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1.
Bioinformatics ; 40(8)2024 Aug 02.
Article in English | MEDLINE | ID: mdl-39110511

ABSTRACT

SUMMARY: Motivated by theoretical and practical issues that arise when applying Principal component analysis (PCA) to count data, Townes et al. introduced "Poisson GLM-PCA", a variation of PCA adapted to count data, as a tool for dimensionality reduction of single-cell RNA sequencing (scRNA-seq) data. However, fitting GLM-PCA is computationally challenging. Here we study this problem, and show that a simple algorithm, which we call "Alternating Poisson Regression" (APR), produces better quality fits, and in less time, than existing algorithms. APR is also memory-efficient and lends itself to parallel implementation on multi-core processors, both of which are helpful for handling large scRNA-seq datasets. We illustrate the benefits of this approach in three publicly available scRNA-seq datasets. The new algorithms are implemented in an R package, fastglmpca. AVAILABILITY AND IMPLEMENTATION: The fastglmpca R package is released on CRAN for Windows, macOS and Linux, and the source code is available at github.com/stephenslab/fastglmpca under the open source GPL-3 license. Scripts to reproduce the results in this paper are also available in the GitHub repository and on Zenodo.


Subject(s)
Algorithms , Sequence Analysis, RNA , Single-Cell Analysis , Software , Single-Cell Analysis/methods , Sequence Analysis, RNA/methods , Principal Component Analysis , Humans
2.
J Psychiatr Pract ; 30(4): 266-272, 2024 Jul 01.
Article in English | MEDLINE | ID: mdl-39058525

ABSTRACT

OBJECTIVE: Given the vulnerability of and the importance of caring for the specific health care needs of the growing lesbian, gay, bisexual, transgender, and queer (LGBTQ) population, the authors attempted to identify all educational interventions in psychiatric settings with quantitative outcomes targeting medical students, residents, and physicians in postgraduate settings. To gain insight from other disciplines that have published research in this area, a second objective was to review studies in teaching in those other disciplines. The authors sought to describe the methods of selected studies. METHODS: The authors searched the published English-language literature indexed in PubMed, EMBASE, and PsycINFO using key terms for health care education concerning LGBTQ populations. The authors described and critically appraised studies with quantitative outcomes designed to enhance knowledge, skills, and attitudes in treating the LGBTQ community. RESULTS: Of the 15 trials identified, 10 included medical students, 4 included internal medicine residents or medical school faculty, and 1 included oncologists. We did not find any randomized controlled trials or controlled nonrandomized trials of curricula dedicated to teaching learners in psychiatry. All of the studies included a presurvey, followed by an educational intervention and then a postsurvey assessment. The educational interventions, outcome measures, and quality of studies varied widely. Four studies enrolled self-identified members of the LGBTQ community as trainers and facilitators of the educational interventions. CONCLUSIONS: The lack of high-quality controlled studies indicates the need to develop evidence-based curricula to support the education of the psychiatric workforce to provide for the special needs of LGBTQ persons.


Subject(s)
Curriculum , Education, Medical , Sexual and Gender Minorities , Humans , Education, Medical/methods , Psychiatry/education , Health Services Needs and Demand
3.
bioRxiv ; 2024 Jul 04.
Article in English | MEDLINE | ID: mdl-38585920

ABSTRACT

Summary: Motivated by theoretical and practical issues that arise when applying Principal Components Analysis (PCA) to count data, Townes et al introduced "Poisson GLM-PCA", a variation of PCA adapted to count data, as a tool for dimensionality reduction of single-cell RNA sequencing (RNA-seq) data. However, fitting GLM-PCA is computationally challenging. Here we study this problem, and show that a simple algorithm, which we call "Alternating Poisson Regression" (APR), produces better quality fits, and in less time, than existing algorithms. APR is also memory-efficient, and lends itself to parallel implementation on multi-core processors, both of which are helpful for handling large single-cell RNA-seq data sets. We illustrate the benefits of this approach in two published single-cell RNA-seq data sets. The new algorithms are implemented in an R package, fastglmpca. Availability and implementation: The fastglmpca R package is released on CRAN for Windows, macOS and Linux, and the source code is available at github.com/stephenslab/fastglmpca under the open source GPL-3 license. Scripts to reproduce the results in this paper are also available in the GitHub repository. Contact: mstephens@uchicago.edu. Supplementary information: Supplementary data are available on BioRxiv online.

