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Commentary: Practical Advantages of Bayesian Analysis of Epidemiologic Data
Author(s) -
David B. Dunson
Publication year - 2001
Publication title -
american journal of epidemiology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.33
H-Index - 256
eISSN - 1476-6256
pISSN - 0002-9262
DOI - 10.1093/aje/153.12.1222
Subject(s) - bayesian probability , markov chain monte carlo , computer science , bayesian statistics , missing data , posterior probability , confounding , variable order bayesian network , data mining , econometrics , machine learning , bayesian inference , statistics , artificial intelligence , mathematics
In the past decade, there have been enormous advances in the use of Bayesian methodology for analysis of epidemiologic data, and there are now many practical advantages to the Bayesian approach. Bayesian models can easily accommodate unobserved variables such as an individual's true disease status in the presence of diagnostic error. The use of prior probability distributions represents a powerful mechanism for incorporating information from previous studies and for controlling confounding. Posterior probabilities can be used as easily interpretable alternatives to p values. Recent developments in Markov chain Monte Carlo methodology facilitate the implementation of Bayesian analyses of complex data sets containing missing observations and multidimensional outcomes. Tools are now available that allow epidemiologists to take advantage of this powerful approach to assessment of exposure-disease relations.

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