从电子患者数据库筛选潜在药物-药物相互作用的功能性时间关联挖掘方法

Yanqing Ji, H. Ying, John Tran, P. Dews, See-Yan Lau, Michael Massanari
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引用次数: 10

摘要

摘要目的:药物-药物相互作用(ddi)可导致包括死亡在内的严重后果。在上市后监测中识别潜在ddi的现有方法主要依赖于自发报告。这些方法存在严重的少报、不完整和各种偏差。本研究的目的是利用患者电子数据和时间关联挖掘技术更有效地筛选潜在的ddi。方法:通过分析同时使用两种感兴趣的药物与各种症状发生之间的时间关系,重点发现潜在的ddi。我们引入了创新的功能性时间关联规则,其中患者病例中两个事件之间的时间关联程度由函数定义。结果:两组药物对(即和)的初步试验结果分为260个有临床意义的类。医生对这些分类进行了评估,结果显示所有潜在的ddi仅限于260个结果中的前20个。结论:我们的方法可以大大减少一长串关联规则到一个易于管理的清单,供药品安全专业人员进一步分析和调查。
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A functional temporal association mining approach for screening potential drug–drug interactions from electronic patient databases
ABSTRACT Aims: Drug–drug interactions (DDIs) can result in serious consequences, including death. Existing methods for identifying potential DDIs in post-marketing surveillance primarily rely on spontaneous reports. These methods suffer from severe underreporting, incompleteness, and various bias. The aim of this study was to more effectively screen potential DDIs using patient electronic data and temporal association mining techniques. Methods: We focus on discovery of potential DDIs by analyzing the temporal relationships between the concurrent use of two drugs of interest and the occurrences of various symptoms. We introduced innovative functional temporal association rules where the degree of temporal association between two events within a patient case was defined by a function. Results: Preliminary test results on two drug pairs (i.e., and ) were classified into 260 clinically meaningful categories. These categories were evaluated by physicians and the results exhibited that all the potential DDIs were confined to top 20 of the 260 outcomes. Conclusions: Our methodology can be used to dramatically reduce a long list of association rules to a manageable list for further analysis and investigation by drug safety professionals.
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