A Personalized Adverse Drug Reaction Early Warning Method Based on Contextual Ontology and Rules Learning

Zheng, Haixia and Wei, Wei (2023) A Personalized Adverse Drug Reaction Early Warning Method Based on Contextual Ontology and Rules Learning. Journal of Software Engineering and Applications, 16 (11). pp. 605-621. ISSN 1945-3116

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Abstract

Background: The fatality of adverse drug reactions (ADR) has become one of the major causes of the non-natural disease deaths globally, with the issue of drug safety emerging as a common topic of concern. Objective: The personalized ADR early warning method, based on contextual ontology and rule learning, proposed in this study aims to provide a reference method for personalized health and medical information services. Methods: First, the patient data is formalized, and the user contextual ontology is constructed, reflecting the characteristics of the patient population. The concept of ontology rule learning is then proposed, which is to mine the rules contained in the data set through machine learning to improve the efficiency and scientificity of ontology rule generation. Based on the contextual ontology of ADR, the high-level context information is identified and predicted by means of reasoning, so the occurrence of the specific adverse reaction in patients from different populations is extracted. Results: Finally, using diabetes drugs as an example, contextual information is identified and predicted through reasoning, to mine the occurrence of specific adverse reactions in different patient populations, and realize personalized medication decision-making and early warning of ADR.

Item Type: Article
Subjects: Impact Archive > Engineering
Depositing User: Managing Editor
Date Deposited: 20 Dec 2023 07:27
Last Modified: 20 Dec 2023 07:27
URI: http://research.sdpublishers.net/id/eprint/3793

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