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Developing a Semantic Web Model for Medical Differential Diagnosis Recommendation

机译:开发用于医学鉴别诊断建议的语义网模型

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In this paper we describe a novel model for differential diagnosis designed to make recommendations by utilizing semantic web technologies. The model is a response to a number of requirements, ranging from incorporating essential clinical diagnostic semantics to the integration of data mining for the process of identifying candidate diseases that best explain a set of clinical features. We introduce two major components, which we find essential to the construction of an integral differential diagnosis recommendation model: the evidence-based recommender component and the proximity-based recommender component. Both approaches are driven by disease diagnosis ontologies designed specifically to enable the process of generating diagnostic recommendations. These ontologies are the disease symptom ontology and the patient ontology. The evidence-based diagnosis process develops dynamic rules based on standardized clinical pathways. The proximity-based component employs data mining to provide clinicians with diagnosis predictions, as well as generates new diagnosis rules from provided training datasets. This article describes the integration between these two components along with the developed diagnosis ontologies to form a novel medical differential diagnosis recommendation model. This article also provides test cases from the implementation of the overall model, which shows quite promising diagnostic recommendation results.
机译:在本文中,我们描述了一种新型的鉴别诊断模型,旨在通过利用语义Web技术提出建议。该模型是对多种要求的回应,从合并基本的临床诊断语义到集成数据挖掘以识别能够最好地解释一组临床特征的候选疾病的过程。我们介绍了两个主要组成部分,它们对构建整体差异诊断推荐模型至关重要:基于证据的推荐者组件和基于接近度的推荐者组件。两种方法都是由疾病诊断本体驱动的,该本体专门设计为能够生成诊断建议。这些本体是疾病症状本体和患者本体。基于证据的诊断过程会根据标准化的临床途径制定动态规则。基于接近度的组件使用数据挖掘为临床医生提供诊断预测,并从提供的训练数据集中生成新的诊断规则。本文介绍了这两个组件之间的集成以及已开发的诊断本体,以形成一个新颖的医学鉴别诊断推荐模型。本文还提供了从整体模型的实施中得出的测试案例,该案例显示了非常有希望的诊断推荐结果。

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