Author/Authors :
Bidhendi Yarandi, Razieh Department of Epidemiology and Biostatistics - School of Public Health - Tehran University of Medical Sciences, Tehran, Iran , Mohammad, Kazem Department of Epidemiology and Biostatistics - School of Public Health - Tehran University of Medical Sciences, Tehran, Iran , Zeraati, Hojjat Department of Epidemiology and Biostatistics - School of Public Health - Tehran University of Medical Sciences, Tehran, Iran , Ramezani Tehrani, Fahimeh Reproductive Endocrinology Research Center - Research Institute for Endocrine Sciences - Shahid Beheshti University of Medical Sciences, Tehran, Iran , Mansournia, Mohammad Ali Department of Epidemiology and Biostatistics - School of Public Health - Tehran University of Medical Sciences, Tehran, Iran
Abstract :
Background: The Bayesian methods have received more attention in medical research. It is considered as a natural paradigm for
dealing with applied problems in the sciences and also an alternative to the traditional frequentist approach. However, its concept is
somewhat difficult to grasp by nonexperts. This study aimed to explain the foundational ideas of the Bayesian methods through an
intuitive example in medical science and to illustrate some simple examples of Bayesian data analysis and the interpretation of results
delivered by Bayesian analyses. In this study, data sparsity, as a problem which could be solved by this approach, was presented
through an applied example. Moreover, a common sense description of Bayesian inference was offered and some illuminating
examples were provided for medical investigators and nonexperts.
Methods: Data augmentation prior, MCMC, and Bayes factor were introduced. Data from the Khuzestan study, a 2-phase cohort
study, were applied for illustration. Also, the effect of vitamin D intervention on pregnancy outcomes was studied.
Results: Unbiased estimate was obtained by the introduced methods.
Conclusion: Bayesian and data augmentation as the advanced methods provide sufficient results and deal with most data problems
such as sparsity.
Keywords :
Bayesian inference , Prior information , MCMC , Data augmentation