Yuan Ying, Yin Guosheng
Department of Biostatistics-Unit 1411, The University of Texas MD Anderson Cancer Center, Houston, Texas 77230.
J Am Stat Assoc. 2011 Sep 1;106(495):818-831. doi: 10.1198/jasa.2011.ap09476.
The continual reassessment method (CRM) is a commonly used dose-finding design for phase I clinical trials. Practical applications of this method have been restricted by two limitations: (1) the requirement that the toxicity outcome needs to be observed shortly after the initiation of the treatment; and (2) the potential sensitivity to the prespecified toxicity probability at each dose. To overcome these limitations, we naturally treat the unobserved toxicity outcomes as missing data, and use the expectation-maximization (EM) algorithm to estimate the dose toxicity probabilities based on the incomplete data to direct dose assignment. To enhance the robustness of the design, we propose prespecifying multiple sets of toxicity probabilities, each set corresponding to an individual CRM model. We carry out these multiple CRMs in parallel, across which model selection and model averaging procedures are used to make more robust inference. We evaluate the operating characteristics of the proposed robust EM-CRM designs through simulation studies and show that the proposed methods satisfactorily resolve both limitations of the CRM. Besides improving the MTD selection percentage, the new designs dramatically shorten the duration of the trial, and are robust to the prespecification of the toxicity probabilities.
连续重新评估法(CRM)是I期临床试验中常用的剂量探索设计方法。该方法的实际应用受到两个限制:(1)要求在治疗开始后不久就观察到毒性结果;(2)对每个剂量预先设定的毒性概率潜在敏感。为克服这些限制,我们自然地将未观察到的毒性结果视为缺失数据,并使用期望最大化(EM)算法基于不完整数据估计剂量毒性概率以指导剂量分配。为提高设计的稳健性,我们提议预先设定多组毒性概率,每组对应一个单独的CRM模型。我们并行执行这些多个CRM,通过模型选择和模型平均程序进行更稳健的推断。我们通过模拟研究评估所提出的稳健EM-CRM设计的操作特性,结果表明所提出的方法令人满意地解决了CRM的两个限制。除提高最大耐受剂量(MTD)选择百分比外,新设计显著缩短了试验持续时间,并且对毒性概率的预先设定具有稳健性。