Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10911292 | Lung Cancer | 2013 | 8 Pages |
Abstract
Lung adenocarcinoma is the most common type of primary lung cancer. The purpose of this study was to delineate gene expression patterns for survival prediction in lung adenocarcinoma. Gene expression profiles of 82 (discovery set) and 442 (validation set 1) lung adenocarcinoma tumor tissues were analyzed using a systems biology-based network approach. We also examined the expression profiles of 78 adjacent normal lung tissues from 82 patients. We found a significant correlation of an expression module with overall survival (adjusted hazard ratio or HRÂ =Â 1.71; 95% CIÂ =Â 1.06-2.74 in discovery set; adjusted HRÂ =Â 1.26; 95% CIÂ =Â 1.08-1.49 in validation set 1). This expression module contained genes enriched in the biological process of the cell cycle. Interestingly, the cell cycle gene module and overall survival association were also significant in normal lung tissues (adjusted HRÂ =Â 1.91; 95% CI, 1.32-2.75). From these survival-related modules, we further defined three hub genes (UBE2C, TPX2, and MELK) whose expression-based risk indices were more strongly associated with poor 5-year survival (HRÂ =Â 3.85, 95% CIÂ =Â 1.34-11.05 in discovery set; HRÂ =Â 1.72, 95% CIÂ =Â 1.21-2.46 in validation set 1; and HRÂ =Â 3.35, 95% CIÂ =Â 1.08-10.04 in normal lung set). The 3-gene prognostic result was further validated using 92 adenocarcinoma tumor samples (validation set 2); patients with a high-risk gene signature have a 1.52-fold increased risk (95% CI, 1.02-2.24) of death than patients with a low-risk gene signature. These results suggest that a network-based approach may facilitate discovery of key genes that are closely linked to survival in patients with lung adenocarcinoma.
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Authors
Yafei Li, Hui Tang, Zhifu Sun, Aaron O. Bungum, Eric S. Edell, Wilma L. Lingle, Shawn M. Stoddard, Mingrui Zhang, Jin Jen, Ping Yang, Liang Wang,