使用关联规则挖掘电子医疗数据来精炼药物不良反应

J. Reps, U. Aickelin, Jiangang Ma, Yanchun Zhang
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引用次数: 15

摘要

处方药的副作用是很常见的。电子医疗保健数据库提供了有效识别新副作用的机会,但目前的方法由于混淆而受到限制(即,当两个变量之间的关联由于它们都与第三个变量相关而被识别时)。在本文中,我们提出了一种概念证明方法,该方法可以学习常见的关联,并使用这些知识通过去除由混淆引起的暴露-结果关联的实例来自动优化副作用信号(即暴露-结果关联)。这就留下了最有可能对应真正副作用发生的信号实例。然后,我们计算了一种新的测量方法,称为混杂调整风险值,这是患者在暴露后60天内经历结果的更准确的绝对风险值。初步结果表明,该方法是有效的。对于所调查的四个信号(即暴露-结果关联),我们能够正确过滤大多数不太可能对应于真实副作用的暴露-结果实例。在针对特定运行状况结果调优关联规则挖掘参数时,该方法可能会得到改进。本文表明,基于从考虑患者病史中学习到的关联规则,可以在患者水平上过滤信号。然而,需要额外的工作来开发一种方法来自动调整方法的参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Refining Adverse Drug Reactions Using Association Rule Mining for Electronic Healthcare Data
Side effects of prescribed medications are a common occurrence. Electronic healthcare databases present the opportunity to identify new side effects efficiently but currently the methods are limited due to confounding (i.e. When an association between two variables is identified due to them both being associated to a third variable). In this paper we propose a proof of concept method that learns common associations and uses this knowledge to automatically refine side effect signals (i.e. Exposure-outcome associations) by removing instances of the exposure-outcome associations that are caused by confounding. This leaves the signal instances that are most likely to correspond to true side effect occurrences. We then calculate a novel measure termed the confounding-adjusted risk value, a more accurate absolute risk value of a patient experiencing the outcome within 60 days of the exposure. Tentative results suggest that the method works. For the four signals (i.e. Exposure-outcome associations) investigated we are able to correctly filter the majority of exposure-outcome instances that were unlikely to correspond to true side effects. The method is likely to improve when tuning the association rule mining parameters for specific health outcomes. This paper shows that it may be possible to filter signals at a patient level based on association rules learned from considering patients' medical histories. However, additional work is required to develop a way to automate the tuning of the method's parameters.
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