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An Adverse Drug Events Ontology Population from Text Using a Multi-class SVM Based Approach

机译:基于多类SVM的文本不良药品事件本体人口

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In recent years, semantic web technologies and ontologies in particular, are being increasingly used in various e-Health systems and applications. However, issues related to automatically constructing, populating and enriching such ontologies are still outstanding. In this paper, we propose an automatic Adverse Drug Events (ADE) ontology population approach so called ADETermino. The proposed approach is based on Information Extraction methods and mainly aims to extract new concept instances and relationships from textual drug leaflets. It combines a Named-Entity Recognition (NER) system using lexical resources and a machine learning method using a multi-class Support Vector Machine (SVM) classifier for relations detection. Experiments were performed using 102 cardiac drug leaflets corresponding to 5706 input vectors. The results show the performance of our approach with an F-score of 89%.
机译:近年来,尤其是语义Web技术和本体正越来越多地用于各种电子卫生系统和应用程序中。但是,与自动构建,填充和丰富此类本体有关的问题仍然悬而未决。在本文中,我们提出了一种自动药品不良事件(ADE)本体人口方法,即ADETermino。所提出的方法基于信息提取方法,并且主要旨在从文本药品传单中提取新的概念实例和关系。它结合了使用词汇资源的命名实体识别(NER)系统和使用多类支持向量机(SVM)分类器进行关系检测的机器学习方法。使用与5706种输入载体相对应的102种心脏药物小叶进行了实验。结果表明,我们的方法的性能得分为89%。

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