values evolve as a random walk, which improves the smoothness of the estimates when case counts are low and avoids the need for the user to choose a smoothing window. This is not the first application of this technique, but it can successfully eliminate erratic fluctuations in R estimates when daily case counts are low.

      2. The method combines information from a forward and backward pass. Most R estimation methods use either a forward pass, comparing the number of infections observed on day t to the number of infections incident on dates in the near future, or a backward pass, comparing the number of infections observed on day t to the number observed on dates in the recent past. The authors claim that by combining a forward and backward pass, the method is theoretically more accurate than other methods, but a numerical demonstration using synthetic data is not provided.

      3. The method considers the separate contributions of imported and locally transmitted cases to when estimating R. This is not the first study to do so, but separating local and imported cases is essential when case counts are low and the epidemic is near local elimination.

      4. The authors adapt a previously described metric, the Z number, to quantify the likelihood that an epidemic has been locally eliminated.

      The main results apply the proposed methods to data from Australia, Hong Kong and New Zealand, all jurisdictions with effective COVID-19 surveillance that controlled epidemic spread very effectively. The results provide a compelling illustration of the utility of the methods for policy making, especially by showing that changes in the Z number can provide early warnings of epidemic resurgence that are not immediately evident in R estimates.

      The main limitation of the work is that the methods are not designed to account for common problems in observed COVID-19 surveillance data, such as long lags to observation, small fractions of infections being observed, and changes over time in the observed fraction. While these methods seem to work well in countries with exceptional epidemic surveillance, their accuracy is not clear in other contexts.

    1. Reviewer #1 (Public Review):

      The authors re-analyze publicly available single-cell transcriptomes of 6 bead-enriched T cell subsets and show that unbiased single-cell clustering analysis identifies distinct subsets that are not defined in the 6 bead-enriched T cell subsets. They describe a "new" IFNhi T cell subset and characterize this subset based on expression of BST2 surface marker. There are several critical concerns with the significance, innovation, analysis approach and interpretation of data presented in this manuscript.

      Significance: The main conclusion from the authors is that single-cell transcriptome-based clustering is better than protein-marker based classification of T cell subsets. Unfortunately, the 6 bead-enriched T cell subsets are not very well resolved in the first place. For example, CD4Th subset is called as one subset, standard FACS analysis with 10-15 markers would resolve this subset into >10 distinct subsets like Th1, Th2, Th17, Th1/17, Tfh, Tfr, naïve and memory Treg, CD4-CTL, TEMRA, TCM, naïve etc. Unless the authors show that single-cell RNA-seq can resolve T cell subsets better than standard cytometry, I don't see the value/significance of this study.

      The authors should combine CITE-Seq with 20 markers and single-cell RNA-seq to definitively show that single-cell RNA-seq is a better at resolving T cell subsets than standard methods.

      Innovation: There is very little innovation in this study. None of the subsets resolved are new, including the rare IFNhi subset (Tibitt at all, 2019, Seumois et al, 2020, Meckiff et al, 2020). The methodological approaches are not novel. Data set analyzed in a public resource that does not use the latest high-resolution 10x methods..

      Methodology and Interpretation.<br /> • Datasets used for analysis: The markers used to classify the 6 pre-defined subsets are not optimal. For example, TREG cells cannot be defined as CD4+CD25+ (additional CD127 marker is necessary to resolve properly). Similarly, naïve CD4 or CD8 T cells cannot be resolved by RA+ cells, additionally CCR7 is needed, otherwise TEMRA cells that express RA will be erroneously labelled as naïve cells. The biggest problem is that their initial cell classification based on markers is suboptimal and will lead to incorrect classification. This problem cannot be resolved by using this dataset for analysis.

      • Clustering analysis: Details need to be provided for rigor and reproducibility concerns. Number of genes used to generate the clusters, number of PCA, what resolution and perplexity were used? Published data on single cell analysis of PBMC usually showed clearer separation between cluster and cell subsets. Also, it is very conventional to provide a heatmap showing the number of signature genes. The manuscript only lists a few genes for each T cell subsets, are those gene the most differentiated genes? Also, proportion of cells between clusters and within cluster would need to be provided as a figure for clarity. As for example, the % of CD8 MAIT cells appears to be high, is this from the result of a specific enrichment? Or some sort of technical artefact?

      • Activation, authors show that BST2+ cells get activated by showing increased expression of CD25. However, authors failed to show their claims about fast activation. BST2 is usually described to be expressed by regulatory T cells. One would suggest to show activation in a time course of CD25 induction or better other activation markers such as CD69, or CD154.

    1. Reviewer #1 (Public Review):

      This study conducted by Akito Otubo et. al has two goals: 1. evaluate the usefulness of using formalin fixed frozen tissue that has been stored for several years, and 2. characterization of arginine vasopressin (AVP)-producing neurons in macaque hypothalamo-pituitary axis using immunoelectron microscopy approaches. The authors seek to follow mouse studies that suggest co-release of glutamate and corticotrophin-releasing factor (CRF) by magnocellular neurosecretory neurons in the supraoptic nucleus (SON) and paraventricular nucleus (PVN) of the hypothalamus. The specific goal being to ask if a similar co-release mechanism occurs in the primate AVP/CRF system.

      The major strength of the results is that they do show antigenicity in formalin fixed tissue, but the major weaknesses listed below leave me unconvinced by their conclusions that, "We found that both ultrastructure and immunoreactivity are sufficiently preserved in macaque brain tissues stored long-term for light microscopy", and thus I do not believe they have achieved their aims. There are three main issues I have: 1. The quality of the tissue is extremely poor as there are numerous membrane breaks making it near impossible to make out cellular structures. For instance, without the antibody staining to guide the eye, I question whether any cellular structures could be made out, 2. it's not stated whether the antibodies used in this study were the ones that just happened to work or if antibodies work universally; such burden of proof is essential if the authors wish to claim that old formalin fixed tissue is of value, and 3. there's a significant lack of controls on two fronts: a. controls with a properly fixed (fresh, glutaraldedhyde, etc.) brain showing antigenicity is similar to the old formalin tissue, and b. negative controls for the co-release model that prove the immunostaining is specific. For example, staining for a protein that shouldn't localize in the PCV (and hence not co-localize with NPII or copeptin). There lacks similar negative controls for the immunofluorescence data. The burden of extensive controls is on these authors if they wish to establish that older tissue is of scientific value. Overall, without controls showing 1. Old formalin fixed tissue compared to fresh tissue show equivalent results, 2. antigenicity is in fact real, and 3. antigenicity is broadly true for several biological markers.

    1. Reviewer #1 (Public Review):

      In this study, the authors use social media data to investigate the determinants of acceptance of covid-19 vaccines.

      The strengths of the study are the amount and diversity of the population sample that comes from the use of social media as well as the ability to tease out various factors contributing to the vaccine acceptance, which the authors pursue in a counterfactual-based causal analysis. The study suffers however from imperfect evidence with regards to the causal interpretation of the findings, as the methods used do not have strong control for confounding effects: they are based on an output model with a multinomial regression, which is strongly parametric. Also, the authors note a discrepancy in the findings with a prior study based on surveys, but do not explore the potential reasons behind this discrepancy which casts a doubt on the overall validity of the findings.

    1. Reviewer #1 (Public Review):

      Here, the authors analyze publicly-available chromatin looping and gene expression data in mouse and human to measure diverse properties of genome-wide promoter-centered maps, including associations with gene expression. After uniformly processing all data, they produced simulated chromatin looping maps. Using these results, they show there is conservation of regulatory landscape across the two species, and that the extent of conservation in the TSS-distal landscape is associated with gene expression evolution. The results support general concepts in this area of research.

    1. Reviewer #1 (Public Review):

      Work by the authors and others previously revealed that there are different sequence variants of the DNA encoding for ribosomal RNA in mouse, that these variants have different DNA methylation state and are affected differently by "the environment" (by diet). Previous work was focused on very specific single nucleotide variants but a global picture of all the different rDNA copies/haplotypes and their DNA methylation state was missing. The aim of the current paper was to fill this gap and it achieved this.

      Because the sequence of the different rDNA sequence variants (that vary even between animals of the same inbred mouse strain) are not fully annotated and included in the mouse genome assemblies, the authors first cataloged them using their own short read and ultra-long read whole genome sequencing from DNA from four mice of the most widely used inbred mouse strain (C57BL/6J). This revealed the presence of four different haplotypes, that form two pairs based on genetic similarity. One of the genetic differences that discriminates the two pairs of haplotypes is the A/C variant at position -104 previously analysed by this group in publications in 2016 and 2018. One of the four haplotypes (the ATA haplotype) was found to be highly methylated in all samples. The authors then showed that DNA methylation of this specific haplotype is affected by dietary interventions (this way refining the observations from their 2016 and 2018 papers) and also that (extreme) loss of DNA methylation leads to its transcriptional activation. This data provides indirect evidence that "the environment" can potentially affect the expression of different rDNA haplotypes. This is an exciting result showing a potential interconnection between the environment, the genotype (already previously reported by this group) AND a molecular phenotype. However the link with the phenotype requires more work to become convincing and to also show that - even if this interconnection is indeed true - that it affects a physiological phenotype.

      The paper then attempts to test whether different rDNA haplotypes with distinct DNA methylation profiles also exist in other mouse strains and also in humans. Through DNA sequencing, DNA methylation sequencing (WGBS) and rRNA sequencing they show that indeed different sequence variants with different DNA methylation level exist in other mouse strains and one also is identified in human. An interesting additional observation is that both human and mouse data support a link between rDNA copy number and silencing, as previously reported by other groups in yeast.

      Strengths:<br /> * The paper presents the most extensive annotation of the different rDNA haplotypes in the C57BL/6J mouse genome. This annotation and the generated data will be very valuable to anyone interested in rDNA in this species.<br /> * DNA methylation data complement the generated rDNA sequence data and provide a picture (from a few tissues/cell types) of the DNA methylation level of these haplotypes and their variation. One of the four main haplotypes appears to be highly DNA methylated. This will also be useful to scientists interested in rDNA regulation and also to those interested in how the environment affects the regulation of specific haplotypes.<br /> * Similar data is also generated for five additional mouse strains, although the analysis and interpretation of this data is not as extensive as for the C57BL/6J strain.<br /> * Evidence is shown that supports the hypothesis that rDNA copy number affects rDNA silencing in mammals, as previously observed in yeast.

      Weaknesses:<br /> * The manuscript follows up from previous work by the same group (Holland et al Science 2016 and Danson et al BMC Biology 2018). The work presented in this manuscript is clearly the most complete, but the conclusions from the analysis presented here are consistent with the conclusions from analyses from data already in previous papers and therefore the conceptual advances are - in relative terms - small. This does not undermine the importance of performing an extensive analysis of the mouse rDNA variants and making the new data and results public.<br /> * A lot of data is generated for five mouse strains in addition to C57BL/6J and rDNA variants and DNA methylation variant positions are also identified. However, the data from these strains is not as extensively analysed as for C57BL/6J. So, for example, there is no annotation of haplotypes, presumably because of the lack of nanopore sequencing data. A more detailed comparison of the variants found in these strains would be helpful to the reader.<br /> * The analysis of human data is mainly used to provide some evidence that rDNA alleles with different DNA methylation also exist in human. A single significant nucleotide variant is found with allele-dependent DNA methylation (site 7980). At this site the authors also report the correlation between copy number and DNA methylation of rDNA in human and that there is anti correlation between DNA methylation at this site and its relative abundance in rRNA - as found in mice. Although this observation is exciting, it is based on a single nucleotide variant and even for this variant I found the evidence weak.

      Overall, I consider that the most significant part of this paper is the generation of mouse rDNA haplotypes for the C47BL/6J mouse strain. This will be very useful to the scientific community interested in rDNA in mouse and in further testing the effect of environmental exposures on rDNA activity. Other than that, it strengthened previous reports that there are different rDNA alleles in mouse with different DNA methylation and that the environment affects these alleles differently (as reported in Holland et al). An additional interesting result - consistent with findings in other organisms - is that there is some evidence of correlation between epigenetic silencing and rDNA copy number in mammals. However, in my opinion, these latter results appear rather preliminary at this stage.

    1. Reviewer #1 (Public Review):

      The manuscript by Milighetti et al aims to infer interactions between TCRs and peptide-MHC complexes using structural information about the potential interaction partners. They use template matching algorithms to infer the TCR structure of receptors that were not previously crystallized. They develop a classifier for this task with and find a performance comparable to the state-of-the art sequence based methods for TCR-pMHC pairing. Overall, the idea behind the work is good but we are still limited by structural information for TCR-pMHC complexes to make such analysis work.

      Strengths:<br /> The question of TCR-pMHC pairing is important and of great interest. However with the currently available data we still don't have any generalizable model for this prediction task. Most of the methods are sequence based and given that TCR and pMHC molecules are proteins, it is natural that their function (binding) should depend on their tertiary structures. The authors included structural information to build a classifier for TCR-pMHC pairing. Given the limited number of available co-crystallized TCR-pMHC structures, they used algorithms for TCR structure predictions that leverage sequence homology and use template matching for structure prediction. This method enables them to look at a much larger pool TCRs, which is a strength of this analysis. They also did extensive benchmarking of their method against prior sequence-based approaches and also provided some biophysical insight into TCR-pMHC interactions.

      Weaknesses:<br /> The method uses homology based algorithm (template matching) to infer the 3D structure of (uncrystallized) TCRs. Template matching can work well very similar TCRs and especially it can infer reliable structures in the framework regions. However, as the authors have pointed out, the CDR3 region is the part of a TCR that is more closely in contact with the presented peptides. From the structure part of the problem, we know that even a single mutation can have a significant impact on function (binding) in CDR3. So I am a bit hesitant as how appropriate these template matching algorithms are when the main goal is to infer changes in CDR3. On the other hand, as the authors show, their structure based algorithm has a comparable performance to sequence-based algorithms. The sequences used for this analysis are the ones that were matched by homology to the (limited) receptors with available 3D structures, which implies that the training set is confined to classes of very similar TCRs. It is then somewhat expected that this classification algorithm primarily picks up common sequence features of TCRs with a given binding preference, i.e. we are back to a sequence-based classification model. In unsupervised part of the analysis, I was hoping to see some coarse grained structural features of TCRs to be informative for TCR-pMHC pairing. I think lack of this result is due to data limitations.

    1. Reviewer #1 (Public Review):

      TALPID3/KIAA0586 is an evolutionary conserved protein which plays a critical TALPID3/KIAA0586 role in ciliogenesis that have been shown to be essential for correct vertebrate development. In this study, the authors investigate the impact of TALPID3 mutation in developing gastrointestinal tract in chicken and humans and demonstrated that smooth muscle was mispatterned, and enteric nervous system (ENS) cells were mislocalized. Focusing on ENS, chicken grafting and conditional mouse experiments demonstrated that smooth muscle alteration could not be rescued by TALPID3 expression in ENS cells. Conversely, using reverse chicken grafting, the authors demonstrated that disruption of TALPID3 in the ENS is sufficient to conduct to smooth muscle and epithelium alteration. Moreover, they observed defective expression of extracellular matrix (ECM) components (CSS56 and COL9) in the mesenchyme of chick TALPID3 mutant suggesting that both smooth muscle and ECM alteration participated to ENS mispatterning.

      TALPID3 mutant gastrointestinal phenotype harbors close similarity to those observed in sonic hedgehog mutant mice, moreover TALPID3 has been shown to regulate the phosphorylation of GLI2 and GLI3 that act as transcriptional effectors to control downstream Hedgehog target genes. To evaluate misregulation of Hedgehog pathway in TALPID3 mutant, they authors investigate the expression of Patched receptor that bind Hedgehog ligands and observed in chicken and Humans reduced expression of PTCH, suggesting an inhibition of the Hedgehog signaling pathway.

      In summary, the authors showed that TALPID3 plays role in neuronal-mesenchymal-epithelial interactions necessary for normal gastrointestinal tract development in Vertebrates.

    1. Reviewer #1 (Public Review):

      In this manuscript, entitled All-optical electrophysiology in hiPSC-derived neurons with synthetic voltage sensors" the authors present an alternative method for expressing activity-dependent sensors for hiPSC-derived neurons to overcome the harmful effects of expressing genetically-encoded voltage dyes. They used a red-shifted synthetic voltage sensor - BeRST-1 to measure spontaneous and evoked spiking activity, with and without the optogenetic actuator, CheRiff to stimulate the neurons. The data recorded from the iPSC are with good signal to noise ratio and convincing but do not advance the field substantially as the paper applies an existing tool to iPSC, which is important, but describe neither a unique technological development nor a novel biological finding. As a methodological paper that introduces or develops new a method, I expected to see a thorough characterization of the technique and the advantages of using this technique with iPSC-derived neurons. For example:<br /> Is the dye sensitive enough to measure dendritic voltage changes? To differentiate pre and post-synaptic activity? What is the maximal action potentials frequency it can separate single action potentials?

