Carlin B P, Kadane J B, Gelfand A E
Division of Biostatistics, School of Public Health, University of Minnesota, Minneapolis 55455, USA.
Biometrics. 1998 Sep;54(3):964-75.
Unlike traditional approaches, Bayesian methods enable formal combination of expert opinion and objective information into interim and final analyses of clinical trial data. However, most previous Bayesian approaches have based the stopping decision on the posterior probability content of one or more regions of the parameter space, thus implicitly determining a loss and decision structure. In this paper, we offer a fully Bayesian approach to this problem, specifying not only the likelihood and prior distributions but appropriate loss functions as well. At each data monitoring point, we enumerate the available decisions and investigate the use of backward induction, implemented via Monte Carlo methods, to choose the optimal course of action. We then present a forward sampling algorithm that substantially eases the analytic and computational burdens associated with backward induction, offering the possibility of fully Bayesian optimal sequential monitoring for previously untenable numbers of interim looks. We show that forward sampling can always identify the optimal sequential strategy in the case of a one-parameter exponential family with a conjugate prior and monotone loss functions as well as the best member of a certain class of strategies when backward induction is infeasible. Finally, we illustrate and compare the forward and backward approaches using data from a recent AIDS clinical trial.
与传统方法不同,贝叶斯方法能够将专家意见和客观信息正式整合到临床试验数据的中期分析和最终分析中。然而,大多数先前的贝叶斯方法都是基于参数空间一个或多个区域的后验概率内容来做出停止决策,从而隐含地确定了损失和决策结构。在本文中,我们针对这个问题提供了一种完全贝叶斯方法,不仅指定了似然分布和先验分布,还指定了合适的损失函数。在每个数据监测点,我们列举可用的决策,并研究通过蒙特卡罗方法实现的反向归纳法的使用,以选择最优行动方案。然后,我们提出一种前向抽样算法,该算法大大减轻了与反向归纳法相关的分析和计算负担,为以前难以实现的多个中期观察次数提供了完全贝叶斯最优序贯监测的可能性。我们表明,在前向抽样在具有共轭先验和单调损失函数的单参数指数族情况下总能识别出最优序贯策略,并且在反向归纳法不可行时能识别出某类策略中的最佳策略。最后,我们使用最近一项艾滋病临床试验的数据来说明和比较前向和反向方法。