DocumentCode
1342522
Title
ERD-Based Online Brain–Machine Interfaces (BMI) in the Context of Neurorehabilitation: Optimizing BMI Learning and Performance
Author
Soekadar, Surjo R. ; Witkowski, Matthias ; Mellinger, Jürgen ; Ramos, Ander ; Birbaumer, Niels ; Cohen, Leonardo G.
Author_Institution
Human Cortical Physiol. & Stroke Neurore habilitation Sect. (HCPS), Nat. Inst. of Health (NIH), Bethesda, MD, USA
Volume
19
Issue
5
fYear
2011
Firstpage
542
Lastpage
549
Abstract
Event-related desynchronization (ERD) of sensori-motor rhythms (SMR) can be used for online brain-machine interface (BMI) control, but yields challenges related to the stability of ERD and feedback strategy to optimize BMI learning. Here, we compared two approaches to this challenge in 20 right-handed healthy subjects (HS, five sessions each, S1-S5) and four stroke patients (SP, 15 sessions each, S1-S15). ERD was recorded from a 275-sensor MEG system. During daily training, motor imagery-induced ERD led to visual and proprioceptive feedback delivered through an orthotic device attached to the subjects´ hand and fingers. Group A trained with a heterogeneous reference value (RV) for ERD detection with binary feedback and Group B with a homogenous RV and graded feedback (10 HS and 2 SP in each group). HS in Group B showed better BMI performance than Group A (p <; 0.001) and improved BMI control from S1 to S5 ( p=0.012) while Group A did not. In spite of the small n, SP in Group B showed a trend for a higher BMI performance ( p=0.06) and learning was significantly better ( p <; 0.05). Using a homogeneous RV and graded feedback led to improved modulation of ipsilesional activity resulting in superior BMI learning relative to use of a heterogeneous RV and binary feedback.
Keywords
brain-computer interfaces; feedback; learning (artificial intelligence); magnetoencephalography; patient rehabilitation; BMI learning; BMI performance; ERD detection; ERD-based online brain-machine interfaces; MEG system; binary feedback; event-related desynchronization; feedback strategy; neurorehabilitation; sensorimotor rhythms; Brain; Educational institutions; Fingers; Orthotics; Reliability; Silicon; Training; Brain–machine interface; event-related desynchronization; neurorehabilitation; stroke; Adaptation, Psychological; Adult; Algorithms; Brain; Cortical Synchronization; Data Interpretation, Statistical; Electroencephalography; Feedback, Physiological; Female; Functional Laterality; Humans; Imagination; Learning; Magnetoencephalography; Male; Orthotic Devices; Proprioception; Psychomotor Performance; Reward; Software; Stroke; User-Computer Interface; Young Adult;
fLanguage
English
Journal_Title
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1534-4320
Type
jour
DOI
10.1109/TNSRE.2011.2166809
Filename
6035989
Link To Document