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Confounding in observational studies based on large health care databases: problems and potential solutions – a primer for the clinician

机译:基于大型医疗数据库的观察研究中的困惑:问题和可能的解决方案–临床医生入门

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Population-based health care databases are a valuable tool for observational studies as they reflect daily medical practice for large and representative populations. A constant challenge in observational designs is, however, to rule out confounding, and the value of these databases for a given study question accordingly depends on completeness and validity of the information on confounding factors. In this article, we describe the types of potential confounding factors typically lacking in large health care databases and suggest strategies for confounding control when data on important confounders are unavailable. Using Danish health care databases as examples, we present the use of proxy measures for important confounders and the use of external adjustment. We also briefly discuss the potential value of active comparators, high-dimensional propensity scores, self-controlled designs, pseudorandomization, and the use of positive or negative controls.
机译:基于人群的保健数据库是观察研究的宝贵工具,因为它们反映了具有代表性的大人群的日常医疗实践。但是,要避免混淆,观察设计的一个长期挑战是,对于给定的研究问题,这些数据库的价值相应地取决于有关混淆因素的信息的完整性和有效性。在本文中,我们描述了大型医疗数据库中通常缺少的潜在混杂因素的类型,并提出了在无法获得有关重要混杂因素的数据时混杂控制的策略。以丹麦的卫生保健数据库为例,我们介绍了对重要混杂因素的代理措施的使用以及外部调整的使用。我们还将简要讨论有源比较器的潜在价值,高维倾向得分,自我控制的设计,伪随机化以及使用阳性或阴性对照。

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