Abstract:
Malnutrition affects billions of individuals worldwide and represents a global health challenge. This study aimed to determine the prevalence of malnutrition (undernutrition or overweight) among mother-child dyads in children under 5 years old in Brazil in 2019 and to estimate changes in this prevalence from 2006 to 2019. Individual-level data from the Brazilian National Survey on Child Nutrition (ENANI-2019) and the Brazilian National Survey of Demography and Health of Women and Children carried out in 2006 (PNDS 2006) were analyzed. Malnutrition outcomes in mother-child dyads included overweight mother and child, undernourished mother and child, and the double burden of malnutrition, i.e., overweight mother and child having any form of undernourishment (stunting, wasting, or underweight). Prevalence and 95% confidence intervals (95%CI) were estimated. Most women (58.2%) and 9.7% of the children were overweight, 6.9% were stunted, and 3.1% of mothers and 2.9% of the children were underweight. The prevalence of overweight in the mother-child dyad was 7.8% and was statistically higher in Southern Brazil (9.7%; 95%CI: 7.5; 11.9) than in the Central-West (5.4%; 95%CI: 4.3; 6.6). The prevalence of overweight mother and stunted child was 3.5%, with statistically significant difference between the extremes of the mother’s education [0-7 vs. ≥ 12 years, 4.8% (95%CI: 3.2; 6.5) and 2.1%, (95%CI: 1.2; 3.0), respectively]. Overweight in the dyad increased from 5.2% to 7.8%, and the double burden of malnutrition increased from 2.7% to 5.2% since 2006. Malnutrition in Brazilian mother-child dyads seems to be a growing problem, and dyads with lower formal education, higher maternal age, and from the South Region of Brazil were more vulnerable.
Keywords:
Child Nutrition Disorders; Overweight; Growth Disorders
Resumo:
A má nutrição afeta bilhões de indivíduos em todo o mundo e representa um desafio de saúde global. Este estudo teve como objetivo determinar a prevalência de má nutrição (desnutrição ou excesso de peso) entre díades mãe-filho em crianças menores de cinco anos no Brasil em 2019 e estimar as mudanças nessa prevalência de 2006 a 2019. Foram analisados dados individuais do Estudo Nacional de Alimentação e Nutrição Infantil (ENANI-2019) e da Pesquisa Nacional de Demografia e Saúde da Criança e da Mulher realizada em 2006 (PNDS 2006). Os desfechos de má nutrição incluíram mãe e filho com excesso de peso, mãe e filho desnutridos e a dupla carga de má nutrição, ou seja, mãe com excesso de peso e filho com qualquer forma de desnutrição (défict de crescimento, magreza ou baixo peso). Foram estimadas a prevalência e os intervalos de 95% de confiança (IC95%). A maioria das mulheres (58,2%) e 9,7% das crianças estavam acima do peso, 6,9% apresentaram déficit de crescimento e 3,1% das mães e 2,9% das crianças estavam abaixo do peso. A prevalência de excesso de peso na díade mãe-filho foi de 7,8% e foi estatisticamente maior no Sul do Brasil (9,7%; IC95%: 7,5; 11,9) do que no Centro-oeste (5,4%; IC95%: 4,3; 6,6). A prevalência de mãe com sobrepeso e filho com déficit de crescimento foi de 3,5%, com uma diferença estatisticamente significante entre os extremos de escolaridade materna [(0-7 vs. ≥ 12 anos de estudo), 4,8% (IC95%: 3,2; 6,5) and 2,1% (IC95%: 1,2; 3,0), respectivamente]. O excesso de peso na díade aumentou de 5,2% para 7,8% e a dupla carga de má nutrição aumentou de 2,7% para 5,2% desde 2006. A má nutrição nas díades mãe-filho brasileiras parece ser um problema crescente, sendo as mais vulneráveis aquelas com menor escolaridade e maior idade materna e residentes na Região Sul do Brasil.
