Department of Bioinformatics and Computational Biology, The University of Texas MD Anderson Cancer Center, Houston, Texas 77230-1402, USA.
J Clin Invest. 2013 Sep;123(9):3740-50. doi: 10.1172/JCI68509. Epub 2013 Aug 15.
Patients with ovarian cancer are at high risk of tumor recurrence. Prediction of therapy outcome may provide therapeutic avenues to improve patient outcomes. Using reverse-phase protein arrays, we generated ovarian carcinoma protein expression profiles on 412 cases from TCGA and constructed a PRotein-driven index of OVARian cancer (PROVAR). PROVAR significantly discriminated an independent cohort of 226 high-grade serous ovarian carcinomas into groups of high risk and low risk of tumor recurrence as well as short-term and long-term survivors. Comparison with gene expression-based outcome classification models showed a significantly improved capacity of the protein-based PROVAR to predict tumor progression. Identification of protein markers linked to disease recurrence may yield insights into tumor biology. When combined with features known to be associated with outcome, such as BRCA mutation, PROVAR may provide clinically useful predictions of time to tumor recurrence.
卵巢癌患者有很高的肿瘤复发风险。治疗结果的预测可能为改善患者预后提供治疗途径。我们使用反相蛋白阵列,在 TCGA 中生成了 412 例卵巢癌的蛋白表达图谱,并构建了卵巢癌蛋白驱动指数(PROVAR)。PROVAR 显著区分了 226 例高级别浆液性卵巢癌的独立队列,将其分为肿瘤复发风险高和低、短期和长期存活的组。与基于基因表达的预后分类模型比较,基于蛋白质的 PROVAR 显著提高了预测肿瘤进展的能力。鉴定与疾病复发相关的蛋白标志物可能为肿瘤生物学提供新的见解。当与已知与预后相关的特征(如 BRCA 突变)结合时,PROVAR 可能为肿瘤复发时间提供临床有用的预测。