Abstract
Objective. The aim of this study was to identify the prevalence of excess television time and verify correlated factors in adolescent males and females. Methods. This cross-sectional study included 2,105 adolescents aged from 13 to 18 years from the city of Aracaju, Northeastern Brazil. Television time was self-reported, corresponding to the time spent watching television in a typical week. Several correlates were examined including age, skin color, socioeconomic status, parent education, physical activity level, consumption of fruits and vegetables, smoking status, alcohol use, and sports team participation. Results. The prevalence excess television time (≥2 hours/day) in girls and boys was 70.9% and 66.2%, respectively. Girls with low socioeconomic status or inadequate consumption of fruits and vegetables were more likely to have excess television time. Among boys, those >16 years of age or with black skin color were more likely to have excess television time. Conclusions. Excess television time was observed in more than two-thirds of adolescents, being more evident in girls. Correlated factors differed according to sex. Efforts to reduce television time among Brazilian adolescents, and replace with more active pursuits, may yield desirable public health benefits.
1. Introduction
Research on sedentary behaviors has gained attention in the academic community and is the subject of public health messages for behavior modification [1–3]. Conceptually, sedentary behavior is a term used to describe activities performed in the sitting or reclining position (such as television viewing and computer use, travelling in a car, time sitting talking, reading, and talking on the phone), which show energy expenditure values close to resting values (<1.5 METs) [4, 5]. Sedentary behavior is a construct different from physical inactivity, with specific determinants and distinct implications for people's health [2]. Physical inactivity is the absence of physical activity, usually reflected as the proportion of time not engaged in physical activity of a predetermined intensity [3]. Importantly, it is possible to meet physical activity recommendations and still engage in high amounts of sedentary behavior [3]. A number of prospective epidemiologic studies have demonstrated that prolonged sedentary behavior promotes deleterious health effects that may be independent of the practice of physical activity [6].
Television time is one of the most investigated sedentary behaviors because most of the population has such electronics, especially in middle-income countries such as Brazil. Tremblay et al. [7] carried out a systematic review in order to establish the relationship between sedentary behavior and health outcomes in children and adolescents aged 5–17 years. The health outcomes examined included body composition, physical fitness, metabolic syndrome and cardiovascular risk factors, self-esteem, behavioral and social conduct, and academic performance. The authors demonstrated that young people with sedentary risk behavior were more prone to gain weight, to be overweight or obese, and to have poor performance on physical fitness tests, higher levels of blood pressure, total cholesterol and triglycerides, higher chances of showing depressive symptoms, low self-esteem, aggressiveness, inappropriate social behaviors, and poor academic performance [7]. These authors and others have noted that the vast majority of the literature available related to screen time exposure, and especially television viewing [7, 8]. Further investigation of factors related to sedentary behaviors in general, and television time specifically, may help identify the groups most prone to these behaviors.
Systematic reviews on the subject [6, 7, 9, 10] did not address sedentary behavior determinants stratified by sex. However, boys and girls have different habitual behaviors, resulting from both biological and cultural factors that influence the way they interact with the environment. Thus, it is believed that factors related to sedentary behaviours, like television viewing, differ according to sex.
The aim of this study was to identify the prevalence of excess television time (≥2 hours/day) and determine correlates of this behavior in adolescent males and females in Northeastern Brazil.
2. Methods
This cross-sectional epidemiological study was carried out in the metropolitan area of the city of Aracaju, Sergipe, Brazil. The state of Sergipe is the smallest state of Brazil and is located in the northeastern region with 75 counties and the best Human Development Index (HDI) in the region (0.742), with life expectancy of 70.3 years, infant mortality rate of 21 children among one thousand live births, and illiteracy rate among people aged 15 and older of 16.9% [11, 12]. The city of Aracaju is the capital of Sergipe and has an estimated population of 571,149 inhabitants, poverty incidence of 27.5%, Gini index of 0.47%, and HDI of 0.794 [11, 12]. HDI is a composite index that measures the average achievements of a given city in three basic dimensions of human development: (a) long and healthy life, as measured by life expectancy at birth, (b) knowledge, as measured by the adult literacy rate and the ratio of combined gross enrolment in primary, secondary, and higher schools, and (c) a decent standard of living, as measured by gross domestic product (GDP) per capita in purchasing power parity in US dollars [12]. The Gini index, which is expressed in percentage points, is a measure commonly used to calculate income distribution inequalities. It consists of a number between 0 and 100, where 0 corresponds to complete income equality and 100 corresponds to complete inequality [11, 12].
2.1. Population and Sample
The target population of this study consisted of 13,373 high school students from public schools of Aracaju and metropolitan area. High school in Brazil consists of three school grades (1st, 2nd, and 3rd).
The sample size was calculated to estimate the prevalence of different health outcomes investigated in the survey, considering a confidence level at 95%, prevalence for unknown outcomes of 50%, sampling error of 3%, estimated design effect of 2.0 (due to cluster sampling), and percentage of losses estimated at 10%. Based on these parameters, sample size of 2,174 adolescents was obtained.
For association tests, considering an estimated outcome prevalence of 50%, power of 80%, and confidence level of 95%, this sample size would allow detecting a statistically significant odds ratio of up to 1.4 as risk factor and up to 0.6 as protection for females and up to 1.7 as risk factor and up to 0.5 as protection for males.
