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Predictive algorithm to stratify newborns at-risk for child undernutrition in India: Secondary analysis of the National Family Health Survey-4

BACKGROUND: India is at the epicentre of global child undernutrition. Strategies to identify at-risk populations are needed in the context of limited resources METHODS: Data from children under the age of five surveyed in the 2015-2016 National Family Health Survey were used. Child undernutrition wa...

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Autores principales: Soni, Apurv, Fahey, Nisha, Ash, Arlene, Bhutta, Zulfiqar, Li, Wenjun, Simas, Tiffany M, Nimbalkar, Somashekhar, Allison, Jeroan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: International Society of Global Health 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9107290/
https://www.ncbi.nlm.nih.gov/pubmed/35567579
http://dx.doi.org/10.7189/jogh.12.04040
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author Soni, Apurv
Fahey, Nisha
Ash, Arlene
Bhutta, Zulfiqar
Li, Wenjun
Simas, Tiffany M
Nimbalkar, Somashekhar
Allison, Jeroan
author_facet Soni, Apurv
Fahey, Nisha
Ash, Arlene
Bhutta, Zulfiqar
Li, Wenjun
Simas, Tiffany M
Nimbalkar, Somashekhar
Allison, Jeroan
author_sort Soni, Apurv
collection PubMed
description BACKGROUND: India is at the epicentre of global child undernutrition. Strategies to identify at-risk populations are needed in the context of limited resources METHODS: Data from children under the age of five surveyed in the 2015-2016 National Family Health Survey were used. Child undernutrition was assessed using anthropometric measurements. Predictor variables were identified from the extant literature and included if they could be measured at the time of delivery. Survey-weighted logistic regression was applied to model the outcome. Internal validation of the model was performed using 200 bootstrapped samples representing half of the total data sets. RESULTS: In 2016, 54.4% (95% CI = 54.0%-54.8%) of Indian children were undernourished, according to a composite index of anthropometric failure. The predictive model for overall undernutrition included maternal (height, education, reproductive history, number of antenatal visits), child (sex, birthweight), and household characteristics (district of residence, caste, rural residence, toilet availability, presence of a separate kitchen). The model demonstrated reasonable discrimination ability (optimism-adjusted c = 0.67). The group of children classified in the lowest decile for risk of undernutrition had a prevalence of 25.9%, while the group classified in the highest decile had a prevalence of 77.4%. CONCLUSIONS: It is possible to stratify newborns at the time of delivery based on their risk for undernutrition in the first five years of life. The model developed by this study represents a first step in adopting a risk-score based approach for the most vulnerable population to receive services in a timely manner.
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spelling pubmed-91072902022-05-20 Predictive algorithm to stratify newborns at-risk for child undernutrition in India: Secondary analysis of the National Family Health Survey-4 Soni, Apurv Fahey, Nisha Ash, Arlene Bhutta, Zulfiqar Li, Wenjun Simas, Tiffany M Nimbalkar, Somashekhar Allison, Jeroan J Glob Health Articles BACKGROUND: India is at the epicentre of global child undernutrition. Strategies to identify at-risk populations are needed in the context of limited resources METHODS: Data from children under the age of five surveyed in the 2015-2016 National Family Health Survey were used. Child undernutrition was assessed using anthropometric measurements. Predictor variables were identified from the extant literature and included if they could be measured at the time of delivery. Survey-weighted logistic regression was applied to model the outcome. Internal validation of the model was performed using 200 bootstrapped samples representing half of the total data sets. RESULTS: In 2016, 54.4% (95% CI = 54.0%-54.8%) of Indian children were undernourished, according to a composite index of anthropometric failure. The predictive model for overall undernutrition included maternal (height, education, reproductive history, number of antenatal visits), child (sex, birthweight), and household characteristics (district of residence, caste, rural residence, toilet availability, presence of a separate kitchen). The model demonstrated reasonable discrimination ability (optimism-adjusted c = 0.67). The group of children classified in the lowest decile for risk of undernutrition had a prevalence of 25.9%, while the group classified in the highest decile had a prevalence of 77.4%. CONCLUSIONS: It is possible to stratify newborns at the time of delivery based on their risk for undernutrition in the first five years of life. The model developed by this study represents a first step in adopting a risk-score based approach for the most vulnerable population to receive services in a timely manner. International Society of Global Health 2022-05-14 /pmc/articles/PMC9107290/ /pubmed/35567579 http://dx.doi.org/10.7189/jogh.12.04040 Text en Copyright © 2022 by the Journal of Global Health. All rights reserved. https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License.
spellingShingle Articles
Soni, Apurv
Fahey, Nisha
Ash, Arlene
Bhutta, Zulfiqar
Li, Wenjun
Simas, Tiffany M
Nimbalkar, Somashekhar
Allison, Jeroan
Predictive algorithm to stratify newborns at-risk for child undernutrition in India: Secondary analysis of the National Family Health Survey-4
title Predictive algorithm to stratify newborns at-risk for child undernutrition in India: Secondary analysis of the National Family Health Survey-4
title_full Predictive algorithm to stratify newborns at-risk for child undernutrition in India: Secondary analysis of the National Family Health Survey-4
title_fullStr Predictive algorithm to stratify newborns at-risk for child undernutrition in India: Secondary analysis of the National Family Health Survey-4
title_full_unstemmed Predictive algorithm to stratify newborns at-risk for child undernutrition in India: Secondary analysis of the National Family Health Survey-4
title_short Predictive algorithm to stratify newborns at-risk for child undernutrition in India: Secondary analysis of the National Family Health Survey-4
title_sort predictive algorithm to stratify newborns at-risk for child undernutrition in india: secondary analysis of the national family health survey-4
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9107290/
https://www.ncbi.nlm.nih.gov/pubmed/35567579
http://dx.doi.org/10.7189/jogh.12.04040
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