Journal of Adolescent Health
Volume 42, Issue 4 , Pages 360-368, April 2008

Correlates of Physical Activity Guideline Compliance for Adolescents in 100 U.S. Cities

  • Kathy Butcher, M.P.H.

      Affiliations

    • Graduate School of Public Health, San Diego State University, San Diego, California
  • ,
  • James F. Sallis, Ph.D.

      Affiliations

    • Department of Psychology, San Diego State University, San Diego, California
  • ,
  • Joni A. Mayer, Ph.D.

      Affiliations

    • Graduate School of Public Health, San Diego State University, San Diego, California
    • Corresponding Author InformationAddress correspondence to: Joni A. Mayer, Ph.D., 9245 Sky Park Ct., Ste. 220, San Diego, CA 92123.
  • ,
  • Susan Woodruff, Ph.D.

      Affiliations

    • Graduate School of Public Health, San Diego State University, San Diego, California

Received 3 May 2007; accepted 13 September 2007. published online 31 January 2008.

Article Outline

Abstract 

Purpose

This study assessed the rates and correlates of adolescents’ compliance with national guidelines for physical activity.

Methods

A cross-sectional phone survey of adolescents and their parents was conducted in the 100 largest cities in the United States in 2005. Adolescents ages 14–17 years (n = 6125) were asked how many days during the previous week and during a typical week they were physically active for at least 60 minutes. Compliance was defined as 5+ days per week. Parents provided data on teen’s age and race/ethnicity, parental education level, annual household income, and region of residence. Associations among these variables and compliance with physical activity guidelines were examined.

Results

Approximately 40% of the females and 57% of the males complied with the national physical activity guidelines. Logistic regression indicated that for both genders, compliance was significantly associated with having higher household income and that, for females only, compliance declined significantly with age. Region of residence did not predict compliance for either gender.

Conclusion

A majority of the girls and a large portion of the boys failed to meet the current guidelines, thereby increasing their risks of multiple health problems. Targeting intervention resources for low income teens and older adolescent teen girls is recommended.

Keywords: Physical activity, Adolescents, Compliance

 

See Editorial p. 327

Lack of physical activity in youth is a risk factor for overweight and obesity, higher triglyceride levels, anxiety, and depression [1], as well as for elevated blood pressure [1], [2] and type II diabetes [3]. Obesity is now viewed as a major health problem in children and adolescents because of its rapid increase in prevalence [4], association with various health problems [5], and concern that obesity and its associated health problems persist into adulthood [4], [6]. The prevalence of overweight in teens increased from 5% in the 1960s to 14% in 2000, with minority individuals having even higher rates [7]. The youth obesity epidemic has heightened interest in physical activity, which is recommended as a part of obesity control [8] and health promotion in general [9].

A panel from the Centers for Disease Control and Prevention [1] as well as the current (as of 2006) U.S. Dietary Guidelines [10] states that adolescents need to accumulate at least 60 minutes of moderate physical activity most, if not all, days of the week. Data from the National Longitudinal Study of Adolescent Health (Add Health) survey revealed that the majority of males and an even higher proportion of females did not engage in moderate-to-vigorous physical activity (of five to eight multiples of resting energy expenditure [METs]) 5 or more days per week [11]. According to the Healthy People 2010 database, only 26% of adolescents complied with the recommendation of at least 30 minutes per day of moderate physical activity (not causing hard breathing), 5 days per week, with females being lower than males (23% vs. 28%). When compared with vigorous physical activity (i.e., that which causes hard breathing), an average of 65% of adolescents (73% of males and 57% of females) met the standards [12]. There are important limitations to these national prevalence estimates. None of the measures used validated items; and at the time that our study was conducted, none of the published prevalence estimates had been based on the current guidelines of at least 60 minutes of moderate-to-vigorous physical activity at least 5 days per week. Thus at the time of our data collection there were no appropriate national physical activity guideline compliance estimates for adolescents.

A systematic review of 54 studies identified several demographic correlates of adolescent physical activity [13]. The most consistent findings were that males were more active than females and that non-Hispanic white individuals had higher levels of physical activity than other ethnoracial groups. In addition an inverse relationship between age and physical activity level was found in 70% of the studies. Although socioeconomic status was not consistently related to physical activity [13], one national study found adolescents had a greater probability of engaging in higher levels of physical activity when their mothers were well educated or their parents’ income was $50,000 or more per year [14].

