Vancouver Prostate Centre & Laboratory for Advanced Genome Analysis, Department of Urologic Sciences, University of British Columbia, Vancouver, BC, Canada.
Vancouver Prostate Centre & Laboratory for Advanced Genome Analysis, Department of Urologic Sciences, University of British Columbia, Vancouver, BC, Canada; Department of Experimental Therapeutics, BC Cancer Agency, Vancouver, BC, Canada.
Eur Urol. 2018 Apr;73(4):524-532. doi: 10.1016/j.eururo.2017.02.038. Epub 2017 Mar 19.
Clinical grading systems using clinical features alongside nomograms lack precision in guiding treatment decisions in prostate cancer (PCa). There is a critical need for identification of biomarkers that can more accurately stratify patients with primary PCa.
To identify a robust prognostic signature to better distinguish indolent from aggressive prostate cancer (PCa).
DESIGN, SETTING, AND PARTICIPANTS: To develop the signature, whole-genome and whole-transcriptome sequencing was conducted on five PCa patient-derived xenograft (PDX) models collected from independent foci of a single primary tumor and exhibiting variable metastatic phenotypes. Multiple independent clinical cohorts including an intermediate-risk cohort were used to validate the biomarkers.
The outcome measurement defining aggressive PCa was metastasis following radical prostatectomy. A generalized linear model with lasso regularization was used to build a 93-gene stroma-derived metastasis signature (SDMS). The SDMS association with metastasis was assessed using a Wilcoxon rank-sum test. Performance was evaluated using the area under the curve (AUC) for the receiver operating characteristic, and Kaplan-Meier curves. Univariable and multivariable regression models were used to compare the SDMS alongside clinicopathological variables and reported signatures. AUC was assessed to determine if SDMS is additive or synergistic to previously reported signatures.
A close association between stromal gene expression and metastatic phenotype was observed. Accordingly, the SDMS was modeled and validated in multiple independent clinical cohorts. Patients with higher SDMS scores were found to have worse prognosis. Furthermore, SDMS was an independent prognostic factor, can stratify risk in intermediate-risk PCa, and can improve the performance of other previously reported signatures.
Profiling of stromal gene expression led to development of an SDMS that was validated as independently prognostic for the metastatic potential of prostate tumors.
Our stroma-derived metastasis signature can predict the metastatic potential of early stage disease and will strengthen decisions regarding selection of active surveillance versus surgery and/or radiation therapy for prostate cancer patients. Furthermore, profiling of stroma cells should be more consistent than profiling of diverse cellular populations of heterogeneous tumors.
使用临床特征和列线图的临床分级系统在指导前列腺癌 (PCa) 的治疗决策方面缺乏准确性。因此,迫切需要确定能够更准确地区分原发性 PCa 患者的生物标志物。
确定一种稳健的预后标志物,以更好地区分惰性和侵袭性前列腺癌 (PCa)。
设计、设置和参与者:为了开发该标志物,对来自单个原发性肿瘤的不同部位的五个 PCa 患者衍生的异种移植 (PDX) 模型进行了全基因组和全转录组测序,这些模型表现出不同的转移表型。使用多个独立的临床队列(包括一个中危队列)来验证这些生物标志物。
定义侵袭性 PCa 的结果测量是根治性前列腺切除术后的转移。使用带有套索正则化的广义线性模型构建了 93 个基质衍生转移标志物 (SDMS)。使用 Wilcoxon 秩和检验评估 SDMS 与转移之间的相关性。使用接受者操作特征的曲线下面积 (AUC) 和 Kaplan-Meier 曲线来评估性能。使用单变量和多变量回归模型比较 SDMS 与临床病理变量和报告的标志物。评估 AUC 以确定 SDMS 是否对先前报道的标志物具有附加或协同作用。
观察到基质基因表达与转移表型之间存在密切关联。因此,在多个独立的临床队列中对 SDMS 进行了建模和验证。发现 SDMS 评分较高的患者预后较差。此外,SDMS 是一个独立的预后因素,可以对中危 PCa 进行风险分层,并可以提高其他先前报道的标志物的性能。
基质基因表达谱分析导致了 SDMS 的开发,该标志物已被验证为前列腺肿瘤转移潜能的独立预后因素。
我们的基质衍生转移标志物可以预测早期疾病的转移潜力,并将加强关于选择主动监测与手术和/或放疗治疗前列腺癌患者的决策。此外,与异质性肿瘤中不同细胞群体的分析相比,基质细胞的分析应该更一致。