Chen En-Guo, Wang Pin, Lou Haizhou, Wang Yunshan, Yan Hong, Bi Lei, Liu Liang, Li Bin, Snijders Antoine M, Mao Jian-Hua, Hang Bo
Department of Pulmonary Medicine, Sir Run Run Shaw Hospital, College of Medicine, Zhejiang University, Hangzhou, China.
Biological Systems and Engineering Division, Lawrence Berkeley National Laboratory, Berkeley, CA, USA.
Oncotarget. 2017 Dec 15;9(6):6862-6871. doi: 10.18632/oncotarget.23490. eCollection 2018 Jan 23.
Identification of reliable predictive biomarkers and new therapeutic targets is a critical step for significant improvement in patient outcomes. Here, we developed a multi-step bioinformatics analytic strategy to mine large omics and clinical data to build a prognostic scoring system for predicting the overall survival (OS) of lung adenocarcinoma (LuADC) patients. In latter we first identified 1327 significantly and robustly deregulated genes, 600 of which were significantly associated with the OS of LuADC patients. Gene co-expression network analysis revealed the biological functions of these 600 genes in normal lung and LuADCs, which were found to be enriched for cell cycle-related processes, blood vessel development, cell-matrix adhesion and metabolic processes. Finally, we implemented a multiple resampling method combined with Cox regression analysis to identify a 27-gene signature associated with OS, and then created a prognostic scoring system based on this signature. This scoring system robustly predicted OS of LuADC patients in 100 sampling test sets and was further validated in four independent LuADC cohorts. In addition, in comparison to other existing prognostic gene signatures published in the literature, our signature was significantly superior in predicting OS of LuADC patients. In summary, our multi-omics and clinical data integration study created a 27-gene prognostic risk score that can predict OS of LuADC patients independent of age, gender and clinical stage. This score could guide therapeutic selection and allow stratification in clinical trials.
识别可靠的预测生物标志物和新的治疗靶点是显著改善患者预后的关键一步。在此,我们开发了一种多步骤生物信息学分析策略,以挖掘大量组学和临床数据,构建一个用于预测肺腺癌(LuADC)患者总生存期(OS)的预后评分系统。在后续研究中,我们首先鉴定出1327个显著且稳定失调的基因,其中600个与LuADC患者的OS显著相关。基因共表达网络分析揭示了这600个基因在正常肺组织和LuADC中的生物学功能,发现它们在细胞周期相关过程、血管发育、细胞-基质黏附及代谢过程中富集。最后,我们采用多重重采样方法结合Cox回归分析来鉴定与OS相关的27个基因特征,然后基于该特征创建了一个预后评分系统。该评分系统在100个采样测试集中稳健地预测了LuADC患者的OS,并在四个独立的LuADC队列中进一步得到验证。此外,与文献中发表的其他现有预后基因特征相比,我们的特征在预测LuADC患者的OS方面具有显著优势。总之,我们的多组学与临床数据整合研究创建了一个27基因的预后风险评分,可独立于年龄、性别和临床分期预测LuADC患者的OS。该评分可为治疗选择提供指导,并在临床试验中实现分层。