基于电子病历的异构医学知识图谱构建

R. Mythili, N. Parthiban, V. Kavitha
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引用次数: 5

摘要

摘要知识图(KG)是一种知识组织,使用户能够快速准确地查询所需信息。它以三元组的形式存储。它在企业、学术、医疗等各个领域都有应用。本文从电子健康记录(EHR)中构建了医学知识图,绘制了患者、疾病和药物实体之间的关系。异构图是使用从不同数据集派生的不同实体构建的,并且信息是以查询的形式在数量需求和各种变量之间提取的。构建医学知识图谱的步骤包括数据采集、命名实体识别、实体规范化、实体排序和图神经网络。将双向长短期记忆多头注意条件随机场(BILSTM-MULAT-CRF)的混合方法用于命名实体识别,其识别精度为91.4%,召回率为90.15%,F1得分为90.77%。
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Construction of heterogeneous medical knowledge graph from electronic health records
Abstract Knowledge graph (KG) is a knowledge organization that enables the users to quickly and accurately query the information required. It is stored in the form of triples. It finds its application in various fields of enterprises, academics, medical etc. In this paper, Medical Knowledge Graph is constructed from Electronic Health Records (EHR) that maps the relationships between the entities of patients, disease and drugs. The heterogeneous graph is constructed using different entities derived from distinct datasets and the information is extracted in the form of queries among the wide between the quantity demand and the wide variety of variables. The steps for construction of Medical Knowledge Graph are data collection, Named entity recognition, entity normalization, entity ranking, and Graph Neural Networks. The hybrid approach of Bi-directional Long Short-Term Memory Multi-Head Attention Conditional Random Field (BILSTM-MULATT-CRF) is used for Named Entity Recognition and the result of Precision 91.4%, Recall 90.15% and F1 score 90.77% is obtained.
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CiteScore
3.10
自引率
21.40%
发文量
126
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