We develop a Bayesian semi-parametric model for the estimating the impact of dynamic treatment rules on survival among patients diagnosed with pediatric acute myeloid leukemia (AML). The data consist of a subset of patients enrolled in the phase III AAML1031 clinical trial in which patients move through a sequence of four treatment courses. At each course, they undergo treatment that may or may not include anthracyclines (ACT). While ACT is known to be effective at treating AML, it is also cardiotoxic and can lead to early death for some patients. Our task is to estimate the potential survival probability under hypothetical dynamic ACT treatment strategies, but there are several impediments. First, since ACT was not randomized in the trial, its effect on survival is confounded over time. Second, subjects initiate the next course depending on when they recover from the previous course, making timing potentially informative of subsequent treatment and survival. Third, patients may die or drop out before ever completing the full treatment sequence. We develop a generative Bayesian semi-parametric model based on Gamma Process priors to address these complexities. At each treatment course, the model captures subjects' transition to subsequent treatment or death in continuous time under a given rule. A g-computation procedure is used to compute a posterior over potential survival probability that is adjusted for time-varying confounding. Using this approach, we conduct posterior inference for the efficacy of hypothetical treatment rules that dynamically modify ACT based on evolving cardiac function.
翻译:我们开发了一种巴耶斯半参数模型,用以估计动态治疗规则对诊断患有小儿科急性肾上腺炎白血病的病人存活率的影响。数据由在第三阶段AAML1031临床试验中注册的一组病人组成,病人通过四类治疗课程的顺序流动。在每期治疗中,病人都接受可能或可能不包括炭疽杆菌(ACT)的治疗。青蒿素综合疗法在治疗AML时已知有效,但也具有心脏毒性,可能导致一些病人过早死亡。我们的任务是根据假设的动态ACT治疗战略估计潜在的存活概率,但存在一些障碍。首先,由于ACT在试验中不是随机进行,因此它对生存的影响是随着时间的推移而混杂在一起的。第二,病人开始下一个课程取决于他们从前几期恢复过来后期治疗的时间安排。第三,病人在完成整个治疗序列之前可能死亡或辍学。我们开发了一个基于Gamma进程之前的基因化巴伊斯半参数模型模型。在每次治疗过程中,根据不断变化的精确性规则,模型将实验对象用于连续的概率转换为后期治疗过程。