Wu Xiangkun, Lv Daojun, Lei Ming, Cai Chao, Zhao Zhijian, Eftekhar Md, Gu Di, Liu Yongda
Department of Urology, Minimally Invasive Surgery Center, The First Affiliated Hospital of Guangzhou Medical University, Guangzhou, Guangdong 510230, P.R. China.
Guangdong Key Laboratory of Urology, Guangzhou Institute of Urology, Guangzhou, Guangdong 510230, P.R. China.
Oncol Lett. 2020 Sep;20(3):2906-2918. doi: 10.3892/ol.2020.11830. Epub 2020 Jul 8.
The time and speed of biochemical recurrence (BCR) of prostate cancer (PCa) after radical prostatectomy (RP) is highly variable. Stratification methods based on TNM staging and Gleason score (GS) do not allow the identification of patients at risk of BCR following RP. Therefore, the aim of the present study was to identify molecular signatures that can predict BCR risk effectively and facilitate treatment-related decisions for patients with PCa. RNA sequencing data and corresponding clinical data were downloaded from The Cancer Genome Atlas (TCGA) and Oncomine databases. Bioinformatics analysis was performed to identify differentially expressed genes in patients with GS=6 and GS ≥7. Cox regression models were used to determine the PCa signature (PCasig) and a clinical nomogram for the prediction of BCR. The performance of nomograms was assessed using time-dependent receiver operating characteristic curves and the concordance index (C-index). A PCasig comprising 10 genes, including SEMG2, KCNJ16, TFAP2B, SYCE1, KCNU1, AFP, GUCY1B2, GRIA4, NXPH1 and SOX11, was significantly associated with BCR, which was identified in TCGA cohort [hazard ratio (HR), 5.18; 95% CI, 3.241-8.272; C-index, 0.777] and validated in the Oncomine cohort (HR, 2.78; 95% CI, 1.39-5.54; C-index, 0.66). The expression levels of SEMG2, KCNJ16 and TFAP2B were downregulated in patients with GS ≥7. The expression levels of SYCE1, KCNU1, AFP, GUCY1B2, GRIA4, NXPH1 and SOX11 were upregulated in patients with GS ≥7. The clinical nomogram was constructed based on the GS and pathologic T stage (HR, 4.15; 95% CI, 1.39-5.54; C-index, 0.713). The addition of the PCasig to the clinical nomogram significantly improved prognostic value (HR, 7.25; 95% CI, 4.54-11.56; C-index, 0.782) with an net reclassification improvement of 75.3% (95% CI, 46.8-104.6%). Furthermore, the endogenous expression of each gene in the PCasig was measured in five PCa cell lines and in normal prostate cells, and these genes exhibited different expression levels relative to one another. In conclusion, an PCasig was identified by mining TCGA and successfully validated in an Oncomine cohort. This PCasig was an independent prognostic factor with a greater prognostic value for all patients regardless of GS than traditional clinical variables, which can improve the performance of clinical nomograms in predicting BCR of patients with GS ≥7.
前列腺癌(PCa)根治性前列腺切除术(RP)后生化复发(BCR)的时间和速度差异很大。基于TNM分期和 Gleason评分(GS)的分层方法无法识别RP后有BCR风险的患者。因此,本研究的目的是确定能够有效预测BCR风险并为PCa患者的治疗相关决策提供便利的分子特征。从癌症基因组图谱(TCGA)和Oncomine数据库下载了RNA测序数据和相应的临床数据。进行生物信息学分析以鉴定GS = 6和GS≥7患者中的差异表达基因。使用Cox回归模型确定PCa特征(PCasig)和用于预测BCR的临床列线图。使用时间依赖性受试者工作特征曲线和一致性指数(C指数)评估列线图的性能。一个由10个基因组成的PCasig,包括SEMG2、KCNJ16、TFAP2B、SYCE1、KCNU1、AFP、GUCY1B2、GRIA4、NXPH1和SOX11,与BCR显著相关,这在TCGA队列中得到鉴定[风险比(HR),5.18;95%置信区间,3.241 - 8.272;C指数,0.777],并在Oncomine队列中得到验证(HR,2.78;95%置信区间,1.39 - 5.54;C指数,0.66)。在GS≥7的患者中,SEMG2、KCNJ16和TFAP2B的表达水平下调。在GS≥7的患者中,SYCE1、KCNU1、AFP、GUCY1B2、GRIA4、NXPH1和SOX11的表达水平上调。基于GS和病理T分期构建了临床列线图(HR,4.15;95%置信区间,1.39 - 5.54;C指数,0.713)。将PCasig添加到临床列线图中显著提高了预后价值(HR,7.25;95%置信区间,4.54 - 11.56;C指数,0.782),净重新分类改善率为75.3%(95%置信区间,46.8 - 104.6%)。此外,在五种PCa细胞系和正常前列腺细胞中测量了PCasig中每个基因的内源性表达,这些基因彼此之间表现出不同的表达水平。总之,通过挖掘TCGA鉴定了一个PCasig,并在Oncomine队列中成功验证。这个PCasig是一个独立的预后因素,对于所有患者,无论GS如何,其预后价值都比传统临床变量更大,这可以提高临床列线图在预测GS≥7患者BCR方面的性能。