    1. Reviewer #1 (Public Review):

      TTR, present in plasma and CSF, promotes axon regeneration. To try to understand this effect, the authors demonstrated that neurons cultured from TTR knockout mice have an increase in microtubule dynamics and decrease in microtubule acetylation as well as morphological shortcomings - all of which are restored by an HDAC6 inhibitor. These observations link the effects of TTR on axon regeneration to microtubules. The work is interesting, well done and provides novel information. However, the work is limited by the fact that there is no mechanistic information to understand how TRR elicits its effects on microtubule acetylation/dynamics and also by the fact that the restoration of the phenotype with HDAC6 inhibition is only on morphological parameters in culture. An in vivo regeneration model would have made this study stronger.

    1. Reviewer #1 (Public Review):

      The manuscript describes a series of behavioural economics experiments aiming to determine a value function for pain by giving participants the explicit choice to endure a series of electric shocks of varying intensity, for which they may receive a specified remuneration. The ambition is to establish a behavioural method for determining the value of pain and pain relief across the spectrum from low to high pain intensity. Theoretically, the research is informed by and aims to inform in turn, the Fear Avoidance Model of chronic pain. In its present form, the manuscript lacks the detailed methodological information needed for accessibility beyond a specialist audience.

      The authors conclude that the value of pain is curvilinear, however pain was not measured during the experiment, and pain ratings are not presented for the whole sample (N=90), leaving open the question of whether the pain intensity of the eight levels of electric shock, may also be curvilinear. If so, it appears possible that the relationship between pain intensity and value is strictly linear.

    1. Reviewer #1 (Public Review):

      The work by Williams et al. represents a significant effort to understand the lineages that emerge from the epiblast, which is the layer of cells that will give rise to the chick embryo, during the period from gastrulation through neurulation. Previously published work has addressed the question of when and where cells in the epiblast at the neural plate border become specified, but the authors strive to refine such data further and more precisely by using single-cell RNA-sequencing to characterize the signatures of these lineages in vivo. The authors focus on identifying cells that generate the placodes, neural crest, and neural tissues. Studying these populations of cells is well justified because of their relevance to human disease phenotypes particularly in the craniofacial complex, heart, gut, and malignancies more broadly. Another important contribution of the work is the descriptions of novel markers, which may ultimately result in identifying new genes associated with human disease.

      A strength is that the manuscript is concise, clear, and well-written. Additionally, the figures are nicely organized and easy to follow. The images of embryonic gene expression (both known markers and validation of novel genes) are excellent in terms of tissue quality and confocal microscopy, and they provide robust support for the conclusions. The strategies employed for single-cell RNA-seq analysis represent a technical advance, and the results generated by this study will be of broad interest to the community. The use Hybridization Chain Reaction (HCR) with multiplexed probes to validate the RNA-seq dataset adds significant depth to the analysis.

      A weakness is that the study is primarily descriptive with no experimental test of a hypothesis. For example, the work could benefit from some loss-of-function analyses for any of the novel genes identified. On this point, the authors have an excellent track record using high-throughput screening with chick embryos and morpholinos either in terms of characterizing gene regulatory networks (GRNs) or assaying for developmental phenotypes related to the neural crest. Moreover, work from the Bronner and Sauka-Spengler labs has previously contributed much in the way of our understanding of the GRNs that direct the delineation of the neural and non-neural lineages in the ectoderm. A discussion of how the current results fit into the larger framework of GRNs (both for known and novel genes) would provide a more complete context for the work. A schematic figure that maps these genes onto a GRN could be quite informative and clarifying.

      Nonetheless, the results are significant in that they advance our understanding of the spatial and temporal expression of genes that are associated with cell specification and lineage restriction during the embryonic time course from gastrulation to neurulation. The conclusions are further supported by a modified RNA velocity analysis that reconstructs the temporal sequence of transcriptional steps and resolves gene-specific transcriptional dynamics over time. Importantly, based on this analysis, the authors find that cells from the emerging neural plate border are more heterogeneous than previously believed and they do not see the emergence of neural crest cells as a distinct lineage until later than what has been suggested by other studies.

    1. Reviewer #1 (Public Review):

      Bera et al. study the response of vegetation in water-limited ecosystems to changes in the precipitation regime. Previous studies have shown that spatial processes, in particular the redistribution of (soil and surface) water, may play an important role in mediating the ecosystem response. An important consequence of this redistribution is the spatial self-organization of vegetation into regular spatial patterns, consisting of vegetation patches that act as sinks for (surface) water, and surrounding areas of bare soil that act as water sources. At the ecosystem level, the additional water input in vegetation patches may enable vegetation to persist at precipitation levels that are too low to sustain a spatially uniform cover.

      While most model studies of spatial self-organization and pattern formation describe vegetation dynamics through 1-2 biomass variables, the current study extends this previous work by considering a trait diversity gradient, considering a large number (N=128) of discrete trait classes that range from stress-tolerant to fast-growing characteristics. The results show that in the absence of spatial pattern formation, a decrease in precipitation leads to a shift in the biomass distribution toward the more stress-tolerant trait classes. At the onset of pattern formation, however, soil water availability increases at the locations where vegetation patches form, enabling the more fast-growing trait classes to increase in biomass, and this shift is accompanied by an increase in functional diversity of trait classes as well. It is also shown that once these patterned ecosystem states are formed, the main adaptation to further decreases in precipitation occurs either through shrinking the size of existing patches, or by reducing the number of patches; in contrast, biomass and community composition of the patches remains relatively stable. Finally, it is shown that for certain precipitation conditions, functional diversity is maximized when the ecosystem is in a hybrid state, where part of the landscape has a spatially uniform vegetation cover, and part of the landscape is in a patterned state.

      A potential strength of this paper is that the community assembly and biodiversity perspective on spatial self-organization may highlight the relevance of pattern formation in ecosystems more clearly to a broad audience. The formulation of a trait/strategy gradient of discrete classes is certainly an interesting suggestion to connect the typical single/few biomass variable(s) approach to a community-level approach. The community assembly process is modelled in a very specific way, and the manuscript would benefit from an expanded ecological motivation of the processes that are being mimicked, and thereby explain more clearly what taxonomic level of organization is being considered. In addition, it would be useful if the authors could provide further clarification as to what extent the community diversity dynamics can be separated from total biomass dynamics of patterned water-limited ecosystems given the current approach. These points are explained in further detail below.

      • First, it was not entirely clear to this reviewer how the reaction parts of the model equations determine the optimal trait value χ, and how this value varies as a function of precipitation. Assuming a single trait class, and plotting the relevant equilibrium values of the three state variables shed some light on this issue. [Unfortunately, there does not seem to be a possibility to attach the figure with these plots to this review report]. Assuming the non-spatial equilibrium solution was derived correctly , the optimum biomass (B) value shifts across the trait spectrum with changing precipitation (in the non-spatial model version, solving the surface water equation for equilibrium will always yield that all precipitation infiltrates, i.e. regardless of the values of surface water, H, and χ). The equilibrium of soil water availability (W), which is the growth limiting resource of the vegetation, shows an inverse pattern with biomass. This result is in line with a classical results (e.g. Tilman 1982), in that the most successful strategy is the one that is able to reduce the limiting resource to the lowest equilibrium value. With all trait classes competing for the soil water resource, however, it is then not immediately clear why the most successful trait class is not outcompeting the other classes. This leads to a second point, about the way in which community trait adaptation is modelled.

      • The authors model trait adaptation through a diffusion approximation between trait classes. That is, every timestep, a small amount of biomass flows from the class with higher biomass to the neighboring trait class with lower biomass. From an ecological point of view, it seems that this process is describing adaptation of vegetation that is already present, so this process seems to be limited to intraspecific phenotypic plasticity. From the text, however, it seems that the trait classes correspond to higher taxonomic levels of organization, when describing shifts from fast growing to stress-tolerant species, for example. It is not entirely clear, however, how biomass flows as assumed in the model could occur at these higher levels of organization.

      • Combining the observations from the previous two points, there is a concern that for a given level of precipitation, there is a single trait class with optimal biomass/lowest soil water level that is dominant, with the neighboring trait classes being sustained by the diffusion of biomass from the optimal class to neighboring inferior classes. This would seem a bit problematic, as it would mean that most classes are not a true fit for the environment, and only persist due to the continuous inflow of biomass. Taking a clue from the previous papers of the authors, it seems this may not be the case, though. Specifically, in the paper by Nathan et al. (2016) it seems that all trait classes are started at low initial biomass density, and the resulting steady state (in the absence of biomass flows between classes) seems to show similar biomass profiles as shown in Figs. 4,5 and 7 of the current paper. While the current model formulation seems slightly different, similar results may apply here. Indeed, keeping all trait classes at non-zero (but low) density, and when the (abiotic and biotic) environment permits, let each class increase in biomass seems like the most straightforward approach to model community assembly dynamics. Given the above discussion about these trait classes competing for a single resource (soil water), and one trait class being able to drive this resource availability to the lowest level, it would then be useful to readers to explain why multiple trait classes can coexist here, and how (for spatial uniform solutions) the equilibrium soil water level with multiple trait classes present compares to the equilibrium soil water level when only the optimal trait class is present. Furthermore, if results as presented in Nathan et al. (2016) indeed hold in the current case, perhaps it means that the biomass profile responses as shown in e.g. Fig. 5 would also occur if there was no biomass flow between trait classes included, but that the time needed to adjust the profile would take much longer as compared to when the drift term/second trait derivative is included. In summary, further clarification of what the biomass flows between classes represent, and the role it plays in driving the presented results would be useful for readers.

      • In addition, it would be useful for readers to understand to what extent the shifts in average trait values and functional diversity can be decoupled from the biomass and soil water responses to changes in precipitation that would occur in a model with only a single biomass variable. For example, early studies on self-organization in semi-arid ecosystems already showed that the shift toward a patterned state involved the formation of patches with higher biomass, and higher soil water availability, as compared to the preceding spatially uniform state, and that the biomass in these patches remains relatively stable under decreasing rainfall, while their geometry changes (e.g. Rietkerk et al. 2002). It has also been observed that for a given environmental condition, biomass in vegetation patches tends to increase with pattern wavelength (e.g. Bastiaansen and Doelman 2018; Bastiaansen et al. 2018). Given the model formulation, one wonders whether higher biomass in the single variable model is not automatically corresponding to higher abundance of faster growing species and a higher functional diversity (as the diffusion of biomass can cover a broader range when starting from higher mass in the optimal trait class). There are some indications in the current work that the linkage is more complicated, for example, the biomass peak in Fig. 7c is lower, but also broader as compared to the distribution of Fig. 7b, but it is currently not entirely clear how this result can be explained (for example, it might be the case that in the spatially patterned states, the biomass profiles also vary in space).

      • The possibility of hybrid states, where part of the landscape is in a spatially uniform state, while the other part of the landscape is in a patterned state, is quite interesting. To better understand how such states could be leveraged in management strategies, it would be useful if a bit more information could be provided on how these hybrid states emerge, and whether one can anticipate whether a perturbation will grow until a fully patterned state, or whether the expansion will halt at some point, yielding the hybrid state. It seems that being able to distinguish these case would be necessary in the design of planning and management strategies. Also, in Fig. 3a, the region of parameter space in which hybrid states occur is not very large; it is not entirely clear whether the full range of hybrid states is left out here for visual considerations, or whether these states only occur within this narrow range in the vicinity of the Turing instability point.

      References:

      Bastiaansen R, Doelman A. 2018. The dynamics of disappearing pulses in a singularly perturbed reaction-diffusion system with parameters that vary in time and space. Physica D 388: 45-72.

      Bastiaansen R, Jaïbi O, Deblauwe V, Eppinga MB, Siteur K, Siero E, Mermoz S, Bouvet A, Doelman A, Rietkerk M. 2018. Multistability of model and real dryland ecosystems through spatial self-organization. Proceedings of the National Academy of Sciences USA 115:11256-11261.

      Nathan J, Osem Y, Shachak M, Meron E. 2016. Linking functional diversity to resource availability and disturbance: a mechanistic approach for water limited plant communities. Journal of Ecology 104: 419-429.

      Rietkerk M, Boerlijst MC, van Langevelde F, HilleRisLambers R, van de Koppel J, Kumar L, Prins HHT, De Roos AM. 2002. Self-organization of vegetation in arid ecosystems. American Naturalist 160: 524-530.

      Tilman D. 1982. Resource competition and community structure. Princeton University Press, Princeton, NJ, USA.

    1. Reviewer #1 (Public Review):

      In this manuscript, the authors explore mechanisms involved in the predation of other bacteria by Myxococcus xanthus. The major findings are (1) M. xanthus cells depend on gliding motility to efficiently invade an E. coli prey colony. (2) E. coli prey cells are lysed in a contact-dependent manner. (3) When M. xanthus cells make prey contact, they sometimes pause and then kill the prey cell. (4) Using a genetic screen, two gene clusters (referred to as the kil gene clusters) are identified that encode proteins, some of which have homology to those of Tad pili. Some of the Kil proteins are important for pausing of cells and killing of prey. (5) One of the suggested Kil proteins assemble to form clusters upon prey contact; however, assembly of these clusters is independent of other Kil proteins On the basis of these findings the authors suggest that the Kil proteins assemble to form a Tad pilus system and are important for pausing and prey killing. Overall, this is an interesting manuscript; however, it remains unclear what the actual function of the identified Kil proteins are.

      Weaknesses include

      (1) The lack of genetic complementation experiments. Thus, it is unclear precisely which of the Kil proteins are important for predation.

      (2) The Kil proteins are encoded in two gene clusters. The evidence that these proteins make up a Tad pilus system is based on homology and that mutations in both clusters result in reduced predation. No evidence is presented that proteins encoded by these two clusters interact to form a Tad pilus machine.

      (3) The authors localize the Kil system using an NG-KilD fusion; however, there is no evidence that KilD, which is a FHA domain-containing protein, associates with the Tad pilus machinery. In fact, KilD makes clusters independently of all other Kil proteins tested suggesting that these clusters may not report on Kil assembly and activity. An equally plausible scenario is that Myxococcus/E. coli contacts result in activation of KilD leading to the formation of foci. These foci then signal assembly of the Kil system somewhere in a cell (or maybe not). Therefore, it is not clear where and if this machinery localizes during prey contact.

      (4) I did not find a description of how the mutagenesis was done. Please include a description of how the mutagenesis was done, how many mutants were screened, and in which loci the mutations (transposon insertions?) occurred. Was the screen saturated?

      (5) Throughout the manuscript, the authors need to tone down their conclusions and stick to what they actually show. It is also important that the authors present their results in the context of what is already known about contact-dependent killing in M. xanthus.

    1. Reviewer #1 (Public Review):

      Why can silencers be enhancers in other cell types? Why is it that active chromatin epigenetic marks or binding of a single transcription factor do not reliably predict active enhancers? These are thorny issues in genomics because they hinder our mechanistic understanding of gene transcription regulation.

      In this well-written submission the authors go beyond their previous publications using the same experimental system (White et al., 2013, 2016). They use MPRA for the CRX transcription factor (TF) in explanted mouse retinas to show that epigenetically indistinguishable sequences are classified more accurately as enhancers or silencers by the number and diversity of lineage-specific transcription factor binding motifs that they contain. They separate enhancers from silencers by enhancers' more diverse collection of TF motifs. This distinction is captured in a metric called sequence information content calculated from both TF motif count and diversity. This single metric is slightly worse at predicting strong enhancers over silencers than a model considering the PWMs for 8 TFs.

      Two issues require a response:<br /> 1. Whether the authors observe a bias in the linear arrangement of these TFs' motifs that might assist in distinguishing enhancers from silencers?

      2. p10 The choice of the 8 lineage-defining TFs was somewhat arbitrary because of the arbitrary nature of PWM significance thresholds. Please justify their choice and number, and comment on how well the model performs when this TF set is altered?

    1. Reviewer #1 (Public Review):

      Using molecular dynamic simulations, the authors first explored the impact of phosphorylation on the structure and dynamics of G12D-Ras, a protein of great interest due to its involvement in various cancers. The results then motivated the authors to screen for small molecules that mimic the effect of phosphorylation, which perturbs the conformation of SwI and therefore the interaction with RAF. The prediction was then tested experimentally and shown to be correct. Therefore, the authors have established an approach that is potentially applicable to the modulation of other proteins for biomedical purposes.

