Prediction of Body Mass Index Using Concurrently Self-Reported or Previously Measured Height and Weight.

To compare alternative models for the imputation of BMIM (measured weight in kilograms/measured height in meters squared) in a longitudinal study.We used data from 11,008 adults examined at wave III (2001-2002) and wave IV (2007-2008) in the National Longitudinal Study of Adolescent to Adult Health....

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Main Authors: Zhaohui Cui, June Stevens, Kimberly P Truesdale, Donglin Zeng, Simone French, Penny Gordon-Larsen
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5127553?pdf=render
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spelling doaj-c333172af42145bda13a664ee4e41b8f2020-11-24T20:45:28ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-011111e016728810.1371/journal.pone.0167288Prediction of Body Mass Index Using Concurrently Self-Reported or Previously Measured Height and Weight.Zhaohui CuiJune StevensKimberly P TruesdaleDonglin ZengSimone FrenchPenny Gordon-LarsenTo compare alternative models for the imputation of BMIM (measured weight in kilograms/measured height in meters squared) in a longitudinal study.We used data from 11,008 adults examined at wave III (2001-2002) and wave IV (2007-2008) in the National Longitudinal Study of Adolescent to Adult Health. Participants were asked their height and weight before being measured. Equations to predict wave IV BMIM were developed in an 80% random subsample and evaluated in the remaining participants. The validity of models that included BMI constructed from previously measured height and weight (BMIPM) was compared to the validity of models that used BMI calculated from concurrently self-reported height and weight (BMISR). The usefulness of including demographics and perceived weight category in those models was also examined.The model that used BMISR, compared to BMIPM, as the only variable produced a larger R2 (0.913 vs. 0.693), a smaller root mean square error (2.07 vs. 3.90 kg/m2) and a lower bias between normal-weight participants and those with obesity (0.98 vs. 4.24 kg/m2). The performance of the model containing BMISR alone was not substantially improved by the addition of demographics, perceived weight category or BMIPM.Our work is the first to show that concurrent self-reports of height and weight may be more useful than previously measured height and weight for imputation of missing BMIM when the time interval between measures is relatively long. Other time frames and alternatives to in-person collection of self-reported data need to be examined.http://europepmc.org/articles/PMC5127553?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Zhaohui Cui
June Stevens
Kimberly P Truesdale
Donglin Zeng
Simone French
Penny Gordon-Larsen
spellingShingle Zhaohui Cui
June Stevens
Kimberly P Truesdale
Donglin Zeng
Simone French
Penny Gordon-Larsen
Prediction of Body Mass Index Using Concurrently Self-Reported or Previously Measured Height and Weight.
PLoS ONE
author_facet Zhaohui Cui
June Stevens
Kimberly P Truesdale
Donglin Zeng
Simone French
Penny Gordon-Larsen
author_sort Zhaohui Cui
title Prediction of Body Mass Index Using Concurrently Self-Reported or Previously Measured Height and Weight.
title_short Prediction of Body Mass Index Using Concurrently Self-Reported or Previously Measured Height and Weight.
title_full Prediction of Body Mass Index Using Concurrently Self-Reported or Previously Measured Height and Weight.
title_fullStr Prediction of Body Mass Index Using Concurrently Self-Reported or Previously Measured Height and Weight.
title_full_unstemmed Prediction of Body Mass Index Using Concurrently Self-Reported or Previously Measured Height and Weight.
title_sort prediction of body mass index using concurrently self-reported or previously measured height and weight.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description To compare alternative models for the imputation of BMIM (measured weight in kilograms/measured height in meters squared) in a longitudinal study.We used data from 11,008 adults examined at wave III (2001-2002) and wave IV (2007-2008) in the National Longitudinal Study of Adolescent to Adult Health. Participants were asked their height and weight before being measured. Equations to predict wave IV BMIM were developed in an 80% random subsample and evaluated in the remaining participants. The validity of models that included BMI constructed from previously measured height and weight (BMIPM) was compared to the validity of models that used BMI calculated from concurrently self-reported height and weight (BMISR). The usefulness of including demographics and perceived weight category in those models was also examined.The model that used BMISR, compared to BMIPM, as the only variable produced a larger R2 (0.913 vs. 0.693), a smaller root mean square error (2.07 vs. 3.90 kg/m2) and a lower bias between normal-weight participants and those with obesity (0.98 vs. 4.24 kg/m2). The performance of the model containing BMISR alone was not substantially improved by the addition of demographics, perceived weight category or BMIPM.Our work is the first to show that concurrent self-reports of height and weight may be more useful than previously measured height and weight for imputation of missing BMIM when the time interval between measures is relatively long. Other time frames and alternatives to in-person collection of self-reported data need to be examined.
url http://europepmc.org/articles/PMC5127553?pdf=render
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