Chang‐Qi ZhuDan StrumpfChunyan LiQing LiNi LiuSandy DerFrances A. ShepherdMing‐Sound TsaoIgor Jurišica
Abstract Purpose: This study aimed to identify and validate a gene expression signature for squamous cell carcinoma of the lung (SQCC). Experimental Design: A published microarray dataset from 129 SQCC patients was used as a training set to identify the minimal gene set prognostic signature. This was selected using the MAximizing R Square Algorithm (MARSA), a novel heuristic signature optimization procedure based on goodness-of-fit (R square). The signature was tested internally by leave-one-out-cross-validation (LOOCV), and then externally in three independent public lung cancer microarray datasets: two datasets of non–small cell lung cancer (NSCLC) and one of adenocarcinoma (ADC) only. Quantitative-PCR (qPCR) was used to validate the signature in a fourth independent SQCC cohort. Results: A 12-gene signature that passed the internal LOOCV validation was identified. The signature was independently prognostic for SQCC in two NSCLC datasets (total n = 223) but not in ADC. The lack of prognostic significance in ADC was confirmed in the Director's Challenge ADC dataset (n = 442). The prognostic significance of the signature was validated further by qPCR in another independent cohort containing 62 SQCC samples (hazard ratio, 3.76; 95% confidence interval, 1.10-12.87; P = 0.035). Conclusions: We identified a novel 12-gene prognostic signature specific for SQCC and showed the effectiveness of MARSA to identify prognostic gene expression signatures. Clin Cancer Res; 16(20); 5038–47. ©2010 AACR.
Jun LiJing WangYanbin ChenLijie YangSheng Chen
Xinyi LiuPing LiuRebecca D. ChernockKrystle A. Lang KuhsJames S. LewisJingqin LuoHiram A. GayWade L. ThorstadXiaowei Wang
Danju LuoBin DengMixia WengZhen LuoXiu Nie
Xiaoshun ShiFuxi HuangXiaobing LeXiaoxiang LiKailing HuangBaoxin LiuViola LuoYanhui LiuZhuolin WuAllen ChenYing LiangJiexia Zhang
Xiaoting ZhangJing XiaoXian FuGuicheng QinMengli YuGuihong ChenXiaofeng Li