Palavras-chave:
Transtornos da Nutrição Infantil; Sobrepeso; Transtornos do Crescimento
Resumen:
La malnutrición afecta a muchas personas en todo el mundo y representa un desafío para la salud mundial. Este estudio tuvo como objetivo determinar la prevalencia de malnutrición (desnutrición o sobrepeso) entre díadas madre-hijo en niños menores de cinco años en Brasil en 2019 y estimar cambios en esta prevalencia de 2006 a 2019. Se analizaron datos individuales del Estudio Nacional de Alimentación y Nutrición Infantil (ENANI-2019) y de la Encuesta Nacional de Demografía y Salud del Niño y de la Mujer de 2006 (PNDS 2006). Los resultados de la malnutrición incluyeron a madre e hijo con sobrepeso, madre e hijo desnutridos y la doble carga de mala nutrición, es decir, madre con sobrepeso e hijo con cualquier forma de desnutrición (retardo en el crecimiento, emaciación o bajo peso). Se calcularon prevalencias y los intervalos de 95% de confianza (IC95%). La mayoría de las mujeres (58,2%) y el 9,7% de los niños tenían sobrepeso, el 6,9% de los niños presentaban retraso en el crecimiento, y el 3,1% de las madres y el 2,9% de los niños, bajo peso. La prevalencia de sobrepeso en la díada madre-hijo fue del 7,8%, estadísticamente mayor en el Sur de Brasil (9,7%; IC95%: 7,5; 11,9) que en el Centro-Oeste (5,4%; IC95%: 4,3; 6,6). La prevalencia de madres con sobrepeso y de niños con retraso del crecimiento fue del 3,5%, con una diferencia estadísticamente significativa entre los extremos de nivel educativo de la madre [(0-7 vs. ≥ 12 años de nivel educativo), 4,8% (IC95%: 3,2; 6,5) y 2,1% (IC95%: 1,2; 3,0), respectivamente]. El sobrepeso en la díada tuvo un aumento del 5,2% al 7,8%, y la doble carga de mala nutrición aumentó del 2,7% al 5,2% desde 2006. La malnutrición en la díada madre-hijo brasileña resulta ser un problema creciente, siendo las más vulnerables aquellas con menor escolaridad y mayor edad materna y residentes en la Región Sur de Brasil.
Palabras-clave:
Trastornos de la Nutrición del Niño; Sobrepeso; Trastornos del Crecimiento
Introduction
Malnutrition affects billions of individuals worldwide and represents a global health challenge 11. Popkin BM, Corvalan C, Grummer-Strawn LM. Dynamics of the double burden of malnutrition and the changing nutrition reality. Lancet 2020; 395:65-74.. Overweight has progressively increased in all age groups, whereas underweight and stunting still generates public health concerns in many regions, including Latin America 11. Popkin BM, Corvalan C, Grummer-Strawn LM. Dynamics of the double burden of malnutrition and the changing nutrition reality. Lancet 2020; 395:65-74.,22. NCD Risk Factor Collaboration. Worldwide trends in body-mass index, underweight, overweight, and obesity from 1975 to 2016: a pooled analysis of 2,416 population-based measurement studies in 128.9 million children, adolescents, and adults. Lancet 2017; 390:2627-42.,33. Temponi HR, Velasquez-Melendez G. Prevalence of double burden on malnutrition at household level in four Latin America countries. Rev Bras Saúde Mater Infant 2020; 20:27-35.. Global estimates from 2018 show that 149 million children under 5 years of age were affected by stunting, 49 million by wasting, and 40 million by overweight 44. United Nations Children's Fund; World Health Organization; International Bank for Reconstruction and Development; World Bank. Levels and trends in child malnutrition: key findings of the 2019 edition of the Joint Child Malnutrition Estimates. Geneva: World Health Organization; 2019.. Besides these alarming estimates, overweight in children has increased at higher rates than the decline in the prevalence of underweight 22. NCD Risk Factor Collaboration. Worldwide trends in body-mass index, underweight, overweight, and obesity from 1975 to 2016: a pooled analysis of 2,416 population-based measurement studies in 128.9 million children, adolescents, and adults. Lancet 2017; 390:2627-42.. The World Health Organization (WHO) estimates that 40% of women > 18 years old were overweight in 2016 55. World Health Organization. Overweight and obesity report fact sheet. https://www.who.int/news-room/fact-sheets/detail/obesity-and-overweight (accessed on 10/Apr/2022).
https://www.who.int/news-room/fact-sheet...
.
This new nutritional scenario is characterized as the double burden of malnutrition, in which different forms of malnutrition overlap at the individual, household, or national level. At the household level, double burden of malnutrition is the coexistence of underweight/stunting and overweight in household members 66. World Health Organization. The double burden of malnutrition. Policy brief. Geneva: World Health Organization; 2017.. Most studies examining double burden of malnutrition have focused on mother-child dyads 77. Davis JN, Oaks BM, Engle-Stone R. The double burden of malnutrition: a systematic review of operational definitions. Curr Dev Nutr 2020; 4:nzaa127..
