A knowledge construction methodology to automate case-based learning using clinical documents
journal contribution
posted on 2023-05-20, 03:10authored byAli, M, Hussain, J, Lee, S, Byeong KangByeong Kang, Sattar, K
The case-based learning (CBL) approach has gained attention in medical education as an alternative to traditional learning methodology. However, current CBL systems do not facilitate and provide computer-based domain knowledge to medical students for solving real-world clinical cases during CBL practice. To automate CBL, clinical documents are beneficial for constructing domain knowledge. In the literature, most systems and methodologies require a knowledge engineer to construct machine-readable knowledge. Keeping in view these facts, we present a knowledge construction methodology (KCM-CD) to construct domain knowledge ontology (i.e., structured declarative knowledge) from unstructured text in a systematic way using artificial intelligence techniques, with minimum intervention from a knowledge engineer. To utilize the strength of humans and computers, and to realize the KCM-CD methodology, an interactive case-based learning system (iCBLS) was developed. Finally, the developed ontological model was evaluated to evaluate the quality of domain knowledge in terms of coherence measure. The results showed that the overall domain model has positive coherence values, indicating that all words in each branch of the domain ontology are correlated with each other and the quality of the developed model is acceptable.
Funding
Ministry of Trade, Industry and Energy
History
Publication title
Expert Systems
Volume
37
Article number
e12401
Number
e12401
Pagination
1-19
ISSN
0266-4720
Department/School
School of Information and Communication Technology
Publisher
Blackwell Publ Ltd
Place of publication
108 Cowley Rd, Oxford, England, Oxon, Ox4 1Jf
Rights statement
Copyright 2019 John Wiley & Sons, Ltd.
Repository Status
Restricted
Socio-economic Objectives
Information systems, technologies and services not elsewhere classified