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Prevalence of abdominal obesity in adolescents: association between sociodemographic factors and lifestyle

Abstract

Objective:

To estimate the prevalence of abdominal obesity and verify the association with sociodemographic factors (gender, school shift, ethnicity, age, maternal education and economic status) and lifestyle (alcohol consumption, sleep, soft drink consumption, level of physical activity and sedentary behavior) in adolescents in Southern Brazil.

Methods:

This was a cross-sectional epidemiological study of 930 adolescents (490 girls) aged 14–19 years, living in the city of São José, SC, Brazil. A self-administered questionnaire was used to collect sociodemographic and lifestyle data. Abdominal obesity was measured through the waist circumference and analyzed according to gender and age. Descriptive statistics (absolute and relative frequency, mean and standard deviation) and binary logistic regression, expressed as Odds Ratios (OR) and 95% confidence interval (95%CI) were employed, with p<0.05 being considered statistically significant; the SPSS 17.0 software was used for the statistical analyses.

Results:

The prevalence of abdominal obesity was 10.6% for the total sample (10.5% male, 10.8% female). Adolescents that watched television daily for two or more hours (OR=2.11, 95%CI 1.08–4.13) had a higher chance of having abdominal obesity and adolescents whose mothers had fewer than eight years of schooling (OR=0.56; 95%CI from 0.35 to 0.91) had a lower chance of having abdominal obesity.

Conclusions:

Approximately one in 10 adolescents had abdominal obesity; the associated factors were maternal schooling (≥8 years) and television screen time (≥2h/day).

KEYWORDS
Waist circumference; Lifestyle; Anthropometry; Epidemiology; Adolescent health; Public health

Resumo

Objetivo:

Estimar a prevalência de obesidade abdominal e verificar a associação com fatores sociodemográficos (sexo, turno de estudo, cor da pele, idade, escolaridade materna e nível econômico) e o estilo de vida (consumo de álcool, sono, consumo de refrigerante, nível de atividade física e comportamento sedentário) em adolescentes do Sul do Brasil.

Métodos:

Estudo epidemiológico descritivo transversal, feito com 930 adolescentes (490 do sexo feminino) de 14-19 anos de São José, SC, Brasil. Usou-se questionário autoadministrado para coletar dados sociodemográficos e do estilo de vida. A obesidade abdominal foi avaliada pelo perímetro da cintura e analisada de acordo com sexo e idade. Empregou-se estatística descritiva (frequência absoluta e relativa, média e desvio padrão) e regressão logística binária, expressa em odds ratio (OR) e intervalo de confiança de 95% (IC95%), foi significativo p<0,05 e usou-se o software SPSS 17.0.

Resultados:

A prevalência de obesidade abdominal foi de 10,6% para mostra total (10,5% masculino; 10,8% feminino). Adolescentes que assistiam à televisão diariamente por duas ou mais horas (OR=2,11; IC95% 1,08-4,13) apresentaram maiores chances de obesidade abdominal e os adolescentes cujas mães tinham escolaridade inferior a oito anos (OR=0,56; IC95% 0,35-0,91) tiveram menor chance de obesidade abdominal.

Conclusões:

Aproximadamente um a cada 10 adolescentes apresentou obesidade abdominal, os fatores associados foram a escolaridade materna (≥8 anos) e o tempo de tela de televisão (≥2 horas/dia).

PALAVRAS-CHAVE
Circunferência da cintura; Estilo de vida; Antropometria; Epidemiologia; Saúde do adolescente; Saúde pública

Introduction

Abdominal fat accumulation in adolescents is an independent risk factor for chronic disease, such as hypertension, fatty liver, insulin resistance, and type II diabetes,11 Park J, Hilmers DC, Mendoza JA, Stuff JE, Liu Y, Nicklas TA. Prevalence of metabolic syndrome and obesity in adolescents aged 12 to 19 years: comparison between the United States and Korea. J Kor Med Sci. 2010;25:75-82.,22 He F, Rodriguez-Colon S, Fernandez-Mendoza J, Vgontzas AN, Bixler EO, Berg A, et al. Abdominal obesity and metabolic syndrome burden in adolescents - Penn State Children Cohort study. J Clin Densitom. 2015;18:30-36. as well association with metabolic syndrome in adolescence and adulthood.22 He F, Rodriguez-Colon S, Fernandez-Mendoza J, Vgontzas AN, Bixler EO, Berg A, et al. Abdominal obesity and metabolic syndrome burden in adolescents - Penn State Children Cohort study. J Clin Densitom. 2015;18:30-36. Waist circumference (WC) is one way to assess abdominal obesity (AO), described as an anthropometric indicator of easy applicability and accuracy.33 Taylor RW, Jones IE, Williams SM, Goulding A. Evaluation of waist circumference, waist-to-hip ratio, and the conicity index as screening tools for high trunk fat mass, as measured by dual-energy X-ray absorptiometry, in children aged 3-19 y. Am J Clin Nutr. 2000;72:490-495.

