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Estimating double burden of malnutrition among rural and urban children in Amazonia using Bayesian latent models

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Estimating double burden of malnutrition among rural and urban children in Amazonia using Bayesian latent models. / Orellana, Jesem D. Y.; Parry, Luke; Santos, Francine Silva Dos et al.
In: Frontiers in Public Health, Vol. 13, 1481397, 12.03.2025.

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Harvard

Orellana, JDY, Parry, L, Santos, FSD, Moreira, LR, Torres, PC, Balieiro, AADS, Fonseca, FR, Moraga, P & Chacon Montalvan, E 2025, 'Estimating double burden of malnutrition among rural and urban children in Amazonia using Bayesian latent models', Frontiers in Public Health, vol. 13, 1481397. https://doi.org/10.3389/fpubh.2025.1481397

APA

Orellana, J. D. Y., Parry, L., Santos, F. S. D., Moreira, L. R., Torres, P. C., Balieiro, A. A. D. S., Fonseca, F. R., Moraga, P., & Chacon Montalvan, E. (2025). Estimating double burden of malnutrition among rural and urban children in Amazonia using Bayesian latent models. Frontiers in Public Health, 13, Article 1481397. https://doi.org/10.3389/fpubh.2025.1481397

Vancouver

Orellana JDY, Parry L, Santos FSD, Moreira LR, Torres PC, Balieiro AADS et al. Estimating double burden of malnutrition among rural and urban children in Amazonia using Bayesian latent models. Frontiers in Public Health. 2025 Mar 12;13:1481397. doi: 10.3389/fpubh.2025.1481397

Author

Orellana, Jesem D. Y. ; Parry, Luke ; Santos, Francine Silva Dos et al. / Estimating double burden of malnutrition among rural and urban children in Amazonia using Bayesian latent models. In: Frontiers in Public Health. 2025 ; Vol. 13.

Bibtex

@article{9660a52bf2eb4e35b0ac90178f146cd9,
title = "Estimating double burden of malnutrition among rural and urban children in Amazonia using Bayesian latent models",
abstract = "Background: The double burden of malnutrition (DBM) in the same individual is a neglected public health concern, especially in low- and middle-income countries (LMICs). The DBM is associated with increased risks of non-communicable diseases, childbirth complications, and healthcare costs related to obesity in adulthood. However, evaluating low prevalence outcomes in relatively small populations is challenging using conventional frequentist statistics. Our study used Bayesian latent models to estimate DBM prevalence at the individual-level in small populations located in remote towns and rural communities in the Brazilian Amazon.Methods: We employed a cross-sectional survey of urban and rural children aged 6–59 months, considering DBM as the coexistence of stunting and overweight in the same individual. We evaluated four river-dependent municipalities, sampling children in randomly selected households in each town and a total of 60 riverine forest-proximate communities. Through Bayesian modeling we estimated the latent double burden of malnutrition (LDBM) and credible intervals (CI).Results: The exceedance probability of LDBM was used to quantify this form of malnutrition at the population level. Rural prevalence of LDBM was significantly higher in Jutai (3.3%; CI: 1.5% to 6.7%) compared to Maues and Caapiranga. The likelihood that LDBM rural prevalence exceeded 1% was very high in Jutai (99.7%), and Ipixuna (63.2%), and very low (< 2%) in rural communities elsewhere. Exceedance probabilities (at 1%) also varied widely among urban sub-populations, from 6.7% in Maues to 41.2% in Caapiranga. The exceedance probability of LDBM prevalence being above 3.0% was high in rural Jutai (59.7%).Discussion: Our results have important implications for assessing DBM in vulnerable and marginalized populations, where health and nutritional status are often poorest, and public health efforts remain focused on undernutrition. Our analytical approach could enable more accurate estimation of low prevalence health outcomes, and strengthen DBM monitoring of hard-to-reach populations.",
author = "Orellana, {Jesem D. Y.} and Luke Parry and Santos, {Francine Silva Dos} and Moreira, {La{\'i}sa Rodrigues} and Torres, {Patricia Carignano} and Balieiro, {Ant{\^o}nio Alcirley da Silva} and Fonseca, {Fernanda Rodrigues} and Paula Moraga and {Chacon Montalvan}, Erick",
year = "2025",
month = mar,
day = "12",
doi = "10.3389/fpubh.2025.1481397",
language = "English",
volume = "13",
journal = "Frontiers in Public Health",
issn = "2296-2565",
publisher = "Frontiers Media S.A.",

}

RIS

TY - JOUR

T1 - Estimating double burden of malnutrition among rural and urban children in Amazonia using Bayesian latent models

AU - Orellana, Jesem D. Y.