The Surgeon General’s Call to Action to Prevent and Decrease Overweight and Obesity in 2001 stated that there was a lack of national data to assess whether “adolescents meet the Federal recommendations” for physical activity [8]. The purpose of the present study was to assess the proportion of adolescents in a multi-city, U.S. sample that met the guidelines of 60 minutes of moderate-to-vigorous physical activity at least 5 days per week, along with the correlates of guideline compliance. Although it is not ideal to base prevalence estimates on self-report measures because of the potential for inaccuracy and bias [15], self-report was the only feasible validated approach for the present study. Based on results from previous studies, we predicted that the following characteristics would be associated with higher levels of guideline compliance: being male, identifying as being of non-Hispanic white ethnicity, having higher parental education and income levels, and being of younger age.

Back to Article Outline

Methods 

Background 

The Correlates of Indoor Tanning in Youth (CITY100) Teen/Parent survey was a health questionnaire and one component of a study assessing indoor tanning practices of adolescents living in the 100 largest U.S. cities [16]. The survey instruments were adapted from teen/parent indoor tanning surveys developed by Stryker et al [17]. We added items to assess several other health-related behaviors, including physical activity. We believed that introducing the survey as a teen “health” survey, versus a survey specific to one specific behavior such as indoor tanning or physical activity, would produce less self-selection bias. Survey procedures were approved by the Institutional Review Board at San Diego State University in San Diego, California.

Participants 

Adolescents ages 14–17 years and one caregiver of each were contacted via telephone from January through December 2005. The participants resided in the 100 most populous U.S. cities [18]. The goal was to interview 60 adolescent/parent pairs from each city. The 100 cities represented 34 states and the District of Columbia. When possible, a female caregiver (i.e., mother, stepmother, other guardian, etc.) was interviewed, but when a female caregiver was unavailable a male caregiver was interviewed. The female caregiver was preferred because some of the parent interview items asked about the parent’s knowledge of the teen’s indoor tanning behavior, and our formative work indicated that the female caregiver would be more knowledgeable about this. Eligibility criteria consisted of the teen being between the ages of 14–17 years and both the teen and parent being English speaking.

A professional survey sampling firm generated lists of potential participant households for each of the 100 cities. They used a targeted age sampling process to maximize the probability of a teen residing in the home. Professional interviewers who were trained and regularly monitored made a minimum of 10 contact attempts per household before considering that phone number unreachable.

The interviewer introduced the survey as a teen health questionnaire sponsored by the National Institutes of Health. A brief description of the survey was given to the parent at the beginning of the conversation, eligibility was established, and oral consent for both parent and teen was obtained from the parent. The parent was interviewed first. Assent by the teen was given at the beginning of the teen’s interview. If more than one teen aged 14–17 years lived in the household, one teen was chosen at random by computer to be interviewed. The parent survey lasted approximately 5 minutes and the adolescent survey 15 minutes.

Selected survey items 

Teens were asked about their own moderate-to-vigorous physical activity (roughly three or more multiples of resting energy expenditure) using two items, which had been validated using accelerometer data with adolescents in a self-administered format [19]. The definition of physical activity that was given was “any activity that increases your heart rate and makes you get out of breath some of the time,” and examples provided included both moderate and vigorous physical activities. Adolescents were instructed to add physical activity for all purposes throughout the day. Activity during physical education was excluded because low activity levels during most physical education classes [20] were expected to lead to overreporting. The first item was, “Over the past 7 days, on how many days were you physically active for a total of at least 60 minutes per day?” The response options ranged from 0–7 days. The second item was similar in wording but asked about physical activity during a “typical or usual week.” In the validation study, a mean of the two items was more reliable and valid than either item alone. The composite measure showed an intraclass test–retest reliability correlation of .77 and correlated significantly with accelerometer data (r = .40, p < .001). These results were comparable to other, longer, multi-day physical activity recalls of youth physical activity. The two-item measure also demonstrated a 63% correct classification rate, a 71% sensitivity rate, and a 40% false-positive rate, based on comparisons to accelerometer data [19]. Comparable data are not available for other self-reports. Further support for validity of the two-item measure was provided by findings that higher physical activity was associated with lower odds of being overweight in 29 of 33 countries participating in an international study [21].

