0360/2020 - TENDÊNCIA TEMPORAL (2008-2018) DA PREVALÊNCIA DE EXCESSO DE PESO EM LACTENTES E PRÉ-ESCOLARES BRASILEIROS DE BAIXA RENDA
TIME-TREND ANALYSIS (2008-2018) OF OVERWEIGHT PREVALENCE AMONG LOW-INCOME INFANT AND PRESCHOOL CHILDREN
Autor:
• Laís Gomes Lessa Vasconcelos - Vasconcelos, L. G. L. - <laisglv@gmail.com>ORCID: https://orcid.org/0000-0002-9445-1966
Coautor(es):
• Nykholle Bezerra Almeida - Almeida, N. B. - <nykhollebezerraalmeida@gmail.com>ORCID: https://orcid.org/0000-0002-8536-3972
• Mayara Oliveira de Alencar Santos - Santos, M. O. de A. - <mayaraalencarnutri@gmail.com>
ORCID: https://orcid.org/0000-0001-9223-0177
• Jonas Augusto Cardoso da Silveira - Silveira, J.A.C - <jonas.silveira@fanut.ufal.br>
ORCID: http://orcid.org/0000-0003-3838-6212
Resumo:
O objetivo deste estudo foi analisar a tendência temporal da prevalência de excesso de peso (EP) em crianças menores de cinco anos assistidas pelo Programa Bolsa Família (PBF) entre 2008 e 2018. O painel de dados foi baseado nos relatórios de estado nutricional do Sistema de Vigilância Alimentar e Nutricional (SISVAN) (n=30.574.118) e analisado por meio de modelos de regressão joinpoint específicos para idade (lactentes e pré-escolares) e macrorregião. Ainda, calculou-se a cobertura do SISVAN para o PBF e a representatividade nacional, segundo projeção censitária. Na década analisada, o EP em lactentes reduziu de 11,9% (11,8; 12,0 IC95%) para 8,5% (8,4; 8,6 IC95%) (-3,6%/ano [-5,1; -2,0 IC95%]); quanto aos pré-escolares, a prevalência EP aumentou em 3,1%/ano (2,0; 4,2 IC95%) até 2015, seguida por uma retração até 2018 (-6,4%/ano [-10,1; -2,6 IC95%]). Em ambos os grupos etários, a região Norte apresentou a menor prevalência em toda série histórica e a Nordeste o pior desempenho no controle do EP infantil. A cobertura do SISVAN no PBF foi elevada e a representatividade dos dados variou entre 13,9% (Sul) e 42,2% (Nordeste). Apesar da prevalência estar acima do esperado, após 2014, identificou-se redução linear no EP em lactentes e desaceleração na taxa de crescimento nos pré-escolares.Palavras-chave:
Criança. Obesidade. Vigilância Alimentar e Nutricional.Abstract:
This study aimed to analyze the trends2008 to 2018 of overweight (OW) prevalence among under-five-year-old children assisted by the Programa Bolsa Familia (PBF; Bolsa Família Programme, in English). The panel was based on the nutritional status reports of the Food and Nutritional Surveillance System (SISVAN) (n=30,574,118). Age- (infants and preschoolers) and region-specific joinpoint regression models were used to analyze OW’s prevalence temporal changes. Besides, the coverage of SISVAN for PBF and national representativity were calculated according to census projection. In the decade analyzed, OW in infants decreased11.9% (11.8; 12.0 95%CI) to 8.5% (8.4; 8.6 95%CI) (-3.6%/year [-5.1; -2.0 95%CI]); for preschool children, the prevalence of OW increased by 3.1%/year (2.0; 4.2 95%CI) until 2015, followed by a decrease until 2018 (-6.4%/year [-10.1; -2.6 95%CI]). In both age groups, the North region had the lowest prevalence in all time-series, and the Northeast had the worst performance in controlling childhood obesity. The SISVAN\'s coverage in the PBF was high, and the data representativity varied between 13.9% (South) and 42.2% (Northeast). Although the prevalence was higher than expected, after 2014, it was detected a linear reduction in EP in infants and a deceleration in the growth rate in preschoolers.Keywords:
