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Uncovering the pathogenesis and identifying novel targets of pancreatic cancer using bioinformatics approach

机译:利用生物信息学方法揭示胰腺癌的发病机制并确定新的靶标

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Pancreatic cancer is a uniformly lethal disease that can be difficult to diagnose at its early stage. Thus, our present study aimed to explore the underlying mechanism and identify new targets for this disease. The data GSE16515, including 36 tumor and 16 normal samples were available from Gene Expression Omnibus. Differentially expressed genes (DEGs) were screened out using Robust Multichip Averaging and LIMMA package. Moreover, gene ontology and pathway enrichment analyses were performed to DEGs. Followed with protein-protein interaction (PPI) network construction by STRING and Cytoscape, module analysis was conducted using ClusterONE. Finally, based on PubMed, text mining about these DEGs was carried out. Total 274 up-regulated and 93 down-regulated genes were identified as the common DEGs and these genes were discovered significantly enriched in cell adhesion and extracellular region terms, as well as ECM-receptor interaction pathway. In addition, five modules were screened out from the up-regulated PPI network with none in down-regulated network. Finally, the up-regulated genes, including MIA, MET and CEACAMS, and down-regulated genes, such as FGF, INS and LAPP, had the most references in text mining analysis. Our findings demonstrate that the up- and down-regulated genes play important roles in pancreatic cancer development and might be new targets for the therapy
机译:胰腺癌是一种致死性疾病,在早期很难诊断。因此,我们目前的研究旨在探索这种疾病的潜在机制并确定新的靶标。可以从Gene Expression Omnibus获得数据GSE16515,包括36个肿瘤和16个正常样品。使用稳健的多芯片平均和LIMMA包筛选出差异表达的基因(DEG)。此外,对DEGs进行了基因本体论和途径富集分析。随后通过STRING和Cytoscape构建蛋白质-蛋白质相互作用(PPI)网络,然后使用ClusterONE进行模块分析。最后,基于PubMed,对这些DEG进行了文本挖掘。共有274个上调基因和93个下调基因被确定为常见的DEG,发现这些基因在细胞粘附和细胞外区域术语以及ECM-受体相互作用途径中显着丰富。此外,从上调的PPI网络中筛选出五个模块,而在下调的网络中没有一个模块。最后,在文本挖掘分析中,上调的基因(包括MIA,MET和CEACAMS)和下调的基因(例如FGF,INS和LAPP)具有最多的参考。我们的研究结果表明,上调和下调的基因在胰腺癌的发展中起着重要作用,可能成为治疗的新目标

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