Meng Xiang-Yu, Yang Dong, Zhang Bao, Zhang Tao, Zheng Zhi-Chao, Zhao Yan
Department of Gastric Surgery, Cancer Hospital of China Medical University/Liaoning Cancer Hospital & Institute/The Liaoning Provincial Key Laboratory of Interdisciplinary Research on Gastrointestinal Tumor Combining Medicine with Engineering, Shenyang 110042, Liaoning Province, China.
World J Gastrointest Oncol. 2024 Jul 15;16(7):3097-3117. doi: 10.4251/wjgo.v16.i7.3097.
Gastric cancer (GC) is one of the most common malignancies worldwide. Glycolysis has been demonstrated to be pivotal for the carcinogenesis of GC.
To develop a glycolysis-based gene signature for prognostic evaluation in GC patients.
Differentially expressed genes correlated with glycolysis were identified in stomach adenocarcinoma data (STAD). A risk score was established through a univariate Cox and least absolute shrinkage and selection operator analysis. The model was evaluated using the area under the receiver operating characteristic curves. RNA-sequencing data from high- and low-glycolysis groups of STAD patients were analyzed using Cibersort algorithm and Spearman correlation to analyze the interaction of immune cell infiltration and glycolysis. Multiomics characteristics in different glycolysis status were also analyzed.
A five-gene signature comprising syndecan 2, versican, malic enzyme 1, pyruvate carboxylase and SRY-box transcription factor 9 was constructed. Patients were separated to high- or low-glycolysis groups according to risk scores. Overall survival of patients with high glycolysis was poorer. The sensitivity and specificity of the model in prediction of survival of GC patients were also observed by receiver operating characteristic curves. A nomogram including clinicopathological characteristics and the risk score also showed good prediction for 3- and 5-year overall survival. Gene set variation analysis showed that high-glycolysis patients were related to dysregulation of pancreas beta cells and estrogen late pathways, and low-glycolysis patients were related to Myc targets, oxidative phosphorylation, mechanistic target of rapamycin complex 1 signaling and G2M checkpoint pathways. Tumor-infiltrating immune cells and multiomics analysis suggested that the different glycolysis status was significantly correlated with multiple immune cell infiltration. The patients with high glycolysis had lower tumor mutational burden and neoantigen load, higher incidence of microsatellite instability and lower chemosensitivity. High glycolysis status was often found among patients with grade 2/3 cancer or poor prognosis.
The genetic characteristics revealed by glycolysis could predict the prognosis of GC. High glycolysis significantly affects GC phenotype, but the detailed mechanism needs to be further studied.
胃癌(GC)是全球最常见的恶性肿瘤之一。糖酵解已被证明对胃癌的致癌作用至关重要。
开发一种基于糖酵解的基因特征用于评估GC患者的预后。
在胃腺癌数据(STAD)中鉴定与糖酵解相关的差异表达基因。通过单变量Cox和最小绝对收缩与选择算子分析建立风险评分。使用受试者工作特征曲线下面积评估模型。使用Cibersort算法和Spearman相关性分析STAD患者高糖酵解组和低糖酵解组的RNA测序数据,以分析免疫细胞浸润与糖酵解的相互作用。还分析了不同糖酵解状态下的多组学特征。
构建了一个由syndecan 2、versican、苹果酸酶1、丙酮酸羧化酶和SRY盒转录因子9组成的五基因特征。根据风险评分将患者分为高糖酵解组或低糖酵解组。高糖酵解患者的总生存期较差。通过受试者工作特征曲线也观察到该模型在预测GC患者生存方面的敏感性和特异性。包括临床病理特征和风险评分的列线图对3年和5年总生存期也显示出良好的预测能力。基因集变异分析表明,高糖酵解患者与胰腺β细胞和雌激素晚期途径的失调有关,低糖酵解患者与Myc靶点、氧化磷酸化、雷帕霉素复合物1信号传导的机制靶点和G2M检查点途径有关。肿瘤浸润免疫细胞和多组学分析表明,不同的糖酵解状态与多种免疫细胞浸润显著相关。高糖酵解患者的肿瘤突变负担和新抗原负荷较低,微卫星不稳定性发生率较高,化疗敏感性较低。高糖酵解状态常见于2/3级癌症或预后不良的患者中。
糖酵解揭示的遗传特征可预测GC的预后。高糖酵解显著影响GC表型,但具体机制有待进一步研究。