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首页> 外文期刊>Pharmacoepidemiology and drug safety >Sensitivity analysis and external adjustment for unmeasured confounders in epidemiologic database studies of therapeutics.
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Sensitivity analysis and external adjustment for unmeasured confounders in epidemiologic database studies of therapeutics.

机译:药物流行病学数据库研究中未测混杂因素的敏感性分析和外部调整。

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摘要

BACKGROUND: Large health care utilization databases are frequently used to analyze unintended effects of prescription drugs and biologics. Confounders that require detailed information on clinical parameters, lifestyle, or over-the-counter medications are often not measured in such datasets, causing residual confounding bias. OBJECTIVE: This paper provides a systematic approach to sensitivity analyses to investigate the impact of residual confounding in pharmacoepidemiologic studies that use health care utilization databases. METHODS: Four basic approaches to sensitivity analysis were identified: (1) sensitivity analyses based on an array of informed assumptions; (2) analyses to identify the strength of residual confounding that would be necessary to explain an observed drug-outcome association; (3) external adjustment of a drug-outcome association given additional information on single binary confounders from survey data using algebraic solutions; (4) external adjustment considering the joint distribution of multiple confounders of any distribution from external sources of information using propensity score calibration. CONCLUSION: Sensitivity analyses and external adjustments can improve our understanding of the effects of drugs and biologics in epidemiologic database studies. With the availability of easy-to-apply techniques, sensitivity analyses should be used more frequently, substituting qualitative discussions of residual confounding.
机译:背景:大型医疗保健利用数据库通常用于分析处方药和生物制剂的意外作用。需要有关临床参数,生活方式或非处方药物的详细信息的混杂因素通常无法在此类数据集中进行测量,从而造成残留的混杂偏差。目的:本文为敏感性分析提供了一种系统的方法,以调查残留混杂因素对使用卫生保健利用数据库的药物流行病学研究的影响。方法:确定了四种敏感性分析的基本方法:(1)基于一系列已知假设的敏感性分析; (2)分析以确定残留混杂的强度,这对于解释观察到的药物-结果关联是必要的; (3)使用代数解从调查数据中获得有关单个二元混杂因素的额外信息,从而对药物结果关联进行外部调整; (4)外部调整考虑使用倾向得分校准从外部信息源中任意分布的多个混杂因素联合分布。结论:敏感性分析和外部调整可以增进我们对流行病学数据库研究中药物和生物制剂作用的了解。随着易于应用的技术的可用性,应更频繁地使用敏感性分析,以对残留混杂问题进行定性讨论。

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