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Identification of Potentially Therapeutic Target Genes in Ovarian Cancer via Bioinformatic Approach

机译:通过生物信息方法鉴定卵巢癌中的潜在治疗靶基因

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Objective: To identify potentially therapeutic target genes involved in the pathogenesis of ovarian cancer using bioinformatic approach. Methods: The GEO2R online tool was employed to analyze the gene expression profiles of ovarian cancer. GO and KEGG enrichment analysis was utilized to annotate differentially expressed genes (DEGs). STRING database was employed to construct a protein-protein interaction (PPI) network with the DEGs. The PPI network interaction information was then visualized using Cytoscape software and ovarian cancer hub genes were identified based on Maximal Clique Centrality (MCC) algorithm. The identified hub genes were then analyzed with Kaplan Meier plotter to check their role on survival time of ovarian cancer patients. Results: Differentially expressed analysis resulted in 332 DEGs, of which 340 were down-regulated and 92 were up-regulated. Gene Ontology (GO) enrichment analysis indicated that the DEGs were significantly enriched in some tumor-associated biological processes, molecular functions, and cellular components. Kyoto Encyclopedia Genes and Genomes (KEGG) pathway enrichment analysis resulted in 5 cancer related pathways. A total of 10 hub genes were identified based on the topological analysis of PPI network. Survival analysis showed 7 of the hub genes were associated with significantly decreased survival time of the ovarian cancer patients (P<0.05). Conclusion: Our study resulted in identification of 7 hub genes contributing to the development of ovarian cancer. These hub genes may be potentially therapeutic target genes for treatment of ovarian cancer.
机译:目的:使用生物信息化方法鉴定涉及卵巢癌发病机制的潜在治疗靶基因。方法:采用GEO2R在线工具分析卵巢癌的基因表达谱。 Go和Kegg浓缩分析用于注释差异表达基因(DEGS)。使用串数据库以构建蛋白质 - 蛋白质相互作用(PPI)网络与DEG。然后使用Cytoscape软件和卵巢癌枢纽基因基于最大Clique中心(MCC)算法来可视化PPI网络交互信息。然后用Kaplan Meier绘图仪分析所识别的轮毂基因,以检查它们对卵巢癌患者的存活时间的作用。结果:差异表达的分析导致332次,其中340℃下调,92个上调。基因本体(GO)富集分析表明,在一些肿瘤相关的生物过程,分子功能和细胞组分中显着富集。京都百科全因基因和基因组(Kegg)途径富集分析导致5种癌症相关途径。基于PPI网络的拓扑分析,共鉴定了总共10个轮毂基因。存活分析显示出卵巢癌患者的生存时间显着降低了7个枢纽基因(P <0.05)。结论:我们的研究导致了鉴定卵巢癌发育的7个枢纽基因。这些轮毂基因可能是治疗卵巢癌的潜在治疗靶基因。

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