Confronting false discoveries in single-cell differential expression.
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IF: 17.694
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Cited by: 40
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Abstract

Differential expression analysis in single-cell transcriptomics enables the dissection of cell-type-specific responses to perturbations such as disease, trauma, or experimental manipulations. While many statistical methods are available to identify differentially expressed genes, the principles that distinguish these methods and their performance remain unclear. Here, we show that the relative performance of these methods is contingent on their ability to account for variation between biological replicates. Methods that ignore this inevitable variation are biased and prone to false discoveries. Indeed, the most widely used methods can discover hundreds of differentially expressed genes in the absence of biological differences. To exemplify these principles, we exposed true and false discoveries of differentially expressed genes in the injured mouse spinal cord.

Keywords

Seurat
Spatial Transcriptomics
RNAscope
Omics
Gene Expression

MeSH terms

Animals
Biological Variation, Individual
Biological Variation, Population
Data Accuracy
Datasets as Topic
Gene Expression Regulation
Humans
Mice
Models, Statistical
RNA-Seq
Rabbits
Rats
Single-Cell Analysis
Swine

Authors

Squair, Jordan W
Gautier, Matthieu
Kathe, Claudia
Anderson, Mark A
James, Nicholas D
Hutson, Thomas H
Hudelle, Rémi
Qaiser, Taha
Matson, Kaya J E
Barraud, Quentin
Levine, Ariel J
La Manno, Gioele
Skinnider, Michael A
Courtine, Grégoire

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