| Literature DB >> 26712758 |
Simone T Boerema1,2, Gerard B Essink3,4, Thijs M Tönis5,6, Lex van Velsen7,8, Hermie J Hermens9,10.
Abstract
Measuring sedentary behaviour and physical activity with wearable sensors provides detailed information on activity patterns and can serve health interventions. At the basis of activity analysis stands the ability to distinguish sedentary from active time. As there is no consensus regarding the optimal cut-point for classifying sedentary behaviour, we studied the consequences of using different cut-points for this type of analysis. We conducted a battery of sitting and walking activities with 14 office workers, wearing the Promove 3D activity sensor to determine the optimal cut-point (in counts per minute (m·s(-2))) for classifying sedentary behaviour. Then, 27 office workers wore the sensor for five days. We evaluated the sensitivity of five sedentary pattern measures for various sedentary cut-points and found an optimal cut-point for sedentary behaviour of 1660 × 10(-3) m·s(-2). Total sedentary time was not sensitive to cut-point changes within ±10% of this optimal cut-point; other sedentary pattern measures were not sensitive to changes within the ±20% interval. The results from studies analyzing sedentary patterns, using different cut-points, can be compared within these boundaries. Furthermore, commercial, hip-worn activity trackers can implement feedback and interventions on sedentary behaviour patterns, using these cut-points.Entities:
Keywords: accelerometer; activity pattern; activity sensor; cut-point; field trial; laboratory trial; office workers; sedentary behavior
Mesh:
Year: 2015 PMID: 26712758 PMCID: PMC4732055 DOI: 10.3390/s16010022
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Boxplots of count per minute for the active and sedentary tasks (n = 14). (a) sitting; (b) doing deskwork; (c) sitting “restless”; (d) rising from a chair and walking; (e) walking; and (f) standing still.
Figure 2(a) ROC curve in counts per minute (sensitivity vs. 1-specificity), based on tasks a–e. Area under the curve is 0.9982. (b) Sensitivity and specificity vs. cut-point values. The curves intersect at: 1660 × 10−3 m·s−2.
Overview of sedentary pattern measures for various cut-points.
| Cut-Point | Total Sedentary Time (%) | Sedentary Bout Length (min) | GINI | |||
|---|---|---|---|---|---|---|
| (% a) | (cpm) | |||||
| 50% | 830 | 76.05 b | 13.51 b | 4.52 b | 39.67 b | 0.66 |
| 80% | 1328 | 82.58 b | 15.64 | 4.56 | 48.11 | 0.67 |
| 90% | 1494 | 84.16 | 16.41 | 4.81 | 52.04 | 0.67 |
| 95% | 1577 | 84.92 | 16.83 | 4.94 | 53.41 | 0.67 |
| 100% | 1660 | 85.66 | 17.34 | 5.09 | 54.78 | 0.67 |
| 105% | 1743 | 86.40 | 17.92 | 5.35 | 56.07 | 0.67 |
| 110% | 1826 | 87.09 | 18.39 | 5.61 | 58.15 | 0.67 |
| 120% | 1992 | 88.42 b | 19.82 | 6.02 | 60.93 | 0.67 |
| 150% | 2490 | 91.90 b | 26.84 b | 8.96 b | 76.96 b | 0.66 |
a Percentage of the optimal cut-point of 1660 counts per minute (cpm) in 10−3 (m·s−2); b Significant different from the value at cut-point 1660 × 10−3 m·s−2, with α = 0.05.
Figure 3Mean total sedentary time as percentage of wear time for various cut-points. The shaded area is the standard deviation. Vertical lines indicate the various thresholds, with the solid line being the optimal cut-point.
Figure 4Bout length variables for various cut-points. Blue: Median bout length; green: Mean bout length; red: W50% bout length. Shaded areas are the standard deviations.
Figure 5Mean Gini index for various cut-points. The shaded area is the standard deviation. Vertical lines indicate the various thresholds, with the solid line being the optimal cut-point.