Using Machine Learning to Predict Heart Disease

Author:

Bora Nikhil1,Gutta Sreedevi1,Hadaegh Ahmad1

Affiliation:

1. Department of Computer Science and Information System California State University San Marcos 333 Twin Oak valley Rd. San Marcos CA, 92009 UNITED STATE OF AMERICA

Abstract

Heart Disease has become one of the most leading cause of the death on the planet and it has become most life-threatening disease. The early prediction of the heart disease will help in reducing death rate. Predicting Heart Disease has become one of the most difficult challenges in the medical sector in recent years. As per recent statistics, about one person dies from heart disease every minute. In the realm of healthcare, a massive amount of data was discovered for which the data-science is critical for analyzing this massive amount of data. This paper proposes heart disease prediction using different machine-learning algorithms like logistic regression, naïve bayes, support vector machine, k nearest neighbor (KNN), random forest, extreme gradient boost, etc. These machine learning algorithm techniques we used to predict likelihood of person getting heart disease on the basis of features (such as cholesterol, blood pressure, age, sex, etc. which were extracted from the datasets. In our research we used two separate datasets. The first heart disease dataset we used was collected from very famous UCI machine learning repository which has 303 record instances with 14 different attributes (13 features and one target) and the second dataset that we used was collected from Kaggle website which contained 1190 patient’s record instances with 11 features and one target. This dataset is a combination of 5 popular datasets for heart disease. This study compares the accuracy of various machine learning techniques. In our research, for the first dataset we got the highest accuracy of 92% by Support Vector Machine (SVM). And for the second dataset, Random Forest gave us the highest accuracy of 94.12%. Then, we combined both the datasets which we used in our research for which we got the highest accuracy of 93.31% using Random Forest.

Publisher

World Scientific and Engineering Academy and Society (WSEAS)

Subject

General Agricultural and Biological Sciences,General Biochemistry, Genetics and Molecular Biology,General Medicine,General Neuroscience

Reference15 articles.

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4. G. Sarika Sindhu et al. “Analysis and Prediction of Cardiovascular Disease using Machine Learning Classifiers”, International Conference on Advanced Computing & Communication Systems (ICACCS) April 2020.

5. Malkari Bhargav and J. Raghunath “A Study on Risk Prediction of Cardiovascular Disease Using Machine Learning Algorithms”, International Journal of Emerging Technologies and Innovative Research (www.jstor.org), ISSN:2349-5162, Vol.7, Issue 8, page no.683-688, August 2020

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