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Nutritional status of schoolchildren before and after confinement by COVID-19 (2019–2021) in Jujuy, Argentina

Published online by Cambridge University Press:  15 April 2024

María José Bustamante*
Affiliation:
Instituto de Ecorregiones Andinas (INECOA), Universidad Nacional de Jujuy (UNJu) - CONICET, San Salvador de Jujuy, Jujuy, Argentina Instituto de Biología de la Altura, UNJu, San Salvador de Jujuy, Jujuy, Argentina
Juan Manuel Solis
Affiliation:
Facultad de Ciencias Agrarias, UNJu, San Salvador de Jujuy, Jujuy, Argentina
Celia Margarita Tabera
Affiliation:
Plan de Contingencia y Comedores Escolares, Secretaria de Equidad Educativa, Ministerio de Educación de la provincia de Jujuy, San Salvador de Jujuy, Jujuy, Argentina
Natalia Maraz
Affiliation:
Estadística Educativa, Ministerio de Educación de la provincia de Jujuy, San Salvador de Jujuy, Jujuy, Argentina
Gisela Belén del Rosario Gutiérrez
Affiliation:
Dirección de Información, Monitoreo y Evaluación Educativa, SICE, Ministerio de Educación de la provincia de Jujuy, San Salvador de Jujuy, Jujuy, Argentina
José Edgardo Dipierri
Affiliation:
Instituto de Ecorregiones Andinas (INECOA), Universidad Nacional de Jujuy (UNJu) - CONICET, San Salvador de Jujuy, Jujuy, Argentina
*
Corresponding author: María José Bustamante; Email: mjbustamante@inbial.unju.edu.ar
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Abstract

An increase in the prevalence of obesity due to lockdown and confinement linked to COVID-19 is observed. Variations in the nutritional status of schoolchildren from Jujuy are analyzed in relation to confinement due to COVID-19 (2019–2021) and its relationship with socio-demographic variables and the school environment. This is an observational, descriptive study. Data from 56,695 schoolchildren aged 6–18 years old is analyzed based on two temporary cuts (2019 pre-confinement and 2021 post-confinement). The nutritional status of schoolchildren (underweight, overweight, and obese) was established using the IOTF (International Obesity Task Force) criterion. The prevalence of each nutritional phenotype was estimated by sex and age group, considering the following independent variables: setting (rural/urban), school management system (public/private), geographic altitude, and percentage of households with unmet basic needs (UBN) in the place where they attend school. Multiple proportions contrast was performed using Fisher's test, a transition matrix ws produced and a statistical model of proportional odds was fitted. It was observed that between 2019 and 2021, the prevalence of underweight decreased and the prevalence of overweight and obesity increased significantly. In 2021, 67% of schoolchildren maintained the same nutritional category that they had in 2019, 21% gained weight and 12% lost weight. The model explains about 52% of the total variability observed. The factors that are significantly correlated in the model are school cycle, age, geographic altitude, school setting, and % of households with UBN. The results indicate that during the COVID-19 pandemic, there was a shift to the right in the distribution of the nutritional status categories of the schoolchildren population in Jujuy, with a decrease in the prevalence of underweight and an increase in the prevalence of overweight and obesity with variations related to age, school location, geographic altitude, and socioeconomic characteristics of the households in the place where the children attended school.

Type
Research Article
Copyright
© The Author(s), 2024. Published by Cambridge University Press

Introduction

The prevalence of obesity has been increasing in recent decades, reaching pandemic levels in all age groups in all countries and constituting a health challenge for both developed and developing countries (Blüher, Reference Blüher2019). Studies on the prevalence, geospatial distribution, and secular trend of obesity carried out in schoolchildren from Jujuy indicate a dramatic increase and a differential regional distribution according to altitudinal level, with a higher prevalence in the lowlands of Jujuy (Bejarano et al., Reference Bejarano, Dipierri, Alfaro, Quispe and Cabrera2005; Bustamante et al., Reference Bustamante, Alfaro, Dipierri and Román2021; Meyer et al., Reference Meyer, Carrillo, Román, Bejarano and Dipierri2013).

