生物
转录组
计算生物学
单细胞分析
细胞
单细胞测序
RNA序列
潜变量
基因
核糖核酸
基因表达
鉴定(生物学)
电池类型
表型
遗传学
计算机科学
人工智能
外显子组测序
植物
作者
Florian Buettner,Kedar Nath Natarajan,Francesco Paolo Casale,Valentina Proserpio,Antonio Scialdone,Fabian J. Theis,Sarah A. Teichmann,John C. Marioni,Oliver Stegle
摘要
Hidden cell sub-populations are detected by accounting for confounding variation inthe analysis of single-cell RNA-seq data. Recent technical developments have enabled the transcriptomes of hundreds of cells to be assayed in an unbiased manner, opening up the possibility that new subpopulations of cells can be found. However, the effects of potential confounding factors, such as the cell cycle, on the heterogeneity of gene expression and therefore on the ability to robustly identify subpopulations remain unclear. We present and validate a computational approach that uses latent variable models to account for such hidden factors. We show that our single-cell latent variable model (scLVM) allows the identification of otherwise undetectable subpopulations of cells that correspond to different stages during the differentiation of naive T cells into T helper 2 cells. Our approach can be used not only to identify cellular subpopulations but also to tease apart different sources of gene expression heterogeneity in single-cell transcriptomes.
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