| Literature DB >> 29108029 |
Maia P Smith1,2, Marie Standl1, Joachim Heinrich1,3, Holger Schulz1,4.
Abstract
BACKGROUND: Because of unreliable self-report, accelerometry is increasingly used to objectively monitor physical activity (PA). However, results of accelerometric studies vary depending on the chosen cutpoints between activity intensities. Population-specific activity patterns likely affect the size of these differences. To establish their size and stability we apply three sets of cutpoints, including two calibrated to a single reference, to our accelerometric data and compare PA estimates.Entities:
Mesh:
Year: 2017 PMID: 29108029 PMCID: PMC5673210 DOI: 10.1371/journal.pone.0187706
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Population characteristics.
Mean (standard deviation) unless otherwise stated.
| P-value for pairwise difference between cutpoints | ||
|---|---|---|
| N | 1402 | — |
| Male (N, %) | 650, 46 | — |
| Age, years | 15.6 (0.5) | — |
| Height, cm | 172 (8.2) | — |
| Weight, kg | 61.6 (11) | — |
| BMI, kg/m | 20.8 (3.0) | — |
| BMI Z-score | 0.10 (0.97) | |
| Parents highly educated | 71 | — |
| Days of accelerometry (range 4–7) | 6.26 (0.88) | — |
| Accelerometric min/day | 884 (51) | — |
| Sedentary behavior, min/day | All <0.0001 | |
| Freedson | 591 (74) | |
| Romanzini uniaxial | 645 (71) | |
| Romanzini triaxial | ||
| Light activity, min/day | All <0.0001 | |
| Freedson | ||
| Romanzini uniaxial | 203 (50) | |
| Romanzini triaxial | 183 (44) | |
| Moderate activity, min/day | 0.0083 for | |
| Freedson | ||
| Romanzini uniaxial | 14.2 (7.6) | |
| Romanzini triaxial | 27.7 (13) | |
| Vigorous activity, min/day | All <0.0001 | |
| Freedson | 12.6 (12) | |
| Romanzini uniaxial | 22.5 (16) | |
| Romanzini triaxial | ||
| Moderate or vigorous activity, min/day | All <0.0001 | |
| Freedson | 41.2 (23) | |
| Romanzini uniaxial | 36.7 (22) | |
| Romanzini triaxial | ||
Largest estimate of activity for each intensity in bold.
1) BMI Z-scores from World Health Organization Child Growth Standards, Growth reference 5–19 years
2) Higher-educated parent entered college or higher. Very similar population profiled in (Smith et. al, 2016; PLOSOne. doi: 10.1371/journal.pone.0152217.)
P-values from generalized linear models. All pairwise comparisons between cutpoints checked.
Agreement of cutpoints on activity intensity, minute by minute.
Percent of time (total 14.7 hours / day, 8780 days).
| Sedentary | Light | Moderate | Vigorous | |||
| Sedentary | 73.04 | |||||
| Light | 3.29 | 22.90 | ||||
| Moderate | — | 0.06 | 0.36 | 1.58 | ||
| Vigorous | — | — | 0.41 | 2.48 | ||
| 73.67 | 20.65 | 3.08 | 2.59 | 100 | ||
Bold text for minutes in which Romanzini’s triaxial and uniaxial cutpoints estimate activity of the same intensity: italics for minutes where triaxial cutpoints estimate more-intense activity. Romanzini’s uniaxial and triaxial cutpoints calibrated to the same reference population in (Romanzini et. al, 2014).
–if no minutes fell into that category (e.g. sedentary according to the triaxial cutpoints, but vigorous according to uniaxial.)
Fig 1Large differences in estimated activity intensity between uni- and triaxial accelerometric cutpoints originally calibrated to the same dataset.
Romanzini’s uni- and triaxial cutpoints from Romanzini M; Petroski, EL; Ohara, D; Dourado, AC; Reichert, FF. Calibration of ActiGraph GT3X, Actical and RT3 accelerometers in adolescents. European Journal of Sport Science. 2014;14(1):91–9. doi: 10.1080/17461391.2012.732614.