The coronavirus disease 2019 (COVID-19) pandemic was declared by the World Health Organization (WHO) on 11 March 2020 (WHO, 2020). The first confirmed case of COVID-19 in Jujuy was registered on 17 March 2020. In order to mitigate the spread of the virus and reduce the pressure on the healthcare system in Argentina, preventive and mandatory social confinement (ASPO, Aislamiento Social Preventivo y Obligatorio) was decreed on 19 March 2020 (Gobierno de la República Argentina, 2020). This situation entailed health, social, and economic implications. Rundle et al. (Reference Rundle, Park, Herbstman, Kinsey and Wang2020) consider that school closures due to COVID-19 may exacerbate the epidemic of childhood obesity and increase disparities in obesity risk. Moreover, previous studies show that schoolchildren tend to gain more weight when they do not attend school, which raised further concerns in this context (Pietrobelli et al., Reference Pietrobelli, Pecoraro, Ferruzzi, Heo, Faith, Zoller, Antoniazzi, Piacentini, Fearnbach and Heymsfield2020; Rundle et al., Reference Rundle, Park, Herbstman, Kinsey and Wang2020). Unhealthy weight gain in this stage is a long-term concern because multiple studies show that obesity experienced in childhood is associated with higher weight in adulthood (Rundle et al., Reference Rundle, Park, Herbstman, Kinsey and Wang2020).

Obesity, especially severe and visceral obesity, has been recognised as a strong determinant of severe disease from COVID-19, increasing the risk of hospitalisation, intensive care, need for mechanical ventilation, and death, both in adults and in child and adolescent populations (Brambilla et al., Reference Brambilla, Delle Cave, Guarracino, De Filippo, Votto, Licari, Pistone and Tondina2022; Stefan et al., Reference Stefan, Birkenfeld and Schulze2021). Thus, there is a link and interconnection between the COVID-19 pandemic and the obesity pandemic (Guarisco and Leonetti, Reference Guarisco and Leonetti2021; Stefan et al., Reference Stefan, Birkenfeld and Schulze2021).

As a result of ASPO, there were changes in the lifestyles of individuals, especially in terms of diet and physical activity (Ruiz-Roso et al., Reference Ruiz-Roso, De Carvalho Padilha, Mantilla-Escalante, Ulloa, Brun, Acevedo-Correa, Arantes Ferreira Peres, Martorell, Aires, De Oliveira Cardoso, Carrasco-Marín, Paternina-Sierra, Rodriguez-Meza, Montero, Bernabè, Pauletto, Taci, Visioli and Dávalos2020; Stavridou et al., Reference Stavridou, Kapsali, Panagouli, Thirios, Polychronis, Bacopoulou, Psaltopoulou, Tsolia, Sergentanis and Tsitsika2021). Different study designs have analysed the relationship between the two epidemics in terms of changes in physical activity, eating behaviour, and body weight (Stavridou et al., Reference Stavridou, Kapsali, Panagouli, Thirios, Polychronis, Bacopoulou, Psaltopoulou, Tsolia, Sergentanis and Tsitsika2021). Longitudinal studies with a before and after pandemic model focus mainly on changes in physical activity and eating habits (Enriquez-Martinez et al., Reference Enriquez-Martinez, Martins, Pereira, Pacheco, Pacheco, Lopez, Huancahuire-Vega, Silva, Mora-Urda, Rodriguez-Vásquez, Montero López and Molina2021; Stavridou et al., Reference Stavridou, Kapsali, Panagouli, Thirios, Polychronis, Bacopoulou, Psaltopoulou, Tsolia, Sergentanis and Tsitsika2021). Those that emphasise changes in weight or other indicators of obesity based on anthropometry are scarce and, in general, only consider self-reported weight and height (Dunton et al., Reference Dunton, Do and Wang2020; Lange et al., Reference Lange, Kompaniyets, Freedman, Kraus, Porter, Blanck and Goodman2021; Pietrobelli et al., Reference Pietrobelli, Pecoraro, Ferruzzi, Heo, Faith, Zoller, Antoniazzi, Piacentini, Fearnbach and Heymsfield2020; Yang et al., Reference Yang, Guo, Ao, Yang, Zhang, Zhou and Jia2020).

As in other countries, the studies published in relation to the changes that occurred in the lifestyle and health of the population after the COVID-19 pandemic and ASPO in Argentina focused on changes in eating habits and physical activity and not on the impact on the prevalence of malnutrition including first-hand longitudinal data (Intelangelo et al., Reference Intelangelo, Molina Gutiérrez, Bevacqua, Mendoza, Guzmán-Guzmán and Jerez-Mayorga2021). In this study, the authors analyse the modification of the prevalence of different nutritional phenotypes, due to both excess and lack of weight, in schoolchildren from Jujuy in relation to ASPO as a result of the COVID-19 pandemic and its relationship with other socio-demographic variables using the anthropometric data provided by the Sistema Integral de Información Digital Educativa (SInIDE).

