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Inference about the expected performance of a data-driven dynamic treatment regime

机译:关于数据驱动的动态治疗方案的预期性能的推断

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Background A dynamic treatment regime (DTR) comprises a sequence of decision rules, one per stage of intervention, that recommends how to individualize treatment to patients based on evolving treatment and covariate history. These regimes are useful for managing chronic disorders, and fit into the larger paradigm of personalized medicine. The Value of a DTR is the expected outcome when the DTR is used to assign treatments to a population of interest. Purpose The Value of a data-driven DTR, estimated using data from a Sequential Multiple Assignment Randomized Trial, is both a data-dependent parameter and a non-smooth function of the underlying generative distribution. These features introduce additional variability that is not accounted for by standard methods for conducting statistical inference, for example, the bootstrap or normal approximations, if applied without adjustment. Our purpose is to provide a feasible method for constructing valid confidence intervals (CIs) for this quantity of practical interest. Methods We propose a conceptually simple and computationally feasible method for constructing valid CIs for the Value of an estimated DTR based on subsampling. The method is self-tuning by virtue of an approach called the double bootstrap. We demonstrate the proposed method using a series of simulated experiments. Results The proposed method offers considerable improvement in terms of coverage rates of the CIs over the standard bootstrap approach. Limitations In this article, we have restricted our attention to Q-learning for estimating the optimal DTR. However, other methods can be employed for this purpose; to keep the discussion focused, we have not explored these alternatives. Conclusion Subsampling-based CIs provide much better performance compared to standard bootstrap for the Value of an estimated DTR.
机译:背景动态治疗方案(DTR)包括一系列决策规则,每个干预阶段一个,建议如何根据不断发展的治疗方法和协变量历史对患者进行个体化治疗。这些方案可用于管理慢性疾病,并适合个性化医学的更大范式。当DTR用于将治疗分配给目标人群时,DTR的价值是预期的结果。目的使用顺序多分配随机试验的数据估算的数据驱动DTR的值既是数据相关参数,又是基础生成分布的非平滑函数。这些功能会引入额外的可变性,如果不进行调整,这些可变性是进行统计推断的标准方法无法解释的,例如,自举或正态近似。我们的目的是提供一种可行的方法,以构造针对此实际兴趣量的有效置信区间(CI)。方法我们提出了一种概念上简单且在计算上可行的方法,用于基于子采样为估计DTR的值构造有效的配置项。该方法借助称为双引导程序的方法进行自我调整。我们使用一系列模拟实验演示了该方法。结果与标准的自举方法相比,所提出的方法在CI的覆盖率方面提供了可观的改进。局限性在本文中,我们将注意力集中在Q学习上,以估计最佳DTR。但是,可以为此目的采用其他方法。为了使讨论更加集中,我们没有探索这些替代方案。结论对于估计DTR的值,与基于标准引导程序相比,基于采样的配置项提供了更好的性能。

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