Selected demographic characteristics of parents and teens were used in analyses. These included highest level of education of the consenting parent (less than high school, high school graduate, vocational or business school, some college but less than a bachelor’s degree, college graduation, or advanced degree); and annual household income (less than $20,000, $20,000–40,000, $40,000–60,000, and more than $60,000). Ethnic/racial information about the parent and teen was obtained from the parent. Parents were asked for the teen’s gender and age. To our knowledge, the reliability and validity of the specific demographic items we used have never been evaluated. City of residence was coded as one of the four U.S. Census–based regions (Northeast, Midwest, South, and West) [22].

Data analysis 

Data were analyzed using the Statistical Package for the Social Sciences (SPSS), version 14 (SPSS Inc., Chicago, IL). Descriptive data were generated for all predictor variables and the outcome variable. The outcome variable was compliance with physical activity guidelines. To create the compliance variable, the mean of the two physical activity items was first computed. It then was recoded as a dichotomous variable, based on the following cutoffs: 0–4 days was coded as noncompliant with the guidelines, and 5–7 days was coded as compliant.

Teen’s gender, teen’s race/ethnicity, teen’s age, household income, parental education, and family’s region of residence were used as independent variables. The number of categories was reduced for some variables (i.e., age, income, and education) to simplify the multivariate analyses and to make the odds ratios easier to interpret. Because of well-documented gender differences in physical activity, all analyses described below were gender specific. First χ2 tests were performed to evaluate possible associations between the predictor variables and guideline compliance; then two logistic regression analyses were conducted (one for males and one for females) to assess how well each predictor variable independently predicted guideline compliance [23]. Because individuals within the same city may share characteristics that make them nonindependent even after measured characteristics are taken into account [24], [25], we used generalized estimating equations (GEE) to adjust for clustering within cities (SAS PROC GENMOD, version 8; SAS Institute Inc., Cary, NC).

Back to Article Outline

Results 

Response rates and sample characteristics 

Of the 8176 households that were reached and met eligibility criteria, 6125 households agreed to participate, for a cooperation rate of 74.9%. All 6125 households generated data on a teen; 71 of these households did not have accompanying parent data. Parents were missed when the parent requested an interview on a later date but was then not reachable. Table 1 shows the number of adolescent participants from each of the 100 cities, organized by region. There were 2962 male and 3153 female teens for a 48.4% and 51.5% distribution, respectively; data on gender were unavailable for 10 teens. Table 2 shows the distributions of predictor and outcome variables. The mean age was 15.8 years (S.D. = 1.12) and the mean days of physical activity for the overall sample was 4.44 (S.D. = 1.90), with 4.80 (S.D. = 1.85) for males and 4.10 (S.D. = 1.88) for females. For males and females combined, 47.9% complied with the physical activity guidelines.