Child. Obesity. Nutritional Surveillance.Conteúdo:
Acessar Revista no ScieloOutros idiomas:
TIME-TREND ANALYSIS (2008-2018) OF OVERWEIGHT PREVALENCE AMONG LOW-INCOME INFANT AND PRESCHOOL CHILDREN
Resumo (abstract):
This study aimed to analyze the trends2008 to 2018 of overweight (OW) prevalence among under-five-year-old children assisted by the Programa Bolsa Familia (PBF; Bolsa Família Programme, in English). The panel was based on the nutritional status reports of the Food and Nutritional Surveillance System (SISVAN) (n=30,574,118). Age- (infants and preschoolers) and region-specific joinpoint regression models were used to analyze OW’s prevalence temporal changes. Besides, the coverage of SISVAN for PBF and national representativity were calculated according to census projection. In the decade analyzed, OW in infants decreased11.9% (11.8; 12.0 95%CI) to 8.5% (8.4; 8.6 95%CI) (-3.6%/year [-5.1; -2.0 95%CI]); for preschool children, the prevalence of OW increased by 3.1%/year (2.0; 4.2 95%CI) until 2015, followed by a decrease until 2018 (-6.4%/year [-10.1; -2.6 95%CI]). In both age groups, the North region had the lowest prevalence in all time-series, and the Northeast had the worst performance in controlling childhood obesity. The SISVAN\'s coverage in the PBF was high, and the data representativity varied between 13.9% (South) and 42.2% (Northeast). Although the prevalence was higher than expected, after 2014, it was detected a linear reduction in EP in infants and a deceleration in the growth rate in preschoolers.Palavras-chave (keywords):
Child. Obesity. Nutritional Surveillance.Ler versão inglês (english version)
Conteúdo (article):
TIME-TREND ANALYSIS (2008-2018) OF OVERWEIGHT PREVALENCE AMONG LOW-INCOME INFANT AND PRESCHOOL CHILDRENTENDÊNCIA TEMPORAL (2008-2018) DA PREVALÊNCIA DE EXCESSO DE PESO EM LACTENTES E PRÉ-ESCOLARES BRASILEIROS DE BAIXA RENDA
Laís Gomes Lessa Vasconcelos
Center for Studies and Research on the Food Environment, Laboratory of Public Health Nutrition, School of Nutrition, Federal University of Alagoas, Maceió / AL, Brazil.
Email: laisglv@gmail.com. ORCID: https://orcid.org/0000-0002-9445-1966
Nykholle Bezerra Almeida
Center for Studies and Research on the Food Environment, Laboratory of Public Health Nutrition, School of Nutrition, Federal University of Alagoas, Maceió / AL, Brazil.
Email: nykhollebezerraalmeida@gmail.com. ORCID: https://orcid.org/0000-0002-8536-3972
Mayara Oliveira de Alencar Santos
Center for Studies and Research on the Food Environment, Laboratory of Public Health Nutrition, School of Nutrition, Federal University of Alagoas, Maceió / AL, Brazil.
Graduate Program in Public Health Epidemiology, National School of Public Health, Oswaldo Cruz Foundation, Rio de Janeiro / RJ, Brazil.
Email: mayaraalencarnutri@gmail.com. ORCID: https://orcid.org/0000-0001-9223-0177
Jonas Augusto Cardoso da Silveira
Center for Studies and Research on the Food Environment, Laboratory of Public Health Nutrition, School of Nutrition, Federal University of Alagoas, Maceió / AL, Brazil.