    1. Reviewer #1 (Public Review):

      The manuscript by Xin et al. investigated the function of N6-methyladenosine (m6A) modification in the retina. They conditionally deleted Mettl3, which is the key enzyme depositing m6A on mRNAs, in the mouse retina from the beginning of retinogenesis, and studied the consequences of Mettl3 deletion-mediated m6A depletion. They found that Mettl3 deletion led to disorganization of the retina structure at postnatal day 14 (P14), and claimed that Muller glial dysfunction was underlying these morphological abnormalities. They then focused on investigating how Mettl3 deletion affected late retinogenesis after birth and claimed that Mettl3cko retinal progenitor cells (RPCs) withdrew from the cell cycle slower than control RPCs. As a result, there was an increased number of Muller glial cells at P7. They then performed single cell RNA seq and MeRIP-seq to uncover the underlying molecular mechanisms. They claimed that Mettl3-mediated m6A modification promotes the degradation of RPC-related mRNAs, facilitates termination of retinogenesis and fine-tuning the transcriptomic transition from RPCs to Muller glial cells.

      The authors performed a significant amount of analyses. But they didn't integrate and explain their data clearly enough for readers to follow. The logic behind the study is not strong. The lack of rigor, data inconsistency and confusing explanations further reduced the weight for this work.

      Major concerns:

      1. The authors showed disrupted retina structure in Mettl3cko and claimed that dysfunction of Muller glial cells was the underlying cause. However, based on the data presented in the manuscript, it is not clear whether retinal structure abnormalities are direct effects of Muller glial defects or secondary effects induced by defects in RPCs or other cell types.

      2. The authors claimed that m6A is important for RPC to Muller glial transition but didn't clearly state whether m6A regulates gliogenesis, which can be easily assessed by quantifying the number of Muller glial cells. The authors showed that the number of Muller glial cells was increased in mettl3cko at P7 based on Sox9 staining, but the number of Muller glial cells in single cell RNA-seq data stayed unchanged between Mettl3cko and controls. In addition, the number of Muller glial cells in adult retinas (for example, at P14) was not examined. Based on images in Fig 1E, the number of Muller glial cells seemed to be slightly decreased compared to controls. Moreover, in line 130, the authors mentioned that Mettl3cko retinas resembled those with loss of Muller glia in the literature. These discrepancies need to be addressed.

      3. The authors showed that there was an increased number of RPCs in Mettl3cko at late stages of retinal development compared to controls. However, some of the data do not seem to be consistent with published literature and their own supplementary data. Specifically, at P7, based on their single cell RNA-seq data, 6% of retinal cells were RPCs in control retinas, and 11% of retinal cells were RPCs in Mettl3cko (Fig 3-figure supplement 2). However, the number seems to be very high for control P7 retinas. In published single cell datasets (Clark et al. 2019), the percentage of retinal cells identified as RPCs was close to 0 at around P7. In addition, in Figure 3-Figure supplement 3, the authors stained P7 Mettl3cko and control retinas with Ki67. There was a very limited number of Ki67+ cells in Mettl3cko, which doesn't quite match the 11% found in single cell RNA-seq data.

      4. The stage of the retina was not consistent across experiments. The single cell RNA-seq experiment was performed using P7 retinas, whereas MeRIP-seq used P6 retinas. Twenty-four hours could make a big difference in terms of transcription at this stage.

      5. Many claims in the manuscript are not fully supported by the data. For example, the authors over-expressed candidate m6A-regulated genes in RPCs and showed that they prevented the RPCs from exiting the cell cycle. However, the data presented in Fig 6 cannot fully support this conclusion. PCNA is not a pan cell cycle marker. Reduction of GFP+PCNA- cells in Mettl3cko doesn't necessarily mean that mutant cells failed to exit the cell cycle.

      6. Individual data points and N numbers were not shown in the bar graphs.

    1. Reviewer #1 (Public Review):

      Using available single-cell transcriptomic data, Wang et al., annotated thousands of long noncoding RNAs (lncRNAs) in human germ cells. From their lncRNA data set, the authors focused on one particular lncRNA, lnc1845 located in the genomic proximity to the LHX8 gene that encodes a transcription factor essential for ovarian follicle development. Applying a set of different genetic approaches, the authors report that lnc1845 regulates LHX8 transcript in cis by modulating chromatin modifications.<br /> The manuscript in its current form consists of three parts: (1) analyses of the available single-cell RNA seq data to identify and catalog lncRNAs expressed in human gonads; (2) dissection of the molecular mechanism of action of one of the lncRNAs named lnc1845 (3) identification of a transcription factor that regulates expression of many of the identified gonad-specific lncRNAs including lnc1845.

      Strengths of the study:<br /> - The study provides a useful and novel data set of lncRNAs expressed in human germ cells and can be a valuable resource for the community.<br /> - To dissect the regulatory molecular interplay between lnc1845 and its protein-coding neighbor LHX8, the authors applied high-end genome editing strategies using multiple complementary approaches to inactivate or overexpress lnc1845.

      Weaknesses:<br /> - In a current form, the three parts of the manuscript look like independent studies put together in one paper, with the last part being the least developed.<br /> - The data sets of the lnc1845 functional part sometimes lack consistency i.e. looking at one but not another mutant allele by given molecular approaches.

    1. Reviewer #1 (Public Review):

      In this study, the yeast haploid deletion library was screened for altered expression of a GFP reporter containing an array of rare Arg codons known to induce No-Go-Decay (NGD). Mutants lacking Slh1 or components of the RQT machinery (Hel2, Cue3, Rqt3) were found to decrease expression of this "CGA" reporter relative to an OPT reporter lacking the Arg codons, consistent with the prevailing view that increased collided ribosomes in these mutants will accelerate NGD. In contrast, mutants lacking Syh1, Smy2 (yeast orthologs of mammalian NGD factors GIGYF1/2) or Asc1 show elevated CGA/OPT ratios, indicating reduced NGD. Most, if not all of these factors were implicated previously in yeast NGD. After verifying the effects of the deletions of these genes, I believe by re-creating the deletions de novo, and examining reporter expression by flow cytometry and Northern analysis, they move on to examine double or triple mutants of some of these genes, as well as deletion of the CUE2 endonuclease implicated previously in NGD as a backup to the primary Xrn1-mediated pathway that comes into play when Slh1 is missing, using a different CGA-repeat reporter based on the HIS3 gene. These results support a role for Syh1 in NGD, and for Slh1 in reducing collided ribosomes in a manner that diminishes NGD. The most dramatic results involve a strong synthetic effect of deleting SYH1 together with either CUE2 or HEL2. This leads them to propose that Cue2/Hel2 and Syh1/Xrn1 represent two independent pathways for NGD, although they wish to conclude that Syh1 represents the major pathway in WT cells, and that Cue2 functions only when the ability of Slh1 to diminish collided ribosomes is overwhelmed. They go on to show that deleting MBF1 or EAP1 has no detectable effect on the NGD reporter, indicating that these yeast orthologs of EDF1 and (possibly) 4EHP, respectively, do not function in NGD in yeast in the manner observed for the corresponding mammalian factors. The next notable finding is that deletions of HEL2, SYH1, or both genes, which impair NGD, have no effect on a separate reporter (NONOPT), whose rapid turnover in WT cells is driven by a high level of non-optimal codons. Deletion of NOT5 strongly stabilizes the NONOPT promoter, as shown previously, but also stabilizes the CGA reporter to a degree comparable to deleting SYH1, providing the first evidence that Not5 contributes to NGD as well. Finally, they perform 80S and disome ribosome profiling on the two different reporters. In WT cells, they see a large accumulation of both monosomes and disomes at the CGA codons of the CGA reporter, and very low levels of either species downstream of the CGA block, and both monosomes and disomes are tightly packed and thus appear to be in collisions. In agreement with previous results, 80S monosomes escape the CGA block in cells lacking Hel2, and they see a loss of close-packing upstream of the block, from which they conclude that Hel2 helps to stabilize disomes and facilitate their removal from the stall site. On the NONOPT reporter they do not appear to observe a higher than average disome occupancy; however, they see an increased ratio of ribosomes with 21nt vs 28 nt footprints, indicating accumulation of ribosomes with empty A sites. Interestingly, they also observe a very high 21/28 nt ratio within the CGA repeats of the CGA reporter. From these results they conclude that ribosomes collided at a strong barrier to elongation (eg. CGA repeats) trigger both NGD and mRNA turnover elicited by nonoptimal codons (COMD), whereas COMD is triggered by slowly elongating ribosomes with empty A sites. The Not5 contribution to the turnover of the CGA reporter can be rationalized by the high-level of ribosomes with empty A sites that are arrested in the CGA array.

    1. Reviewer #1 (Public Review):

      Liauw et al. examine the conformational effects of positive and negative allosteric modulators (PAMs and NAMs) at mGluR2 GPCRs using FRET pairs in each of three distinct structural domains of the dimer. They show that modulators affect the conformation of all of the domains, albeit in distinct ways. Using single-molecule smFRET they show that the NAM MNI-137 blocks receptor function not by eliminating glutamate-dependent domain motions in general, but specifically by hindering transitions to the active state which traps receptors in intermediate pre-active states. These results shed new insight into the mechanism of class C GPCR allosteric modulators, and specifically MNI-137, highlighting the role of intermediate conformations that may be highly relevant for new therapeutic approaches to human health. Beyond GPCRs, this work will also be of broad interest to the study of allosteric modulation of proteins in general.

    1. Reviewer #1 (Public Review):

      Viola et. al. compared the electron transfer efficiency of two types of oxygenic far-red photosystem II (PSII) with the "conventional" PSII and analyzed how these far-red PSII use the limited energy from infrared photons to proceed photosynthesis. Oxygenic photosynthesis is an energy-intensive process, and a large headroom is also needed for preventing harmful back-reactions from occurring, which can produce singlet oxygen. This research investigated how the far-rad PSII managed to do their work with limited energy.

      The authors measured and compared the forward reactions of different kinds of PSII (Chl-a-PSII, Chl-d-PSII and Chl-f-PSII), including the flash-induced chlorophyll fluorescence decay and S-states turnover. These results led to a conclusion that the forward reaction quantum efficiency was not changed between "conventional" PSII and far-red PSII. However, the back-reactions of three types of PSII are different based on the measurements of the prompt fluorescence decay, delayed luminescence decay, and thermoluminescence band locations. The authors concluded that the two far-red PSII (Chl-d-PSII and Chl-f-PSII) have a different strategy for utilizing infrared light. Indeed, the authors showed that Chl-d-PSII containing cyanobacteria produced more singlet oxygen than other types, and this result was explained by the energy profile in the electron transfer chain.

      The major strength of this research is the authors made a direct comparison of different far-red PSII under the same conditions. It's exciting to have a side-by-side comparison between two types of far-red PSII. In addition, the authors also measured the singlet oxygen produced from all types of PSII which clearly showed the differences in the routes of recombination.

      However, there are some concerns:

      1. The flash-induced fluorescence decay, thermoluminescence, delayed luminescence and S-states turnovers of the Chl-d-PSII and Chl-f-PSII have been characterized before (ref 5, 26, 39), but from intact cells compared to isolated membranes in this study, and similar conclusions have been achieved. The authors mentioned four reasons (lines 115-120, see the manuscript for the authors' arguments "i." to "iv.") why it's important to use isolated membranes. However, in my opinion, these reasons are not sufficiently strengthened:<br /> i. The transmembrane potentials from cells can be collapsed by adding uncouplers;<br /> ii. The authors mentioned the quinone pool in the cells is uncontrollable, but the authors didn't actually measure or manipulate the quinone pool in the membrane (e.g., the ratio of QB/QB-/empty-pocket in the samples);<br /> iii. The phycobilisomes can be controlled by different conditions through state transitions;<br /> iv. The isolation of membranes may not remove membrane-related quenching mechanisms (e.g., PSII quenching in State II, spillover, etc.).

      In addition, the authors reached a conclusion that the Chl-f-PSII containing species should suffer from fluctuation light-induced membrane potential spikes, but don't actually measure this in physiologically relevant preparations. It will be more beneficial to use intact cells instead of an isolated membrane. I suggest the authors either restrict their conclusions to what the isolated membranes clearly show or make measurements in intact cells.

      2. The authors measured the fluorescence decays as part of the evidence to show the stability of S2QA-. I have several concerns about these measurements:<br /> i. In figure 2B, the WL C. thermalis (blue) trace has a unique decay phase with a lifetime of about 0.2s, which the authors denoted as S2QA- recombination. Could the author elaborate on how this phase was assigned to this state?<br /> ii. In figure S1 (the full version of 2B), all the fluorescence traces seem to rise at the end of the measurements. Could the authors check whether the measuring light intensity was actinic?<br /> iii. In figure S2, it seems to me that the fluorescence decay of Synechocystis + DCMU (Green open squares) was slower than the WL C. thermalis and is similar to the FRL C. thermalis in figure 2B. If the Synechocystis + DCMU is indeed similar to FR C. thermalis, would that be consistent with the authors' conclusions?<br /> iv. It's known that DCMU will alter the redox potential of QA/QA- in plants. Would it have similar effects to the PSII studied in this research? If so, it will be meaningful to include these effects in the energy diagram in fig 7.

      3. The authors didn't use WL C. thermalis for measuring oxygen evolution and the authors claimed that the PSII content in WL C. thermalis is too low. Is that a technical issue (e.g., cannot purify PSII enriched membranes) or a biological issue (i.e., white light condition produced less PSII)? In Fig S9C, the oxygen generated from WL C. thermalis is comparable to FR C. thermalis. Could the author explain how they reached the conclusion that PSII in WL C. thermalis was low? In addition, the author should also provide evidence showing that the samples of WL C. thermalis do not have significant PSII activity under far-red light.

      4. The authors used an indirect method, which used chemical trap histidine and oxygen consumption, for measuring the production of singlet oxygen from different types of PSII. I have several concerns about this approach.<br /> i. Why not use a probe that reacts directly with singlet oxygen probes like SOSG or EPR probes to unambiguously confirm the production of singlet oxygen? The difficulties of not using SOSG mentioned in Rehman et al (SI Ref#22) should be no longer problems when isolated membranes were used. The advantage would be a validation of the results and perhaps increased sensitivity.<br /> ii. In Rehman et al (SI Ref#22), wild-type Synechocystis cells showed significant production of singlet oxygen in the presence of DCMU and His (Figure 3A in SI Ref#22), however, the amount of singlet oxygen measured from the membranes in this study seemed to be less (Fig S10E). Could the authors provide some explanations?<br /> iii. Can the presented results distinguish the production of singlet oxygen from recombination or other sources (e.g., antenna, free chlorophyll)? Some key controls are needed to strengthen the authors' claims.<br /> iv. I could not fully understand the singlet oxygen production experiments with tris-washed samples. In my opinion, the Mn-cluster depleted PSII should have accelerated charge recombination (100 ms between the YZ/QA, vs ~ 5 sec between the S2/QA), which should lead to an increase in singlet oxygen production. Correct me if I'm wrong about this, but if my reasoning is correct then how do the authors explain the discrepancy?<br /> v. The y-axes in Figure S10 should either contain "delta" (Δµmol O2 ml-1) or use the measured absolute oxygen concentration. I'd suggest the latter, since the reaction is oxygen consuming, it's good to show that all the samples started with similar amounts of dissolved oxygen. Low O2 levels could decrease 1O2 production, though this would be more of an issue with cells than membranes.

    1. Reviewer #1 (Public Review):

      In this article, the authors investigated the role of sleep and brain oscillations in visual cortical plasticity in adult humans. The authors tested the effect of  2 hours of monocular deprivation (MD) on ocular dominance measured by binocular rivalry. In the main MDN session, MD was performed in the late evening, followed by 2 hours of sleep, during which EEG was measured. After the sleep session, ocular dominance was measured, which was followed by 4 hours of sleep, then ocular dominance was measured again in the morning. The results show that the effect of MD was preserved 6 hours after MD. The effect of MD correlated with sleep spindle and slow oscillation measures. The questions asked by the study are timely and findings are important in understanding the visual cortical plasticity in human adults, but I have some concerns regarding the experimental design, analysis, and interpretation of the results, which are listed below.

      - The authors investigated EEG activities in the central and occipital regions. The results of the relationship between slow oscillations / sleep spindles and deprivation index are very interesting. However, it appears that the activities were averaged across hemispheres in the occipital region. Previous studies (e.g. Lunghi et al., 2011; Binda et al., 2018) have demonstrated that MD is associated with up-scaling of the deprived eye and with down-scaling of the non-deprived eye (page 11). I wonder whether sleep slow oscillations and / or spindles are modulated locally in the deprived occipital region? To answer the first question raised by the authors (how MD affects subsequent sleep), wouldn't it be important to compare between deprived vs. non-deprived regions?

