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Propensity score matching and complex surveys

机译:倾向得分匹配和复杂的调查

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Researchers are increasingly using complex population-based sample surveys to estimate the effects of treatments, exposures and interventions. In such analyses, statistical methods are essential to minimize the effect of confounding due to measured covariates, as treated subjects frequently differ from control subjects. Methods based on the propensity score are increasingly popular. Minimal research has been conducted on how to implement propensity score matching when using data from complex sample surveys. We used Monte Carlo simulations to examine two critical issues when implementing propensity score matching with such data. First, we examined how the propensity score model should be formulated. We considered three different formulations depending on whether or not a weighted regression model was used to estimate the propensity score and whether or not the survey weights were included in the propensity score model as an additional covariate. Second, we examined whether matched control subjects should retain their natural survey weight or whether they should inherit the survey weight of the treated subject to which they were matched. Our results were inconclusive with respect to which method of estimating the propensity score model was preferable. In general, greater balance in measured baseline covariates and decreased bias was observed when natural retained weights were used compared to when inherited weights were used. We also demonstrated that bootstrap-based methods performed well for estimating the variance of treatment effects when outcomes are binary. We illustrated the application of our methods by using the Canadian Community Health Survey to estimate the effect of educational attainment on lifetime prevalence of mood or anxiety disorders.
机译:研究人员越来越多地利用基于复杂的人口的样本调查来估计治疗,暴露和干预的影响。在这种分析中,统计方法对于最小化由于测量的协变量而最小化混淆的效果是必要的,因为处理的受试者经常与对照受试者不同。基于倾向得分的方法越来越受欢迎。在从复杂样本调查中使用数据时,如何实现最小的研究。我们使用Monte Carlo模拟来实现与此类数据匹配的倾向分数时检查两个关键问题。首先,我们检查了如何制定倾向分数模型。我们考虑了三种不同的配方,这取决于加权回归模型是否用于估计倾向评分以及调查权重是否包含在倾向评分模型中作为额外的协变量。其次,我们检查了匹配的控制受试者是否应保留其自然调查重量或者是否应该继承它们与其匹配的治疗受试者的调查权重。我们的结果对于估算倾向评分模型的估计方法是不确定的。通常,当使用使用遗传重量时使用自然保留的重量时,观察到测量的基线协变量和偏差下降的更大平衡。我们还证明了基于引导基于的方法,用于估算结果时的治疗效果的变化。我们通过使用加拿大社区卫生调查来估算教育程度患病率或焦虑症寿命患病率的影响,我们说明了我们的方法。

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