Title of article :
Provincelevel Prevalence of Psychiatric Disorders: Application of SmallArea Methodology to the Iranian Mental Health Survey (IranMHS)
Author/Authors :
Moradpour ، Farhad - Iran University of Medical Sciences , Hajebi ، Ahmad - Iran University of Medical Sciences , Salehi ، Masoud - Iran University of Medical Sciences , Solaymani-Dodaran ، Masoud - Iran University of Medical Sciences , Rahimi-Movaghar ، Afarin - Iranian Institute for Reduction of High-Risk Behaviors, Tehran University of Medical Sciences , Sharifi ، Vandad - Tehran University of Medical Sciences , Amin-Esmaeili ، Masoumeh - Iranian Institute for Reduction of High-Risk Behaviors, Tehran University of Medical Sciences , Motevalian ، Abbas - Iran University of Medical Sciences
Abstract :
Objective: National surveys revealed a high prevalence of psychiatric disorders in Iran. Provincelevel estimates are needed to manage the resources and focus on preventive efforts more efficiently. The objective of this study was to provide provincelevel estimates of psychiatric disorders. #xD; Method: In this study, Iranian Mental Health Survey (IranMHS) data (n = 7886) was used to produce provincelevel prevalence estimates of any psychiatric disorders among 1564 year old males and females. Psychiatric disorders were diagnosed based on structured diagnostic interview of the Persian version of Composite International Diagnostic Interview (CIDI, version, 2.1). The Hierarchical Bayesian (HB) random effect model was used to calculate the estimates. The mental health status of half of the participants was also measured using a 28item general health questionnaire (GHQ). #xD; Results: A wide variation in the prevalence of psychiatric disorders was found among 31 provinces of Iran. The direct estimates ranged from 3.6% to 62.6%, while the HB estimates ranged from 12.6% to 36.5%. The provincial prevalence among men ranged from 11.9% to 34.5%, while it ranged from 18.4% to 38.8% among women. The Pearson correlation coefficient between HB estimates and GHQ scores was 0.73. #xD; Conclusion: The Bayesian small area estimation provides estimation with improved precision at local levels. Detecting highpriority communities with smallarea approach could lead to a better distribution of limited facilities and more effective mental health interventions.
Keywords :
Composite International Diagnostic Interview , Hierarchical Bayesian Model , Iran , Mental Disorders , Prevalence , Provincelevel , Small Area Estimation
Journal title :
Iranian Journal of Psychiatry
Journal title :
Iranian Journal of Psychiatry