Yu Kun-Hsing, Levine Douglas A, Zhang Hui, Chan Daniel W, Zhang Zhen, Snyder Michael
Department of Surgery, Memorial Sloan Kettering Cancer Center , New York, New York 10065, United States.
Department of Pathology, Johns Hopkins Medical Institutions , Baltimore, Maryland 21287, United States.
J Proteome Res. 2016 Aug 5;15(8):2455-65. doi: 10.1021/acs.jproteome.5b01129. Epub 2016 Jul 8.
Ovarian cancer is the deadliest gynecologic malignancy in the United States with most patients diagnosed in the advanced stage of the disease. Platinum-based antineoplastic therapeutics is indispensable to treating advanced ovarian serous carcinoma. However, patients have heterogeneous responses to platinum drugs, and it is difficult to predict these interindividual differences before administering medication. In this study, we investigated the tumor proteomic profiles and clinical characteristics of 130 ovarian serous carcinoma patients analyzed by the Clinical Proteomic Tumor Analysis Consortium (CPTAC), predicted the platinum drug response using supervised machine learning methods, and evaluated our prediction models through leave-one-out cross-validation. Our data-driven feature selection approach indicated that tumor proteomics profiles contain information for predicting binarized platinum response (P < 0.0001). We further built a least absolute shrinkage and selection operator (LASSO)-Cox proportional hazards model that stratified patients into early relapse and late relapse groups (P = 0.00013). The top proteomic features indicative of platinum response were involved in ATP synthesis pathways and Ran GTPase binding. Overall, we demonstrated that proteomic profiles of ovarian serous carcinoma patients predicted platinum drug responses as well as provided insights into the biological processes influencing the efficacy of platinum-based therapeutics. Our analytical approach is also extensible to predicting response to other antineoplastic agents or treatment modalities for both ovarian and other cancers.
卵巢癌是美国最致命的妇科恶性肿瘤,大多数患者在疾病晚期被诊断出来。铂类抗肿瘤药物对于治疗晚期卵巢浆液性癌必不可少。然而,患者对铂类药物的反应存在异质性,在给药前很难预测这些个体差异。在本研究中,我们调查了由临床蛋白质组肿瘤分析联盟(CPTAC)分析的130例卵巢浆液性癌患者的肿瘤蛋白质组图谱和临床特征,使用监督机器学习方法预测铂类药物反应,并通过留一法交叉验证评估我们的预测模型。我们的数据驱动特征选择方法表明,肿瘤蛋白质组图谱包含预测二分类铂反应的信息(P < 0.0001)。我们进一步构建了一个最小绝对收缩和选择算子(LASSO)-Cox比例风险模型,将患者分为早期复发组和晚期复发组(P = 0.00013)。指示铂反应的顶级蛋白质组特征涉及ATP合成途径和Ran GTP酶结合。总体而言,我们证明了卵巢浆液性癌患者的蛋白质组图谱可以预测铂类药物反应,并为影响铂类治疗疗效的生物学过程提供了见解。我们的分析方法也可扩展到预测卵巢癌和其他癌症对其他抗肿瘤药物或治疗方式的反应。