The literature reports different prevalence of AO, which shows differences and/or cultural and social similarities.44 De Moraes AC, Fadoni RP, Ricardi LM, Souza TC, Rosaneli CF, Nakashima AT, et al. Prevalence of abdominal obesity in adolescents: a systematic review. Obes Rev. 2011;12:69-77. Park et al.11 Park J, Hilmers DC, Mendoza JA, Stuff JE, Liu Y, Nicklas TA. Prevalence of metabolic syndrome and obesity in adolescents aged 12 to 19 years: comparison between the United States and Korea. J Kor Med Sci. 2010;25:75-82. found difference in prevalence of AO when comparing adolescents aged 12-19 years in the United States and South Korea (34.7% and 8.4%, respectively). Schröder et al.55 Schroder H, Ribas L, Koebnick C, Funtikova A, Gomez SF, Fito M, et al. Prevalence of abdominal obesity in Spanish children and adolescents. Do we need waist circumference measurements in pediatric practice?. PLoS One. 2014;9:e87549. described AO prevalence of 11.6% when investigating Spanish adolescents aged 12-17 years. These differences in AO prevalence are also seen in Brazil. A study conducted with adolescents from Maranhão (Northeast region) showed a prevalence of 22.7%.66 Nascimento-Ferreira MV, De Moraes AC, Carvalho HB, Moreno LA, Gomes Carneiro AL, Dos Reis VM, et al. Prevalence of cardiovascular risk factors, the association with socioeconomic variables in adolescents from low-income region. Nutr Hosp. 2014;31:217-224. Silva et al.77 Silva DA, Pelegrini A, Silva AF, Grigollo LR, Petroski EL. Abdominal obesity and associated factors among adolescents: comparison of two economically different Brazilian regions. Arq Bras Endocrinol Metabol. 2012;56:291-299. in a study with 1065 adolescents (aged 14-17 years) found 2.1% of AO prevalence in the Southeast region (Minas Gerais) and 6.3% in the South region (Santa Catarina). Also in the South region, studies performed in Curitiba88 Bozza R, de Campos W, Bacil ED, Barbosa Filho VC, Hardt JM, da Silva PM. Sociodemographic and behavioral factors associated with body adiposity in adolescents. Rev Paul Pediatr. 2014;32:241-246. and Saudades99 Glaner MF, Pelegrini A, Cordoba CO, Pozzobon ME. Associação entre insatisfação com a imagem corporal e indicadores antropométricos em adolescentes. Rev Bras Educ Fis Esporte. 2013;27:129-136. found AO prevalence of 12.2% and 13.3% in adolescents, respectively.

Evidence of AO association with sociodemographic factors and lifestyle are still unclear. Although it is seen that female adolescents have higher percentages of body fat,1010 Taylor RW, Grant AM, Williams SM, Goulding A. Sex differences in regional body fat distribution from pre- to postpuberty. Obesity (Silver Spring). 2010;18:1410-1416. there is a tendency in the literature to describe higher prevalence of AO in males,55 Schroder H, Ribas L, Koebnick C, Funtikova A, Gomez SF, Fito M, et al. Prevalence of abdominal obesity in Spanish children and adolescents. Do we need waist circumference measurements in pediatric practice?. PLoS One. 2014;9:e87549.,77 Silva DA, Pelegrini A, Silva AF, Grigollo LR, Petroski EL. Abdominal obesity and associated factors among adolescents: comparison of two economically different Brazilian regions. Arq Bras Endocrinol Metabol. 2012;56:291-299.,88 Bozza R, de Campos W, Bacil ED, Barbosa Filho VC, Hardt JM, da Silva PM. Sociodemographic and behavioral factors associated with body adiposity in adolescents. Rev Paul Pediatr. 2014;32:241-246. but there is no consensus on the relationship between AO and sex in adolescents.44 De Moraes AC, Fadoni RP, Ricardi LM, Souza TC, Rosaneli CF, Nakashima AT, et al. Prevalence of abdominal obesity in adolescents: a systematic review. Obes Rev. 2011;12:69-77. There are also discrepancies in the findings regarding the economic level, with studies showing a higher prevalence of AO in countries with higher economic levels,44 De Moraes AC, Fadoni RP, Ricardi LM, Souza TC, Rosaneli CF, Nakashima AT, et al. Prevalence of abdominal obesity in adolescents: a systematic review. Obes Rev. 2011;12:69-77. at the same time that investigations in regions with lower economic levels also showed a high prevalence of AO.77 Silva DA, Pelegrini A, Silva AF, Grigollo LR, Petroski EL. Abdominal obesity and associated factors among adolescents: comparison of two economically different Brazilian regions. Arq Bras Endocrinol Metabol. 2012;56:291-299.,88 Bozza R, de Campos W, Bacil ED, Barbosa Filho VC, Hardt JM, da Silva PM. Sociodemographic and behavioral factors associated with body adiposity in adolescents. Rev Paul Pediatr. 2014;32:241-246. Researches that found excessive consumption of soft drinks in adolescents found no association with AO,1111 Moraes AC, Falcao MC. Lifestyle factors and socioeconomic variables associated with abdominal obesity in Brazilian adolescents. Ann Hum Biol. 2013;40:1-8.,1212 Gómez-Martínez S, Martínez-Gómez D, Perez de Heredia F, Romeo J, Cuenca-Garcia M, Martin-Matillas M, et al. Eating habits and total and abdominal fat in Spanish adolescents: influence of physical activity. J Aadolesc Health. 2012;50:403-409. even knowing that inadequate diets and high sugar intake are associated with higher prevalence of AO.

