Lei Xiudong, Yuan Ying, Yin Guosheng
Department of Biostatistics, Unit 1411, The University of Texas M. D. Anderson Cancer Center, Houston, TX 77230, USA.
Lifetime Data Anal. 2011 Jan;17(1):156-74. doi: 10.1007/s10985-010-9163-z. Epub 2010 Apr 3.
In oncology, toxicity is typically observable shortly after a chemotherapy treatment, whereas efficacy, often characterized by tumor shrinkage, is observable after a relatively long period of time. In a phase II clinical trial design, we propose a Bayesian adaptive randomization procedure that accounts for both efficacy and toxicity outcomes. We model efficacy as a time-to-event endpoint and toxicity as a binary endpoint, sharing common random effects in order to induce dependence between the bivariate outcomes. More generally, we allow the randomization probability to depend on patients' specific covariates, such as prognostic factors. Early stopping boundaries are constructed for toxicity and futility, and a superior treatment arm is recommended at the end of the trial. Following the setup of a recent renal cancer clinical trial at M. D. Anderson Cancer Center, we conduct extensive simulation studies under various scenarios to investigate the performance of the proposed method, and compare it with available Bayesian adaptive randomization procedures.
在肿瘤学中,化疗治疗后不久通常就能观察到毒性,而疗效通常以肿瘤缩小为特征,需要在相对较长的一段时间后才能观察到。在一项II期临床试验设计中,我们提出了一种贝叶斯适应性随机化程序,该程序同时考虑了疗效和毒性结果。我们将疗效建模为事件发生时间终点,将毒性建模为二元终点,共享共同的随机效应以诱导双变量结果之间的依赖性。更一般地,我们允许随机化概率取决于患者的特定协变量,例如预后因素。为毒性和无效性构建了早期停止边界,并在试验结束时推荐一个更优的治疗组。按照MD安德森癌症中心最近一项肾癌临床试验的设置,我们在各种情况下进行了广泛的模拟研究,以研究所提出方法的性能,并将其与现有的贝叶斯适应性随机化程序进行比较。