4.
Nat Genet ; 56(2): 336-347, 2024 Feb.
Article in English | MEDLINE | ID: mdl-38279041

ABSTRACT

Many methods have been developed to leverage expression quantitative trait loci (eQTL) data to nominate candidate genes from genome-wide association studies. These methods, including colocalization, transcriptome-wide association studies (TWAS) and Mendelian randomization-based methods; however, all suffer from a key problem-when assessing the role of a gene in a trait using its eQTLs, nearby variants and genetic components of other genes' expression may be correlated with these eQTLs and have direct effects on the trait, acting as potential confounders. Our extensive simulations showed that existing methods fail to account for these 'genetic confounders', resulting in severe inflation of false positives. Our new method, causal-TWAS (cTWAS), borrows ideas from statistical fine-mapping and allows us to adjust all genetic confounders. cTWAS showed calibrated false discovery rates in simulations, and its application on several common traits discovered new candidate genes. In conclusion, cTWAS provides a robust statistical framework for gene discovery.


Subject(s)
Genome-Wide Association Study , Transcriptome , Humans , Transcriptome/genetics , Genome-Wide Association Study/methods , Multifactorial Inheritance/genetics , Quantitative Trait Loci/genetics , Phenotype , Polymorphism, Single Nucleotide/genetics , Genetic Predisposition to Disease
5.
Nat Immunol ; 25(2): 226-239, 2024 Feb.
Article in English | MEDLINE | ID: mdl-38191855

ABSTRACT

Sepsis is a systemic response to infection with life-threatening consequences. Our understanding of the molecular and cellular impact of sepsis across organs remains rudimentary. Here, we characterize the pathogenesis of sepsis by measuring dynamic changes in gene expression across organs. To pinpoint molecules controlling organ states in sepsis, we compare the effects of sepsis on organ gene expression to those of 6 singles and 15 pairs of recombinant cytokines. Strikingly, we find that the pairwise effects of tumor necrosis factor plus interleukin (IL)-18, interferon-gamma or IL-1ß suffice to mirror the impact of sepsis across tissues. Mechanistically, we map the cellular effects of sepsis and cytokines by computing changes in the abundance of 195 cell types across 9 organs, which we validate by whole-mouse spatial profiling. Our work decodes the cytokine cacophony in sepsis into a pairwise cytokine message capturing the gene, cell and tissue responses of the host to the disease.


Subject(s)
Cytokines , Sepsis , Mice , Animals , Interleukin-6/genetics , Tumor Necrosis Factor-alpha/metabolism , Interferon-gamma , Sepsis/genetics
6.
Article in English | MEDLINE | ID: mdl-38149302

ABSTRACT

Signal denoising-also known as non-parametric regression-is often performed through shrinkage estimation in a transformed (e.g., wavelet) domain; shrinkage in the transformed domain corresponds to smoothing in the original domain. A key question in such applications is how much to shrink, or, equivalently, how much to smooth. Empirical Bayes shrinkage methods provide an attractive solution to this problem; they use the data to estimate a distribution of underlying "effects," hence automatically select an appropriate amount of shrinkage. However, most existing implementations of empirical Bayes shrinkage are less flexible than they could be-both in their assumptions on the underlying distribution of effects, and in their ability to handle heteroskedasticity-which limits their signal denoising applications. Here we address this by adopting a particularly flexible, stable and computationally convenient empirical Bayes shrinkage method and applying it to several signal denoising problems. These applications include smoothing of Poisson data and heteroskedastic Gaussian data. We show through empirical comparisons that the results are competitive with other methods, including both simple thresholding rules and purpose-built empirical Bayes procedures. Our methods are implemented in the R package smashr, "SMoothing by Adaptive SHrinkage in R," available at https://www.github.com/stephenslab/smashr.

7.
Stat Sin ; 31(3): 1145-1166, 2021 Jul.
Article in English | MEDLINE | ID: mdl-38148787

ABSTRACT

Unwanted variation, including hidden confounding, is a well-known problem in many fields, but particularly in large-scale gene expression studies. Recent proposals to use control genes, genes assumed to be unassociated with the covariates of interest, have led to new methods to deal with this problem. Several versions of these removing unwanted variation (RUV) methods have been proposed, including RUV1, RUV2, RUV4, RUVinv, RUVrinv, and RUVfun. Here, we introduce a general framework, RUV*, that both unites and generalizes these approaches. This unifying framework helps clarify the connections between existing methods. In particular, we provide conditions under which RUV2 and RUV4 are equivalent. The RUV* framework preserves an advantage of the RUV approaches, namely, their modularity, which facilitates the development of novel methods based on existing matrix imputation algorithms. We illustrate this by implementing RUVB, a version of RUV* based on Bayesian factor analysis. In realistic simulations based on real data, we found RUVB to be competitive with existing methods in terms of both power and calibration. However, providing a consistently reliable calibration among the data sets remains challenging.

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