Military Institute of Traditional Medicine, Hanoi, Vietnam.
Vietnam Military Medical University, Hanoi, Vietnam.
Asian Pac J Cancer Prev. 2024 Mar 1;25(3):885-892. doi: 10.31557/APJCP.2024.25.3.885.
Gastric cancer (GC) is one of the most common malignancies and ranks third in terms of cancer-related mortality. This study aims to identify the hub genes and potential mechanisms in GC using a bioinformatics approach.
Microarray data GSE54129, GSE79973, GSE55696 were extracted from the Gene Expression Omnibus (GEO) database. Differentially expressed genes (DEGs) was identified using Benjamini-Hochberg method in the limma package. GO and KEGG pathway enrichment analyses of the DEGs were conducted. Furthermore, protein-protein interaction network was constructed the STRING platform, and the hub genes were discovered using Maximal Clique Centrality method via cytoHubba. The predictive significance of hub genes was evaluated through GSE15459 dataset.
A total of 73 genes was identified as DEGs in GC. Volcano plots and heatmaps of DEGs were visualized. Functional enrichment analysis revealed that the genes were mostly enriched in response to xenobiotic stimulus, digestion, cellular hormone metabolic process, extracellular matrix structural constituent, calcium-dependent cysteine-type endopeptidase activity, aromatase activity, apical part of cell, basal part of cell, and apical plasma membrane. Regarding KEGG pathway-enrichment, the genes were mainly involved in Drug metabolism-cytochrome P450, Retinol metabolism, Chemical carcinogenesis-DNA adducts, Gastric acid secretion, and Metabolism of xenobiotics by cytochrome P450. By combining the results of Cytohubba, the top five intersecting genes identified were SPP1, INHBA, MMP7, THBS2 and FAP. Kapplan-Meier analysis results showed that these 5 hub genes were highly related to the overall survival of patients.
SPP1, INHBA, MMP7, THBS2, and FAP were identified as prospective biomarkers and therapeutic targets for GC that might be utilized for prognostic evaluation and scheme selection.
胃癌(GC)是最常见的恶性肿瘤之一,其癌症相关死亡率排名第三。本研究旨在采用生物信息学方法鉴定 GC 中的枢纽基因和潜在机制。
从基因表达综合数据库(GEO)中提取微阵列数据 GSE54129、GSE79973、GSE55696。使用 limma 包中的 Benjamini-Hochberg 方法鉴定差异表达基因(DEGs)。对 DEGs 进行 GO 和 KEGG 通路富集分析。此外,在 STRING 平台上构建蛋白质-蛋白质相互作用网络,通过 cytoHubba 中的最大团中心度法发现枢纽基因。通过 GSE15459 数据集评估枢纽基因的预测意义。
鉴定出 73 个 GC 中的 DEG。可视化 DEG 的火山图和热图。功能富集分析表明,这些基因主要富集于对外源物刺激的反应、消化、细胞激素代谢过程、细胞外基质结构成分、钙依赖性半胱氨酸内肽酶活性、芳香酶活性、细胞顶部、细胞底部和顶部质膜。关于 KEGG 通路富集,这些基因主要参与药物代谢-细胞色素 P450、视黄醇代谢、化学致癌-DNA 加合物、胃酸分泌和细胞色素 P450 对外源物的代谢。通过结合 Cytohubba 的结果,确定了前 5 个相互重叠的基因 SPP1、INHBA、MMP7、THBS2 和 FAP。Kapplan-Meier 分析结果表明,这 5 个枢纽基因与患者的总生存率高度相关。
SPP1、INHBA、MMP7、THBS2 和 FAP 被鉴定为 GC 的有前途的生物标志物和治疗靶点,可用于预后评估和方案选择。