Sun Hui
Department of Surgical Oncology, Weifang People's Hospital, Weifang, Shandong 261041, P.R. China.
Oncol Lett. 2016 Jan;11(1):525-530. doi: 10.3892/ol.2015.3929. Epub 2015 Nov 17.
The present study aimed to identify genes with a differential pattern of expression in gastric cancer (GC), and to find novel molecular biomarkers for GC diagnosis and therapeutic treatment. The gene expression profile of GSE19826, including 12 GC samples and 15 normal controls, was downloaded from the Gene Expression Omnibus database. Differentially-expressed genes (DEGs) were screened in the GC samples compared with the normal controls. Two-way hierarchical clustering of DEGs was performed to distinguish the normal controls from the GC samples. The co-expression coefficient was analyzed among the DEGs using the data from COXPRESdb. The gene co-expression network was constructed based on the DEGs using Cytoscape software, and modules in the network were analyzed by ClusterOne and Bingo. Furthermore, enrichment analysis of the DEGs in the modules was performed using the Database for Annotation, Visualization and Integrated Discovery. In total, 596 DEGs in the GC samples and 57 co-expression gene pairs were identified. A total of 7 genes were enriched in the same module, for which the function was phosphate transport and which was annotated to participate in the extracellular matrix-receptor interaction pathway. These genes were collagen, type VI, α3 (COL6A3), COL1A2, COL1A1, COL5A2, thrombospondin 2, COL11A1 and COL5A1. Overall, the present study identified several biomarkers for GC using the gene expression profiling of human GC samples. The COL family is a promising prognostic marker for GC. Gene expression products represent candidate biomarkers endowed with great potential for the early screening and therapy of GC patients.
本研究旨在鉴定在胃癌(GC)中具有差异表达模式的基因,并寻找用于GC诊断和治疗的新型分子生物标志物。从基因表达综合数据库下载了GSE19826的基因表达谱,包括12个GC样本和15个正常对照。与正常对照相比,在GC样本中筛选差异表达基因(DEG)。对DEG进行双向层次聚类以区分正常对照和GC样本。使用来自COXPRESdb的数据分析DEG之间的共表达系数。基于DEG使用Cytoscape软件构建基因共表达网络,并通过ClusterOne和Bingo分析网络中的模块。此外,使用注释、可视化和综合发现数据库对模块中的DEG进行富集分析。总共鉴定出GC样本中的596个DEG和57个共表达基因对。共有7个基因富集在同一模块中,其功能是磷酸盐转运,并被注释为参与细胞外基质-受体相互作用途径。这些基因是VI型胶原α3(COL6A3)、COL1A2、COL1A1、COL5A2、血小板反应蛋白2、COL11A1和COL5A1。总体而言,本研究利用人类GC样本的基因表达谱鉴定了几种GC生物标志物。COL家族是GC有前景的预后标志物。基因表达产物代表了对GC患者进行早期筛查和治疗具有巨大潜力的候选生物标志物。