The sampling design included state public schools and was determined in two stages with school and then class as the sample units. All high schools of Aracaju and metropolitan area with enrollment exceeding 350 students were eligible for inclusion in the study. In the second stage, the density of classes in selected schools was considered as a criterion to draw those in which the questionnaires would be applied. All students in the selected classes were invited to participate in the study.
2.2. Inclusion and Exclusion Criteria
To participate in the study, the student needed to be enrolled in participating schools, be 13 to 18 years of age, and not have any condition that prevented him/her from understanding and completing questionnaire (e.g., blindness and deafness). Adolescents who declined to participate in the study and those whose parents/guardians did not provide consent were considered refusals.
2.3. Ethical Aspects
The study was approved by the Ethics Committee on Human Research of the Federal University of Sergipe, Brazil. All participants in the survey provided signed informed consent by parents (if under 18 years of age), or by themselves (≥18 years).
2.4. Data Collection
Data collection was held in the second half of 2011. The team of evaluators was composed of physical education graduation students who attended previous training for standardization of data collection procedures. The study instrument was a structured questionnaire designed in Portuguese. Data were collected at the school through self-completed questionnaire. The participants were assisted as required by the evaluators.
2.5. Dependent Variable
The questionnaire included a question on whether the adolescent watched television (TV). The translated question was (1) “How much time do you spend watching TV?” (in typical week). Participants who reported ≥2 hours per day watching TV were considered to have excess TV time. The Canadian sedentary behaviour guidelines for children and youth [3], the American Academy of Pediatrics [13], and other experts recommend that adolescents limit television and other screen time to no more than 2 hours per day.
2.6. Independent Variables
Sociodemographic variables included age in years (categorized into ≤16 years and 17-18 years); self-reported skin color, collected based on the categories of the Brazilian Institute of Geography and Statistics [14] and ranked as “white,” “lighter skinned black,” and “dark skinned black” (the results of those who reported as having yellow or indigenous skin color altogether accounted for less than 10% of the sample and therefore are not shown in tables but were included in the association analyses); paternal and maternal schooling (≤8 years and >8 years); and economic level that categorizes participants into economic classes according to family purchasing power [15]. The five economic classes “A,” “B,” “C,” “D,” and “E” represent decreasing order of purchasing power. Subjects from classes “A” and “B” were classified as “high” economic level, those from class “C” as “intermediate” economic level, and those from classes “D” and “E” as “low” economic level.
Physical activity level, consumption of fruits and vegetables, smoking status, alcohol use, and participation in team sports were assessed by the Brazilian version of the questionnaire used in the Youth Risk Behavior Surveillance System (YRBSS) used in the United States. The YRBSS questionnaire was translated into Portuguese and validated for Brazil, and the behaviors investigated in this study showed Kappa agreement index from moderate to high [16].
Physical activity level was assessed by the following question: during the past 7 days, how many days were you physically active for at least 60 minutes a day? (consider the time you spent in any kind of physical activity that increased your heart rate and made your breathing faster for some time). The response options were as follows: no day, 1 day, 2 days, 3 days, 4 days, 5 days, 6 days, and 7 days. Considering that physical activity recommendations for children and adolescents are 60 minutes of moderate and/or vigorous physical activity at least 5 days per week [17], participants who answered five or more days per week were classified as physically active and those who responded less than five days were classified as slightly physically active.
Fruit consumption was assessed in the last seven days preceding the interview by the following questions: how many times have you taken natural fruit juice? How often do you eat fruits? Each of the items had the following response options: I did not take fruit juice or did not eat fruits; 1 to 3 times; 4 to 6 times, once a day, 2 times daily, 3 times daily; 4 or more times daily. The responses to both questions were analyzed considering the recommendations of fruit consumption suggested by the Food Guide Pyramid [18], which suggests the consumption of 3 to 5 fruit servings daily. Thus, adolescents who consumed fruit and/or fruit juice three or more times daily were considered as “adequate consumption” and those who consumed less were considered as “inadequate consumption.”
The consumption of greens and vegetables was assessed in the last seven days prior to the interview through the questions: How many times did you eat green salad? How often do you eat potatoes? How many times did you eat carrots? How many times did you eat other vegetables? Each of the items had the following response options: I did not; 1 to 3 times; 4 to 6 times, once daily, 2 times daily, three times daily, and four or more times daily. The responses were analyzed considering the recommendations of fruits and vegetable consumption suggested by the Food Guide Pyramid [18], which suggests the consumption of 4-5 daily servings of greens and vegetables. Thus, adolescents who consumed greens and vegetables four or more times daily were considered as “adequate consumption” and those who consumed less were considered “inadequate consumption.”
Smoking was investigated by the question: during the past 30 days, on how many days did you smoke cigarettes? Participants who responded to have smoked at least once were considered a positive response (risk group) to smoking. Alcohol consumption was investigated by the question: during the past 30 days, on how many days you had at least one dose of alcohol (1 can of beer—340 mL or, 1 glass of wine—142 mL or, 1 shot spirits—42 mL)? Those who responded to have drunk at least once were considered a positive response (risk group) to the consumption of alcoholic beverages.
