Title of article :
Predicting coronary artery diseases using effective features selected by Harris Hawks optimization algorithm and support vector machine
Author/Authors :
Maleki, Sarina Department of Industrial Engineering - Technical Engineering Faculty - Yazd University, Yazd, Iran , Zare Mehrjerdi, Yahia Department of Industrial Engineering - Technical Engineering Faculty - Yazd University, Yazd, Iran , Mirzaei, Masoud Department of Industrial Engineering - Technical Engineering Faculty - Yazd University, Yazd, Iran , Shishebori, Davoud Disease Modeling Center of Shahid Sadoughi University of Medical Sciences, Yazd, Iran
Abstract :
With 17 million annual deaths, cardiovascular diseases are the leading cause of
mortality across the world with coronary artery disease (CAD) as the most
prevalent one. CAD is the leading cause of death in industrial countries and at the
same time is rapidly spreading in the developing world. Thus, the development
and introduction of machine learning methods for the accurate diagnosis of heart
diseases, especially CAD, have been an important debate in recent years in order
to overcome relevant problems. The aim of this paper was to propose a model for
enhancing CAD prediction accuracy. It sought a framework for predicting and
diagnosing CAD using the features selection of Harris Hawks Optimization
algorithm (HHO) and Support Vector Machine (SVM). The heart disease data set
of Cleveland hospital available in the University of California Irvine (UCI) was
used as the studied data set. It included 303 cases. Each case had 14 features with
the final medical status of cases (CAD or normal case) as one of the features
where 165 and 138 cases were diagnosed as CAD and normal, respectively. The
results of this study revealed that HHO could enhance CAD diagnosis accuracy.
Keywords :
Coronary artery diseases , feature selection , Harris Hawk optimization algorithm , support vector machine
Journal title :
Journal of Industrial and Systems Engineering (JISE)