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Temporality and context for detecting adverse drug reactions from longitudinal data

机译:从纵向数据中检测药物不良反应的时间和背景

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摘要

This paper introduces a method for mining co-occurring events from longitudinal data, and applies this method to detecting adverse drug reactions (ADRs) from patient data. Electronic health records are richer than older data sources (such as spontaneous report records) and thus are ideal for ADR mining. However, current data mining methods, such as disproportionality ratios and temporal itemset mining, ignore certain important aspects of the longitudinal data in patient records. In this paper, we highlight two specific problems with current methods, which we name temporal and contextual sensitivity, and discuss why these two properties are vital to mining patterns from longitudinal data. We also propose two sensitive longitudinal rate comparison measures, which utilize condition occurrence rates and length of drug eras, for mining ADRs from this type of data. These novel methods are then used to rank potential ADRs, along with existing state-of-the-art methods, under many simulated yet realistic datasets. In 48 out of 60 experiments, the proposed longitudinal rate comparison methods significantly outperform other methods in mining known ADRs from other drug / condition pairs.
机译:本文介绍了一种从纵向数据中挖掘并发事件的方法,并将该方法应用于从患者数据中检测药物不良反应(ADR)。电子病历比旧的数据源(例如自发报告记录)要丰富,因此是ADR挖掘的理想选择。但是,当前的数据挖掘方法(例如不成比例比和时间项集挖掘)忽略了患者记录中纵向数据的某些重要方面。在本文中,我们重点介绍了当前方法的两个具体问题,即时间和上下文敏感性,并讨论了为什么这两个属性对于从纵向数据中挖掘模式至关重要。我们还提出了两种敏感的纵向比率比较措施,利用条件发生率和药物时代长度,从此类数据中挖掘ADR。然后,在许多模拟但现实的数据集下,这些新颖的方法与现有的最新方法一起用于对潜在的ADR进行排名。在60个实验中的48个中,从其他药物/病症对中挖掘已知ADR时,建议的纵向速率比较方法明显优于其他方法。

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