      - To answer the second question (how sleep contributes to consolidation of visual homeostatic plasticity), the authors compared the deprivation index between two sessions, the main MDN and a control MDM session. The experimental designs for these two sessions were quite different. For example, MD was conducted in the evening in MDN, whereas it was conducted in the morning in MDM. Since there may be circadian effects on plasticity (Frank, 2016), the comparisons between these sessions may not be sufficient in investigating the effect of sleep itself (it could be merely due to circadian effect).

      - The authors argue that NREM sleep consolidates the effect of MD. However, consolidation may last days to months or even years (Dudai et al., 2015).  Since the effect is gone in 6 hours or so, it may be difficult to interpret it as consolidation. Although the findings of the effects of sleep on ocular dominance plasticity are interesting, the interpretations of the results may need to be clarified or revised.

    1. Reviewer #1 (Public Review):

      The role of the parietal (PPC), the retrospenial (RSP) and the the visual cortex (S1) was assessed in three tasks corresponding a simple visual discrimination task, a working-memory task and a two-armed bandit task all based on the same sensory-motor requirements within a virtual reality framework. A differential involvement of these areas was reported in these tasks based on the effect of optogenetic manipulations. Photoinhibition of PPC and RSP was more detrimental than photoinhibition of S1 and more drastic effects were observed in presumably more complex tasks (i.e. working-memory and bandit task). If mice were trained with these more complex tasks prior to training in the simple discrimination task, then the same manipulations produced large deficits suggesting that switching from one task to the other was more challenging, resulting in the involvement of possibly larger neural circuits, especially at the cortical level. Calcium imaging also supported this view with differential signaling in these cortical areas depending on the task considered and the order to which they were presented to the animals. Overall the study is interesting and the fact that all tasks were assessed relying on the same sensory-motor requirements is a plus, but the theoretical foundations of the study seems a bit loose, opening the way to alternate ways of interpreting the data than "training history".

      1) Theoretical framework:<br /> The three tasks used by the authors should be better described at the theoretical level. While the simple task can indeed be considered a visual discrimination task, the other two tasks operationally correspond to a working-memory task (i.e. delay condition which is indeed typically assessed in a Y- or a T-maze in rodent) or a two-armed bandit task (i.e. the switching task), respectively. So these three tasks are qualitatively different, are therefore reliant on at least partially dissociable neural circuits and this should be clearly analyzed to explain the rationale of the focus on the three cortical regions of interest. For the working-memory task we do not know the duration of the delay but this really is critical information; per definition, performance in such a task is delay-dependent, this is not explored in the paper.

      Also, the authors heavily rely on "decision-making" but I am genuinely wondering if this is at all needed to account for the behavior exhibited by mice in these tasks (it would be more accurate for the bandit task) as with the perspective developed by the authors, any task implies a "decision-making" component, so that alone is not very informative on the nature of the cognitive operations that mice must compute to solve the tasks. I think a more accurate terminology in line with the specific task considered should be employed to clarify this.

      The "switching"/bandit task is particularly interesting. But because the authors only consider trials with highest accuracy, I think they are missing a critical component of this task which is the balance between exploiting current knowledge and the necessity to explore alternate options when the former strategy is no longer effective. So trials with poor performance are thus providing an essential feedback which is a major drive to support exploratory actions and a critical asset of the bandit task. There is an ample literature documenting how these tasks assess the exploration/exploitation trade-off.

      2) Training history vs learning sets vs behavioral flexibility:<br /> The authors consider "training history" as the unique angle to interpret the data. Because the experimental setup is the same throughout all experiments, I am wondering if animals are just simply provided with a cognitive challenge assessing behavioral flexibility given that they must identify the new rule while restraining from responding using previously established strategies. According to this view, it may be expected for cortical lesions to be more detrimental because multiple cognitive processes are now at play.

      It is also possible that animals form learning sets during successive learning episodes which may interfere with or facilitate subsequent learning. Little information is provided regarding learning dynamics in each task (e.g. trials to criterion depending on the number of tasks already presented) to have a clear view on that.

      3) Calcium imaging data versus interventions:<br /> The value of the calcium imaging data is not entirely clear. Does this approach bring a new point to consider to interpret or conclude on behavioral data or is it to be considered convergent with the optogenetic interventions? Very specific portions of behavioral data are considered for these analyses (e.g. only highly successful trials for the switching/bandit task) and one may wonder if considering larger or different samples would bring similar insights. The whole take on noise correlation is difficult to apprehend because of the same possible interpretation issue, does this really reflect training history, or that a new rule now must be implemented or something else? I don't really get how this correlative approach can help to address this issue.

    1. Reviewer #1 (Public Review):

      In directed microbial evolution, separate populations of microbes are evolved in the laboratory and evaluated for their ability to exhibit one or more desirable properties. High-performing populations are then selected and subdivided into new populations, which are allowed to further evolve. This process is generally costly in both time and laboratory expenses, making it difficult to optimize the process, such as the type of selection that is employed. In contrast, evolutionary computation is a type of optimization where solutions to computational problems are evolved in silico, through imperfect reproduction of selected individual candidate solutions over multiple generations. Because evolutionary computation is much cheaper and faster that microbial evolution, there has been considerable research studying how different types of selection impact the evolutionary process. The goal of the current study is to see if selection mechanisms that have been shown to perform well in evolutionary computation experiments may also improve directed microbial evolution.

      To date, microbial evolution experiments have used forms of truncation selection, where one or more of the "best" performing populations are selected for subdivision and further evolution. However, truncation selection, where some percent of the best performing individuals are selected, is known to result in rapid loss of diversity and poor performance in evolutionary computation. In this paper, the authors compare various types of individual selection methods from evolutionary computation to simulations of multi-objective microbial selection at the population level, where 22 distinct binary (pass/fail) objectives are evaluated and contribute to the fitness of a population in various ways. Specifically, they compare 5 selection methods: (1) elitism (where only the best population is selected); (2) truncation selection (where the top 10% of populations are selected); (3) tournament selection (in each of multiple tournaments, the best population of 4 random populations is selected); (4) lexicase multi-objective selection (where each of the objectives is evaluated sequentially, in a randomized order, and only those populations that can solve the current objective are retained and evaluated on the next objective); and (5) non-dominated multi-objective elitism (where any population that is not Pareto dominated by another population is selected). The first two of these are the methods commonly employed in directed microbial evolution, and the last three are simple versions of selection methods known to perform well in evolutionary computation. For controls, they also compare to random population selection and no selection (where all populations are retained).

      The authors clearly explain the methods for simulating microbial evolution, how population fitness and diversity are evaluated, how the various forms of selection are implemented, and how results are compared through rigorous and appropriate statistical methods. The results are clearly displayed in informative graphs, which are also textually described to help the reader understand what the graphs are showing.

      The results convincingly show that the multi-objective selection methods, in particular lexicase selection, out-perform the other selection and control methods tested in simulated directed microbial evolution of populations evolved to successfully perform multiple objectives. Although these results are not particularly surprising, they are an important demonstration that multi-objective selection mechanisms known to perform well in selecting individuals in evolutionary computation also work well when used to select populations of individuals in simulated microbial evolution, and may thus be strong candidates for helping to optimize evolutionary processes in real directed microbial evolution.

      The authors candidly acknowledge limitations of the current study and describe future research that will address these limitations (e.g., using more sophisticated versions of the selection mechanisms tried here, and ultimately transferring successful methods to laboratory experiments of directed microbial evolution).

      The paper is well-written and well-organized, including sufficient details for the reader to conceptually understand what was done, while including additional nitty-gritty details needed for reproducibility in the supplement and in open-source code.

      This paper will be of interest to researchers working in directed microbial evolution as well as those in evolutionary computation. The authors compare various selection methods from the field of evolutionary computation to simulations of directed microbial population-level evolution. They convincingly demonstrate that multi-objective population-level selection outperforms the truncation selection of populations that is currently the norm in directed microbial evolution.

    1. Reviewer #1 (Public Review): 

      The authors in this manuscript probe the mechanism of postsynaptic retinoic acid (RA) signaling on presynaptic function. Previous work has established that 1) Inhibition of postsynaptic activity leads to postsynaptic BDNF synthesis and retrograde signaling through presynaptic trk receptors that enhances presynaptic function and 2) Postsynaptic inhibition also leads to postsynaptic RA signaling and presynaptic changes. Here, the authors connect these two observations. First, they show that RA's presynaptic impacts are induced through postsynaptic RA activity. Second, they present compelling evidence that the RA receptor RARalpha binds to dendritically localized isoforms of BDNF mRNA and likely regulates its translation. Finally, the authors demonstrate that RA modulates presynaptic function through postsynaptic BDNF and presynaptic TrkB, consistent with a model in which RA responds to reduced Ca2+ in postsynaptic compartments to increase BDNF synthesis and induce presynaptic plasticity. 

      Overall these findings fill a gap in our knowledge regarding how presynaptic function is adaptively modulated following postsynaptic inhibition and the connection between RA and BDNF in this process. This provides an important foundation to understand the signaling systems that orchestrate pre- and post-synaptic responses to synaptic inactivity.

    1. Reviewer #1 (Public Review):

      The authors performed simultaneous extracellular recordings in brain regions (CA1, prefrontal cortex (PFC), olfactory bulb (OB)) that are key to odor-guided decision making to delineate the oscillatory and cell population dynamics that guide decision making based on learned associations. They used complementary analyses to assess the coordination between CA1 and medial PFC (mPFC), using coherence and phase-locking analysis as well as generalized linear models and Bayesian decoding methods.

      One of the strengths of this work is the comparison of beta and respiratory (RR) LFP coherence in several behavioral states to rule out confounds due to sniffing or preparatory motor behavior (e.g., coherence was assessed during decision making with and without an odor present, during reward consumption). These controls allowed the authors to identify a specific enhancement of beta compared to RR coherence during decision making.

      The analyses of task-responsive putative interneuron and pyramidal cells suggest that accurate decision-making is associated with a stronger modulation of beta phase-locking in interneurons. Additional cross-correlation analyses between cell types across regions showed that cells, particularly interneurons, are temporally coordinated in the beta range. Their analyses did not identify a mechanism for this coordination, but the temporal lags between PFC and CA1 cells raise the possibility of top-down interactions mediated by a third brain region.

      The authors used the cellular activity to determine that the animal's upcoming behavior could be predicted from the ensemble activity during decision-making a few hundred milliseconds before the behavioral choice, but decoding accuracy diminished soon after the decision-making period. Interestingly, decoding accuracy increased after decision-making when using the spatially active cell ensembles. As indicated by the authors, these results suggest that different cell ensembles are engaged during decision-making and during the execution of the decision. It is possible that this change in ensemble dynamics before and after decision-making relates to the familiarity of the animals with the task, which makes it likely to involve procedural components (e.g., Jog et al., 1999). As pointed out by the authors in the discussion, several results have implications for the formation of associative memories and provide clues for future experiments. Thus, future work looking at the ensemble dynamics and at the occurrence of CA1 ripples in the early stages of task learning compared to when the animals are very familiar with the task (as in the current study), will provide a better understanding of the shifts that develop during the formation and consolidation of the association.

      One of the considerations in interpreting the results is that the odor sampling and decision-making periods overlap, making it difficult to disentangle the neural dynamics that are driven by the recall of the association (cued retrieval) and those that relate to the upcoming turning behavior after odor port disengagement. However, the author's analyses of odor and choice selectivity in correct and incorrect trials demonstrate a preferential association between spike activity and choice selection in this task.

      Overall, the results advance our understanding of odor-guided decision-making mechanisms in CA1 and PFC at the LFP and cell population level. This work will be of significance to further research on the cellular basis of memory-guided decision-making, and to future work characterizing the interactions between CA1 and PFC during learning.

    1. Reviewer #1 (Public Review):

      Houy and co-workers investigated the function of Munc13-1 and ubMunc13-2 in chromaffin cells and the interaction with phorbolesters (PMA). They combined calcium uncaging, capacitance measurements, amperometry, and activity dependent movements of the EGFP-labeled Munc13 proteins. The most exciting finding is that phorbolesters have a stimulatory effect via ubMunc13-2 but an inhibitory effect via Munc13-1.

      The effects of phorbolester on release were studied in mutants lacking either Munc13-1 or ubMunc13-2 and in cells over-expressing either Munc13-1 or ubMunc13-2. Both approaches consistently show that phorbolesters facilitate release only in the presence of ubMunc13-2 but inhibit release when Munc13-1 dominates. The data also indicate another interesting difference between both isoforms. Only ubMunc13-2 trafficked to the plasma membrane with a time course matching secretion after flash-evoked calcium increase. To investigate if Munc13-1 exerts its inhibitory function in the presence of phorbolester only by displacing the apparently more potent ubMunc13-2 or really has itself an inhibitory function, Munc13-1-EGFP was expression in cells lacking ubMunc13-2. The data indicated that for the initial phase of release (burst) the inhibitory function of Munc13-1 in the presence of phorbolester might be due to a displacement of ubMunc13-2, but for the sustained release Munc13-1 has an inhibitory effect in the presence of phorbolester. Finally, the interaction with Syt7 was investigated. The data indicate that only ubMunc13-2 can interact productively with Syt7. In the absence of Syt7, both ubMunc13-2 and Munc13-1 have a negative effect when interacting with phorbolester.

      Although it remains unclear how these findings relate to release of synaptic vesicles, the study provides important mechanistic differences between the two isoforms of this central priming protein. The manuscript is clearly written and the conclusions are justified.

    1. Reviewer #1 (Public Review):

      The authors explore the effects of spinal stimulation using subdural arrays in non-human primates (NHPs). The experiments are conducted in intact able-bodied NHPs first under anesthesia, and then awake and executing a voluntary 8 target center-out isometric motor task at the wrist. The data show that the stimulation effects in awake NHPs have directional tuning matching the task (enhance the task) and comprise both excitatory and inhibitory effects on muscles at appropriate intensities and sites. The data indicate that both types of pathways are recruited and contribute to the stimulation effects.

      The experiments focus on 2 NHPs. Stimulation effects are tested under sedation and then in the awake NHP during the voluntary task and the results are compared. The data are carefully explored using bootstrapping and circular statistics, and various analyses of variance.

      The conclusion that stimulation at appropriate levels can induce both excitatory and inhibitory effects to enhance voluntary motor responses is strong. The lowest currents could show suppressive effects on voluntary activity. The balance of these opposing effects is modulated by current intensity, with inhibitory effects swamped by excitation at higher stimulation intensity. The two are balanced in ways that facilitate voluntary activity over a range of intensity from 175uA to 1300uA. The relative strengths of the two effects are thus variable, with excitation often dominant, possibly for much of what might be clinically chosen intensities for many purposes.

      The relative roles of the inhibitory and excitatory effects in therapeutic regimes remain to be determined. Data provided are consistent with the gating of voluntary controls with both excitatory and inhibitory effects. In injured CNS the required levels of background controls by descending systems may be absent or oddly biased. However, the data support possible enhanced inhibitory control as well as excitatory in at least some conditions. The role of intensity in regulating the balance of these may also matter in the future in the design of therapies.

    1. Reviewer #1 (Public Review):

      The manuscript by Kanca et al. presents a variety of valuable resources for the use of the Drosophila research community. As an update to the ongoing work of the Drosophila Gene Disruption Project, it includes hundreds of new transgenic fly lines each of which simultaneously knocks out a targeted gene and generates a driver that expresses the Gal4 transcription factor specifically in the pattern of that gene. The "KozakGal4" approach described supplements previous approaches of the GDP, including the powerful "CRIMIC" method, which inserts a synthetic exon containing a T2AGal4 module into an intron of the targeted gene. In the KozakGal4 method, the coding sequence of the native gene is completely replaced by Gal4, which the authors point out will allow them to target genes lacking (suitable) introns. In the KozakGal4 method, gene replacement is accomplished by targeted excision of the native gene using CRISPR-based technology and subsequent incorporation of a Gal4-encoding cassette by homologous recombination. The vectors developed by the authors to effect gene replacement are elegantly optimized to include all components necessary for native gene excision and efficient recombination of Gal4. These components include the guide RNAS (sgRNAs) that cleave flanking regions of the native gene, an sgRNA that liberates the Gal4 cassette from the vector, and short synthetic homology arms that provide effective, site-specific recombination. Importantly, the vectors are designed so that all gene-specific components can be synthesized in a single fragment that can be readily incorporated into the vector backbone followed by insertion of the Gal4 cassette.

