| Literature DB >> 23962144 |
Amina Aitsi-Selmi1, Ruoling Chen, Martin J Shipley, Michael G Marmot.
Abstract
BACKGROUND: The prevalence of obesity is increasing rapidly in low- and middle-income countries (LMICs) as their populations become exposed to obesogenic environments. The transition from an agrarian to an industrial and service-based economy results in important lifestyle changes. Yet different socioeconomic groups may experience and respond to these changes differently. Investigating the socioeconomic distribution of obesity in LMICs is key to understanding the causes of obesity but the field is limited by the scarcity of data and a uni-dimensional approach to socioeconomic status (SES). This study splits socioeconomic status into two dimensions to investigate how educated women may have lower levels of obesity in a context where labour market opportunities have shifted away from agriculture to other forms of employment.Entities:
Mesh:
Year: 2013 PMID: 23962144 PMCID: PMC3844357 DOI: 10.1186/1471-2458-13-769
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Participant characteristic by province, Four Provinces study, China (2008/09)
| | ||||
|---|---|---|---|---|
| WC (cm) | ||||
| Not centrally obese1 | 199 (45.2) | 191 (30.3) | 146 (27.9) | 116 (35.4) |
| Centrally obese2 | 241 (54.8) | 439 (69.7) | 377 (72.0) | 212 (64.6) |
| Education level | ||||
| None | 284 (64.5) | 313 (49.7) | 242 (46.3) | 110 (33.5) |
| Any | 156 (35.5) | 317 (50.3) | 281 (53.7) | 218 (66.5) |
| Occupation group | ||||
| Agricultural | 360 (81.8) | 267 (42.4) | 255 (48.8) | 166 (50.6) |
| Non-agricultural | 80 (18.9) | 363 (57.6) | 268 (51.2) | 162 (49.4) |
| Age group | ||||
| 60-69 | 182 (41.4) | 289 (45.9) | 216 (41.3) | 188 (57.3) |
| 70-79 | 171 (38.9) | 246 (39.0) | 209 (40.0) | 123 (37.5) |
| 80+ | 87 (19.8) | 95 (15.1) | 98 (18.7) | 17 (5.2) |
| Area of residence | ||||
| Urban | 198 (45.0) | 358 (56.8) | 279 (53.4) | 161 (49.1) |
| Rural | 242 (55.0) | 272 (43.2) | 244 (46.7) | 167 (50.9) |
| Parity | ||||
| 0 | 1 (0.23) | 5 (0.8) | 23 (4.4) | 0 |
| 1-3 | 120 (27.3) | 482 (76.5) | 191 (36.5) | 159 (48.5) |
| 4+ | 319 (72.5) | 143 (22.7) | 309 (59.1) | 169 (51.5) |
Figure 1Participant selection for the analysis from the Four Provinces study.
Figure 2Simplified path diagram of the associations between education, occupation and obesity.
Participant characteristics and prevalence of central obesity, Four Provinces Study, China (2008/09)
| WC (cm) | ||
| Not centrally obese1 | 652 (33.9) | - |
| Centrally obese2 | 1269 (66.1) | - |
| Age group | ||
| 60-69 | 875 (45.6) | 63.2 (1.6) |
| 70-79 | 749 (39.0) | 69.4 (1.7) |
| 80+ | 297 (15.5) | 66.0 (2.8) |
| Area of residence | ||
| Urban | 996 (51.9) | 72.7 (1.4) |
| Rural | 925 (48.2) | 58.9 (1.6) |
| Parity | ||
| 0 | 29 (1.5) | 82.8 (7.1) |
| 1-3 | 952 (49.6) | 66.3(1.5) |
| 4+ | 940 (48.9) | 65.3 (1.6) |
| Current smoker | ||
| No | 1667 (86.8) | 67.5 (1.1) |
| Yes | 254 (13.2) | 55.9 (3.1) |
| Currently consumes alcohol | ||
| No | 1849 (96.3) | 66.3 (1.1) |
| Yes | 72 (3.7) | 59.7 (5.8) |
| Meat consumption | ||
| < once/day | 831 (43.3) | 62.9 (1.7) |
| ≥ once/day | 1090 (57.1) | 68.4 (1.4) |
| Fruit and vegetable consumption | ||
| < once/day | 87 (4.5) | 58.6 (5.3) |
| ≥ once/day | 1834 (95.4) | 66.4 (1.1) |
| Education level | ||
| None | 949 (49.4) | 63.6 (1.6) |
| Any | 972 (50.6) | 68.4 (1.5) |
| Occupation group | ||
| Agricultural | 1048 (54.6) | 61.3 (1.5) |
| Non-agricultural | 873 (45.4) | 71.8 (1.5) |
| Occupation by education level | ||
| No education | | |
| Agricultural | 762 (80.3) | 60.2 (1.8) |
| Non-agricultural | 187 (19.7) | 77.5 (3.1) |
| Any education | ||
| Agricultural | 286 (29.4) | 70.3 (1.7) |
| Non-agricultural | 686 (70.6) | 63.2 (1.6) |
1 Not centrally obese: WC < 80 cm.
2 Centrally obese: WC ≥ 80 cm.
Separate and joint effects of education and occupation on central obesity – Four Provinces Study, China (2008/09)
| Education level | ||||||||
| None | 1 | | 1 | | 1 | | 1 | |
| Any | 1.24 (1.02,1.50) | 0.03 | 1.27 (1.05, 1.55) | 0.02 | 1.19 (0.97, 1.45) | 0.09 | 0.96 (0.78, 1.20) | 0.7 |
| Occupational status | | |||||||
| Agricultural | 1 | | 1 | | 1 | | 1 | |
| Non-agricultural | 1.61 (1.33, 1.95) | <0.001 | 1.59 (1.30, 1.94) | <0.001 | 1.46 (1.19, 1.81) | <0.001 | 1.11 (0.84, 1.45) | 0.4 |
| Education level | ||||||||
| None | 2.28 (1.57, 3.31) | <0.001 | 2.21 (1.52, 3.21) | <0.001 | 2.10 (1.43, 3.07) | <0.001 | 1.66 (1.11, 2.49) | 0.01 |
| Any | 1.33 (0.99, 1.78) | 0.06 | 1.25 (0.92, 1.70) | 0.1 | 1.15 (0.84, 1.57) | 0.4 | 0.84 (0.58, 1.20) | 0.3 |
| 0.02 | 0.02 | 0.02 | <0.01 | |||||
1 Odds ratios of obesity for education level [Any vs. None] and occupational status [Non-agricultural vs. agricultural].
2 Health behaviours included current alcohol consumption, smoking status, meat consumption and fruit and vegetable consumption.
3P-value for the Wald test.
4P-value for the LR test comparing the models with and without the interaction term between education and occupation.
Figure 3Graph of the interaction between education and occupation (adjusted ors* and 95%ci*).* Each bar represents the predicted odds in each group relative to the reference group (education = none; occupation = agricultural). The ORs are adjusted for age group, urban/rural residence, parity, dietary indicators, smoking and alcohol consumption.