scholarly journals Quantifying the physical activity energy expenditure of commuters using a combination of global positioning system and combined heart rate and movement sensors

2015 ◽  
Vol 81 ◽  
pp. 339-344 ◽  
Author(s):  
Silvia Costa ◽  
David Ogilvie ◽  
Alice Dalton ◽  
Kate Westgate ◽  
Søren Brage ◽  
...  
2013 ◽  
Vol 38 (3) ◽  
pp. 352-356 ◽  
Author(s):  
Glen E. Duncan ◽  
Jonathan Lester ◽  
Sean Migotsky ◽  
Lisa Higgins ◽  
Gaetano Borriello

This technical note describes methods to improve activity energy expenditure estimates by using a multi-sensor board (MSB) to measure slope. Ten adults walked over a 4-km (2.5-mile) course wearing an MSB and mobile calorimeter. Energy expenditure was estimated using accelerometry alone (base) and 4 methods to measure slope. The barometer and global positioning system methods improved accuracy by 11% from the base (p < 0.05) to 86% overall. Measuring slope using the MSB improves energy expenditure estimates during field-based activities.


2004 ◽  
Vol 96 (1) ◽  
pp. 343-351 ◽  
Author(s):  
Søren Brage ◽  
Niels Brage ◽  
Paul W. Franks ◽  
Ulf Ekelund ◽  
Man-Yu Wong ◽  
...  

The combination of heart rate (HR) monitoring and movement registration may improve measurement precision of physical activity energy expenditure (PAEE). Previous attempts have used either regression methods, which do not take full advantage of synchronized data, or have not used movement data quantitatively. The objective of the study was to assess the precision of branched model estimates of PAEE by utilizing either individual calibration (IC) of HR and accelerometry or corresponding mean group calibration (GC) equations. In 12 men (20.6-25.2 kg/m2), IC and GC equations for physical activity intensity (PAI) were derived during treadmill walking and running for both HR (Polar) and hipacceleration [Computer Science and Applications (CSA)]. HR and CSA were recorded minute by minute during 22 h of whole body calorimetry and converted into PAI in four different weightings (P1-4) of the HR vs. the CSA (1-P1-4) relationships: if CSA > x, we used the P1 weighting if HR > y, otherwise P2. Similarly, if CSA ≤ x, we used P3 if HR > z, otherwise P4. PAEE was calculated for a 12.5-h nonsleeping period as the time integral of PAI. A priori, we assumed P1 = 1, P2 = P3 = 0.5, P4 = 0, x = 5 counts/min, y = walking/running transition HR, and z = flex HR. These parameters were also estimated post hoc. Means ± SD estimation errors of a priori models were -4.4 ± 29 and 3.5 ± 20% for IC and GC, respectively. Corresponding post hoc model errors were -1.5 ± 13 and 0.1 ± 9.8%, respectively. All branched models had lower errors ( P ≤ 0.035) than single-measure estimates of CSA (less than or equal to -45%) and HR (≥39%), as well as their nonbranched combination (≥25.7%). In conclusion, combining HR and CSA by branched modeling improves estimates of PAEE. IC may be less crucial with this modeling technique.


2007 ◽  
Vol 39 (Supplement) ◽  
pp. S26
Author(s):  
Soren Brage ◽  
Ulf Ekelund ◽  
Paul W. Franks ◽  
Mark A. Hennings ◽  
Antony Wright ◽  
...  

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