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首页> 外文期刊>Statistics in medicine >Moving towards best practice when using inverse probability of treatment weighting (IPTW) using the propensity score to estimate causal treatment effects in observational studies
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Moving towards best practice when using inverse probability of treatment weighting (IPTW) using the propensity score to estimate causal treatment effects in observational studies

机译:当使用倾向评分来估计观察性研究中的因果治疗效果时,使用治疗加权的逆概率(IPTW)走向最佳实践

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摘要

The propensity score is defined as a subject's probability of treatment selection, conditional on observed baseline covariates. Weighting subjects by the inverse probability of treatment received creates a synthetic sample in which treatment assignment is independent of measured baseline covariates. Inverse probability of treatment weighting (IPTW) using the propensity score allows one to obtain unbiased estimates of average treatment effects. However, these estimates are only valid if there are no residual systematic differences in observed baseline characteristics between treated and control subjects in the sample weighted by the estimated inverse probability of treatment. We report on a systematic literature review, in which we found that the use of IPTW has increased rapidly in recent years, but that in the most recent year, a majority of studies did not formally examine whether weighting balanced measured covariates between treatment groups. We then proceed to describe a suite of quantitative and qualitative methods that allow one to assess whether measured baseline covariates are balanced between treatment groups in the weighted sample. The quantitative methods use the weighted standardized difference to compare means, prevalences, higher-order moments, and interactions. The qualitative methods employ graphical methods to compare the distribution of continuous baseline covariates between treated and control subjects in the weighted sample. Finally, we illustrate the application of these methods in an empirical case study. We propose a formal set of balance diagnostics that contribute towards an evolving concept of best practice' when using IPTW to estimate causal treatment effects using observational data. (c) 2015 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd.
机译:倾向评分定义为受试者选择治疗的概率,取决于观察到的基线协变量。通过接收到的治疗的逆概率对受试者进行加权可以创建一个合成样本,其中治疗分配与测量的基线协变量无关。使用倾向评分的治疗加权加权概率(IPTW)可以使​​人们获得平均治疗效果的无偏估计。但是,只有在通过估计的治疗逆概率加权的样本中,治疗受试者和对照受试者之间观察到的基线特征没有残留的系统差异时,这些估计才有效。我们报告了系统的文献综述,其中发现IPTW的使用在最近几年迅速增加,但是在最近的一年中,大多数研究并未正式检查各治疗组之间加权衡量的协变量是否加权。然后,我们着手描述一套定量和定性方法,使人们能够评估加权样本中各治疗组之间测量的基线协变量是否平衡。定量方法使用加权标准差来比较均值,患病率,高阶矩和相互作用。定性方法采用图形方法来比较加权样本中被治疗者和对照者之间连续基线协变量的分布。最后,我们说明了这些方法在经验案例研究中的应用。我们提出一套正式的平衡诊断方法,当使用IPTW通过观察数据估算因果治疗效果时,有助于建立最佳实践概念。 (c)2015作者。 John Wiley&Sons Ltd.发布的医学统计资料。

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