Personalized-Healthcare and Medicine Recommendation System Using Machine Learning


Authors : Ramya S. Revankar; Preethi K. P.

Volume/Issue : Volume 10 - 2025, Issue 8 - August


Google Scholar : https://tinyurl.com/8hjknwtf

Scribd : https://tinyurl.com/bdz3jv9s

DOI : https://doi.org/10.38124/ijisrt/25aug157

Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.

Note : Google Scholar may take 30 to 40 days to display the article.


Abstract : Digital solutions have emerged in recent years that improve patient care and diagnostic efficiency as a result of the healthcare industry's integration of intelligent technologies and machine learning. Through the analysis of user-reported symptoms, this project presents an intelligent, web-based health assistant that employs machine learning techniques to identify possible diseases. The system provides individualized treatment recommendations, including prescription drugs, diets, physical activity, and appropriate safety measures, in addition to basic diagnostics. Incorporating Support Vector Machine (SVM) models that have been trained on structured datasets of symptoms and diseases guarantees real-time forecasts and recommendations that are based on confidence. Users, physicians, and administrators can access it based on their roles, and an interactive dashboard is available to track activities. The system's objectives are to lessen the diagnostic burden on healthcare facilities, empower proactive healthcare decisions, and improve accessibility.

Keywords : Disease Prediction, Machine Learning, Personalized Advice, Suggestions, Symptoms, Appointments.

References :

  1. Ferjani, M. F. (2020). Machine learning for disease prediction. Bournemouth University, Bournemouth, England.
  2. F. Rehman, S. A. Madani, O. Khalid, and K. Bilal (2017). DietRight: An intelligent system for recommending foods. 11(6), 2910-2925; KSII Transactions on Internet and Information Systems (TIIS).
  3. S. Bhoi, H. S. A. Fang, M. L. Lee, W. Hsu, & N. C. Tan (2021). use a graph-based method to customize drug recommendations. Eleventh ACM Conference on Recommender Systems (pp. 411-415). ACM Transactions on Information Systems (TOIS), 40(3), 1-23.
  4. Toumazou, T. Shinawatra, M. Karvela, M. Sohbati, and C. H. Chen (2017). A customized expert advice system for optimal nutrition is called PERSON. IEEE Biomedical Circuits and Systems Transactions, 12(1), pp. 151–160.
  5. P. Pirolli and A. Mahyari (2021, September). Using interconnected recurrent neural networks, physical exercise is recommended and success is predicted. Page 148–153 of IEEE's 2021 International Conference on Digital Health (ICDH). IEEE.
  6. Zenun R. Franco (August 2017). An online recommendation engine providing individualized dietary guidance. Eleventh ACM Conference on Recommender Systems Proceedings (pp. 411-415).

Digital solutions have emerged in recent years that improve patient care and diagnostic efficiency as a result of the healthcare industry's integration of intelligent technologies and machine learning. Through the analysis of user-reported symptoms, this project presents an intelligent, web-based health assistant that employs machine learning techniques to identify possible diseases. The system provides individualized treatment recommendations, including prescription drugs, diets, physical activity, and appropriate safety measures, in addition to basic diagnostics. Incorporating Support Vector Machine (SVM) models that have been trained on structured datasets of symptoms and diseases guarantees real-time forecasts and recommendations that are based on confidence. Users, physicians, and administrators can access it based on their roles, and an interactive dashboard is available to track activities. The system's objectives are to lessen the diagnostic burden on healthcare facilities, empower proactive healthcare decisions, and improve accessibility.

Keywords : Disease Prediction, Machine Learning, Personalized Advice, Suggestions, Symptoms, Appointments.

CALL FOR PAPERS


Paper Submission Last Date
30 - November - 2025

Video Explanation for Published paper

Never miss an update from Papermashup

Get notified about the latest tutorials and downloads.

Subscribe by Email

Get alerts directly into your inbox after each post and stay updated.
Subscribe
OR

Subscribe by RSS

Add our RSS to your feedreader to get regular updates from us.
Subscribe