Table 1. Cities included in study sample, with numbers of participants, by region
Northeast Midwest
Boston, MA60Akron, OH64
Buffalo, NY61Chicago, IL63
Jersey City, NJ60Cincinnati, OH61
New York, NY60Cleveland, OH61
Newark, NJ60Columbus, OH61
Philadelphia, PA62Des Moines, IA60
Pittsburgh, PA61Detroit, MI61
Rochester, NY64Fort Wayne, IN60
Yonkers, NY60Grand Rapids, MI64
South Indianapolis, IN60
Arlington, TX61Kansas City, MO60
Atlanta, GA61Lincoln, NE63
Augusta, GA61Madison, WI62
Austin, TX64Milwaukee, WI62
Baltimore, MD60Minneapolis, MN61
Baton Rouge, LA60Omaha, NE60
Birmingham, AL61St. Louis, MO61
Charlotte, NC63St. Paul, MN64
Chesapeake, VA61Toledo, OH61
Corpus Christi, TX62Wichita, KS64
Dallas, TX61West
El Paso, TX61Albuquerque, NM61
Fort Worth, TX60Anaheim, CA60
Garland, TX60Anchorage, AK70
Greensboro, NC61Aurora, CO60
Hialeah, FL61Bakersfield, CA62
Houston, TX61Colorado Springs, CO63
Irving, TX60Denver, CO63
Jacksonville, FL60Fremont, CA61
Lexington, KY63Fresno, CA61
Louisville, KY63Glendale, AZ60
Lubbock, TX61Glendale, CA61
Memphis, TN60Honolulu, HI61
Miami, FL60Las Vegas, NV61
Mobile, AL61Long Beach, CA61
Montgomery, AL60Los Angeles, CA60
Nashville, TN60Mesa, AZ63
New Orleans, LA61Oakland, CA61
Norfolk, VA60Phoenix, AZ61
Oklahoma City, OK62Portland, OR60
Plano, TX60Riverside, CA62
Raleigh, NC60Sacramento, CA60
Richmond, VA61San Diego, CA61
San Antonio, TX62San Francisco, CA60
Shreveport, LA62San Jose, CA60
St. Petersburg, FL63Santa Ana, CA61
Tampa, FL59Scottsdale, AZ62
Tulsa, OK63Seattle, WA60
Virginia Beach, VA61Spokane, WA62
Washington, DC64Stockton, CA61
Tacoma, WA60
Tucson, AZ60
Table 2. Characteristics of study sample
VariableEntire sample (N = 6125)Males (n = 2962)Females (n = 3153)
Teen age (years)a
14–153164(51.8%)1505(51.1%)1655(52.6%)
16–172943(48.2%)1444(49.0%)1493(47.4%)
Teen race/ethnicity
Non-Hispanic white4135(69.0%)2025(70.2%)2110(68.0%)
Non-Hispanic black447(7.5%)189(6.6%)256(8.2%)
Non-Hispanic multi-racial631(10.5%)301(10.4%)329(10.6%)
Non-Hispanic otherb or unknown race139(2.3%)773(2.7%)62(2.0%)
Hispanic white273(4.6%)132(4.6%)141(4.5%)
Hispanic otherb or unknown race or multi-racial367(6.1%)161(5.6%)206(6.6%)
Household incomea
<$40,000837(14.8%)362(13.4%)475(16.3%)
$40,000–60,0001040(18.5%)500(18.4%)539(18.5%)
>$60,0003744(66.6%)1849(68.2%)1894(65.1%)
Parental educationa
Less than college degree2786(46.2%)1290(44.3%)1494(48.0%)
College degree or higher3241(53.8%)1619(55.7)1621(52.0)
Geographic region
Northeast548(8.9%)261(8.8%)287(9.1%)
Midwest1233(20.1%)588(19.9%)640(20.3%)
South2445(39.9%)1189(40.1%)1251(39.7%)
West1899(31.0%)924(31.2%)975(30.9%)
Composite physical activity score (days)
0142(2.3%)41(1.4%)101(3.2%)
.597(1.6%)38(1.3%)59(1.9%)
1.0169(2.8%)59(2.0%)110(3.5%)
1.5173(2.8%)73(2.5%)100(3.2%)
2.0273(4.5%)110(3.7%)163(5.2%)
2.5359(5.9%)138(4.7%)221(7.0%)
3.0484(7.9%)194(6.5%)290(9.2%)
3.5455(7.4%)184(6.2%)271(8.6%)
4.0604(9.9%)247(8.3%)357(11.3%)
4.5427(7.0%)199(6.7%)228(7.2%)
5.0699(11.4%)338(11.4%)361(11.4%)
5.5369(6.0%)201(6.8%)168(5.3%)
6.0577(9.4%)312(10.5%)265(8.4%)
6.5315(5.2%)204(6.9%)111(3.5%)
7.0972(15.9%)624(21.1%)348(11.0%)

aSome categories of this variable were combined.

bOther races include American Indian, Asian, Pacific Islander, and other–unspecified.

For 10 teens data for gender were missing; however data for all 6125 teens (for whom data were available on the other factors) are included in this column.

Bivariate analyses 

Sex was strongly associated with compliance, with approximately 57% of the male teens versus 40% of the female teens meeting the guidelines (χ2 = 175.7, p < .001). Table 3 shows the guideline compliance data, by categories of the predictor variables, and the results from χ2 tests by gender. Among both females and males, those teens with higher household incomes and those whose parents had higher educational attainment consistently were more likely to comply with the guidelines. Among females only, younger teens were significantly more likely to comply than older teens. A significant association between race/ethnicity and compliance was found only for males, with a range in compliance of approximately 61% among those of Hispanic white ethnicity to 42% among those of non-Hispanic other ethnicity. Geographic region and compliance were not related.