The most frequent form of double burden of malnutrition in low- and middle-income countries is an overweight mother and a stunted child in the same household 88. Biswas T, Townsend N, Magalhães RJS, Hasan M, Mamun A. Patterns and determinants of the double burden of malnutrition at the household level in South and Southeast Asia. Eur J Clin Nutr 2021; 75:385-91.,99. Pomati M, Mendoza-Quispe D, Anza-Ramirez C, Hernández-Vásquez A, Carrillo Larco RM, Fernandez G, et al. Trends and patterns of the double burden of malnutrition (double burden of malnutrition) in Peru: a pooled analysis of 129,159 mother-child dyads. Int J Obes 2021; 45:609-18.. However, we observed a considerable variation on how double burden of malnutrition occur worldwide. A study conducted with data from 54 low- and middle-income countries from 1991 to 2009 found that the mean prevalence of overweight mothers and stunted children was 3.3%, ranging from 0.5%-16% 1010. Dieffenbach S, Stein AD. Stunted child/overweight mother pairs represent a statistical artifact, not a distinct entity. J Nutr 2012; 142:771-3.. This study also showed that the prevalence of overweight mothers and stunted children has increased over the years.
In Brazil, studies using nationally representative data reported that the prevalence of stunting in children and overweight in their mothers decreased from 2.8% in 1999 1010. Dieffenbach S, Stein AD. Stunted child/overweight mother pairs represent a statistical artifact, not a distinct entity. J Nutr 2012; 142:771-3. to 2.2% in 2006 33. Temponi HR, Velasquez-Melendez G. Prevalence of double burden on malnutrition at household level in four Latin America countries. Rev Bras Saúde Mater Infant 2020; 20:27-35.. However, little is known about the different forms of malnutrition in the mother-child dyad in Brazil since then. The description of the occurrence of many forms of malnutrition may help identify their determinants and the most vulnerable subgroups. Thus, this study aims (1) to estimate the prevalence of different forms of malnutrition (undernutrition or overweight) among mother-child dyads in households with children under 5 years old in Brazil in 2019; (2) to describe the distribution of malnutrition according to socioeconomic and demographic factors and food insecurity in 2019; and (3) to describe changes in the prevalence from 2006 to 2019.
Materials and methods
Study design, sampling, and population
This descriptive study used data from the Brazilian National Survey on Child Nutrition (ENANI-2019), a population-based household survey with Brazilian children under 5 years of age conducted from 2019 to 2020. The detailed methods information is described by Alves-Santos et al. 1111. Alves-Santos NH, Castro IRR, Anjos LA, Lacerda EMA, Normando P, Freitas MB, et al. General methodological aspects in the Brazilian National Survey on Child Nutrition (ENANI-2019): a population-based household survey. Cad Saúde Pública 2021; 37:e00300020.. The sample design of ENANI-2019 used stratification and clustering, incorporating two or three selection stages. The primary sampling units were the municipalities or census areas, and the elementary sampling units were the households with at least one child under 5 years old at the time of survey. The ENANI-2019 sample is representative of Brazil’s five macroregions, children’s age groups, and sex 1212. Vasconcellos MTL, Silva PLN, Castro IRR, Boccolini CS, Alves-Santos NH, Kac G. Sampling plan of the Brazilian National Survey on Child Nutrition (ENANI-2019): a population-based household survey. Cad Saúde Pública 2021; 37:e00037221.. The research population of our analysis consisted of the biological mother-child dyads with anthropometric data available, and that includes children for whom it was possible to estimate all anthropometric growth indices. For multiparous mothers, all mother-child dyads in the household were included in the analyses.
ENANI-2019 has information on 13,936 dyads. Mother-child dyads in which the mother was pregnant during the anthropometric assessment (n = 61) or had missing information of maternal age were excluded (n = 11). Other exclusion criteria were dyads with missing information on child anthropometric measures (n = 4), those in which it was not possible to estimate Z-score of body mass index (BMI)-for-age (BAZ, preterm infants who had gestational age since conception lower than 189 days; n = 188), and children with anthropometric measures considered as implausible weight-for-height (WHZ; Z-score < 5 or > 5); according to the WHO Child Growth Standard (n = 13) 1313. WHO Multicentre Growth Reference Study Group. WHO Child Growth Standards based on length/height, weight and age. Acta Paediatr Suppl 2006; 450:76-85.,1414. World Health Organization; United Nations Children's Fund. Recommendations for data collection, analysis and reporting on anthropometric indicators in children under 5 years old. Geneva: World Health Organization; 2019.. The final sample included children < 5 years old and their mothers (ranging from 16-64 years old), comprising 13,659 mother-child dyads.
Moreover, the public dataset of the Brazilian National Survey of Demography and Health of Women and Children conducted in 2006 (PNDS 2006) 1515. Ministério da Saúde. Pesquisa Nacional de Demografia e Saúde da Criança e da Mulher - PNDS 2006: dimensões do processo reprodutivo e da saúde da criança. Brasília: Ministério da Saúde; 2009. was analyzed to assess changes in the prevalence of malnutrition. The research population of PNDS 2006 consists of children < 5 years old and their biological mothers (ranging from 15-49 years old), resulting in 4,131 mother-child dyads.
