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Methods and Issues to Consider for Detection of Safety Signals From Spontaneous Reporting Databases: A Report of the DIA Bayesian Safety Signal Detection Working Group

机译:自发报告数据库中检测安全信号的方法和要考虑的问题:DIA贝叶斯安全信号检测工作组的报告

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摘要

Spontaneous reporting (SR) adverse event system databases, large observational databases, large clinical trials, and large health records databases comprise repositories of information that may be useful for early detection of potential harms associated with drugs, devices, and vaccines. All of the data sources include many different adverse events and many medical products, so that any approach designed to detect "important" signals of potential harm must have adequate specificity to protect against false alarms yet provide satisfactory sensitivity for detecting issues that really need further investigation. Algorithms for evaluating potential risks using information from these sources, especially SR databases, have been described in the literature. The algorithms may seek to identify potential product-event associations without any prior specifications, to identify events associated with a particular product or set of products, or to identify products associated with a particular event or set of events. This article provides recommendations for using information from postmarketing spontaneous adverse event reporting databases to provide insight into risks of potential harm expressed by safety signals and offers guidance regarding appropriate methods, both frequentist and Bayesian, to use in various situations as a function of the objective of the analysis.
机译:自发报告(SR)不良事件系统数据库,大型观察数据库,大型临床试验和大型健康记录数据库均包含可用于及早发现与药物,设备和疫苗相关的潜在危害的信息库。所有数据源都包括许多不同的不良事件和许多医疗产品,因此,任何旨在检测潜在危害的“重要”信号的方法都必须具有足够的特异性,以防止错误警报,但要提供令人满意的灵敏度来检测确实需要进一步调查的问题。文献中已经描述了使用来自这些来源的信息(尤其是SR数据库)来评估潜在风险的算法。该算法可以寻求在没有任何先前规范的情况下识别潜在的产品-事件关联,以识别与特定产品或产品组相关的事件,或识别与特定事件或事件组相关的产品。本文提供了有关使用售后自发不良事件报告数据库中的信息的建议,以洞悉安全信号表示的潜在危害风险,并提供有关频发者和贝叶斯方法的适当方法的指导,以根据不同的目标在各种情况下使用分析。

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