Xu Yanxun, Müller Peter, Wahed Abdus S, Thall Peter F
Division of Statistics and Scientific Computing, The University of Texas at Austin, Austin, TX.
Department of Mathematics, The University of Texas at Austin, Austin, TX.
J Am Stat Assoc. 2016;111(515):921-935. doi: 10.1080/01621459.2015.1086353. Epub 2016 Oct 18.
We analyze a dataset arising from a clinical trial involving multi-stage chemotherapy regimes for acute leukemia. The trial design was a 2 × 2 factorial for frontline therapies only. Motivated by the idea that subsequent salvage treatments affect survival time, we model therapy as a dynamic treatment regime (DTR), that is, an alternating sequence of adaptive treatments or other actions and transition times between disease states. These sequences may vary substantially between patients, depending on how the regime plays out. To evaluate the regimes, mean overall survival time is expressed as a weighted average of the means of all possible sums of successive transitions times. We assume a Bayesian nonparametric survival regression model for each transition time, with a dependent Dirichlet process prior and Gaussian process base measure (DDP-GP). Posterior simulation is implemented by Markov chain Monte Carlo (MCMC) sampling. We provide general guidelines for constructing a prior using empirical Bayes methods. The proposed approach is compared with inverse probability of treatment weighting, including a doubly robust augmented version of this approach, for both single-stage and multi-stage regimes with treatment assignment depending on baseline covariates. The simulations show that the proposed nonparametric Bayesian approach can substantially improve inference compared to existing methods. An R program for implementing the DDP-GP-based Bayesian nonparametric analysis is freely available at https://www.ma.utexas.edu/users/yxu/.
我们分析了一个来自涉及急性白血病多阶段化疗方案的临床试验的数据集。该试验设计仅针对一线治疗采用2×2析因设计。受后续挽救治疗会影响生存时间这一观点的启发,我们将治疗建模为动态治疗方案(DTR),即一系列交替的适应性治疗或其他行动以及疾病状态之间的过渡时间。这些序列在患者之间可能有很大差异,这取决于治疗方案的实施情况。为了评估这些方案,平均总生存时间表示为所有可能的连续过渡时间总和的均值的加权平均值。我们为每个过渡时间假设一个贝叶斯非参数生存回归模型,具有相依狄利克雷过程先验和高斯过程基测度(DDP - GP)。后验模拟通过马尔可夫链蒙特卡罗(MCMC)抽样实现。我们提供了使用经验贝叶斯方法构建先验的一般指南。对于治疗分配取决于基线协变量的单阶段和多阶段方案,将所提出的方法与治疗权重的逆概率方法(包括该方法的双稳健增强版本)进行了比较。模拟结果表明,与现有方法相比,所提出的非参数贝叶斯方法可以显著改善推断。可在https://www.ma.utexas.edu/users/yxu/免费获取用于实现基于DDP - GP的贝叶斯非参数分析的R程序。