Taking into account that AO entails risks to the health of adolescents and implications throughout life and that the possible combinations of AO with sociodemographic factors and lifestyle are not yet clear, the prevalence of AO in adolescents and possible associated factors should be investigated. The aim of this study was to estimate AO prevalence and its association with sociodemographic factors and lifestyle among adolescents in a city in the South region of Brazil.

Method

The population of this epidemiological, cross-sectional study was composed of adolescents, aged 14-19 years, enrolled in high school in São José, Santa Catarina, Brazil. This study was approved by the Institutional Review Board of the Federal University of Santa Catarina (CAAE: 33210414.3.0000.0121).

The sample was determined in two stages: stratified by state public high schools (according to the number of students per school) and conglomerate classes, considering school shift and school grade. To determine the sample size, we followed the procedures suggested by Luiz and Magnanini,1313 Luiz RR, Magnanini MM. A lógica da determinação do tamanho da amostra em investigações epidemiológicas. Cad Saude Colet. 2000;8:9-28. from the finite population. A population of 5182 students in 11 eligible schools and 170 classes distributed in high school grades (74.8% of the students attended day classes) was considered. We adopted a confidence level of 1.96 (95% confidence interval), tolerance error of 5%, 50% prevalence, and design effect of 1.5.1313 Luiz RR, Magnanini MM. A lógica da determinação do tamanho da amostra em investigações epidemiológicas. Cad Saude Colet. 2000;8:9-28. We added 20% to minimize possible losses and refusals and another 20% to control for possible confounding variables in association studies.1414 Kuhnen M, Boing AF, Longo GZ, Njaine K. Tabagismo e fatores associados em adultos: um estudo de base populacional. Rev Bras Epidemiol. 2009;12:615-626. With these parameters, the required sample size was 751 students. Adolescents of both sexes, aged 14-19 years, attending public high schools of the City of São José, SC, Brazil, were eligible for the study. Pregnant adolescents, those who had children in the past six months, adolescents who did not give informed consent signed by parents (age <18 years) or by themselves (age ≥18 years), refused to participate, and those with physical disabilities that prevent the performance of the physical macroproject tests were not evaluated. After class conglomerate process in which all students in selected classes were collected and met the eligibility criteria, the total sample consisted of 1132 students.

Anthropometric measurements and understanding of the questionnaire were pretested, and a pilot study was conducted in July 2014 in Paulo Lopes, SC, Brazil, with 84 high school students who agreed to participate. Data collection in San Jose, SC, Brazil, was made from August to November 2014. To this end, seven post-graduate and four graduate students in physical education were selected, three of them had level 1 certification from the International Society for the Advancement of Kinanthropometry and made the anthropometric measurement.

WC was measured at the narrowest portion of the trunk, between the lower costal margin and the iliac crest, with anthropometric measuring tape.33 Taylor RW, Jones IE, Williams SM, Goulding A. Evaluation of waist circumference, waist-to-hip ratio, and the conicity index as screening tools for high trunk fat mass, as measured by dual-energy X-ray absorptiometry, in children aged 3-19 y. Am J Clin Nutr. 2000;72:490-495. To classify adolescents with AO, the cutoff points proposed by Taylor et al.33 Taylor RW, Jones IE, Williams SM, Goulding A. Evaluation of waist circumference, waist-to-hip ratio, and the conicity index as screening tools for high trunk fat mass, as measured by dual-energy X-ray absorptiometry, in children aged 3-19 y. Am J Clin Nutr. 2000;72:490-495. were used, which defined as excess fat values with Z score ≥1. These cutoffs points are near the 85th percentile, considered cut-off point for overweight by body mass index.33 Taylor RW, Jones IE, Williams SM, Goulding A. Evaluation of waist circumference, waist-to-hip ratio, and the conicity index as screening tools for high trunk fat mass, as measured by dual-energy X-ray absorptiometry, in children aged 3-19 y. Am J Clin Nutr. 2000;72:490-495. Cutoffs points have been proposed according to age and sex (sensitivity and specificity values of 84% and 94% for female and 87% and 92% for male, respectively)33 Taylor RW, Jones IE, Williams SM, Goulding A. Evaluation of waist circumference, waist-to-hip ratio, and the conicity index as screening tools for high trunk fat mass, as measured by dual-energy X-ray absorptiometry, in children aged 3-19 y. Am J Clin Nutr. 2000;72:490-495. (Table 1).

