| Literature DB >> 27604226 |
Sjaan R Gomersall1, Norman Ng, Nicola W Burton, Toby G Pavey, Nicholas D Gilson, Wendy J Brown.
Abstract
BACKGROUND: Activity trackers are increasingly popular with both consumers and researchers for monitoring activity and for promoting positive behavior change. However, there is a lack of research investigating the performance of these devices in free-living contexts, for which findings are likely to vary from studies conducted in well-controlled laboratory settings.Entities:
Keywords: Fitbit; Jawbone; accelerometry; activity tracker; physical activity; sedentary behavior
Mesh:
Year: 2016 PMID: 27604226 PMCID: PMC5031913 DOI: 10.2196/jmir.5531
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Fitbit One (A) and Jawbone UP (B).
Participant characteristics.
| Characteristics | All (n=29) | Fitbit (n=14) | Jawbone (n=15) |
| Female, n (%) | 26 (90) | 12 (86) | 14 (93) |
| Age (years), mean (SD) | 39.6 (11.0) | 36.1 (12.8) | 42.8 (8.1) |
| Completed tertiary education, n (%) | 25 (86) | 13 (93) | 12 (80) |
| BMI (kg/m2), mean (SD) | 25.9 (5.0) | 26.5 (6.5) | 25.4 (3.2) |
Descriptive statistics, correlations, agreement, and Bland-Altman parameters for Fitbit One and ActiGraph GT3X+.a
| Statistic | Fitbit One | Jawbone UP | |||
| Steps | MVPA | Steps | MVPA | Longest sedentary bout | |
| Mean (SD) | 9221 (3416) | 17.0 (17.6) | 8690 (4029) | 75.5 (35.5) | 87.1 (45.6) |
| GT3X+, mean (SD) | 8497 (2878) | 36.6 (25.0) | 7511 (2692) | 37.4 (22.8) | 46.4 (9.8) |
| .85 (.80, .89) | .80 (.73, .85) | .75 (.67, .81) | .75 (.67, .81) | .19 (.03, .34) | |
| ICC (95% CI)c | 0.90 (0.86, 0.93) | 0.72 (–0.15, 0.90) | 0.79 (0.72, 0.84) | 0.56 (–0.20, 0.83) | 0.08 (–0.12, 0.27) |
| Mean difference (SD)d | 0.2*x–916.1 (1820) | –0.4*x–9.2 (–19.2) | 0.5*x–2491.3 (699.0) | 0.5*x+10.6 (38.1) | 1.7*x–72.3 (44.8) |
| 95% Limits of agreementd | |||||
| Upper | (0.2*x–916.1)+3567.0 | 0.2*x+0.5 | (0.5*x–2491.3)+5290.0 | 0.8*x+20.2 | (1.7*x–72.3)+87.8 |
| Lower | (0.2*x–916.1)–3567.0 | –0.8*x–18.8 | (0.5*x–2491.3)–5290.0 | 0.08*x+1.1 | (1.7*x–72.3)–87.8 |
aDays analyzed for Fitbit One: n=135; days analyzed for Jawbone UP: n=154.
bCorrelations for steps were calculated using Pearson correlation coefficient (r). Correlations for MVPA and longest idle time were calculated using Spearman rank correlation coefficient (ρ) due to non-normally distributed data. All correlations were significant at P<.05.
cAll agreements are significant at P<.001 except for longest sedentary bout (P>.99).
dWhere the mean difference or limits of agreement were systematically biased, equations are presented, where x=a given value on the x-axis (mean of device and ActiGraph GT3X+ value).
Figure 2Bland-Altman plots for device steps and ActiGraph steps: Fitbit (panel A; n=135), Jawbone UP (panel B; n=154). The solid line represents the mean difference (steps) between the two measures and the dashed lines are the 95% limits of agreement.
Figure 3Bland-Altman plots for Fitbit “very active minutes” (panel A; n=135) and Jawbone “active minutes” (panel B; n=154) and ActiGraph MVPA (mins). The solid line represents the mean difference (mins) between the two measures and the dashed lines are the 95% limits of agreement. MVPA: moderate-to-vigorous physical activity.
Figure 4Bland-Altman plot for Jawbone “longest idle time” and ActiGraph “longest sedentary bout.” The solid line represents the mean difference (minutes) between the two measures and the dashed lines are the 95% limits of agreement.