MedCase: A template medical case store for case-based reasoning in medical decision support

Hsien-Tseng Wang, A. Tansel
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引用次数: 8

Abstract

The early development of medical decision support systems (appeared as expert systems (ES)) mainly focused on, among others, rule-based reasoning (RBR) and decision table/tree (DT) methods as problem solving strategies. These efforts were novel at the time; however, as these methodologies applied to more complex situations, the construction of knowledge base (e.g. rules, cases and 'models') for specific problem solving tasks becomes difficult and time consuming. Remedies to these difficulties have been sought, aiming at better knowledge modeling, knowledge acquisition, and extending the problem solving paradigm to distributed architectures. Alternatively, case-based reasoning (CBR) provides a different problem solving paradigm. In CBR, the knowledge is seen as cases that contain explicit and implicit aspects of the knowledge for solving a problem. The CBR methodology works in a practical way, and the reasoning is based on recalled knowledge memory of solved cases. To alleviate the difficulty of knowledge (case) acquisition and construction, this paper presents a design of a template case store, called MedCase. MedCase utilizes the semantic web technologies and supports a distributed CBR system architecture. MedCase promotes an open and accessible architecture for common CBR tasks in a virtual Healthcare Enterprise environment. MedCase will also allow the construction and sharing of cases that facilitate the development of distributed CBR-based medical decision support systems.
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MedCase:用于医疗决策支持中基于案例的推理的模板医疗案例存储
医疗决策支持系统(以专家系统(ES)的形式出现)的早期发展主要集中在基于规则的推理(RBR)和决策表/树(DT)方法作为问题解决策略。这些努力在当时是新颖的;然而,当这些方法应用于更复杂的情况时,为特定的问题解决任务构建知识库(例如规则、案例和“模型”)变得困难和耗时。已经找到了解决这些困难的方法,旨在更好地进行知识建模、知识获取,并将问题解决范例扩展到分布式体系结构。另外,基于案例的推理(CBR)提供了一种不同的问题解决范例。在CBR中,知识被视为包含解决问题的知识的显式和隐式方面的案例。CBR方法是一种实用的推理方法,其推理基于已解决案例的回忆知识记忆。为了减轻知识(案例)获取和构建的困难,本文设计了一个模板案例库MedCase。MedCase利用语义web技术,支持分布式CBR系统架构。MedCase为虚拟医疗保健企业环境中的常见CBR任务推广了一种开放且可访问的体系结构。MedCase还将允许构建和共享案例,从而促进分布式基于cbr的医疗决策支持系统的发展。
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