Table 1
Description of variables, instrument of measurement/question and categorization.

A self-administered questionnaire was applied with questions related to sociodemographic variables (gender, skin color, age, maternal education, economic level, and school shift) and lifestyle (physical activity, alcohol consumption, soft drink consumption, sleep, and sedentary behavior) (Table 1).

Categories of skin color were collected in accordance with the recommendations of the Brazilian Institute of Geography and Statistics1515 World Health Organization [homepage on the Internet]. Handbook on health inequality monitoring with a special focus on low-and middle-income countries. Available from: http://www.who.int/gho/health_equity/handbook/en/ http://www.who.int/gho/health_equity/handbook/en/ [cited 28.07.15].
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and categorized in brown, black, yellow or red as a category, and white in another category.1515 World Health Organization [homepage on the Internet]. Handbook on health inequality monitoring with a special focus on low-and middle-income countries. Available from: http://www.who.int/gho/health_equity/handbook/en/ http://www.who.int/gho/health_equity/handbook/en/ [cited 28.07.15].
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Maternal education was categorized taking into account the average schooling of Brazilians (7.2 years),1616 United Nations [homepage on the Internet]. Human development report 2014. Sustaining human progress: reducing vulnerabilities and building resilience 2014. Available from: http://www.uy.undp.org/content/dam/undp/library/corporate/HDR/2014HDR/HDR-2014-English.pdf http://www.uy.undp.org/content/dam/undp/library/corporate/HDR/2014HDR/HDR-2014-English.pdf [cited 28.07.15].
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classified as low (<8 years) and high (≥8 years). Economic level was evaluated by household purchasing power. For this study the categories A and B were defined as high and the remaining as low.1717 Associação das Empresas de Pesquisa [homepage on the Internet]. Critério de Classificação Econômica Brasil 2014. Available from: http://www.abep.org/codigos-e-guias-da-abep http://www.abep.org/codigos-e-guias-da-abep [cited 28.07.15].
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To evaluate the consumption of alcohol and soft drinks and the level of physical activity (PA), questions of the Youth Risk Behavior Survey (YRBS) were used, translated and validated for Brazil.1818 Guedes DP, Lopes CC. Validação da versão brasileira do youth risk behavior survey. Rev Saude Publica. 2010;44:840-850. PA categorization took into account the evidence showing that 60min of PA five days per week is sufficient to maintain health in adolescence and higher amounts would provide additional benefits.1919 Tremblay MS, Leblanc AG, Janssen I, Kho ME, Hicks A, Murumets K, et al. Canadian sedentary behaviour guidelines for children and youth. Appl Physiol Nutr Metab. 2011;36:5-71. For alcohol consumption, subjects were categorized into "no" (those who did not consume in the last 30 days five or more alcoholic drinks in one occasion) and "yes" (those who consumed such dosage in one or more days in the last 30 days). For soft drink consumption, adolescents were classified as "no" (those who did not consume any time during the week) and "yes" (those who consumed one or more times during the week).

Sleep was evaluated for quality using the Fantastic Lifestyle questionnaire, translated and validated for Brazil.2020 Rodriguez Anez CR, Reis RS, Petroski EL. Brazilian version of a lifestyle questionnaire: translation and validation for young adults. Arq Bras Cardiol. 2008;91:92-98. Individuals who said they slept well "almost always" and "fairly often" were considered as good quality sleep (yes), while those who answered "almost never", "rarely", and "sometimes" were considered as poor quality sleep (no).

To assess sedentary behavior (SB) on weekdays and weekends, the 2-h cutoff point was used for each behavior, due to evidence of harm to the health of young people who have SB above that value.1919 Tremblay MS, Leblanc AG, Janssen I, Kho ME, Hicks A, Murumets K, et al. Canadian sedentary behaviour guidelines for children and youth. Appl Physiol Nutr Metab. 2011;36:5-71. When behaviors are added, the multiplication of the 2-h cutoff point by 2 is used (totaling 4h) for total display time.2121 De Moraes AC, Fernandes CAM, Elias RGM, Makashima ATA, Reichert FF, Falcão MC. Prevalência de inatividade física e fatores associados em adolescentes. Rev Assoc Med Bras. 2009;55:523-528.,2222 Da Silva KS, Nahas MV, Peres KG, Lopes Ada S. Factors associated with physical activity, sedentary behavior, and participation in physical education among high school students in Santa Catarina State, Brazil. Cad Saude Publica. 2009;25:2187-2200.

