Title of article :
A Comparison between Decision Tree and Random Forest in Determining the Risk Factors Associated with Type 2 Diabetes
Author/Authors :
Esmaily, Habibollah Social Determinants of Health Research Center - Mashhad University of Medical Sciences, Mashhad, Iran , Tayefi, Maryam Clinical Research Unit, Mashhad university of Medical Sciences, Mashhad, Iran , Doosti, Hassan Department of Statistics - Macquarie University, Sydney, NSW, Australia , Ghayour-Mobarhan, Majid Biochemistry of Nutrition Research Center - School of Medicine - Mashhad University of Medical Sciences, Mashhad, Iran , Nezami, Hossein Department of Basic Sciences - Faculty of Medicine - Gonabad University of Medical Sciences, Gonabad, Iran , Amirabadizadeh, Alireza Medical Toxicology and Drug Abuse Research Center (MTDRC) - Birjand University of Medical Sciences, Birjand, Iran
Abstract :
Background: We aimed to identify the associated risk factors of type 2 diabetes mellitus (T2DM) using data mining approach, decision tree and random forest techniques using the Mashhad Stroke and Heart Atherosclerotic Disorders (MASHAD) Study program.
Study design: A cross-sectional study.
Methods: The MASHAD study started in 2010 and will continue until 2020. Two data mining tools, namely decision trees, and random forests, are used for predicting T2DM when some other characteristics are observed on 9528 subjects recruited from MASHAD database. This paper makes a comparison between these two models in terms of accuracy, sensitivity, specificity and the area under ROC curve.
Results: The prevalence rate of T2DM was 14% among these subjects. The decision tree model has 64.9% accuracy, 64.5% sensitivity, 66.8% specificity, and area under the ROC curve measuring 68.6%, while the random forest model has 71.1% accuracy, 71.3% sensitivity, 69.9% specificity, and area under the ROC curve measuring 77.3% respectively.
Conclusions: The random forest model, when used with demographic, clinical, and anthropometric and biochemical measurements, can provide a simple tool to identify associated risk factors for type 2 diabetes. Such identification can substantially use for managing the health policy to reduce the number of subjects with T2DM .
Keywords :
Diabetes mellitus , Decision tree , Random forest , data mining , Iran
Journal title :
Astroparticle Physics