Trends and Factors Associated with Obesity Prevalence in Rural Australian Adults—Comparative Analysis of the Crossroads Studies in Victoria over 15 Years
Abstract
:1. Introduction
2. Materials and Methods
2.1. Setting
2.2. Study Design
2.3. Participants
2.4. Clinical Measures
2.5. Outcome and Exploratory Variables
- The demographic level factors included age group, gender, ethnicity (Australia born versus non-Australia born) and place of residence (rural or regional).
- The socio-economic level factors considered were participant’s working status, educational status and marital status which measures the economic status of participants in this study. Due to a lack of data in Crossroads II, income variable was not included.
- Dietary level factors consisting of the frequency of vegetable intake (classified as adequate, i.e., having the recommended 5 serves of vegetable per day, otherwise inadequate), fruit serves (classified as adequate, i.e., having the recommended 2 serves of fruit per day, otherwise, inadequate), and dairy intake (classified as adequate, i.e., having the recommended 2 serves of dairy per day, otherwise, inadequate), as well as consumption of takeaways and fat-based spreads, which included the use of butter, olive oil, margarine or dripping (all categorized as Yes/No).
- Cooking method factors were considered including how meat, egg and chicken were usually cooked in participants homes.
- Lifestyle factors were also assessed which consisted of smoking status (previous and active smokers versus never smoked), alcohol consumption (Yes/No) and whether participants would consider themselves physically active (Yes/No), and if ‘Yes’, their reported average length of time (in minutes) per exercise session each day was used to derive the categories (adequate: at least 30 min and inadequate: <30 min).
2.6. Statistical Analysis
2.7. Ethics Approval & Consent
3. Results
3.1. Trends in Obesity Prevalence
3.2. Trends in Obesity Prevalence by Key Factors
3.3. Unadjusted and Adjusted Odd Ratios of Factors Associated with Obesity
3.4. Relationship between Obesity Prevalence and Fruit and Vegetable Consumption
4. Discussion
4.1. Demographics
4.2. Socio-Economic Factors
4.3. Dietary Factors
4.4. Cooking Method Factors
4.5. Lifestyle Factors
4.6. Limitations and Strengths
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variables | 2001–2003 (N = 5258), n (%) | 2016–2018 (N = 2649), n (%) |
---|---|---|
Demographic Factors | ||
Age groups | ||
18–34 years | 1535 (30.2) | 550 (20.8) |
35–54 years | 1840 (36.2) | 691 (26.1) |
55 and over | 1703 (33.5) | 1407 (53.1) |
Sex | ||
Male | 2439 (45.9) | 1128 (42.3) |
Female | 2879 (54.1) | 1539 (57.7) |
Ethnicity (country of birth) | ||
Australian born | 4215 (88.4) | 2243 (84.1) |
Non- Australian born | 551 (11.6) | 423 (15.9) |
Place of residence | ||
Rural | 1762 (33.1) | 1336 (49.9) |
Regional | 3566 (66.9) | 1344 (50.2) |
Socio-Economic Factors | ||
Working status | ||
Working full time | 1719 (37.2) | 216 (43.0) |
Working part time | 799 (17.3) | 130 (25.9) |
