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Factors associated with objectively measured total sedentary time and screen time in children aged 9–11 years Please cite this article as: Ferrari GL, Pires C, Solé D, Matsudo V, Katzmarzyk PT, Fisberg M. Factors associated with objectively measured total sedentary time and screen time in children aged 9–11 years. J Pediatr (Rio J). 2019;95:94–105.

Abstract

Objective:

To identify factors associated with total sedentary time and screen time in children aged 9–11 years.

Methods:

For seven consecutive days, 328 children (51.5% boys) used accelerometers to monitor total sedentary time. Screen time was calculated by the self-reporting method. Individual, family, family environment, and school environment questionnaires were filled out. Body composition was measured using a Tanita scale.

Results:

The mean sedentary time was 500 min/day (boys: 489, girls: 511, p = 0.005), and mean screen time was 234 min/day (boys: 246, girls: 222, p = 0.053). In both genders, factors associated with sedentary time were healthy dietary pattern and moderate-to-vigorous physical activity. In boys, only moderate-to-vigorous physical activity was significant; in girls, the healthy dietary pattern, moderate-to-vigorous physical activity, and transportation to school were significant. As for the screen time, the associated factors were body mass index and healthy dietary pattern (both genders). In boys, the associated factors were body mass index, healthy dietary pattern, and television in the bedroom. In girls, the associated factors were healthy dietary pattern, transportation to school, and physical activity policies or practice at school.

Conclusion:

Several associated factors were identified in the association between total sedentary time and screen time in children; however, only the healthy dietary pattern was common between sedentary time and screen time.

KEYWORDS
Sedentary lifestyle; Accelerometry; Health; Obesity; Children

Resumo

Objetivo:

Identificar os fatores associados do tempo sedentário total e tempo de tela em crianças entre 9-11 anos.

Métodos:

Durante sete dias consecutivos, 328 crianças (51,5% meninos) usaram acelerômetros para monitorar o tempo sedentário total. O tempo de tela foi calculado pelo método autorreferido. Questionários com fatores individuais, familiares, ambiente familiar e escolar foram preenchidos. A composição corporal foi medida usando uma balança Tanita.

Resultados:

A média do tempo sedentário (min/dia) foi de 500 (meninos: 489; meninas: 511; p = 0,005), e do tempo de tela foi 234 (meninos: 246; meninas: 222; p = 0,053). Em ambos os sexos, os fatores associados do tempo sedentário foram o padrão de dieta saudável e atividade física de moderada a vigorosa. Nos meninos, apenas a atividade física de moderada a vigorosa foi significativa e nas meninas o padrão de dieta saudável, atividade física de moderada a vigorosa e transporte para a escola foi significativo. Já para o tempo de tela, os fatores associados foram o índice de massa corporal e padrão de dieta saudável (ambos os sexos). Nos meninos, os fatores associados foram o índice de massa corporal, o padrão de dieta saudável e televisão no quarto. Nas meninas, os fatores associados foram o padrão de dieta saudável, transporte para escola e políticas ou práticas de atividade física na escola.

Conclusão:

Vários fatores associados foram identificados entre tempo sedentário total e tempo de tela em crianças. Entretanto, somente o padrão de dieta saudável foi comum entre tempo sedentário e tempo de tela.

PALAVRAS-CHAVE
Estilo de vida sedentário; Acelerometria; Saúde; Obesidade; Crianças

Introduction

Sedentary time (ST) is characterized by behaviors that require little energy expenditure and that occurs in a sitting or lying position.11 Sedentary Behaviour Research Network. Letter to the Editor: Standardized use of the terms “sedentary” and “sedentary behaviours”. Appl Physiol Nutr Metab. 2012;37:540-2. Many daily activities involve ST, which can also be classified by a variety of sedentary behaviors (SBs), such as reading, working, and watching television (TV), for instance.22 Owen N, Sugiyama T, Eakin EE, Gardiner PA, Tremblay MS, Sallis JF. Adults’ sedentary behavior determinants and interventions. Am J Prev Med. 2011;41:189-96. ST should be seen as separate and distinct behavior from physical activity and not simply as failure to comply with physical activity guidelines.33 World Health Organization (WHO). Global recommendations on physical activity for health. Geneva: World Health Organization; 2010. The amount of time spent by children on SBs should be minimized, and screen time (ScT), sedentary transportation (i.e., motorized), and prolonged time spent in the sitting position should be limited.44 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;36:59-64, 65-71.