Email: jonas.silveira@fanut.ufal.br. ORCID: http://orcid.org/0000-0003-3838-6212
Abstract
This study aimed to analyze the overweight (OW) prevalence trends from 2008 to 2018 among under-five-year-old children assisted by the conditional cash transfer program entitled Programa Bolsa Familia (PBF). The panel was based on the Food and Nutritional Surveillance System (SISVAN) (n=30,574,118) nutritional status reports. Age- (infants and preschoolers) and region-specific joinpoint regression models were used to analyze OW\'s prevalence temporal changes. Besides, the coverage of SISVAN for PBF and national representativity were calculated according to census projection. In the decade analyzed, OW in infants decreased from 11.9% (11.8; 12.0 95%CI) to 8.5% (8.4; 8.6 95%CI) (-3.6%/year [-5.1; -2.0 95%CI]); for preschool children, the prevalence of OW increased by 3.1%/year (2.0; 4.2 95%CI) until 2015, followed by a decrease until 2018 (-6.4%/year [-10.1; -2.6 95%CI]). In both age groups, the North region had the lowest prevalence in all time-series, and the Northeast had the worst performance in managing childhood obesity. The SISVAN\'s coverage in the PBF was high, and the data representativity varied between 13.9% (South) and 42.2% (Northeast). Although the prevalence was higher than expected, after 2014, it was detected a linear reduction in OW in infants and a deceleration in the growth rate in preschoolers.
Keywords: Child. Obesity. Nutritional Surveillance.
INTRODUCTION
In recent decades, the prevalence of obesity in children and adolescents has dramatically increased worldwide. From 1975 to 2006, it increased from 0.7% to 5.6% for females, and from 0.9% to 7.8% for males1. In Brazil, time-trend analyses using data from the latest national maternal and child health surveys found that the prevalence of overweight (OW) in infants decreased 2.5 p.p. between 1989 and 20062. However, concerning preschool children, there was an increasing trend from 3% to 7.8% between 1989 and 2006, with the Northeast region showing the greatest increase, from 1.6% to 7.2%3.
Among these surveys, 2006/07 National Demographic and Health Survey of Children and Women (DHSCW) was the last nationally representative survey on child health in Brazil with anthropometric data. Therefore, there is a significant gap in knowledge about the current status of childhood obesity, especially in groups characterized by a high degree of social vulnerability, within a society that has experienced intense processes of change in dietary patterns4.
Thus, health information systems constantly updated and with expanded coverage play a key role in monitoring the nutritional status of communities. In addition, these data serve as a tool to support decision-making, especially when they allow us to trace temporal trends and monitor populations in vulnerable conditions/participants of social support programs.
For this purpose, Brazil has the Food and Nutrition Surveillance System (In Portuguese, Sistema de Vigilância Alimentar e Nutricional – SISVAN). It is a surveillance system focused on collecting data from the population assisted by primary care of the Unified Health System (SUS). The information generated by SISVAN ranges from anthropometric data and food consumption markers to the generation of reports on the health and nutrition status of certain locations5,6.
Given the background of lack of information and significant changes in the children’s nutrition status profile, the SISVAN is a strategic tool for monitoring overweight in children under five years of age, mainly because it allows stratification by age groups (infants and preschool children). Another advantage of this surveillance system is the availability of information about the children who are beneficiaries of the Bolsa Família Program (PBF), characterized by high social vulnerability.
The PBF is a conditional cash transfer program of Brazil to reduce poverty and increase access to health, education, and social assistance services. It has three central pillars: cash transfer, conditionalities, and complementary programs. The health conditionalities include basic actions, such as immunization, prenatal care, and monitoring the growth and development of socially vulnerable children7,8. Thus, the data on children’s nutritional status have high regional and national coverage5,6.
In order to better understand the transformations in the nutritional profile of children under five, it may be interesting to stratify the groups according to developmental stages. Such an approach may provide new insights regarding the childhood obesity transition since infants and preschoolers represent stages with specific nutritional recommendations and different levels of autonomy and influence on food choices9.
Therefore, this study aimed to evaluate the OW time-trend and the coverage of the nutritional status of infants (0-23 months) and preschoolers (24-59 months) assisted by the PBF in Brazil and its macro-regions between the years 2008 and 2018.
METHODS
We conducted a time series analysis (2008-2018) of the OW prevalence in Brazil based on data from infants and preschoolers in a situation of high socioeconomic vulnerability assisted by the Bolsa Família Program, the most extensive conditional cash transfer program in the world10. Since the monitoring of the nutritional status in primary health care facilities is one of the conditionalities of the program, these data have a census feature regarding this population. For PBF, the woman is the reference for the transfer of the financial resource if all the conditions are met.