Table 3. Results from χ2 tests of associations between physical activity guideline compliance and select variables
VariableMales (n = 2962)Females (n = 3153)
% Complianceχ2% Complianceχ2
Teen age (years)a 2.3 9.3⁎⁎
14–1557.9 42.3
16–1755.2 37.0
Teen race/ethnicity 11.1 3.7
Non-Hispanic white57.2 40.7
Non Hispanic black51.3 38.7
Non-Hispanic multi-racial57.8 37.4
Non-Hispanic otherb or unknown race41.6 41.9
Hispanic white61.4 34.0
Hispanic otherb or unknown race or multi-racial55.3 39.8
Household incomea 9.1 21.1⁎⁎⁎
<$40,00051.9 35.8
$40,000–60,00053.8 32.8
>$60,00059.1 42.8
Parental educationa 4.1 11.2⁎⁎⁎
Less than college degree54.5 36.7
College degree or higher58.2 42.6
Geographic region 3.8 6.0
Northeast55.9 36.2
Midwest56.6 38.0
South58.6 39.2
West54.4 42.7

aSome categories of this variable were combined.

bOther races include American Indian, Asian, Pacific Islander, and other–unspecified.

p = .05.

⁎⁎p < .01.

⁎⁎⁎p < .001.

Logistic regression analysis 

A logistic regression analysis was performed to evaluate which correlates of physical activity were the most important and to assess their independent association with physical activity guideline compliance. As shown in Table 4, for males, the only variables that significantly predicted compliance were household income and race/ethnicity. Of male adolescents, those in the highest (vs. lowest) income category and those who were non-Hispanic white (vs. non-Hispanic other or unknown race) were significantly more likely to comply. As shown in Table 5, females who were younger and who had the highest (vs. lowest) household income were more likely to comply with the guidelines.

Table 4. Results from logistic regression predicting physical activity guideline compliance, males only
VariableBeta weightSEpAdjusted OR95% CI for adjusted OR
LowerUpper
Teen age (years)a
14–151.00
16–17−.12.08.14.89.761.04
Teen race/ethnicity
Non-Hispanic white1.00
Non-Hispanic black−.19.16.24.83.601.13
Non-Hispanic otherb or unknown race−.55.26.04.58.35.96
Non-Hispanic multi-racial.08.13.561.08.841.39
Hispanic otherb or unknown race or multi-racial.06.18.751.06.751.50
Hispanic white.25.19.191.29.881.88
Household incomea
<$40,0001.00
$40,000–60,000.05.14.731.05.791.39
>$60,000.26.13.031.301.021.66
Parental educationa
Less than college degree1.00
College degree or higher.04.09.611.04.881.23
Geographic region
Northeast1.00
Midwest.01.16.941.01.741.39
South.10.15.501.11.831.48
West−.08.15.59.92.691.24

CI = confidence interval; OR = odds ratio; SE = standard error.

Dash indicates that parameter/value is missing for this category because it is the reference group.

aSome categories of this variable were combined.

bOther races/ethnicities include American Indian, Asian, Pacific Islander, and other–unspecified.

Table 5. Results from logistic regression predicting physical activity guideline compliance, females only
VariableBeta weightSEpAdjusted OR95% CI for adjusted OR
LowerUpper
Teen age (years)a
14–151.00
16–17−.22.08.004.81.69.94
Teen race/ethnicity
Non-Hispanic white1.00
Non-Hispanic black.04.15.781.04.781.39
Non-Hispanic otherb or unknown race.21.28.441.24.722.14
Non-Hispanic multi-racial other−.15.13.25.86.661.11
Hispanic otherb or unknown race or multi-racial.07.16.661.07.781.47
Hispanic white−.17.19.38.85.581.23
Household incomea
<$40,0001.00
$40,000–60,000−.17.14.21.84.651.09
>$60,000.24.12.0431.271.011.59
Parental educationa
Less than college degree1.00
College degree or higher.16.08.061.171.001.37
Geographic region
Northeast1.00
Midwest.01.16.941.01.751.38
South.06.15.671.07.801.41
West.16.15.301.17.871.56

CI = confidence interval; OR = odds ratio; SE = standard error.