ST has been extensively assessed through questionnaires that focus primarily on specific SBs, such as ScT, rather than total ST. Children with lower ScT have better physical activity measures55 Ferrari GL, Araujo TL, Oliveira L, Matsudo V, Mire E, Barreira TV, et al. Association between television viewing and physical activity in 10-year-old Brazilian children. J Phys Act Health. 2015;12:1401-8. and lower risks to obesity66 Braithwaite I, Stewart AW, Hancox RJ, Beasley R, Murphy R, Mitchell EA, et al. The worldwide association between television viewing and obesity in children and adolescents: cross sectional study. PLOS ONE. 2013;8:e74263. than those with higher ScT. In turn, accelerometers can evaluate the overall ST, including its effect on health conditions. In adults, higher total ST is associated with an increased risk of cardiovascular disease.77 Wilmot EG, Edwardson CL, Achana FA, Davies MJ, Gorely T, Gray LJ, et al. Sedentary time in adults and the association with diabetes, cardiovascular disease and death: systematic review and meta-analysis. Diabetologia. 2012;55:2895-905. However, in children, the association between total ST measured by accelerometers and health problems is less evident, and possibly more complex. For instance, a high total ST is not associated with body composition.88 Ferrari GL, Oliveira LC, Araujo TL, Matsudo V, Barreira TV, Tudor-Locke C, et al. Moderate-to-vigorous physical activity and sedentary behavior: independent associations with body composition variables in Brazilian children. Pediatr Exerc Sci. 2015;27:380-9. Additionally, Biddle et al.99 Biddle SJ, Gorely T, Marshall SJ. Is television viewing a suitable marker of sedentary behavior in young people?. Ann Behav Med. 2009;38:147-53. showed that ScT represents only a small proportion of total ST. In a systematic review, 64 studies assessing factors associated with SB were retrieved; however, only 11 used accelerometers to objectively measure total ST and self-reported ScT and none of these were carried out with Brazilian children.1010 Temmel CS, Rodhes R. Correlates of sedentary behaviour in children and adolescents aged 7–18: a systematic review. Health Fit J Can. 2013;6:119-99. The 11 studies found a significant association with age, gender, ethnicity, socioeconomic level (SEL), and physical activity in children, especially in high-income countries. Studies that use objective measures of ST in children from low- and middle-income countries, such as Brazil, are necessary to investigate the associated factors in several domains of these behaviors. This study aimed to identify the factors associated with total ST and ScT in children aged 9–11 years.

Material and methods

Study sample

This was a cross-sectional multicenter study carried out in 12 countries, and is part of the International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE),1111 Katzmarzyk PT, Barreira TV, Broyles ST, Champagne CM, Chaput JP, Fogelholm M, et al. The International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE): design and methods. BMC Public Health. 2013;13:900. whose details have been previously published.1111 Katzmarzyk PT, Barreira TV, Broyles ST, Champagne CM, Chaput JP, Fogelholm M, et al. The International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE): design and methods. BMC Public Health. 2013;13:900.

The present study focuses on data collected from the ISCOLE Brasil study, which was carried out in the city of São Caetano do Sul, state of São Paulo, Brazil. In 2013, the municipality had 149,263 inhabitants, of whom 1557 were children (812 boys) aged 10 years.1212 Instituto Brasileiro de Geografia e Estatística (IBGE). Indicadores sociais municipais: uma análise dos resultados do universo do censo demográfico; 2010. Available from: https://biblioteca.ibge.gov.br/visualizacao/livros/liv54598.pdf [cited December 2017].
https://biblioteca.ibge.gov.br/visualiza...

After the project was approved by the Secretariat of Education, it was presented at each school and to the parents’ council. After the authorizations were obtained, the project was implemented at each school. All fifth-grade children were invited to participate in the study.

Due to the SEL variability between public and private schools, the type of school (public vs. private) was considered as an indicator of SEL. Two complete lists of public and private schools attended by fifth-grade students were generated. Schools were separately selected from each list, considering a ratio of four (public) to one (private). Twenty schools (16 public) were selected to obtain a sample of 25–30 children from each school, with a target recruitment of 500 children aged 9–11 years, according to the sample calculation.1111 Katzmarzyk PT, Barreira TV, Broyles ST, Champagne CM, Chaput JP, Fogelholm M, et al. The International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE): design and methods. BMC Public Health. 2013;13:900.