Travel to school was classified as active for those with energy expenditure in this traveling or passive for those who traveled by car without energy expenditure.2222 Da Silva KS, Nahas MV, Peres KG, Lopes Ada S. Factors associated with physical activity, sedentary behavior, and participation in physical education among high school students in Santa Catarina State, Brazil. Cad Saude Publica. 2009;25:2187-2200.

Descriptive statistics was used with analysis of absolute and relative frequency, mean and standard deviation. For comparison of medians, the Mann Whitney U test was used to compare frequencies, the chi-square test of heterogeneity. To identify factors associated with the dependent variable, binary logistic regression was used to estimate Odds Ratio and 95% confidence intervals. For all statistical tests, significance level was set at p<0.05. In regression analysis we used the hierarchical model of determination, hypothetically temporal, from distal to proximal determinants,2323 Victora CG, Huttly SR, Fuchs SC, Olinto MT. The role of conceptual frameworks in epidemiological analysis: a hierarchical approach. Int J Epidemiol. 1997;26:224-227. in which the demographic variables (gender, skin color, and age) were included in the distal block, socioeconomic variables (economic level, maternal education, and school shift) in the intermediate block, and lifestyle variables (PA, alcohol consumption, soft drink consumption, sleep, and SB) in the distal block. In the regression model, all covariates were treated dichotomously, as described in Table 1 . The selection for input variables in the adjusted model was made using the backward method. All variables were included in the adjusted analysis, regardless of the crude analysis p-value. Adjustments were made for variables at the same level and above levels that represented p≤0.20 in the Wald test (adjusted analysis) and remained in the model.2424 Maldonado G, Greenland S. Simulation study of confounder-selection strategies. Am J Epidemiol. 1993;138:923-936. The SPSS 17.0 software was used for all analyzes.

Results

There was a sample loss of 17.8% of adolescents, which included those who answered the questionnaire, but did not participate in the macroproject anthropometric assessment. Thus, the present study sample included 930 adolescents, mean age of 16.1±1.1 years, with female prevalence (n=490) (Table 2). Most adolescents had white skin color (62.7%), 14-16 years of age (58%), low maternal education (56.4%), high economic level (68.2%), and attended day school (69.8%) (Table 2). Nine out of 10 adolescents were little physically active (92.1%), three out of 10 consumed excessive alcohol (33.9%), eight out of 10 consumed soft drinks (84.1%), and about two thirds did not sleep well (61.4%). Regarding SB, seven out of 10 adolescents watched two or more hours of television (78.6%), about two-thirds of the students spent two or more hours on the computer (68.7%), and three out of 10 played video games for more than two hours (28%). Approximately nine out of 10 adolescents had screen time above 4h per day (87.2%) and half of the students used passive transportation to get to school (50.1%) (Table 3). Adolescents who were male, older, attended evening classes, drank alcohol and played video games daily for 2h or more had higher WC (p<0.05). There was no difference in AO prevalence between categories of the independent variables (Tables 2 and 3).

Table 2
Sample distribution, waist circumference (mean and standard deviation) and abdominal obesity prevalence according to sociodemographic variables.
Table 3
Sample distribution, waist circumference (mean and standard deviation) and abdominal obesity prevalence according to behavioral variables.

Adolescents whose mothers had low education were less likely to have AO in the crude analysis (OR=0.59, 95%CI 0.35-0.98). In the adjusted analysis, the association with maternal education remained (OR=0.56, 95%CI 0.35-0.91), and students who watched television for two hours or more were more likely to have AO (OR=2.11; 95%CI 1.08-4.13) (Table 4).

Table 4
Odds Ratio and 95% confidence interval, in crude and adjusted binary logistic regression analysis, between abdominal obesity and independent variables.

Discussion

The present study main findings were: (i) about one in 10 adolescents had AO (10.6%); (ii) adolescents who watched television for two or more hours were more likely to have AO (OR=2.11, 95%CI 1.08-4.13), and (iii) adolescents whose mothers had less than eight years of education were less likely to have AO (OR=0.56; 95%CI 0.35-0.91). Previous studies in the same area described AO prevalence of 6.3%,77 Silva DA, Pelegrini A, Silva AF, Grigollo LR, Petroski EL. Abdominal obesity and associated factors among adolescents: comparison of two economically different Brazilian regions. Arq Bras Endocrinol Metabol. 2012;56:291-299. 13.3%,99 Glaner MF, Pelegrini A, Cordoba CO, Pozzobon ME. Associação entre insatisfação com a imagem corporal e indicadores antropométricos em adolescentes. Rev Bras Educ Fis Esporte. 2013;27:129-136. and 12.8%.88 Bozza R, de Campos W, Bacil ED, Barbosa Filho VC, Hardt JM, da Silva PM. Sociodemographic and behavioral factors associated with body adiposity in adolescents. Rev Paul Pediatr. 2014;32:241-246. This study brings as advance the information that sedentary behavior was the main lifestyle factor associated with AO. Such behavior is modifiable through health education initiatives, which may result in lower prevalence of AO. In addition to this variable, the only sociodemographic factor associated with AO was high maternal education, which shows the need for specific investigations for this indicator.

