Drivers to Obesity—A Study of the Association between Time Spent Commuting Daily and Obesity in the Nepean Blue Mountains Area
Abstract
:1. Introduction
2. Methods
2.1. Ethical Approval
2.2. Research Question
2.3. Sample and Data Collection
2.4. Dependent Variable
2.5. Independent Variable
2.6. Confounders
2.7. Mediators
2.8. Statistical Analysis
3. Results
3.1. Sample Characteristics
3.2. Analysis of Possible Mediators to the Risk of Obesity
4. Discussion
Strengths and Limitations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Local | Distant | p | |
---|---|---|---|---|
Age | 0.912 | |||
Mean | 50.25 | 50.48 | ||
Std Dev. | 12.50 | 13.40 | ||
Gender | 0.72 | |||
Male | 36 (37.9%) | 24 (37.8%) | ||
Female | 58 (61.1%) | 39 (61.9%) | ||
Other | 1 (1%) | 0 | ||
Marital status | Married/in de facto relationship/Single/divorced/widowed | 75 (79.8%) | 42 (66.7%) | 0.064 |
19 (20.2%) | 21 (33.3%) | |||
Education | 0.67 | |||
High school or less | 9 (9%) | 4 (6.1%) | ||
trade/certificate/diploma | 32 (32%) | 21 (31.8%) | ||
University undergraduate/postgraduate | 59 (59%) | 41 (62.1%) | ||
Income | 0.089 | |||
Less than $650 | 3 (3%) | 3 (4.6%) | ||
$650 to $1249 | 19 (19%) | 6 (9.2%) | ||
$1250 to $1999 | 28(28%) | 15 (23%) | ||
$2000 to $2999 | 28 (28%) | 22 (33.8%) | ||
$3000 or more | 22 (22%) | 19 (29.2%) | ||
Exercise at Work | 0.249 | |||
Yes | 13 (13.7%) | 13 (20.6%) | ||
No | 82 (86.3%) | 50 (79.4%) | ||
Attitude to eating | 0.114 | |||
“Is Healthy Eating (e.g., decreasing sweets/pastries, increasing fibre and vegetables) important to health?” | Strongly agree | 74 (74%) | 39 (59.1%) | |
Somewhat agree | 22 (22%) | 23 (34.8%) | ||
Neither agree nor disagree | 1 (1%) | 4 (6.1%) | ||
Somewhat disagree | 2 (2%) | 0 | ||
Strongly disagree | 1 (1%) | 0 | ||
Attitude to exercise | 0.347 | |||
“Exercise is important to my health/wellbeing?” | Strongly agree | 77 (77%) | 44 (66.7%) | |
Somewhat agree | 19 (19%) | 20 (30.3%) | ||
Neither agree nor disagree | 1 (1%) | 2 (3%) | ||
Somewhat disagree | 3 (3%) | 0 | ||
Strongly disagree | 0 | 0 |
Variable | Response | Local | Distant |
---|---|---|---|
Adequacy of Moderate Exercise | Inadequate | 39 (39%) | 27 (41%) |
Adequate | 61 (61%) | 39 (59%) | |
Adequacy of Intense exercise | Inadequate | 72 (72%) | 42 (64%) |
Adequate | 28 (28%) | 24 (36%) | |
Meals bought | Not Obesogenic | 74 (74%) | 39 (59%) |
Obesogenic | 26 (26%) | 27 (41%) | |
Sugar Drinks | Low Intake | 92 (92%) | 63 (95%) |
High Intake | 8 (8%) | 3 (5%) | |
Sleep hours | Unhealthy | 42 (42%) | 41 (62%) |
Healthy | 58 (58%) | 25 (38%) | |
Weekly Alcohol | At or below Guidelines | 94 (94%) | 59 (89%) |
Exceeding Guidelines | 6 (6%) | 7 (11%) | |
Mode of transport | Private vehicle (car/motorbike) | 86 (89%) | 35 (53%) |
Public transport (train/bus) | 2 (2%) | 29 (44%) | |
Bicycle or walk | 9 (9%) | 2 (3%) | |
Stress | Never | 12 (12%) | 9 (14%) |
Sometimes | 58 (58%) | 26 (39%) | |
About half the time | 14 (14%) | 17 (26%) | |
Most of the time | 11 (11%) | 14(21%) | |
Always | 5 (5%) | 0 |
Mode of Transport | Work Locality | No Obesity | Obesity | Total | |
---|---|---|---|---|---|
Private vehicle (car/motorbike) | Local | Count | 54 | 28 | 82 |
% Within Work Locality | 65.90% | 34.10% | 100.00% | ||
Distant | Count | 15 | 19 | 34 | |
% Within Work Locality | 44.10% | 55.90% | 100.00% | ||
Public transport (train/bus) | Local | Count | 2 | 0 | 2 |
% Within Work Locality | 100.00% | 0.00% | 100.00% | ||
Distant | Count | 18 | 9 | 27 | |
% Within Work Locality | 69.00% | 31.00% | 100.00% | ||
Bicycle or walk | Local | Count | 8 | 0 | 8 |
% Within Work Locality | 100.00% | 0.00% | 100.00% | ||
Distant | Count | 1 | 1 | 2 | |
% Within Work Locality | 50.00% | 50.00% | 100.00% |
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Parise, I.; Abbott, P.; Trankle, S. Drivers to Obesity—A Study of the Association between Time Spent Commuting Daily and Obesity in the Nepean Blue Mountains Area. Int. J. Environ. Res. Public Health 2022, 19, 410. https://doi.org/10.3390/ijerph19010410
Parise I, Abbott P, Trankle S. Drivers to Obesity—A Study of the Association between Time Spent Commuting Daily and Obesity in the Nepean Blue Mountains Area. International Journal of Environmental Research and Public Health. 2022; 19(1):410. https://doi.org/10.3390/ijerph19010410
Chicago/Turabian StyleParise, Ivan, Penelope Abbott, and Steven Trankle. 2022. "Drivers to Obesity—A Study of the Association between Time Spent Commuting Daily and Obesity in the Nepean Blue Mountains Area" International Journal of Environmental Research and Public Health 19, no. 1: 410. https://doi.org/10.3390/ijerph19010410
APA StyleParise, I., Abbott, P., & Trankle, S. (2022). Drivers to Obesity—A Study of the Association between Time Spent Commuting Daily and Obesity in the Nepean Blue Mountains Area. International Journal of Environmental Research and Public Health, 19(1), 410. https://doi.org/10.3390/ijerph19010410