Objective Childhood morbidities are crucial for improving long-term public health outcomes. This study aimed to examine the existence of child-specific and regional variation in childhood morbidity based on the cross-cutting study of the Performance Monitoring for Action Ethiopia community survey (PMA-ET), and its relationship to socioeconomic and demographic variables in families.MethodsWe enrolled 2,581 children suffering from different illnesses from six regions of the country of the survey at 6 weeks postpartum. Generalized linear mixed models (GLMMs) with maximum likelihood estimation were used to assess children's comorbidity status, and the DHARMa package in R to provide readily interpretable scaled residuals and test functions for typical model misspecification problems for the fitted GLMMs.ResultsGLMMs with two random intercept models show the presence of child morbidity variations. Cough, fever, and diarrhea were found to be the most frequent types of children's illnesses among the main illness categories that were recorded. Cooking fuel, wealth quartiles, mothers' marital status, mother age, parity, residence, mother's education status, and availability of electricity were significantly associated with children's morbidity.ConclusionsThese data show that variations in children's comorbidity were associated with both regional and child-specific characteristics. Thus, general principles for designing policies and interventions are required to reduce child comorbidity.

Neighborhood-level heterogeneity in childhood morbidity through generalized linear mixed models

Campolo, Maria Gabriella;Alibrandi, Angela
2025-01-01

Abstract

Objective Childhood morbidities are crucial for improving long-term public health outcomes. This study aimed to examine the existence of child-specific and regional variation in childhood morbidity based on the cross-cutting study of the Performance Monitoring for Action Ethiopia community survey (PMA-ET), and its relationship to socioeconomic and demographic variables in families.MethodsWe enrolled 2,581 children suffering from different illnesses from six regions of the country of the survey at 6 weeks postpartum. Generalized linear mixed models (GLMMs) with maximum likelihood estimation were used to assess children's comorbidity status, and the DHARMa package in R to provide readily interpretable scaled residuals and test functions for typical model misspecification problems for the fitted GLMMs.ResultsGLMMs with two random intercept models show the presence of child morbidity variations. Cough, fever, and diarrhea were found to be the most frequent types of children's illnesses among the main illness categories that were recorded. Cooking fuel, wealth quartiles, mothers' marital status, mother age, parity, residence, mother's education status, and availability of electricity were significantly associated with children's morbidity.ConclusionsThese data show that variations in children's comorbidity were associated with both regional and child-specific characteristics. Thus, general principles for designing policies and interventions are required to reduce child comorbidity.
2025
Inglese
Inglese
ELETTRONICO
Si
Si
659
United States dollar
13
Article Number 1456068
1
15
15
https://www.frontiersin.org/journals/public-health/articles/10.3389/fpubh.2025.1456068/full
Internazionale
Esperti anonimi
AIC, children comorbidity, DHARMa, GLMMs, Laplace approximation, random effect
info:eu-repo/semantics/article
Derso, Endeshaw A.; Gelaye, Kassahun A.; Campolo, Maria Gabriella; Woldemariam, Amare T.; Alibrandi, Angela
14.a Contributo in Rivista::14.a.1 Articolo su rivista
5
262
open
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11570/3336826
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