Princess Margaret Cancer Centre, Toronto, Ontario, Canada.
City University of New York School of Public Health, New York, New York.
Clin Cancer Res. 2018 Oct 15;24(20):5037-5047. doi: 10.1158/1078-0432.CCR-18-0784. Epub 2018 Jul 3.
The majority of ovarian carcinomas are of high-grade serous histology, which is associated with poor prognosis. Surgery and chemotherapy are the mainstay of treatment, and molecular characterization is necessary to lead the way to targeted therapeutic options. To this end, various computational methods for gene expression-based subtyping of high-grade serous ovarian carcinoma (HGSOC) have been proposed, but their overlap and robustness remain unknown. We assess three major subtype classifiers by meta-analysis of publicly available expression data, and assess statistical criteria of subtype robustness and classifier concordance. We develop a consensus classifier that represents the subtype classifications of tumors based on the consensus of multiple methods, and outputs a confidence score. Using our compendium of expression data, we examine the possibility that a subset of tumors is unclassifiable based on currently proposed subtypes. HGSOC subtyping classifiers exhibit moderate pairwise concordance across our data compendium (58.9%-70.9%; < 10) and are associated with overall survival in a meta-analysis across datasets ( < 10). Current subtypes do not meet statistical criteria for robustness to reclustering across multiple datasets (prediction strength < 0.6). A new subtype classifier is trained on concordantly classified samples to yield a consensus classification of patient tumors that correlates with patient age, survival, tumor purity, and lymphocyte infiltration. A new consensus ovarian subtype classifier represents the consensus of methods and demonstrates the importance of classification approaches for cancer that do not require all tumors to be assigned to a distinct subtype. .
大多数卵巢癌为高级别浆液性组织学,其预后不良。手术和化疗是治疗的主要手段,分子特征分析对于寻找靶向治疗方法是必要的。为此,已经提出了多种基于基因表达的高级别浆液性卵巢癌(HGSOC)亚型分类的计算方法,但它们的重叠和稳健性仍不清楚。我们通过对公开表达数据的荟萃分析来评估三种主要的亚型分类器,并评估亚型稳健性和分类器一致性的统计标准。我们开发了一种共识分类器,该分类器基于多种方法的共识来表示肿瘤的亚型分类,并输出置信度得分。使用我们的表达数据汇编,我们研究了基于当前提出的亚型,某些肿瘤是否无法分类的可能性。HGSOC 亚型分类器在我们的数据汇编中表现出中等程度的两两一致性(58.9%-70.9%;<10),并且在跨数据集的荟萃分析中与总体生存率相关(<10)。当前的亚型不符合在多个数据集上重新聚类的稳健性统计标准(预测强度<0.6)。在一致分类的样本上训练新的亚型分类器,以生成患者肿瘤的共识分类,该分类与患者年龄、生存、肿瘤纯度和淋巴细胞浸润相关。新的共识卵巢亚型分类器代表了方法的共识,并证明了对于不需要将所有肿瘤分配到特定亚型的癌症,分类方法的重要性。