      Overall, the technical advances described in the manuscript are impressive and the utility of the method is well demonstrated. The one exception is in the validation of Gal4 expression fidelity. As the authors note, fidelity could be compromised if regulatory information is removed along with sequences in and around a targeted gene. In addition, the introduction of new DNA at a particular locus may alter the regulation of gene expression. In any case, establishing the fidelity of expression of KozakGal4 lines is important and the data presented on this point is both confusing and incomplete. Rather than directly comparing the expression of selected KozakGal4 lines against the expression of the endogenous gene (e.g. by immunostaining, in situ hybridization, or by comparing tissue-specific reporter expression against expression in microarray-derived datasets such as Fly Atlas or modEncode), the authors use two indirect methods to demonstrate fidelity. One method uses VNC scRNAseq data together with the expression patterns of T2AGal4 lines that target genes co-expressed (at least in certain cell types) with the KozakGal4 line, while the other method uses phenotypic rescue by driving UAS-cDNA transgenes. The demonstrations are at best suggestive, and the rescue results presented are minimal, with no description of phenotypes, methods used to assay them, or quantification of rescue. There is thus insufficient information to form a judgment about fidelity and a more direct demonstration is needed.

      The manuscript could be strengthened in a couple of other spots as well. There is little to no description in either the Introduction or Results/Discussion of similar knock-out/knock-in approaches, although gene-specific knock-ins of Gal4 have been generated in Drosophila using homologous recombination for some time-typically into the site of ATG start codons. CRISPR technology has only facilitated this approach, which has also been used to create gene-specific cre knock-ins in rodents. This is of potential interest since the authors mention that their approach can be generalized for use in other animals. A short overview of existing knock-in approaches and their limitations relative to KozakGal4 would therefore be useful. Also, the authors motivate the need for the KozakGal4 method by asserting that over 50% of Drosophila genes lack "suitable" coding introns for the integration of artificial T2AGal4 exons such as CRIMIC. This seems to unnecessarily overstate the actual need. The authors define a "suitable" gene as one that has an intron common to all its isoforms that is at least 100 nt long. The length requirement is justified based on the need for suitable sgRNA targets within the intron, but it's possible to use sgRNA targets outside the intron (as long as the homology domains replace this sequence). Also, the requirement of a sufficiently long intron common to all isoforms is quite stringent and could be relaxed if multiple T2AGal4 lines were made to target multiple isoforms. Presumably, multiple KozakGal4 lines will, in fact, also be required for genes that have multiple transcription start sites, if the expression patterns of all isoforms are to be reproduced. In general, there's no doubt about the utility of the KozakGal4 approach, but a more balanced presentation of its merits relative to other approaches seems warranted.

    1. Reviewer #1 (Public Review): 

      In this manuscript, Vides et al. performed a functional analysis of the Parkinson's disease-associated leucine-rich repeat kinase 2 (LRRK2). In particular, the authors sought to address how membrane recruitment of LRRK2 leads to an increase in its kinase activity. Briefly, the authors showed that LRRK2 utilizes two distinct binding sites (350-550 #1, 17/18 #2) for Rab GTPases within its N-terminal Armadillo domain to achieve membrane association. Intriguingly, these two sites differ substantially in their preference for binding phosphorylated (Rab8a, Rab10) and non-phosphorylated (Rab8a, Rab10, Rab29, Rab32, Rab39) substrates. In cells, a LRRK2 site #2 mutant showed a significantly reduced colocalization with phosphorylated Rab10. Using LRRK2 inhibitor washout experiments, the authors demonstrate that disrupting site #2 led to slower re-phosphorylation kinetics. Lastly, the authors employed an elegant in vitro system to demonstrate that LRRK2 membrane association and Rab phosphorylation are coupled in a feed-forward reaction. Overall, the work of Vides and colleagues provide compelling mechanistic insights into the spatial regulation of LRRK2. Nevertheless, a few critical points remain. 

      Major points: 

      1) Since LRRK2 is reported to form dimers and multimers, the authors should perform their colocalization studies (Figure 6) in cells lacking endogenous LRRK2. 

      2) To what extent does modification of K17 and/or K18 (e.g., acetylation or ubiquitylation) play a role in regulating LRRK2 pRab binding? 

      3) In their lipid bilayer-based in vitro assay, the authors should also examine the effect of an LRRK2 variant that lacks site #1.

    1. Reviewer #1 (Public Review): 

      Fox, Birman, and Gardner use a previously proposed convolutional neural network of the ventral visual pathway to test the behavioral and physiological impact of an attentional gain spotlight operating on the inputs to the network. They show that a gain modulation that matches the behavioral benefit of attentional cueing in a matching behavioral task, induces changes in the receptive fields (RFs) of the model units, which are consistent with previous neurophysiological reports: RF scaling, RF shift towards the attentional focus, and RF shrinkage around the focus of attention. Ingenious simulations then allow them to isolate the specific impact of these RF modulations in achieving performance improvements. The simulations show that RF scaling is primarily responsible for the improvement in performance in this computational model, whereas RF shift does not induce any significant change in decoding performance. This is significant because many previous studies have hypothesized a leading role of RF shifts in attentional selection. With their elegant approach, the authors show in this manuscript that this is questionable and argue that changes in the shape of RFs are epiphenomena of the truly relevant modulation, which is the multiplicative scaling of neural responses. 

      Strengths: 

      The use of a multi-layer network that accomplishes visual processing, with an approximate correspondence with the visual system, is a strength of this manuscript that allows it to address in a principled way the behavioral advantage contributed by various attentional neural modulations. 

      The simulations designed to isolate the contributions of the various RF modulations are very ingenious and convincingly demonstrate a superior role of gain modulation over RF shifts in improving detection performance in the model. 

      Weaknesses: 

      There is no mention of a possible specificity of the manuscript conclusions in relation to the type of task to be performed. It is conceivable that mechanisms that are not important for detection tasks are instead crucial for a reproduction task, as in Vo et al. (2017). 

      The manuscript puts emphasis on the biological plausibility of the model, and some quantitative agreements. But at some important points these comparisons do not appear very consistent: 

      1) It is unclear what output of the model at each cortical area is to be compared with neurophysiological data. On the one hand, the manuscript argues that a 1.25 attentional factor is consistent with single-neuron results, but here this factor is applied to the inputs into V1 units. When this modulation goes through normalization in area V1, the output of V1 has a 2x gain. Intuitively, one would think that recordings in V1 neurons would correspond to layer V1 outputs in the model, but this is not the approach taken in the manuscript. This needs clarification. Also, note that the 20-40% gain corresponds to high-order visual areas (V4 or MT), but not to V1, in the cited references. The quantitative correspondence between gain factors at various processing steps in the model and in the data is confusing and should be clearer. 

      2) The model assumes a gain modulation in the inputs to V1. This would correspond to an attentional gain modulation in LGN unit outputs. There is little evidence of such strong modulation of LGN activity by attention. Also in V1 attentional modulation is small. As stated in Discussion, there is no reason to favor the current model as opposed to a model where the attentional gain is imposed later on in the visual hierarchy (for example V4). If anything, neurophysiology would be more consistent with this last scenario, given the evidence for direct V4 gain control from frontal eye fields (Moore and Armstrong, Nature 2003). The rationale for focusing on a model that incorporates the attentional spotlight on the inputs to V1 should be disclosed. 

      3) The model chosen is the CORnet-z model, but this model does not include recurrent dynamics within each layer. Recurrent dynamics is a prominent feature in the cortex, and there is evidence indicating that attentional modulations operate differently in feedforward and in recurrent architectures (Compte and Wang, Cerebral Cortex 2006). A specific feature of recurrent models is that the attentional spotlight need not be a multiplicative factor (which is biologically complicated) but an additive term before the ReLU non-linearity, which achieves the expected RF modulations (Compte and Wang, 2006). A model with recurrence thus represents another architecture that links gain and shift in a way that has not been explored in this manuscript, and this may limit the generalization of the conclusions.

    1. Reviewer #1 (Public Review): 

      The authors set out to understand what influences variation in aminoglycoside resistance in bacterial populations using existing genome data. While current policies aim to reduce antimicrobial consumption, the authors show that ecology and human exchanges are actually better predictors than consumption at explaining this variation. 

      Strengths:

      This study uses a unique and ambitious comparative approach to understand the drivers of antibiotic resistance persistence within bacterial populations. We require comparative work of this kind to complement the current research focus on epidemiological modelling and smaller, more-focussed, experiments on the maintenance of antimicrobial resistance. 

      The authors have collated an impressive number of genomes and used robust data mining techniques to detect aminoglycoside resistance genes in genomes and assemble metadata. In addition, they have developed new approaches to investigate the genomic context of resistance. 

      While I am not an expert in this field, the statistical models, which control for spatial correlation, appear well considered and appropriate. 

      This work is comprehensive and goes beyond current approaches. The conclusion may be surprising to some researchers, and so will likely have an impact. While the results are correlational, they highlight that other factors will certainly contribute to the long-term maintenance of antimicrobial resistance in bacterial populations. We need future research efforts to investigate these factors in more depth, in order to reduce the antimicrobial resistance burden. 

      Weaknesses:

      The main weakness was the lack of consideration of biased sampling on the major conclusions of the study. 

      While the biases in the data are openly acknowledged in the results, and considered a limitation in the discussion, there was no serious attempt to understand how the bias may influence the model predictions. 

      At the very simplest, the first headline conclusion is that aminoglycoside-resistant bacteria are very common. But it is natural that the most research attention is given to bacteria that are 1) antimicrobial resistant threats in the first place and 2) sequenced specifically because they display phenotypic resistance. This will naturally bias sequenced genomes to have more resistance genes in the first place. 

      The major conclusion of the study is that ecology/habitat is a better predictor of the variation in antimicrobial resistance, than antimicrobial consumption (it is the title). It seems logical that research attention in different habitats will be focussed on different bacterial taxa. These will usually be on bacterial taxa that have the greatest impact in these habitats. For example, clinical samples from humans, cyanobacteria from the ocean, carbon and nitrogen fixers from the soil, etc. How much do these sampling biases, in different taxa from different habitats, influence ecology as an explanatory variable for resistance variation? 

      In addition, there may well be a good reason to predict that sampling bias may also influence the effect of human exchanges, as scientific collaborative endeavours will also mirror between-country trade and immigration. 

      Therefore, it seems difficult to understand how well these conclusions hold up given the analyses as they are currently presented. One might argue that the sheer weight of the dataset might make dependencies on sampling bias lower, but when you consider sample sizes in different habitats, they can be low, due to how data is submitted to public databases. For example, from hundreds of thousands of complete genomes, there are only hundreds of samples that are scored as from the soil. It is not unlikely that these only come from a handful of studies.

    1. Reviewer #1 (Public Review): 

      This study compares concentrations of immune mediators in vaginal samples of young women who report having had or report not having had vaginal sex. The study finds that the concentration of many immune markers is higher in samples of women who report having had sex than in samples of women who report not yet having had sex. While the results are interesting and suggestive, I do not believe this result necessarily indicates that vaginal sex increases levels of these immune mediators (a causal relationship) and that the evidence presented here is strong enough to draw this conclusion. 

      This study presents many methodological strengths. The sample size is amply sufficient to achieve high statistical power for this research question. A particular strength of this analysis is the relatively large number of participants who provided paired before and after sex samples. These samples are particularly valuable because stronger conclusions can be drawn from them, as their comparison is less likely to be confounded by unmeasured confounders. The statistical methods are largely appropriate for the research question, with the use of random effects to account for the correlation in multiple measures per participant. 

      The reason I would not draw causal conclusions from this analysis is that there is a high potential for unmeasured confounding of the association between sex and the concentration of immune mediators. The variables that were included in the multivariable analysis were for the most part not confounders, so the authors cannot claim that their results are free from potential confounding. Confounders are in general variables which are common causes of both the exposure of interest (vaginal sex) and the outcome (level of immune markers), and which are not on the causal pathway and are not a downstream effect of the outcome (inverse causality). The only variable included that is potential confounders is age. Most other variables (pregnancy, contraception, Nugent score, Chlamydia infection, and HSV-2 seropositivity) are either potential mediators of the effect of sex or downstream effects of the level of immune markers. It does not follow that adjustment for these variables would necessarily lead to an underestimation of the causal effect, as it is possible some of these variables have complex relationships with immune mediators, so it is difficult to predict how adjusting for these variables would influence results. Some of these variables are also potentially colliders, so adjustment for them may lead to bias (see an introduction to this topic in Holmberg MJ, Andersen LW. Collider Bias. JAMA. 2022;327(13):1282-1283. doi:10.1001/jama.2022.1820). There is no consideration of general social determinants of health that are more likely to be confounders because they potentially influence both sexual behavior and the immune system: socioeconomic status, ethnicity, education, employment, housing, food security, access to health care, etc. There is overwhelming evidence that young people who are sexually active tend to have very different socioeconomic characteristics than young people who are not sexually active. It is therefore difficult to assess whether the higher level of immune markers in women who are sexually active truly represents a causal effect of sex or simply reflect differences in the type of women who have sex. 

      The paired analysis also suggests that the main analysis is likely to be confounded. The evidence from the paired analysis is much stronger than the evidence from the unpaired main analysis because the paired analysis inherently adjusts for many unmeasured confounders that lead to women having sex by a certain age; the differences in paired samples are likely much closer to the causal effect of sex than the differences from the unpaired samples. We see that, in the paired analysis, the differences in levels of immune mediators before and after sex is systematically much smaller and non-significant for most immune markers. This suggests to me that the main analysis is confounded and overestimates the effect of sex on immune markers. If there is a causal effect, it is likely to be much smaller than the one estimated in the main unpaired analysis. 

      The authors argue that the smaller effects seen in the paired analysis might be due to an effect of time, where samples closer to the start of sex show smaller differences. However, I would need more evidence to be convinced of this. Notably, they use a spline analysis in Figure 4 to show the effect of time since vaginal sex. However, I would have liked to see the p-values for the time-dependent spline effect, in order to see whether the data supports that a difference in slopes before and after sex significantly improves the model. I suspect many of the splines are not significant and may not lend strong support to the hypothesis that time since sex has an effect. It is however difficult to assess this visually without a formal test. 

      While the results from the systematic review and meta-analysis are interesting and show that at least two other studies have shown similar results, I wonder whether these other studies do not have similar issues of confounding. The other previous studies have even fewer paired samples, so are likely to have weaker evidence than the current study. 

      In summary, I think this study has some important methodological strengths in terms of sampling and study design. However, I believe the interpretation of the results should be more tempered and cautious; while there are differences in levels of immune markers in women who have had and not had sex, there is not to my mind sufficient evidence that this difference is the result of a causal effect of initiation of vaginal sex, as there is likely to be some collider bias and unmeasured residual confounding in the analysis.

    1. Reviewer #1 (Public Review): 

      Overall, it is an interesting work exploring stochastic and deterministic aspects of embryonic cell division in plants. The power of the authors' approach lies in the quantitative analysis of 3D cell geometries combined with quantitative computer modelling. 

      I am a bit confused about how authors relate stochasticity as an emergent property of a deterministic process. Typically, stochasticity is the low-level process resulting in variation of subcellular components those also related to the positioning of the cell division plane. Perhaps a more elaborated and clearer connection between stochasticity at the subcellular level and phenotypic variability should be provided. I have a number of specific questions/concerns that I would like the authors to address as listed below: 

      1) Major variability of cell shapes is observed in the apical domain as opposed to the basal domain. What would be an underlying principle to asymmetric shaping of the apical-basal domain? The authors describe beautifully the observations but give relatively little discussion on this matter, leaving the reader guessing. 

      2) Authors used graph theory to explain variability in cell division for the same topological feature. In light of quite a discrepancy between predictions and observations (i.e., Figure 4C) question arises of how this prediction could be affected by undergoing cell expansions as this element I believe is neglected in their graph theory approach? 

      3) Tetrahedron shape repeats in only 4% of embryos at the 16-cell stage. What could be the criticality of this shape for the entire embryo patterning? 

      4) It is not clear to me whether stochastic cell division modelling takes into account the mechanical influence of adjacent cells? In any case, authors should discuss how this could potentially affect their analysis. 

      5) Authors should perform model parameter sensitivity analysis (i.e., position of surfaces) to confirm the convergence and robustness of their approach.

    1. Reviewer #1 (Public Review):

      By using the Janelia hemibrain dataset, the authors assess the synaptic connectivity of Drosophila's lateral clock neurons in unprecedented detail. As suspected by previous studies, they show remarkable heterogeneity in the connections made by specific subsets of clock neurons. For example, they provide the anatomical basis for previously predicted subsets of clock neurons within evening (E) neurons that are coupled to morning (M) neurons to varying degrees. Of these E neurons, the E2 subgroup is characterized by a particularly strong connection with other clock neurons, suggesting that it acts as a synaptic hub in the clock. In contrast to E neurons, M neurons, which are thought to be the most important clock neurons in the fruit fly circadian clock, have surprisingly few synaptic connections inside and outside the clock network. Instead, they are mainly mutually connected with each other. Furthermore, the few downstream neurons of the M neurons all signal back onto identified clock neurons. The authors hypothesize that these neurons, which are not involved in the clock, may be important for stabilizing the signals of the clock network and thus are an integral part of the network. This hypothesis reminds us of central pattern generators and can be tested in the future. In summary, this well-conducted study provides important new insights into the organization of clock networks that could be of general value.

