Application of Machine Learning and Predictive Models in Healthcare – A Review
No Thumbnail Available
Date
2024-06-08
Journal Title
Journal ISSN
Volume Title
Publisher
MECS Press
Abstract
The use of predictive analytics or models in healthcare has the potential to revolutionize patient care by
identifying high-risk patients and intervening with targeted preventative measures to improve health outcomes. This
makes the application of analytics in healthcare a concept of utmost interest, which has been explored in various
fashions by several scholars. From predicting patients’ ailments to prescribing appropriate drugs, predictive models
have seen massive interest. This work studied published works on predictive models in healthcare and observed that the
implementation of predictive models in healthcare is experiencing a notable upswing, with a particular focus on
research in the United States, where a majority of the top publications originated. Surprisingly, all of the leading nations
in this sector have affiliations spanning many continents, with the exception of Africa and South America, together
producing a substantially larger volume of research than other countries. The United States also shone out, accounting
for 60% of the top five researchers. Notably, although it was published in 2017 (relatively later), Jiang et al. had the
most citations (1,346). These studies' core themes were clinical standards, machine learning terminology, and model
accuracy. The Journal of Biomedical Informatics topped among journals, with 54 articles, while Luo Gang emerged as
the top-performing author, with 12 publications.
Description
Keywords
Prediction, machine learning, predictive models, healthcare, patients
Citation
Agbesi, B. E., Addo, P. C., & Boansi, O. K. (2024). Application of Machine Learning and Predictive Models in Healthcare–A Review. International Journal of Education and Management Engineering, 14(3), 44.