MAST: a flexible statistical framework for assessing transcriptional changes and characterizing heterogeneity in single-cell RNA sequencing data

Greg Finak(Fred Hutch Cancer Center), Andrew McDavid(Fred Hutch Cancer Center), Masanao Yajima(Fred Hutch Cancer Center), Jingyuan Deng(Fred Hutch Cancer Center), Vivian H. Gersuk(Virginia Mason Medical Center), Alex K. Shalek, Chloe K. Slichter(Fred Hutch Cancer Center), Hannah W. Miller(Fred Hutch Cancer Center), M. Juliana McElrath(Fred Hutch Cancer Center), Martin Prlic(Fred Hutch Cancer Center), Peter S. Linsley(Benaroya Research Institute), Raphaël Gottardo(Fred Hutch Cancer Center)
Genome biology
December 1, 2015
Cited by 3,544Open Access
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Abstract

Single-cell transcriptomics reveals gene expression heterogeneity but suffers from stochastic dropout and characteristic bimodal expression distributions in which expression is either strongly non-zero or non-detectable. We propose a two-part, generalized linear model for such bimodal data that parameterizes both of these features. We argue that the cellular detection rate, the fraction of genes expressed in a cell, should be adjusted for as a source of nuisance variation. Our model provides gene set enrichment analysis tailored to single-cell data. It provides insights into how networks of co-expressed genes evolve across an experimental treatment. MAST is available at https://github.com/RGLab/MAST .


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