| Literature DB >> 26860434 |
Josée Poirier1, Wendy L Bennett, Gerald J Jerome, Nina G Shah, Mariana Lazo, Hsin-Chieh Yeh, Jeanne M Clark, Nathan K Cobb.
Abstract
BACKGROUND: The benefits of physical activity are well documented, but scalable programs to promote activity are needed. Interventions that assign tailored and dynamically adjusting goals could effect significant increases in physical activity but have not yet been implemented at scale.Entities:
Keywords: RCT; adaptive; effectiveness; intervention; physical activity; walking
Mesh:
Year: 2016 PMID: 26860434 PMCID: PMC4764789 DOI: 10.2196/jmir.5295
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Examples of text messages participants can opt to receive (left) and reward notifications on the main website (right).
Figure 2Sample participant steps and goals (actual steps taken are represented by blue bars with an associated trend line and surrounding confidence band; light blue bars indicate run-in data collection and follow-up periods; goals provided to users are represented in red; black arrow markers indicate the direction and magnitude of the random adjustment applied). These random adjustments averaged 2945 steps in either direction. Run-in data are presented here but are not used by the algorithm to preserve generalizability.
Figure 3CONSORT diagram.
Baseline characteristics of randomized participants.
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| Total (N=265) | Control (n=132) | Intervention (n=133) |
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| Age in years, mean (SD) | 39.9 (11.7) | 39.6 (12.0) | 40.3 (11.4) | .65 | |
| Women, n (%) | 175 (66.0) | 92 (69.7) | 83 (62.4) | .21 | |
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| .99 | ||||
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| White | 205 (77.4) | 101 (76.5) | 104 (78.2) |
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| Black | 30 (11.3) | 15 (11.4) | 15 (11.3) |
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| Hispanic | 4 (1.5) | 2 (1.5) | 2 (1.5) |
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| Asian | 11 (4.2) | 5 (3.8) | 6 (4.5) |
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| Other | 7 (2.6) | 4 (3.0) | 3 (2.3) |
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| Don’t know | 8 (3.0) | 5 (3.8) | 3 (2.3) |
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| .81 | ||||
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| High school or vocational school | 11 (4.1) | 7 (5.3) | 4 (3.0) |
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| Some college | 30 (11.3) | 14 (10.6) | 16 (12.0) |
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| College graduate | 124 (46.8) | 61 (46.2) | 63 (47.4) |
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| Post-graduate | 98 (37.0) | 49 (37.1) | 49 (36.8) |
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| Don’t know/Prefer not to answer | 2 (0.8) | 1 (0.8) | 1 (0.8) |
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| .61 | ||||
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| <$60,000 | 83 (31.3) | 45 (34.1) | 38 (28.6) |
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| $60,000-$120,000 | 73 (27.6) | 34 (25.8) | 39 (29.3) |
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| > $120,000 | 56 (21.1) | 27 (20.4) | 29 (21.8) |
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| Don’t know/Prefer not to answer | 53 (20.0) | 26 (19.7) | 27 (20.3) |
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| .99 | ||||
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| Sedentary (<5000 steps/day) | 142 (53.6) | 71 (53.8) | 71 (53.4) |
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| Low to somewhat active (5000-9999 steps/day) | 119 (44.9) | 59 (44.7) | 60 (45.1) |
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| Active to highly active (≥10,000 steps/day) | 4 (1.5) | 2 (1.5) | 2 (1.5) |
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| Number of validb days, mean (SD) | 6.4 (0.8) | 6.3 (0.8) | 6.4 (0.8) | .51 | |
| Hours of wear per day, mean (SD) | 14.4 (1.2) | 14.4 (1.3) | 14.4 (1.1) | .68 | |
| Has 2 (vs 1) validb weekend days, n (%) | 172 (64.9) | 88 (66.7) | 84 (63.2) | .55 | |
aComparisons were performed by chi-square tests for categorical variables and independent samples two-tailed t tests (means) and Wilcoxon rank sum tests (medians) for continuous variables.
bA valid day is defined as having at least 10 hours of activity tracker wear time.
Indicators of program use for participants in the intervention arm (n=133): number of days (of 42) that participants wore their activity tracker (as shown by >100 steps recorded), opened their daily email at least once, and visited the website at least once.
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| Activity tracker worn | Email opened | Website visited |
| Mean (SD) | 33.0 (11.6) | 9.2 (10.4) | 11.8 (11.2) |
| Range | 0-42 | 0-42 | 0-39 |
| IQR | 12 | 14 | 19 |
Steps/day at baseline and follow-up, and change from baseline to follow-up among participants who met the minimum activity tracker wear criteriona for follow-up data collection (n=217).
| Physical activity at baselineb | Control, | Intervention, |
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| Baseline | 5412 (2251) | 5102 (1901) | .27 |
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| Follow-up | 4751 (1834) | 5411 (2277) | .02 |
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| Change from baseline to follow-up | -661 (1824) | 309 (1874) | <.001 |
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| ||||
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| Baseline | 3820 (1061) | 3769 (970) | .79 |
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| Follow-up | 3867 (1654) | 4363 (1517) | .09 |
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| Change from baseline to follow-up | 47 (1299) | 594 (1558) | .04 |
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| Baseline | 6992 (1275) | 6580 (1310) | .12 |
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| Follow-up | 5706 (1466) | 6470 (2075) | .04 |
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| Change from baseline to follow-up | -1286 (1783) | -110 (2106) | .004 |
aMinimum activity tracker wear criterion for follow-up data collection required 4 days with at least 10 hours of activity tracker wear time including 1 weekend day.
bPer-stratum comparisons excluded the 3 participants who had 10,000+ steps/day at baseline.
cComparisons performed with independent samples two-tailed t tests.