ODDIN: Ontology-driven differential diagnosis based on logical inference and probabilistic refinements

Expert Systems with Applications(2010)

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摘要
Medical differential diagnosis (ddx) is based on the estimation of multiple distinct parameters in order to determine the most probable diagnosis. Building an intelligent medical differential diagnosis system implies using a number of knowledge-based technologies which avoid ambiguity, such as ontologies representing specific structured information, but also strategies such as computation of probabilities of various factors and logical inference, whose combination outperforms similar approaches. This paper presents ODDIN, an ontology-driven medical diagnosis system which applies the aforementioned strategies. The architecture and proof-of-concept implementation is described, and results of the evaluation are discussed.
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关键词
multiple distinct parameter,E-Science,knowledge-based technology,logical inference,probable diagnosis,intelligent medical differential diagnosis,medical differential diagnosis,similar approach,Semantic Web,proof-of-concept implementation,ontology-driven medical diagnosis system,Ontologies,Differential diagnosis,Ontology-driven differential diagnosis,Reasoning,aforementioned strategy,probabilistic refinement
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