Not working | 2108 (45.6) | 156 (31.1) |
Educational status | ||
Completed secondary or less | 3704 (77.9) | 1422 (53.4) |
Completed TAFE, Certificate or Diploma | 439 (9.2) | 700 (26.3) |
Completed University | 615 (12.9) | 539 (20.3) |
Marital status | ||
Married/defacto | 352 (18.3) | 1405 (55.3) |
Divorced/widowed/separated | 794 (41.2) | 759 (29.9) |
Never married | 782 (40.6) | 376 (14.8) |
Dietary Factors | ||
Daily vegetable intake | ||
Adequate | 1319 (27.5) | 671 (26.5) |
Inadequate | 3485 (72.5) | 1858 (73.5) |
Daily fruit intake | ||
Adequate | 2550 (53.0) | 1442 (57.0) |
Inadequate | 2258 (47.0) | 1087 (43.0) |
Daily dairy intake | ||
Adequate | 1641 (34.1) | 970 (38.4) |
Inadequate | 3174 (65.9) | 1559 (61.6) |
Daily take-away consumption | ||
Yes | 1923 (40.0) | 920 (36.4) |
No | 2886 (60.0) | 1610 (63.6) |
Use of fat-based spreads on bread | ||
Yes | 1383 (29.2) | 768 (30.4) |
No | 3359 (70.8) | 1760 (69.6) |
Cooking method Factors | ||
How meat was usually cooked | ||
Fried | 173 (16.6) | 183 (30.0) |
Other | 871 (83.4) | 427 (70.0) |
How egg was usually cooked | ||
Fried | 275 (26.3) | 236 (32.6) |
Other | 769 (73.7) | 488 (67.4) |
How chicken was usually cooked | ||
Fried | 173 (16.6) | 126 (17.5) |
Other | 872 (83.4) | 593 (82.5) |
Lifestyle Factors | ||
Body mass index classification | ||
Normal/underweight (<25.0 kg/m²) | 324 (31.6) | 710 (32.9) |
Overweight (25.0–29.9 kg/m²) | 413 (40.3) | 784 (36.3) |
Obese (≥30.0 kg/m²) | 289 (28.2) | 665 (30.8) |
Smoking (current or past) | ||
Yes | 1147 (23.7) | 403 (15.9) |
No | 3696 (76.3) | 2125 (84.1) |
Drinking alcohol (current) | ||
Yes | 3124 (64.5) | 1611 (63.7) |
No | 1721 (35.5) | 919 (36.3) |
Physical activity | ||
None | 1643 (34.3) | 790 (31.2) |
Adequate | 1938 (40.5) | 1135 (44.9) |
Inadequate | 1206 (25.2) | 605 (23.9) |
Characteristics | Crossroads I | Crossroads II | Crossroads (I–II) |
---|---|---|---|
Demographic Factors | |||
Age groups | |||
18–34 years | 19.4 (13.7, 26.9) | 16.0 (13.7, 26.9) | 3.4 (−3.8, 10.7) |
35–54 years | 28.8 (24.7, 33.3) | 26.5 (24.7, 33.3) | 2.4 (−3.0, 7.8) |
≥55 years | 29.9 (25.7, 34.4) | 27.7 (25.7, 34.4) | 2.1 (−2.8, 7.1) |
Sex | |||
Male | 26.9 (23.0, 31.1) | 24.4 (22.0, 27.0) | 2.5 (−2.2, 7.3) |
Female | 28.4 (24.9, 32.2) | 25.2 (23.1, 27.4) | 3.2 (−1.1, 7.5) |
Ethnicity (country of birth) | |||
Australian born | 27.7 (24.9, 30.7) | 25.5 (23.7, 27.3) | 2.3 (−1.1, 5.7) |
Non-Australian born | 27.2 (20.1, 35.7) | 22.0 (18.3, 26.2) | 5.2 (−3.5, 14.0) |
Residency type | I | ||
Rural | 31.7 (27.0, 36.8) | 25.1 (22.9, 27.5) | 6.6 (1.2, 12.0) * |
Regional | 25.7 (22.6, 29.1) | 24.5 (22.3, 26.9) | 1.2 (−2.7, 5.2) |
Socio-Economic Factors | |||
Working status | |||
Working full time | 24.6 (20.5, 29.2) | 31.9 (26.1, 38.5) | −7.3 (−14.9, 0.3) |
Working part time | 22.5 (16.9, 29.2) | 32.3 (24.8, 40.8) | −9.8 (−20.0, 0.3) |
Not working | 32.7 (28.6, 37.1) | 32.7 (25.8, 40.5) | −0.0 (−8.5, 8.5) |
Educational status | |||
Completed secondary or less | 28.8 (25.8, 32.1) | 25.5 (23.3, 27.9) | 3.3 (−0.6, 7.2) |
