Weighted Gene Co-expression Network Analysis of Gene Modules for Lung Adenocarcinoma

Yuanyuan Zhai, Ying-Li Chen, Yue Jiang, Qianzhong Li
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引用次数: 1

Abstract

Lung cancer is the most common form of malignancies tumor, influenced by complex molecular network. Further understanding of the molecular mechanisms that lead to Lung cancer would be conducive to the detection and supervisory control of cancer, thereby improving clinical cancer treatment and personalized treatment. In this study, 47 co-expression modules were identified by constructing a weighted gene co-expression network. Subsequently, we investigated the biological significance of these modules by studying the GO biological process and KEGG pathways. The results show that two significant modules (green module and green-yellow module) enrich in the progress of blood vessels development, immune response and regulation, respectively. The top 50 genes with the two modules contain 3 LncRNAs and some hub genes, respectively. Therefore, these LncRNAs and the hub genes of SPTBN1, SFTPC, FHL1, and RP5-826L7 in the green module and FCER1G, NLRC4 and SAMHD1 in the green-yellow module may be associated with lung adenocarcinoma. It has been experimentally proved that they may play a crucial part in the pathogenesis of lung adenocarcinoma. In addition, the analysis of these hub genes may provide a reference to further learn about the pathogenesis of lung cancer.
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肺腺癌基因模块的加权基因共表达网络分析
肺癌是最常见的恶性肿瘤,受复杂的分子网络影响。进一步了解导致肺癌的分子机制,有助于癌症的检测和监控,从而改善临床癌症治疗和个性化治疗。本研究通过构建加权基因共表达网络,鉴定出47个共表达模块。随后,我们通过研究氧化石墨烯的生物过程和KEGG途径来研究这些模块的生物学意义。结果表明,在血管发育、免疫应答和调节过程中,绿色模块和绿黄模块分别富集了两个重要模块。含有这两个模块的前50个基因分别包含3个lncrna和一些枢纽基因。因此,这些LncRNAs和绿色模块中的SPTBN1、SFTPC、FHL1、RP5-826L7枢纽基因以及黄绿色模块中的FCER1G、NLRC4、SAMHD1枢纽基因可能与肺腺癌相关。实验证明它们可能在肺腺癌的发病机制中起着至关重要的作用。此外,这些枢纽基因的分析可能为进一步了解肺癌的发病机制提供参考。
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