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Estimating Optimal Dynamic Regimes: Correcting Bias under the Null

机译:估计最佳动态体制:纠正零下的偏差

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A dynamic regime provides a sequence of treatments that are tailored to patient-specific characteristics and outcomes. In 2004, James Robins proposed g-estimation using structural nested mean models (SNMMs) for making inference about the optimal dynamic regime in a multi-interval trial. The method provides clear advantages over traditional parametric approaches. Robins' g-estimation method always yields consistent estimators, but these can be asymptotically biased under a given SNMM for certain longitudinal distributions of the treatments and covariates, termed exceptional laws. In fact, under the null hypothesis of no treatment effect, every distribution constitutes an exceptional law under SNMMs which allow for interaction of current treatment with past treatments or covariates. This paper provides an explanation of exceptional laws and describes a new approach to g-estimation which we call Zeroing Instead of Plugging In (ZIPI). ZIPI provides nearly identical estimators to recursive g-estimators at non-exceptional laws while providing substantial reduction in the bias at an exceptional law when decision rule parameters are not shared across intervals.
机译:动态方案提供了一系列针对患者特定特征和结果的治疗方案。 2004年,詹姆斯·罗宾斯(James Robins)提出使用结构嵌套均值模型(SNMM)进行g估计,以便在多时间间隔试验中推断出最佳动态方案。与传统的参数方法相比,该方法具有明显的优势。 Robins的g估计方法始终会产生一致的估计量,但是对于给定的SNMM,对于处理和协变量的某些纵向分布,这些估计量会渐近偏置,这被称为例外定律。实际上,在没有治疗效果的零假设下,每个分布都构成了SNMMs下的例外定律,该定律允许当前治疗与过去治疗或协变量相互作用。本文提供了例外定律的解释,并描述了一种新的g估计方法,我们称其为“调零而不是插入”(ZIPI)。在非例外定律上,ZIPI提供与递归g估计量几乎相同的估计量,而当决策规则参数未在区间间共享时,则大大减少了例外法上的偏差。

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