The data were extracted and aggregated by age group (0-23 months and 24-59 months), sex (male and female), and region of residence (North, Northeast, Midwest, Southeast, and South). We obtained these information from the annual reports on the nutritional status of children registered in the PBF Management System, generated from the public domain database SISVAN Web11. Since the prevalence estimates of OW were not different by sex, this stratification was not considered in our analyses.
The SISVAN platform does not produce consolidated reports with estimates for all the population sets of interest. Thus, to ensure the quality of the final database, the extraction and merging of the twelve microdata were done by two independent researchers.
The outcome variable used in this study was the OW prevalence, defined as the weight-for-age Z-score index (zPI) > +2DP and using the WHO Child Growth Standards 12 as reference. The zPI was used to the detriment of the other indexes since it only considers the child\'s weight, anthropometric data that is simpler, more practical, and cheaper to obtain; because it does not require an infantometer or stadiometer to measure height, this indicator has an increased coverage in the SISVAN. From a technical point of view, the professional\'s inability to measure height in children could be an additional source of error in the estimate.
Prevalence rates and their respective 95% confidence intervals (95% CI) were calculated using the prop.test function of the R software (R Foundation for Statistical Computing, Vienna, Austria) since the data were extracted as counts (number of overweight children and the total number of children).
Age- and region-specific OW prevalence trends were analyzed using joinpoint regression (Joinpoint Regression Program 4.8.0.1, The National Cancer Institute, MD, USA). This technique aims to identify k-inflection points on a straight line given by a linear equation (null hypothesis), where statistically significant changes in trend direction occur13,14. The criterion for selecting the final models with autocorrelated errors was based on the weighted (data-driven) Bayesian Information Criterion. Since the data were obtained as counts, the estimates were calculated by log-linear Poisson models. The results were presented as 1) annual percentage change (APC), which represents the annual change in OW rates at each k-model jointpoint; 2) average annual percentage change (AAPC), which represents a weighted average of the annual change in OW rates for the total time series period (2008-2018). All estimates have been presented with their respective 95% confidence intervals (95%CI).
The weight-for-age indicator coverage in SISVAN for the total number of children enrolled in the PBF was calculated from the consolidated reports of the Department of Primary Health Care of the Ministry of Health15. However, since the age range of child coverage by SISVAN is 0-5 years of age and the PBF reports stratify information for the 0-2 years and 0-7 years sets, the calculation of preschool coverage was performed by subtracting the number of children aged 0-7 years by the number of children aged 0-2 years. Thus, the coverage for preschool children is underestimated.
The national representativeness of the data in 2018 was estimated from the proportion of children registered in the PBF and with data available in SISVAN regarding the 2010 Census and the 2018 Population Projection, conducted by the Brazilian Institute of Geography and Statistics (IBGE)16. We used both as a reference to evaluate the national representativeness of the data since the 2018 Population Projection does not present estimations stratified by infants and preschoolers.
Since this was a study that used aggregated data from the public domain, there was no need for Ethics in Human Research Committee review.
RESULTS
This study analyzed anthropometric data of under five years old children assisted by PBF available in SISVAN, representing an annual average of 574,993 and 2,204,471 infants and preschoolers evaluated, respectively, totaling 30,574,118 observations in the period from 2008 to 2018.
Table 1 presents SISVAN coverage in relation to the total number of infants and preschool children assisted by the PBF from all macro-regions in Brazil between 2008 and 2017. In the decade, it is observed that about ¾ of the infants had their weight monitored. As for preschoolers, although the observed coverage was close to 60%, it should be noted that this data is underestimated since the information is only available for those under seven years of age. The only year with a significant reduction in coverage for both age groups and macro-regions was 2012. This result was due to the migration between platforms for supplying data to the surveillance system (information obtained directly with national platform managers).
Table 2 presents the proportion of children accompanied in the PBF with weight-for-age data in SISVAN in relation to the 2010 Census and the 2018 Population Projection. The North and Northeast regions were the territories with the largest population contingent of children assisted by the PBF, representing, respectively, 22.3% and 27.9% for infants and 45.6% and 49.4% for preschoolers. Regarding the 2018 Population Projection, it was observed that children assisted by PBF and who had their nutritional status monitored in SISVAN represented ¼ of the Brazilian population under five years old.
