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Analysis of differential gene expression caused by cervical intraepithelial neoplasia based on GEO database

机译:基于Geo数据库的宫颈上皮瘤引起的差异基因表达分析

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The aim of the present study was to identify the differentially expressed genes between cervical intraepithelial neoplasias (CIN) and adjacent normal tissue, and to construct a protein-protein interaction (PPI) network. A CIN dataset was obtained from Gene Expression Omnibus, and data of gene expression in CIN and adjacent normal tissue were extracted from GSE64217. The differentially expressed genes were selected using software package and heat map was drawn using the 'pheatmap' package. The selected differentially expressed genes were subjected to PPI, Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) analysis using Cytoscape, Database for Annotation, Visualization and Integrated Discovery, STRING and KOBAS. In the present study, 287 genes were differentially expressed between CIN and adjacent normal tissue, of which 170 were significantly upregulated and 118 genes were significantly downregulated (P 6). A differential gene expression network map was constructed to show the interactions of 30 protein products encoded by differentially expressed genes using STRING software. In particular, the key gene, EGR1, was identified using Cytoscape software. The KEGG pathway analysis revealed that the differential genes were mainly involved in several pathways, including 'glutathione metabolism', 'arachidonic acid metabolism', and 'pentose phosphate pathway'. Results of the GO analysis showed that differential genes were enriched in different subsets. Specifically, small proline-rich protein 2E and 3, distal-less homeobox 5, epithelial membrane protein 1, cornifelin, periplakin, homeobox protein Hox-A13, estrogen receptor a, transglutaminase 1, small proline-rich protein 2A, Rh C glycoprotein, tumor protein p63, TGM3, homeobox B5 and small proline-rich protein 2D were enriched in 'epithelial cell differentiation', which affected the differentiation of epithelial cells. In conclusion, 287 differentially expressed genes were identified successfully. The key gene was identified based on the results of PPI, GO and KEGG analyses, and functional annotation and pathway analysis were also performed. Our study provides the basis for further studies on the interaction among differentially expressed genes.
机译:本研究的目的是鉴定宫颈上皮内瘤瘤(CIN)和相邻的正常组织之间的差异表达基因,并构建蛋白质 - 蛋白质相互作用(PPI)网络。从基因表达Omnibus获得CIN数据集,从GSE64217中提取CIN和邻近正常组织中基因表达的数据。使用软件包选择差异表达的基因,并使用“PheatMap”包来绘制热图。使用Cytoskape,用于注释,可视化和集成发现,弦和锥形的数据库,对所选差异表达的基因进行PPI,基因本体(GO)和基因组(KEGG)分析(KEGG)分析。在本研究中,在CIN和相邻的正常组织之间差异表达287个基因,其中170%显着上调,118个基因显着下调(P 6)。构建差异基因表达网络图以显示使用弦软件通过差异表达基因编码的30个蛋白质产物的相互作用。特别地,使用Cytoscape软件识别关键基因EGR1。 Kegg途径分析表明,差异基因主要涉及几种途径,包括“谷胱甘肽代谢”,“花生酸代谢”和“戊磷酸磷酸盐途径”。 GO分析结果表明,鉴别基因富含不同子集。具体而言,小脯氨酸富含蛋白质2E和3,远端Homeobox 5,上皮膜蛋白1,Cornifelin,Peripliplakin,Homeobox蛋白Hox-A13,雌激素受体A,转谷氨酰胺酶1,小脯氨酸富含蛋白2a,rH c糖蛋白,肿瘤蛋白P63,TGM3,Homeobox B5和小脯氨酸富含蛋白2D富集在“上皮细胞分化”中,影响上皮细胞的分化。总之,成功鉴定了287个差异表达基因。基于PPI,GO和KEGG分析的结果鉴定了关键基因,并且还进行了功能注释和途径分析。我们的研究为进一步研究差异表达基因之间的相互作用提供了依据。

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