Jun LiJing WangYanbin ChenLijie YangSheng Chen
Squamous cell lung carcinoma (SQCLC), a common and fatal subtype of lung cancer, caused lots of mortalities and showed different outcomes in prognosis. This study was to screen key genes and to figure a prognostic signature to cluster the patients with SQCLC. RNA‐Seq data from 550 patients with SQCLC were downloaded from The Cancer Genome Atlas (TCGA). Genetically changed genes were identified and analyzed in univariate survival analysis. Genes significantly influencing prognosis were selected with frequency higher than 100 in lasso regression. Meanwhile, area under the curve (AUC) values and hazard ratios (HR) for seed genes were obtained with R Language. Functional enrichment analysis was performed and clustering effectiveness of the selected common gene set was analyzed with Kaplan–Meier. Finally, the stability and validity of the optimal clustering model were verified. A total of 7,222 genetically changed genes were screened, including 1,045 ones with p < 0.05, 1,746, p < 0.1, and 2,758, p < 0.2. The common gene sets with more than 100 frequencies were 14‐Genes, 10‐Genes and 6‐Genes. Genes with p < 0.05 participated in positive regulation of ERK1 and ERK2 cascade, angiogenesis, platelet degranulation, cell–matrix adhesion, extracellular matrix organization, macrophage activation, and so on. A four‐gene clustering model in 14‐Genes ( DPPA , TTTY16 , TRIM58 , HKDC1 , ZNF589 , ALDH7A1 , LINC01426 , IL19 , LOC101928358 , TMEM92 , HRASLS , JPH1 , LOC100288778 , GCGR ) was verified as the optimal. The discovery of four‐gene clustering model in 14‐Genes can cluster the patient samples effectively. This model would help predict the outcomes of patients with SQCLC then improve the treatment strategies.
Chang‐Qi ZhuDan StrumpfChunyan LiQing LiNi LiuSandy DerFrances A. ShepherdMing‐Sound TsaoIgor Jurišica
Danju LuoBin DengMixia WengZhen LuoXiu Nie
Xinyi LiuPing LiuRebecca D. ChernockKrystle A. Lang KuhsJames S. LewisJingqin LuoHiram A. GayWade L. ThorstadXiaowei Wang
Xiaoshun ShiFuxi HuangXiaobing LeXiaoxiang LiKailing HuangBaoxin LiuViola LuoYanhui LiuZhuolin WuAllen ChenYing LiangJiexia Zhang
Xiaoting ZhangJing XiaoXian FuGuicheng QinMengli YuGuihong ChenXiaofeng Li