IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Towards Semantic Data Integration in Resource-Limited Settings for Decision Support on Gait-Related Diseases

Towards Semantic Data Integration in Resource-Limited Settings for Decision Support on Gait-Related Diseases
View Sample PDF
Author(s): Olawande Daramola (Cape Peninsula University of Technology, South Africa)and Thomas Moser (St. Pölten University of Applied Sciences, Austria)
Copyright: 2021
Pages: 21
Source title: Advanced Concepts, Methods, and Applications in Semantic Computing
Source Author(s)/Editor(s): Olawande Daramola (Cape Peninsula University of Technology, South Africa)and Thomas Moser (St. Pölten University of Applied Sciences, Austria)
DOI: 10.4018/978-1-7998-6697-8.ch012

Purchase

View Towards Semantic Data Integration in Resource-Limited Settings for Decision Support on Gait-Related Diseases on the publisher's website for pricing and purchasing information.

Abstract

Resource-limited settings (RLS) are characterised by lack of access to adequate resources such as ICT infrastructure, qualified medical personnel, healthcare facilities, and affordable healthcare for common people. The potential for the application of AI and clinical decision support systems in RLS are limited due to these challenges. Towards the improvement of the status quo, this chapter presents the conceptual design of a framework for the semantic integration of health data from multiple sources to facilitate decision support for the diagnosis and treatment of gait-related diseases in RLS. The authors describe how the framework can leverage ontologies and knowledge graphs for semantic data integration to achieve this. The plausibility of the proposed framework and the general imperatives for its practical realisation are also presented.

Related Content

Reinaldo Padilha França, Ana Carolina Borges Monteiro, Rangel Arthur, Yuzo Iano. © 2021. 21 pages.
Abdul Kader Saiod, Darelle van Greunen. © 2021. 28 pages.
Aswini R., Padmapriya N.. © 2021. 22 pages.
Zubeida Khan, C. Maria Keet. © 2021. 21 pages.
Neha Gupta, Rashmi Agrawal. © 2021. 20 pages.
Kamalendu Pal. © 2021. 14 pages.
Joy Nkechinyere Olawuyi, Bernard Ijesunor Akhigbe, Babajide Samuel Afolabi, Attoh Okine. © 2021. 19 pages.
Body Bottom