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Plasmode simulation for the evaluation of pharmacoepidemiologic methods in complex healthcare databases

机译:等离子模拟在复杂医疗数据库中评估药物流行病学方法

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Longitudinal healthcare claim databases are frequently used for studying the comparative safety and effectiveness of medications, but results from these studies may be biased due to residual confounding. It is unclear whether methods for confounding adjustment that have been shown to perform well in small, simple nonrandomized studies are applicable to the large, complex pharmacoepidemiologic studies created from secondary healthcare data. Ordinary simulation approaches for evaluating the performance of statistical methods do not capture important features of healthcare claims. A statistical framework for creating replicated simulation datasets from an empirical cohort study in electronic healthcare claims data is developed and validated. The approach relies on resampling from the observed covariate and exposure data without modification in all simulated datasets to preserve the associations among these variables. Repeated outcomes are simulated using a true treatment effect of the investigator’s choice and the baseline hazard function estimated from the empirical data. As an example, this framework is applied to a study of high versus low-intensity statin use and cardiovascular outcomes. Simulated data is based on real data drawn from Medicare Parts A and B linked with a prescription drug insurance claims database maintained by Caremark. Properties of the data simulated using this framework are compared with the empirical data on which the simulations were based. In addition, the simulated datasets are used to compare variable selection strategies for confounder adjustment via the propensity score, including high-dimensional approaches that could not be evaluated with ordinary simulation methods. The simulated datasets are found to closely resemble the observed complex data structure but have the advantage of an investigator-specified exposure effect.
机译:纵向医疗保健索赔数据库通常用于研究药物的相对安全性和有效性,但是由于残留的混杂因素,这些研究的结果可能会产生偏差。尚不清楚在小型,简单的非随机研究中表现出良好的混杂调整方法是否适用于根据二级医疗保健数据创建的大型,复杂的药物流行病学研究。用于评估统计方法性能的普通模拟方法无法捕获医疗保健声明的重要特征。开发并验证了用于从电子医疗保健索赔数据的经验队列研究中创建复制的模拟数据集的统计框架。该方法依赖于从观察到的协变量和暴露数据进行重采样,而无需在所有模拟数据集中进行修改即可保留这些变量之间的关联。使用研究人员选择的真实治疗效果并根据经验数据估算基线危害函数,可以模拟重复结果。例如,该框架可用于高强度和低强度他汀类药物的使用与心血管疾病结局的研究。模拟数据基于从Medicare A部分和B部分获得的真实数据,并与Caremark维护的处方药保险索赔数据库链接。将使用此框架模拟的数据的属性与模拟所基于的经验数据进行比较。此外,模拟数据集用于通过倾向得分比较变量选择策略,以进行混杂因素调整,包括无法用常规模拟方法评估的高维方法。发现模拟的数据集与观察到的复杂数据结构非常相似,但是具有研究人员指定的暴露效果的优势。

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