4.6 Article

A Bayesian mixture modeling approach for assessing the effects of correlated exposures in case-control studies

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Publisher

NATURE PUBLISHING GROUP
DOI: 10.1038/jes.2012.22

Keywords

empirical/statistical models; exposure modeling; epidemiology; population based studies; volatile organic compounds

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Predisposition to a disease is usually caused by cumulative effects of a multitude of exposures and lifestyle factors in combination with individual susceptibility. Failure to include all relevant variables may result in biased risk estimates and decreased power, whereas inclusion of all variables may lead to computational difficulties, especially when variables are correlated. We describe a Bayesian Mixture Model (BMM) incorporating a variable-selection prior and compared its performance with logistic multiple regression model (LM) in simulated case-control data with up to twenty exposures with varying prevalences and correlations. In addition, as a practical example we reanalyzed data on male infertility and occupational exposures (Chaps-UK). BMM mean-squared errors (MSE) were smaller than of the LM, and were independent of the number of model parameters. BMM type I errors were minimal (<= 1), whereas for the LM this increased with the number of parameters and correlation between exposures. The numbers of type II errors were comparable. Reanalysis of Chaps-UK data demonstrated more convincingly than by using a LM that occupational exposure to glycol ethers and VOCs are likely risk factors for male infertility. This BMM proves an appealing alternative to standard logistic regression when dealing with the analysis of (correlated) exposures in case-control studies.

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