Over the ten-year period, OW prevalence among socially vulnerable Brazilian under five years old children showed distinct temporal processes. Until 2015, trends that were stationary among infants (APC: -0.5%/year [-2.0; 1.0 95%CI]) and upward among preschoolers (APC: 3.1%/year [2.0; 4.2 95%CI]), became decreasing for both groups after that period (APCinfants: -10.3%/year [-15.1; -5.1 95%CI] / APC preschoolers: -6.4%/year [-10.1; -2.6 95%CI]) (Table 3 and Figure 1). The AAPC for infants and preschoolers was -3.6%/year (-5.1; -2.0 95%CI) and 0.2%/year (-1.0; 1.3 95%CI), respectively.
When disaggregated by region, the joinpoint models identified statistically significant inflection points in the years 2013 (South and Southeast) and 2016 (Midwest, North, and Northeast) for both age groups studied (Figure 2 and Table 3).
Despite identifying these points, in relation to infants, it was observed that only the Midwest region showed a statistically significant trend in reducing OW prevalence in the first period (2008-2016 APC: -2.8%/year [-5.1; -0.5 95% CI]). As for the second period, in the South and Southeast regions (2013-2018), we identified that the decreasing OW trends were -7.5%/year (-11.3; -3.5 95%CI) and -8.3%/year (-1.9; -4.6 95%CI), respectively (Figure 2). Regarding AAPC, only the North and Northeast regions did not show a statistically significant prevalence reduction trend. Throughout the time series, the North region remained to show the lowest OW prevalence, and the Northeast region, the highest (Table 3).
Regarding the preschool children, we observed an increasing trend in the OW prevalence during the first period in the North (2008-2016 APC: 2.4%/year [0.9; 4.0 95%CI]), Northeast (2008-2016 APC: 3.9%/year [2.2; 5.5 95%CI]), and South (2008-2013 APC: 5.6%/year [2.8; 8.6 95%CI]) regions (Figure 2). In the second period, statistically significant negative variations were observed only in the South (APC: -3.6%/year [-5.8; -1.4 95%CI]) and Southeast (APC: -4.0%/year [-7.4; -0.4 95%CI]) regions, which makes the prevalence in 2018 practically the same as that observed in 2008 (Figure 2 and Table 3). Thus, based on the AAPC between 2008 and 2018, it is considered that the OW trend in preschoolers was stationary. As observed in infants, preschoolers in the North region had the lowest OW prevalence in the entire time series (2008: 4.4% [4.3-4.5 95%CI]; 2018: 3.9% [3.8-4.0 95%CI]). On the other hand, in 2018, children assisted by PBF residing in the South and Northeast regions had the highest OW prevalence in Brazil.
DISCUSSION
Our study evaluated the temporal trend of OW prevalence in children aged 0-59 months who are beneficiaries of the PBF, the largest conditional cash transfer program globally in terms of funding and coverage10,17. From the stratification into infants (0-23 months) and preschoolers (24-59 months), it was possible to observe two different OW trends in the decade from 2008 to 2018. In addition, we also identified critical regional differences from the disaggregation of the analyses, especially regarding the North region.
Previous studies2,3 have already indicated that the OW prevalence since the early 1990s showed distinct behaviors. In 2006, the OW prevalence for the Brazilian infant and preschool population was 6.5% and 7.6%, respectively, which represented a decrease in children under two years of age and an increase in children between two and five years of age, based on 1989 prevalence estimates. Compared to the 2008 SISVAN estimates, the OW prevalence increased among infants but was similar among preschool children from deprived settings.
Despite the difference between the target populations, the consistency between the results indicates that the nutritional scenario presented in our study represents the continuity of the phenomenon that began in the 1970s, worsened in the early 2000s, and is apparently entering a new phase of the obesity transition process2,3,18,19.
