电池类型
推论
背景(考古学)
计算生物学
转录组
生物
细胞
基因表达
计算机科学
基因
人工智能
遗传学
古生物学
作者
Dylan Cable,Evan Murray,Vignesh Shanmugam,Simon Zhang,Luli S. Zou,Michael Diao,Haiqi Chen,Evan Z. Macosko,Rafael A. Irizarry,Fei Chen
出处
期刊:Nature Methods
[Nature Portfolio]
日期:2022-09-01
卷期号:19 (9): 1076-1087
被引量:66
标识
DOI:10.1038/s41592-022-01575-3
摘要
A central problem in spatial transcriptomics is detecting differentially expressed (DE) genes within cell types across tissue context. Challenges to learning DE include changing cell type composition across space and measurement pixels detecting transcripts from multiple cell types. Here, we introduce a statistical method, cell type-specific inference of differential expression (C-SIDE), that identifies cell type-specific DE in spatial transcriptomics, accounting for localization of other cell types. We model gene expression as an additive mixture across cell types of log-linear cell type-specific expression functions. C-SIDE’s framework applies to many contexts: DE due to pathology, anatomical regions, cell-to-cell interactions and cellular microenvironment. Furthermore, C-SIDE enables statistical inference across multiple/replicates. Simulations and validation experiments on Slide-seq, MERFISH and Visium datasets demonstrate that C-SIDE accurately identifies DE with valid uncertainty quantification. Last, we apply C-SIDE to identify plaque-dependent immune activity in Alzheimer’s disease and cellular interactions between tumor and immune cells. We distribute C-SIDE within the R package https://github.com/dmcable/spacexr . C-SIDE facilitates accurate cell type-specific differential expression analysis for multiple spatially resolved transcriptomics technologies by cell type mixture modeling.
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