Sports team participation at the school or the outside school environment was analyzed by the following item: during the past 12 months, on how many team sports did you play? The response to this item was ranked as “≥2 sports team,” “1 sports team,” and “no sports team.”
2.7. Statistical Analysis
Descriptive and inferential statistics were applied. The linear trend and heterogeneity chi-square test was used to assess the association between excess TV time and independent variables. In the crude and adjusted association analysis, Wald test and binary logistic regression were used to estimate odds ratios (OR) and 95% confidence intervals (CI). Regression analysis followed a determination hierarchical model to identify factors related to excess TV time [19].
Statistical modeling followed the division into four groups of variables: (a) distal, which included demographic variables (age and skin color), (b) intermediate 1, which included socioeconomic variables (socioeconomic status and maternal and paternal schooling), (c) intermediate 2, which included health-related behaviors (physical activity, consumption of fruits, greens and vegetables, and smoking and alcohol use), and (d) proximal, which included sports team participation. All variables were adjusted. All variables were adjusted in the analyses, regardless of P value in the crude analysis.
In the adjusted analysis, a hierarchical approach was adopted, according to the backward procedure. Initially, the variables of the distal block were adjusted to the other factors of the same level. Then, the variables of the intermediate block 1 were controlled to the variables of the same level and to those of the distal level that remained in the model. Then, the variables of the intermediate block 2 were controlled to the variables of the same level and to those of intermediate 1 and distal level that remained in the model. Finally, in the analysis of variables of the proximal block, the adjustment was performed to the other factors of intermediate and distal levels that remained in the model. A P value below 0.20 in the Wald test was adopted as criterion for the permanence of the factor in the regression analyses [20]. Finally, factors with P < 0.05 were considered significantly associated with the outcome. There was an interaction between the variable gender and sedentary behavior (excessive television viewing); consequently analyses were stratified by gender using the Stata 11.0 software (StataCorp, College Station, Texas, USA).
3. Results
Of the 2105 volunteer participants 63% (n = 1327) were female. Most girls were less than 16 years of age, had lighter skinned black, intermediate economic level, and maternal and paternal schooling less than nine years. Nearly 90% of girls were slightly physically active, 79.4% consumed less than three daily servings of fruits, and 90.4% consumed less than four daily servings of greens and vegetables. The prevalence of smoking among girls was 6.0%, 37.8% drank alcoholic beverages, and 69.6% had not participated in any team sports in the 12 months preceding the survey (Table 1).
Table 1.
Sample distribution and descriptive characteristics according to sex.
Variables | Female | Male | ||
---|---|---|---|---|
n | % (95% CI) | n | % (95% CI) | |
Total | 1327 | 100 | 778 | 100 |
Age (years) | ||||
≤16 | 762 | 57.6 (54.9, 60.2) | 440 | 56.8 (53.2, 60.2) |
17-18 | 561 | 42.4 (39.7, 45.0) | 335 | 43.2 (39.7, 46.7) |
Skin color | ||||
White | 173 | 14.9 (12.9, 17.0) | 108 | 16.0 (13.2, 18.8) |
Lighter skinned black | 725 | 62.8 (59.9, 65.5) | 401 | 59.5 (55.7, 63.2) |
Dark skinned black | 258 | 22.3 (19.9, 24.7) | 165 | 24.5 (21.2, 27.7) |
Socioeconomic status | ||||
High | 277 | 21.1 (18.8, 23.3) | 217 | 28.2 (25.0, 31.4) |
Intermediate | 857 | 65.3 (62.6, 67.8) | 470 | 61.3 (57.8, 64.7) |
Low | 179 | 13.6 (11.7, 15.4) | 80 | 10.5 (8.2, 12.5) |
Maternal schooling | ||||
>8 years | 458 | 36.0 (33.3, 38.5) | 309 | 41.7 (38.1, 45.2) |
≤8 years | 816 | 64.0 (61.4, 66.6) | 432 | 58.3 (54.7, 61.8) |
Paternal schooling | ||||
>8 years | 452 | 37.3 (34.5, 39.9) | 298 | 42.0 (38.3, 45.3) |
≤8 years | 761 | 62.7 (60.0, 65.4) | 411 | 58.0 (54.3, 61.3) |
Physical activity | ||||
Active | 166 | 12.6 (10.7, 14.3) | 210 | 27.2 (24.0, 30.3) |
Little active | 1156 | 87.4 (85.6, 89.2) | 563 | 72.8 (69.6, 75.9) |
Fruit consumption | ||||
≥3 portions/day | 273 | 20.6 (18.3, 22.7) | 170 | 22.0 (19.0, 24.8) |
<3 portions/day | 1054 | 79.4 (77.2, 81.6) | 604 | 78.0 (75.1, 80.9) |
Vegetables consumption | ||||
≥4 portions/day | 127 | 9.6 (7.9, 11.1) | 76 | 9.8 (7.6, 11.8) |
<4 portions/day | 1200 | 90.4 (88.8, 92.0) | 702 | 90.2 (88.1, 92.3) |
Smoking | ||||
No | 1241 | 94.0 (92.7, 95.2) | 721 | 92.7 (90.8, 94.5) |
Yes | 79 | 6.0 (4.7, 7.2) | 57 | 7.3 (5.5, 9.1) |
Alcohol use | ||||
No | 823 | 62.2 (59.5, 64.8) | 470 | 60.8 (57.3, 64.2) |
Yes | 500 | 37.8 (35.1, 40.4) | 303 | 39.2 (35.7, 42.6) |
Sports team participation | ||||
≥2 Sports team | 104 | 7.9 (6.4, 9.3) | 257 | 33.3 (29.9, 36.6) |
1 Sports team | 295 | 22.5 (20.1, 24.7) | 222 | 28.8 (25.5, 31.9) |
No Sports team | 915 | 69.6 (67.1, 72.1) | 292 | 37.9 (34.4, 41.3) |
CI: confidence interval.