Anthropometric measures
All anthropometric measurements (weight, height, and length) were obtained using portable SECA equipment (https://www.seca.com/). Weight (kg) and height (cm) values for biological mothers and children ≥ 2 years old were obtained on a digital platform scale (model 813) and stadiometer (model 213). For children < 2 years old, pediatric scales (model 336) and anthropometers (model 417) were used. All measurements were obtained in duplicate. The information was recorded on a mobile data collection device, which identified implausible anthropometric measurements of children (based on the automatic estimation of the Z-score according to the WHO Child Growth Standard1313. WHO Multicentre Growth Reference Study Group. WHO Child Growth Standards based on length/height, weight and age. Acta Paediatr Suppl 2006; 450:76-85.) and required birth date confirmation or repetition of the measurement when necessary.
The anthropometric data collection procedures followed the recommendation of the World Health Organization (WHO)/United Nations Children’s Fund (UNICEF) 1414. World Health Organization; United Nations Children's Fund. Recommendations for data collection, analysis and reporting on anthropometric indicators in children under 5 years old. Geneva: World Health Organization; 2019. and the Brazilian Ministry of Health 1616. Departamento de Atenção Básica, Secretaria de Atenção à Saúde, Ministério da Saúde. Orientações para a coleta e análise de dados antropométricos em serviços de saúde: Norma Técnica do Sistema de Vigilância Alimentar e Nutricional - SISVAN. Brasília: Ministério da Saúde; 2011., and all field interviewers were trained to obtain anthropometric measurements. Detailed information on training sessions and the standardization of the anthropometric measurements can be found in Anjos et al. 1717. Anjos LA, Ferreira HS, Alves-Santos NH, Freitas MB, Boccolini CS, Lacerda EMA, et al. Methodological aspects of the anthropometric assessment in the Brazilian National Survey on Child Nutrition (ENANI-2019): a population-based household survey. Cad Saúde Pública 2021; 37:e00293320.. Anthropometric data quality was evaluated and missing or implausible data were imputed.
Outcomes: data from ENANI-2019
Data from the first measure of weight and height of the children were used to estimate Z-scores of height-for-age (HAZ), weight-for-age (WAZ), BAZ, and WHZ according to age and sex 1616. Departamento de Atenção Básica, Secretaria de Atenção à Saúde, Ministério da Saúde. Orientações para a coleta e análise de dados antropométricos em serviços de saúde: Norma Técnica do Sistema de Vigilância Alimentar e Nutricional - SISVAN. Brasília: Ministério da Saúde; 2011.. The Z-scores of the indices were obtained based on the WHO Child Growth Standard for children born at term 1313. WHO Multicentre Growth Reference Study Group. WHO Child Growth Standards based on length/height, weight and age. Acta Paediatr Suppl 2006; 450:76-85.. For preterm children (< 37 gestational weeks) and who had gestational age since conception (estimated by summing gestational age at birth and the postnatal age in days) ranging from 189-454 days, the WAZ and HAZ were estimated using the Intergrowth-21st Project postnatal growth charts 1818. Villar J, Giuliani F, Bhutta ZA, Bertino E, Ohuma EO, Ismail LC, et al. Postnatal growth standards for preterm infants: the preterm postnatal follow-up study of the INTERGROWTH-21(st) Project. Lancet Glob Health 2015; 3:e681-91.. The BAZ and WHZ were not estimated for preterm children who were under two years of age during the interview due to the lack of reference charts.
The adult biological mother’s (age ≥ 20 years) anthropometric assessment was based on BMI [estimated by dividing the weight (kg) by the square height (m)] classification, using the WHO cutoffs 1919. World Health Organization. Physical status: the use of and interpretation of anthropometry. Geneva: World Health Organization; 1995. (WHO Technical Report Series, 854).. For adolescent mothers (< 20 years), the BAZ was estimated and classified according to WHO reference charts 1616. Departamento de Atenção Básica, Secretaria de Atenção à Saúde, Ministério da Saúde. Orientações para a coleta e análise de dados antropométricos em serviços de saúde: Norma Técnica do Sistema de Vigilância Alimentar e Nutricional - SISVAN. Brasília: Ministério da Saúde; 2011.,2020. de Onis M, Onyango AW, Borghi E, Siyam A, Nishida C, Siekmann J. Development of a WHO growth reference for school-aged children and adolescents. Bull World Health Organ 2007; 85:660-7.. Pregnant mothers were not assessed.
Malnutrition in the mother-child dyads entails the combination of overweight (including obesity), undernutrition, and double burden of malnutrition (Box 1). The wasting and overweight classifications were based on WHZ in children under two years of age and BAZ in older children. Furthermore, the prevalence of both conditions was estimated using the BAZ or WHZ only, regardless of the child’s age.