      Strengths:<br /> The study is carefully performed, the methods are described in detail, the results are excellently documented, and all conclusions are justified by the data. In addition, it provides new hypotheses about clock function that can be tested in the future.

      Weakness:<br /> As true for many anatomical studies, the paper is not easy to read. One reason for the difficult comprehensibility is the use of many abbreviations, another reason is complicated and partly redundant descriptions.

    1. Reviewer #1 (Public Review):

      With a real interest, I read the manuscript entitled "Sex-specific effects of an IgE polymorphism on immunity susceptibility to infection and reproduction in a wild rodent", written by Wanelik and colleagues. Actually, I am impressed with each and every part of this work. This study is very well designed and answers intriguing scientific questions. The study is multilayer and multidimensional and goes far beyond a genomic association as it deeply addresses, to mention only those most important, ecological, parasitological, immunological, and gene expression aspects. In addition to studying the free-living animal community of voles, it utilizes this opportunity to get some insights into the genetics and biology of the high-affinity IgE receptor not possible to be gained in studies performed in humans or standard laboratory animals. The data are presented in a very elegant way and the article is really nicely written.

    1. Reviewer #1 (Public Review):

      Kang et al. have performed whole exome sequencing of gall bladder carcinomas and associated metastases, including analysis of rapid autopsy specimens in selected cases. They have also attempted to delineate patterns of clonal and subclonal evolution across this cohort. In cases where BilIN was identified, the authors show that subclones within these precursor lesions can expand and diversify to populate the primary tumor and metastatic sites. They also demonstrate subclonal variation and branching evolution across metastatic sites within the same patient, with the suggestion that multiple subclonal populations may metastasize together to seed different sites. Lastly, they highlight ERBB2 amplification as a recurrent event observed in gall bladder carcinomas.

      While these data add to the literature and start to examine important questions related to clonal evolution in a relatively rare malignancy, the authors' findings are very descriptive and it is hard to draw many generalizable conclusions from their data. In addition, the presentation of their figures is somewhat confusing and difficult to interpret. For example, they do not separate their clonal analyses by disease site and by time in a readily interpretable manner, as in some instances of Figure 2 and Figure 3 the clone maps are from different sites collected at the same time point, while others show some samples at different time points. Depicting these hierarchies in a more organized and clearly understandable manner would help readers more easily interpret the authors' findings. In addition, the clinical implications of these clonal hierarchies and their heterogeneity are unclear, as the authors do not relate the observed evolution to intervening therapies and may not be powered to do so with this dataset.

      Additional areas that would require clarification include:<br /> 1. There are very few details on how the authors performed their subclone analysis to identify major subclones, and what each of the clusters in Supplemental Figure 1 represents. In addition, they do not describe how they determined that the highlighted mutations in Table 2 were drivers for metastasis and subclonal expansion. Were these the only genes that exhibited increased allele frequencies in metastatic sites, or were other statistical criteria used?

      2. The authors do not discuss the relevance of variation in mutational signatures observed with disease progression/metastasis, e.g., is there any significance that signature 22 (aristolochic acid) and signature 24 (aflatoxin) are increased in metastases? In addition, when comparing their data to previously published reports in Figure 1B and Figure 4A, it would be helpful if the authors discussed possible reasons for some of the large differences in mutational or signature frequencies across datasets. For example, do the authors think the frequency of ERBB2 alterations is so much higher in their cohort than in prior reports due to methodological/data reasons or due to differences in patient population?

      3. The authors try to describe and draw conclusions about the possibility of metastasis to metastasis spread in p.6, lines 6-10 "In our study, of 7 patients with 2 or more metastatic lesions, evidence of metastasis-to-metastasis spread was found in 2 patients (28.6%). In GB-A1 (Figure 2A), it appears that CBD, omentum 1-2, mesentery, and abdominal wall 2-4 lesions may originate from abdominal wall 1 (old) rather than from primary GBAC considering clone F." The authors conclude here that the spread arose from abdominal wall 1, but this lesion is only separated from the CBD lesion by 1 month. There is no history given about whether this timing difference is significant or if it was simply due to clinically-driven differences in when each lesion was sampled. Given the proximity of the CBD lesion to the original gall bladder cancer, it seems just as likely that all of these distant lesions were seeded from the CBD lesion. If this is the case, the author's conclusion about "metastasis to metastasis" spread does not seem strongly supported. It would be helpful if the authors could clarify this point and/or provide additional data to strengthen this conclusion.

    1. Reviewer #1 (Public Review):

      The authors identified a core community consisting of one bacterium species and one yeast species. The core community qualitatively captured properties of complex communities, such as population composition, metabolite profiles, and capability of pellicle formation, even in altered conditions. The work is interesting and provides useful guidance for future work.

      The authors selected 5 bacterial and 5 fungal species, and made 25 2-species communities. Strikingly, in most binary cocultures, bacteria and yeast coexisted. B2 (Komagataeibacter intermedius) combined with any of the five yeasts could form pellicles. The authors then focused on B2Y1 (Y1 = Brettanomyces bruxellensis, the most predominant yeast species in the native samples). The two species stably coexisted in both broth and pellicle, although at a steady state, bacteria dominated pellicles while yeast dominated the broth. Despite divergent initial ratios, chemical dynamics were remarkably consistent. Using monoculture fermentation, the authors deduced inter-species metabolic interactions: Y1 consumes sucrose, generating glucose (which is consumed by both yeast and bacteria) and fructose (which is consumed by yeast but not bacteria). Y1 also generates ethanol. Bacteria in the presence of glucose and ethanol or acetate forms pellicles. Although B2 alone cannot use ethanol, with glucose, ethanol is used and acetate is produced. When culturing the five yeast and the five bacterial species together, overall patterns are similar to the pattern of the core community, although differences do exist (in part due to high variability in yeast digesting sugars and in bacterial conversion of ethanol to acetate).

    1. Reviewer #1 (Public Review):

      In this study, Clement et al. investigated the functional, phenotypic, and transcriptomic profile of IL-10-producing CD4 T cells induced by chronic infection with murine cytomegalovirus (MCMV). Several published studies showed that viral persistence at various tissue sites was facilitated by IL-10 (Humphreys et al., 2007; Mandaric et al., 2012) and that CD4 T cells also represent an important source of IL-10 (Clement et al., 2016; Humphreys et al., 2007). The present study could be considered a follow-up of the early studies by the same authors showing the accumulation of IL-10+ CD4+ T cells in the salivary gland of mice after MCMV infection. Here they demonstrated clonal expansion of differentiated IL-10-producing CD4 TH1-like T cells that developed in a T-bet-dependent manner and coexpressed arginase-1 (Arg1). The expression of Arg1 also impaired the production of IFN gamma by CD4 T cells. In addition, mice lacking Arg1-expressing CD4 T cells exhibited more efficient virus control. Overall, coexpression of Arg1 in IL-10 producing CD4 T cells facilitates viral persistence in salivary glands.

    1. Reviewer #1 (Public Review):

      The work by Yang, Ning et al. investigates the antitumor activity of FDA-approved broad-spectrum antiretroviral agent Arbidol using esophageal squamous cell carcinoma (ESCC) cell lines and suggests a novel role for Arbidol in the treatment of cancer, an application previously unexplored for this compound. The authors found that Arbidol inhibits the proliferation of ESCC cells in both in vitro and in vivo models. Mechanistically, they use phospho-proteomic data to show that this growth inhibition is resultant from modulation of the MCM-ATR axis. They next conducted a computational docking study and found that Arbidol binds ATR at ASN 2346 and ASN 2361, and upon mutating these residues in ATR, binding of Arbidol to ATR was less efficient. They also show that ATR is involved in MCM2 S108 phosphorylation and that Arbidol induces growth arrest at the G1 phase in a dose-dependent manner in ESCC cell lines. The authors show that knockdown of ATR leads to reduced ESCC cell growth, and they use TCGA to show that ATR is expressed at higher levels in esophageal carcinoma patients as compared to healthy controls. Importantly, Arbidol inhibited ESCC patient-derived xenograft tumor growth in a PDX mouse model. These data add important information about the potential ability of Arbidol to inhibit ATR which has implications for the treatment of esophageal cancer, and many other tumor types. Overall, the experiments conducted are logical and well-controlled, however some aspects of experimental design and statistical analysis need to be expanded upon.

    1. Reviewer #1 (Public Review):

      The manuscript by Yildrim presents a method for labeling and tracking cells within organoids to enable the assessment of dynamic processes within the intact organoid. The authors use Third-harmonic generation (THG), an intrinsic signal which results from tripling the frequency of the excitation wavelength, and a modified three-photon microscope to identify and track cells within the 3D organization of cerebral organoids. Specifically, the authors focus on the ventricular zone in 35-day old organoids, when young DCX+ neurons are migrating into the cortical plate-like area of the organoid and show that THG can identify migrating cells. The authors then use a disorder model of Rett syndrome to validate the method and show that differences can be detected with their technique and, importantly, that the VZ volume is smaller and that radially migrating neurons have slower migration within RTT organoids.

      There are many strengths of the study including the use of multiple (two) isogenic pairs of control and RTT organoids, the critical comparison of the labeling method with standard markers, and the use of a relevant disease model to test the utility of the technique.

    1. Reviewer #1 (Public Review):

      Candilysin (CL) is a virulent factor in infections by the fungus Candida albicans.<br /> This manuscript aims to determine the mechanism(s) by which CL interacts with and permeabilizes the membranes of host cells.

      The strengths of this manuscript are that it uses a comprehensive biophysical toolkit to address this question, and it interest also lies in revealing a previously unknown mode of membrane permeabilization by toxins, in that CL is shown to oligomerize in solution and that these oligomers next define membrane permeabilisation.

      Apart from a few minor weaknesses that can be addressed by clarification, the main weakness is that it is unclear - in the authors' interpretation - what defines the size of linear oligomers/polymers that are presumed to next join on the membrane, and if this size is a robust aspect of CL or a more arbitrary result related to the specific experimental conditions covered in this manuscript.

      Overall, the manuscript convincingly demonstrates the formation/presence of CL oligomers in solution and that these oligomers play a role in membrane permeation. Their remain some question marks, however, about the authors' conclusion exactly how this permeation occurs.

      This is an exciting paper in terms of suggesting a new biophysical mechanism of membranes pore formation that is relevant in the context of fungal infections.

    1. Reviewer #1 (Public Review):

      This manuscript describes a robust computational approach for predicting the efficacy of strategies to passively administer bnAbs as a treatment for HIV. The results demonstrate an impressive ability to predict outcomes of treatment efficacy in past clinical trials, including the time for the virus to rebound after bnAb treatment. A key finding of this work, confirming an important finding from other recent studies, is that viral rebounds in bnAb efficacy trials are dominated by escape variants present in the patient prior to treatment, rather than escape variants arising spontaneously during therapy. The manuscript characterizes bnAbs as either "mutation-limiting" or "fitness-limiting" in terms of their effects on the evolving viral population, and provides testable hypotheses for how novel bnAb treatment strategies should be differentially designed based on differences in viral population dynamics across patients.

      Strengths:

      The presented mathematical framework is rigorously constructed such that meaningful insights can be gleaned into how bnAb therapies should be rationally designed to maximally suppress viral escape in HIV-infected individuals. Predictions are enabled by considering the role of neutral genetic diversity of the pre-treatment viral population, the number of potential viral escape trajectories from a given bnAb, and the fitness cost to the virus of making escape mutations. The model appears to be quite robust in terms of its ability to predict key outcomes of clinical trials, such as the time for the virus to rebound in HIV-infected patients following bnAb treatment. These results provide strong validity for the model and for the subsequent predictions of optimal treatment strategies.

      The model represents an advance over past models of viral dynamics in patients following passive bnAb administration, which have been limited in their predictive power due to small sample sizes of participants in clinical trials. The current model overcomes this challenge through the use of high throughput viral genetic sequence data collected from treatment-native patients over the course of a decade. A statistical framework is employed to infer parameters from this data to parameterize the model, enabling accurate predictions against real clinical trial data of viral rebound times following bnAb treatment.

      The presented mathematical framework could potentially be applied to the design of bnAb treatment strategies against a number of other evolving pathogens.

      Weaknesses:

      The authors do an admirable job of describing the limitations of the model, which include ignoring the effects of antibody concentration and IC50 neutralization during bnAb treatment, and the role of T-cell dynamics in infection. These limitations, among others mentioned by the authors, presumably play a role in the fact that the model does not actually reproduce features of viral population dynamics at short and long times.

      Much work has been done in recent years to characterize the fitness landscape of HIV proteins, including the Env surface protein that contains the epitope targeted by the bnAbs studied in the current work. It is unclear if some of the early inference/parameterization steps carried out in the current study could have benefited from or been circumvented by making use of these fitness landscapes.

      Lastly, more explanation should be provided to support the idea that HIV escape mutations from bnAbs should be intrinsically deleterious for the virus, beyond the fact that bnAbs typically bind to conserved sites. Since the footprint of a bnAb is often larger than the actual epitope - which may contain both variable and conserved sites (like the CD4 binding site studied herein) - bnAbs must bind to both residue types. If HIV escapes bnAbs via mutations at the variable sites surrounding the conserved residues, the fitness cost of these mutations would presumably be much lower or even minimal for the virus.

    1. Reviewer #1 (Public Review):

      It was previously shown that MEIG1/PACRG form a protein complex in the manchette and participated in sperm flagellum formation. However, how the MEIG1/PACRG complex associates with the axonemal motor system for cargo transport remained unclear. In this study, using Y2H screening, Yap et al., report DNALI1 is associated with MEIG1/PACRG complex and further show this interaction by several heterologous expression systems and co-localization of the PACRG and DNALI1 in elongating spermatids. To further understand the roles of DNAL1 in developing male germ cells, the authors generated a conditional knockout model using Stra8-Cre and DNALI1 flox mouse lines. The conditional males are infertile with dramatically reduced sperm numbers, abnormal sperm morphology, and severe spermiogenesis deficiency. The authors also show the PACRG, MEIG1, and SPAG16L normally expressed in DNALI1 lacking spermatocytes and spermatids, but MEIG1 and SPAG16L are not present in the manchette in the absence of DNALI1. Based on the suggested impaired sperm individualization in Dnali1 mutant mice, which was not observed in the MEIG1 nor PACRG-deficient mice, the author claim that DNALI1 is upstream of MEIG1/PACRG and that has MEIG1/PACRG associated and non-associated functions in mammalian spermatogenesis.

      The phenotype of Dnali1 male germ cell conditional knockout is interesting and strong, which demonstrates well that DNALI1 deficiency results in defective flagellar development and organization. Yet, its functional association with PACRG and MEIG in male germ cells is less clear than those from in vitro and heterologous interaction studies. The claimed MEIG/PACRG associated vs. non-associated function of DNALI1 in flagellar development also needs further delineation to support the current title.

    1. Reviewer #1 (Public Review):

      This paper shows that a principled, interpretable model of auditory stimulus classification can not only capture behavioural data on which the model was trained but somewhat accurately predict behaviour for manipulated stimuli. This is a real achievement and gives an opportunity to use the model to probe potential underlying mechanisms. There are two main weaknesses. Firstly, the task is very simple: distinguishing between just two classes of stimuli. Both model and animals may be using shortcuts to solve the task, for example (this is suggested somewhat by Figure 8 which shows the guinea pig and model can both handle time-reversed stimuli). Secondly, the predictions of the model do not appear to be quite as strong as the abstract and text suggest.

      The model uses "maximally informative features" found by randomly initialising 1500 possible features and selecting the 20 most informative (in an information-theoretic sense). This is a really interesting approach to take compared to directly optimising some function to maximise performance at a task, or training a deep neural network. It is suggestive of a plausible biological approach and may serve to avoid overfitting the data. In a machine learning sense, it may be acting as a sort of regulariser to avoid overfitting and improve generalisation. The 'features' used are basically spectro-temporal patterns that are matched by sliding a cross-correlator over the signal and thresholding, which is straightforward and interpretable.

      It is surprising and impressive that the model is able to classify the manipulated stimuli at all. However, I would slightly take issue with the statement that they match behaviour "to a remarkable degree". R^2 values between model and behaviour are 0.444, 0.674, 0.028, 0.011, 0.723, 0.468. For example, in figure 5 the lower R^2 value comes out because the model is not able to use as short segments as the guinea pigs (which the authors comment on in the results and discussion). In figure 6A (speeding up and slowing down the stimuli), the model does worse than the guinea pigs for faster stimuli and better for slower stimuli, which doesn't qualitatively match (not commented on by the authors). The authors state that the poor match is "likely because of random fluctuations in behavior (e..g motivation) across conditions that are unrelated to stimulus parameters" but it's not clear why that would be the case for this experiment and not for others, and there is no evidence shown for it.

