Proposed Search of Intelligent Information System for Disease Diagnosis Using Semantic Web
Abstract
The development of Information Technology is not only on hardware and software but also in the development of technology in the field of medicine, based on AI. In the field of medicine, AI is developing rapidly. Information and Communication Technology in the health field is widely used, one of which is disease information data. Disease information data availability has increased electronically but the data is not categorized and stored semantically. No categorization and semantic store make the data difficult to find. Semantic Web is an intelligent service as an information intermediary, search agent, and information filter, which offers more functionality and interoperability than a standalone service. The Semantic Web context is meta-data that allows the machine to interpret it where the query execution time depends on this order. A good algorithm for determining query paths can thus contribute to making queries fast and efficient. Methods and analysis will use Ontology Web Language for disease domain modelling and meta-search systems for ontology mapping and Web services. The Mapping component includes domain ontologies, taxonomic information and collection databases and changes them in the Resource Description Framework. The study proposed a research direction to create semantic web ontology models and optimize disease information search using genetic algorithms that allow automatic meta-data matching. The ultimate purpose is a repository of knowledge related to such a mapping that disease information search can be found. A new algorithm or model will be proposed and it can optimize disease finding with the information needed and semantic Web ontology.
References
Albabtain, Arwa Fahad, Dina Ahmad Almulhim, Faisel Yunus, and Mowafa Said Househ. 2014. “The Role of Mobile Health in the Developing World : A Review of Current Knowledge and Future Trends.” Journal of Selected Areas in Health Informatics 4(2): 10–15.
Braa, Monteiro, and Sahay. 2004. “Networks of Action: Sustainable Health Information Systems across Developing Countries.” MIS Quarterly 28(3): 337. http://www.jstor.org/stable/10.2307/25148643.
Dang, Jiangbo, Amir Hedayati, Ken Hampel, and Candemir Toklu. 2008. “An Ontological Knowledge Framework for Adaptive Medical Workflow.” Journal of Biomedical Informatics 41(5): 829–36.
Decker, Stefan et al. 2000. “The Semantic Web: The Roles of XML and RDF.” IEEE Internet Computing 4(October): 63–74.
Ehrig, Marc. 2007. 4 Ontology Alignment - Bridging the Semantic Gap. http://link.springer.com/10.1007/978-0-387-36501-5.
He, Jianxing et al. 2019. “The Practical Implementation of Artificial Intelligence Technologies in Medicine.” Nature Medicine 25(1): 30–36. http://dx.doi.org/10.1038/s41591-018-0307-0.
Jennings, Paul C. et al. 2019. “Genetic Algorithms for Computational Materials Discovery Accelerated by Machine Learning.” NJ Computational Materials 5(1). http://dx.doi.org/10.1038/s41524-019-0181-4.
Pornpit Wongthontham, and Bilal Abu-Salih. 2018. “Ontology-Based Approach for Identifying the Credibility Domain in Social Big Data.” : 1–43.
W3C. 2014. “RDF Vocabulary Description Language 1.1:RDF Schema.” https://www.w3.org/TR/2014/REC-rdf-schema-20140225/.
Xie, Xia et al. 2020. “A Novel Text Mining Approach for Scholar Information Extraction from Web Content in Chinese.” Future Generation Computer Systems 111: 859–72.
All materials contained within this journal are protected by Intellectual Property Corporation of Malaysia, Copyright Act 1987 and may not be reproduced, distributed, transmitted, displayed, published, or
broadcast without the prior, express written permission of Centre for Graduate Studies, Universiti Selangor, Malaysia. You may not alter or remove any copyright or other notice from copies of this content.