Comparison with data from PNDS 2006
In the PNDS 2006 database, HAZ, WAZ, and WHZ values were available, and BAZ data were estimated using individual-level data. The estimation of anthropometric indices was based on the mean of two weight and height measures of the mothers and children. Prematurity was not considered for the nutritional status classification due to the lack of information on gestational age at birth 1515. Ministério da Saúde. Pesquisa Nacional de Demografia e Saúde da Criança e da Mulher - PNDS 2006: dimensões do processo reprodutivo e da saúde da criança. Brasília: Ministério da Saúde; 2009..
Data analysis
The analysis was carried out considering the complex sample design using the survey package of the R (http://www.r-project.org) 2121. Lumley T. Analysis of complex survey samples. J Stat Soft 2004; 9:1-19.. The Z-scores of anthropometric indices of children were estimated using the R packages growthstandards2222. Hafen R. Growth standards: anthropometric growth standard calculations. R package version 015. https://github.com/ki-tools/growthstandards (accessed on 10/Apr/2022).
https://github.com/ki-tools/growthstanda...
and anthro2323. Schumacher D. Anthro: computation of the WHO Child Growth Standards. R package version 0.9.4. https://CRAN.R-project.org/package=anthro (accessed on 10/Apr/2022).
https://CRAN.R-project.org/package=anthr...
.
Prevalence, 95% confidence intervals (95%CI), coefficient of variation (CV), and total population (mother-child dyads × 1,000) with malnutrition in mother-child dyads were estimated. The CV is a measure of dispersion, indicative of the heterogeneity of the data and is estimated as the ratio of the standard error and estimated prevalence value.
The most prevalent forms of malnutrition in 2019 [overweight in mother-child dyads, overweight mother and stunted child, and overweight mother and undernourished child (stunting, wasting, or underweight)] were described according to socioeconomic and demographic characteristics: Brazilian macroregions (North, Northeast, Southeast, South, and Central-West); the National Wealth Score (IEN) tertiles 2424. Andrade PG, Schincaglia RM, Farias DR, Castro IRR, Anjos LA, Lacerda EMA, et al. The National Wealth Score in the Brazilian National Survey on Child Nutrition (ENANI-2019). Cad Saúde Pública 2023; 39 Suppl 2:e00050822.; food insecurity level (food security, mild insecurity, and moderate or severe insecurity), measured using the Brazilian Food Insecurity Scale (EBIA) 2525. Segall-Corrêa AM, Marin-León L, Melgar-Quiñonez H, Pérez-Escamilla R. Refinement of the Brazilian Household Food Insecurity Measurement Scale: recommendation for a 14-item EBIA. Rev Nutr 2014; 27:10.; type of sewage system (general network or others), age group of the child (< 2, ≥ 2 years old); race/skin color of the child (white, mixed-race, black, Asian descendants, indigenous); maternal schooling level (0-7, 8-10, 11, ≥ 12 years of education); maternal age (< 20, 20-29, 30-39, ≥ 40 years old); and marital status (lives with a partner or not). In the descriptive analyses according to the child’s race/skin color, the results “Asian descendants” and “indigenous” children were omitted due to the low precision of the estimates (CV > 30%).
The prevalence of overweight in the mother-child dyads, overweight mother and stunted child, and overweight mother and undernourished child (stunting, wasting, or underweight) was estimated using data from PNDS 2016 for comparison with ENANI-2019. Prevalence estimates and 95%CI were graphically presented. The lack of overlap in the 95%CI of point estimates was considered a statistically significant difference.
Ethical considerations
The ENANI-2019 was approved by the Research Ethics Committee of the Clementino Fraga Filho University Hospital of the Federal University of Rio de Janeiro (UFRJ; CAAE n. 89798718.7.0000.5257). Data were collected after a parent or caregiver of the child authorized participation in the study through informed consent form.
Results
In 2019, 58.2% of Brazilian mothers and 9.7% of Brazilian children were overweight (using WHZ or BAZ), 6.9% of children were stunted, and 3.1% of mothers and 2.9% of children were underweight (data not shown in tables). The prevalence of overweight in the mother-child dyad was 6% using the WHZ and 7.8% when the WHZ or BAZ was used. The prevalence of any form of undernourishment in the mother-child dyad was ≤ 0.4%, with all CV estimates > 30%. The double burden of malnutrition (overweight mother and undernourished child) was found in 5.2% of the mother-child dyads in Brazil (Table 1).
The prevalence of overweight in mother-child dyads in Southern Brazil (9.7%) was statistically higher than in the Central-West (5.4%). The prevalence was also higher in children ≥ 2 years old (9.1%) than in younger children (5.9%) (Table 2). The prevalence of overweight mothers and stunted children was 3.5% and higher in dyads with fewer completed years of mother formal education, with a statistically significant difference between the extremes (0-7 vs. ≥ 12 years, 4.8% and 2.1%, respectively) (Table 3). The prevalence of overweight mothers and undernourished children was higher in dyads with mothers with lower formal education and older age, but the differences were not statistically significant (Table 4).
