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Measuring Semantic Similarity Between Biomedical Concepts Within Multiple Ontologies

机译:测量多个本体中生物医学概念之间的语义相似性

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Most of the intelligent knowledge-based applications contain components for measuring semantic similarity between terms. Many of the existing semantic similarity measures that use ontology structure as their primary source cannot measure semantic similarity between terms and concepts using multiple ontologies. This research explores a new way to measure semantic similarity between biomedical concepts using multiple ontologies. We propose a new ontology-structure-based technique for measuring semantic similarity in single ontology and across multiple ontologies in the biomedical domain within the framework of unified medical language system (UMLS). The proposed measure is based on three features: 1) cross-modified path length between two concepts; 2) a new feature of common specificity of concepts in the ontology; and 3) local granularity of ontology clusters. The proposed technique was evaluated relative to human similarity scores and compared with other existing measures using two terminologies within UMLS framework: medical subject headings and systemized nomenclature of medicine clinical term. The experimental results validate the efficiency of the proposed technique in single and multiple ontologies, and demonstrate that our proposed measure achieves the best results of correlation with human scores in all experiments.
机译:大多数基于智能知识的应用程序都包含用于测量术语之间语义相似性的组件。使用本体结构作为其主要来源的许多现有语义相似性度量无法使用多个本体来度量术语和概念之间的语义相似性。这项研究探索了一种使用多种本体来度量生物医学概念之间语义相似性的新方法。我们提出了一种新的基于本体结构的技术,用于在统一医学语言系统(UMLS)的框架内测量生物医学领域中单个本体和多个本体之间的语义相似性。所提出的措施基于三个特征:1)两个概念之间的交叉修改路径长度; 2)本体中概念通用性的新特征; 3)本体簇的局部粒度。相对于人类相似性得分,对所提出的技术进行了评估,并使用UMLS框架内的两个术语与其他现有度量进行了比较:医学主题词和医学临床术语的系统命名。实验结果验证了该技术在单本体和多本体中的有效性,并证明了我们提出的措施在所有实验中均实现了与人类得分相关的最佳结果。

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