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Drug-Drug Interaction Signal Detection from Drug Safety Reports

机译:药物安全报告中的药物相互作用信号检测

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Hundreds of thousands of patients report adverse reactions from using one or more drugs each year. It is impossible to test every drug combination in clinical trials before a drug reaches the market. Thus, the FDA performs post-marketing surveillance to identify drug combinations that produce harmful reactions. To facilitate this surveillance, consumers and health care professionals submit drug safety reports that include the drugs a patient takes and the reactions they experience. In this research, we propose techniques to support high-fidelity rule mining of interesting drug combinations from safety reports by developing drug name matching, reaction name standardization, and known-rule matching strategies. For evaluation, we design a sensibility metric for drug name matching. We demonstrate that our technique achieves a sensibility score of 0.855, corresponding to a 91% accuracy. We compare methods for reaction name standardization and their effects on known-rule matching, identifying 427 known rules from 4652 generated signals when using our techniques as opposed to 61 known rules from 3276 generated signals without the application of our techniques.
机译:每年有成千上万的患者报告因使用一种或多种药物而产生的不良反应。在药物投放市场之前,不可能在临床试验中测试每种药物组合。因此,FDA进行上市后监督,以识别产生有害反应的药物组合。为了促进这种监视,消费者和医疗保健专业人员提交了药物安全报告,其中包括患者服用的药物及其所经历的反应。在这项研究中,我们提出了通过开发药物名称匹配,反应名称标准化和已知规则匹配策略来支持来自安全性报告的有趣药物组合的高保真规则挖掘的技术。为了进行评估,我们设计了用于药物名称匹配的敏感度指标。我们证明了我们的技术可实现0.855的敏感度评分,相当于91%的准确度。我们比较了反应名称标准化的方法及其对已知规则匹配的影响,使用我们的技术时从4652个生成的信号中识别出427个已知规则,而没有使用我们的技术时则从3276个生成的信号中识别了61个已知规则。

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