In 2006, 41.6% of mothers and 8.7% of children were overweight (using WHZ or BAZ), 8.4% of children were stunted, and 4.2% of mothers and 1.8% of children were underweight. The prevalence of overweight in the mother-child dyad was 3.1% using WHZ and 5.2% using WHZ or BAZ. The prevalence of undernourishment in the mother-child dyad was 0.1%, and 2.7% of the mother-child dyad were classified as having the overweight mother and undernourished child (data not shown in tables).
The prevalence of malnutrition in mother-child dyads increased from 2006 to 2019. The prevalence of dyads classified as overweight mothers and undernourished children increased from 2.7% to 5.2%, which is an increase of 92% (2.5 percentage points) from 2006 to 2019. The prevalence of overweight in mother-child dyads increased 50% (2.6 percentage points) in the same period. The prevalence of overweight mothers and stunted children increased from 2006 to 2019, but the difference was not statistically significant (Figure 1). Similar results were found when the analyses of the ENANI-2019 data were restricted to the mother’s age group of PNDS 2006 (data not shown in tables).
Discussion
This study has three main findings. First, overweight in mother-child dyads and overweight in the mother and any form of undernourishment in the child (double burden of malnutrition) are the primary expressions of malnutrition at the household level in Brazil, affecting over 1.8 million dyads. Second, overweight was more prevalent in the Southern Region of the country and the double burden of malnutrition was also higher in dyads with lower maternal education level and older age and in young children (< 2 years old), although for double burden of malnutrition, the differences were not statistically significant. Third, malnutrition in mother-child dyads had a steep increase from 2006 to 2019, in which overweight in mother-child dyads increased by 50% and double burden of malnutrition increased by 92%.
In Brazil, overweight affected over one million mother-child dyads in 2019. Mother and child share genetics and sociodemographic, contextual, and behavioral characteristics. Parents have a substantial impact on children’s health behaviors 2626. Wang Y, Beydoun MA, Li J, Liu Y, Moreno LA. Do children and their parents eat a similar diet? Resemblance in child and parental dietary intake: systematic review and meta-analysis. J Epidemiol Community Health 2011; 65:177-89. and nutritional status 2727. Wang Y, Min J, Khuri J, Li M. A systematic examination of the association between parental and child obesity across countries. Adv Nutr 2017; 8:436-48.. Regarding child feeding, the influence can be explained by child self-regulation, parental eating practices, and family meal environment 2828. Harrison K, Bost KK, McBride BA, Donovan SM, Grigsby-Toussaint DS, Kim J, et al. Toward a developmental conceptualization of contributors to overweight and obesity in childhood: the six-Cs model. Child Dev Perspect 2011; 5:50-8.. Obesogenic lifestyles and behavioral traits, including diet and physical activity, can be easily assimilated by children via family socialization 2929. Romanos-Nanclares A, Zazpe I, Santiago S, Marín L, Rico-Campà A, Martín-Calvo N. Influence of parental healthy-eating attitudes and nutritional knowledge on nutritional adequacy and diet quality among preschoolers: the SENDO Project. Nutrients 2018; 10:1875.,3030. Hood MY, Moore LL, Sundarajan-Ramamurti A, Singer M, Cupples LA, Ellison RC. Parental eating attitudes and the development of obesity in children. The Framingham Children's Study. Int J Obes Relat Metab Disord 2000; 24:1319-25..
A higher prevalence of overweight was observed in the dyads from the South compared to those in Central-West Brazil. The drivers of nutritional transition can partially explain this regional difference, e.g., urbanization and dietary patterns, which can differ throughout Brazil 3131. Alves CE, Dal'Magro GP, Viacava KR, Dewes H. Food acquisition in the geography of brazilian obesity. Front Public Health 2020; 8:37.. The prevalence was also higher in children 2-5 years old than in those ≤ 2 years old. In line with these results, a systematic review and meta-analysis with data from high- and middle-income countries reported that the association between obesity in parents and children was stronger in older children than in younger children 2727. Wang Y, Min J, Khuri J, Li M. A systematic examination of the association between parental and child obesity across countries. Adv Nutr 2017; 8:436-48.. Besides child self-regulation, eating behaviors, parental supervision, and children’s socialization 3232. Bergmeier H, Paxton SJ, Milgrom J, Anderson SE, Baur L, Hill B, et al. Early mother-child dyadic pathways to childhood obesity risk: a conceptual model. Appetite 2020; 144:104459., these differences may reflect the cumulative effect of more prolonged common family exposure.
