自动化智能在线医疗保健本体集成

Noura E. Maghawry, Karim Emara, E. Shaaban, Samy S. A. Ghoniemy
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引用次数: 1

摘要

知识图已经成为一种强大的动态知识表示模型,用于预测医学和医疗保健领域的隐藏模式和关系,用于医学诊断和疾病预测。然而,对于这种异构领域,知识图的生成、构造和集成仍然是一个具有挑战性的研究领域。提出了一种疾病知识图谱(KG)自动构建和智能本体与标准人类疾病本体(DO)集成的框架。这一框架的一个主要组成部分是,根据从医疗平台和社交网络收集的医学事实,包括症状、病因、风险因素和预防因素,开发一个增强的疾病知识图谱。该知识图谱是智能诊断和疾病预测系统的主要基础。开发的疾病知识图谱包括疾病的症状、病因、危险因素和预防因素,并与400多种疾病进行了DO整合。提出的知识图谱不仅是为专业人员和普通用户构建丰富的知识图谱的一个步骤。这张图也是朝着整合两个标准本体论——人类疾病和症状本体论迈出的一步,这两个标准本体论目前还没有联系或整合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated intelligent online healthcare ontology Integration
Knowledge graphs have emerged as a powerful dynamic knowledge representation model for predicting hidden patterns and relationships in medical and healthcare domains for medical diagnosis and disease prediction. However, generating, constructing, and integrating knowledge graphs for this domain is still challenging research area for such heterogeneous domain. In this paper, a framework for automatic disease knowledge graph (KG) construction and intelligent ontology integration with standard human disease ontology (DO) is developed. A major component of this framework is developing an enhanced diseases' knowledge graph that is based on collecting medical facts from medical platforms and social networks, including symptoms, causes, risk factors and prevention factors. This knowledge graph represents a major base for intelligent diagnosis and disease prediction systems. The developed disease knowledge graph includes diseases' symptoms, causes, risk factors and prevention factors and integrated with DO by more than 400 diseases. The knowledge graph presented is a step not only towards building an enriched knowledge graph for professional staff and normal users. The graph is also a step towards integrating two standard ontologies human disease and symptom ontologies that are not linked or integrated till now.
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