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Differential gene expression analysis in glioblastoma cells and normal human brain cells based on GEO database

机译:基于GEO数据库的胶质母细胞瘤细胞与正常人脑细胞的差异基因表达分析

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摘要

The differentially expressed genes between glioblastoma (GBM) cells and normal human brain cells were investigated to performed pathway analysis and protein interaction network analysis for the differentially expressed genes. and gene chips, which contain gene expression profile of GBM were obtained from Gene Expression Omniub (GEO) database of National Center for Biotechnology Information (NCBI). The ‘limma’ data packet in ‘R’ software was used to analyze the differentially expressed genes in the two gene chips, and gene integration was performed using ‘RobustRankAggreg’ package. Finally, pheatmap software was used for heatmap analysis and Cytoscape, DAVID, STRING and KOBAS were used for protein-protein interaction, Gene Ontology (GO) and KEGG analyses. As results: i) 702 differentially expressed genes were identified in , among those genes, 548 were significantly upregulated and 154 were significantly downregulated (p<0.01, fold-change >1), and 1,854 differentially expressed genes were identified in , among the genes, 1,068 were significantly upregulated and 786 were significantly downregulated (p<0.01, fold-change >1). A total of 167 differentially expressed genes including 100 upregulated genes and 67 downregulated genes were identified after gene integration, and the genes showed significantly different expression levels in GBM compared with normal human brain cells (p<0.05). ii) Interactions between the protein products of 101 differentially expressed genes were identified using STRING and expression network was established. A key gene, called CALM3, was identified by Cytoscape software. iii) GO enrichment analysis showed that differentially expressed genes were mainly enriched in ‘neurotransmitter:sodium symporter activity’ and ‘neurotransmitter transporter activity’, which can affect the activity of neurotransmitter transportation. KEGG pathway analysis showed that the differentially expressed genes were mainly enriched in ‘protein processing in endoplasmic reticulum’, which can affect protein processing in endoplasmic reticulum. The results showed that: i) 167 differentially expressed genes were identified from two gene chips after integration; and ii) protein interaction network was established, and GO and KEGG pathway analyses were successfully performed to identify and annotate the key gene, which provide new insights for the studies on GBN at gene level.
机译:研究了胶质母细胞瘤(GBM)细胞和正常人脑细胞之间的差异表达基因,以进行差异表达基因的途径分析和蛋白质相互作用网络分析。从国家生物技术信息中心(NCBI)的Gene Expression Omniub(GEO)数据库获得了含有GBM基因表达谱的基因芯片。使用“ R”软件中的“ limma”数据包分析两个基因芯片中差异表达的基因,并使用“ RobustRankAggreg”软件包进行基因整合。最后,将pheatmap软件用于热图分析,并使用Cytoscape,DAVID,STRING和KOBAS进行蛋白质-蛋白质相互作用,基因本体论(GO)和KEGG分析。结果:i)在这些基因中鉴定了702个差异表达基因,其中548个显着上调,而154个显着下调(p <0.01,倍数变化> 1),并且在这些基因中鉴定了1,854个差异表达基因。 ,其中1,068被显着上调,而786被显着下调(p <0.01,倍数变化> 1)。基因整合后共鉴定出167个差异表达基因,包括100个上调基因和67个下调基因,这些基因在GBM中的表达水平与正常人脑细胞相比有显着差异(p <0.05)。 ii)使用STRING鉴定101个差异表达基因的蛋白质产物之间的相互作用,并建立表达网络。 Cytoscape软件识别了一个称为CALM3的关键基因。 iii)GO富集分析表明,差异表达的基因主要富含“神经递质:钠共转运蛋白活性”和“神经递质转运蛋白活性”,这可能会影响神经递质转运的活性。 KEGG通路分析表明,差异表达的基因主要集中在“内质网的蛋白质加工”中,这可能会影响内质网的蛋白质加工。结果表明:i)整合后从两个基因芯片中鉴定出167个差异表达基因; ii)建立了蛋白质相互作用网络,成功进行了GO和KEGG通路分析,以鉴定和注释关键基因,为在基因水平上的GBN研究提供了新的见识。

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