Supervised Machine Learning based Ensemble Model for Accurate Prediction of Type 2 Diabetes
Ramya Akula, Ni Nguyen, Ivan Garibay

TL;DR
This paper develops a weighted ensemble machine learning model that predicts Type 2 diabetes with 85% accuracy using patient biometric data, improving early detection and health outcomes.
Contribution
It introduces a novel weighted ensemble approach that combines multiple algorithms to enhance prediction accuracy for Type 2 diabetes.
Findings
Ensemble model achieves 85% accuracy on Practice Fusion data.
All individual algorithms except Naive Bayes had low precision.
The ensemble model improves overall prediction performance.
Abstract
According to the American Diabetes Association(ADA), 30.3 million people in the United States have diabetes, but only 7.2 million may be undiagnosed and unaware of their condition. Type 2 diabetes is usually diagnosed for most patients later on in life whereas the less common Type 1 diabetes is diagnosed early on in life. People can live healthy and happy lives while living with diabetes, but early detection produces a better overall outcome on most patient's health. Thus, to test the accurate prediction of Type 2 diabetes, we use the patients' information from an electronic health records company called Practice Fusion, which has about 10,000 patient records from 2009 to 2012. This data contains individual key biometrics, including age, diastolic and systolic blood pressure, gender, height, and weight. We use this data on popular machine learning algorithms and for each algorithm, we…
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Taxonomy
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