Methods

Study design

In this pre- and peri-lockdown observational study, the authors analyse data from schoolchildren from primary and secondary levels of the province of Jujuy registered in SInIDE for two time periods, the year before (2019) and the year after (2021) the lockdown, with anthropometric measurements reported in both school years and taken by trained personnel.

The SInIDE of the Ministry of Education of the Argentine Republic (https://sinide.educacion.gob.ar/) is a nominal information system that collects information on different variables in all educational establishments of the country. In the province of Jujuy, anthropometric data of students surveyed during the school year is added to the original data provided by SInIDE. The anthropometric data collection (weight and height) was conducted at the school and carried out by physical education teachers with the assistance of grade-level teachers, using the instruments available in the institution, following the protocol established by the Secretaría de Equidad Educativa, Plan de Contingencia y Comedores Escolares of the Ministry of Education (Circular No. 05-SEE/21). The teacher in charge of the measurements may have varied from one measurement to another, as there are changes in the personnel responsible for taking them from one year to another.

The province of Jujuy is located in the northwest of Argentina, and due to its location on the Andean massif, it presents an altitudinal cline (500–4000 masl) that allows the delimitation of two clearly defined altitudinal levels: highlands (H) (>2000 masl) and lowlands (L) (<2000 masl).

For this study, in order to show variations in nutritional status during the study period, only those schoolchildren between 6 and 18 years of age who were recorded in both time periods were considered. In addition, the authors excluded those schoolchildren whose age in 2021 was less than or equal to that of 2019, whose height in 2021 was less than that of 2019, and whose age was less than 6 years or more than 18 years old. In the second stage, the body mass index (BMI, weight/height2) was calculated based on the data of weight (kg) and height (m), and the extreme values of the z score (±3) of the BMI were eliminated by age and sex, generated by AnthroPlus (Figure 1).

Figure 1. Flow Chart Showing the Database Depuration Process.

Based on BMI for age and sex, the nutritional phenotype of each individual was determined, considering the cut-off points proposed by the International Obesity Task Force which are equivalent to those proposed for adults: (a) underweight (≤18.5 kg/m2), (b) overweight (≥24.9 and <30 kg/m2) and (c) obesity (≥30 kg/m2) (Cole et al., Reference Cole, Bellizzi, Flegal and Dietz2000, Reference Cole, Flegal, Nicholls and Jackson2007).

The independent variables were (a) sex: female or male; (b) age divided into three groups of 6–9, 10–14, and 15–18 years old; (c) geographic altitude deduced from the geographic coordinates of the school and grouped in highlands or lowlands; (d) school management system: state or private; (e) school setting: urban or rural; and (f) percentage of households with unmet basic needs (%hUBN), a direct indicator of poverty developed by INDEC (Instituto Nacional de Estadística y Censos) which is related to four areas of people’s basic needs (housing, sanitation, basic education, and minimum income) recorded in population and housing censuses (Feres and Mancero, Reference Feres and Mancero2001). The %hNBI was inferred from the UBN of the census radius where the school was located.

The data were divided into two groups: (a) data recorded in SInIDE in 2019 – pre-ASPO by COVID-19 pandemic and (b) data recorded in 2021 – post-ASPO by COVID-19.

Statistical analysis

The prevalence of each nutritional phenotype was calculated using different grouping criteria for the 2019 and 2021 school cycles. To compare the prevalence of the different nutritional phenotypes before and after the COVID pandemic, the authors used multiple proportions contrast through Fisher’s exact test at the provincial level disaggregated by the independent variables.

Given that the data for 2019 and 2021 correspond to the same individuals, a transition matrix analysis was carried out between nutritional status categories during the period analysed to show whether there was an increase or decrease in weight among schoolchildren during the ASPO.

To examine associations between nutritional status and the independent variables, a proportional odds model was fitted for ordinal polytomous variables. The coefficients of β were estimated for the independent variables. The model was fitted with the vglm() function of the VGAM library of the R software. Fisher’s exact test of contrasts of proportions was performed using the fisher.test() function of R. Data manipulation and analysis were performed with the functions of the Tidyverse libraries of R.

