Decoding sensorimotor rhythms during robotic-assisted treadmill walking for brain computer interface (BCI) applications

DOI

Locomotor malfunction represents a major problem in some neurological disorders like stroke and spinal cord injury. Robot-assisted walking devices have been used during rehabilitation of patients with these ailments for regaining and improving walking ability.Previous studies showed the advantage of brain-computer interface (BCI) based robot-assisted training combined with physical therapy in the rehabilitation of the upper limb after stroke. Therefore, stroke patients with walking disorders might also benefit from using BCI robot-assisted training protocols. In order to develop such BCI, it is necessary to evaluate the feasibility to decode walking intention from cortical patterns during robot-assisted gait training.Spectral patterns in the electroencephalogram (EEG) related to robot-assisted active and passive walking were investigated in 10 healthy volunteers (mean age 32.3?10.8, six female) and in three acute stroke patients (all male, mean age 46.7?16.9, Berg Balance Scale 20?12.8). A logistic regression classifier was used to distinguish walking from baseline in these spectral EEG patterns. Mean classification accuracies of 94.0?5.4% and 93.1?7.9%, respectively, were reached when active and passive walking were compared against baseline. The classification performance between passive and active walking was 83.4?7.4%. A classification accuracy of 89.9?5.7% was achieved in the stroke patients when comparing walking and baseline. Furthermore, in the healthy volunteers modulation of low gamma activity in central midline areas was found to be associated with the gait cycle phases, but not in the stroke patients.Our results demonstrate the feasibility of BCI-based robotic-assisted training devices for gait rehabilitation.

Date Submitted: 2015-09-21

Identifier
DOI https://doi.org/10.17026/dans-zcm-q8fq
Metadata Access https://lifesciences.datastations.nl/oai?verb=GetRecord&metadataPrefix=oai_datacite&identifier=doi:10.17026/dans-zcm-q8fq
Provenance
Creator E.G.C. Garcia Cossio
Publisher DANS Data Station Life Sciences
Contributor E.G.C. Eliana; M.S. Severens (Donders Institute for Brain, Cognition and Behaviour, Radboud University; Research Development & Education Department, Sint Maartenskliniek); B.N. Nienhuis (Research Development & Education Department, Sint Maartenskliniek); J.D. Duysens (Research Development & Education Department, Sint Maartenskliniek; Department of Kinesiology, KU Leuven); P. D. Desain (Donders Institute for Brain, Cognition and Behaviour, Radboud University); N. K. Keijsers (Research Development & Education Department, Sint Maartenskliniek); J. F. Farquhar (Donders Institute for Brain, Cognition and Behaviour, Radboud University)
Publication Year 2015
Rights DANS Licence; info:eu-repo/semantics/closedAccess; https://doi.org/10.17026/fp39-0x58
OpenAccess false
Contact E.G.C. Eliana (Donders Institute for Brain, Cognition and Behaviour)
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Version 2.0
Discipline Agriculture, Forestry, Horticulture, Aquaculture; Agriculture, Forestry, Horticulture, Aquaculture and Veterinary Medicine; Life Sciences; Medicine; Social Sciences; Social and Behavioural Sciences; Soil Sciences