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Identification of significant genes as prognostic markers and potential tumor suppressors in lung adenocarcinoma via bioinformatical analysis

机译:通过生物信息分析鉴定作为肺腺癌中的预后标记和潜在肿瘤抑制剂的显着基因

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Lung adenocarcinoma (LAC) is the predominant histologic subtype of lung cancer and has a complicated pathogenesis with high mortality. The purpose of this study was to identify differentially expressed genes (DEGs) with prognostic value and determine their underlying mechanisms. Gene expression data of GSE27262 and GSE118370 were acquired from the Gene Expression Omnibus database, enrolling 31 LAC and 31 normal tissues. Common DEGs between LAC and normal tissues were identified using the GEO2R tool and Venn diagram software. Next, the Database for Annotation, Visualization, and Integrated Discovery (DAVID) was used to analyze the Gene Ontology and Kyoto Encyclopedia of Gene and Genome (KEGG) pathways. Then, protein-protein interaction (PPI) network of DEGs was visualized by Cytoscape with Search Tool for the Retrieval of Interacting Genes and central genes were identified via Molecular Complex Detection. Furthermore, the expression and prognostic information of central genes were validated via Gene Expression Profiling Interactive Analysis (GEPIA) and Kaplan-Meier analysis, respectively. Finally, DAVID, real-time PCR and immunohistochemistry were applied to re-analyze the identified genes, which were also further validated in two additional datasets from ArrayExpress database. First, 189 common DEGs were identified among the two datasets, including 162 downregulated and 27 upregulated genes. Next, Gene Ontology and KEGG pathway analysis of the DEGs were conducted through DAVID. Then, PPI network of DEGs was constructed and 17 downregulated central genes were identified. Furthermore, the 17 downregulated central genes were validated via GEPIA and datasets from ArrayExpress, and 12 of them showed a significantly better prognosis. Finally, six genes were identified significantly enriched in neuroactive ligand-receptor interactions (EDNRB, RXFP1, P2RY1, CALCRL) and Rap1 signaling pathway (TEK, P2RY1, ANGPT1) via DAVID, which were further validated to be weakly expressed in LAC tissues via RNA quantification and immunohistochemistry analysis. The low expression pattern and relation to prognosis indicated that the six genes were potential tumor suppressor genes in LAC. In conclusion, we identified six significantly downregulated DEGs as prognostic markers and potential tumor suppressor genes in LAC based on integrated bioinformatics methods, which could act as potential molecular markers and therapeutic targets for LAC patients.
机译:肺腺癌(LAC)是肺癌的主要组织学亚型,具有高死亡率的复杂性发病机制。本研究的目的是鉴定具有预后值的差异表达基因(DEG)并确定其潜在的机制。 GSE27262和GSE118370的基因表达数据从基因表达综合体数据库中获得,注册31只LAC和31正常组织。使用GEO2R工具和VENN图软件识别LAC和正常组织之间的常见°。接下来,用于注释,可视化和集成发现(David)的数据库用于分析基因和基因组(Kegg)途径的基因本体和京都百科全书。然后,通过Cytoskape通过Cytoskape通过Cytoskape进行蛋白质 - 蛋白质相互作用(PPI)网络,用于检索相互作用基因的检索,通过分子复数检测鉴定中枢基因。此外,通过基因表达分析互动分析(Gepia)和Kaplan-Meier分析,验证了中枢基因的表达和预后信息。最后,应用了大卫,实时PCR和免疫组织化学来重新分析所识别的基因,这些基因也进一步验证了来自ArrayExpress数据库的两个附加数据集。首先,在两种数据集中鉴定了189个常见的常见,其中包括162个下调和27个上调基因。接下来,通过大卫进行DAVID的基因本体和KEGG途径分析。然后,构建了PPI的DEG网络,并鉴定了17个下调的中央基因。此外,通过来自ArrrayExpress的Gepia和Datasets验证了17个下调的中央基因,其中12种显示出明显更好的预后。最后,六种基因被鉴定在神经活性配体 - 受体相互作用(EDNRB,RXFP1,P2RY1,CALCRL)和的Rap1信号通路显著富集的(TEK,P2RY1,ANGPT1)经由DAVID,将其进一步验证要弱在LAC组织经由RNA表达量化和免疫组织化学分析。低表达模式和与预后的关系表明,六个基因是Lac中的潜在肿瘤抑制基因。总之,我们认为六种显着下调的DEGS作为基于整合生物信息学方法的LAC中的预后标记和潜在的肿瘤抑制基因,这可以充当LAC患者的潜在分子标记和治疗靶标。

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