Li Xiaoxiao, Wang Xiaoxuan, Yu Fuxiang, Li Zhongguo, Chen Daxin, Qi Yingxue, Lu Zhongyu, Liu Yaqin, Chen Dongsheng, Wu Yaoqiang
Department of Thoracic Surgery, The First Hospital of China Medical University, Shenyang, Liaoning, China.
The state Key Laboratory of Neurology and Oncology Drug Development, Jiangsu Simcere Diagnostics Co.,Ltd., Nanjing Simcere Medical Laboratory Science Co., Ltd., Nanjing, Jiangsu, China.
Transl Oncol. 2025 Feb;52:102232. doi: 10.1016/j.tranon.2024.102232. Epub 2024 Dec 7.
Gastric cancer (GC) poses a major global health challenge because of its unfavorable prognosis. Elevated telomerase activity has been linked to the rapid growth and invasiveness of GC tumors. Investigating the expression profiles of telomerase could improve our understanding of the mechanisms underlying telomere-related GC advancement and its applicability as potential targets for diverse therapeutic strategies for GC.
The TCGA and GEO databases were utilized to access transcriptome and clinical data related to GC. After assessing differentially expressed genes (DEGs), a prognostic risk model was developed through Cox univariate regression, LASSO-Cox regression. The prognostic risk model was validated using data from the GSE62254 cohort. The significant influence of the risk model on the tumor immune microenvironment (TIME) and its sensitivity to various drugs was assessed.
Differential expression analysis identified 328 significantly telomere-related DEGs in GC, with 35 of them showing a significant association with GC prognosis. A predictive risk model composed of four telomere-related genes (TRGs) was established, enabling the accurate stratification of GC patients into two distinct prognostic groups. The LASSO risk model demonstrated notable variations in immune-cell infiltration and drug sensitivity patterns between high- and low-risk groups.
The study establishes suggestive relationships between four TRGs (LRRN1, SNCG, GAMT, and PDE1B) and the prognosis of GC. The comprehensive characterization of the TRG model reveals their possible roles in the prognosis, TIME, and drug sensitivity in GC.
胃癌(GC)因其预后不佳而成为全球主要的健康挑战。端粒酶活性升高与GC肿瘤的快速生长和侵袭性有关。研究端粒酶的表达谱可以增进我们对端粒相关的GC进展机制的理解,以及其作为GC多种治疗策略潜在靶点的适用性。
利用TCGA和GEO数据库获取与GC相关的转录组和临床数据。在评估差异表达基因(DEG)后,通过Cox单变量回归、LASSO-Cox回归建立预后风险模型。使用来自GSE62254队列的数据验证预后风险模型。评估风险模型对肿瘤免疫微环境(TIME)的显著影响及其对各种药物的敏感性。
差异表达分析在GC中鉴定出328个与端粒显著相关的DEG,其中35个与GC预后显著相关。建立了一个由四个与端粒相关的基因(TRG)组成的预测风险模型,能够将GC患者准确分层为两个不同的预后组。LASSO风险模型显示高风险组和低风险组在免疫细胞浸润和药物敏感性模式上存在显著差异。
该研究建立了四个TRG(LRRN1、SNCG、GAMT和PDE1B)与GC预后之间的潜在关系。TRG模型的全面表征揭示了它们在GC预后中的潜在作用,以及对TIME和药物敏感性的影响。