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Approach for Semi-automatic Construction of Anti-infective Drug Ontology Based on Entity Linking

机译:基于实体连接的抗感染药物本体学半自动施工方法

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Ontology can be used for the interpretation of natural language. To construct an anti-infective drug ontology, one needs to design and deploy a methodological step to carry out the entity discovery and linking. Medical synonym resources have been an important part of medical natural language processing (NLP). However, there are problems such as low precision and low recall rate. In this study, an NLP approach is adopted to generate candidate entities. Open ontology is analyzed to extract semantic relations. Six-word vector features and word-level features are selected to perform the entity linking. The extraction results of synonyms with a single feature and different combinations of features are studied. Experiments show that our selected features have achieved a precision rate of 86.77%, a recall rate of 89.03% and an F1 score of 87.89%. This paper finally presents the structure of the proposed ontology and its relevant statistical data.
机译:本体可以用于对自然语言的解释。为了构建抗感染性药物本体,需要设计和部署方法,以执行实体发现和连接。医学同义词资源一直是医学自然语言处理(NLP)的重要组成部分。但是,有问题如低精度和低召回率。在这项研究中,采用了NLP方法来产生候选实体。分析开放本体学以提取语义关系。选择六个字矢量特征和字级别特征以执行实体链接。研究了单个特征的同义词的提取结果和不同的特征组合。实验表明,我们所选择的特点达到了86.77%的精确率,召回率为89.03%,F1得分为87.89%。本文终于呈现了所提出的本体论及其相关统计数据的结构。

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