Dash indicates that parameter/value is missing for this category because it is the reference group.

aSome categories of this variable were combined.

bOther races/ethnicities include American Indian, Asian, Pacific Islander, and other–unspecified.

Individuals living in the same city may be more similar to each other than individuals living in other cities in that they share a number of characteristics (e.g., economic, social) that may influence physical activity. To assess the degree to which our physical activity guideline compliance results could be accounted for by city-level clustering, prediction analyses for the separate female and male samples were repeated using generalized estimating equations (GEE) [24], [25]. GEE logistic models, using a logit link and a binary mean-variance relation, were fitted using teen age, teen race/ethnicity, parental education level, household income level, and region of residence. City was used as the cluster variable. Regression coefficients and significance levels from the GEE analyses (data not shown) were almost identical to those of the earlier logistic models, indicating a minimal effect of city-level clustering. The intraclass correlation coefficient (ICC) was .006.

Back to Article Outline

Discussion 

Using a validated measure and a large, multi-city U.S. sample, we found that under half of the adolescents met the current physical activity guidelines for youth. These data highlight the need for interventions to promote more physical activity, especially for those groups found to have substantially lower compliance levels. As expected, there were large gender differences, with 57% of males versus 40% of females meeting guidelines. This is a large difference, indicating that many more males than females are being physically active enough to gain health benefits and that more interventions are needed to target adolescent females [26]. After the collection of our data, the first report was published that provided national data for adolescent physical activity guideline compliance. The Youth Risk Behavior Surveillance System–2005 (YRBSS) prevalence estimates indicated that approximately 44% of the males and approximately 28% of the females were meeting the guidelines [27], which mirrored the gender differences found in our study.

Age was a significant correlate of physical activity prevalence in females but not males. Among females, 42% in the younger age group and 37% in the older age group met the guidelines. The YRBSS–2005 found an overall decline with age, but, similar to our data, it was more pronounced for females [27]. More specifically, for females the proportions of those in grades 9, 10, 11, and 12 who met the guidelines were 30.8%, 30.0%, 25.1%, and 24.0%, respectively. These estimates for males were 42.8%, 46.8%, 43.8%, and 41.9%, respectively. Other researchers also have found that during adolescence, physical activity and the number of activities decreases with age [13], [28]. Physical activity programs need to focus on keeping younger teens, especially younger females, active throughout adolescence and concurrently increase older teens’ physical activity levels.

In multivariate analyses, race/ethnicity was not a strong correlate of compliance (Table 4, Table 5). Only among males was this variable significant, with non-Hispanic “others” (41%) being lower than non-Hispanic whites (57%). Although not significant, it is interesting that Hispanic white males (61%) had the highest prevalence rates, and non-Hispanic blacks were relatively low at 44%. There was little variation by race/ethnicity among females, but the lowest prevalence rate was for Hispanic white females (34%). Thus there was a particularly large gender difference for Hispanic adolescents. A comprehensive review [13] found non-Hispanic whites generally were more physically active than other racial and ethnic groups, but almost 25% of the comparisons were nonsignificant. Thus there are several studies reporting no racial/ethnic differences, as found in the present study. The YRBSS–2005 found that white students (38.7%) were more likely to meet guidelines than black (29.5%) or Hispanic (32.9%) students [27]. It is possible the telephone recruitment method and/or our language-based eligibility criterion produced an undersampling of low-income groups, reducing the common socioeconomic status confounding with race/ethnicity.

Teens from higher income households also were significantly more likely to comply with guidelines, which is similar to past research results. Analyses of the Add Health data found that household income levels were related to inactivity [6], and a higher socioeconomic status was associated with higher physical activity [14]. For both males and females, multivariate analyses showed significant associations for family income, with a 7–percentage point difference across the income percentiles for both genders. This additional evidence of income disparities in physical activity prevalence indicates the high priority that needs to be placed on interventions for low-income adolescents.

There were no differences in physical activity guideline compliance levels across U.S. regions. This contradicts findings from one study, which found that teens living in the Northeast had higher levels of physical activity [14] and findings from another study, which found physical activity prevalence lowest in the South and highest in the West [29]. Moreover state-specific estimates of guideline compliance in YRBSS–2005 ranged from 29.6–45.9% [27]. The inconsistency could be caused by methodological differences between the studies. For example our study was conducted only in relatively large cities, which may mask regional differences accounted for by physical activity levels of those living in small cities and rural areas.

