Department of Thoracic Surgery, Affiliated Hospital of Qingdao University, Qingdao, China.
School of Pharmacy, Qingdao University, Qingdao, China.
Thorac Cancer. 2017 Nov;8(6):672-681. doi: 10.1111/1759-7714.12510. Epub 2017 Sep 26.
Cigarette smoking is one of the greatest preventable risk factors for developing cancer, and most cases of lung squamous cell carcinoma (lung SCC) are associated with smoking. The pathogenesis mechanism of tumor progress is unclear. This study aimed to identify biomarkers in smoking-related lung cancer, including protein-coding gene, long noncoding RNA, and transcription factors.
We selected and obtained messenger RNA microarray datasets and clinical data from the Gene Expression Omnibus database to identify gene expression altered by cigarette smoking. Integrated bioinformatic analysis was used to clarify biological functions of the identified genes, including Gene Ontology (GO), Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway, the construction of a protein-protein interaction network, transcription factor, and statistical analyses. Subsequent quantitative real-time PCR was utilized to verify these bioinformatic analyses.
Five hundred and ninety-eight differentially expressed genes and 21 long noncoding RNA were identified in smoking-related lung SCC. GO and KEGG pathway analysis showed that identified genes were enriched in the cancer-related functions and pathways. The protein-protein interaction network revealed seven hub genes identified in lung SCC. Several transcription factors and their binding sites were predicted. The results of real-time quantitative PCR revealed that AURKA and BIRC5 were significantly upregulated and LINC00094 was downregulated in the tumor tissues of smoking patients. Further statistical analysis indicated that dysregulation of AURKA, BIRC5, and LINC00094 indicated poor prognosis in lung SCC.
Protein-coding genes AURKA, BIRC5, and LINC00094 could be biomarkers or therapeutic targets for smoking-related lung SCC.
吸烟是导致癌症的最大可预防风险因素之一,大多数肺鳞状细胞癌(肺鳞癌)与吸烟有关。肿瘤进展的发病机制尚不清楚。本研究旨在鉴定与吸烟相关的肺癌中的生物标志物,包括编码蛋白基因、长链非编码 RNA 和转录因子。
我们从基因表达综合数据库中选择并获得了信使 RNA 微阵列数据集和临床数据,以鉴定吸烟引起的基因表达变化。综合生物信息学分析用于阐明鉴定基因的生物学功能,包括基因本体论(GO)、京都基因与基因组百科全书(KEGG)途径、蛋白质-蛋白质相互作用网络的构建、转录因子和统计分析。随后利用定量实时 PCR 验证这些生物信息学分析。
在与吸烟相关的肺鳞癌中鉴定出 598 个差异表达基因和 21 个长链非编码 RNA。GO 和 KEGG 通路分析表明,鉴定的基因富集在与癌症相关的功能和途径中。蛋白质-蛋白质相互作用网络揭示了肺鳞癌中鉴定出的七个枢纽基因。预测了几个转录因子及其结合位点。实时定量 PCR 的结果显示,在吸烟患者的肿瘤组织中 AURKA 和 BIRC5 显著上调,而 LINC00094 下调。进一步的统计分析表明,AURKA、BIRC5 和 LINC00094 的失调预示着肺鳞癌预后不良。
编码蛋白基因 AURKA、BIRC5 和 LINC00094 可以作为与吸烟相关的肺鳞癌的生物标志物或治疗靶点。