Sierra: discovery of differential transcript usage from polyA-captured single-cell RNA-seq data

Sierra:从 polyA 捕获的单细胞 RNA 测序数据中发现差异转录本的使用情况

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作者:Ralph Patrick, David T Humphreys, Vaibhao Janbandhu, Alicia Oshlack, Joshua W K Ho, Richard P Harvey, Kitty K Lo

Abstract

High-throughput single-cell RNA-seq (scRNA-seq) is a powerful tool for studying gene expression in single cells. Most current scRNA-seq bioinformatics tools focus on analysing overall expression levels, largely ignoring alternative mRNA isoform expression. We present a computational pipeline, Sierra, that readily detects differential transcript usage from data generated by commonly used polyA-captured scRNA-seq technology. We validate Sierra by comparing cardiac scRNA-seq cell types to bulk RNA-seq of matched populations, finding significant overlap in differential transcripts. Sierra detects differential transcript usage across human peripheral blood mononuclear cells and the Tabula Muris, and 3 'UTR shortening in cardiac fibroblasts. Sierra is available at https://github.com/VCCRI/Sierra .

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