| Literature DB >> 25618221 |
Mohamed Boutaayamou1, Cédric Schwartz2, Julien Stamatakis3, Vincent Denoël2, Didier Maquet4, Bénédicte Forthomme2, Jean-Louis Croisier2, Benoît Macq5, Jacques G Verly6, Gaëtan Garraux7, Olivier Brüls2.
Abstract
An original signal processing algorithm is presented to automatically extract, on a stride-by-stride basis, four consecutive fundamental events of walking, heel strike (HS), toe strike (TS), heel-off (HO), and toe-off (TO), from wireless accelerometers applied to the right and left foot. First, the signals recorded from heel and toe three-axis accelerometers are segmented providing heel and toe flat phases. Then, the four gait events are defined from these flat phases. The accelerometer-based event identification was validated in seven healthy volunteers and a total of 247 trials against reference data provided by a force plate, a kinematic 3D analysis system, and video camera. HS, TS, HO, and TO were detected with a temporal accuracy ± precision of 1.3 ms ± 7.2 ms, -4.2 ms ± 10.9 ms, -3.7 ms ± 14.5 ms, and -1.8 ms ± 11.8 ms, respectively, with the associated 95% confidence intervals ranging from -6.3 ms to 2.2 ms. It is concluded that the developed accelerometer-based method can accurately and precisely detect HS, TS, HO, and TO, and could thus be used for the ambulatory monitoring of gait features computed from these events when measured concurrently in both feet.Keywords: Accelerometers; Detection; Gait; Gait cycle; Gait event; Gait phases; Heel strike; Heel-off; Signal processing; Toe strike; Toe-off; Validation; Walking
Mesh:
Year: 2015 PMID: 25618221 DOI: 10.1016/j.medengphy.2015.01.001
Source DB: PubMed Journal: Med Eng Phys ISSN: 1350-4533 Impact factor: 2.242