Dancik Garrett M, Theodorescu Dan
Mathematics and Computer Science Department, Eastern Connecticut State University, Willimantic, Connecticut, United States of America.
Department of Surgery, University of Colorado, Aurora, Colorado, United States of America ; Department of Pharmacology, University of Colorado, Aurora, Colorado, United States of America ; University of Colorado Comprehensive Cancer Center, Aurora, Colorado, United States of America.
PLoS One. 2014 Jan 22;9(1):e85249. doi: 10.1371/journal.pone.0085249. eCollection 2014.
Few prognostic biomarkers are approved for clinical use primarily because their initial performance cannot be repeated in independent datasets. We posited that robust biomarkers could be obtained by identifying deregulated biological processes shared among tumor types having a common etiology. We performed a gene set enrichment analysis in 20 publicly available gene expression datasets comprising 1968 patients having one of the three most common tobacco-related cancers (lung, bladder, head and neck) and identified cell cycle related genes as the most consistently prognostic class of biomarkers in bladder (BL) and lung adenocarcinoma (LUAD). We also found the prognostic value of 13 of 14 published BL and LUAD signatures were dependent on cell cycle related genes, supporting the importance of cell cycle related biomarkers for prognosis. Interestingly, no prognostic gene classes were identified in squamous cell lung carcinoma or head and neck squamous cell carcinoma. Next, a specific 31 gene cell cycle proliferation (CCP) signature, previously derived in prostate tumors was evaluated and found predictive of outcome in BL and LUAD cohorts in univariate and multivariate analyses. Specifically, CCP score significantly enhanced the predictive ability of multivariate models based on standard clinical variables for progression in BL patients and survival in LUAD patients in multiple cohorts. We then generated random CCP signatures of various sizes and found sets of 10-15 genes had robust performance in these BL and LUAD cohorts, a finding that was confirmed in an independent cohort. Our work characterizes the importance of cell cycle related genes in prognostic signatures for BL and LUAD patients and identifies a specific signature likely to survive additional validation.
很少有预后生物标志物被批准用于临床,主要原因是它们最初的表现无法在独立数据集中重复。我们推测,通过识别具有共同病因的肿瘤类型之间共享的失调生物学过程,可以获得强大的生物标志物。我们在20个公开可用的基因表达数据集中进行了基因集富集分析,这些数据集包含1968名患有三种最常见的烟草相关癌症(肺癌、膀胱癌、头颈癌)之一的患者,并确定细胞周期相关基因是膀胱癌(BL)和肺腺癌(LUAD)中最一致的预后生物标志物类别。我们还发现,已发表的14个BL和LUAD特征中的13个的预后价值依赖于细胞周期相关基因,这支持了细胞周期相关生物标志物对预后的重要性。有趣的是,在肺鳞状细胞癌或头颈部鳞状细胞癌中未发现预后基因类别。接下来,对先前在前列腺肿瘤中得出的一个特定的31基因细胞周期增殖(CCP)特征进行了评估,发现在单变量和多变量分析中,它可预测BL和LUAD队列的结果。具体而言,CCP评分显著增强了基于标准临床变量的多变量模型对多个队列中BL患者进展和LUAD患者生存的预测能力。然后,我们生成了各种大小的随机CCP特征,发现10 - 15个基因的集合在这些BL和LUAD队列中具有强大的性能,这一发现在一个独立队列中得到了证实。我们的工作描述了细胞周期相关基因在BL和LUAD患者预后特征中的重要性,并确定了一个可能在进一步验证中存活下来的特定特征。