Bioethical considerations

The use and dissemination of SInIDE information safeguard the identity of individuals and educational institutions in agreement with the provisions of National Education Law No. 2606 and Personal Data Protection Law No. 25326. For the analysis, the data were anonymized. This study follows the bioethical guidelines proposed by the Ministry of Health of Argentina (2011), which exempts epidemiological studies that use public or publicly available records or information from obtaining informed consent.

Results

The sample consisted of 56,695 schoolchildren, and the distribution by variables is shown in Table 1.

Table 1. Schoolchildren Distribution According to Sex, Age Group, Geographic Altitude, Setting, and School Management System for the Year 2021 in Jujuy (Argentina)

The prevalence of underweight decreased and that of excess weight increased significantly between 2019 and 2021. This pattern is also found when analysing the change according to the independent variables, except for the 15–18 age group and the type of private school system (Table 2).

Table 2. Distribution of Schoolchildren According to Malnutrition Category (Underweight, Overweight, Obesity) by Sex, Age Group, School Setting, School Management System, Geographic Altitude, and %hUBN Where the School Is Located for 2019 and 2021 (Jujuy, Argentina)

a P.value of Fisher’s exact test: ***p.v < 0.001, **0.001 ≤ p.v <0.01,

Empty cells indicate non-significant differences.

b The cut-off values correspond to the 1/3 and 2/3 quantiles of the complete series.

Table 3 shows that in 2021, 67% of schoolchildren maintained the same nutritional category they had in 2019, 21% gained weight, and 12% lost weight. Approximately 17.5% of schoolchildren who were lean, normal weight, or overweight in 2019 moved to an overweight or obese category in 2021.

Table 3. Distribution of Jujuy Schoolchildren According to Their Transition Between Nutritional Status Categories from 2019 to 2021 According to IOTF Criteria

The adjusted multinomial model explained about 52% of the total variability observed (Table 4). The factors that were significantly correlated in the model were school cycle, age, school setting, geographic altitude, and %UBN. Regarding the school cycle, it was observed that the possibility of presenting an ‘overweight’ nutritional category was significantly higher in 2021 with respect to 2019. In turn, in the age group from 10 to 14 years of age, there was a higher chance in the direction of excess weight, in opposition to the age group from 15 to 18 years of age, where it was in the direction of underweight, in relation to schoolchildren aged 6–9 years. Regarding school setting and geographic altitude, urban and lowland schoolchildren were more likely to present a nutritional category in the direction of excess weight, compared with rural and highland schoolchildren, respectively. Finally, when considering the %hUBN of the place where they attended school, it was observed that the higher the value, the greater the chance of presenting a nutritional situation in the direction of underweight, which confirms what was previously evidenced in the bivariate analysis.

Table 4. Coefficients of the Cumulative Model for Ordinal Polytomous Data and P-Values of the Deviance χ2 Test Associated with Each Factor

***p.v < 0.001.

Discussion

This research is in agreement with several previous studies that show that after the social confinement caused by the COVID-19 pandemic, the prevalence of malnutrition has changed (Chaabane et al., Reference Chaabane, Doraiswamy, Chaabna, Mamtani and Cheema2021; Dunton et al., Reference Dunton, Do and Wang2020; Hu et al., Reference Hu, Liu, Wang, Shen, Ge, Shen, Zhang, Yang and Yin2021; Lange et al., Reference Lange, Kompaniyets, Freedman, Kraus, Porter, Blanck and Goodman2021; Pietrobelli et al., Reference Pietrobelli, Pecoraro, Ferruzzi, Heo, Faith, Zoller, Antoniazzi, Piacentini, Fearnbach and Heymsfield2020; Wen et al., Reference Wen, Zhu and Ji2021; Yang et al., Reference Yang, Guo, Ao, Yang, Zhang, Zhou and Jia2020). In this particular case, the sample analysed is representative of the Jujuy school population and comes from information collected from 607 schools distributed in an altitudinal gradient that characterises the orography of the province of Jujuy. The results show that the prevalence of underweight among Jujuy schoolchildren decreased by 1.15 percentage points, while the prevalence of overweight and obesity increased by 4.25 and 2.3 percentage points, respectively. These variations in weight and nutritional status may be due to various factors linked to confinement, including decreased physical activity, changes in eating habits, and family context, among others. Pietrobelli et al. (Reference Pietrobelli, Pecoraro, Ferruzzi, Heo, Faith, Zoller, Antoniazzi, Piacentini, Fearnbach and Heymsfield2020) found that aspects related to diet, activity, and sleep behaviours changed in an unfavourable direction in children and adolescents with obesity three weeks into confinement during the lockdown. In addition, several studies reported variations in weight in the direction of excess weight during summer vacations, so it is to be expected that children and adolescents who spend more time at home during these seasons will gain weight, such as in confinement (Rundle et al., Reference Rundle, Park, Herbstman, Kinsey and Wang2020; von Hippel and Workman, Reference von Hippel and Workman2016).

