| Literature DB >> 28521767 |
Nicholas D Gilson1, Toby G Pavey2, Olivia Rl Wright1, Corneel Vandelanotte3, Mitch J Duncan4, Sjaan Gomersall1, Stewart G Trost2, Wendy J Brown1.
Abstract
BACKGROUND: Chronic diseases are high in truck drivers and have been linked to work routines that promote inactivity and poor diets. This feasibility study examined the extent to which an m-Health financial incentives program facilitated physical activity and healthy dietary choices in Australian truck drivers.Entities:
Keywords: Diet; Financial incentives; Physical activity; Small changes; Truck drivers; m-Health intervention
Mesh:
Year: 2017 PMID: 28521767 PMCID: PMC5437648 DOI: 10.1186/s12889-017-4380-y
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Gear Shift phases and points scheme for the incentives program
|
| Starting to roll with some healthy choices | 20 points = $30 |
|
| Picking up speed with more healthy choices | 50 points = $50 |
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| Accelerating away from unhealthy choices | 100 points = $80 |
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| Cruising with healthy choices becoming a habit | 170 points = $120 |
|
| In for the long haul with regular healthy choices | 200 points = $200 |
| Points scheme | ||
| 1 day = 2 points | 3 days = 5 points | 5 days = 10 points |
| Number of healthy dietary choices each week (e.g. wraps, grilled meat, sushi, salads, vegetables, fruit, nuts, water, tea, diet soft drinks or low fat milk). | ||
| 5 choices = 1 point | 10 choices = 3 points | 15 choices = 5 points |
Baseline demographic characteristics and physical measures (n = 19)
| Age; mean (SD) | 44.4 (10) years |
|---|---|
| Driver Type | |
| Local delivery | 15 (79%) |
| Long-haul | 4 (11%) |
| Work Status | |
| Full-time | 9 (47%) |
| Casual | 10 (53%) |
| Qualifications | |
| Year 10 | 1 (6%) |
| Year 12 | 6 (29%) |
| Technical or trade cert. | 2 (12%) |
| Diploma | 6 (29%) |
| Bachelor degree | 3 (18%) |
| Graduate Cert | 1 (6%) |
| Smoking Status | |
| Never smoked | 9 (47%) |
| Past smoker | 4 (21%) |
| Current smoker | 6 (32%) |
| Alcohol Status | |
| Meeting daily guidelines (≤2 units/day) | 13 (68%) |
| At risk (>2 units/day) | 6 (32%) |
| Self-reported Health Status | |
| Fair | 4 (24%) |
| Good | 8 (41%) |
| Very good | 7 (35%) |
| Physical measures; mean (SD) | |
| BMI (kg/m2) | 31.2 (4.6) |
| Waist circumference (cm) | 109 (10) |
| Systolic BP (mm Hg) | 142 (12) |
| Diastolic BP (mm Hg) | 87 (11) |
SD standard deviation, BP blood pressure; all data are n (%) unless otherwise indicated
Accelerometer data (proportions of time spent in physical activity, sedentary and stationary + categories; n = 19) and workday dietary choices (n = 17) at baseline, end-program and follow-up
| Baseline | End-program | Follow-up | |
|---|---|---|---|
| Accelerometers (%) | |||
| Work time | |||
| Physical activity | 9 (3) | 10 (5) | 10 (5) |
| Sedentary | 23 (16) | 17 (6) | 14 (5) |
| Stationary+ | 68 (16) | 73 (7) | 76 (7) |
| Workday non-work time (24 h – work time) | |||
| Physical activity | 5 (3) | 6 (3) | 5 (3) |
| Sedentary1 | 63 (15) | 68 (9) | 72 (8) |
| Stationary +2 | 32 (13) | 26 (7) | 23 (7) |
| Non-workday (24 h) | |||
| Physical activity | 7 (2) | 8 (3) | 7 (3) |
| Sedentary | 62 (8) | 65 (9) | 66 (9) |
| Stationary+ | 31 (7) | 29 (8) | 29 (8) |
| Workday dietary scores | |||
| Mean (SD) fruit serves/day3 | 4 (1) | 5 (1) | 4 (1) |
| 2+ fruit serves/day (%) | 100 | 100 | 100 |
| Mean (SD) veg. Serves/day4 | 4 (2) | 5 (2) | 4 (2) |
| 6+ veg serves/day (%) | 29 | 41 | 24 |
| Mean (SD) saturated fat score (0–90) | 50 (9) | 56 (12) | 56 (13) |
| Mean (SD) processed sugar score (0–69) | 42 (7) | 43 (6) | 43 (7) |
SD standard deviation
Workday non-work time: 1Sedentary baseline vs follow-up (p = 0.007); 2Stationary + baseline vs end-program (p = 0.037) and follow-up (p < 0.033)
Fruit and veg serves/day: Baseline vs end-program3 (p = 0.023) and 4(p = 0.024)
Fig. 1Work time physical activity percentages
Fig. 2Fruit intake
Fig. 3Vegetable intake
Fig. 4Saturated fat intake
Fig. 5Processed sugar intake