Department of Clinical Lab, The Children's Hospital of Tianjin (Children's Hospital of Tianjin University), No. 238, Longyan Road, Beichen District, Tianjin, 300000, PR China.
Department of Medical Laboratory, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan Province, China.
J Ovarian Res. 2021 Jul 12;14(1):92. doi: 10.1186/s13048-021-00837-6.
Ovarian cancer is one of the most common gynecological tumors, and among gynecological tumors, its incidence and mortality rates are fairly high. However, the pathogenesis of ovarian cancer is not clear. The present study aimed to investigate the differentially expressed genes and signaling pathways associated with ovarian cancer by bioinformatics analysis.
The data from three mRNA expression profiling microarrays (GSE14407, GSE29450, and GSE54388) were obtained from the Gene Expression Omnibus (GEO) database. Differentially expressed genes between ovarian cancer tissues and normal tissues were identified using R software. The overlapping genes from the three GEO datasets were identified, and profound analysis was performed. The overlapping genes were used for pathway and Gene Ontology (GO) functional enrichment analysis using the Metascape online tool. Protein-protein interactions were analyzed with the Search Tool for the Retrieval of Interacting Genes/Proteins (STRING). Subnetwork models were selected using the plugin molecular complex detection (MCODE) application in Cytoscape. Kaplan-Meier curves were used to analyze the univariate survival outcomes of the hub genes. The Human Protein Atlas (HPA) database and Gene Expression Profiling Interactive Analysis (GEPIA) were used to validate hub genes.
In total, 708 overlapping genes were identified through analyses of the three microarray datasets (GSE14407, GSE29450, and GSE54388). These genes mainly participated in mitotic sister chromatid segregation, regulation of chromosome segregation and regulation of the cell cycle process. High CCNA2 expression was associated with poor overall survival (OS) and tumor stage. The expression of CDK1, CDC20, CCNB1, BUB1B, CCNA2, KIF11, CDCA8, KIF2C, NDC80 and TOP2A was increased in ovarian cancer tissues compared with normal tissues according to the Oncomine database. Higher expression levels of these seven candidate genes in ovarian cancer tissues compared with normal tissues were observed by GEPIA. The protein expression levels of CCNA2, CCNB1, CDC20, CDCA8, CDK1, KIF11 and TOP2A were high in ovarian cancer tissues, which was further confirmed via the HPA database.
Taken together, our study provided evidence concerning the altered expression of genes in ovarian cancer tissues compared with normal tissues. In vivo and in vitro experiments are required to verify the results of the present study.
卵巢癌是最常见的妇科肿瘤之一,在妇科肿瘤中,其发病率和死亡率都相当高。然而,卵巢癌的发病机制尚不清楚。本研究旨在通过生物信息学分析探讨与卵巢癌相关的差异表达基因和信号通路。
从基因表达综合数据库(GEO)中获取了三个 mRNA 表达谱微阵列(GSE14407、GSE29450 和 GSE54388)的数据。使用 R 软件识别卵巢癌组织与正常组织之间的差异表达基因。从三个 GEO 数据集识别重叠基因,并进行深入分析。使用 Metascape 在线工具对重叠基因进行通路和基因本体论(GO)功能富集分析。使用 Search Tool for the Retrieval of Interacting Genes/Proteins(STRING)分析蛋白质-蛋白质相互作用。使用 Cytoscape 中的插件分子复合物检测(MCODE)应用程序选择子网络模型。使用 Kaplan-Meier 曲线分析关键基因的单变量生存结果。使用人类蛋白质图谱(HPA)数据库和基因表达谱交互式分析(GEPIA)验证关键基因。
通过对三个微阵列数据集(GSE14407、GSE29450 和 GSE54388)的分析,共鉴定出 708 个重叠基因。这些基因主要参与有丝分裂姐妹染色单体分离、染色体分离调节和细胞周期过程调节。高表达 CCNA2 与不良总生存期(OS)和肿瘤分期有关。根据 Oncomine 数据库,在卵巢癌组织中 CDK1、CDC20、CCNB1、BUB1B、CCNA2、KIF11、CDCA8、KIF2C、NDC80 和 TOP2A 的表达增加。GEPIA 观察到卵巢癌组织中这七个候选基因的表达高于正常组织。HPA 数据库进一步证实,卵巢癌组织中 CCNA2、CCNB1、CDC20、CDCA8、CDK1、KIF11 和 TOP2A 的蛋白表达水平较高。
综上所述,本研究提供了卵巢癌组织与正常组织相比基因表达改变的证据。需要进行体内和体外实验来验证本研究的结果。