Bayesian hierarchical models for food frequency assessment |
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Authors: | Hae‐Ryoung Song Andrew B. Lawson Daniela Nitcheva |
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Affiliation: | Division of Biostatistics & Epidemiology College of Medicine, Medical University of South Carolina, Charleston, SC, USA |
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Abstract: | The aim of this study is to assess the biases of a Food Frequency Questionnaire (FFQ) by comparing total energy intake (TEI) with total energy expenditure (TEE) obtained from doubly labelled water(DLW) biomarker after adjusting measurement errors in DLW. We develop several Bayesian hierarchical measurement error models of DLW with different distributional assumptions on TEI to obtain precise bias estimates of TEI. Inference is carried out by using MCMC simulation techniques in a fully Bayesian framework, and model comparisons are done via the mean square predictive error. Our results showed that the joint model with random effects under the Gamma distribution is the best fit model in terms of the MSPE and residual diagnostics, in which bias in TEI is not significant based on the 95% credible interval. The Canadian Journal of Statistics 38: 506–516; 2010 © 2010 Statistical Society of Canada |
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Keywords: | Measurement error models Berkson classical skew‐Gaussian gamma log‐Gaussian food frequency questionnaire doubly labelled water MSC classification: 62P10 62P25 62‐07 |
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