Jing-Min Yang, Nan Zhang, Tao Luo, Mei Yang, Wen-Kang Shen, Zhen-Lin Tan, Yun Xia, Libin Zhang, Xiaobo Zhou, Qian Lei, An-Yuan Guo
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The TCellSI methodology enables the evaluation of eight distinct T cell states—Quiescence, Regulating, Proliferation, Helper, Cytotoxicity, Progenitor exhaustion, Terminal exhaustion, and Senescence—from transcriptome data, providing T cell state scores (TCSS) for samples through specific marker gene sets and a compiled reference spectrum. Validated against sizeable pseudo-bulk and actual bulk RNA-seq data across a range of T cell types, TCellSI not only accurately characterizes T cell states but also surpasses existing well-discovered signatures in reflecting the nature of T cells. Significantly, the tool demonstrates predictive value in the immune environment, correlating T cell states with patient prognosis and responses to immunotherapy. For better utilization, the TCellSI is readily accessible through user-friendly R package and web server (https://guolab.wchscu.cn/TCellSI/). 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引用次数: 0
摘要
T 细胞是免疫系统不可或缺的组成部分,其多方面的功能由不同的 T 细胞类型及其各种状态决定。虽然有多种计算模型可以预测不同类型 T 细胞的丰度,但却缺乏评估其状态的工具来描述其静息、活化和抑制的程度。为了填补这一空白,我们利用曼-惠特尼 U 统计法建立了一种名为 T 细胞状态识别器(TCellSI)的强大而细致的评分工具。TCellSI方法能从转录组数据中评估八种不同的T细胞状态--静止、调节、增殖、辅助、细胞毒性、祖细胞衰竭、终末衰竭和衰老,通过特定的标记基因集和汇编的参考谱为样本提供T细胞状态评分(TCSS)。TCellSI通过对一系列T细胞类型的大量伪RNA-seq数据和实际RNA-seq数据进行验证,不仅能准确描述T细胞状态,而且在反映T细胞性质方面超越了现有已发现的特征。重要的是,该工具在免疫环境中显示出预测价值,将 T 细胞状态与患者预后和对免疫疗法的反应联系起来。为了更好地利用,TCellSI 可通过用户友好的 R 软件包和网络服务器 (https://guolab.wchscu.cn/TCellSI/) 轻松访问。通过深入了解个性化癌症疗法,TCellSI 有可能改善治疗结果和疗效。
TCellSI: A novel method for T cell state assessment and its applications in immune environment prediction
T cell is an indispensable component of the immune system and its multifaceted functions are shaped by the distinct T cell types and their various states. Although multiple computational models exist for predicting the abundance of diverse T cell types, tools for assessing their states to characterize their degree of resting, activation, and suppression are lacking. To address this gap, a robust and nuanced scoring tool called T cell state identifier (TCellSI) leveraging Mann–Whitney U statistics is established. The TCellSI methodology enables the evaluation of eight distinct T cell states—Quiescence, Regulating, Proliferation, Helper, Cytotoxicity, Progenitor exhaustion, Terminal exhaustion, and Senescence—from transcriptome data, providing T cell state scores (TCSS) for samples through specific marker gene sets and a compiled reference spectrum. Validated against sizeable pseudo-bulk and actual bulk RNA-seq data across a range of T cell types, TCellSI not only accurately characterizes T cell states but also surpasses existing well-discovered signatures in reflecting the nature of T cells. Significantly, the tool demonstrates predictive value in the immune environment, correlating T cell states with patient prognosis and responses to immunotherapy. For better utilization, the TCellSI is readily accessible through user-friendly R package and web server (https://guolab.wchscu.cn/TCellSI/). By offering insights into personalized cancer therapies, TCellSI has the potential to improve treatment outcomes and efficacy.