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Integrating case-based reasoning with an electronic patient record system

机译:将基于案例的推理与电子病历系统集成

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Electronic patient records (EPRs) contain a wealth of patient-related data and capture clinical problem-solving experiences and decisions. Excelicare is such a system which is also a platform for the national generic clinical system in the UK. Objective: This paper presents, ExceucareCBR, a case-based reasoning (CBR) system which has been developed to complement Excelicare. Objective of this work is to integrate CBR to support clinical decision making by harnessing electronic patient records for clinical experience reuse. Methods: CBR is a proven problem solving methodology in which past solutions are reused to solve new problems. A key challenge that we address in this paper is how to extract and represent a case from an EPR. Using an example from the lung cancer domain we demonstrate our generic case representation approach where Excelicare fields are mapped to case features. Once the case base is populated with cases containing data from the EPRs database a standard weighted fc-nearest neighbour algorithm combined with a genetic algorithm based feature weighting mechanism is used for case retrieval and reuse. Conclusions: We conclude that incorporating case authoring functionality and a generic retrieval mechanism were key to successful integration of ExcelicareCBR. This paper also demonstrates how the application of CBR can enable sharing of lessons learned through the retrieval and reuse of EPRs captured as cases in a case base.
机译:电子病历(EPR)包含大量与病患相关的数据,并记录了解决临床问题的经验和决策。 Excelicare是这样的系统,它也是英国国家通用临床系统的平台。目的:本文介绍了ExceucareCBR,一种基于案例的推理(CBR)系统,该系统已开发用于补充Excelicare。这项工作的目的是通过利用电子病历来复用临床经验,从而整合CBR以支持临床决策。方法:CBR是一种行之有效的问题解决方法,其中过去的解决方案可重用于解决新问题。我们在本文中解决的一个关键挑战是如何从EPR中提取和代表一个案例。使用来自肺癌领域的示例,我们演示了通用案例表示方法,其中Excelicare字段映射到案例特征。一旦用包含来自EPRs数据库的数据的案例填充了案例库,就将标准加权的fc-最近邻算法与基于遗传算法的特征加权机制相结合,用于案例检索和重用。结论:我们得出结论,合并案例编写功能和通用检索机制是成功集成ExcelicareCBR的关键。本文还演示了CBR的应用如何通过在案例库中检索和重用作为案例的EPR来共享经验教训。

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