CoCoA-diff: counterfactual inference for single-cell gene expression analysis

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作者
Yongjin P. Park
Manolis Kellis
机构
[1] University of British Columbia,Department of Pathology and Laboratory Medicine, Department of Statistics
[2] BC Cancer,Department of Molecular Oncology
[3] Massachusetts Institute of Technology,Computer Science and Artificial Intelligence Laboratory
[4] Broad Institute of MIT and Harvard,undefined
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Causal inference; Single-cell RNA-seq; Counterfactual inference; Alzheimer’s disease;
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摘要
Finding a causal gene is a fundamental problem in genomic medicine. We present a causal inference framework, CoCoA-diff, that prioritizes disease genes by adjusting confounders without prior knowledge of control variables in single-cell RNA-seq data. We demonstrate that our method substantially improves statistical power in simulations and real-world data analysis of 70k brain cells collected for dissecting Alzheimer’s disease. We identify 215 differentially regulated causal genes in various cell types, including highly relevant genes with a proper cell type context. Genes found in different types enrich distinctive pathways, implicating the importance of cell types in understanding multifaceted disease mechanisms.
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