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用于知识互操作性的标准医学术语与本地化医学术语的语义协调

Semantic Reconciliation of Standard and Localized Medical Terminologies for Knowledge Interoperability.

作者信息

Ali Taqdir, Househ Mowafa, Alam Tanvir, Lee Sungyoung, Shah Zubair

机构信息

College of Science and Engineering, Hamad Bin Khalifa University, Qatar.

Department of Computer Science and Engineering, Kyung Hee University, South Korea.

出版信息

Stud Health Technol Inform. 2020 Jun 26;272:461-464. doi: 10.3233/SHTI200595.

Abstract

The heterogeneous localized concepts of various hospitals reduce interoperability among localized data models of Hospital Information Systems (HIS) and the knowledge bases of clinical decision support systems (CDSS). The leading solution to overcome the interoperability barrier is the reconciliation of standard medical terminologies with localized data models. In this paper, we extend the semantic reconciliation model (SRM) to provide mappings among diverse concepts of localized domain clinical models (DCM) and concepts of standard medical terminologies such as Systematized Nomenclature of Medicine - Clinical Terms (SNOMED CT). In the extended SRM, we insert the explicit semantics only into the word vector of the localized DCM concepts instead of the implicit semantics, which enhances the system's accuracy with a lower computational cost. The extended SRM performed well on the datasets of localized DCM and SNOMED CT with a precision of 0.95, a recall of 0.92, and an F-measure of 0.93.

摘要

各医院的异构本地化概念降低了医院信息系统(HIS)本地化数据模型与临床决策支持系统(CDSS)知识库之间的互操作性。克服互操作性障碍的主要解决方案是将标准医学术语与本地化数据模型进行协调。在本文中,我们扩展了语义协调模型(SRM),以在本地化领域临床模型(DCM)的不同概念与标准医学术语(如医学系统命名法 - 临床术语(SNOMED CT))的概念之间提供映射。在扩展的SRM中,我们仅将显式语义插入到本地化DCM概念的词向量中,而不是隐式语义,这以较低的计算成本提高了系统的准确性。扩展的SRM在本地化DCM和SNOMED CT的数据集上表现良好,精确率为0.95,召回率为0.92,F值为0.93。

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