Data collection was performed between March 2012 and April 2013, and all evaluations were carried out during an entire week per school. All data collection and management activities were performed and monitored according to quality control procedures, implemented by the ISCOLE coordinating center.1111 Katzmarzyk PT, Barreira TV, Broyles ST, Champagne CM, Chaput JP, Fogelholm M, et al. The International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE): design and methods. BMC Public Health. 2013;13:900.

In total, 564 children (277 boys) were assessed and met the inclusion criteria. Considering the exclusion criteria, the final sample included 328 children (169 boys).1313 Ferrari GL, Matsudo V, Barreira TV, Tudor-Locke C, Katzmarzyk PT, Fisberg M. Correlates of moderate-to-vigorous physical activity in Brazilian children. J Phys Act Health. 2016;13:1132-45. The study was approved by the Research Ethics Committee of Universidade Federal de São Paulo.

Accelerometry

The Actigraph GT3X accelerometer (ActiGraph®, USA) was used to objectively monitor total ST and moderate-to-vigorous physical activity (MVPA). The accelerometer was used at the waist, attached to an elastic belt, in the middle axillary line on the right side. Participants were encouraged to use the accelerometer 24-h/day for at least seven days, including the weekend.

The minimum amount of accelerometer data that was considered acceptable for analysis was four days, with at least 10 h/day of use, after its removal at sleep time.1414 Colley R, Connor Gorber S, Tremblay MS. Quality control and data reduction procedures for accelerometry-derived measures of physical activity. Health Rep. 2010;21:63-9.,1515 Trost SG, Loprinzi PD, Moore R, Pfeiffer KA. Comparison of accelerometer cut points for predicting activity intensity in youth. Med Sci Sports Exerc. 2011;43:1360-8. Blocks of 20 consecutive minutes of zero count were considered as not using the device, and were discarded from the analyses.

The research team went to schools to retrieve the accelerometers and check whether the data were complete using the Actilife software (ActiGraph's, premier actigraphy data analysis software, version 5.6, USA). Data were collected at a sampling rate of 80 Hz, downloaded in periods of 1 s, and aggregated for periods of 15 s.1616 Evenson KR, Catellier DJ, Gill K, Ondrak KS, McMurray RG. Calibration of two objective measures of physical activity for children. J Sports Sci. 2008;26:1557-65. A cut-off point of ≤25 counts/15 s was used for total ST and ≥574 counts/15 s for MVPA.1616 Evenson KR, Catellier DJ, Gill K, Ondrak KS, McMurray RG. Calibration of two objective measures of physical activity for children. J Sports Sci. 2008;26:1557-65. For the analyses, total ST was considered as a continuous variable.

Self-reported ScT

Children reported ScT through the Diet and Lifestyle Questionnaire.1111 Katzmarzyk PT, Barreira TV, Broyles ST, Champagne CM, Chaput JP, Fogelholm M, et al. The International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE): design and methods. BMC Public Health. 2013;13:900. They were asked how many hours they spent watching TV and how many hours they spent playing video and/or computer games on weekdays and weekends1111 Katzmarzyk PT, Barreira TV, Broyles ST, Champagne CM, Chaput JP, Fogelholm M, et al. The International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE): design and methods. BMC Public Health. 2013;13:900. and the answers were: I do not watch TV, <1, 1, 2, 3, 4, and ≥5 h. The mean daily ScT score was calculated as follows: ([TV hours on weekdays × 5] + [TV hours on weekends × 2] + [hours of video and computer games on weekdays × 5] + [hours of video and computer games on weekends × 2])/7. The self-reported ScT has been previously validated in children.1717 Hardy LL, Hills AP, Timperio A, Cliff D, Lubans D, Morgan PJ, et al. A hitchhiker's guide to assessing sedentary behaviour among young people: deciding what method to use. J Sci Med Sport. 2013;16:28-35.

