Heart disease prediction using machine learning algorithms
Abstract
According to recent survey by WHO (World health organization) 17.9 million people die
each year because of heart related diseases and it is increasing rapidly. With the increasing
population and disease, it is become a challenge to diagnosing disease and providing the
appropriate treatment at the right time. But there is a light of hope that recent advances
in technology have accelerated the public health sector by developing advanced functional
biomedical solutions. This paper aims at analyzing the various data mining techniques namely
Naive Bayes, Random Forest Classification, Decision tree and Support Vector Machine by
using a qualified dataset for Heart disease prediction which is consist of various attributes
like gender, age, chest pain type, blood pressure, blood sugar etc. The research includes
finding the correlations between the various attributes of the dataset by utilizing the standard
data mining techniques and hence using the attributes suitably to predict the chances of a
heart disease. These machine learning techniques take less time for the prediction of the
disease with more accuracy which will reduce the dispose of valuable lives all over the world.