Title of article :
Study on the Efficiency of a Multi-layer Perceptron Neural Network Based on the Number of Hidden Layers and Nodes for Diagnosing Coronary- Artery Disease
Author/Authors :
Moghaddasi Hamid نويسنده Faculty of Paramedical Sciences , Farahbakhsh Mohammad نويسنده M.ScCandidate, Civil Engineering Department, Islamic Azad University, Mashhad Branch Mashhad, Iran , Rabiei Reza نويسنده Department of Health Information Management and Medical Informatics; School of Paramedical Sciences, Shahid Beheshti University of Medical Sciences, Tehran, Iran , Ahmadzadeh Bahareh نويسنده Deputy of Health, Ahvaz Jundishapur University of Medical Sciences, Ahvaz, Iran
Abstract :
Background: Through the diagnostic decision support systems, potential patients or those who are on the threshold succumbing
to a disease can be diagnosed early; thus, the prevention of unnecessary angiography for people not suffering from the coronaryartery
disease as well as its dangers and costs can be avoided. The present study aimed at the efficiency evaluation of a multilayer
perceptron neural network based on the number of hidden layers and nodes to diagnose coronary heart disease.
Methods: A fundamental analysis was conducted on the provided data related to 13,228 patients who had undergone coronary
angiography and the database (nine risk factors including age, gender, BMI, body fat, family history, smoking, blood cholesterol,
diabetes, and high blood pressure) was investigated in this research using SPSS statistics (17.0) and R (2.13.2) software. In the next
stage, through utilizing MATLAB (R2014a), 1332 different MLP neural networks were created.
Results: Based on the largest area under the ROC curve, the best model of MLP neural network was selected involving two hidden
layers; the first layer had 34 and the second one had 18 hidden nodes. This model had the highest efficiency of 82% in the diagnosis
of coronary artery disease.
Conclusions: The obtained results demonstrated that the MLP makes an acceptable approach to the diagnosis of coronary artery
disease in patients without theneedfor performing angiography. Thedevelopmentof thismodelwill result in creatinganalgorithm
for decision support systems to diagnose coronary artery disease, as well.
Journal title :
Astroparticle Physics