
HealthyHer: An ML-based Chronic Disease Risk Assessment and Monitoring Platform for Rural Women | IJET â Volume 12 Issue 2 | IJET-V12I2P90

Table of Contents
ToggleInternational Journal of Engineering and Techniques (IJET)
Open Access ⢠Peer Reviewed ⢠High Citation & Impact Factor ⢠ISSN: 2395-1303
Volume 12, Issue 2 | Published: April 2026
Author: Jayamalar J, Gayathri R, Arunadevi R
DOI: https://doi.org/{{doi}} ⢠PDF: Download
Abstract
Rural women face a high prevalence of chronic diseases such as Anemia, PCOS, thyroid disorders, and diabetes, with limited access to early screening and continuous monitoring. This paper proposes HealthyHer, a low-cost healthcare system designed for early risk assessment and continuous health tracking. The system adopts a dual-model approach by categorizing users into fresh users and existing patients. A Random Forest-based classification method is incorporated to analyze symptoms and predict risk levels.
Based on the results, the system provides structured recommendations including medical consultation, diagnostic tests, and dietary guidance. The system also supports integration with Primary Health Centreâs (PHCs) to enable better follow-up and data management. The proposed solution is scalable, affordable, and suitable for deployment in low-resource rural environments.
Keywords
Rural Healthcare, Women Health, Chronic Diseases, Random Forest, Risk Analysis
Conclusion
This paper presents HealthyHer, a scalable and cost- effective healthcare solution designed to address the challenges of early detection and monitoring of chronic diseases among rural women.
By incorporating a dual-model approach and a machine learning-based risk classification mechanism, the system provides structured and practical healthcare support.
The proposed solution has strong potential for real- world implementation and can significantly improve healthcare accessibility and outcomes in rural communities.
References
1.World Health Organization, âWomenâs Health and Rural Healthcare,â Geneva, Switzerland, 2022. 2.Government of India, âNational Family Health Survey (NFHS-5),â Ministry of Health and Family Welfare, 2021. 3.Ministry of Health and Family Welfare, âRural Health Statistics,â New Delhi, India, 2023. 4.L. Breiman, âRandom Forests,â Machine Learning
Journal, vol. 45, no. 1, pp. 5â32, 2001.
Cite this article
APA
{{author}} (April 2026). {{title}}. International Journal of Engineering and Techniques (IJET), 12(2). https://doi.org/{{doi}}
{{author}}, â{{title}},â International Journal of Engineering and Techniques (IJET), vol. 12, no. 2, April 2026, doi: {{doi}}.
