Title of article :
Superiority of Bayesian Model Averaging to Stepwise Model in Selection of Factors Related to the Incidence of Type II diabetes in Pre-diabetic Women
Author/Authors :
Mehrabi, Yadollah Department of Epidemiology - School of Public Health and Safety - Shahid Beheshti University of Medical Sciences, Tehran , Mahdavi, Maryam Department of Biostatistics - School of Allied Medical Sciences - Shahid Beheshti University of Medical Sciences, Tehran , Khalili, Davood Prevention of Metabolic Disorders Research Center - Research Institute for Endocrine Sciences - Shahid Beheshti University of Medical Sciences, Tehran , Baghestani, Ahmad Reza Department of Biostatistics - School of Allied Medical Sciences - Shahid Beheshti University of Medical Sciences, Tehran , Bagherzadeh-Khiabani, Farideh Prevention of Metabolic Disorders Research Center - Research Institute for Endocrine Sciences - Shahid Beheshti University of Medical Sciences, Tehran
Abstract :
Introduction: The world prevalence of type 2 diabetes and its related
increment mortality rate which needs high controls cost has attracted high
scientific attention. Early detection of individuals who face this disease
more than the others can prevent getting sick or at least reduce the disease
consequences on public health. Regarding the costs and limitations of
diagnostic tests, a statistical model is presented that helps predict the time
of diabetes incidence and determines its risk factors. Furthermore, this
model determines the significant predictor variables on response and
considers them as model equation parameters.
Materials and Methods: In this study, 803 pre-diabetic women in the
age range of more than 20 years were selected from Tehran lipid and
glucose study (TLGS) to examine the predictor variables on time of
diabetes incidence. They were entered into the study in the phases 1 and 2
and were followed up to the phase 4. The predictor variables selection
was performed using the Stepwise Model (SM) and the Bayesian Model
Averaging (BMA). Then, the predictive discrimination was used to
compare the results of both models. The Log-rank test was performed and
the Kaplan-Meier Curve was plotted. The statistical analyses were
performed using R software (version 3.1.3). Results: The Backward Stepwise Model (BSM), the Forward Stepwise
Model (FSM) and the BMA have used 9, 10 and 6 variables, respectively.
Although the BMA selected predictor variables number is much lower
than the SM, the prediction ability remains nearly constant.
Conclusions: The BMA has averaged on the supported models using
dataset. This model has shown nearly constant accuracy despite the
selection of lower predictor variables number in comparison to the SM.
Keywords :
Bayesian Model Averaging , Stepwise Model , Tehran Lipid and Glucose Study , Women pre-diabetic , Cox regression
Journal title :
Archives of Advances in Biosciences