AU - Parry, Luke

AU - Santos, Francine Silva Dos

AU - Moreira, Laísa Rodrigues

AU - Torres, Patricia Carignano

AU - Balieiro, Antônio Alcirley da Silva

AU - Fonseca, Fernanda Rodrigues

AU - Moraga, Paula

AU - Chacon Montalvan, Erick

PY - 2025/3/12

Y1 - 2025/3/12

N2 - Background: The double burden of malnutrition (DBM) in the same individual is a neglected public health concern, especially in low- and middle-income countries (LMICs). The DBM is associated with increased risks of non-communicable diseases, childbirth complications, and healthcare costs related to obesity in adulthood. However, evaluating low prevalence outcomes in relatively small populations is challenging using conventional frequentist statistics. Our study used Bayesian latent models to estimate DBM prevalence at the individual-level in small populations located in remote towns and rural communities in the Brazilian Amazon.Methods: We employed a cross-sectional survey of urban and rural children aged 6–59 months, considering DBM as the coexistence of stunting and overweight in the same individual. We evaluated four river-dependent municipalities, sampling children in randomly selected households in each town and a total of 60 riverine forest-proximate communities. Through Bayesian modeling we estimated the latent double burden of malnutrition (LDBM) and credible intervals (CI).Results: The exceedance probability of LDBM was used to quantify this form of malnutrition at the population level. Rural prevalence of LDBM was significantly higher in Jutai (3.3%; CI: 1.5% to 6.7%) compared to Maues and Caapiranga. The likelihood that LDBM rural prevalence exceeded 1% was very high in Jutai (99.7%), and Ipixuna (63.2%), and very low (< 2%) in rural communities elsewhere. Exceedance probabilities (at 1%) also varied widely among urban sub-populations, from 6.7% in Maues to 41.2% in Caapiranga. The exceedance probability of LDBM prevalence being above 3.0% was high in rural Jutai (59.7%).Discussion: Our results have important implications for assessing DBM in vulnerable and marginalized populations, where health and nutritional status are often poorest, and public health efforts remain focused on undernutrition. Our analytical approach could enable more accurate estimation of low prevalence health outcomes, and strengthen DBM monitoring of hard-to-reach populations.

AB - Background: The double burden of malnutrition (DBM) in the same individual is a neglected public health concern, especially in low- and middle-income countries (LMICs). The DBM is associated with increased risks of non-communicable diseases, childbirth complications, and healthcare costs related to obesity in adulthood. However, evaluating low prevalence outcomes in relatively small populations is challenging using conventional frequentist statistics. Our study used Bayesian latent models to estimate DBM prevalence at the individual-level in small populations located in remote towns and rural communities in the Brazilian Amazon.Methods: We employed a cross-sectional survey of urban and rural children aged 6–59 months, considering DBM as the coexistence of stunting and overweight in the same individual. We evaluated four river-dependent municipalities, sampling children in randomly selected households in each town and a total of 60 riverine forest-proximate communities. Through Bayesian modeling we estimated the latent double burden of malnutrition (LDBM) and credible intervals (CI).Results: The exceedance probability of LDBM was used to quantify this form of malnutrition at the population level. Rural prevalence of LDBM was significantly higher in Jutai (3.3%; CI: 1.5% to 6.7%) compared to Maues and Caapiranga. The likelihood that LDBM rural prevalence exceeded 1% was very high in Jutai (99.7%), and Ipixuna (63.2%), and very low (< 2%) in rural communities elsewhere. Exceedance probabilities (at 1%) also varied widely among urban sub-populations, from 6.7% in Maues to 41.2% in Caapiranga. The exceedance probability of LDBM prevalence being above 3.0% was high in rural Jutai (59.7%).Discussion: Our results have important implications for assessing DBM in vulnerable and marginalized populations, where health and nutritional status are often poorest, and public health efforts remain focused on undernutrition. Our analytical approach could enable more accurate estimation of low prevalence health outcomes, and strengthen DBM monitoring of hard-to-reach populations.

U2 - 10.3389/fpubh.2025.1481397

DO - 10.3389/fpubh.2025.1481397

M3 - Journal article

VL - 13

JO - Frontiers in Public Health

JF - Frontiers in Public Health

SN - 2296-2565

M1 - 1481397

ER -