Bivariate analysis indicated that the only cases where the prevalence of malnutrition did not vary significantly between periods were in the 15–18 age group and in those attending a private school. Previous studies indicate that the younger the age group, the greater the increase in BMI and the higher the prevalence of overweight and obesity (Stavridou et al., Reference Stavridou, Kapsali, Panagouli, Thirios, Polychronis, Bacopoulou, Psaltopoulou, Tsolia, Sergentanis and Tsitsika2021; Yang et al., Reference Yang, Guo, Ao, Yang, Zhang, Zhou and Jia2020). These age differences can probably be attributed to the possibility of maintaining pre-pandemic lifestyles, particularly those related to physical activity. In the USA, older versus younger children were more likely to participate in team sports training sessions or practices via remote or streaming services (Stavridou et al., Reference Stavridou, Kapsali, Panagouli, Thirios, Polychronis, Bacopoulou, Psaltopoulou, Tsolia, Sergentanis and Tsitsika2021).

In state-run schools, the increase in the prevalence of overweight and obesity was 4.51 percentage points and 2.56 percentage points, respectively, while in private schools, the prevalence was 2.62 and 0.37 percentage points, respectively. In Argentina, there is a significant socio-economic gap between public and private schools according to family socio-economic level (goods and services in the home and parental education) (Dari et al., Reference Dari, Quiroz and Cervini2022). Although information on the socio-economic characteristics of school populations examined in relation to changes in eating behaviours and physical activity imposed by confinement is scarce (Stavridou et al., Reference Stavridou, Kapsali, Panagouli, Thirios, Polychronis, Bacopoulou, Psaltopoulou, Tsolia, Sergentanis and Tsitsika2021), it is possible to deduce that families with better socio-economic status would have greater advantages in obtaining healthier foods and more adequate spaces to foster the continuity of their children’s physical activity at home.

As shown by other studies, the prevalence of overweight and obesity pre- and post-COVID-19 confinement in the school population of Jujuy was higher in males than in females (Knebusch et al., Reference Knebusch, Williams, Yordi Aguirre, Weber, Rakovac and Breda2021; Qiu et al., Reference Qiu, He, Qiao, Ding, Ji, Guo, Luo, Luo, Li, Pang, Huang and Zhang2021; Yang et al., Reference Yang, Guo, Ao, Yang, Zhang, Zhou and Jia2020). The energy balance between energy intake (food and beverages) and energy expenditure (physical activity and sedentary behaviour) is an immediate determinant of childhood obesity and is influenced by sex and gender (Knebusch et al., Reference Knebusch, Williams, Yordi Aguirre, Weber, Rakovac and Breda2021). During the pandemic, differences were observed between males and females in diet type and physical activity. Females increased their consumption of fruits and vegetables, while males increased the number of meals and were more prone to engage in physical activity (Stavridou et al., Reference Stavridou, Kapsali, Panagouli, Thirios, Polychronis, Bacopoulou, Psaltopoulou, Tsolia, Sergentanis and Tsitsika2021).

Besides, in this study, other factors that could have had a differential effect on the variations observed in the prevalence of obesity were the setting where the school was located (rural/urban) and geographic altitude. Along these lines, a higher prevalence of overweight and obesity was observed in urban schoolchildren compared with rural schoolchildren, which may be related to the fact that urban children are probably more affected by social distancing and its consequences on dietary practices and, above all, physical activity. On the other hand, there are previous studies that reported that schoolchildren in the highlands present a higher prevalence of underweight and lower average height values and average BMI than those of the lowlands (Meyer et al., Reference Meyer, Carrillo, Román, Bejarano and Dipierri2013), which coincides with what was observed in this study where the prevalence of excess weight is lower in the highlands.

