Meta_B cells: a computationally identified candidate immunosuppressive driver of gastric cancer metastasis revealed by single-cell analysis and machine learning

Meta_B细胞:通过单细胞分析和机器学习揭示的胃癌转移的计算识别候选免疫抑制驱动因子

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Abstract

BACKGROUND: Gastric cancer (GC) metastasis remains a major clinical challenge due to insufficient understanding of tumor microenvironment (TME) dynamics. While B cells are implicated in GC progression, their subset-specific roles in metastatic niches are poorly defined. METHODS: We analyzed gastric cancer (GC) single-cell RNA-seq data from the GEO database (GSE163558), complemented by bulk RNA-seq analysis of TCGA-STAD cohorts. Meta_B cells were identified through Seurat clustering and validated in colorectal cancer metastases (GSE166555). And we constructed a prognostic model via hdWGCNA and LASSO-Cox regression. Functional analyses included GSEA, pseudotime trajectory (Monocle2) and cell-cell communication (CellChat). RESULTS: We identified meta_B cells, a metastasis-enriched B cell subset, characterized by CLEC2B/YBX3 overexpression. Functional analyses suggested a potential immunosuppressive role associated with computational inference of BTLA-TNFRSF14 pathway activation, correlating with interactions with macrophages and other immune cells. A machine learning-derived 10-gene prognostic model effectively stratified high-risk patients with stromal-rich tumor microenvironments and predicted potential enhanced chemosensitivity to axitinib, dasatinib, olaparib, rapamycin, and ribociclib. CONCLUSIONS: Meta_B cells may represent a novel B cell subset computationally associated with immunosuppression and GC metastasis potentially mediated by the BTLA axis. Our integrative transcriptomic framework provides hypothesis-generating insights into metastatic TME remodeling and a clinically actionable tool for prognostic prediction. Targeting meta_B cells can be explored as a strategy to potentially overcome immunotherapy resistance.

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