Anthropometric factors

The data were collected by professionals during the school visit according to standardized procedures.1111 Katzmarzyk PT, Barreira TV, Broyles ST, Champagne CM, Chaput JP, Fogelholm M, et al. The International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE): design and methods. BMC Public Health. 2013;13:900. Height was measured with a 0.1-cm precision using a Seca 213 portable stadiometer (Seca®, Hamburg, Germany). Body weight and body fat percentage (BF%) were measured using a Tanita SC-240 portable body composition analyzer (Tanita®, Arlington Heights, IL, USA) without shoes, socks, or heavy items in their pockets.1818 Barreira TV, Staiano AE, Katzmarzyk PT. Validity assessment of a portable bioimpedance scale to estimate body fat percentage in white and African-American children and adolescents. Pediatr Obes. 2013;8:e29-e32. Two measurements were obtained, and the mean value was used in the analysis.

Body mass index (BMI; kg/m2) was calculated based on height and body weight; subsequently, the Z-score was calculated based on the World Health Organization growth reference charts. The children were classified as: underweight: <−2 SD; normal weight: −2 SD to 1 SD; excess weight >+1 SD to 2 SD; and obese: >+2 SD.1919 de Onis M, Onyango AW, Borghi E, Siyam A, Nishida C, Siekmann J. Development of a WHO growth reference for school-aged children and adolescents. Bull World Health Organ. 2007;85:660-7. Waist circumference (WC) measurements were made on the exposed skin at the end of a normal expiration using a non-elastic anthropometric tape between the lower rib margin and the iliac crest.1111 Katzmarzyk PT, Barreira TV, Broyles ST, Champagne CM, Chaput JP, Fogelholm M, et al. The International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE): design and methods. BMC Public Health. 2013;13:900.

Questionnaires

The Diet and Lifestyle Questionnaire, with information related to food consumption, physical activity, SBs, breakfast consumption, transportation to school, and sleep, was filled out by the children. The Demographic and Family Health Questionnaire, with information about parents’ educational level, family income, and number of automobiles, was answered by parents or guardians. It also included questions about the children's age, gender, number of siblings, and ethnicity. The Neighborhood Questionnaire was used to obtain information about the parents’ or caregivers’ perceptions regarding the social environment, dietary habits, and number of TV sets. The School Environment Questionnaire, with information on the school characteristics, policies or practices that may influence healthy eating habits, and physical activity practice, was filled out by a school administrator. Details have been previously published.1111 Katzmarzyk PT, Barreira TV, Broyles ST, Champagne CM, Chaput JP, Fogelholm M, et al. The International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE): design and methods. BMC Public Health. 2013;13:900.

Statistical analysis

A descriptive analysis, including means, standard deviation, frequency, and percentage (%), the Kolmogorov–Smirnov test, and Student's t-test for independent samples were calculated.

A multilevel linear regression analysis was used, including school as a random effect, to analyze the associations between associated factors and total ST and ScT. First, all associated factors were used in the univariate models. Type of school (public and private), gender, ethnicity, and school (to allow grouping at the school level) were included as covariates in the univariate models. The variables with p < 0.10 were included in specific models in accordance with the ecological model.22 Owen N, Sugiyama T, Eakin EE, Gardiner PA, Tremblay MS, Sallis JF. Adults’ sedentary behavior determinants and interventions. Am J Prev Med. 2011;41:189-96. At a second moment, the factors associated with total ST and ScT with p < 0.10 in the specific models were included in the final model. In the final model, p < 0.05 was used to consider the variables as factors associated with total ST and ScT. School, gender, ethnicity, number of siblings, and total annual family income were used as covariates in the multivariate models.

Multicollinearity was tested through correlation, tolerance and variance inflation factor (VIF). VIF values higher than 5 were considered AS indicators of problems in estimating the coefficient due to multicollinearity between the independent variables.2020 Montgomery DC, Peck EC. Introduction to linear regression analysis. New York: John Wiley & Sons; 1982. To compare the models, the Akaike information criterion (AIC) and the Bayesian information criterion (BIC) were utilized. The analyses were performed using SPSS, version 20.0.

Results

The samples of girls (n = 159) and boys (n = 169) from 20 schools allowed the detection of elevated effects with a statistical power of more than 90% in the models used.2121 Scherbaum CA, Ferreter JM. Estimating statistical power and required sample sizes for organizational research using multilevel modeling. Organ Res Methods. 2009;12:347-67. Details on the questionnaires, associated factors, descriptive analysis, and information on the sample that did not meet the inclusion and exclusion criteria have been previously provided.1313 Ferrari GL, Matsudo V, Barreira TV, Tudor-Locke C, Katzmarzyk PT, Fisberg M. Correlates of moderate-to-vigorous physical activity in Brazilian children. J Phys Act Health. 2016;13:1132-45. Of the 328 children (mean age: 10.4 years) who participated in the study and had complete data, 51.5% were boys, and 75.9% were classified as white/Caucasian ethnicity.

