Treffer: A Systematic Literature Review on Machine Learning in Healthcare Prediction

Title:
A Systematic Literature Review on Machine Learning in Healthcare Prediction
Source:
International Journal of Online and Biomedical Engineering (iJOE); Vol. 21 No. 06 (2025); pp. 155-177 ; 2626-8493
Publisher Information:
International Federation of Engineering Education Societies (IFEES)
Publication Year:
2025
Collection:
Online-Journals.org (International Association of Online Engineering)
Document Type:
Fachzeitschrift article in journal/newspaper
File Description:
application/pdf
Language:
English
Rights:
Copyright (c) 2025 Nur Farah Afifah Ahmad Sukri, Wan Mohd Amir Fazamin Wan Hamzah, Mohd Kamir Yusof, Ismahafezi Ismail, Harmy Mohamed Yusoff, Azliza Yacob ; https://creativecommons.org/licenses/by/4.0
Accession Number:
edsbas.13AADE41
Database:
BASE

Weitere Informationen

Rapid technological advancement will continue to create new values and transform experiences in many sectors, including healthcare. Several key trends are shaping today’s healthcare system, including the use of machine learning (ML). This systematic literature review (SLR) explores the application of ML in healthcare, particularly in predictive analytics. The SLR also includes a few papers on machine learning operations (MLOps) in healthcare, reflecting limited studies on the topic. This suggests significant potential for further exploration in MLOps. The review compares findings from various studies, many of which agree that ML enhances the scalability and reliability of predictive models. This study aims to assess the most effective ML algorithms and methodologies used in healthcare prediction. It also attempts to identify features influencing the outcomes of ML applications in healthcare predictions. Findings suggest that ML can improve prediction accuracy using the appropriate dataset, optimal feature selection model, and a tailored ML algorithm for specific tasks. The literature highlights challenges, including the need for specialised skills and the complexity of integrating MLOps into existing healthcare systems.