The present study had several limitations. First, it was a cross-sectional study, and therefore conclusions about causal associations cannot be made. Second, the data were based on self-reported physical activity, although the physical activity measure had been well validated in a sample of the same age. Self-reports usually overestimate objectively measured physical activity [15], so it is likely the actual prevalence of meeting guidelines is lower than the figures reported here. In the absence of national data based on objective measures, it is not possible to assess the magnitude of overreporting. Third, the survey was administered only in English. As noted earlier, this exclusion criterion may have biased our samples of certain ethnoracial groups (e.g., Hispanics) and may reduce our ability to generalize the findings to non–English speaking adolescents or adolescents whose parents do not speak English. Fourth, adolescents in smaller cities and rural areas were excluded, which may further limit external validity. Fifth, our sample was disproportionately non-Hispanic white, of relatively high income and education, and living in the West and South regions. Finally, those without telephones did not participate in the survey and any telephone noncoverage bias could affect our estimates. Therefore the physical activity guideline compliance rates that we report should not be assumed to be those of a nationally representative U.S. sample. The factors mentioned here also may help explain why our estimates for both males and females were higher than those reported for the YRBSS–2005 sample [27].

On the other hand, the rates may be representative of U.S. urban teens; and, given the size of the sample, the findings regarding the correlates of compliance likely are stable. Another methodological strength was the use of a previously validated physical activity measure [19] designed to reflect compliance with current public health guidelines. A third strength was the minimization of self-selection biases because of the good cooperation rate and because prospective participants were asked to participate in a general teen health survey—not a physical activity survey.

In conclusion, identifying groups of adolescents at high risk for inactive lifestyles can assist public health planners. If teens at risk for low physical activity can be identified based on their parents’ or their own demographic characteristics, limited resources could be used more effectively. Our data indicated that a majority of adolescent girls and a large proportion of adolescent boys failed to meet guidelines for physical activity, so about half of urban adolescents in the U.S. appear to be increasing their risks for multiple physical and mental health problems. Low-income adolescents and older adolescent females were the highest risk groups, so intervention resources should be targeted for these subpopulations. Because of the multiple health implications of inadequate physical activity [1] and potential contributions to obesity control [8], more definitive estimates of youth physical activity prevalence are needed, based on objective measures in representative national samples.

Back to Article Outline

Acknowledgments 

This study was funded by grants R01CA93532 and K05CA10051 from the National Institutes of Health/National Cancer Institute. We thank Debra Rubio for assistance with manuscript preparation.

