首页> 外文期刊>Pharmacoepidemiology and drug safety >Multivariate-adjusted pharmacoepidemiologic analyses of confidential information pooled from multiple health care utilization databases.
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Multivariate-adjusted pharmacoepidemiologic analyses of confidential information pooled from multiple health care utilization databases.

机译:从多个医疗利用数据库中收集的机密信息的多变量调整后的药物流行病学分析。

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PURPOSE: Mandated post-marketing drug safety studies require vast databases pooled from multiple administrative data sources which can contain private and proprietary information. We sought to create a method to conduct pooled analyses while keeping information private and allowing for full confounder adjustment. METHODS: We propose a method based on propensity score (PS) techniques. A set of propensity scores are computed in each data-contributing center and a PS-adjusted analysis is then carried out on a pooled basis. The method is demonstrated in a study of the potentially negative effects of concurrent initiation of clopidogrel and proton pump inhibitors (PPIs) in four cohorts of patients assembled from North American claims data sources. Clinical outcomes were myocardial infarction (MI) hospitalization and hospitalization for revascularization procedure. Success of the method was indicated by equivalent performance of our PS-based method and traditional confounder adjustment. We also implemented and evaluated high-dimensional propensity scores and meta-analytic techniques. RESULTS: On both a pooled and individual cohort basis, we saw substantially similar point estimates and confidence intervals for studies adjusted by covariates and from privacy-maintaining propensity scores. The pooled, adjusted OR for MI hospitalization was 1.20 (95% confidence interval 1.03, 1.41) with individual variable adjustment and 1.16 (1.00, 1.36) with PS adjustment. The revascularization OR estimates differed by < 1%. Meta-analysis and pooling yielded substantially similar results. CONCLUSIONS: We observed little difference in point estimates when we employed standard techniques or the proposed privacy-maintaining pooling method. We would recommend the technique in instances where multi-center studies require both privacy and multivariate adjustment.
机译:目的:强制性的上市后药物安全性研究需要从多个管理数据源(可能包含私有和专有信息)汇集的庞大数据库。我们试图创建一种进行汇总分析的方法,同时保持信息的私密性并允许进行充分的混杂因素调整。方法:我们提出了一种基于倾向评分(PS)技术的方法。在每个数据提供中心计算一组倾向得分,然后在汇总的基础上进行PS调整后的分析。在从北美索赔数据源收集的四组患者中,同时启动氯吡格雷和质子泵抑制剂(PPI)的潜在负面影响的研究证明了该方法。临床结果为心肌梗塞(MI)住院和因血运重建而住院。该方法的成功通过我们基于PS的方法的等效性能和传统的混杂调整来表明。我们还实施并评估了高维倾向得分和荟萃分析技术。结果:在汇总和个人队列的基础上,我们看到了由协变量和隐私保护倾向得分调整的研究的点估计和置信区间基本相似。对于MI住院的合并校正校正OR为1.20(95%置信区间1.03,1.41)(单独变量校正)和1.16(1.00,1.36),PS校正。血运重建或估计值相差<1%。荟萃分析和合并产生了基本相似的结果。结论:当我们采用标准技术或建议的隐私维护池方法时,我们观察到的点估计几乎没有差异。如果多中心研究既需要隐私又需要进行多变量调整,我们会推荐该技术。

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