Cheung Ying Kuen, Inoue Lurdes Y T, Wathen J Kyle, Thall Peter F
Department of Biostatistics, Mailman School of Public Health, Columbia University, 722 West 168th Street, New York, NY 10032, USA.
Stat Med. 2006 Jan 15;25(1):55-70. doi: 10.1002/sim.2247.
In comparative clinical trials, the randomization probabilities may be unbalanced adaptively by utilizing the interim data available at each patient's entry time to favour the treatment or treatments having comparatively superior outcomes. This is ethically appealing because, on average, more patients are assigned to the more successful treatments. Consequently, physicians are more likely to enroll patients onto trials where the randomization is outcome-adaptive rather than balanced in the conventional manner. Outcome-adaptive methods based on a binary variable may be applied by reducing an event time to the indicator of the event's occurrence within a predetermined time interval. This results in a loss of information, however, since it ignores the censoring times of patients who have not experienced the event but whose evaluation interval is not complete. This paper proposes and compares exact and approximate Bayesian outcome-adaptive randomization procedures based on time-to-event outcomes. The procedures account for baseline prognostic covariates, and they may be applied continuously over the course of the trial. We illustrate these methods by application to a phase II selection trial in acute leukaemia. A simulation study in the context of this trial is presented.
在比较性临床试验中,可通过利用每位患者入组时可得的中期数据,使随机化概率适应性地不平衡,以利于具有相对更优结果的一种或多种治疗。这在伦理上颇具吸引力,因为平均而言,更多患者会被分配到更成功的治疗组。因此,医生更有可能让患者参与随机化是结果适应性而非传统方式平衡的试验。基于二元变量的结果适应性方法可通过将事件时间缩短为事件在预定时间间隔内发生的指标来应用。然而,这会导致信息丢失,因为它忽略了未经历该事件但其评估间隔尚未结束的患者的删失时间。本文提出并比较了基于事件发生时间结果的精确和近似贝叶斯结果适应性随机化程序。这些程序考虑了基线预后协变量,并且可在试验过程中持续应用。我们通过将这些方法应用于急性白血病的II期筛选试验进行说明。在此试验背景下进行了一项模拟研究。