Back to Article Outline

References 

  1. Strong WB, Malina RM, Blimkie CJ, et al. Evidence based physical activity for school-age youth. J Pediatr. 2005;146:732–737
  2. Francis K. Physical activity in the prevention of cardiovascular disease. Phys Ther. 1996;76:456–468
  3. Libman I, Arslanian S. Type 2 diabetes in childhood: The American perspective. Horm Res. 2003;591(Suppl):69–761
  4. Calderon KS, Yucha CB, Schaffer SD. Obesity-related cardiovascular risk factors: Intervention recommendations to decrease adolescent obesity. J Pediatr Nurs. 2005;20:3–14
  5. Gordon-Larsen P, McMurray RG, Popkin BM. Adolescent physical activity and inactivity vary by ethnicity: The National Longitudinal Study of Adolescent Health. J Pediatr. 1999;135:301–306
  6. Gordon-Larsen P, Adair LS, Popkin BM. Ethnic differences in physical activity and inactivity patterns and overweight status. Obes Res. 2002;10:141–149
  7. Ogden CL, Flegal KM, Carroll MD, et al. Prevalence and trends in overweight among US children and adolescents, 1999–2000. JAMA. 2002;288:1728–1732
  8. U.S. Department of Health and Human Services. The Surgeon General’s Call to Action to Prevent and Decrease Overweight and Obesity. Rockville, Maryland: U.S. Department of Health and Human Services, Public Health Service, Office of the Surgeon General Public Health Service, Office of the Surgeon General; 2001;
  9. U.S. Department of Health and Human Services. Healthy People 2010. 2nd ed.. Washington, DC: U.S. Government Printing Office; November 2000;
  10. Department of Agriculture. Dietary Guidelines for Americans 2005 Chapter 4 [Department of Health and Human Services Report]. Washington, DC: U.S. Government Printing Office; 2005;
  11. Gordon-Larsen P, Nelson MC, Popkin BM. Longitudinal physical activity and sedentary behavior trends: Adolescence to adulthood. Am J Prev Med. 2004;27:277–283
  12. Centers for Disease Control, National Center for Health Statistics, Division of Health Promotion Statistics. Data 2010 … The Healthy People 2010 Database. 2004;[Online]. Available at: http://www.healthypeople.gov/Data/data2010.htm [Path: Proceed to Data2010, focus area, physical activity and fitness]. Accessed January 2, 2007
  13. Sallis JF, Prochaska JJ, Taylor WC. A review of correlates of physical activity of children and adolescents. Med Sci Sports Exerc. 2000;32:963–975
  14. Gordon-Larsen P, McMurray RG, Popkin BM. Determinants of adolescent physical activity and inactivity patterns. Pediatrics. 2000;105:E83
  15. Sallis JF, Saelens BE. Assessment of physical activity by self-report: Status, limitations, and future directions. Res Q Exerc Sport. 2000;71:S1–S14
  16. Hoerster KD, Mayer JA, Woodruff SI, et al. The influence of parents and peers on adolescent tanning behavior: Findings from a multi-city sample. J Am Acad Dermatol. 2007;57:990–997
  17. Stryker JE, Lazovich D, Forster JL, et al. Maternal/female caregiver influences on adolescent indoor tanning. J Adolesc Health. 2004;35:528;e521–9
  18. United States Census Bureau. Population of the 100 Largest Cities and Other Urban Places in the United States 1790 to 1990. [Online] http://www.census.gov.population/www/documentation/twps0027.htmlAccessed September 1, 2006
  19. Prochaska JJ, Sallis JF, Long B. A physical activity screening measure for use with adolescents in primary care. Arch Pediatr Adolesc Med. 2001;155:554–559
  20. Stone EJ, McKenzie TL, Welk GJ, et al. Effects of physical activity interventions in youth (Review and synthesis). Am J Prev Med. 1998;15:298–315
  21. Janssen I, Katzmarzyk PT, Boyce WF, et al. Comparison of overweight and obesity prevalence in school-aged youth from 34 countries and their relationships with physical activity and dietary patterns. Obes Rev. 2005;6:123–132
  22. U.S. Census Bureau. Census Regions and Divisions of the United States. [Online] www.census.gov/gov/geo/www/us_regdiv.pdfAccessed June 15, 2006
  23. Hosmer D, Lemeshow S. Applied Logistic Regression. New York: Wiley; 1989;
  24. Liang KY, Zeger SL. Longitudinal data analysis using generalized linear models. Biometricka. 1986;11:283–286
  25. Zeger SL, Liang KY. Longitudinal data analysis for discrete and continuous outcomes. Biometrics. 1986;42:121–130
  26. Stevens J, Murray DM, Catellier DJ, et al. Design of the Trial of Activity in Adolescent Girls (TAAG). Contemp Clin Trials. 2005;26:223–233
  27. Eaton D, Kann L, Kinchen S, et al. Centers for Disease Control and Prevention Youth Risk Behavior Surveillance–United States, 2005. MMWR Surveil Summ. 2006;55:SS–51–107
  28. Aaron DJ, Storti KL, Robertson RJ, et al. Longitudinal study of the number and choice of leisure time physical activities from mid to late adolescence: Implications for school curricula and community recreation programs. Arch Pediatr Adolesc Med. 2002;156:1075–1080
  29. Springer AE, Hoelscher DM, Kelder SH. Prevalence of physical activity and sedentary behaviors in the U.S. high school students by metropolitan status and geographic region. J Phys Activ Health. 2006;3:365–380

PII: S1054-139X(07)00429-6

doi:10.1016/j.jadohealth.2007.09.025

Refers to article:

  • Physical Activity in Adolescents: From Associations to Interventions

    John R. Sirard, Daheia J. Barr-Anderson
    Journal of Adolescent Health April 2008 (Vol. 42, Issue 4, Pages 327-328)

Journal of Adolescent Health
Volume 42, Issue 4 , Pages 360-368, April 2008