The 10.6% prevalence of AO found in this study is below the values found for adolescents in Spain (11.6%)55 Schroder H, Ribas L, Koebnick C, Funtikova A, Gomez SF, Fito M, et al. Prevalence of abdominal obesity in Spanish children and adolescents. Do we need waist circumference measurements in pediatric practice?. PLoS One. 2014;9:e87549. and USA (34.7%),11 Park J, Hilmers DC, Mendoza JA, Stuff JE, Liu Y, Nicklas TA. Prevalence of metabolic syndrome and obesity in adolescents aged 12 to 19 years: comparison between the United States and Korea. J Kor Med Sci. 2010;25:75-82. and similar to those found for South Korean adolescents (8.4%).11 Park J, Hilmers DC, Mendoza JA, Stuff JE, Liu Y, Nicklas TA. Prevalence of metabolic syndrome and obesity in adolescents aged 12 to 19 years: comparison between the United States and Korea. J Kor Med Sci. 2010;25:75-82. When compared to studies performed in Brazil, the found prevalence of AO was higher than the values reported for Minas Gerais (Januária) (2.1%)77 Silva DA, Pelegrini A, Silva AF, Grigollo LR, Petroski EL. Abdominal obesity and associated factors among adolescents: comparison of two economically different Brazilian regions. Arq Bras Endocrinol Metabol. 2012;56:291-299. and lower than the values reported for Maranhão (22.7%)66 Nascimento-Ferreira MV, De Moraes AC, Carvalho HB, Moreno LA, Gomes Carneiro AL, Dos Reis VM, et al. Prevalence of cardiovascular risk factors, the association with socioeconomic variables in adolescents from low-income region. Nutr Hosp. 2014;31:217-224. and Curitiba (12.2%).88 Bozza R, de Campos W, Bacil ED, Barbosa Filho VC, Hardt JM, da Silva PM. Sociodemographic and behavioral factors associated with body adiposity in adolescents. Rev Paul Pediatr. 2014;32:241-246. These differences in OA prevalence may demonstrate cultural and social differences and similarities,44 De Moraes AC, Fadoni RP, Ricardi LM, Souza TC, Rosaneli CF, Nakashima AT, et al. Prevalence of abdominal obesity in adolescents: a systematic review. Obes Rev. 2011;12:69-77. if we take into account that São José and Curitiba have the human development index ranked as very high (0.809 and 0.823)1616 United Nations [homepage on the Internet]. Human development report 2014. Sustaining human progress: reducing vulnerabilities and building resilience 2014. Available from: http://www.uy.undp.org/content/dam/undp/library/corporate/HDR/2014HDR/HDR-2014-English.pdf http://www.uy.undp.org/content/dam/undp/library/corporate/HDR/2014HDR/HDR-2014-English.pdf [cited 28.07.15].
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and Januária ranked as medium (0.658).1616 United Nations [homepage on the Internet]. Human development report 2014. Sustaining human progress: reducing vulnerabilities and building resilience 2014. Available from: http://www.uy.undp.org/content/dam/undp/library/corporate/HDR/2014HDR/HDR-2014-English.pdf http://www.uy.undp.org/content/dam/undp/library/corporate/HDR/2014HDR/HDR-2014-English.pdf [cited 28.07.15].
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Another factor that may explain the discrepancy between the prevalence found is the use of different cutoff points by different studies. Similar to the present investigation, three studies55 Schroder H, Ribas L, Koebnick C, Funtikova A, Gomez SF, Fito M, et al. Prevalence of abdominal obesity in Spanish children and adolescents. Do we need waist circumference measurements in pediatric practice?. PLoS One. 2014;9:e87549.