As the authors of the conceptual model of the obesity transition argue20, Brazil presents a unique characteristic among the analyzed countries. In the Brazilian context, the prevalence of obesity among poorer women has continued to increase despite the reduction in prevalence among wealthier women; moreover, the prevalence of obesity among men has increased in all economic groups. When considering the parameters adopted by the authors to define the stage the country is at in the obesity transition process (prevalence of obesity, according to sex, age group, and economic level), Brazil could be classified in the initial stages of stage three. Brazil is assumed to be in the early stages of the process since the prevalence’s magnitude among adults is lower than the proposed range proposed by Jaacks et al.20. On the other hand, it may be that Brazil has such peculiar characteristics that this conceptual model is not sufficient to explain the changes in the nutritional profile of the population. Another potential argument would be that, in Brazil, the final phase of the obesity transition process (reduction in prevalence) would start with the decline in the prevalence of obesity in children, which would subsequently, through the cohort effect, result in a reduction in the prevalence among adults.
Comparing with other contexts, based on national surveys conducted in the United States of America (USA), it was observed that the prevalence of obesity in children aged 2-5 years increased from 7.2% (5.8-8.8 95%CI) to 13.9% (10.7-17.7 95%CI) from 1988-1994 to 2003-2004; however, it is interesting to note that, as we observed in our population, after this peak, the trend also showed retraction (2013-2014: 9.4% [6.8-12.6 95%CI]). On the other hand, the overlap between confidence intervals of the central estimates suggests that the difference may have been due to sampling variation21. Worldwide, in 2019, it was estimated that 38.3 million (5.6% [4.9; 6.4 95% CI]) of children under five years of age were overweight22. Thus, although the national estimates are not at the same level as the USA (primarily because the USA\'s reference curve was used in the analysis, which underestimates the OW prevalence compared to the WHO standards), our data indicate that the OW prevalence among PBF-assisted children is above the world prevalence, demonstrating the need to adopt a vulnerability approach to address childhood obesity.
Within a perspective of changes in Brazilian society and considering that breastfeeding in the first year of life significantly decreases the risk of childhood overweight23, a possible hypothesis to partially justify the prevalence reduction in infants would be the increase in exclusive and total breastfeeding rates between 1996 and 201324. On the other hand, despite this increase in breastfeeding indicators over the decades (since 1986), the prevalence rates in 2013 were still very low (exclusive BF in children under six months: 36.6%; BF in children under two years: 52.1%). Moreover, the authors show a significant reduction in breastfeeding during the first two years of life.
An important landmark for this interpretation may be the regional differences in prevalence and median duration of exclusive and total breastfeeding in 2008, observed in the II Brazilian Survey on Breastfeeding Prevalence in the Capitals and Federal District25. Except for the Midwest region, there is an apparent inverse association between OW prevalence and breastfeeding indicators, i.e., the regions where the breastfeeding duration is longer, the OW prevalence was lower in 2008; we highlight the North region, where the median breastfeeding duration was ~90 days higher than the median for Brazil. In the case of the Midwest, the hypothesis that justifies its exceptionality would be the fact that, although the median and prevalence of exclusive breastfeeding are comparable to those of the North region, when we observe the estimates of total EBF during the first year of life, the region\'s indicators are similar to those of the Northeast.
Besides the low duration of exclusive breastfeeding, it is also necessary to examine the role of infant feeding. From an individual perspective, unhealthy feeding practices may be the product of the interrelationship between the insufficient knowledge about complementary feeding of mothers and family members26 and the frequent exposure to unhealthy feeding practices by other families27,28 (vicarious experience). Moreover, from a macro-social perspective, we can mention the implementation of fiscal and regulatory measures that encourage the consumption of unhealthy products29 and the pernicious effect of the food industry\'s marketing practices through abusive advertising and sales strategies, such as cross promotion30. In relation to products aimed at children’s consumption, food companies use the same visual identity of infant formula labeling for dairy compounds to intentionally mislead consumers in the acquisition of products with entirely different nutritional compositions.
Within the analyzed decade, the main findings with national representativeness about infant feeding and overweight come from the DHSCW 2006/07, limiting the ability to hypothesize about the mechanisms that may have influenced the variation in prevalence in preschool children.