Completed TAFE, Certificate or Diploma | 25.3 (17.1, 35.7) | 26.6 (23.4, 30.0) | −1.3 (−11.2, 8.6) |
Completed University | 23.7 (17.9, 30.7) | 21.3 (18.1, 25.0) | 2.3 (−5.0, 9.6) |
Marital status | |||
Married/defacto | 16.7 (9.4, 27.7) | 27.4 (25.1, 29.8) | −10.7 (−20.0, −1.4) * |
Divorced/widowed/separated | 31.2 (25.0, 38.2) | 27.3 (24.2, 30.6) | 3.9 (−3.4, 11.3) |
Never married | 24.4 (16.1, 35.1) | 18.4 (14.8, 22.6) | 6.0 (−4.3, 16.3) |
Dietary Factors | |||
Daily vegetable intake | |||
Adequate | 29.2 (24.5, 34.4) | 25.9 (22.8, 29.4) | 3.3 (−2.7, 9.2) |
Inadequate | 27.1 (24.0, 30.5) | 26.0 (24.1, 28.0) | 1.1 (−2.7, 4.9) |
Daily fruit intake | |||
Adequate | 28.5 (25.0, 32.3) | 23.9 (21.8, 26.2) | 4.6 (0.3, 8.9) * |
Inadequate | 26.7 (22.9, 31.0) | 28.7 (26.1, 31.5) | −2.0 (−6.8, 2.9) |
Daily dairy intake | |||
Adequate | 25.7 (21.5, 30.4) | 27.4 (24.7, 30.3) | −1.7 (−6.9, 3.6) |
Inadequate | 28.8 (25.5, 32.4) | 25.1 (23.0, 27.3) | 3.7 (−0.3, 7.8) |
Daily take-away consumption | |||
Yes | 28.4 (24.5, 32.6) | 23.8 (21.2, 26.7) | 4.6 (−0.4, 9.5) |
No | 27.2 (23.7, 31.0) | 27.2 (25.1, 29.4) | −0.02 (−4.3, 4.2) |
Use of fat-based spreads on bread | |||
Yes | 31.3 (26.5, 36.4) | 28.1 (25.1, 31.4) | 3.1 (−2.8, 9.0) |
No | 26.0 (22.9, 29.4) | 25.1 (23.1, 27.1) | 1.0 (−2.9, 4.8) |
Cooking method Factors | |||
How meat was usually cooked | |||
Fried | 22.1 (16.5, 28.9) | 33.9 (27.4, 41.1) | −11.8 (−21.0, −2.5) * |
Other | 28.8 (25.9, 31.9) | 30.9 (26.7, 35.5) | −2.1 (−7.4, 3.2) |
How egg was usually cooked | |||
Fried | 27.1 (22.2, 32.7) | 35.6 (29.7, 41.9) | −8.5 (−16.6, −0.4) * |
Other | 27.9 (24.9, 31.2) | 30.1 (26.2, 34.4) | −2.2 (−7.4, 3.0) |
How chicken was usually cooked | |||
Fried | 21.5 (16.0, 28.3) | 34.1 (26.4, 42.8) | −12.6 (−22.9, −2.3) * |
Other | 29.0 (26.1, 32.1) | 30.9 (27.3, 34.7) | −1.8 (−6.6, 3.0) |
Lifestyle Factors | |||
Smoking | |||
No | 27.9 (25.0, 31.1) | 26.6 (24.8, 28.6) | 1.3 (−2.3, 4.9) |
Yes | 26.9 (21.2, 33.4) | 22.6 (18.8, 26.9) | 4.3 (−3.1, 11.7) |
Drinking alcohol | |||
No | 35.4 (30.4, 40.9) | 26.2 (23.5, 29.2) | 9.2 (3.2, 15.2) * |
Yes | 24.3 (21.3, 27.5) | 25.8 (23.7, 28.0) | −1.6 (−5.3, 2.2) |
Physical activity | |||
None | 33.7 (28.6, 39.1) | 29.2 (26.2, 32.5) | 4.4 (−1.7, 10.5) |
Inadequate | 23.6 (18.6, 29.3) | 26.9 (23.6, 30.6) | −3.4 (−9.8, 3.0) |
Adequate | 26.0 (22.3, 30.1) | 23.2 (20.8, 25.7) | 2.8 (−1.8, 7.4) |
Variables | Unadjusted OR (95% CI) | p-Value | Adjusted OR (95% CI) | p-Value |
---|---|---|---|---|
Year of study | ||||
2001–2003 | Ref | Ref | ||
2016–2018 | 0.86 (0.73, 1.01) | 0.067 | 0.93 (0.78, 1.10) | 0.368 |
Demography | ||||
Age | ||||
18–34 years | Ref | Ref | ||
35–54 years | 1.88 (1.48, 2.39) | <0.001 | 1.81 (1.42, 2.31) | <0.001 |
55 and over | 1.96 (1.57, 2.46) | <0.001 | 1.96 (1.56, 2.46) | <0.001 |
Sex | ||||
Male | Ref | |||
Female | 1.05 (0.91, 1.22) | 0.501 | - | |
Ethnicity (country of birth) | ||||
Australian Born | Ref | |||
Non-Australian Born | 1.17 (0.95, 1.45) | 0.146 | - | |
Place of residence | ||||
Rural | Ref | |||
Regional | 0.92 (0.79, 1.07) | 0.263 | - | |
