Reproducible single-cell annotation of programs underlying T cell subsets, activation states and functions

对T细胞亚群、激活状态和功能相关程序进行可重复的单细胞注释

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作者:Dylan Kotliar # ,Michelle Curtis # ,Ryan Agnew ,Kathryn Weinand ,Aparna Nathan ,Yuriy Baglaenko ,Kamil Slowikowski ,Yu Zhao ,Pardis C Sabeti ,Deepak A Rao ,Soumya Raychaudhuri

Abstract

T cells recognize antigens and induce specialized gene expression programs (GEPs), enabling functions like proliferation, cytotoxicity and cytokine production. Traditionally, different T cell classes are thought to exhibit mutually exclusive responses, including TH1, TH2 and TH17 programs. However, single-cell RNA sequencing has revealed a continuum of T cell states without clearly distinct subsets, necessitating new analytical frameworks. Here, we introduce T-CellAnnoTator (TCAT), a pipeline that improves T cell characterization by simultaneously quantifying predefined GEPs capturing activation states and cellular subsets. Analyzing 1,700,000 T cells from 700 individuals spanning 38 tissues and five disease contexts, we identify 46 reproducible GEPs reflecting core T cell functions including proliferation, cytotoxicity, exhaustion and effector states. We experimentally demonstrate new activation programs and apply TCAT to characterize activation GEPs that predict immune checkpoint inhibitor response across multiple tumor types. Our software package starCAT generalizes this framework, enabling reproducible annotation in other cell types and tissues.

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