      In figure 11, the authors compare the results of training their model with all classes, versus training only with the classes used in the task, and show that with the latter performance is worse and matches the experiment less well. This is a very interesting point, but it could just be the case that there is insufficient training data.

    1. Reviewer #1 (Public Review):

      Motivated by particle-based modeling approaches for describing tissue dynamics, the authors infer force-distance curves between cells in tissues from C. elegans, mouse embryos and MDCK cells. Each cell is represented by a point particle that interacts with all other cells via central body forces. The forces between cells are inferred via a data assimilation approach. From these data, average force-distance curves are obtained. They typically show a repulsive reign for particle distances smaller than the cell diameter and a short-ranged attractive region beyond the cell diameter. In particle-based simulations using these force-distance curves essential features of the tissues - including the stable formation of cavities - are reproduced. However, according to the force-distance curves cells can also interact when they are not in direct contact in the biological samples. The authors denote these effects as 'indirect interactions through external factors'.

      Although it is interesting to obtain measured forecasts-distance curves for use in simulations, a number of features remain problematic: Whereas the assumption of central body forces might be appropriate for bulk tissues, it is not the case for tissues with cavities. There, the interactions between adjacent cells in contact with each other are different from those with 'indirect interactions'. It is unclear what one learns in this case from the effective average force between cells. Furthermore, the data exhibit large variations in the inferred force between cells at a given distance. These variations can be a multiple of the average value and, for a given distance, the distribution of forces spreads on a wide range of positive and negative values, i.e., are repulsive and attractive. The force-distance curves change with time. Is this only a consequence of cell growth or are cell properties changing? Finally, the authors do not study the robustness of their results against variations of the force-distance curves. In Fig. S12 they show that forces derived from the Lennard-Jones or a 'freehand' potential yield qualitatively similar results in most situations.

      In conclusion, even though simulations using the inferred force-distance curves may yield structures that are similar to those found experimentally, it remains insufficiently clear what biological insight is gained in this way.

    1. Reviewer #1 (Public Review):

      In this paper the authors find that vitamin C (VC) enhances the differentiation of B cells to plasma cells (PC) in an in vitro culture system and link the treatment regimen to changes in the DNA methylation pattern changes associated with B cell differentiation. The work generally supports the conclusions. The differentiation of B cells to PC is critical to the induction of adaptive immunity to infection and vaccination.

      Strengths: 1) The major strength of the paper is the observation that VC greatly enhances plasma cell formation in the culture assay. 2) Because they have a two step differentiation process, the authors were able to narrow down the important point of VC action on the first step as IL-21 signaling did not change. 3) The authors focused the rest of the studies on the actions of the TET2/3 proteins, which connects the iron pathway as a cofactor for the TET enzymes and antioxidation nutrients such as VC. 4) The authors use a relatively novel chemistry to assess 5hmC levels. 5) The data appear to have been rigorously collected with an appropriate number of samples.

      Weaknesses: 1) The direct connection between IL-21 STAT3 signaling and the E58 region of the Prdm1 gene is not shown, but rather inferred from previous work in T cells. Because this is "the connection," they should attempt to show this by ChIP in their system. It should be possible as the experiments are in vitro and lots of cells can be generated with a high proportion differentiating cells in the culture. 2) From the 5hmC DNA dot blot, it is difficult to make the interpretation that there is an increase in activity of the TETs during the process as the VC samples look like naïve cells and there is a clear loss of 5hmC in the Mock treated samples that stays relatively the same during the differentiation process. A better description of the logic and new sites that go from 5mC to 5hmC is needed.

    1. Reviewer #1 (Public Review):

      The strengths of this study are the careful dissection of gating (opening and closing of channels) versus conductance of open channels. This study systematically characterizes the H+-response properties of the OTOP1, OTOP2, and OTOP3 channels and finds that their H+ conductance is gated distinctly in each. OTOP2 is constitutively open at all pH, its conductance is diminished by more acidic solutions. In contrast, OTOP3 opens exclusively to acidic pH, and OTOP1 opens to acidic or basic pH. Regions of each otopetrin protein sequence are identified that alter pH activation of H+ conductance. Weaknesses are the limited discussion of H+ current decay during pH stimulation and calibration of solution exchange kinetics. The interpretations throughout the study are grounded by experimental results. The overall conclusions that the conductances of OTOPs can be actively gated by pH and that the 3 OTOPs provide a palette of responses to acidic and basic solutions are well-supported.

    1. Reviewer #1 (Public Review):

      In this manuscript, Satou and colleagues present a novel repertoire of viral tools for visualization, tracing, and manipulating neuronal circuits in zebrafish. Though viral tools have revolutionized mammalian neuroscience, they have not gained similar traction in fish due to technical difficulties with both infection and cell death. The various viral manipulations presented in this manuscript promise to overcome both of these challenges, and the authors have gone to great lengths to evaluate viral efficacy. The resources are therefore likely to be of tremendous value and interest to the zebrafish community.

    1. Reviewer #1 (Public Review):

      The authors present a very thorough description and comparison of how various drug and epidemiological properties accelerate or decelerate the spread of antimalarial drug resistance, using a combination of transmission modeling and model emulation. The authors relate the selection coefficient, which is easier to measure computationally and in the field, to the probability of establishment, which is more challenging to measure. This was a very interesting paper and I appreciated how comprehensive and rigorous the approach was so that all these factors could be compared using the same framework.

    1. Reviewer #1 (Public Review):

      This manuscript provides the first experimental evidence that some members of the newly discovered heliorhodopsins can function as proton channels. The authors provide evidence of this transport function as well as a characterization of the photocycle. The authors also demonstrate that these heliorhodopsin proton channels can be utilized as optogenetic tools. These findings should be of interest to a wide audience interested in membrane biophysics as well as in the development of tools for neuroscience.

      The authors present a very thorough characterization of several biophysical aspects of the transport properties and the photocycle of V2HeR3, as well as a phylogenetic analysis. Furthermore, the authors demonstrate that the V2HeR3 protein can be used as an optogenetic tool, albeit with limited capabilities.<br /> Though the experiments are carried out carefully and the results, in general, support the conclusions, some procedures and interpretation of results need to be expanded and/or clarified for a more general readership as well as for specialized readers.

      The manuscript will likely impact our understanding of the biophysics of bacteriorhodopsins in general and these new heliorhodopsins in particular, as well as serve as a platform to engineer these proton transporters for future use as tools in biotechnology and neuroscience.

    1. Reviewer #1 (Public Review):

      This work introduces a new detailed computational model that can reproduce the patterns of neural oscillations in the frontal eye field (FEF) and in the lateral intraparietal cortex (LIP) as a result of their mutual interaction and the inputs from other brain areas. In particular, the model matches the experimentally recorded periodic change of neural activity frequency bands during the delay interval. Finally, the model can reproduce the theta-phase dependent behavioral performance observed experimentally in a previous study by the authors (Fiebelkorn et al., 2019).<br /> .<br /> Strengths:<br /> The model captures key empirical observations while incorporating several realistic biological features. In particular, the model investigates how oscillatory dynamics emerge from the interaction of different cortical cell types, which is an important question in modern neuroscience.

      Despite the complexity of the model, this work provides a mechanistic explanation of some of the observed phenomena by taking apart different modular components of the full network.

      Weaknesses:<br /> It is not always clear how some of the model architecture and parameters were selected. Therefore it is at times difficult to distinguish experimentally based assumptions from model predictions.

      This study includes analyses of how key features depend on model parameters. However, there are only a limited number of such analyses, decreasing the generalizability of the observed phenomena to different model structures.

    1. Reviewer #1 (Public Review): 

      Mitotic spindles are macromolecular machines that accurately segregate duplicate chromosomes between two daughter cells during cell division. To perform this task, spindles exert forces that are orchestrated in space and time. On the other hand, non-functioning spindles can generate chromosome segregation errors, which are present in cancers, miscarriages, and Down syndrome. Therefore, understanding spindle mechanics is a big biological challenge. In this elegant study, the authors explore the mechanical properties of the mitotic spindle. They combine a variety of experimental biophysical approaches, including microneedle manipulation and quantitative imaging, with theoretical modeling. By systematically exploring the shape of kinetochore fibers that are not manipulated, they find the force and moments that exist in the native spindles. Analyzing previously published data obtained by microneedle manipulations, where kinetochore fibers were mechanically perturbed, the authors observe a dramatic change in the shape of the kinetochore fibers. Comparing this observation and theoretical predictions, they discover a lateral anchorage near the chromosome. Taken together, this paper nicely demonstrates existence of lateral anchorage near chromosomes, offering exciting ideas about the balance of forces of the entire mitotic spindle. 

      Major points: 

      (1) In order to describe the shape of unmanipulated kinetochore fibers, the authors use a simple physical model in which they describe these fibers as a single elastic rod. They find that the observed shape is a consequence of compressive forces, or a combination of bending moments and perpendicular forces. However, it is well known that kinetochores are under the tension. For this reason, the plus end of kinetochore fibers should be under tension rather than under compression. In order to describe forces that shape unmanipulated kinetochore fibers, the authors should revise the model by setting the tensile force at the plus end of the kinetochore fiber. 

      (2) The authors compare the shapes of inner and outer kinetochore fibers. By using the model, they find that the forces and moments are similar for both, the inner and outer kinetochore fibers, whereas the difference arises because these fibers have a different length. In classical beam theory, we distinguish between buckling (caused by a compressive force) and bending (caused by a bending moment). In the case of buckling, which is caused by a same critical force, different curvatures can be obtained, whereas in the case of bending the curvature is proportional to the bending moment. Based on the data presented by the authors, it seems that their model operates in the buckling regime. It would be important to elaborate on this more systematically. Also, one should warn the reader that in the case of bending, the inner and outer kinetochore fibers will be characterized by different bending moments.

    1. Reviewer #1 (Public Review):

      Using a combination of behavioral screening, optogenetics, electrophysiology, connectomics and computational modelling, the authors identify a circuit in the fly mushroom body spanning at least two MB compartments.

      While the MB compartment alpha1 is involved in first order appetitive memory formation, at least one other compartment is modified to establish second order appetitive memory (gamma5, beta'2). The authors show that first order memory is very stable and long lasting. By contrast, second order memory decays within 24 h.<br /> Based on their behavioral data, the authors propose a circuit where the output neuron (MBON) of alpha1 modulates the dopaminergic neuron in the gamma5/beta'2 compartments.

      Electrophysiological recordings and EM connectomics indicate that learning-induced reduction of MBON-alpha1's output enhances the response of DANs innervating the other compartment. Interestingly, no direct connection could be identified between the MBON and the DANs across these compartments. Nevertheless, the authors find a connection over 2 synapses and a 'hub' neuron (SMP108) that connects them. Optogenetic modulation of SMP108 induces a similar memory with characteristics of second-order memory as observed through second order conditioning itself.

      Based on these data, the authors conclude that MBON-alpha1, an inhibitory neuron, is repressed after first order conditioning, in turn leading to an enhanced response to the conditioned odor of SMP108 and the DAN innervating gamma5 and beta'2. This enhanced response triggers a repression in MBONs of this second compartment and thereby induces second order appetitive memory.

      In my opinion, the experiments are strong and of high quality. The electrophysiology is a very convincing addition to the behavioral experiments. The EM data is helpful, but as appears to be the case frequently, also confusing since it suggests multiple, and no direct, routes (possibly redundant) between the first and the second involved MB compartment. This is possibly a weakness of the study, but it emphasizes the biological circumstance that (most of the time) things are more complex than we'd expect them to be given the paradigm that's being studied. The modelling is a nice addition, perhaps not strictly necessary, that helps to dissect this connection complexity.

    1. Reviewer #1 (Public Review):

      Clark, Battistara, and Benton investigated the formation of the posterior terminal segments of the Drosophila embryo using carefully staged multiplexed Hybridization Chain Reaction (HCR), quantitative imaging, genetics, and computational modeling. Through the HCR studies, Clark et al. provide some of the most detailed and comprehensive documentation of the dynamic gene expression patterns governing the formation of the posterior terminal region. Through this work, they define two additional parasegmental boundaries that form in this posterior region following the establishment of the fourteen parasegments typically ascribed to the fly embryo. They demonstrate a role for a cross-regulatory 'timer gene network' comprised of Odd-paired, Caudal, and Dichaete to specify this posterior segmental unit. By comparing expression patterns of the timer network in an array of mutants defective for terminal specification and patterning, they address a longstanding question of how the specification of the terminus of the embryo by maternal Torso receptor tyrosine kinase signaling coordinates with the segmentation of the embryo "trunk". These conclusions are rigorously supported by excellent imaging and staging of samples, as well as quantification. Based on these observations, a simple computational model is proposed that integrates observed gene expression states to explain the formation of the interface between the segmental primordium and the embryonic terminus.

      Strengths:<br /> The data collection for this manuscript is rigorous, comprehensive, and excellent. As in prior publications from the lead author, the images collected here will be the standard documents for dynamic expression patterns of Drosophila segmentation/patterning genes.

      The logic behind the experiments is clearly described and performed comprehensively by exhaustively staining for multiple panels of markers in all relevant mutant backgrounds. The scholarship operating behind the scenes is likewise excellent. Several experiments, performed authoritatively here, clarify generalizations or ambiguities in the literature from the past thirty years on this subject.

      The central question addressed in the manuscript is a longstanding unanswered question about a developmental model system that has been exhaustively studied over four decades. The concluding proposed gene regulatory network is well supported and opens up several lines of possible future inquiry in both Drosophila as well as other insect species.

      Weaknesses:<br /> The manuscript often drills down deep on details that will be of interest to only the most dedicated Drosophilists, which is appreciated, but also significantly derails and dilutes the central question of the manuscript at times. A more streamlined presentation, adjustments to the presentation of figures, and perhaps (greater) use of appendices for a more nuanced presentation of results would improve readability and open the results to a broader readership.

    1. Reviewer #1 (Public Review):

      The authors evaluate the involvement of the hippocampus in a fast-paced time-to-contact estimation task. They find that the hippocampus is sensitive to feedback received about accuracy on each trial and has activity that tracks behavioral improvement from trial to trial. Its activity is also related to a tendency for time estimation behavior to regress to the mean. This is a novel paradigm to explore hippocampal activity and the results are thus novel and important, but the framing as well as discussion about the meaning of the findings obscures the details of the results or stretches beyond them in many places, as detailed below:

      1) Some of the results appear in the posterior hippocampus and others in the anterior hippocampus. The authors do not motivate predictions for anterior vs. posterior hippocampus, and they do not discuss differences found between these areas in the Discussion. The hippocampus is treated as a unitary structure carrying out learning and updating in this task, but the distinct areas involved motivate a more nuanced picture that acknowledges that the same populations of cells may not be carrying out the various discussed functions.

      2) Hippocampal activity is stronger for smaller errors, which makes the interpretation more complex than the authors acknowledge. If the hippocampus is updating sensorimotor representations, why would its activity be lower when more updating is needed?

      3) Some tests were one-tailed without justification, which reduces confidence in the robustness of the results.

      4) The introduction motivates the novelty of this study based on the idea that the hippocampus has traditionally been thought to be involved in memory at the scale of days and weeks. However, as is partially acknowledged later in the Discussion, there is an enormous literature on hippocampal involvement in memory at a much shorter timescale (on the order of seconds). The novelty of this study is not in the timescale as much as in the sensorimotor nature of the task.

      5) The authors used three different regressors for the three feedback levels, as opposed to a parametric regressor indexing the level of feedback. The predictions are parametric, so a parametric regressor would be a better match, and would allow for the use of all the medium-accuracy data.

      6) The authors claim that the results support the idea that the hippocampus is finding an "optimal trade-off between specificity and regularization". This seems overly speculative given the results presented.

      7) The authors find that hippocampal activity is related to behavioral improvement from the prior trial. This seems to be a simple learning effect (participants can learn plenty about this task from a prior trial that does not have the exact same timing as the current trial) but is interpreted as sensitivity to temporal context. The temporal context framing seems too far removed from the analyses performed.

      8) I am not sure the term "extraction of statistical regularities" is appropriate. The term is typically used for more complex forms of statistical relationships.

    1. Reviewer #1 (Public Review):

      The authors used available protein complex structures and ribosome profiling data to analyse how the interface size between proteins in the complex and the position of the largest interface correlates with the propensity of subunits to assemble cotranslationally.