The mean total ST was 500.06 (69.0) min/day. In boys, the mean was 489.67 (69.2) and in the girls, 511.11 (67.3) min/day (p = 0.005). Regarding ScT, the mean was 234 (126) min/day, 246 (132) in boys and 222 (126) in girls (p = 0.053), respectively. Only 22.6% of the children met the ScT guidelines (≤2 h/day),44 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;36:59-64, 65-71. being 18.9% boys and 26.4% girls (p = 0.105).

When considering both genders, a positive association was observed between total ST with BF%, BMI, and WC. The association was negative with healthy dietary pattern and MVPA. There was also a significant association with the level of maternal employment.

In boys, total ST was positively associated with BF% and WC, and negatively associated with MVPA and the level of paternal employment. Regarding the girls, a significant and negative association was observed with a healthy dietary pattern, amount of sleep, and with MVPA. A positive association was found between transportation time to school with total ST in girls (Table 1).

Table 1
Univariate models of the associated factors of total sedentary time in children from São Caetano do Sul, Brazil.a a Multilevel linear model adjusted for school type, gender, and ethnicity with random school effect, and with nonstandard beta coefficients are presented.

Considering both genders, ScT was positively associated with BMI and WC. A negative association was observed with healthy dietary pattern and transportation to school. In boys, the variables significantly associated with ScT were BMI, WC, healthy dietary pattern, and TV in the bedroom. All associations were positive, except for the healthy dietary pattern. As for the girls, the variables with a significant and negative association with ScT were healthy dietary pattern, transportation to school, and existence of physical activity policies or practices. A positive and significant association was also observed with total annual income (Table 2).

Table 2
Univariate models of screen time associated factors in children from São Caetano do Sul, Brazil.a a Multilevel linear model adjusted for school type, gender, and ethnicity with random school effect, and with nonstandard beta coefficients are presented.

In the multivariate models of total ST, multicollinearity problems between the BF%, BMI, and WC variables were observed. Models were tested with each of the variables, together with the others defined from the univariate models. The WC variable was led to a better-fit model and was therefore included in the multivariate models (Table 3).

Table 3
Final model (multivariate) of the factors associated with total sedentary time in children from São Caetano do Sul, Brazil.a a Multilevel linear model, including all significant variables in the univariate model, adjusted for school type, gender, ethnicity, number of siblings and total annual family income, and school with random effect.

Considering the total sample, the associated significant and negative factors were healthy dietary pattern and MVPA. In boys, only the association with MVPA was significant. In girls, the association was negative with healthy dietary pattern and MVPA and positive with transportation time (Table 3).

In multivariate ScT models, multicollinearity problems between BMI and WC were also observed. The BMI was the variable that showed a better-fit model, and was therefore included in the multivariate models (Table 4).

Table 4
Final model (multivariate) of the factors associated with screen time in children from São Caetano do Sul, Brazil.a a Multilevel linear model, including all significant variables in the univariate model, adjusted for school type, gender, ethnicity, number of siblings and total annual family income, and school with random effect.

Considering the entire sample, the factors significantly associated with ScT were BMI (positive association) and healthy dietary pattern (negative association). In boys, these factors were also BMI and healthy dietary pattern. In addition to these, TV in the bedroom showed a significant effect on ScT in boys. In girls, the significant associated factors were healthy dietary pattern, type of school transportation, and physical activity policies or practices (Table 4).

Discussion

The healthy dietary pattern was the only common factor associated with total ST and ScT in both genders. Regarding total ST, the associated factors were healthy dietary pattern and MVPA, in both genders. In boys, only MVPA was significant. In the girls, the association was negative with healthy dietary pattern and MVPA, and positive with transportation time. Regarding ScT, BMI and healthy dietary pattern showed significant results in both genders together and in boys. A positive association was also observed with TV in the bedroom, in boys. In girls, the associated factors were healthy dietary pattern, type of transportation to school, and physical activity policies or practices.

