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An Application of Targeted Maximum Likelihood Estimation to the Met a-Analysis of Safety Data

机译:目标最大似然估计在安全数据气象分析中的应用

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摘要

Safety analysis to estimate the effect of a treatment on an adverse event poses a challenging statistical problem even in randomized controlled trials because these events are typically rare, so studies originally powered for efficacy are underpowered for safety outcomes. A meta-analysis of data pooled across multiple studies may increase power, but missingness in the outcome or failed randomization can introduce bias. This article illustrates how targeted maximum likelihood estimation (TMLE) can be applied in a meta-analysis to reduce bias in causal effect estimates, and compares performance with other estimators in the literature. A simulation study in which missingness in the outcome is at random or completely at random highlights the differences in estimators with respect to the potential gains in bias and efficiency. Risk difference, relative risk, and odds ratio of the effect of treatment on 30-day mortality are estimated from data from eight randomized controlled trials. When an outcome event is rare there may be little opportunity to improve efficiency, and associations between covariates and the outcome may be hard to detect. TMLBr attempts to exploit the available information to either meet or exceed the performance of a less sophisticated estimator.
机译:即使在随机对照试验中,用于评估治疗对不良事件影响的安全性分析也带来了具有挑战性的统计问题,因为这些事件通常很少见,因此原本具有疗效的研究对于安全性结果的支持不足。对跨多个研究汇总的数据进行荟萃分析可能会提高功效,但结果缺失或随机分组失败可能会带来偏差。本文说明了如何将有针对性的最大似然估计(TMLE)应用于荟萃分析中,以减少因果效应估计中的偏差,并将性能与文献中的其他估计量进行比较。一项结果随机或完全随机缺失的模拟研究突显了估计量在偏见和效率方面的潜在差异。风险差异,相对风险和治疗对30天死亡率的影响的比值比来自八项随机对照试验的数据。当结果事件很少发生时,可能几乎没有机会提高效率,并且协变量和结果之间的关联可能很难检测。 TMLBr尝试利用可用信息来达到或超过较不复杂的估算器的性能。

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