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An anthropometric approach to characterising neonatal morbidity and body composition, using air displacement plethysmography as a criterion method

BACKGROUND: With the greatest burden of infant undernutrition and morbidity in low and middle income countries (LMICs), there is a need for suitable approaches to monitor infants in a simple, low-cost and effective manner. Anthropometry continues to play a major role in characterising growth and nut...

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Autores principales: Huvanandana, Jacqueline, Carberry, Angela E., Turner, Robin M., Bek, Emily J., Raynes-Greenow, Camille H., McEwan, Alistair L., Jeffery, Heather E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5877876/
https://www.ncbi.nlm.nih.gov/pubmed/29601596
http://dx.doi.org/10.1371/journal.pone.0195193
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author Huvanandana, Jacqueline
Carberry, Angela E.
Turner, Robin M.
Bek, Emily J.
Raynes-Greenow, Camille H.
McEwan, Alistair L.
Jeffery, Heather E.
author_facet Huvanandana, Jacqueline
Carberry, Angela E.
Turner, Robin M.
Bek, Emily J.
Raynes-Greenow, Camille H.
McEwan, Alistair L.
Jeffery, Heather E.
author_sort Huvanandana, Jacqueline
collection PubMed
description BACKGROUND: With the greatest burden of infant undernutrition and morbidity in low and middle income countries (LMICs), there is a need for suitable approaches to monitor infants in a simple, low-cost and effective manner. Anthropometry continues to play a major role in characterising growth and nutritional status. METHODS: We developed a range of models to aid in identifying neonates at risk of malnutrition. We first adopted a logistic regression approach to screen for a composite neonatal morbidity, low and high body fat (BF%) infants. We then developed linear regression models for the estimation of neonatal fat mass as an assessment of body composition and nutritional status. RESULTS: We fitted logistic regression models combining up to four anthropometric variables to predict composite morbidity and low and high BF% neonates. The greatest area under receiver-operator characteristic curves (AUC with 95% confidence intervals (CI)) for identifying composite morbidity was 0.740 (0.63, 0.85), resulting from the combination of birthweight, length, chest and mid-thigh circumferences. The AUCs (95% CI) for identifying low and high BF% were 0.827 (0.78, 0.88) and 0.834 (0.79, 0.88), respectively. For identifying composite morbidity, BF% as measured via air displacement plethysmography showed strong predictive ability (AUC 0.786 (0.70, 0.88)), while birthweight percentiles had a lower AUC (0.695 (0.57, 0.82)). Birthweight percentiles could also identify low and high BF% neonates with AUCs of 0.792 (0.74, 0.85) and 0.834 (0.79, 0.88). We applied a sex-specific approach to anthropometric estimation of neonatal fat mass, demonstrating the influence of the testing sample size on the final model performance. CONCLUSIONS: These models display potential for further development and evaluation in LMICs to detect infants in need of further nutritional management, especially where traditional methods of risk management such as birthweight for gestational age percentiles may be variable or non-existent, or unable to detect appropriately grown, low fat newborns.
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spelling pubmed-58778762018-04-13 An anthropometric approach to characterising neonatal morbidity and body composition, using air displacement plethysmography as a criterion method Huvanandana, Jacqueline Carberry, Angela E. Turner, Robin M. Bek, Emily J. Raynes-Greenow, Camille H. McEwan, Alistair L. Jeffery, Heather E. PLoS One Research Article BACKGROUND: With the greatest burden of infant undernutrition and morbidity in low and middle income countries (LMICs), there is a need for suitable approaches to monitor infants in a simple, low-cost and effective manner. Anthropometry continues to play a major role in characterising growth and nutritional status. METHODS: We developed a range of models to aid in identifying neonates at risk of malnutrition. We first adopted a logistic regression approach to screen for a composite neonatal morbidity, low and high body fat (BF%) infants. We then developed linear regression models for the estimation of neonatal fat mass as an assessment of body composition and nutritional status. RESULTS: We fitted logistic regression models combining up to four anthropometric variables to predict composite morbidity and low and high BF% neonates. The greatest area under receiver-operator characteristic curves (AUC with 95% confidence intervals (CI)) for identifying composite morbidity was 0.740 (0.63, 0.85), resulting from the combination of birthweight, length, chest and mid-thigh circumferences. The AUCs (95% CI) for identifying low and high BF% were 0.827 (0.78, 0.88) and 0.834 (0.79, 0.88), respectively. For identifying composite morbidity, BF% as measured via air displacement plethysmography showed strong predictive ability (AUC 0.786 (0.70, 0.88)), while birthweight percentiles had a lower AUC (0.695 (0.57, 0.82)). Birthweight percentiles could also identify low and high BF% neonates with AUCs of 0.792 (0.74, 0.85) and 0.834 (0.79, 0.88). We applied a sex-specific approach to anthropometric estimation of neonatal fat mass, demonstrating the influence of the testing sample size on the final model performance. CONCLUSIONS: These models display potential for further development and evaluation in LMICs to detect infants in need of further nutritional management, especially where traditional methods of risk management such as birthweight for gestational age percentiles may be variable or non-existent, or unable to detect appropriately grown, low fat newborns. Public Library of Science 2018-03-30 /pmc/articles/PMC5877876/ /pubmed/29601596 http://dx.doi.org/10.1371/journal.pone.0195193 Text en © 2018 Huvanandana et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Huvanandana, Jacqueline
Carberry, Angela E.
Turner, Robin M.
Bek, Emily J.
Raynes-Greenow, Camille H.
McEwan, Alistair L.
Jeffery, Heather E.
An anthropometric approach to characterising neonatal morbidity and body composition, using air displacement plethysmography as a criterion method
title An anthropometric approach to characterising neonatal morbidity and body composition, using air displacement plethysmography as a criterion method
title_full An anthropometric approach to characterising neonatal morbidity and body composition, using air displacement plethysmography as a criterion method
title_fullStr An anthropometric approach to characterising neonatal morbidity and body composition, using air displacement plethysmography as a criterion method
title_full_unstemmed An anthropometric approach to characterising neonatal morbidity and body composition, using air displacement plethysmography as a criterion method
title_short An anthropometric approach to characterising neonatal morbidity and body composition, using air displacement plethysmography as a criterion method
title_sort anthropometric approach to characterising neonatal morbidity and body composition, using air displacement plethysmography as a criterion method
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5877876/
https://www.ncbi.nlm.nih.gov/pubmed/29601596
http://dx.doi.org/10.1371/journal.pone.0195193
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