Predicting Coronary Heart Disease Using a Suite of Machine Learning Models

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 mac...

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Published inarXiv.org
Main Authors Al-Karaki, Jamal, Ilono, Philip, Baweja, Sanchit, Naghiyev, Jalal, Raja Singh Yadav, Muhammad Al-Zafar Khan
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LanguageEnglish
Published Ithaca Cornell University Library, arXiv.org 21.09.2024
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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%.
AbstractList 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%.
Author Al-Karaki, Jamal
Muhammad Al-Zafar Khan
Naghiyev, Jalal
Baweja, Sanchit
Raja Singh Yadav
Ilono, Philip
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SubjectTerms Algorithms
Diagnosis
Heart diseases
Machine learning
Predictions
Supervised learning
Title Predicting Coronary Heart Disease Using a Suite of Machine Learning Models
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