Herman et al.2222 Herman KM, Sabiston CM, Mathieu ME, Tremblay A, Paradis G. Sedentary behavior in a cohort of 8- to 10-year-old children at elevated risk of obesity. Prev Med. 2014;60:115-20. concluded that higher levels of total ST measured by accelerometry were associated with higher BF% levels, being determinant for weight gain and disease risk.77 Wilmot EG, Edwardson CL, Achana FA, Davies MJ, Gorely T, Gray LJ, et al. Sedentary time in adults and the association with diabetes, cardiovascular disease and death: systematic review and meta-analysis. Diabetologia. 2012;55:2895-905. Herman et al.2222 Herman KM, Sabiston CM, Mathieu ME, Tremblay A, Paradis G. Sedentary behavior in a cohort of 8- to 10-year-old children at elevated risk of obesity. Prev Med. 2014;60:115-20. reported a positive association between total ST and BMI in Canadian children. However, the authors found that total ST was not associated with BF%.

Results reported by LeBlanc et al.2323 LeBlanc AG, Katzmarzyk PT, Barreira TV, Broyles ST, Chaput JP, Church TS, et al. Correlates of total sedentary time and screen time in 9–11 year-old children around the world: the International Study of Childhood Obesity, Lifestyle and the Environment. PLOS ONE. 2015;10:e0129622. showed that healthy dietary pattern is a predictor of ScT. These authors did not find significant results between total ST and the healthy dietary pattern.

The present study showed a significant association between the healthy dietary pattern score and total ST, which may be partly due to the increase in energy intake, mainly through the consumption of energy-dense foods.2424 Thivel D, Tremblay MS, Chaput J-P. Modern sedentary behaviors favor energy consumption in children and adolescents. Curr Obes Rep. 2013;2:50-7. Boys and girls who reported high levels of reading or doing homework consumed significantly less energy than those who reported low levels of reading or doing homework.2525 Utter J, Neumark-Sztainer D, Jeffery R, Story M. Couch potatoes or french fries: are sedentary behaviors associated with body mass index, physical activity, and dietary behaviors among adolescents?. J Am Diet Assoc. 2003;103:1298-305. Corroborating a previously published study,2525 Utter J, Neumark-Sztainer D, Jeffery R, Story M. Couch potatoes or french fries: are sedentary behaviors associated with body mass index, physical activity, and dietary behaviors among adolescents?. J Am Diet Assoc. 2003;103:1298-305. the present study has shown that lower healthy dietary pattern scores are associated with ScT in both genders together and only in girls. A previous study by Utter et al.2525 Utter J, Neumark-Sztainer D, Jeffery R, Story M. Couch potatoes or french fries: are sedentary behaviors associated with body mass index, physical activity, and dietary behaviors among adolescents?. J Am Diet Assoc. 2003;103:1298-305. showed that girls and boys who reported higher ScT consumed 300–400 calories/day more than those who reported lower ScT. Although the authors are unable to discuss the amount (i.e., the number of calories) of energy consumption, the association of ScT with consumption of energy-rich foods such as soda, fried foods, and healthy snacks is consistent with the current results, as well as other studies using the ISCOLE dataset.2323 LeBlanc AG, Katzmarzyk PT, Barreira TV, Broyles ST, Chaput JP, Church TS, et al. Correlates of total sedentary time and screen time in 9–11 year-old children around the world: the International Study of Childhood Obesity, Lifestyle and the Environment. PLOS ONE. 2015;10:e0129622.

The present study found evidence of an association between transportation to school (time and type) with total ST. A study of 9- to 11-year-old children from ISCOLE-participating countries did not identify an association between active transportation to school and total ST.2626 Denstel KD, Broyles ST, Larouche R, Sarmiento OL, Barreira TV, Chaput J-P, et al. Active school transport and weekday physical activity in 9–11-year-old children from 12 countries. Int J Obes Suppl. 2015;5:S100-6. In turn, children who engage in active transportation to school and live within a 1–2 km radius of school accumulate less time in SBs than those who live closer to school.2727 Hinckson EA, McGrath L, Hopkins W, Oliver M, Badland H, Mavoa S, et al. Distance to school is associated with sedentary time in children: findings from the urban study. Front Public Health. 2014;2:151.

