Single-cell data revealed the regulatory mechanism of TNK cell heterogeneity in liver metastasis from gastric cancer.

IF 2.8 4区 医学 Q3 ENDOCRINOLOGY & METABOLISM
Jun Gao, Yujuan Liu, Lu Tao, Peng Zeng, Guiying Ye, Ying Zheng, Nai Zhang
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引用次数: 0

Abstract

Aim: The present work set out to classify cell subpopulations related to liver metastasis from gastric cancer (GC) and the mechanisms of their interactions with other immune cell subpopulations.

Background: GC is characterized by a high degree of heterogeneity and liver metastasis. Exploring the mechanism of liver metastasis of GC from the perspective of heterogeneity of the tumor microenvironment (TME) might help improve the efficacy of GC treatment.

Objective: Based on the cellular subpopulation characteristics of GC with liver metastasis, the regulatory mechanisms contributing to GC progression were analyzed, with special focuses on the roles of signaling pathways, transcription factors (TFs) and ligand-receptor pairs.

Methods: The GSE163558 dataset was downloaded from the Gene Expression Omnibus (GEO) database to collect single-cell transcriptomic data of GC patients and their metastasis groups for cell clustering and relevant analyses. Differentially expressed genes (DEGs) in the GC and GC liver metastasis groups were screened and subjected to Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) enrichment analysis. SCENIC analysis was used to mine TFs that affected cellular subpopulations during liver metastasis from GC. The relative expression levels of TFs in GC were determined using qRT-PCR. Transwell and wound healing assays were utilized to verify the regulation of the TFs on the migration and invasion of GC cells. Interaction network between the cellular subpopulations was developed applying CellChat.

Results: Single-cell clustering was performed to group six major cell subpopulations, namely, Myeloid cells, B cells, Mast cells, Epithelial cells, Fibroblasts, and TNK cells, among which the number of TNK cells was significantly increased in the GC liver metastasis group. Differentially enriched pathways of TNK cells between GC and GC liver metastasis groups mainly included IL-17 and Pi3k-Akt signaling pathways. TNK cell subsets could be further categorized into CD8 T cells, Exhausted T cells, NK cells, NKT cells, and Treg cells, with the GC liver metastasis group showing significantly more CD8 T cells and NKT cells. FOS and JUNB were the TFs of TNK cell marker genes that contributed to liver metastasis from GC and the invasion and migration of GC cell lines. Significant differences in immune cell communication ligand-receptor pairs existed between the GC and GC liver metastasis groups.

Conclusion: This study revealed the critical role of TNK cell subsets in GC with liver metastasis applying single-cell transcriptomics analysis. The findings provided an important theoretical basis for developing novel therapies to inhibit liver metastasis from GC.

单细胞数据揭示了胃癌肝转移中TNK细胞异质性的调控机制。
目的:本研究旨在对与胃癌(GC)肝转移相关的细胞亚群进行分类,并研究它们与其他免疫细胞亚群的相互作用机制:背景:胃癌具有高度异质性和肝转移的特点。背景:胃癌具有高度异质性和肝转移的特点,从肿瘤微环境(TME)异质性的角度探讨胃癌肝转移的机制可能有助于提高胃癌的治疗效果:根据GC肝转移的细胞亚群特征,分析GC进展的调控机制,重点关注信号通路、转录因子(TFs)和配体-受体对的作用:从基因表达总库(GEO)数据库下载GSE163558数据集,收集GC患者及其转移组的单细胞转录组数据,进行细胞聚类和相关分析。筛选GC组和GC肝转移组中的差异表达基因(DEGs),并对其进行基因本体(GO)和京都基因组百科全书(KEGG)富集分析。SCENIC 分析用于挖掘影响 GC 肝转移过程中细胞亚群的 TFs。利用 qRT-PCR 测定了 TFs 在 GC 中的相对表达水平。透孔试验和伤口愈合试验验证了TFs对GC细胞迁移和侵袭的调控作用。应用 CellChat 开发了细胞亚群之间的相互作用网络:结果:通过单细胞聚类对髓系细胞、B细胞、肥大细胞、上皮细胞、成纤维细胞和TNK细胞六大细胞亚群进行了分组,其中TNK细胞的数量在GC肝转移组中显著增加。GC肝转移组和GC肝转移组TNK细胞的不同富集通路主要包括IL-17和Pi3k-Akt信号通路。TNK细胞亚群可进一步分为CD8 T细胞、衰竭T细胞、NK细胞、NKT细胞和Treg细胞,其中GC肝转移组的CD8 T细胞和NKT细胞明显增多。FOS和JUNB是TNK细胞标记基因的TFs,有助于GC肝转移和GC细胞株的侵袭和迁移。免疫细胞通讯配体-受体对在GC和GC肝转移组之间存在显著差异:本研究应用单细胞转录组学分析揭示了 TNK 细胞亚群在 GC 肝转移中的关键作用。研究结果为开发抑制GC肝转移的新型疗法提供了重要的理论依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Discover. Oncology
Discover. Oncology Medicine-Endocrinology, Diabetes and Metabolism
CiteScore
2.40
自引率
9.10%
发文量
122
审稿时长
5 weeks
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