Santhi, M.V.B.T and Priyanka, P. and Jyothi, T. and Ganesh, B. Sai and Teja, J. Sai (2025) Diabetes Prediction Using Machine Learning. International Journal of Innovative Science and Research Technology, 10 (4): 25apr871. pp. 4463-4470. ISSN 2456-2165
Diabetes Mellitus is a long-term metabolic disorder impacting millions globally, with its incidence continually increasing. Timely diagnosis and early intervention are vital for effective management, helping to minimize complications and enhance patients' quality of life. This research introduces a predictive framework that utilizes machine learning methods to support the early detection of individuals at risk of developing diabetes. Drawing from a rich dataset that includes demographic, clinical, and lifestyle information, the model integrates advanced algorithms such as Logistic Regression, Decision Trees, and Support Vector Machines to estimate the probability of diabetes onset. The model undergoes thorough testing and validation using real- world data, showcasing strong accuracy and reliability. This provides healthcare professionals with actionable insights for early intervention. By leveraging machine learning, this approach promotes a proactive and tailored strategy for diabetes care, ultimately aiming to enhance patient health outcomes and overall well-being.
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