Construction of a Prognostic Model for Lysosome-dependent Cell Death in Gastric Cancer Based on Single-cell RNA-seq and Bulk RNA-seq Data.

Peng Ni, Kai Xin Guo, Tian Yi Liang, Xin Shuang Fan, Yan Qiao Hua, Yang Ye Gao, Shuai Yin Chen, Guang Cai Duan, Rong Guang Zhang
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Abstract

Objective: To identify prognostic genes associated with lysosome-dependent cell death (LDCD) in patients with gastric cancer (GC).

Methods: Differentially expressed genes (DEGs) were identified using The Cancer Genome Atlas - Stomach Adenocarcinoma. Weighted gene co-expression network analysis was performed to identify the key module genes associated with LDCD score. Candidate genes were identified by DEGs and key module genes. Univariate Cox regression analysis, and least absolute shrinkage and selection operator regression and multivariate Cox regression analyses were performed for the selection of prognostic genes, and risk module was established. Subsequently, key cells were identified in the single-cell dataset (GSE183904), and prognostic gene expression was analyzed. Cell proliferation and migration were assessed using the Cell Counting Kit-8 assay and the wound healing assay.

Results: A total of 4,465 DEGs, 95 candidate genes, and 4 prognostic genes, including C19orf59, BATF2, TNFAIP2, and TNFSF18, were identified in the analysis. Receiver operating characteristic curves indicated the excellent predictive power of the risk model. Three key cell types (B cells, chief cells, and endothelial/pericyte cells) were identified in the GSE183904 dataset. C19orf59 and TNFAIP2 exhibited predominant expression in macrophage species, whereas TNFAIP2 evolved over time in endothelial/pericyte cells and chief cells. Functional experiments confirmed that interfering with C19orf59 inhibited proliferation and migration in GC cells.

Conclusion: C19orf59, BATF2, TNFAIP2, and TNFSF18 are prognostic genes associated with LDCD in GC. Furthermore, the risk model established in this study showed robust predictive power.

基于单细胞RNA-seq和整体RNA-seq数据构建胃癌溶酶体依赖性细胞死亡预后模型
目的:探讨胃癌(GC)患者溶酶体依赖性细胞死亡(LDCD)的预后相关基因。方法:采用胃癌基因组图谱-胃腺癌鉴别差异表达基因(DEGs)。加权基因共表达网络分析确定与LDCD评分相关的关键模块基因。候选基因通过deg和关键模块基因进行鉴定。采用单因素Cox回归分析、最小绝对收缩、选择算子回归和多因素Cox回归分析筛选预后基因,建立风险模块。随后,在单细胞数据集(GSE183904)中鉴定关键细胞,并分析预后基因表达。采用细胞计数试剂盒-8法和伤口愈合法评估细胞增殖和迁移。结果:共鉴定出4465个deg, 95个候选基因和4个预后基因,包括C19orf59、BATF2、TNFAIP2和TNFSF18。受试者工作特征曲线表明风险模型具有良好的预测能力。在GSE183904数据集中鉴定了三种关键细胞类型(B细胞、主细胞和内皮/周细胞)。C19orf59和TNFAIP2在巨噬细胞中主要表达,而TNFAIP2在内皮/周细胞和主细胞中随着时间的推移而进化。功能实验证实,干扰C19orf59可抑制胃癌细胞的增殖和迁移。结论:C19orf59、BATF2、TNFAIP2和TNFSF18是与GC中LDCD相关的预后基因。此外,本研究建立的风险模型具有较强的预测能力。
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