Literature DB >> 28482110

Functional multiple indicators, multiple causes measurement error models.

Carmen D Tekwe1, Roger S Zoh1, Fuller W Bazer2, Guoyao Wu2, Raymond J Carroll3,4.   

Abstract

Objective measures of oxygen consumption and carbon dioxide production by mammals are used to predict their energy expenditure. Since energy expenditure is not directly observable, it can be viewed as a latent construct with multiple physical indirect measures such as respiratory quotient, volumetric oxygen consumption, and volumetric carbon dioxide production. Metabolic rate is defined as the rate at which metabolism occurs in the body. Metabolic rate is also not directly observable. However, heat is produced as a result of metabolic processes within the body. Therefore, metabolic rate can be approximated by heat production plus some errors. While energy expenditure and metabolic rates are correlated, they are not equivalent. Energy expenditure results from physical function, while metabolism can occur within the body without the occurrence of physical activities. In this manuscript, we present a novel approach for studying the relationship between metabolic rate and indicators of energy expenditure. We do so by extending our previous work on MIMIC ME models to allow responses that are sparsely observed functional data, defining the sparse functional multiple indicators, multiple cause measurement error (FMIMIC ME) models. The mean curves in our proposed methodology are modeled using basis splines. A novel approach for estimating the variance of the classical measurement error based on functional principal components is presented. The model parameters are estimated using the EM algorithm and a discussion of the model's identifiability is provided. We show that the defined model is not a trivial extension of longitudinal or functional data methods, due to the presence of the latent construct. Results from its application to data collected on Zucker diabetic fatty rats are provided. Simulation results investigating the properties of our approach are also presented.
© 2017, The International Biometric Society.

Entities:  

Keywords:  Basis functions; Energy expenditure; Functional principal components; Latent variables; MIMIC models; Measurement error; Metabolic rate; Multivariate

Mesh:

Year:  2017        PMID: 28482110      PMCID: PMC5677589          DOI: 10.1111/biom.12706

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  16 in total

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4.  Using MIMIC models to examine the relationship between current smoking and early smoking experiences.

Authors:  Carlos F Ríos-Bedoya; Cynthia S Pomerleau; Rosalind J Neuman; Ovide F Pomerleau
Journal:  Nicotine Tob Res       Date:  2009-07-03       Impact factor: 4.244

5.  A Multiple Indicators Multiple Cause (MIMIC) model of respiratory health and household factors in Chinese children: the seven Northeastern cities (SNEC) study.

Authors:  Guang-Hui Dong; Zhengmin Qian; Qiang Fu; Jing Wang; Edwin Trevathan; Wenjun Ma; Miao-Miao Liu; Da Wang; Wan-Hui Ren; Kee-Hean Ong; Tekeda Freeman Ferguson; Erin Riley; Maayan Simckes
Journal:  Matern Child Health J       Date:  2014-01

6.  Oral administration of interferon tau enhances oxidation of energy substrates and reduces adiposity in Zucker diabetic fatty rats.

Authors:  Carmen D Tekwe; Jian Lei; Kang Yao; Reza Rezaei; Xilong Li; Sudath Dahanayaka; Raymond J Carroll; Cynthia J Meininger; Fuller W Bazer; Guoyao Wu
Journal:  Biofactors       Date:  2013-06-27       Impact factor: 6.113

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Authors:  Véronique Ouellet; Sébastien M Labbé; Denis P Blondin; Serge Phoenix; Brigitte Guérin; François Haman; Eric E Turcotte; Denis Richard; André C Carpentier
Journal:  J Clin Invest       Date:  2012-01-24       Impact factor: 14.808

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Authors:  A A Papamandjaris; D E MacDougall; P J Jones
Journal:  Life Sci       Date:  1998       Impact factor: 5.037

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Journal:  Am J Clin Nutr       Date:  1995-01       Impact factor: 7.045

Review 10.  Assessment of physical activity and energy expenditure: an overview of objective measures.

Authors:  Andrew P Hills; Najat Mokhtar; Nuala M Byrne
Journal:  Front Nutr       Date:  2014-06-16
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2.  Comparing multiple statistical software for multiple-indicator, multiple-cause modeling: an application of gender disparity in adult cognitive functioning using MIDUS II dataset.

Authors:  Chi Chang; Joseph Gardiner; Richard Houang; Yan-Liang Yu
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