基于本体和规则学习的心电知识发现支持个性化医疗决策

Muthana Zouri, Nicoleta Zouri, A. Ferworn
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引用次数: 3

摘要

心电图(ECG)是监测心脏状况最常用的无创方法。结合其他可用的患者医疗数据,人工分析和评估心电图数据变得劳动密集型且容易出错。随着可用的数字医疗数据量的增加,需要适当的方法来支持医疗从业者在决策过程中。这些从业人员的诊断决策基于标准化程序,并结合现场经验。在本文中,我们提出了一种基于本体和使用学习分类器系统(LCS)的规则学习的心电数据知识发现方法的概念设计。本体可以提供基于患者医疗数据的独立于平台和应用程序的知识表示。此外,基于规则的推理为发现新知识提供了一种机制。LCS提供了一种工具,可以自动发现最通用的新规则,并支持顺序决策过程。LCS和基于规则的推理的使用提供了一种对现有知识和新知识进行编码的机制,可以提高个性化医疗的效率。
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ECG Knowledge Discovery Based on Ontologies and Rules Learning for the Support of Personalized Medical Decision Making
The electrocardiogram (ECG) is the most common non-invasive used method for monitoring the heart condition. Combined with other available patient medical data, the manual analysis and evaluation of ECG data become labour intensive and prone to errors. With the increased amount of available digital medical data, there is a need for proper methods to support medical practitioners in the decision-making process. These practitioners base their diagnostic decisions on standardized procedures, combined with field experience. In this paper, we present the conceptual design for an approach to knowledge discovery of ECG data based on ontologies and rules learning using Learning Classifier Systems (LCS). Ontologies can provide a platform and application-independent representation of knowledge based on the patient's medical data. Furthermore, rule-based reasoning provides a mechanism for discovering new knowledge. LCS provide a tool for automatically discovering new rules that are maximally general and can support sequential decision-making process. The use of LCS and rule-based reasoning provide a mechanism for encoding existing and new knowledge that can improve the efficiency of personalized medical treatment.
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