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A novel signal detection algorithm for identifying hidden drug-drug interactions in adverse event reports

机译:一种用于识别不良事件报告中隐藏的药物相互作用的新型信号检测算法

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Objective: Adverse drug events (ADEs) are common and account for 770 000 injuries and deaths each year and drug interactions account for as much as 30% of these ADEs. Spontaneous reporting systems routinely collect ADEs from patients on complex combinations of medications and provide an opportunity to discover unexpected drug interactions. Unfortunately, current algorithms for such "signal detection" are limited by underreporting of interactions that are not expected. We present a novel method to identify latent drug interaction signals in the case of underreporting. Materials and Methods: We identified eight clinically significant adverse events. We used the FDA's Adverse Event Reporting System to build profiles for these adverse events based on the side effects of drugs known to produce them. We then looked for pairs of drugs that match these single-drug profiles in order to predict potential interactions. We evaluated these interactions in two independent data sets and also through a retrospective analysis of the Stanford Hospital electronic medical records. Results: We identified 171 novel drug interactions (for eight adverse event categories) that are significantly enriched for known drug interactions (p=0.0009) and used the electronic medical record for independently testing drug interaction hypotheses using multivariate statistical models with covariates. Conclusion: Our method provides an option for detecting hidden interactions in spontaneous reporting systems by using side effect profiles to infer the presence of unreported adverse events.
机译:目的:不良药物事件(ADEs)很普遍,每年造成77万例伤亡,药物相互作用占这些ADEs的多达30%。自发报告系统会常规从复杂药物组合中收集患者的ADE,并提供发现意外药物相互作用的机会。不幸的是,用于这种“信号检测”的当前算法受到未预期到的相互作用的漏报的限制。我们提出了一种新颖的方法,以在报告不足的情况下识别潜在的药物相互作用信号。材料和方法:我们确定了8个临床上显着的不良事件。我们使用了FDA的不良事件报告系统,根据已知会产生这些不良反应的药物的副作用来建立这些不良事件的档案。然后,我们寻找与这些单一药物谱匹配的药物对,以预测潜在的相互作用。我们通过两个独立的数据集以及对斯坦福医院电子病历的回顾性分析来评估这些相互作用。结果:我们确定了171种新颖的药物相互作用(针对八个不良事件类别),这些药物相互作用显着丰富了已知的药物相互作用(p = 0.0009),并使用了电子病历,通过带有协变量的多元统计模型独立测试了药物相互作用的假设。结论:我们的方法提供了一种选择,可以通过使用副作用概况推断未报告的不良事件的存在来检测自发报告系统中的隐藏相互作用。

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