Most boys were aged less than 16 years, had lighter skinned black, intermediate economic level, and maternal and paternal schooling less than nine years. Almost 73.0% were slightly physically active, 78.0% consumed less than three daily fruit servings, and 90.2% consumed less than four daily servings of greens and vegetables. Smoking prevalence was 7.3%, 39.2% drank alcoholic beverages, and 37.9% had not participated in any team sports in the 12 months preceding the survey (Table 1).
The prevalence of excess TV time in girls was 70.9%. Girls of high economic level, whose paternal schooling was high, and with low consumption of greens and vegetables had higher prevalence of excess TV time (P < 0.05). For boys, the prevalence of excess TV time was 66.2%. Those with dark skinned black had higher prevalence of excess TV time (P < 0.05) (Table 2).
Table 2.
Prevalence of excess television time (≥2 hours/day) according to independent variables.
Variables | Female | Male | ||
---|---|---|---|---|
n | % (95% CI) | n | % (95% CI) | |
Total | 941 | 70.9 (68.4, 73.3) | 515 | 66.2 (62.8, 69.5) |
Age (years) | P = 0.09* | P = 0.08* | ||
≤16 | 554 | 72.7 (69.5, 75.8) | 302 | 68.6 (64.2, 72.9) |
17-18 | 384 | 68.5 (64.5, 72.3) | 210 | 62.7 (57.4, 67.8) |
Skin color | P = 0.17† | P = 0.05† | ||
White | 128 | 73.9 (67.3, 80.5) | 68 | 62.9 (53.7, 72.2) |
Lighter skinned black | 499 | 68.8 (65.4, 72.2) | 260 | 64.8 (60.1, 69.5) |
Dark skinned black | 191 | 74.0 (68.6, 79.4) | 123 | 74.6 (67.8, 81.2) |
Socioeconomic status | P = 0.03* | P = 0.07* | ||
High | 204 | 73.6 (68.4, 78.8) | 131 | 60.3 (53.8, 66.9) |
Intermediate | 614 | 71.6 (68.6, 74.6) | 325 | 69.2 (64.9, 73.3) |
Low | 114 | 63.6 (56.5, 70.8) | 52 | 65.0 (54.3, 75.6) |
Maternal schooling | P = 0.97† | P = 0.48† | ||
>8 years | 324 | 70.7 (66.5, 74.9) | 210 | 67.9 (62.7, 73.1) |
≤8 years | 578 | 70.8 (67.7, 73.9) | 283 | 65.5 (61.0, 70.0) |
Paternal schooling | P = 0.05* | P = 0.95* | ||
>8 years | 334 | 73.8 (69.8, 77.9) | 198 | 66.4 (61.0, 71.8) |
≤8 years | 523 | 68.7 (65.4, 72.0) | 274 | 66.6 (62.1, 71.2) |
Physical activity | P = 0.16† | P = 0.22† | ||
Active | 110 | 66.2 (58.9, 73.5) | 146 | 69.5 (63.2, 75.8) |
Little active | 827 | 71.5 (68.9, 74.1) | 365 | 64.8 (60.8, 68.7) |
Fruit consumption | P = 0.69* | P = 0.88* | ||
≥3 portions/day | 191 | 69.9 (64.4, 75.4) | 113 | 66.4 (59.3, 73.6) |
<3 portions/day | 750 | 71.2 (68.4, 73.8) | 398 | 65.8 (62.1, 69.6) |
Vegetables consumption | P = 0.03* | P = 0.27* | ||
≥4 portions/day | 80 | 62.9 (54.4, 71.5) | 46 | 60.5 (49.2, 71.7) |
<4 portions/day | 861 | 71.7 (69.1, 74.3) | 469 | 66.8 (63.3, 70.3) |
Smoking | P = 0.13† | P = 0.93† | ||
No | 876 | 70.5 (68.0, 73.1) | 477 | 66.1 (62.6, 69.6) |
Yes | 62 | 78.4 (69.2, 87.7) | 38 | 66.6 (54.0, 79.2) |
Alcohol use | P = 0.82† | P = 0.60† | ||
No | 583 | 70.8 (67.7, 73.9) | 308 | 65.5 (61.2, 69.8) |
Yes | 357 | 71.4 (67.4, 75.3) | 204 | 67.3 (62.0, 72.6) |
Sports team participation | P = 0.99* | P = 0.37* | ||
≥2 Sports team | 74 | 71.1 (62.3, 80.0) | 175 | 68.0 (62.3, 73.8) |
1 Sports team | 209 | 70.8 (65.6, 76.0) | 152 | 68.4 (62.3, 74.6) |
No Sports team | 649 | 70.9 (67.9, 73.8) | 185 | 63.3 (57.7, 68.9) |
CI: confidence interval; *linear trend chi-square test; †heterogeneity chi-square test.
