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Identification of Key Genes and Pathways in Female Lung Cancer Patients Who Never Smoked by a Bioinformatics Analysis

机译:通过生物信息学分析鉴定从未吸烟的女性肺癌患者的关键基因和途径

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Smoking is considered the major risk factor for lung cancer, but only a small portion of female lung adenocarcinoma patients are associated with smoking. Thus, identifying crucial genes and pathways related to nonsmoking female lung cancer patients is of great importance. Gene expression profiles were downloaded from the Gene Expression Omnibus (GEO) and the Cancer Genome Atlas (TCGA) databases. The R software packages were applied to screen the differentially expressed genes (DEGs). GO term enrichment and KEGG pathway analyses were carried out using DAVID tools. The protein-protein interaction (PPI) network was constructed by Cytoscape software. In total, 487 downregulated and 199 upregulated DEGs were identified. The down-regulated DEGs were mainly enriched for behavior and response to wounding, and the upregulated DEGs were significantly enriched for multicellular organismal metabolic process and cell division. The KEGG pathway analysis revealed that the downregulated DEGs were significantly enriched for cell adhesion molecules and neuroactive ligand-receptor interaction, while the upregulated DEGs were mainly enriched for cell cycle and the p53 signaling pathway. The top 10 hub genes and top 3 gene interaction modules were selected from the PPI network. Of the ten hub genes, a high expression of five genes was related to a poor OS in female lung cancer patients who never smoked, including IL6, CXCR2, FPR2, PPBP and HBA1. However, a low expression of GNG11, LRRK2, CDH5, CAV1 and SELE was associated with a worse OS for the female lung cancer patients who never smoked. In conclusion, our study provides novel insight for a better understanding of the pathogenesis of nonsmoking female lung cancer, and these identified DEGs may serve as biomarkers for diagnostics and treatment.
机译:吸烟被认为是肺癌的主要危险因素,但是只有一小部分女性肺腺癌患者与吸烟有关。因此,鉴定与非吸烟女性肺癌患者相关的关键基因和途径非常重要。基因表达谱可从基因表达综合(GEO)和癌症基因组图谱(TCGA)数据库下载。应用R软件包筛选差异表达基因(DEG)。使用DAVID工具进行GO项富集和KEGG途径分析。通过Cytoscape软件构建了蛋白质-蛋白质相互作用(PPI)网络。总共确定了487个下调的DEG和199个上调的DEG。下调的DEG主要富集行为和对伤口的反应,而上调的DEG则富集多细胞生物代谢过程和细胞分裂。 KEGG通路分析表明,下调的DEGs富含细胞粘附分子和神经活性配体-受体相互作用,而上调的DEGs主要富含细胞周期和p53信号通路。从PPI网络中选择了前10个中心基因和前3个基因相互作用模块。在这十个中枢基因中,五个基因的高表达与从未吸烟的女性肺癌患者的OS差有关,包括IL6,CXCR2,FPR2,PPBP和HBA1。然而,对于从未吸烟的女性肺癌患者,GNG11,LRRK2,CDH5,CAV1和SELE的低表达与OS恶化有关。总之,我们的研究为非吸烟女性肺癌的发病机理的更好理解提供了新的见解,这些已鉴定的DEGs可以作为诊断和治疗的生物标志物。

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