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Estimating the Comparative Effectiveness of Feeding Interventions in the Pediatric Intensive Care Unit: A Demonstration of Longitudinal Targeted Maximum Likelihood Estimation

机译:估算儿科重症监护单位饲养干预措施的比较有效性:纵向目标最大似然估计的证明

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Longitudinal data sources offer new opportunities for the evaluation of sequential interventions. To adjust for time-dependent confounding in these settings, longitudinal targeted maximum likelihood based estimation (TMLE), a doubly robust method that can be coupled with machine learning, has been proposed. This paper provides a tutorial in applying longitudinal TMLE, in contrast to inverse probability of treatment weighting and g-computation based on iterative conditional expectations. We apply these methods to estimate the causal effect of nutritional interventions on clinical outcomes among critically ill children in a United Kingdom study (Control of Hyperglycemia in Paediatric Intensive Care, 2008-2011). We estimate the probability of a child's being discharged alive from the pediatric intensive care unit by a given day, under a range of static and dynamic feeding regimes. We find that before adjustment, patients who follow the static regime "never feed" are discharged by the end of the fifth day with a probability of 0.88 (95% confidence interval: 0.87,0.90), while for the patients who follow the regime "feed from day 3," the probability of discharge is 0.64 (95% confidence interval: 0.62, 0.66). After adjustment for time-dependent confounding, most of this difference disappears, and the statistical methods produce similar results. TMLE offers a flexible estimation approach; hence, we provide practical guidance on implementation to encourage its wider use.causal inference; epidemiologic methods; longitudinal targeted maximum likelihood estimation; machine learning; ^g>Super Learner; time-dependent confounding
机译:纵向数据来源为评估顺序干预提供了新的机会。为了在这些设置中调整时间相关的混淆,已经提出了纵向目标基于似然的估计(TMLE),这是一种可以与机器学习耦合的双重稳健的方法。本文提供了一种纵向TMLE的教程,其与基于迭代条件期望的治疗加权和G-COMPORATION的逆概率相反。我们应用这些方法来估算营养干预措施对英国批评性儿童临床结果的临床结果的因果效应(对儿科重症监护血清血糖的控制,2008-2011)。我们在一系列静态和动态喂养制度下估计儿童从儿科重症监护室排出的儿童排出的可能性。我们发现在调整之前,遵循静态制度“永不饲料”的患者在第五天结束时出院,概率为0.88(95%置信区间:0.87,0.90),而遵循政权的患者“从第3天饲料,“放电的概率为0.64(95%置信区间:0.62,0.66)。调整时间依赖的混淆后,大多数这种差异消失,统计方法产生类似的结果。 TMLE提供灵活的估计方法;因此,我们提供了实施的实际指导,以鼓励其更广泛的使用。流行病学方法;纵向目标最大可能性估计;机器学习; ^ g>超级学习者;时间依赖的混杂

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