An automatic annotation tool and reference database for T cell subtypes and states at single-cell resolution

IF 21.1 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Science Bulletin Pub Date : 2025-05-30 Epub Date: 2025-03-17 DOI:10.1016/j.scib.2025.02.043
Wen-Kang Shen , Chu-Yu Zhang , Yi-Min Gu , Tao Luo , Si-Yi Chen , Tao Yue , Gui-Yan Xie , Yu Liao , Yong Yuan , Qian Lei , An-Yuan Guo
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Abstract

T cells have various subtypes and states with different functions. However, a reference list and automated annotation tool for T cell subtypes and states are lacking, which is critical for analyzing and comparing T cells under various conditions. We constructed the largest human T cell reference, containing 1,348,268 T cells from 35 conditions and 16 tissues. We classified T cells into 33 subtypes and further stratified them into 68 categories according to subtype and state. Based on this reference, we developed a tool named STCAT to automatically annotate T cells from scRNA-seq data by hierarchical models and marker correction. The accuracy of STCAT was 28% higher than that of existing tools validated on six independent datasets, including cancer and healthy samples. Using STCAT, we consistently discovered that CD4+ Th17 cells were enriched in late-stage lung cancer patients in multiple datasets, whereas MAIT cells were prevalent in milder-stage COVID-19 patients. We also confirmed a decrease in Treg cytotoxicity in post-treatment ovarian cancer. Systematic landscape analyses of CD4+ and CD8+ T cell references revealed that CD4+ Treg cells were enriched in tumor samples and that CD8+ naive-related cells were abundant in healthy individuals. Finally, we deposited all the T cell references and annotations into a TCellAtlas (https://guolab.wchscu.cn/TCellAtlas) database, which allows users to browse T cell expression profiles and analyze customized scRNA-seq data by STCAT. In conclusion, comprehensive human T cell subtypes and states reference, automated annotation tool, and database will greatly facilitate research on T cell immunity and tumor immunology.

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一个自动注释工具和参考数据库,用于T细胞亚型和状态在单细胞分辨率。
T细胞有不同的亚型和状态,具有不同的功能。然而,缺乏T细胞亚型和状态的参考列表和自动注释工具,这对于分析和比较不同条件下的T细胞至关重要。我们构建了最大的人类T细胞参比,包含来自35种条件和16种组织的1,348,268个T细胞。我们将T细胞分为33个亚型,并根据亚型和状态将其进一步分为68类。在此基础上,我们开发了一个名为STCAT的工具,通过分层模型和标记校正,自动对scRNA-seq数据中的T细胞进行注释。STCAT的准确性比在六个独立数据集(包括癌症和健康样本)上验证的现有工具高28%。使用STCAT,我们一致发现CD4+ Th17细胞在多个数据集中的晚期肺癌患者中富集,而MAIT细胞在轻度COVID-19患者中普遍存在。我们还证实治疗后卵巢癌的Treg细胞毒性降低。CD4+和CD8+ T细胞对照的系统景观分析显示,CD4+ Treg细胞在肿瘤样本中丰富,CD8+ naive相关细胞在健康个体中丰富。最后,我们将所有T细胞参考文献和注释存入TCellAtlas (https://guolab.wchscu.cn/TCellAtlas)数据库,该数据库允许用户浏览T细胞表达谱并通过STCAT分析定制的scRNA-seq数据。综上所述,全面的人类T细胞亚型和状态参考、自动化注释工具和数据库将极大地促进T细胞免疫和肿瘤免疫学的研究。
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来源期刊
Science Bulletin
Science Bulletin MULTIDISCIPLINARY SCIENCES-
CiteScore
24.60
自引率
2.10%
发文量
8092
期刊介绍: Science Bulletin (Sci. Bull., formerly known as Chinese Science Bulletin) is a multidisciplinary academic journal supervised by the Chinese Academy of Sciences (CAS) and co-sponsored by the CAS and the National Natural Science Foundation of China (NSFC). Sci. Bull. is a semi-monthly international journal publishing high-caliber peer-reviewed research on a broad range of natural sciences and high-tech fields on the basis of its originality, scientific significance and whether it is of general interest. In addition, we are committed to serving the scientific community with immediate, authoritative news and valuable insights into upcoming trends around the globe.
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