In the crude analysis (Table 3), girls of “high” and “intermediate” economic levels and with low consumption of greens and vegetables were more likely to have excess TV time. After adjustment, girls of “high” economic level and with low consumption of greens and vegetables were more likely to have excess TV time. Variable paternal schooling was on the threshold of association with excess TV time (P = 0.06), indicating that girls whose father had high educational level were more likely to have sedentary risk behavior compared to those whose father had low educational level.
Table 3.
Estimated odds ratios and 95% confidence intervals in the association between excess television time and independent variables in girls.
Variables | Crude analysis | P | Adjusted analysis* | P | ||
---|---|---|---|---|---|---|
OR | (95% CI) | OR | (95% CI) | |||
Age (years)1 | ||||||
≤16 | 1.0 | 0.09 | 1.0 | 0.11 | ||
17-18 | 0.8 | (0.6, 1.0) | 0.8 | (0.6, 1.1) | ||
Skin color1 | ||||||
White | 1.0 | 0.24 | 1.0 | 0.28 | ||
Lighter skinned black | 0.8 | (0.5, 1.1) | 0.7 | (0.5, 1.2) | ||
Dark skinned black | 1.1 | (0.6, 1.6) | 1.0 | (0.5, 1.8) | ||
Socioeconomic status2 | ||||||
High | 1.6 | (1.1, 2.3) | 0.05 | 1.6 | (1.1, 2.2) | 0.05 |
Intermediate | 1.4 | (1.1, 2.0) | 1.4 | (1.0, 1.9) | ||
Low | 1.0 | 1.0 | ||||
Maternal schooling2 | ||||||
>8 years | 1.0 | 0.97 | 1.0 | 0.32 | ||
≤8 years | 1.1 | (0.8, 1.2) | 1.2 | (0.8, 1.5) | ||
Paternal schooling2 | ||||||
>8 years | 1.0 | 0.06 | 1.0 | 0.06 | ||
≤8 years | 0.7 | (0.5, 1.0) | 0.7 | (0.6, 1.0) | ||
Physical activity3 | ||||||
Active | 1.0 | 0.16 | 1.0 | 0.24 | ||
Little active | 1.3 | (0.9, 1.8) | 1.2 | (0.8, 1.7) | ||
Fruit consumption3 | ||||||
≥3 portions/day | 1.0 | 0.69 | 1.0 | 0.99 | ||
<3 portions/day | 1.1 | (0.8, 1.4) | 1.0 | (0.7, 1.3) | ||
Vegetables consumption3 | ||||||
≥4 portions/day | 1.0 | 0.04 | 1.0 | 0.02 | ||
<4 portions/day | 1.5 | (1.1, 2.1) | 1.6 | (1.1, 2.3) | ||
Smoking3 | ||||||
No | 1.0 | 0.13 | 1.0 | 0.08 | ||
Yes | 1.5 | (0.8, 2.6) | 1.7 | (0.9, 3.0) | ||
Alcohol use3 | ||||||
No | 1.0 | 0.82 | 1.0 | 0.77 | ||
Yes | 1.1 | (0.8, 1.3) | 0.9 | (0.7, 1.3) | ||
Sports team participation3 | ||||||
≥2 Sports team | 1.0 | 0.99 | 1.0 | 0.86 | ||
1 Sports team | 0.9 | (0.6, 1.6) | 0.9 | (0.5, 1.6) | ||
No Sports team | 0.9 | (0.6, 1.5) | 0.9 | (0.6, 1.4) |
OR: odds ratio; CI: confidence interval; *adjusted Analysis: all variables were included in the adjusted analysis regardless of P value in the crude analysis. Adjusted model variables were retained with P value ≤ 0.20; superscript numbers (1, 2, 3, and 4) represent the input of variables in the hierarchic model for the adjusted analysis.
In the crude analysis (Table 4), boys with dark skinned black were more likely to have excess TV time. After adjustment, students aged ≤16 years and with dark skinned black were more likely to have excess TV time.
Table 4.
Estimated odds ratios and 95% confidence intervals in the association between excess television time and independent variables in boys.
