用临床时间序列丰富基于活动的流程挖掘语料库的时间抽象

C. Fernández-Llatas, L. Sacchi, J. Benedí, A. Dagliati, V. Traver, R. Bellazzi
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引用次数: 14

摘要

临床方案的设计以有效的方式提高护理质量是循证医学部署的挑战之一。这些协议的设计是一项艰巨的任务,需要护理过程专家的共识。模式识别方法的使用,如过程挖掘,允许过程的自动推理,可以帮助专家根据实际部署的护理过程形式化这些临床协议。然而,护理方案不同阶段之间的步骤规则是基于从患者收集的数值临床数据的高层次描述,而这些数据不能通过过程挖掘方法直接处理。本文提出了一种交互式模式识别与时间抽象技术的结合,该技术允许对临床数据进行处理,从而丰富基于活动的过程挖掘语料库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal abstractions to enrich Activity-Based Process Mining corpus with clinical time series
The design of clinical protocols for improving the quality of care in an efficient way is one of the challenges for the deployment of Evidence Based Medicine. The design of those protocols is a difficult task that require the consensus of care process experts. The use of Pattern Recognition approaches, like Process Mining, allows the automatic inference of processes that can help experts for formalizing these clinical protocols based on the actually deployed care process. However, the step rules among the different stages of the care protocols are based on high level descriptions of numerical clinical data gathered from the patient that can not be processed directly by Process Mining approaches. In this paper, a combination of Interactive Pattern Recognition with Temporal Abstraction technologies that allows processing of clinical data to allow the enrichment of Activity Based Process Mining corpus is presented.
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