IDEAS: individual level differential expression analysis for single-cell RNA-seq data

被引:0
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作者
Mengqi Zhang
Si Liu
Zhen Miao
Fang Han
Raphael Gottardo
Wei Sun
机构
[1] Fred Hutchison Cancer Research Center,Public Health Science Division
[2] Present Address: University of Pennsylvania,Department of Statistics
[3] University of Washington,Biomedical Data Sciences Center
[4] Lausanne University Hospital,Department of Biostatistics
[5] University of Washington,Department of Biostatistics
[6] University of North Carolina,undefined
来源
Genome Biology | / 23卷
关键词
scRNA-seq; IDEAS; Differential expression;
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摘要
We consider an increasingly popular study design where single-cell RNA-seq data are collected from multiple individuals and the question of interest is to find genes that are differentially expressed between two groups of individuals. Towards this end, we propose a statistical method named IDEAS (individual level differential expression analysis for scRNA-seq). For each gene, IDEAS summarizes its expression in each individual by a distribution and then assesses whether these individual-specific distributions are different between two groups of individuals. We apply IDEAS to assess gene expression differences of autism patients versus controls and COVID-19 patients with mild versus severe symptoms.
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