Variables | Crude analysis | P | Adjusted analysis* | P | ||
---|---|---|---|---|---|---|
OR | (95% CI) | OR | (95% CI) | |||
Age (years)1 | ||||||
≤16 | 1.0 | 0.08 | 1.0 | 0.03 | ||
17-18 | 0.7 | (0.5, 1.0) | 0.7 | (0.5, 0.9) | ||
Skin color1 | ||||||
White | 1.0 | 0.05 | 1.0 | 0.04 | ||
Lighter skinned black | 1.1 | (0.6, 1.7) | 1.1 | (0.7, 1.7) | ||
Dark skinned black | 1.7 | (1.1, 2.9) | 1.8 | (1.1, 3.1) | ||
Socioeconomic status2 | ||||||
High | 0.8 | (0.4, 1.3) | 0.07 | 0.9 | (0.5, 1.4) | 0.08 |
Intermediate | 1.2 | (0.7, 1.9) | 1.2 | (0.8, 2.0) | ||
Low | 1.0 | 1.0 | ||||
Maternal schooling2 | ||||||
>8 years | 1.0 | 0.48 | 1.0 | 0.26 | ||
≤8 years | 0.9 | (0.6, 1.2) | 0.8 | (0.5, 1.1) | ||
Paternal schooling2 | ||||||
>8 years | 1.0 | 0.95 | 1.0 | 0.96 | ||
≤8 years | 1.1 | (0.7, 1.3) | 1.0 | (0.7, 1.4) | ||
Physical activity3 | ||||||
Active | 1.0 | 0.22 | 1.0 | 0.29 | ||
Little active | 0.9 | (0.5, 1.1) | 0.8 | (0.5, 1.1) | ||
Fruit consumption3 | ||||||
≥3 portions/day | 1.0 | 0.88 | 1.0 | 0.46 | ||
<3 portions/day | 0.9 | (0.7, 1.4) | 0.9 | (0.6, 1.3) | ||
Vegetables consumption3 | ||||||
≥4 portions/day | 1.0 | 0.27 | 1.0 | 0.39 | ||
<4 portions/day | 1.3 | (0.8, 2.1) | 1.3 | (0.7, 2.0) | ||
Smoking3 | ||||||
No | 1.0 | 0.93 | 1.0 | 0.94 | ||
Yes | 1.1 | (0.6, 1.8) | 1.1 | (0.5, 1.9) | ||
Alcohol use3 | ||||||
No | 1.0 | 0.60 | 1.0 | 0.19 | ||
Yes | 1.1 | (0.7, 1.4) | 1.2 | (0.9, 1.7) | ||
Sports team participation3 | ||||||
≥2 Sports team | 1.0 | 0.37 | 1.0 | 0.33 | ||
1 Sports team | 1.0 | (0.6, 1.4) | 0.9 | (0.6, 1.4) | ||
No Sports team | 0.8 | (0.5, 1.2) | 0.8 | (0.5, 1.1) |
OR: odds ratio; CI: confidence interval; *adjusted analysis: All variables were included in the adjusted analysis regardless of P value in the crude analysis. Model variables were retained with P value ≤ 0.20; superscript numbers (1, 2, 3, and 4) represent input of variables in the hierarchic model for the adjusted analysis.
4. Discussion
The main finding of this study was that the prevalence of excess TV time was very high, with slightly higher rates for girls. Correlated factors differed between girls and boys. In girls, high socioeconomic status and inadequate consumption of greens and vegetables were associated with excess TV time; in boys, being aged ≥16 years and dark skinned black were associated with this outcome.
Sedentary behaviors are distinct and independent from physical activity behaviors of various intensities >1.5 METs (i.e., light, moderate, and vigorous intensity) [1, 2]. Importantly, it is possible to meet physical activity recommendations and still engage in high amounts of sedentary behavior [3]. This paper focuses on excess TV time among young people, because in middle-income countries such as Brazil, the TV is cheaper than other electronics, such as computers and video games.
More girls than boys reported excess TV time, similar to results from adolescents in South Korea [21]. Research in the United States [22] examined different sedentary behaviors and reported that girls spent more time in sedentary activities than boys when the activity was sitting listening to music and talking on the phone; conversely, when the activity was to play video games, boys spent more time sitting than girls. In relation to time spent watching television, there were no differences between sexes [22]. As in the United States, adolescents aged 13 to 18 years from China also showed no differences between sexes when analyzing time spent watching TV [23]. Salmon et al. [8] summarized research from around the world and showed that 17–94% of adolescents of similar age failed to meet screnn time guidelines, but no sex breakdown was provided.
This study revealed that girls of high socioeconomic status were more likely to have excess TV time than those of low socioeconomic status. In a cohort study in Pelotas, Brazil [24], as in a cross-sectional study in the United States [25], adolescents with high socioeconomic status were more likely to have excess sedentary behavior. One possible explanation for this may be the fact that wealthier families have greater purchasing power and acquire more electronic equipment such as computers, video games, and televisions than poorer families, and this increased purchasing power favors increasingly sedentary activities, low physical activity levels, and consequently increased sedentary risk behavior [7].
This study also found low consumption of greens and vegetables was associated with excess TV time in girls. Similar results were reported in young people from Norway [26] and Pakistan [27]. The association between TV time and other sedentary risk behaviors and low consumption of greens and vegetables can be one of the environmental factors responsible for obesity [27]. Children and adolescents who spend excess time watching TV tend to feed improperly and, as a result, show greater body adiposity and metabolic disorders [21, 28]. In this sense, there is need for guidance in the school environment in order to reduce sedentary behavior through the practice of physical and sport activities while encouraging increasingly healthy eating habits among young people.
Older boys in this study were more likely to have excess TV time than younger ones. In research conducted in California, United States, no association was found between TV time and age [25]. In South Korea, young boys and girls (<16 years old) spent more time during the week watching TV than older ones (≥16 years) [21]. The lack of consensus between studies reinforces what has been found in a recent literature review on the subject, which pointed out that there is insufficient evidence regarding the factors associated with sedentary behavior in children and adolescents [8, 29]. Furthermore, there is limited evidence on the relationships among sedentary behaviors (of different types), correlates of sedentary behaviors, and subsequent health consequences.
