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Temporal Pattern Discovery for Trends and Transient Effects: Its Application to Patient Records

机译:趋势和瞬态效果的时间模式发现:其对患者记录的应用

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We introduce a novel pattern discovery methodology for event history data focusing explicitly on the detailed temporal relationship between pairs of events. At the core is a graphical statistical approach to summarising and visualising event history data, which contrasts the observed to the expected incidence of the event of interest before and after an index event. Thus, pattern discovery is not restricted to a specific time window of interest, but encompasses extended parts of the underlying event histories. In order to effectively screen large collections of event history data for interesting temporal relationships, we introduce a new measure of temporal association. The proposed measure contrasts the observed-to-expected ratio in a time period of interest to that in a pre-defined control period. An important feature of both the observed-to-expected graph itself and the measure of association, is a statistical shrinkage towards the null hypothesis of no association. This provides protection against spurious associations and is an extension of the statistical shrinkage successfully applied to large-scale screening for associations between events in cross-sectional data, such as large collections of adverse drug reaction reports. We demonstrate the usefulness of the proposed pattern discovery methodology by a set of examples from a collection of over two million patient records in the United Kingdom. The identified patterns include temporal relationships between drug prescription and medical events suggestive of persistent or transient risks of adverse events, as well as temporal relationships between prescriptions of different drugs.
机译:我们为事件历史数据介绍了一种新颖的模式发现方法,该方法在明确上专注于事件对之间的详细时间关系。在核心是总结和可视化事件历史数据的图形统计方法,该数据对比索引事件之前和之后的感兴趣事件的预期发病率对比。因此,模式发现不限于感兴趣的特定时间窗口,而是包括底层事件历史的扩展部分。为了有效筛选大量活动历史数据以获取有趣的时间关系,我们介绍了一个新的时间关联量度。所提出的测量将观察到的预期比率与预定控制期间的时间段进行对比。观察到预期的图表本身和关联度量的一个重要特征是朝向无关联的零假设的统计收缩。这提供了对杂散关联的保护,并且是统计收缩的延伸,成功应用于大规模筛选,以便在横截面数据中发生的事件之间的关联,例如大量的不良药物反应报告。我们展示了来自英国超过200万患者记录的一组例子,展示了所提出的模式发现方法的有用性。所识别的模式包括药物处方和医疗事件之间的时间关系,暗示不良事件的持续或短暂风险,以及不同药物的处方之间的时间关系。

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