Socio-Economic Factors | ||||
Working status | ||||
Full time | Ref | |||
Part time | 0.97 (0.71, 1.32) | 0.835 | - | |
Not working | 1.29 (1.01, 1.66) | 0.040 | - | |
Educational status | ||||
Completed secondary or less | Ref | |||
Completed TAFE, Certificate or Diploma | 0.99 (0.82, 1.19) | 0.886 | - | |
Completed University | 0.77 (0.63, 0.94) | 0.011 | - | |
Marital status | ||||
Married, defacto | Ref | |||
Divorced, widowed, separated | 1.06 (0.88, 1.27) | 0.540 | - | |
Never married | 0.65 (0.5, 0.85) | 0.001 | - | |
Dietary Factors | ||||
Daily vegetable intake | ||||
Adequate | Ref | |||
Inadequate | 1.04 (0.88, 1.22) | 0.677 | - | |
Daily fruit intake | ||||
Adequate | Ref | |||
Inadequate | 0.86 (0.74, 1.00) | 0.053 | - | |
Daily dairy intake | ||||
Adequate | Ref | |||
Inadequate | 1.04 (0.89, 1.21) | 0.622 | - | |
Daily take-away consumption | ||||
No | Ref | |||
Yes | 0.91 (0.78, 1.06) | 0.220 | - | |
Use of fat-based spreads on bread | ||||
No | Ref | Ref | ||
Yes | 1.21 (1.03, 1.42) | 0.019 | 1.26 (1.07, 1.48) | 0.005 |
Cooking method Factors | ||||
How meat was usually cooked | ||||
Fried | Ref | |||
Other | 1.07 (0.82, 1.39) | 0.620 | - | |
How egg was usually cooked | ||||
Fried | Ref | |||
Other | 0.90 (0.72, 1.12) | 0.347 | - | |
How chicken was usually cooked | ||||
Fried | Ref | |||
Other | 1.16 (0.87, 1.53) | 0.312 | - | |
Lifestyle Factors | ||||
Smoking | ||||
No | Ref | |||
Yes | 0.85 (0.7, 1.05) | 0.129 | - | |
Drinking alcohol | ||||
No | Ref | |||
Yes | 0.85 (0.73, 0.99) | 0.037 | - | |
Physical Activity | ||||
None | Ref | Ref | ||
Inadequate | 0.80 (0.65, 0.98) | 0.028 | 0.80 (0.65, 0.97) | 0.027 |
Adequate | 0.72 (0.61, 0.85) | <0.001 | 0.69 (0.58, 0.82) | <0.001 |
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Hannah, S.; Agho, K.E.; Piya, M.K.; Glenister, K.; Bourke, L.; Osuagwu, U.L.; Simmons, D. Trends and Factors Associated with Obesity Prevalence in Rural Australian Adults—Comparative Analysis of the Crossroads Studies in Victoria over 15 Years. Nutrients 2022, 14, 4557. https://doi.org/10.3390/nu14214557
Hannah S, Agho KE, Piya MK, Glenister K, Bourke L, Osuagwu UL, Simmons D. Trends and Factors Associated with Obesity Prevalence in Rural Australian Adults—Comparative Analysis of the Crossroads Studies in Victoria over 15 Years. Nutrients. 2022; 14(21):4557. https://doi.org/10.3390/nu14214557
Chicago/Turabian StyleHannah, Stephanie, Kingsley E. Agho, Milan K. Piya, Kristen Glenister, Lisa Bourke, Uchechukwu L. Osuagwu, and David Simmons. 2022. "Trends and Factors Associated with Obesity Prevalence in Rural Australian Adults—Comparative Analysis of the Crossroads Studies in Victoria over 15 Years" Nutrients 14, no. 21: 4557. https://doi.org/10.3390/nu14214557
APA StyleHannah, S., Agho, K. E., Piya, M. K., Glenister, K., Bourke, L., Osuagwu, U. L., & Simmons, D. (2022). Trends and Factors Associated with Obesity Prevalence in Rural Australian Adults—Comparative Analysis of the Crossroads Studies in Victoria over 15 Years. Nutrients, 14(21), 4557. https://doi.org/10.3390/nu14214557