Predicting Coronary Heart Disease Using a Suite of Machine Learning Models
- URL: http://arxiv.org/abs/2409.14231v1
- Date: Sat, 21 Sep 2024 19:22:41 GMT
- Title: Predicting Coronary Heart Disease Using a Suite of Machine Learning Models
- Authors: Jamal Al-Karaki, Philip Ilono, Sanchit Baweja, Jalal Naghiyev, Raja Singh Yadav, Muhammad Al-Zafar Khan,
- Abstract summary: Coronary Heart Disease affects millions of people worldwide and is a well-studied area of healthcare.
There are many viable and accurate methods for the diagnosis and prediction of heart disease, but they have limiting points such as invasiveness, late detection, or cost.
Supervised learning via machine learning algorithms presents a low-cost (computationally speaking), non-invasive solution that can be a precursor for early diagnosis.
- Score: 0.1979158763744267
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Coronary Heart Disease affects millions of people worldwide and is a well-studied area of healthcare. There are many viable and accurate methods for the diagnosis and prediction of heart disease, but they have limiting points such as invasiveness, late detection, or cost. Supervised learning via machine learning algorithms presents a low-cost (computationally speaking), non-invasive solution that can be a precursor for early diagnosis. In this study, we applied several well-known methods and benchmarked their performance against each other. It was found that Random Forest with oversampling of the predictor variable produced the highest accuracy of 84%.
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