Article

Using OWL ontologies for adaptive patient information modelling and preoperative clinical decision support

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Citation

Bouamrane M, Rector A & Hurrell M (2011) Using OWL ontologies for adaptive patient information modelling and preoperative clinical decision support. Knowledge and Information Systems, 29, pp. 405-418. https://doi.org/10.1007/s10115-010-0351-7

Abstract
We here present our research and experience regarding the design and implementation of a knowledge-based preoperative assessment decision support system. We discuss generic design considerations as well as the practical system implementation. We developed the system using semantic web technology, including modular ontologies developed in the OWL web ontology language, the OWL Java application programming interface and an automated logic reasoner. We discuss how the system enables to tailor patient information collection according to personalized medical context. The use of ontologies at the core of the system’s architecture permits to efficiently manage a vast repository of preoperative assessment domain knowledge, including classification of surgical procedures, classification of morbidities and guidelines for routine preoperative tests. Logical inference on the domain knowledge according to individual patient’s medical context enables personalized patients’ reports consisting of a risk assessment and clinical recommendations such as relevant preoperative tests.

Keywords
Clinical decision support systems; Preoperative assessment and screening; Knowledge representation and reasoning

Journal
Knowledge and Information Systems: Volume 29

StatusPublished
FundersTechnology Strategy Board
Publication date30/11/2011
Publication date online22/10/2010
Date accepted by journal08/10/2010
PublisherSpringer Science and Business Media LLC
ISSN0219-1377
eISSN0219-3116

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Professor Matt-Mouley Bouamrane

Professor Matt-Mouley Bouamrane

Professor in Health/Social Informatics, Computing Science

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