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The problem of controlling for imperfectly measured confounders on dissimilar populations: A database simulation study

机译:控制不同种群上不完全测量的混杂因素的问题:数据库模拟研究

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Objective(s) Observational database research frequently relies on imperfect administrative markers to determine comorbid status, and it is difficult to infer to what extent the associated misclassification impacts validity in multivariable analyses. The effect that imperfect markers of disease will have on validity in situations in which researchers attempt to match populations that have strong baseline health differences is underemphasized as a limitation in some otherwise high-quality observational studies. The present simulations were designed as a quantitative demonstration of the importance of this common and underappreciated issue. Design Two groups of Monte Carlo simulations were performed. The first demonstrated the degree to which controlling for a series of imperfect markers of disease between different populations taking 2 hypothetically harmless drugs would lead to spurious associations between drug assignment and mortality. The second Monte Carlo simulation applied this principle to a recent study in the field of anesthesiology that purported to show increased perioperative mortality in patients taking metoprolol versus atenolol. Setting/Participants/Interventions None. Measurements and Main Results Simulation 1: High type-1 error (ie, false positive findings of an independent association between drug assignment and mortality) was observed as sensitivity and specificity declined and as systematic differences in disease prevalence increased. Simulation 2: Propensity score matching across several imperfect markers was unlikely to eliminate important baseline health disparities in the referenced study. Conclusions In situations in which large baseline health disparities exist between populations, matching on imperfect markers of disease may result in strong bias away from the null hypothesis.
机译:目的观察性数据库研究通常依靠不完善的行政标志物来确定合并症状态,并且很难推断出相关的错误分类在多变量分析中对有效性的影响程度。在某些高质量的观察性研究中,限制了疾病标记物对研究者试图匹配具有强烈基线健康差异的人群的有效性的影响。本模拟旨在定量地说明这一常见而未被重视的问题的重要性。设计进行了两组蒙特卡洛模拟。第一个研究表明,控制服用2种假设无害药物的不同人群之间一系列不完善的疾病标志物的控制程度将导致药物分配与死亡率之间的虚假关联。蒙特卡洛的第二次模拟将这一原理应用于麻醉学领域的最新研究,该研究表明,服用美托洛尔和阿替洛尔的患者围手术期死亡率增加。设置/参与者/干预措施无。测量和主要结果模拟1:随着敏感性和特异性下降以及疾病患病率的系统性差异增加,观察到高1型错误(即,药物分配与死亡率之间存在独立关联的假阳性结果)。模拟2:跨多个不完善标记的倾向得分匹配不可能消除参考研究中重要的基线健康差异。结论在人群之间存在较大基线健康差异的情况下,匹配不完善的疾病标记可能会导致远离零假设的强烈偏见。

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