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Enhancing ontology-driven diagnostic reasoning with a symptom-dependency-aware Naïve Bayes classifier

机译:借助症状依赖感知的朴素贝叶斯分类器增强本体驱动的诊断推理

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摘要

BackgroundOntology has attracted substantial attention from both academia and industry. Handling uncertainty reasoning is important in researching ontology. For example, when a patient is suffering from cirrhosis, the appearance of abdominal vein varices is four times more likely than the presence of bitter taste. Such medical knowledge is crucial for decision-making in various medical applications but is missing from existing medical ontologies. In this paper, we aim to discover medical knowledge probabilities from electronic medical record (EMR) texts to enrich ontologies. First, we build an ontology by identifying meaningful entity mentions from EMRs. Then, we propose a symptom-dependency-aware naïve Bayes classifier (SDNB) that is based on the assumption that there is a level of dependency among symptoms. To ensure the accuracy of the diagnostic classification, we incorporate the probability of a disease into the ontology via innovative approaches.
机译:背景技术本体论已经引起了学术界和工业界的广泛关注。处理不确定性推理对研究本体很重要。例如,当患者患有肝硬化时,出现腹腔静脉曲张的可能性是存在苦味的可能性的四倍。这种医学知识对于各种医学应用中的决策至关重要,但是现有医学本体中却缺少这些知识。在本文中,我们旨在从电子病历(EMR)文本中发现医学知识概率,以丰富本体。首先,我们通过识别EMR中有意义的实体来构建本体。然后,我们提出一种基于症状的感知朴素贝叶斯分类器(SDNB),该分类器基于以下假设:症状之间存在一定程度的依赖性。为了确保诊断分类的准确性,我们通过创新方法将疾病的可能性纳入本体。

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