Zhao Xinnan, He Miao
Department of Rheumatology and Immunology, The First Affiliated Hospital of China Medical University, Shenyang, China.
Department of Pharmacology, China Medical University, Shenyang, China.
PeerJ. 2020 Dec 1;8:e10437. doi: 10.7717/peerj.10437. eCollection 2020.
Ovarian cancer (OC) is a highly malignant disease with a poor prognosis and high recurrence rate. At present, there is no accurate strategy to predict the prognosis and recurrence of OC. The aim of this study was to identify gene-based signatures to predict OC prognosis and recurrence.
mRNA expression profiles and corresponding clinical information regarding OC were collected from The Cancer Genome Atlas (TCGA) database. Gene set enrichment analysis (GSEA) and LASSO analysis were performed, and Kaplan-Meier curves, time-dependent ROC curves, and nomograms were constructed using R software and GraphPad Prism7.
We first identified several key signalling pathways that affected ovarian tumorigenesis by GSEA. We then established a nine-gene-based signature for overall survival (OS) and a five-gene-based-signature for relapse-free survival (RFS) using LASSO Cox regression analysis of the TCGA dataset and validated the prognostic value of these signatures in independent GEO datasets. We also confirmed that these signatures were independent risk factors for OS and RFS by multivariate Cox analysis. Time-dependent ROC analysis showed that the AUC values for OS and RFS were 0.640, 0.663, 0.758, and 0.891, and 0.638, 0.722, 0.813, and 0.972 at 1, 3, 5, and 10 years, respectively. The results of the nomogram analysis demonstrated that combining two signatures with the TNM staging system and tumour status yielded better predictive ability.
In conclusion, the two-gene-based signatures established in this study may serve as novel and independent prognostic indicators for OS and RFS.
卵巢癌(OC)是一种高度恶性的疾病,预后较差且复发率高。目前,尚无准确的策略来预测OC的预后和复发。本研究的目的是识别基于基因的特征以预测OC的预后和复发。
从癌症基因组图谱(TCGA)数据库收集关于OC的mRNA表达谱和相应的临床信息。进行基因集富集分析(GSEA)和LASSO分析,并使用R软件和GraphPad Prism7构建Kaplan-Meier曲线、时间依赖性ROC曲线和列线图。
我们首先通过GSEA确定了几个影响卵巢肿瘤发生的关键信号通路。然后,我们使用TCGA数据集的LASSO Cox回归分析建立了一个基于九个基因的总生存(OS)特征和一个基于五个基因的无复发生存(RFS)特征,并在独立的GEO数据集中验证了这些特征的预后价值。我们还通过多变量Cox分析证实这些特征是OS和RFS的独立危险因素。时间依赖性ROC分析表明,OS和RFS在1、3、5和10年时的AUC值分别为0.640、0.663、0.758和0.891,以及0.638、0.722、0.813和0.972。列线图分析结果表明,将两个特征与TNM分期系统和肿瘤状态相结合可产生更好的预测能力。
总之,本研究中建立的基于两个基因的特征可能作为OS和RFS的新型独立预后指标。