The socio-economic conditions of the environment where children attend school play a key role in the variations observed in the prevalence of these phenomena. In this case, it was observed that as the %hUBN increases, the prevalence of overweight and obesity decreases, in contrast to the information presented by Clemmensen et al. (Reference Clemmensen, Petersen and Sørensen2020), who describe a relationship between socio-economic status and obesity risk, in which an increase in social inequality driven by ASPO would translate into an increase in the prevalence of obesity and metabolic diseases in groups with lower socio-economic status.

Compared to other similar studies where the information came from online questionnaires, the strength of this study lies in the fact that the data, especially the anthropometric data, were collected in the schools without the specific purpose of being used to evaluate the effect of the ASPO on the nutritional status of schoolchildren. The main limitation of this study lies in the fact that it was not possible to use the totality of the SInIDE data due to the asynchrony between the load of the anthropometric data and the remaining variables in the system.

Furthermore, another limitation is the potential bias resulting from variations in measurement instruments, techniques, and personnel responsible for carrying it out between one measurement and another (2019 and 2021).

Finally, this study shows that measures such as the social confinement imposed by the COVID-19 pandemic would foster an unfavourable environment for the development and maintenance of a healthy lifestyle, especially in children and adolescents. Considering this, future measures should be rethought for contexts similar to the present in order to protect the integral health of these groups.

Conclusions

The use of anthropometric indicators of under- and overnutrition indicates there was a shift in the nutritional status of schoolchildren and adolescents in Jujuy during the COVID-19 pandemic, with a decrease in the prevalence of underweight and an increase in the prevalence of overweight and obesity with variations according to age, school location, geographic altitude, and socio-economic characteristics of the households.

Funding statement

This research received no specific grant from any funding agency, commercial entity, or not-for-profit organisation.

Competing interests

The authors have no conflicts of interest to declare.

Ethical standard

The authors assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional committees on human experimentation and with the Helsinki Declaration of 1975, as revised in 2008.