In boys, dark skinned black was a factor associated with excess TV time. This finding is consistent with previous studies [25, 30] and inconsistent with a cohort study carried out in Brazil [24]. Further research is required to determine and resolve racial disparities in this and other lifestyle behaviors.
This study found no association between physical activity or sports team participation and excess TV time. This reinforces evidence that sedentary behaviors and physical activity behaviors often emerge independently and each needs to be addressed for public health purposes [2]. Other studies have found results similar to those of the present study in this regard [2, 6, 8, 31].
This study has some limitations, including the following. The analyses are based on cross-sectional data; therefore, a cause and effect relationship between independent variables and sedentary behavior cannot be drawn. The focus of the study was to analyze individual variables, which limit the inferences to the context of the person. Another limitation of this study was the investigation of only one sedentary behavior (time spent watching TV) among different existing sedentary behaviors (use of computer, video game, time sitting talking, reading, and talking on the phone). Data were not collected on whether adolescents had access to TV in their bedroom; this may be an important variable to collect in future research.
A major strength of this study is the use of data from an understudied population; adolescents primarily not from high social levels (almost 80% were from middle or lower SES status) enrolled in public high schools in Northeastern Brazil. The representative sample of this region of Brazil is another strong point of the study.
5. Conclusion
It could be concluded that adolescents from Aracaju, Brazil, have high prevalence of excess TV time, which may increase risk for future chronic diseases in this population. More girls have excess TV time than boys though in both sexes the prevalence is very high. Factors related to excess TV time differ according to sex, suggesting that intervention strategies may need to be tailored differently for girls and boys.
Conflict of Interests
The authors have no conflict of interests to disclose.
References
- 1.Owen N. Sedentary behavior: understanding and influencing adults' prolonged sitting time. Preventive Medicine. 2012;55(6):535–539. doi: 10.1016/j.ypmed.2012.08.024. [DOI] [PubMed] [Google Scholar]
- 2.Tremblay MS, Colley RC, Saunders TJ, Healy GN, Owen N. Physiological and health implications of a sedentary lifestyle. Applied Physiology, Nutrition and Metabolism. 2010;35(6):725–740. doi: 10.1139/H10-079. [DOI] [PubMed] [Google Scholar]
- 3.Tremblay MS, LeBlanc AG, Janssen I, et al. Canadian sedentary behaviour guidelines for children and youth. Applied Physiology, Nutrition and Metabolism. 2011;36(1):59–64. doi: 10.1139/H11-012. [DOI] [PubMed] [Google Scholar]
- 4.Pate RR, O’Neill JR, Lobelo F. The evolving definition of “sedentary”. Exercise and Sport Sciences Reviews. 2008;36(4):173–178. doi: 10.1097/JES.0b013e3181877d1a. [DOI] [PubMed] [Google Scholar]
- 5.Sedentary Behaviour Research Network. Letter to the editor: standardized use of the terms “sedentary” and “sedentary behaviours”. Applied Physiology, Nutrition and Metabolism. 2012;37(3):540–542. doi: 10.1139/h2012-024. [DOI] [PubMed] [Google Scholar]
- 6.Proper KI, Singh AS, van Mechelen W, Chinapaw MJM. Sedentary behaviors and health outcomes among adults: a systematic review of prospective studies. American Journal of Preventive Medicine. 2011;40(2):174–182. doi: 10.1016/j.amepre.2010.10.015. [DOI] [PubMed] [Google Scholar]
- 7.Tremblay MS, LeBlanc AG, Kho ME, et al. Systematic review of sedentary behaviour and health indicators in school-aged children and youth. The International Journal of Behavioral Nutrition and Physical Activity. 2011;8:p. 98. doi: 10.1186/1479-5868-8-98. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 8.Salmon J, Tremblay MS, Marshall SJ, Hume C. Health risks, correlates, and interventions to reduce sedentary behavior in young people. American Journal of Preventive Medicine. 2011;41(2):197–206. doi: 10.1016/j.amepre.2011.05.001. [DOI] [PubMed] [Google Scholar]
- 9.LeBlanc AG, Spence JC, Carson V, et al. Systematic review of sedentary behaviour and health indicators in the early years (aged 0–4 years) Applied Physiology, Nutrition and Metabolism. 2012;37(4):753–772. doi: 10.1139/h2012-063. [DOI] [PubMed] [Google Scholar]
- 10.Thorp AA, Owen N, Neuhaus M, Dunstan DW. Sedentary behaviors and subsequent health outcomes in adults: a systematic review of longitudinal studies, 1996–2011. American Journal of Preventive Medicine. 2011;41(2):207–215. doi: 10.1016/j.amepre.2011.05.004. [DOI] [PubMed] [Google Scholar]
- 11.Brazilian Institute of Geography and Statistics. Estimates of the resident population on 1 July 2009, according to cities. 2009, http://www.ibge.gov.br/home/
- 12.United Nations. Human Development Index, Municipal 1991 and 2000. All cities in Brazil. 2000, http://www.pnud.org.br/atlas/ranking/IDH-Globlal-2013.aspx?indiceAccordion=1&li=li_Ranking2013.
