电池类型
计算生物学
计算机科学
概率逻辑
肿瘤微环境
注释
细胞
生物
人工智能
遗传学
癌症
作者
Allen W. Zhang,Ciara H. O’Flanagan,Elizabeth A. Chavez,Jamie Lim,Nicholas Ceglia,Andrew McPherson,Matt Wiens,Pascale Walters,Tim Hon Man Chan,Brittany Hewitson,Daniel Lai,Anja Mottok,Clémentine Sarkozy,Lauren C. Chong,Tomohiro Aoki,Xuehai Wang,Andrew P. Weng,Jessica N. McAlpine,Samuel Aparício,Christian Steidl,Kieran R. Campbell,Sohrab P. Shah
出处
期刊:Nature Methods
[Springer Nature]
日期:2019-09-09
卷期号:16 (10): 1007-1015
被引量:285
标识
DOI:10.1038/s41592-019-0529-1
摘要
Single-cell RNA sequencing has enabled the decomposition of complex tissues into functionally distinct cell types. Often, investigators wish to assign cells to cell types through unsupervised clustering followed by manual annotation or via ‘mapping’ to existing data. However, manual interpretation scales poorly to large datasets, mapping approaches require purified or pre-annotated data and both are prone to batch effects. To overcome these issues, we present CellAssign, a probabilistic model that leverages prior knowledge of cell-type marker genes to annotate single-cell RNA sequencing data into predefined or de novo cell types. CellAssign automates the process of assigning cells in a highly scalable manner across large datasets while controlling for batch and sample effects. We demonstrate the advantages of CellAssign through extensive simulations and analysis of tumor microenvironment composition in high-grade serous ovarian cancer and follicular lymphoma. CellAssign uses a probabilistic model to assign single cells to a given cell type defined by known marker genes, enabling automated annotation of cell types present in a tumor microenvironment.
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