References

Bejarano, I, Dipierri, J, Alfaro, E, Quispe, Y and Cabrera, G (2005) Evolución de la prevalencia de sobrepeso, obesidad y desnutrición en escolares de San Salvador de Jujuy. Archivos argentinos de pediatría 103(2), 101109.Google Scholar
Blüher, M (2019) Obesity: Global epidemiology and pathogenesis. Nature Reviews Endocrinology 15(5), 288298. https://doi.org/10.1038/s41574-019-0176-8.CrossRefGoogle Scholar
Brambilla, I, Delle Cave, F, Guarracino, C, De Filippo, M, Votto, M, Licari, A, Pistone, C and Tondina, E (2022) Obesity and COVID-19 in children and adolescents: A double pandemic. Acta Biomedica Atenei Parmensis 93(S3), e2022195. https://doi.org/10.23750/abm.v93iS3.13075.Google ScholarPubMed
Bustamante, MJ, Alfaro, EL, Dipierri, JE and Román, MD (2021) Excess weight and thinness over two decades (1996–2015) and spatial distribution in children from Jujuy, Argentina. BMC Public Health 21(1), 196. https://doi.org/10.1186/s12889-021-10239-4.CrossRefGoogle ScholarPubMed
Chaabane, S, Doraiswamy, S, Chaabna, K, Mamtani, R and Cheema, S (2021) The impact of COVID-19 school closure on child and adolescent health: A rapid systematic review. Children 8(5), 415. https://doi.org/10.3390/children8050415.CrossRefGoogle ScholarPubMed
Clemmensen, C, Petersen, MB and Sørensen, TIA (2020) Will the COVID-19 pandemic worsen the obesity epidemic? Nature Reviews Endocrinology 16(9), 469470. https://doi.org/10.1038/s41574-020-0387-z.CrossRefGoogle ScholarPubMed
Cole, TJ, Bellizzi, MC, Flegal, KM and Dietz, WH (2000) Establishing a standard definition for child overweight and obesity worldwide: International survey. BMJ (Clinical Research Edition) 320(7244), 12401243. https://doi.org/10.1136/bmj.320.7244.1240.CrossRefGoogle Scholar
Cole, TJ, Flegal, KM, Nicholls, D and Jackson, AA (2007) Body mass index cut offs to define thinness in children and adolescents: International survey. BMJ 335(7612), 194. https://doi.org/10.1136/bmj.39238.399444.55.CrossRefGoogle ScholarPubMed
Dari, NL, Quiroz, SS and Cervini, RA (2022) Nivel socioeconómico y brecha entre los logros educativos de los sectores público y privado en Argentina. PISA 2018: Array. ESPACIOS EN BLANCO. Serie Indagaciones 2(32), Article 32. https://doi.org/10.37177/UNICEN/EB32-335.CrossRefGoogle Scholar
Dunton, GF, Do, B and Wang, SD (2020) Early effects of the COVID-19 pandemic on physical activity and sedentary behavior in children living in the U.S. BMC Public Health 20(1), 1351. https://doi.org/10.1186/s12889-020-09429-3.CrossRefGoogle ScholarPubMed
Enriquez-Martinez, OG, Martins, MCT, Pereira, TSS, Pacheco, SOS, Pacheco, FJ, Lopez, KV, Huancahuire-Vega, S, Silva, DA, Mora-Urda, AI, Rodriguez-Vásquez, M, Montero López, MP and Molina, MCB (2021) Diet and lifestyle changes during the COVID-19 pandemic in Ibero-American Countries: Argentina, Brazil, Mexico, Peru, and Spain. Frontiers in Nutrition 8, 671004. https://doi.org/10.3389/fnut.2021.671004.CrossRefGoogle ScholarPubMed
Feres, JC and Mancero, X (2001) El método de las necesidades basicas insatisfechas. En CEPAL, El método de las necesidades básicas insatisfechas (NBI) y sus aplicaciones en América Latina (p. 53). Comisión Económica para América Latina y el Caribe. https://www.cepal.org/es/publicaciones/4784-metodo-necesidades-basicas-insatisfechas-nbi-sus-aplicaciones-america-latina (accessed 20 September 2023).Google Scholar
Gobierno de la República Argentina (2020) Aislamiento social preventivo y obligatorio (decreto 297/2020). Legislación y Avisos Oficiales. 2020, Marzo 20. https://www.boletinoficial.gob.ar/detalleAviso/primera/227042/20200320 (accessed 20 September 2023).Google Scholar
Guarisco, G and Leonetti, F (2021) COVID-19 and diabesity: When a pandemia cross another pandemia. Eating and Weight Disorders - Studies on Anorexia, Bulimia and Obesity 26(5), 12831286. https://doi.org/10.1007/s40519-020-00958-9.CrossRefGoogle Scholar
Hu, J, Liu, J, Wang, J, Shen, M, Ge, W, Shen, H, Zhang, T, Yang, H and Yin, J (2021) Unfavorable progression of obesity in children and adolescents due to COVID-19 pandemic: A school-based survey in China. Obesity 29(11), 19071915. https://doi.org/10.1002/oby.23276.CrossRefGoogle ScholarPubMed
Intelangelo, L, Molina Gutiérrez, N, Bevacqua, N, Mendoza, C, Guzmán-Guzmán, IP and Jerez-Mayorga, D (2021) Effect of confinement by COVID-19 on the lifestyle of the University Population of Argentina: Evaluation of physical activity, food and sleep (Efecto del confinamiento por COVID-19 sobre el estilo de vida en población universitaria de Argentina: Evaluaci. Retos 43, 274282. https://doi.org/10.47197/retos.v43i0.88461.CrossRefGoogle Scholar