6 Nascimento-Ferreira MV, De Moraes AC, Carvalho HB, Moreno LA, Gomes Carneiro AL, Dos Reis VM, et al. Prevalence of cardiovascular risk factors, the association with socioeconomic variables in adolescents from low-income region. Nutr Hosp. 2014;31:217-224.
-77 Silva DA, Pelegrini A, Silva AF, Grigollo LR, Petroski EL. Abdominal obesity and associated factors among adolescents: comparison of two economically different Brazilian regions. Arq Bras Endocrinol Metabol. 2012;56:291-299. used the cutoff points proposed by Taylor et al.33 Taylor RW, Jones IE, Williams SM, Goulding A. Evaluation of waist circumference, waist-to-hip ratio, and the conicity index as screening tools for high trunk fat mass, as measured by dual-energy X-ray absorptiometry, in children aged 3-19 y. Am J Clin Nutr. 2000;72:490-495. , which defined AO values with Z score ≥1. The validation of WC measurement was performed using dual energy X-ray absorptiometry (DXA) and showed high correlation for both genders (r=0.92), with 84% sensitivity and 94% specificity for girls and 87% sensitivity and 92%f specificity for boys.33 Taylor RW, Jones IE, Williams SM, Goulding A. Evaluation of waist circumference, waist-to-hip ratio, and the conicity index as screening tools for high trunk fat mass, as measured by dual-energy X-ray absorptiometry, in children aged 3-19 y. Am J Clin Nutr. 2000;72:490-495. Unlike these studies, three other studies11 Park J, Hilmers DC, Mendoza JA, Stuff JE, Liu Y, Nicklas TA. Prevalence of metabolic syndrome and obesity in adolescents aged 12 to 19 years: comparison between the United States and Korea. J Kor Med Sci. 2010;25:75-82.,88 Bozza R, de Campos W, Bacil ED, Barbosa Filho VC, Hardt JM, da Silva PM. Sociodemographic and behavioral factors associated with body adiposity in adolescents. Rev Paul Pediatr. 2014;32:241-246.,99 Glaner MF, Pelegrini A, Cordoba CO, Pozzobon ME. Associação entre insatisfação com a imagem corporal e indicadores antropométricos em adolescentes. Rev Bras Educ Fis Esporte. 2013;27:129-136. used different WC percentiles. AO diagnosis depends on the cutoff points used with high sensitivity and specificity values for the population studied. The use of references that do not adopt these criteria may lead to misclassification and underestimate or overestimate the values.44 De Moraes AC, Fadoni RP, Ricardi LM, Souza TC, Rosaneli CF, Nakashima AT, et al. Prevalence of abdominal obesity in adolescents: a systematic review. Obes Rev. 2011;12:69-77.

Adolescents whose mothers had less than eight years of education were less likely to have AO. Parental education determines the children's chance of education and family cultural sphere.2525 Kappel DB. Índice de desenvolvimento infantil no Brasil: uma análise regional. Rev Bras Educ. 2007;12:232-240. Due to the positive relationship with the family income, the higher the educational level, the higher the household income.2525 Kappel DB. Índice de desenvolvimento infantil no Brasil: uma análise regional. Rev Bras Educ. 2007;12:232-240. Thus, this finding is in line with studies reporting association between AO and high economic level, which is related to obesogenic environments.44 De Moraes AC, Fadoni RP, Ricardi LM, Souza TC, Rosaneli CF, Nakashima AT, et al. Prevalence of abdominal obesity in adolescents: a systematic review. Obes Rev. 2011;12:69-77.,66 Nascimento-Ferreira MV, De Moraes AC, Carvalho HB, Moreno LA, Gomes Carneiro AL, Dos Reis VM, et al. Prevalence of cardiovascular risk factors, the association with socioeconomic variables in adolescents from low-income region. Nutr Hosp. 2014;31:217-224.,77 Silva DA, Pelegrini A, Silva AF, Grigollo LR, Petroski EL. Abdominal obesity and associated factors among adolescents: comparison of two economically different Brazilian regions. Arq Bras Endocrinol Metabol. 2012;56:291-299.,1111 Moraes AC, Falcao MC. Lifestyle factors and socioeconomic variables associated with abdominal obesity in Brazilian adolescents. Ann Hum Biol. 2013;40:1-8. In our study, when the economic level of adolescents was directly investigated, there was no association with the prevalence of AO. This fact shows the importance of assessing factors associated with AO in different ways to determine the presence obesogenic environments.

Television time equal to or greater than 2h was associated with AO. The result of this study is similar to that found by Byun et al.2626 Byun W, Dowda M, Pate RR. Associations between screen-based sedentary behavior and cardiovascular disease risk factors in Korean youth. J Kor Med Sci. 2012;27:388-394. who reported the association of AO and SB. This association may be explained by the lower energy expenditure throughout the day in adolescents who have greater involvement in SB.2727 Chaput JP, Klingenberg L, Astrup A, Sjodin AM. Modern sedentary activities promote overconsumption of food in our current obesogenic environment. Obes Rev. 2011;12:e12-e20. Moreover, the literature has shown that high-calorie food consumption occurs concomitantly with the act of watching television.2727 Chaput JP, Klingenberg L, Astrup A, Sjodin AM. Modern sedentary activities promote overconsumption of food in our current obesogenic environment. Obes Rev. 2011;12:e12-e20.

