网状产科知识图谱的构建

Kunli Zhang, Kaixiang Li, Hongchao Ma, Donghui Yue, Lei Zhuang
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引用次数: 2

摘要

产科知识图谱描述了产科疾病与身体部位、药物等之间的关系,是智能辅助诊断的重要知识库。本文以医学主题词(MeSH)的层次结构作为知识图的本体原型。根据中国产科疾病命名规范及产科电子病历中疾病诊断的实际应用。对产科疾病本体结构进行了扩展。定义了产科实体与知识描述系统之间可能存在的关系类别,形成了产科知识图谱的模式层。采用基于规则和包装的方法,从医学规范、经典教科书和医学在线网站中获取异构数据的产科疾病属性。然后用Simhash-TF-IDF算法进行融合。结合Bootstrapping和SVM算法提取知识图中实体之间的关系。完成产科知识图谱数据层的构建。模式层和数据层被自动导入到prot中,以可视化产科知识图。构建的产科知识图谱包含625个实体、2456个属性和1407个关系,涵盖了产科的大部分疾病和相关实体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction of MeSH-Like Obstetric Knowledge Graph
Obstetric Knowledge Graph describes the obstetric diseases and the body parts, drugs, etc. as well as the relations between them, which is an important knowledge base for intelligent auxiliary diagnosis. In this paper, the hierarchical structure of Medical Subject Headings(MeSH) is taken as the ontology prototype of the Knowledge Graph. According to the naming criterion of Chinese obstetric diseases and the practical application of the disease diagnosis in obstetric electronic medical records. And the ontology structure of obstetric diseases is extended. Moreover, the possible relation categories between obstetric entities and knowledge description system are defined to form the schema layer of Obstetric Knowledge Graph. The obstetric disease attributes of heterogeneous data are derived from medical specifications, classic textbooks, and medical online website by using rules-based and wrapper methods. And then they are fused by the Simhash-TF-IDF algorithm. The relations between entities in the knowledge graph are extracted by combining Bootstrapping and SVM algorithms. Then the Obstetric Knowledge Graph data layer is completed. The schema layer and data layer are automatically imported into Protégé to visualize the Obstetric Knowledge graph. The constructed Obstetric Knowledge Graph contains 625 entities, 2456 attributes and 1407 relations, which covers the most diseases in obstetrics and related entities.
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