Knebusch, V, Williams, J, Yordi Aguirre, I, Weber, MW, Rakovac, I and Breda, J (2021) Effects of the coronavirus disease 2019 pandemic and the policy response on childhood obesity risk factors: Gender and sex differences and recommendations for research. Obesity Reviews: An Official Journal of the International Association for the Study of Obesity 22(6), e13222. https://doi.org/10.1111/obr.13222.CrossRefGoogle Scholar
Lange, SJ, Kompaniyets, L, Freedman, DS, Kraus, EM, Porter, R, Blanck, HM and Goodman, AB (2021) Longitudinal trends in Body Mass Index before and during the COVID-19 pandemic among persons aged 2–19 years—United States, 2018–2020. MMWR Morbidity and Mortality Weekly Report 70(37), 12781283. https://doi.org/10.15585/mmwr.mm7037a3.CrossRefGoogle ScholarPubMed
Meyer, E, Carrillo, R, Román, EM, Bejarano, I and Dipierri, J (2013) Prevalencia de sobrepeso y obesidad en escolares jujeños de diferente nivel altitudinal según las referencias IOTF, CDC y OMS. Archivos Argentinos de Pediatria 111(6), 516522. https://doi.org/10.5546/aap.2013.516.Google Scholar
Pietrobelli, A, Pecoraro, L, Ferruzzi, A, Heo, M, Faith, M, Zoller, T, Antoniazzi, F, Piacentini, G, Fearnbach, SN and Heymsfield, SB (2020) Effects of COVID-19 lockdown on lifestyle behaviors in children with obesity living in Verona, Italy: A longitudinal study. Obesity 28(8), 13821385. https://doi.org/10.1002/oby.22861.CrossRefGoogle ScholarPubMed
Qiu, N, He, H, Qiao, L, Ding, Y, Ji, S, Guo, X, Luo, J, Luo, Z, Li, Y, Pang, H, Huang, Y and Zhang, L (2021) Sex differences in changes in BMI and blood pressure in Chinese school-aged children during the COVID-19 quarantine. International Journal of Obesity 45(9), 21322136. https://doi.org/10.1038/s41366-021-00871-w.CrossRefGoogle ScholarPubMed
Ruiz-Roso, MB, De Carvalho Padilha, P, Mantilla-Escalante, DC, Ulloa, N, Brun, P, Acevedo-Correa, D, Arantes Ferreira Peres, W, Martorell, M, Aires, MT, De Oliveira Cardoso, L, Carrasco-Marín, F, Paternina-Sierra, K, Rodriguez-Meza, JE, Montero, PM, Bernabè, G, Pauletto, A, Taci, X, Visioli, F and Dávalos, A (2020) Covid-19 confinement and changes of adolescent’s dietary trends in Italy, Spain, Chile, Colombia and Brazil. Nutrients 12(6), 1807. https://doi.org/10.3390/nu12061807.CrossRefGoogle ScholarPubMed
Rundle, AG, Park, Y, Herbstman, JB, Kinsey, EW and Wang, YC (2020) COVID-19–related school closings and risk of weight gain among children. Obesity 28(6), 10081009. https://doi.org/10.1002/oby.22813.CrossRefGoogle ScholarPubMed
Stavridou, A, Kapsali, E, Panagouli, E, Thirios, A, Polychronis, K, Bacopoulou, F, Psaltopoulou, T, Tsolia, M, Sergentanis, TN and Tsitsika, A (2021) Obesity in children and adolescents during COVID-19 pandemic. Children 8(2), 135. https://doi.org/10.3390/children8020135.CrossRefGoogle ScholarPubMed
Stefan, N, Birkenfeld, AL and Schulze, MB (2021) Global pandemics interconnected—obesity, impaired metabolic health and COVID-19. Nature Reviews Endocrinology 17(3), 135149. https://doi.org/10.1038/s41574-020-00462-1.CrossRefGoogle ScholarPubMed
von Hippel, PT and Workman, J (2016) From kindergarten through second grade, U.S. children’s obesity prevalence grows only during summer vacations. Obesity 24(11), 22962300. https://doi.org/10.1002/oby.21613.CrossRefGoogle ScholarPubMed
Wen, J, Zhu, L and Ji, C (2021) Changes in weight and height among Chinese preschool children during COVID-19 school closures. International Journal of Obesity 45(10), 22692273. https://doi.org/10.1038/s41366-021-00912-4.CrossRefGoogle ScholarPubMed
WHO (2020) Announces COVID-19 Outbreak a Pandemic. https://www.who.int/europe/emergencies/situations/covid-19 (accessed 20 September 2023).Google Scholar
Yang, S, Guo, B, Ao, L, Yang, C, Zhang, L, Zhou, J and Jia, P (2020) Obesity and activity patterns before and during COVID-19 lockdown among youths in China. Clinical Obesity 10(6), e12416. https://doi.org/10.1111/cob.12416.CrossRefGoogle ScholarPubMed
Figure 0

Figure 1. Flow Chart Showing the Database Depuration Process.

Figure 1

Table 1. Schoolchildren Distribution According to Sex, Age Group, Geographic Altitude, Setting, and School Management System for the Year 2021 in Jujuy (Argentina)

Figure 2

Table 2. Distribution of Schoolchildren According to Malnutrition Category (Underweight, Overweight, Obesity) by Sex, Age Group, School Setting, School Management System, Geographic Altitude, and %hUBN Where the School Is Located for 2019 and 2021 (Jujuy, Argentina)

Figure 3

Table 3. Distribution of Jujuy Schoolchildren According to Their Transition Between Nutritional Status Categories from 2019 to 2021 According to IOTF Criteria

Figure 4

Table 4. Coefficients of the Cumulative Model for Ordinal Polytomous Data and P-Values of the Deviance χ2 Test Associated with Each Factor