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生成单臂前列腺癌辅助试验的“虚拟”对照组。

Generation of "virtual" control groups for single arm prostate cancer adjuvant trials.

机构信息

Department of Statistics, University of Akron, Akron, Ohio, United States of America ; Guizhou Provincial Key Laboratory of Computational Nano-Material Science, Guizhou Normal College, Guiyang, China ; Department of Family and Community Medicine, Northeast Ohio Medical University, Rootstown, Ohio, United States of America.

Division of Hematology-Oncology, Medical University of South Carolina, Charleston, South Carolina, United States of America.

出版信息

PLoS One. 2014 Jan 21;9(1):e85010. doi: 10.1371/journal.pone.0085010. eCollection 2014.

Abstract

It is difficult to construct a control group for trials of adjuvant therapy (Rx) of prostate cancer after radical prostatectomy (RP) due to ethical issues and patient acceptance. We utilized 8 curve-fitting models to estimate the time to 60%, 65%, … 95% chance of progression free survival (PFS) based on the data derived from Kattan post-RP nomogram. The 8 models were systematically applied to a training set of 153 post-RP cases without adjuvant Rx to develop 8 subsets of cases (reference case sets) whose observed PFS times were most accurately predicted by each model. To prepare a virtual control group for a single-arm adjuvant Rx trial, we first select the optimal model for the trial cases based on the minimum weighted Euclidean distance between the trial case set and the reference case set in terms of clinical features, and then compare the virtual PFS times calculated by the optimum model with the observed PFSs of the trial cases by the logrank test. The method was validated using an independent dataset of 155 post-RP patients without adjuvant Rx. We then applied the method to patients on a Phase II trial of adjuvant chemo-hormonal Rx post RP, which indicated that the adjuvant Rx is highly effective in prolonging PFS after RP in patients at high risk for prostate cancer recurrence. The method can accurately generate control groups for single-arm, post-RP adjuvant Rx trials for prostate cancer, facilitating development of new therapeutic strategies.

摘要

由于伦理问题和患者接受度的原因,对于根治性前列腺切除术(RP)后辅助治疗(Rx)的临床试验,构建对照组非常困难。我们利用 8 种曲线拟合模型,根据 Kattan 术后 RP 列线图的数据,估算无辅助 Rx 的 153 例 RP 后患者达到 60%、65%、…95%无进展生存(PFS)概率的时间。8 种模型被系统地应用于一个没有接受辅助 Rx 的 153 例 RP 后病例的训练集,以建立 8 个病例子集(参考病例集),这些子集的观察性 PFS 时间由每个模型最准确地预测。为了为单臂辅助 Rx 试验准备虚拟对照组,我们首先根据临床试验病例集和参考病例集之间基于临床特征的最小加权欧几里得距离,为试验病例选择最佳模型,然后通过对数秩检验比较最优模型计算的虚拟 PFS 时间与试验病例的观察 PFS。该方法使用无辅助 Rx 的 155 例 RP 后患者的独立数据集进行了验证。然后,我们将该方法应用于接受 RP 后辅助化疗-激素 Rx 的 II 期临床试验患者,结果表明,在前列腺癌复发风险较高的患者中,辅助 Rx 可显著延长 RP 后的 PFS。该方法可准确为前列腺癌 RP 后单臂辅助 Rx 试验生成对照组,有助于开发新的治疗策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bfee/3897405/da882e094fc0/pone.0085010.g001.jpg

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