- 13.American Academy of Pediatrics. American Academy of Pediatrics: children, adolescents, and television. Pediatrics. 2001;107(2):423–426. doi: 10.1542/peds.107.2.423. [DOI] [PubMed] [Google Scholar]
- 14.Brazilian Institute of Geography. Census 2010. 2011, http://www.ibge.gov.br/home/estatistica/populacao/censo2010/default.shtm.
- 15.Brazilian Association of Research Companies. Brazil Economic Classification Criterion 2010. 2010, http://www.abep.org/
- 16.Guedes DP, Lopes CC. Validation of the Brazilian version of the 2007 Youth Risk Behavior Survey. Revista de Saúde Pública. 2010;44(5):840–850. doi: 10.1590/s0034-89102010000500009. [DOI] [PubMed] [Google Scholar]
- 17.Strong WB, Malina RM, Blimkie CJR, et al. Evidence based physical activity for school-age youth. The Journal of Pediatrics. 2005;146(6):732–737. doi: 10.1016/j.jpeds.2005.01.055. [DOI] [PubMed] [Google Scholar]
- 18.Philippi ST, Latterza AR, Cruz ATR, Ribeiro LC. Adapted food pyramid: a guide for a right food choice. Revista de Nutrição. 1999;12(1):65–80. [Google Scholar]
- 19.Victora CG, Huttly SR, Fuchs SC, Olinto MTA. The role of conceptual frameworks in epidemiological analysis: a hierarchical approach. International Journal of Epidemiology. 1997;26(1):224–227. doi: 10.1093/ije/26.1.224. [DOI] [PubMed] [Google Scholar]
- 20.Maldonado G, Greenland S. Simulation study of confounder-selection strategies. American Journal of Epidemiology. 1993;138(11):923–936. doi: 10.1093/oxfordjournals.aje.a116813. [DOI] [PubMed] [Google Scholar]
- 21.Byun W, Dowda M, Pate RR. Associations between screen-based sedentary behavior and cardiovascular disease risk factors in Korean youth. Journal of Korean Medical Science. 2012;27(4):388–394. doi: 10.3346/jkms.2012.27.4.388. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 22.Norman GJ, Schmid BA, Sallis JF, Calfas KJ, Patrick K. Psychosocial and environmental correlates of adolescent sedentary behaviors. Pediatrics. 2005;116(4):908–916. doi: 10.1542/peds.2004-1814. [DOI] [PubMed] [Google Scholar]
- 23.Cui Z, Hardy LL, Dibley MJ, Bauman A. Temporal trends and recent correlates in sedentary behaviours in Chinese children. The International Journal of Behavioral Nutrition and Physical Activity. 2011;8:p. 93. doi: 10.1186/1479-5868-8-93. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 24.Dumith SC, Garcia LM, Silva KS, Menezes AM, Hallal PC. Predictors and health consequences of screen-time change during adolescence-1993 Pelotas (Brazil) birth cohort study. The Journal of Adolescent Health. 2012;51(supplement 6):16–21. doi: 10.1016/j.jadohealth.2012.06.025. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 25.Babey SH, Hastert TA, Wolstein J. Adolescent sedentary behaviors: correlates differ for television viewing and computer use. The Journal of Adolescent Health. 2013;52(1):70–76. doi: 10.1016/j.jadohealth.2012.05.001. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 26.Kristiansen H, Júlíusson PB, Eide GE, Roelants M, Bjerknes R. TV viewing and obesity among Norwegian children: the importance of parental education. Acta Paediatrica. 2013;102(2):199–205. doi: 10.1111/apa.12066. [DOI] [PubMed] [Google Scholar]
- 27.Mushtaq MU, Gull S, Mushtaq K, Shahid U, Shad MA, Akram J. Dietary behaviors, physical activity and sedentary lifestyle associated with overweight and obesity, and their socio-demographic correlates, among Pakistani primary school children. The International Journal of Behavioral Nutrition and Physical Activity. 2011;8:p. 130. doi: 10.1186/1479-5868-8-130. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 28.Rey-López JP, Bel-Serrat S, Santaliestra-Pasías A, et al. Sedentary behaviour and clustered metabolic risk in adolescents: the HELENA study. Nutrition, Metabolism, and Cardiovascular Diseases. 2013;23(10):1017–1024. doi: 10.1016/j.numecd.2012.06.006. [DOI] [PubMed] [Google Scholar]
- 29.Uijtdewilligen L, Nauta J, Singh AS, et al. Determinants of physical activity and sedentary behaviour in young people: a review and quality synthesis of prospective studies. British Journal of Sports Medicine. 2011;45(11):896–905. doi: 10.1136/bjsports-2011-090197. [DOI] [PubMed] [Google Scholar]
- 30.Pate RR, Mitchell JA, Byun W, Dowda M. Sedentary behaviour in youth. British Journal of Sports Medicine. 2011;45(11):906–913. doi: 10.1136/bjsports-2011-090192. [DOI] [PubMed] [Google Scholar]
- 31.Rey-López JP, Ruiz JR, Vicente-Rodríguez G, et al. Physical activity does not attenuate the obesity risk of TV viewing in youth. Pediatric Obesity. 2012;7(3):240–250. doi: 10.1111/j.2047-6310.2011.00021.x. [DOI] [PubMed] [Google Scholar]