Sociodemographic Determinants of Physical Activity and Sport Participation among Women in the United States
Abstract
1. Introduction
2. Methods
2.1. Participants
2.2. BRFSS Survey and Variables
2.3. Statistical Analyses
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Sport | Conditioning Exercise | Recreation | Household Tasks |
Badminton | Active Game Device (i.e., Wii) | Backpacking | Carpentry |
Basketball | Aerobics class | Boating | Childcare |
Bicycling | Bicycle machine | Bowling | Farming/ranching |
Boxing | Calisthenics | Canoeing | Gardening |
Golf | Dancing | Fishing | Housework (vacuuming) |
Handball | Elliptical machine | Frisbee | Mowing lawn |
Hockey | Inline skating | Hiking | Painting house |
Lacrosse | Jogging | Horseback riding | Raking lawn |
Mountain climbing | Karate | Hunting—small and large game | Snow blowing |
Racquetball | Pilates | Paddleball | Snow shoveling |
Running | Rope skipping | Snorkeling | Yard work |
Ruby | Rowing machine | Stream fishing | - |
Rock climbing | Scuba diving | Swimming—not laps | - |
Soccer | Skateboarding | Table tennis | - |
Softball/baseball | Ice-skating | Waterskiing | - |
Squash | Snow skiing | - | - |
Tennis | Snowshoeing | - | - |
Touch football | Stairmaster | - | - |
Volleyball | Surfing | - | - |
Wrestling | Swimming—laps | - | - |
- | Tai chi | - | - |
- | Walking | - | - |
- | Weight-lifting | - | - |
- | Upper body cycling | - | - |
Variables | Total | Sport | CE | Recreation | HT | X2, p-Value, and Cramer’s V |
---|---|---|---|---|---|---|
% | Weighted % | Weighted % | Weighted % | Weighted % | ||
11.70% | 78.30% | 3.10% | 6.80% | |||
Marital status | 1467, p < 0.01, 0.124 | |||||
Married | 51.10% | 41.50% | 52.24% | 49.26% | 55.43% | |
Single | 10.76% | 6.15% | 11.06% | 11.98% | 14.71% | |
Divorced | 8.56% | 1.82% | 9.01% | 8.09% | 15.28% | |
Widowed | 2.35% | 1.46% | 2.57% | 1.50% | 1.75% | |
Separated | 22.31% | 42.85% | 20.35% | 23.32% | 9.03% | |
Partnered | 4.91% | 6.22% | 4.77% | 5.84% | 3.79% | |
Educational Attainment | 715, p < 0.01, 0.059 | |||||
Did not graduate HS | 9.92% | 7.76% | 10.33% | 4.53% | 11.43% | |
High school graduate | 23.27% | 19.67% | 23.40% | 22.35% | 28.41% | |
Some college | 33.48% | 32.69% | 33.14% | 37.56% | 36.96% | |
College graduate | 33.32% | 39.89% | 33.14% | 35.56% | 23.20% | |
Age | 3061, p < 0.01, 0.186 | |||||
18–24 | 13.31% | 36.13% | 10.73% | 14.52% | 2.83% | |
25–34 | 17.51% | 24.80% | 17.30% | 15.16% | 8.34% | |
35–44 | 16.07% | 18.52% | 16.14% | 13.84% | 12.07% | |
45–54 | 16.29% | 11.13% | 17.15% | 14.43% | 16.13% | |
55–64 | 16.78% | 5.96% | 17.76% | 18.76% | 23.39% | |
64–74 | 12.19% | 2.33% | 12.80% | 13.80% | 21.55% | |
75+ | 7.85% | 1.12% | 8.12% | 9.49% | 15.69% | |
Race/ethnicity | 377, p < 0.01, 0.068 | |||||
White | 65.82% | 59.86% | 65.09% | 77.16% | 79.41% | |
Black | 10.84% | 9.23% | 11.78% | 4.38% | 5.80% | |
Hispanic | 14.69% | 19.79% | 14.61% | 10.34% | 8.71% | |
AI/NA | 0.92% | 0.76% | 0.92% | 1.09% | 1.10% | |
Asian | 5.67% | 8.15% | 5.58% | 5.51% | 2.52% | |
NH/PI | 0.15% | 0.20% | 0.15% | 0.11% | 0.08% | |
Other | 0.42% | 0.33% | 0.41% | 0.15% | 0.84% | |
Multiple | 1.48% | 1.68% | 1.45% | 1.26% | 1.55% | |
Income | 150, p < 0.01, 0.045 | |||||
<10 K | 5.90% | 5.91% | 6.08% | 2.83% | 5.18% | |
10–25 K | 20.17% | 17.66% | 20.58% | 16.64% | 21.31% | |
25–50 K | 22.69% | 19.86% | 22.67% | 23.03% | 27.64% | |
50–75 K | 15.07% | 13.26% | 15.11% | 15.62% | 17.56% | |
>75 k | 36.18% | 43.31% | 35.55% | 41.88% | 28.31% | |
Employment | 300, p < 0.01, 0.059 | |||||
Employed | 52.20% | 60.55% | 51.89% | 55.52% | 40.10% | |
Unemployed | 5.35% | 5.24% | 5.48% | 3.60% | 4.93% | |
OLF | 37.28% | 32.75% | 36.99% | 36.99% | 48.52% | |
Unable to work | 5.16% | 1.45% | 5.65% | 3.90% | 6.46% | |
Physical Activity Level | 913, p < 0.01, 0.116 | |||||
Highly active | 40.87% | 45.39% | 36.72% | 62.80% | 70.33% | |
Active | 27.29% | 29.55% | 28.12% | 21.23% | 16.44% | |
Insufficiently active | 29.75% | 24.17% | 32.76% | 14.31% | 12.11% | |
Inactive | 2.10% | 0.89% | 2.39% | 1.66% | 1.12% | |
Aerobic exercise recommendations | 483, p < 0.01, 0.144 | |||||
Met aerobic recommendations | 68.42% | 75.09% | 65.14% | 84.12% | 86.94% | |
Did not meet aerobic recommendations | 31.58% | 24.91% | 34.86% | 15.88% | 13.06% |
Variable | Sport Mean (95% CI) | CE Mean (95% CI) | Recreation Mean (95% CI) | HT Mean (95% CI) |
---|---|---|---|---|
Minutes of Exercise | 207.64 (198.27–217.00) | 192.86 (189.20–196.52) | 256.44 (242.15–270.73) | 450.34 (425.64–475.05) |
METs | 6.23 (6.20–6.25) | 3.71 (3.68–3.73) | 5.34 (5.21–5.47) | 4.76 (4.74–4.78) |
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Pharr, J.R.; Lough, N.L.; Terencio, A.M. Sociodemographic Determinants of Physical Activity and Sport Participation among Women in the United States. Sports 2020, 8, 96. https://doi.org/10.3390/sports8070096
Pharr JR, Lough NL, Terencio AM. Sociodemographic Determinants of Physical Activity and Sport Participation among Women in the United States. Sports. 2020; 8(7):96. https://doi.org/10.3390/sports8070096
Chicago/Turabian StylePharr, Jennifer R., Nancy L. Lough, and Angela M. Terencio. 2020. "Sociodemographic Determinants of Physical Activity and Sport Participation among Women in the United States" Sports 8, no. 7: 96. https://doi.org/10.3390/sports8070096
APA StylePharr, J. R., Lough, N. L., & Terencio, A. M. (2020). Sociodemographic Determinants of Physical Activity and Sport Participation among Women in the United States. Sports, 8(7), 96. https://doi.org/10.3390/sports8070096