British Columbia's Gynecological Cancer Research Program (OVCARE), BC Cancer, Vancouver General Hospital, and University of British Columbia, Vancouver, British Columbia, Canada.
University of British Columbia, Department of Obstetrics and Gynecology, Vancouver, British Columbia, Canada.
Clin Cancer Res. 2020 Oct 15;26(20):5411-5423. doi: 10.1158/1078-0432.CCR-20-0103. Epub 2020 Jun 17.
Gene expression-based molecular subtypes of high-grade serous tubo-ovarian cancer (HGSOC), demonstrated across multiple studies, may provide improved stratification for molecularly targeted trials. However, evaluation of clinical utility has been hindered by nonstandardized methods, which are not applicable in a clinical setting. We sought to generate a clinical grade minimal gene set assay for classification of individual tumor specimens into HGSOC subtypes and confirm previously reported subtype-associated features.
Adopting two independent approaches, we derived and internally validated algorithms for subtype prediction using published gene expression data from 1,650 tumors. We applied resulting models to NanoString data on 3,829 HGSOCs from the Ovarian Tumor Tissue Analysis consortium. We further developed, confirmed, and validated a reduced, minimal gene set predictor, with methods suitable for a single-patient setting.
Gene expression data were used to derive the predictor of high-grade serous ovarian carcinoma molecular subtype (PrOTYPE) assay. We established a standard as a consensus of two parallel approaches. PrOTYPE subtypes are significantly associated with age, stage, residual disease, tumor-infiltrating lymphocytes, and outcome. The locked-down clinical grade PrOTYPE test includes a model with 55 genes that predicted gene expression subtype with >95% accuracy that was maintained in all analytic and biological validations.
We validated the PrOTYPE assay following the Institute of Medicine guidelines for the development of omics-based tests. This fully defined and locked-down clinical grade assay will enable trial design with molecular subtype stratification and allow for objective assessment of the predictive value of HGSOC molecular subtypes in precision medicine applications..
基于基因表达的高级别浆液性卵巢癌(HGSOC)分子亚型已在多项研究中得到证实,这可能为分子靶向试验提供更好的分层。然而,由于方法不标准化,评估其临床实用性受到了阻碍,这些方法不适用于临床环境。我们试图生成一种临床级最小基因集检测,用于将个体肿瘤标本分类为 HGSOC 亚型,并确认先前报道的与亚型相关的特征。
我们采用两种独立的方法,利用已发表的 1650 个肿瘤的基因表达数据,对亚型预测算法进行推导和内部验证。我们将得到的模型应用于卵巢肿瘤组织分析联盟的 3829 个 HGSOC 的 NanoString 数据。我们进一步开发、验证和验证了一种简化的最小基因集预测器,其方法适用于单个患者的情况。
基因表达数据用于推导高级别浆液性卵巢癌分子亚型预测器(PrOTYPE)检测。我们建立了一个标准,作为两种平行方法的共识。PrOTYPE 亚型与年龄、分期、残留疾病、肿瘤浸润淋巴细胞和结局显著相关。经过锁定的临床级 PrOTYPE 测试包括一个包含 55 个基因的模型,该模型以 >95%的准确度预测基因表达亚型,在所有分析和生物学验证中都得到了维持。
我们按照医学研究所制定的基于组学测试的开发指南验证了 PrOTYPE 检测。这种完全定义和锁定的临床级检测将能够进行具有分子亚型分层的试验设计,并允许客观评估 HGSOC 分子亚型在精准医学应用中的预测价值。