An Automatic Generation of Heterogeneous Knowledge Graph for Global Disease Support: A Demonstration of a Cancer Use Case

Maghawry, N; Ghoniemy, S; Shaaban, E; Karim Emara;

Abstract


Semantic data integration provides the ability to interrelate and analyze information from multiple heterogeneous resources. With the growing complexity of medical ontologies and the big data generated from different resources, there is a need for integrating medical ontologies and finding relationships between distinct concepts from different ontologies where these concepts have logical medical relationships. Standardized Medical Ontologies are explicit specifications of shared conceptualization, which provide predefined medical vocabulary that serves as a stable conceptual interface to medical data sources. Intelligent Healthcare systems such as disease prediction systems require a reliable knowledge base that is based on Standardized medical ontologies. Knowledge graphs have emerged as a powerful dynamic representation of a knowledge base. In this paper, a framework is proposed for automatic knowledge graph generation integrating two medical standardized ontologies- Human Disease Ontology (DO), and Symptom Ontology (SYMP) using a medical online website and encyclopedia. The framework and methodologies adopted for automatically generating this knowledge graph fully integrated the two standardized ontologies. The graph is dynamic, scalable, easily reproducible, reliable, and practically efficient. A subgraph for cancer terms is also extracted and studied for modeling and representing cancer diseases, their symptoms, prevention, and risk factors.


Other data

Title An Automatic Generation of Heterogeneous Knowledge Graph for Global Disease Support: A Demonstration of a Cancer Use Case
Authors Maghawry, N; Ghoniemy, S; Shaaban, E; Karim Emara 
Keywords medical ontologies;ontology integration;knowledge graph construction;entity linking;semantic data integration
Issue Date Jan-2023
Publisher MDPI
Journal BIG DATA AND COGNITIVE COMPUTING 
Volume 7
Issue 1
ISSN 2504-2289
DOI 10.3390/bdcc7010021
Scopus ID 2-s2.0-85151097636
Web of science ID WOS:000954638800001

Recommend this item

Similar Items from Core Recommender Database

Google ScholarTM

Check

Citations 6 in scopus


Items in Ain Shams Scholar are protected by copyright, with all rights reserved, unless otherwise indicated.