医学
前列腺切除术
生化复发
前列腺癌
队列
肿瘤科
内科学
累积发病率
临床终点
前列腺特异性抗原
接收机工作特性
辅助治疗
比例危险模型
癌症
临床试验
作者
Ashley E. Ross,Michael H. Johnson,Kasra Yousefi,Elai Davicioni,George J. Netto,Luigi Marchionni,Helen Fedor,Stephanie Glavaris,Voleak Choeurng,Christine Buerki,Nicholas Erho,Lucia L.C. Lam,Elizabeth B. Humphreys,Sheila F. Faraj,Stephania Martins Bezerra,Misop Han,Alan W. Partin,Bruce J. Trock,Edward M. Schaeffer
标识
DOI:10.1016/j.eururo.2015.05.042
摘要
Abstract Background Radical prostatectomy (RP) is a primary treatment option for men with intermediate- and high-risk prostate cancer. Although many are effectively cured with local therapy alone, these men are by definition at higher risk of adverse pathologic features and clinical disease recurrence. It has been shown that the Decipher test predicts metastatic progression in cohorts that received adjuvant and salvage therapy following RP. Objective To evaluate the Decipher genomic classifier in a natural history cohort of men at risk who received no additional treatment until the time of metastatic progression. Design, setting, and participants Retrospective case-cohort design for 356 men who underwent RP between 1992 and 2010 at intermediate or high risk and received no additional treatment until the time of metastasis. Participants met the following criteria: (1) Cancer of the Prostate Risk Assessment postsurgical (CAPRA-S) score ≥3; (2) pathologic Gleason score ≥7; and (3) post-RP prostate-specific antigen nadir Outcome measurements and statistical analysis The primary endpoint was defined as regional or distant metastases. Time-dependent receiver operating characteristic (ROC) curves, extension of decision curve analysis to survival data, and univariable and multivariable Cox proportional-hazards models were used to measure the discrimination, net benefit, and prognostic potential of genomic and pathologic risk factors. Cumulative incidence curves were constructed using Fine-Gray competing-risks analysis with appropriate weighting of the controls to account for the case-cohort study design. Results and limitations Ninety six patients had unavailable tumor blocks or failed microarray quality control. Decipher scores were then obtained for 260 patients, of whom 99 experienced metastasis. Decipher correlated with increased cumulative incidence of biochemical recurrence, metastasis, and prostate cancer–specific mortality ( p p c -index of 0.76 and increased the c -index of Eggener and CAPRA-S risk models from 0.76 and 0.77 to 0.86 and 0.87, respectively, at 10 yr after RP. Although the cohort was large, the single-center retrospective design is an important limitation. Conclusions In a patient population that received no adjuvant or salvage therapy after prostatectomy until metastatic progression, higher Decipher scores correlated with clinical events, and inclusion of Decipher scores improved the prognostic performance of validated clinicopathologic risk models. These results confirm the utility already reported for Decipher. Patient summary The Decipher test improves identification of patients most at risk of metastatic progression and death from prostate cancer after radical prostatectomy.
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