Childhood overweight has short- and long-term consequences, such as metabolic changes related to cholesterol, triglycerides, glucose profiles, high blood pressure, and an increased risk of obesity later in life 3333. Victora CG, Bahl R, Barros AJ, França GV, Horton S, Krasevec J, et al. Breastfeeding in the 21st century: epidemiology, mechanisms, and lifelong effect. Lancet 2016; 387:475-90.,3434. Victora CG, Adair L, Fall C, Hallal PC, Martorell R, Richter L, et al. Maternal and child undernutrition: consequences for adult health and human capital. Lancet 2008; 371:340-57.,3535. Lloyd LJ, Langley-Evans SC, McMullen S. Childhood obesity and risk of the adult metabolic syndrome: a systematic review. Int J Obes (Lond) 2012; 36:1-11.. Thus, public health interventions should recognize the association between maternal and child nutritional status and encourage maternal/parental healthy eating attitudes rather than only educate parents on how to feed their children 2727. Wang Y, Min J, Khuri J, Li M. A systematic examination of the association between parental and child obesity across countries. Adv Nutr 2017; 8:436-48..
The prevalence of double burden of malnutrition seems to be a growing problem in Brazil and may reflect the pattern of nutritional transition that has occurred in the country over time. From 2006 to 2019, the prevalence of double burden of malnutrition almost doubled. An increasing prevalence of overweight was observed in the Brazilian population, whereas underweight is under control in the adult population 3636. Conde WL, Monteiro CA. Nutrition transition and double burden of undernutrition and excess of weight in Brazil. Am J Clin Nutr 2014; 100:1617S-22S.. The prevalence of stunting and underweight in children decreased significantly in Brazil from 1974 to 2006, and the prevalence of overweight in children < 5 years old remained constant 3636. Conde WL, Monteiro CA. Nutrition transition and double burden of undernutrition and excess of weight in Brazil. Am J Clin Nutr 2014; 100:1617S-22S.. However, from 2006 to 2019, the prevalence of overweight and wasting increased, and stunting was stable in Brazilian children under 5 years old, but when considering the < 1-year-old group, the prevalence increased from 4.9% to 9% 1515. Ministério da Saúde. Pesquisa Nacional de Demografia e Saúde da Criança e da Mulher - PNDS 2006: dimensões do processo reprodutivo e da saúde da criança. Brasília: Ministério da Saúde; 2009.,3737. Universidade Federal do Rio de Janeiro. Estado nutricional antropométrico da criança e da mãe:prevalência de indicadores antropométrico de crianças brasileiras menores de 5 anos de idade e suas mães biológicas. 7. ENANI 2019. https://enani.nutricao.ufrj.br/wp-content/uploads/2022/02/Relatorio_Estado_Nutricional-5.pdf (accessed on 10/Apr/2022).
https://enani.nutricao.ufrj.br/wp-conten...
,3838. Castro IRR, Farias DR, Berti TL, Andrade GP, Anjos LA, Alves-Santos NH, et al. Trends of height-for-age Z-scores according to age among Brazilian children under 5 years old from 2006 to 2019. Cad Saúde Pública 2023; 39 Suppl 2:e00087222..
Other low- and middle-income countries have registered a decreased in underweight and stunting prevalence among children and an increase in overweight prevalence among women by approximately one percentage point per year 11. Popkin BM, Corvalan C, Grummer-Strawn LM. Dynamics of the double burden of malnutrition and the changing nutrition reality. Lancet 2020; 395:65-74.. A study with data from Demographic and Health Surveys (DHS) in 54 low- and middle-income countries showed that overweight mothers and undernourished children ranged from 1.8% in families in Ethiopia to 15.9% in Egypt and South and Southeast Asia. There has been a steady decline in childhood undernutrition and an increasing trend toward overweight among women. This transition has been accompanied by economic growth and demographic and epidemiological transitions in recent decades. In a study carried out in Peru 99. Pomati M, Mendoza-Quispe D, Anza-Ramirez C, Hernández-Vásquez A, Carrillo Larco RM, Fernandez G, et al. Trends and patterns of the double burden of malnutrition (double burden of malnutrition) in Peru: a pooled analysis of 129,159 mother-child dyads. Int J Obes 2021; 45:609-18. using individual-level data collected in nationally representative household surveys from 1996 to 2017, the prevalence of double burden of malnutrition decreased from 10% to 7% during the period. The possible explanation may be related to the improvement in socioeconomic factors that occurred in Peru in the previous decades, which might have contributed to a change in the pattern of children with normal nutritional status having overweight mothers 99. Pomati M, Mendoza-Quispe D, Anza-Ramirez C, Hernández-Vásquez A, Carrillo Larco RM, Fernandez G, et al. Trends and patterns of the double burden of malnutrition (double burden of malnutrition) in Peru: a pooled analysis of 129,159 mother-child dyads. Int J Obes 2021; 45:609-18..