Children with high levels of adiposity2828 Staiano AE, Harrington DM, Broyles ST, Gupta AK, Katzmarzyk PT. Television, adiposity, and cardiometabolic risk in children and adolescents. Am J Prev Med. 2013;44:40-7. and low level of physical activity2929 Ferrari GL, Araujo TL, Oliveira LC, Matsudo V, Fisberg M. Association between electronic equipment in the bedroom and sedentary lifestyle, physical activity, and body mass index of children. J Pediatr (Rio J). 2015;91:574-82. have electronic equipment in the bedroom. The present results show a positive association between TV in the bedroom with ScT in boys. The present study showed no association between TV in the bedroom and total ST. Atkin et al.3030 Atkin AJ, Corder K, van Sluijs EM. Bedroom media, sedentary time and screen-time in children: a longitudinal analysis. Int J Behav Nutr Phys Act. 2013;10:137. verified that the presence of TV in the bedroom was not associated with total ST, but was associated with ScT. Watching TV, for instance, can be an overall indicator of a sedentary lifestyle,99 Biddle SJ, Gorely T, Marshall SJ. Is television viewing a suitable marker of sedentary behavior in young people?. Ann Behav Med. 2009;38:147-53. and may be only an indicator of total SB time.2222 Herman KM, Sabiston CM, Mathieu ME, Tremblay A, Paradis G. Sedentary behavior in a cohort of 8- to 10-year-old children at elevated risk of obesity. Prev Med. 2014;60:115-20.

This study has some strengths and limitations. Accelerometers are valid tools used to measure different intensities of physical activity and total ST in children.1414 Colley R, Connor Gorber S, Tremblay MS. Quality control and data reduction procedures for accelerometry-derived measures of physical activity. Health Rep. 2010;21:63-9. However, it is well established that the monitor placed on the hip is less effective in differentiating sedentary positions, such as lying down or sitting. Moreover, they cannot accurately assess activities performed with the trunk. Some factors associated with total ST and ScT were based on reports. It is also possible that these associated factors are exclusive to the children of the municipality, due to the sample's non-representativeness. Caution should be exercised when generalizing the results to other populations. Even though the study involved 20 schools, it does not provide a representative national sample. Causality cannot be determined from cross-sectional data.

This study assessed a broad variety of factors associated with total ST and ScT in children from São Caetano do Sul. The only common factor associated with both ST and ScT was healthy dietary pattern. For the total ST, the associated factors found were healthy dietary pattern and MVPA, in both genders. In boys, only MVPA was associated. In girls, the healthy dietary pattern, MVPA and time of school transportation were considered associated factors.

As for ScT, BMI and healthy dietary pattern were considered associated factors in both genders together and only in boys. Among the boys, TV in the bedroom was also considered an associated factor. In girls, the associated factors were healthy dietary pattern, type of school transportation, and physical activity policies or practices. These results should be used by professionals who aim to implement interventions to reduce SBs in children. The use of longitudinal and experimental data is essential for further advances in this field and should be complemented by the development of ecological models.22 Owen N, Sugiyama T, Eakin EE, Gardiner PA, Tremblay MS, Sallis JF. Adults’ sedentary behavior determinants and interventions. Am J Prev Med. 2011;41:189-96.

  • Funding
    The ISCOLE Brazil research project was funded by the Coca-Cola Company.
  • Please cite this article as: Ferrari GL, Pires C, Solé D, Matsudo V, Katzmarzyk PT, Fisberg M. Factors associated with objectively measured total sedentary time and screen time in children aged 9–11 years. J Pediatr (Rio J). 2019;95:94–105.

Acknowledgements

The authors would like to thank Victor Matsudo, Sandra Matsudo, Timóteo Araújo, Luis Carlos de Oliveira, Leandro Rezende, Luis Fabiano, Diogo Bezerra, and Gerson Ferrari for their contribution to ISCOLE Brazil data collection, and the ISCOLE Coordination Center in Baton Rouge, Louisiana, United States.

The authors would like to thank the participants, the children's parents and/or guardians, teachers, and coordinators of the Municipal Secretariat of Education of São Caetano do Sul and the Municipality of São Caetano do Sul.

References

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Publication Dates

  • Publication in this collection
    Jan-Feb 2019

History

  • Received
    5 May 2017
  • Accepted
    6 Nov 2017
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