      The strength of the paper is in finding a simple well-defined parameter that may direct the evolution of protein interfaces and cotranslational protein folding. There are some weaknesses in presenting statistical significance (Fig S1C) and justification/validation of the assembly-onset mapping approach summarized in Fig. 2A. Provided that the data shown in Fig. S1C are significant, the results support the conclusions of the paper.

      The paper makes an important contribution to protein science by making a proteome-wide analysis of parameters that contribute to cotranslational folding and by finding a number of as yet unidentified candidates for simultaneous assembly, which is an important starting point for biochemical experiments to test the mechanism of folding.

    1. Reviewer #1 (Public Review):

      The authors examined the relationships between humans' heartbeats and their ability to perceive objects using touch.

      Strengths: This study is a large and sophisticated one, with great attention to detail and systematic analysis of the resulting data. The hypotheses are clear and the study was carried out well. The presentation of the data visually is very informative. With such a large and high-quality set of data, the conclusions that we can draw should be clear and strong.

      Weaknesses: The main drawbacks for me were first, exactly how the data were analysed, and second that there seem to be too many results reported to get an overall view of what the study has found.

      First, there are always a number of choices that researchers can make when analysing their data. Too many choices in fact. So we always need to see a consistent, principled, and transparent account of how those choices were made and what the effects on the data were. At present, I think this needs to be improved, partly in the justification of the analyses that were done; partly by re-doing some analyses and the presentation of results.

      Second, I admit to being a little lost when trying to understand all of the analyses - why there were done, what choices were made, and what the findings were. In some cases, it felt a little bit like the analyses were decided on only quite late - after exploring the data. One clear way to address this would be to divide the main results into two kinds: confirmatory (those that the authors expected to do before the study was run), and exploratory (those that the authors decided to do only after seeing the data). This would be both good practice and would help to focus the reader on what are the most critical findings.

      Achievements: I think the presentation of results needs to be strengthened before I can decide whether the aims are achieved.

      Impact: This will also depend on the revision of the results.

    1. Reviewer #1 (Public Review):

      This manuscript presents a useful application of a multi-ancestry polygenic risk score to predict the risk of prostate cancer in approximately 500,000 individuals that are classified on three different ancestry categories. The authors show that the multi-ancestry polygenic risk score can be used to predict the risk of prostate cancer in individuals of different ages that were classified to have either European, African, or Hispanic ancestry. The authors show that the ages of individuals must be taken into account, along with the polygenic risk score, to predict the risk of having prostate cancer.

      This paper is very well conceived and the authors do a great job showing that the multi-ancestry polygenic risk score, previously developed by the same group, is a useful predictor of the risk to develop prostate cancer. The cohorts analyzed are very large and support the main conclusion made by the authors that the polygenic score is a useful tool to diagnose the risk for prostate cancer. The authors make a good case showing that taking into account the ancestral background of an individual along with the age and the polygenic score can be very useful in the clinic to make decisions about the frequency to perform prostate-specific antigen screenings on different patients.

    1. Reviewer #1 (Public Review):

      The paper puts a lot of effort into many things that could make this work influential: the assumptions and parameter values under which the results hold are carefully examined, the approximations are difficult and carefully explained, the results are checked by simulations, and the underlying reasons for the results are explained in simple terms. In particular, the "linear" approximation is already enough for a good theoretical paper; the subsequent "nonlinear" approximation (which builds on the linear one) is very impressive. I am not certain precisely which results are new to this paper, but my impression is that it gives a much more complete picture of the details of polygenic adaptation than any previous work. The main limitation of the work is that it describes (and, simulates) a large number of unlinked loci, but this is entirely appropriate and well discussed in the paper.

      My first observation is that, despite the author's good attention to detail and effort to explain what's going on, I found this to be a difficult paper, that I had to put a lot of work into to understand. (I did feel that that the work paid off eventually, though.) However, this is not a serious criticism - the topic is complex, and the paper does a good job of explaining the big picture. The hardest thing for me to keep straight was the various layers of approximations (I think: linear Lande, nonlinear Lande, linear non-Lande, and nonlinear non-Lande, each within each of the two phases - plus three different types of simulation). If it were possible to remove discussion of some of these parallel tracks without removing important conceptual results, I think that would help. However, I have no concrete suggestions.

      Besides that, I have only one concern. The authors have but a lot of work into the simulations, but all plots show mean values, with no indication of between-simulation stochasticity. This makes sense, because the theory they develop describes mean quantities, but it would still be nice to know how well we expect the theory to predict dynamics of a single given bout of adaptation. For instance, Figure 2 shows the mean trajectories of trait mean, variance, and skew. What is the typical path of these for a single simulation trajectory? Or, Figure 5 shows how alleles of different sizes are expected to contribute to adaptation. How much do typical contributions to adaptation in a single simulation differ? Showing just one or two examples in the supplement could help make things more concrete.

      Other comments:

      - The github repository that's supposed to contain the code for the paper is empty. ( https://github.com/sellalab/PolygenicAdaptation1D )

      - Many of the plots (e.g., Figure 5) show "contributions" to adaptation plotted against S, on a log scale. But, isn't this a density with respect to effect size, and so shouldn't we read these plots as histograms, with relative area under the curves giving the relative contributions to adaptation? If so, the log scale could give a very wrong idea, and changing variables so the curve is a function of log(S) would avoid the problem.

      - It was hard for me to figure out a single set of simulation parameters to put into a forward simulator to match what was used in the paper, as the relevant information is scattered throughout (supplemental section 5.2 notwithstanding). To make things concrete, it would be nice to put a self-contained example in somewhere. I think that with a genome of length L, typical parameters were N=1e4, u=0.01/L, V_s=2e4, and an Exponential distribution of effect sizes with mean 4, equal probabilities + or -?

      - The agreement between simulations of allele frequencies and the "full" (still unlinked) model is impressive (see Figure C5.1)

    1. Reviewer #1 (Public Review):

      While the peripheral taste system in the fruit fly is comparably well understood, the corresponding neural circuit are still less explored. Using EM-based connectomic, optogenetic activation and inhibition as well as Calcium imaging the current manuscript provides insight into the functional organization of the sugar-taste circuit and its connection towards motoneurons. The current manuscript provides a leap in understanding early circuits of taste processing using these two parallel approaches connectomics and neurogenetics.

    1. Reviewer #1 (Public Review):

      This study provides relatively convincing in vivo phenotype data in mice related to vertical sleeve gastrectomy (VSG) and provides some potential mechanistic insight. This study can potentially provide some therapeutic intervention strategies on combining VSG and immunotherapy in treating breast cancer. On the other hand, this paper also has some weaknesses especially related to the detailed molecular mechanism and characterization as described below:

      1. The major weakness lies on the detailed characterization on which inflammatory response factors that may mediate the phenotype of HFS VSG mice when compared to WM Sham mice. The data presented currently is mainly limited to RNA-Seq data, which lacks detailed characterization.<br /> 2. The other significant weakness also is related to the descriptive nature on characterizing the effect of immune features in Fig.4 for these mice. What is the potential mechanism on regulating T cell signaling or Cytolysis in HFS VSG mice vs WM sham mice? This at least needs some preliminary exploration and characterization.

    1. Reviewer #1 (Public Review):

      Overall this is a large body of work that in the first part describes the creation of a mouse model that uses Osterix and Adipoq to target the elimination of adipose triglyceride lipase (Pnpla2) to bone marrow adipocytes. The creation and the phenotype of these mice are explored in detail. Then the authors turn to several experiments to flush out the role that these fat stores play in the bone marrow. They convincingly demonstrate through caloric restriction models the role these cells play in the bone marrow such as the role in progenitor survival as well as sustaining osteoblast-mediated bone mass.

      The major limitations of the study have been largely noted by the authors who commendably dedicate substantial time to discussion of them - and that is the imperfections in the mouse model that was created for the study. Because of these limitations, it is doubtful that in the current iteration the mouse model can be used for more than what has already been accomplished - largely confirming long hypothesized roles of bone marrow Adipocytes.

    1. Reviewer #1 (Public Review):

      In this study, the authors tested the properties of predictive processes in V1 and the hippocampus using spatiotemporal sequences of dots appearing at different locations. They used data from a localizer run to determine the subregions or voxel patterns sensitive to the different locations where dots could appear in the main task. Prior to the main task, the participants were familiarized with spatiotemporal sequences (one per subject) consisting of four dots appearing successively at different locations. During the main task, on some trials, all but one dot were omitted from the sequence. Using the localizer data, the authors were able to assess the degree to which each dot was represented in the brain on a given trial of the main task (despite it not being shown). They fitted two models to this data: one in which representations of both previous and subsequent dots were activated (co-occurrence model) and one in which only representations of subsequent dots were activated, with temporal discounting (successor representation; SR). In both regions, the SR model fit the data best. Similar results have been observed in the hippocampus in previous studies, but not in the visual cortex. The authors also performed an additional analysis of the localizer data to assess the representational format of both regions. This analysis revealed a temporal tuning in the hippocampus but not in V1.

      I enjoyed reading this manuscript. I found the study and the analyses generally well-made and the paper well written. I think the main result is interesting and important: it is advancing our understanding of how predictions are implemented in V1. The data is furthermore likely to be of interest to other researchers studying learning, predictions, and temporal sequences. The conclusions are generally well supported by the results; however, there are some issues with their general framing and interpretation.

      1) The authors frame their paper in terms of the successor representation (SR). To my knowledge, the SR has previously been used only in a reinforcement learning (RL) context, where there are rewards associated with specific states and where predictions are task-relevant. I don't think it is well defined outside of that context. In the RL literature, the SR has additional features that distinguish it from other RL models such as model-based learning. In the present study, model-based learning (where all one-step transitions are stored, and predictions are iteratively computed) would essentially make the same prediction as SR. There is no reward here and the context is very different, but even then, SR may not be an accurate description of the model tested here.

      2) It is unclear whether the presence of a successor representation in V1 is the result of feedback from the hippocampus or if it is intrinsic to V1. There should be more investigation into the mechanism explaining this finding, and more discussion of its implication.

      3) The goal of the tuning analysis and the interpretation of its result is unclear. At times, it seems like the aim was to investigate the underlying coding of the region, separate from predictive mechanisms. But temporal tuning is intrinsically dependent on the learned associations and hard to disentangle from predictions. Also, the fact that the localizer is run after the main task is a confounding factor to this interpretation. Instead, this analysis is probably more indicative of how much the predictive mechanism persists after the task (this is also the chosen interpretation at other times). But then, it is unclear why a temporally symmetric activity pattern (activation to predecessors as much as to successors) would be predicted and obtained. (Could this result simply be due to the absence of blank screens (omitted items) before and after the shown dot in the localizer run?)

      4) It is unclear whether there is a visual difference between the inter-trial intervals (ITI) and the parts of sequence trials where there is no dot shown. If there is none, as appears to be the case, the participants would be unable to detect the start of a partial sequence trial when the shown dot is not the first one in the sequence (especially since ITI is of variable duration). This could perturb predictive processes since a dot that is shown in the middle of a sequence would appear to participants as being shown at its beginning.

    1. Reviewer #1 (Public Review):

      The authors show that the development of non-lethal rodent parasite Plasmodium yoelii is transiently retarded in Ac-deficient mice. While loss of Ac leads to changes in T cell responses, these changes are not responsible for reduced parasitemia and splenomegaly, as selective deletion of Ac in either T-cells or macrophages had no effect on parasite development. Instead, loss of acid ceramidase and accumulation of ceramide and SM were found to be associated with reduced reticulocyte levels, the major host cell for P. yoelii. A similar, but less dramatic, reduction in parasitemia was also achieved by treatment of P. yoelii-infected mice with the Ac inhibitor, carmofur. The findings suggest that it may be possible to safely modulate erythropoiesis and reticulocyte levels to reduce infections caused by human malaria parasites that also target reticulocytes (e.g. P. vivax). While the results are clearly described, further evidence is needed to support the main conclusion that dysregulation of erythropoiesis is due accumulation of ceramide/SM. In particular, loss of Ac could potentially leads to changes in sphingosine/S1P levels, which should be investigated. Similarly, the effect of carmofur on parasite growth in vitro should also be assessed.

    1. Reviewer #1 (Public Review):

      Haggerty et al. reported findings that complement excellent previous work by the same group further exploring the mechanisms mediating binge alcohol drinking. The authors used a combination of ex-vivo electrophysiology and optogenetic techniques with several behavioral procedures to demonstrate that (1) binge alcohol drinking produces glutamatergic synaptic adaptations selective to anterior insular cortex (AIC) inputs within the dorsolateral striatum (DLS); and (2) AIC→DLS projection mediates alcohol binge drinking but not water consumption. Moreover, optogenetic manipulation of AIC→DLS pathway does not alter operant or anxiety-like behaviors. In general, this is an important study and the selective investigation of the AIC→DLS projection is critical to the field.

    1. Reviewer #1 (Public Review):

      The authors report in this study that uterine deletion of Foxa2, a transcription factor, leads to embryonic diapause. The phenotypic characterization was well done and the data are of quality and convincing. However, the study remains highly descriptive due to a lack of molecular mechanisms. Consequently, the exact role of Foxa2 in LIF induction by E2 remains unknown.

    1. Reviewer #1 (Public Review):

      The general idea of comparing response patterns to stress in the offspring generation is new and very interesting. However, the data that are presented are in several ways preliminary. The phenotype comparisons are mostly convincing, although statistical treatments are partly unclear, given that each "replicate" includes itself many individuals. The transcriptomic data are minimal (only three replicates) and lack comparison to the stress responses in the parental animals. The analysis of the transcriptome data is limited to counting overlaps between significantly changed genes, without deeper discussion of the genes and pathways that are affected. The top response genes that are directly tested have been discovered before. Hence, while interesting patterns are evident from the data, this work largely confirms prior work, including that described in Burton et al. 2020.

    1. Reviewer #1 (Public Review):

      The relationship between genetic disease and adaptation is important for biomedical research as well as understanding human evolution. This topic has received considerable attention over the past several decades in human genetics research. The present manuscript provides a much more comprehensive and rigorous analysis of this topic. Specifically, the authors select a set of ~4000 human Mendelian disease genes and examine patterns of recent positive selection in these genes using the iHS and nSL tests (both haplotype test) for selection. They then compare the signals of sweeps to control genes. Importantly, they match the control set to the disease genes based upon many different genomic variables, such as recombination rate, amount of background selection, expression level, etc. The authors find that there is a deficit of selective sweeps in disease genes. They test several hypotheses for this deficit. They find that the deficit of sweeps is stronger in disease genes at low recombination rate and those that have more disease mutations. From this, the authors conclude that strongly deleterious mutations could be impeding selective sweeps.

      Strengths

      The manuscript includes a number of important strengths:

      1) It tackles an important question in the field. The question of selection in disease genes has been very well-studied in the past, with conflicting viewpoints. The present study examines this topic in a rigorous way and finds a deficit of sweeps in disease genes.

      2) The statistical analyses are rigorously done. The genome is a confusing place and there can often be many reasons why a certain set of genes could differ from another set of genes, unrelated to the variable of interest. Di et al. carefully match on these genomic confounders. Thus, they rigorously demonstrate that sweeps are depleted in disease genes relative to control genes. Further, the pipeline for ranking the genes and testing for significance is solid.

      3) The Introduction of the manuscript nicely relates different evolutionary models and explanations to patterns that could be seen in the data. As such, the present manuscript isn't just merely an exploratory analysis of patterns of sweeps in disease genes. Rather, it tests specific evolutionary scenarios.

      Weaknesses

      1) The authors did not discuss or test a basic explanation for the deficit of sweeps in disease genes. Namely, certain types of genes, when mutated, give rise to strong Mendelian phenotypes. However, mutations in these genes do not result in variation that gives rise to a phenotype on which positive selection could occur. In other words, there are just different types of genes underlying disease and positive selection. I could think that such a pattern would be possible if humans are close to the fitness optimum and strong effect mutations (like those in Mendelian disease genes) result in moving further away from the fitness optimum. On the other hand, more weak effect mutations could be either weakly deleterious or beneficial and subject to positive selection. I'm not sure whether these patterns would necessarily be captured by the overall measures of constraint which the disease and non-disease genes were matched on.

      2) While I think the authors did a superb job of controlling for genome differences between disease and non-disease genes, the analysis of separating regions by recombination rate and number of disease mutations does not seem as rigorous. Specifically, the authors tested for enrichment of sweeps in disease genes vs control and then stratified that comparison by recombination rate and/or number of disease mutations. While this nicely matches the disease genes to the control genes, it is not clear whether the high recombination rate genes differ in other important attributes from the low recombination rate genes. Thus, I worry whether there could be a confounder that makes it easier/harder to detect an enrichment/deficit of sweeps in regions of low/high recombination.