WC was higher in male compared to female adolescents, but these differences were not sustained when assessing the prevalence of AO. Moraes et al.44 De Moraes AC, Fadoni RP, Ricardi LM, Souza TC, Rosaneli CF, Nakashima AT, et al. Prevalence of abdominal obesity in adolescents: a systematic review. Obes Rev. 2011;12:69-77. found that, although there is a tendency to higher WC values in men, the association between AO and sex is not yet clear in adolescents. Higher values of WC in male adolescents occur as a result of sexual dimorphism in fat distribution.1010 Taylor RW, Grant AM, Williams SM, Goulding A. Sex differences in regional body fat distribution from pre- to postpuberty. Obesity (Silver Spring). 2010;18:1410-1416. Female adolescents, even with a higher percentage of body fat due to hormonal differences between the sexes, have increased accumulation of adipose tissue in the hip and decreased in the waist area compared with their male peers.1010 Taylor RW, Grant AM, Williams SM, Goulding A. Sex differences in regional body fat distribution from pre- to postpuberty. Obesity (Silver Spring). 2010;18:1410-1416.

Adolescents who played video games for 2h or more had higher WC, which can be explained by the higher WC in male adolescent, as they have video game screen time higher than female.2626 Byun W, Dowda M, Pate RR. Associations between screen-based sedentary behavior and cardiovascular disease risk factors in Korean youth. J Kor Med Sci. 2012;27:388-394.,2828 Vasconcellos MB, Anjos LA, Vasconcellos MT. Nutritional status and screen time among public school students in Niteroi, Rio de Janeiro State, Brazil. Cad Saude Publica. 2013;29:713-722. In our study, boys had higher average of video game screen time (171.5±257.6min) than girls (53.9±157.7min). Moreover, the percentage of adolescents who played video games for 2h or more was higher in males (45.5%) than females (15.5%) (Data not shown in table/figures).

Older adolescents had higher WC values. The literature states that, due to the morphological and physiological development, the WC increases with age and stage of sexual maturation, regardless of the presence of AO.33 Taylor RW, Jones IE, Williams SM, Goulding A. Evaluation of waist circumference, waist-to-hip ratio, and the conicity index as screening tools for high trunk fat mass, as measured by dual-energy X-ray absorptiometry, in children aged 3-19 y. Am J Clin Nutr. 2000;72:490-495.,1010 Taylor RW, Grant AM, Williams SM, Goulding A. Sex differences in regional body fat distribution from pre- to postpuberty. Obesity (Silver Spring). 2010;18:1410-1416. Another finding of our study was that adolescents with higher alcohol consumption also had higher WC. Epidemiological analysis indicated that alcohol consumption increases with age.2929 National Health and Medical Research Council. Australian guidelines to reduce health risks from drinking alcohol. Available from: http://www.nhmrc.gov.au/ http://www.nhmrc.gov.au/ [cited 28.07.2015].
http://www.nhmrc.gov.au/...
As older students had higher WC values, age can be a confounding variable in the association between alcohol consumption and WC.

Regarding school shift, higher WC was found in adolescents attending evening classes. It is speculated that this finding is related to the fact that these adolescents are older, have low economic levels and, therefore, they work. Thus, they have lifestyle habits more similar to adults and greater engagement in SB.2222 Da Silva KS, Nahas MV, Peres KG, Lopes Ada S. Factors associated with physical activity, sedentary behavior, and participation in physical education among high school students in Santa Catarina State, Brazil. Cad Saude Publica. 2009;25:2187-2200.

The study with adolescents attending public high school in São José was a limitation, as it implies that the results may not be extrapolated to private school students who, in Brazil, have different socioeconomic characteristics from those observed in young people from public schools. The strengths of this study were the school-based sample and the use of cutoff points validated through a method with strong correlation with benchmarks in abdominal fat evaluation.33 Taylor RW, Jones IE, Williams SM, Goulding A. Evaluation of waist circumference, waist-to-hip ratio, and the conicity index as screening tools for high trunk fat mass, as measured by dual-energy X-ray absorptiometry, in children aged 3-19 y. Am J Clin Nutr. 2000;72:490-495. Additionally, several Brazilian studies used the same cutoff points,66 Nascimento-Ferreira MV, De Moraes AC, Carvalho HB, Moreno LA, Gomes Carneiro AL, Dos Reis VM, et al. Prevalence of cardiovascular risk factors, the association with socioeconomic variables in adolescents from low-income region. Nutr Hosp. 2014;31:217-224.,77 Silva DA, Pelegrini A, Silva AF, Grigollo LR, Petroski EL. Abdominal obesity and associated factors among adolescents: comparison of two economically different Brazilian regions. Arq Bras Endocrinol Metabol. 2012;56:291-299. which facilitates comparison between studies.

It can be concluded that a high prevalence of abdominal obesity was found in approximately one out of 10 adolescents. Maternal education (≥8 years) and the time sitting in front of television (≥2h) were associated with abdominal obesity.

Funding

This study did not receive funding.

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Publication Dates

  • Publication in this collection
    Jul-Sep 2016

History

  • Received
    11 Aug 2015
  • Accepted
    17 Jan 2016
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