Title of article :
Artificial neural networks versus bivariate logistic regression in prediction diagnosis of patients with hypertension and diabetes
Author/Authors :
Adavi, Mehdi Department of Biostatistics - School of Public Health - Iran University of Medical Sciences, Tehran, Iran , Salehi, Masoud Department of Biostatistics - School of Public Health - Iran University of Medical Sciences, Tehran, Iran , Roudbari, Masoud Antimicrobial Resistance Research Center - Rasoul-e-Akram Hospital - Department of Biostatistics - School of Public Health - Iran University of Medical Sciences, Tehran, Iran
Abstract :
Background: Diabetes and hypertension are important non-communicable diseases and their
prevalence is important for health authorities. The aim of this study was to determine the predictive
precision of the bivariate Logistic Regression (LR) and Artificial Neutral Network (ANN) in concurrent
diagnosis of diabetes and hypertension.
Methods: This cross-sectional study was performed with 12000 Iranian people in 2013 using stratified-
cluster sampling. The research questionnaire included information on hypertension and diabetes
and their risk factors. A perceptron ANN with two hidden layers was applied to data. To build a joint
LR model and ANN, SAS 9.2 and Matlab software were used. The AUC was used to find the higher
accurate model for predicting diabetes and hypertension.
Results: The variables of gender, type of cooking oil, physical activity, family history, age, passive
smokers and obesity entered to the LR model and ANN. The odds ratios of affliction to both diabetes
and hypertension is high in females, users of solid oil, with no physical activity, with positive family
history, age of equal or higher than 55, passive smokers and those with obesity. The AUC for LR
model and ANN were 0.78 (p=0.039) and 0.86 (p=0.046), respectively.
Conclusion: The best model for concurrent affliction to hypertension and diabetes is ANN which
has higher accuracy than the bivariate LR model.
Keywords :
Hypertension , Diabetes , Prediction , Joint logistic regression , Artificial neutral Network
Journal title :
Astroparticle Physics