Literature DB >> 22848190

Fitting a bivariate measurement error model for episodically consumed dietary components.

Saijuan Zhang1, Susan M Krebs-Smith, Douglas Midthune, Adriana Perez, Dennis W Buckman, Victor Kipnis, Laurence S Freedman, Kevin W Dodd, Raymond J Carroll.   

Abstract

There has been great public health interest in estimating usual, i.e., long-term average, intake of episodically consumed dietary components that are not consumed daily by everyone, e.g., fish, red meat and whole grains. Short-term measurements of episodically consumed dietary components have zero-inflated skewed distributions. So-called two-part models have been developed for such data in order to correct for measurement error due to within-person variation and to estimate the distribution of usual intake of the dietary component in the univariate case. However, there is arguably much greater public health interest in the usual intake of an episodically consumed dietary component adjusted for energy (caloric) intake, e.g., ounces of whole grains per 1000 kilo-calories, which reflects usual dietary composition and adjusts for different total amounts of caloric intake. Because of this public health interest, it is important to have models to fit such data, and it is important that the model-fitting methods can be applied to all episodically consumed dietary components.We have recently developed a nonlinear mixed effects model (Kipnis, et al., 2010), and have fit it by maximum likelihood using nonlinear mixed effects programs and methodology (the SAS NLMIXED procedure). Maximum likelihood fitting of such a nonlinear mixed model is generally slow because of 3-dimensional adaptive Gaussian quadrature, and there are times when the programs either fail to converge or converge to models with a singular covariance matrix. For these reasons, we develop a Monte-Carlo (MCMC) computation of fitting this model, which allows for both frequentist and Bayesian inference. There are technical challenges to developing this solution because one of the covariance matrices in the model is patterned. Our main application is to the National Institutes of Health (NIH)-AARP Diet and Health Study, where we illustrate our methods for modeling the energy-adjusted usual intake of fish and whole grains. We demonstrate numerically that our methods lead to increased speed of computation, converge to reasonable solutions, and have the flexibility to be used in either a frequentist or a Bayesian manner.

Entities:  

Keywords:  Bayesian approach; latent variables; measurement error; mixed effects models; nutritional epidemiology; zero-inflated data

Mesh:

Year:  2011        PMID: 22848190      PMCID: PMC3406506          DOI: 10.2202/1557-4679.1267

Source DB:  PubMed          Journal:  Int J Biostat        ISSN: 1557-4679            Impact factor:   0.968


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3.  The food propensity questionnaire: concept, development, and validation for use as a covariate in a model to estimate usual food intake.

Authors:  Amy F Subar; Kevin W Dodd; Patricia M Guenther; Victor Kipnis; Douglas Midthune; Margaret McDowell; Janet A Tooze; Laurence S Freedman; Susan M Krebs-Smith
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4.  Structured measurement error in nutritional epidemiology: applications in the Pregnancy, Infection, and Nutrition (PIN) Study.

Authors:  Brent A Johnson; Amy H Herring; Joseph G Ibrahim; Anna Maria Siega-Riz
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5.  Design and serendipity in establishing a large cohort with wide dietary intake distributions : the National Institutes of Health-American Association of Retired Persons Diet and Health Study.

Authors:  A Schatzkin; A F Subar; F E Thompson; L C Harlan; J Tangrea; A R Hollenbeck; P E Hurwitz; L Coyle; N Schussler; D S Michaud; L S Freedman; C C Brown; D Midthune; V Kipnis
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6.  A new statistical method for estimating the usual intake of episodically consumed foods with application to their distribution.

Authors:  Janet A Tooze; Douglas Midthune; Kevin W Dodd; Laurence S Freedman; Susan M Krebs-Smith; Amy F Subar; Patricia M Guenther; Raymond J Carroll; Victor Kipnis
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7.  Within- and between-cohort variation in measured macronutrient intakes, taking account of measurement errors, in the European Prospective Investigation into Cancer and Nutrition study.

Authors:  Pietro Ferrari; Rudolf Kaaks; Michael T Fahey; Nadia Slimani; Nicholas E Day; Guillem Pera; Hendriek C Boshuizen; Andrew Roddam; Heiner Boeing; Gabriele Nagel; Anne Thiebaut; Philippos Orfanos; Vittorio Krogh; Tonje Braaten; Elio Riboli
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8.  Semiparametric bayesian analysis of nutritional epidemiology data in the presence of measurement error.

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Journal:  Biometrics       Date:  2009-08-10       Impact factor: 2.571

9.  Modeling data with excess zeros and measurement error: application to evaluating relationships between episodically consumed foods and health outcomes.

Authors:  Victor Kipnis; Douglas Midthune; Dennis W Buckman; Kevin W Dodd; Patricia M Guenther; Susan M Krebs-Smith; Amy F Subar; Janet A Tooze; Raymond J Carroll; Laurence S Freedman
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  9 in total
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2.  A NEW MULTIVARIATE MEASUREMENT ERROR MODEL WITH ZERO-INFLATED DIETARY DATA, AND ITS APPLICATION TO DIETARY ASSESSMENT.

Authors:  Saijuan Zhang; Douglas Midthune; Patricia M Guenther; Susan M Krebs-Smith; Victor Kipnis; Kevin W Dodd; Dennis W Buckman; Janet A Tooze; Laurence Freedman; Raymond J Carroll
Journal:  Ann Appl Stat       Date:  2011-06-01       Impact factor: 2.083

3.  Bayesian Copula Density Deconvolution for Zero-Inflated Data in Nutritional Epidemiology.

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4.  Semiparametric Estimation of the Distribution of Episodically Consumed Foods Measured With Error.

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5.  A three-part regression calibration to handle excess zeroes, skewness and heteroscedasticity in adjusting for measurement error in dietary intake data.

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6.  Moment reconstruction and moment-adjusted imputation when exposure is generated by a complex, nonlinear random effects modeling process.

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7.  A bivariate measurement error model for semicontinuous and continuous variables: Application to nutritional epidemiology.

Authors:  Victor Kipnis; Laurence S Freedman; Raymond J Carroll; Douglas Midthune
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8.  Intake_epis_food(): An R Function for Fitting a Bivariate Nonlinear Measurement Error Model to Estimate Usual and Energy Intake for Episodically Consumed Foods.

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Journal:  J Stat Softw       Date:  2012-03-05       Impact factor: 6.440

9.  Estimating the Distribution of Dietary Consumption Patterns.

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10.  Correcting for measurement error in fractional polynomial models using Bayesian modelling and regression calibration, with an application to alcohol and mortality.

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