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利用MetaTF从单细胞转录组数据中准确推断转录因子活性以解析细胞身份

Accurate Transcription Factor Activity Inference to Decipher Cell Identity from Single-Cell Transcriptomic Data with MetaTF.

作者信息

Hu Yongfei, Zhu Yuanyuan, Tang Guangjue, Shan Ming, Tan Puwen, Yi Ying, Zhang Xiyuan, Liu Man, Li Xinyu, Wu Le, Chen Jia, Zheng Hailong, Huang Yan, Li Zhuan, Li Xiaobo, Wang Dong

机构信息

Department of Bioinformatics, Guangdong Province Key Laboratory of Molecular Tumor Pathology, School of Basic Medical Sciences, Southern Medical University, Guangzhou, 510515, China.

Dermatology Hospital, Southern Medical University, Guangzhou, 510091, China.

出版信息

Adv Sci (Weinh). 2025 Jun;12(23):e10745. doi: 10.1002/advs.202410745. Epub 2025 May 21.

Abstract

Cellular heterogeneity within cancer tissues determines cancer progression and treatment response. Single-cell RNA sequencing (scRNA-seq) has provided a powerful approach for investigating the cellular heterogeneity of both cancer cells and stroma cells in the tumor microenvironment. However, the common practice to characterize cell identity based on the similarity of their gene expression profiles may not really indicate distinct cellular populations with unique roles. Generally, the cell identity and function are orchestrated by the expression of given specific genes tightly regulated by transcription factors (TFs). Therefore, deciphering TF activity is essential for gaining a better understanding of the uniqueness and functionality of each cell type. Herein, metaTF, a computational framework designed to infer TF activity in scRNA-seq data, is introduced and existing methods are outperformed for estimating TF activity. It presents the improved effectiveness in characterizing cell identity during mouse hematopoietic stem cell development. Furthermore, metaTF provides a superior characterization of the functional identity of breast cancer epithelial cells, and identifies a novel subset of neural-regulated T cells within the tumor immune microenvironment, which potentially activates BCL6 in response to neural-related signals. Overall, metaTF enables robust TF activity analysis from scRNA-seq data, significantly enhancing the characterization of cell identity and function.

摘要

癌症组织内的细胞异质性决定了癌症的进展和治疗反应。单细胞RNA测序(scRNA-seq)为研究肿瘤微环境中癌细胞和基质细胞的细胞异质性提供了一种强大的方法。然而,基于基因表达谱的相似性来表征细胞身份的常见做法可能并不真正表明具有独特作用的不同细胞群体。一般来说,细胞身份和功能是由受转录因子(TFs)严格调控的特定基因的表达所协调的。因此,解读TF活性对于更好地理解每种细胞类型的独特性和功能至关重要。在此,介绍了metaTF,这是一个旨在推断scRNA-seq数据中TF活性的计算框架,并且在估计TF活性方面优于现有方法。它在表征小鼠造血干细胞发育过程中的细胞身份方面表现出更高的有效性。此外,metaTF对乳腺癌上皮细胞的功能身份进行了更优的表征,并在肿瘤免疫微环境中鉴定出一个新的神经调节T细胞亚群,该亚群可能响应神经相关信号激活BCL6。总体而言,metaTF能够从scRNA-seq数据中进行可靠的TF活性分析,显著增强对细胞身份和功能的表征。

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