首页> 外文期刊>American Journal of Epidemiology >Propensity Score Methods for Analyzing Observational Data Like Randomized Experiments: Challenges and Solutions for Rare Outcomes and Exposures
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Propensity Score Methods for Analyzing Observational Data Like Randomized Experiments: Challenges and Solutions for Rare Outcomes and Exposures

机译:倾向得分方法,用于分析观测数据(如随机实验):稀有成果和暴露的挑战和解决方案

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Randomized controlled trials are the "gold standard" for estimating the causal effects of treatments. However, it is often not feasible to conduct such a trial because of ethical concerns or budgetary constraints. We expand upon an approach to the analysis of observational data sets that mimics a sequence of randomized studies by implementing propensity score models within each trial to achieve covariate balance, using weighting and matching. The methods are illustrated using data from a safety study of the relationship between second-generation antipsychotics and type 2 diabetes (outcome) in Medicaid-insured children aged 10-18 years across the United States from 2003 to 2007. Challenges in this data set include a rare outcome, a rare exposure, substantial and important differences between exposure groups, and a very large sample size.
机译:随机对照试验是评估治疗因果关系的“黄金标准”。但是,由于道德方面的考虑或预算限制,进行这样的试验通常是不可行的。我们扩展了一种对观察数据集进行分析的方法,该方法通过使用加权和匹配在每个试验中实施倾向评分模型来实现协变量平衡,从而模拟了一系列随机研究。使用2003年至2007年全美10岁至18岁医疗保险参保儿童中第二代抗精神病药与2型糖尿病(结果)之间关系的安全性研究数据说明了这些方法。该数据集中的挑战包括罕见的结果,罕见的暴露,暴露组之间的实质性和重要差异以及非常大的样本量。

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