Lu Yiping, Wu Si, Cui Changwan, Yu Miao, Wang Shuang, Yue Yuanyi, Liu Miao, Sun Zhengrong
BioBank, The Affiliated Shengjing Hospital, China Medical University, Shenyang, Liaoning 110004, People's Republic of China.
Onco Targets Ther. 2020 Oct 14;13:10393-10408. doi: 10.2147/OTT.S255590. eCollection 2020.
This study aims to systematically analyze multi-omics data to explore new prognosis biomarkers in colon adenocarcinoma (COAD).
Multi-omics data of COAD and clinical information were obtained from The Cancer Genome Atlas (TCGA). Univariate Cox analysis was used to select genes which significantly related to the overall survival. GISTIC 2.0 software was used to identify significant amplification or deletion. Mutsig 2.0 software was used to identify significant mutation genes. The 9-gene signature was screened by random forest algorithm and Cox regression analysis. GSE17538 dataset was used as an external dataset to verify the predictive ability of 9-gene signature. qPCR was used to detect the expression of 9 genes in clinical specimens.
A total of 71 candidate genes are obtained by integrating genomic variation, mutation and prognostic data. Then, 9-gene signature was established, which includes HOXD12, RNF25, CBLN3, DOCK3, DNAJB13, PYGO2, CTNNA1, PTPRK, and NAT1. The 9-gene signature is an independent prognostic risk factor for COAD patients. In addition, the signature shows good predicting performance and clinical practicality in training set, testing set and external verification set. The results of qPCR based on clinical samples showed that the expression of HOXD12, RNF25, CBLN3, DOCK3, DNAJB13, and PYGO2 was increased in colon cancer tissues and the expression of CTNNA1, PTPRK, NAT1 was decreased in colon cancer tissues.
In this study, 9-gene signature is constructed as a new prognostic marker to predict the survival of COAD patients.
本研究旨在系统分析多组学数据,以探索结肠腺癌(COAD)新的预后生物标志物。
从癌症基因组图谱(TCGA)获取COAD的多组学数据和临床信息。采用单因素Cox分析选择与总生存期显著相关的基因。使用GISTIC 2.0软件识别显著扩增或缺失。使用Mutsig 2.0软件识别显著突变基因。通过随机森林算法和Cox回归分析筛选出9基因特征。使用GSE17538数据集作为外部数据集验证9基因特征的预测能力。采用qPCR检测临床标本中9个基因的表达。
整合基因组变异、突变和预后数据共获得71个候选基因。随后,建立了9基因特征,包括HOXD12、RNF25、CBLN3、DOCK3、DNAJB13、PYGO2、CTNNA1、PTPRK和NAT1。该9基因特征是COAD患者独立的预后危险因素。此外,该特征在训练集、测试集和外部验证集中均表现出良好的预测性能和临床实用性。基于临床样本的qPCR结果显示,HOXD12、RNF25、CBLN3、DOCK3、DNAJB13和PYGO2在结肠癌组织中的表达升高,而CTNNA1、PTPRK、NAT1在结肠癌组织中的表达降低。
本研究构建了9基因特征作为预测COAD患者生存的新预后标志物。