Except in the North region, until mid-2014, even if with different magnitudes, the OW trend in preschool children increased in all Brazilian regions. When considering consumption data from the DHSCW 2006/07 as a baseline, we observed that the consumption of soft drinks and artificial juices (≥ 4x/day) was twice as frequent among preschool children in the South, Southeast, and Center-West regions compared to the North and Northeast regions28. Still considering the data from 2006/07, another study identified a positive association between the intensity of consumption of sugary drinks and artificial juices and excessive weight gain in preschool children31.
As for the OW trend among preschoolers in the North region, the geographical distance may have introduced limitations to disseminating ultra-processed foods in the states. However, despite the ultra-processed foods\' presence, it is scarce, especially in the interior, since the frequent consumption of sweets, cookies, packaged snacks, and soft drinks, and artificial juices is less frequent than in more economically developed regions27. Furthermore, the greater presence of traditional communities (indigenous, quilombolas, and river dwellers) may be an important factor in maintaining health-protective eating behaviors and practices.
However, it is essential to consider that the trends analyzed refer to populations in poverty. This apparent paradox between socioeconomic vulnerability and overweight can be understood from the perspective of food insecurity, a phenomenon in more than 60% of families below the poverty line in 201332. Considering households with children, mild and moderate food insecurity describe a process of substitution in the acquisition of food by the families, where there is a reduction in the quality of the food to favor quantity33,34; while in mild insecurity, the children are not necessarily affected by this process, in moderate insecurity, there is a reduction in the quality of the children\'s diet. Despite studies reporting the association with overweight35, inconsistencies in the findings may stem from the predominance of cross-sectional studies (limiting the ability to establish causal relationships). They may also derive from the OW prevalence and the degree of social deprivation in the study population.
Finally, based on the analyses carried out by Rasella et al.36, we consider that a potential explanation for the observed phenomena may lie in the effects of the worsening economic and political crises that began in 2014 and the fiscal austerity measures taken in 2016. Thus, reductions in the OW prevalence would not be due to improved food and nutrition conditions but instead to violations of the Human Right to Adequate Food and Nutrition, promoting the growth of child malnutrition in groups facing situations of socioeconomic vulnerability37,38. In this sense, it is urgent that researchers carry on state-level investigations, disaggregating data by specific populations (e.g., traditional populations), to explore this hypothesis; analyses based on SISVAN data are currently underway.
This study has some limitations. First, since we used secondary data, the spectrum of variation in the accuracy of anthropometric measurements may be large, given that the evaluations were performed by professionals with different levels of proficiency in anthropometry; moreover, there is no guarantee regarding the quality and calibration of the equipment used. One way to minimize these problems was to use an indicator that requires only the child\'s weight to be calculated, which is a simpler measure to obtain and also appropriate for assessing under five years old children’s nutritional status12.
Despite the limitations, our analyses reliably reproduce the temporal dynamics of OW prevalence in Brazilian children under five years of age assisted by the PBF; moreover, given the territorial representativeness, we consider it relatively safe to generalize our data to other groups of low-income children, especially to those living in the North and Northeast regions. The conclusion of the National Child Nutrition Study39 will fill the massive gap on the health and nutrition status of children under five years old, dated 2006/07, corroborating or not the external validity of SISVAN for child populations.
CONCLUSION
In the analyzed decade, we identified two distinct patterns in the OW temporal trend among Brazilian children under five years old who were assisted by the PBF. First, there was a steady reduction in the OW prevalence among infants, and despite differences in 2008, the rates of decrease were similar across regions, except in the Midwest, where the reduction was more intense. Second, as for preschool children, we observed that until 2013/2016, the OW trend showed an upward trajectory in all Brazilian regions, with subsequent reduction in prevalence rates to values close to the initial ones.
Therefore, the data show that the prevalence of childhood obesity among children assisted by the PBF and potentially other low-income groups in Brazil is entering a period that will be characterized by reduction or stabilization. It is recommended that future studies seek to understand the trends from a systemic perspective, involving economic, political, and national food system scenarios.
Finally, we reinforce the importance of SISVAN as a fundamental instrument for managing the National Food and Nutrition Policy in Brazil. Challenges for the System are expanding the coverage of nutritional status for children followed in primary health care and, especially, the markers of food consumption, whose coverage in 2018 for children under five years old was 3.2%40.
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