Increasing evidence show the association of increasing overweight prevalence with higher consumption of ultra-processed foods 3939. Monteiro CA, Levy RB, Claro RM, Castro IRR, Cannon G. A new classification of foods based on the extent and purpose of their processing. Cad Saúde Pública 2010; 26:2039-49.,4040. Monteiro CA, Moubarac JC, Cannon G, Ng SW, Popkin B. Ultra-processed products are becoming dominant in the global food system. Obes Rev 2013; 14 Suppl 2:21-8.. This food group has been associated with a greater risk of obesity 4141. Neri D, Steele EM, Khandpur N, Cediel G, Zapata ME, Rauber F, et al. Ultraprocessed food consumption and dietary nutrient profiles associated with obesity: a multicountry study of children and adolescents. Obes Rev 2022; 23 Suppl 1:e13387. and noncommunicable diseases 4242. Elizabeth L, Machado P, Zinöcker M, Baker P, Lawrence M. Ultra-processed foods and health outcomes: a narrative review. Nutrients 2020; 12:1955. and may be related to stunting when consumed in the first 1,000 days of life 4242. Elizabeth L, Machado P, Zinöcker M, Baker P, Lawrence M. Ultra-processed foods and health outcomes: a narrative review. Nutrients 2020; 12:1955.. The consumption of energy-rich and nutrient-poor foods and the unequal food distribution at the household level can contribute to adult overweight and impaired child growth 4343. Wibowo Y, Sutrisna B, Hardinsyah H, Djuwita R, Korib MM, Syafiq A, et al. Relationship between intra-household food distribution and coexistence of dual forms of malnutrition. Nutr Res Pract 2015; 9:174-9.. Maternal education also seems to influence the prevalence of maternal overweight and child undernourishment. A study conducted using population-representative data from the DHS of Bangladesh, India, Nepal, Pakistan, Myanmar, Timor, the Maldives, and Cambodia found that the double burden of malnutrition in mother-child dyads was higher in dyads with lower maternal education and higher age 88. Biswas T, Townsend N, Magalhães RJS, Hasan M, Mamun A. Patterns and determinants of the double burden of malnutrition at the household level in South and Southeast Asia. Eur J Clin Nutr 2021; 75:385-91..
ENANI-2019 allowed an unprecedented assessment of the combined situation of the many forms of malnutrition in mother-child dyads in Brazil. The use of individual-level data from nationally representative surveys is a strength of the study. Furthermore, ENANI-2019 and PNDS 2006 used comparable study designs and data collection methods, allowing the assessment of the trend in malnutrition over 13 years. Anthropometric measures of ENANI-2019 were collected using standardized procedures. The training was conducted in all Brazilian states by qualified instructors, with real-time eletronic monitoring of children’s anthropometric measurements 1717. Anjos LA, Ferreira HS, Alves-Santos NH, Freitas MB, Boccolini CS, Lacerda EMA, et al. Methodological aspects of the anthropometric assessment in the Brazilian National Survey on Child Nutrition (ENANI-2019): a population-based household survey. Cad Saúde Pública 2021; 37:e00293320.. The study has some limitations, such as the inclusion of biological mothers aged 16-64 years old in ENANI-2019, which may limit the comparison with PNDS 2006. However, similar results were found when the analyses of ENANI-2019 data were restricted to the mother’s age group (14-49 years old) of PNDS 2006.
Malnutrition is a public health challenge worldwide and knowing how it affects the population is a pivotal step in planning public health intervention. ENANI-2019 assessed the combined situation of several forms of malnutrition in the Brazilian maternal-child dyad, which had not been updated since 2006. In 2019, the most frequent forms of malnutrition in the dyads were overweight in the mother and child, and overweight in the mother associated with any form of undernourishment in the child. Both problems have increased since 2006; overweight in the dyad increased from 5.2% to 7.8%, and the double burden of malnutrition increased from 2.7% to 5.2%. Public health interventions need to focus on dyads in vulnerable situations such as lower formal education and higher maternal age, considering the relationship between maternal and child nutrition status.
Acknowledgments
We thank the participating families who made this study possible, the other components of the Brazilian National Survey on Child Nutrition (ENANI-2019) team for their support in the fieldwork and organization of the database, and the Brazilian Ministry of Health/Brazilian National Research Council (CNPq; process n. 440890/2017-9).
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Publication Dates
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Publication in this collection
25 Sept 2023 -
Date of issue
2023
History
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Received
09 May 2022 -
Reviewed
26 Sept 2022 -
Accepted
10 Oct 2022