Zhong-Ning Cui, Hongzhi Li, Chunli Liu, Juan Wang, Chunguang Chen, Shanlei Hu, Xiaoli Zhao, Guangming Li
{"title":"Single-cell data revealed exhaustion of characteristic NK cell subpopulations and T cell subpopulations in hepatocellular carcinoma","authors":"Zhong-Ning Cui, Hongzhi Li, Chunli Liu, Juan Wang, Chunguang Chen, Shanlei Hu, Xiaoli Zhao, Guangming Li","doi":"10.18632/aging.205723","DOIUrl":null,"url":null,"abstract":"Background: The treatment and prognosis of patients with advanced hepatocellular carcinoma (HCC) have been a major medical challenge. Unraveling the landscape of tumor immune infiltrating cells (TIICs) in the immune microenvironment of HCC is of great significance to probe the molecular mechanisms. Methods: Based on single-cell data of HCC, the cell landscape was revealed from the perspective of TIICs. Special cell subpopulations were determined by the expression levels of marker genes. Differential expression analysis was conducted. The activity of each subpopulation was determined based on the highly expressed genes. CTLA4+ T-cell subpopulations affecting the prognosis of HCC were determined based on survival analysis. A single-cell regulatory network inference and clustering analysis was also performed to determine the transcription factor regulatory networks in the CTLA4+ T cell subpopulations. Results: 10 cell types were identified and NK cells and T cells showed high abundance in tumor tissues. Two NK cells subpopulations were present, FGFBP2+ NK cells, B3GNT7+ NK cells. Four T cells subpopulations were present, LAG3+ T cells, CTLA4+ T cells, RCAN3+ T cells, and HPGDS+ Th2 cells. FGFBP2+ NK cells, and CTLA4+ T cells were the exhaustive subpopulation. High CTLA4+ T cells contributed to poor prognostic outcomes and promoted tumor progression. Finally, a network of transcription factors regulated by NR3C1, STAT1, and STAT3, which were activated, was present in CTLA4+ T cells. Conclusion: CTLA4+ T cell subsets in HCC exhibited functional exhaustion characteristics that probably inhibited T cell function through a transcription factor network dominated by NR3C1, STAT1, and STAT3.","PeriodicalId":7669,"journal":{"name":"Aging (Albany NY)","volume":"3 11","pages":"6550 - 6565"},"PeriodicalIF":0.0000,"publicationDate":"2024-04-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Aging (Albany NY)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.18632/aging.205723","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Background: The treatment and prognosis of patients with advanced hepatocellular carcinoma (HCC) have been a major medical challenge. Unraveling the landscape of tumor immune infiltrating cells (TIICs) in the immune microenvironment of HCC is of great significance to probe the molecular mechanisms. Methods: Based on single-cell data of HCC, the cell landscape was revealed from the perspective of TIICs. Special cell subpopulations were determined by the expression levels of marker genes. Differential expression analysis was conducted. The activity of each subpopulation was determined based on the highly expressed genes. CTLA4+ T-cell subpopulations affecting the prognosis of HCC were determined based on survival analysis. A single-cell regulatory network inference and clustering analysis was also performed to determine the transcription factor regulatory networks in the CTLA4+ T cell subpopulations. Results: 10 cell types were identified and NK cells and T cells showed high abundance in tumor tissues. Two NK cells subpopulations were present, FGFBP2+ NK cells, B3GNT7+ NK cells. Four T cells subpopulations were present, LAG3+ T cells, CTLA4+ T cells, RCAN3+ T cells, and HPGDS+ Th2 cells. FGFBP2+ NK cells, and CTLA4+ T cells were the exhaustive subpopulation. High CTLA4+ T cells contributed to poor prognostic outcomes and promoted tumor progression. Finally, a network of transcription factors regulated by NR3C1, STAT1, and STAT3, which were activated, was present in CTLA4+ T cells. Conclusion: CTLA4+ T cell subsets in HCC exhibited functional exhaustion characteristics that probably inhibited T cell function through a transcription factor network dominated by NR3C1, STAT1, and STAT3.
背景:晚期肝细胞癌(HCC)患者的治疗和预后一直是医学界的一大难题。揭示肿瘤免疫浸润细胞(TIICs)在 HCC 免疫微环境中的分布对探究其分子机制具有重要意义。研究方法基于 HCC 的单细胞数据,从 TIICs 的角度揭示细胞格局。通过标记基因的表达水平确定特殊细胞亚群。进行了差异表达分析。根据高表达基因确定每个亚群的活性。根据生存分析确定了影响 HCC 预后的 CTLA4+ T 细胞亚群。还进行了单细胞调控网络推断和聚类分析,以确定 CTLA4+ T 细胞亚群中的转录因子调控网络。结果发现共鉴定出 10 种细胞类型,NK 细胞和 T 细胞在肿瘤组织中含量较高。存在两种 NK 细胞亚群:FGFBP2+ NK 细胞和 B3GNT7+ NK 细胞。存在四个 T 细胞亚群:LAG3+ T 细胞、CTLA4+ T 细胞、RCAN3+ T 细胞和 HPGDS+ Th2 细胞。FGFBP2+ NK细胞和CTLA4+ T细胞是详尽的亚群。高 CTLA4+ T 细胞导致预后不良,并促进肿瘤进展。最后,CTLA4+ T细胞中存在一个由NR3C1、STAT1和STAT3调控的转录因子网络,这些转录因子被激活。结论HCC中的CTLA4+ T细胞亚群表现出功能衰竭特征,可能通过NR3C1、STAT1和STAT3主导的转录因子网络抑制T细胞功能。