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首页> 外文期刊>Methods of information in medicine >Mining health care administrative data with temporal association rules on hybrid events.
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Mining health care administrative data with temporal association rules on hybrid events.

机译:使用关于混合事件的时间关联规则来挖掘医疗保健管理数据。

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OBJECTIVE: The analysis of administrative health care data can be helpful to conveniently assess health care activities. In this context temporal data mining techniques can be suitably exploited to get a deeper insight into the processes underlying health care delivery. In this paper we present an algorithm for the extraction of temporal association rules (TARs) on sequences of hybrid events and its application on health care administrative databases. METHODS: We propose a method that extends TAR mining by managing hybrid events, namely events characterized by a heterogeneous temporal nature. Hybrid events include both point-like events (e.g. ambulatory visits) and interval-like events (e.g. drug consumption). The definition of user-defined rule templates can be optionally used to constrain the search only to the extraction of a subset of interesting rules. A TAR post-pruning strategy, based on a case-control approach, is also presented. RESULTS: We analyzed the administrative database of diabetic patients in charge to the regional health care agency (ASL) of Pavia. TAR mining allowed to find patterns specifically related to the diabetic population in comparison with a control group, as well as to check the compliance of the actual clinical careflow with the ASL recommendations. CONCLUSION: The experimental results highlighted the main potentials of the algorithm, such as the opportunity to detect interesting temporal relationships between diagnostic or therapeutic patterns, or to check the adherence of past temporal behaviors to specific expected paths (e.g. guidelines) or to discover new knowledge that could be implicitly hidden in the data.
机译:目的:对行政医疗数据的分析有助于方便地评估医疗活动。在这种情况下,可以适当地利用时间数据挖掘技术,以更深入地了解卫生保健提供过程。在本文中,我们提出了一种用于提取混合事件序列上的时间关联规则(TAR)的算法及其在医疗保健管理数据库中的应用。方法:我们提出了一种通过管理混合事件(即以异质时间性质为特征的事件)扩展TAR挖掘的方法。混合事件包括点状事件(例如门诊就诊)和间隔状事件(例如吸毒)。用户定义的规则模板的定义可以可选地用于将搜索限制为仅提取有趣规则的子集。还提出了一种基于案例控制方法的TAR修剪策略。结果:我们分析了帕维亚地区医疗机构(ASL)负责的糖尿病患者的行政数据库。与对照组相比,TAR采矿技术可以发现与糖尿病人群特别相关的模式,并检查实际临床护理流程是否符合ASL的建议。结论:实验结果突出了该算法的主要潜力,例如有机会检测诊断或治疗模式之间有趣的时间关系,或检查过去的时间行为是否符合特定的预期路径(例如指南)或发现新知识。可能隐式隐藏在数据中。

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