DocumentCode
970997
Title
Decoding sensory feedback from firing rates of afferent ensembles recorded in cat dorsal root ganglia in normal locomotion
Author
Weber, Douglas J. ; Stein, Richard B. ; Everaert, Dirk G. ; Prochazka, Arthur
Author_Institution
Alberta Univ., Edmonton, Alta., Canada
Volume
14
Issue
2
fYear
2006
fDate
6/1/2006 12:00:00 AM
Firstpage
240
Lastpage
243
Abstract
Sensory feedback is required by biological motor control systems to maintain stability, respond to perturbations, and adapt. Similarly, motor neuroprostheses require feedback to provide natural and complete restoration of motor functions. In this paper, we show that ensemble firing rates from the body´s mechanoreceptors can provide a natural source of kinematic state feedback and could be useful for prosthetic control. Single unit recordings from multiple primary afferent neurons were obtained during walking using multichannel electrode arrays implanted chronically in the L7 dorsal root ganglia of three cats. We typically recorded simultaneously from over 20-30 neurons during the first 7-14 days after surgery, but recordings gradually worsened thereafter. Histology indicates that a ring of inflammatory and connective tissues (100 μm thick) develops around each microelectrode and likely contributes to the degradation in recording quality. Accurate estimates of the hindlimb trajectory were made using a linear filter with inputs from only a few neurons highly correlated with limb kinematics. The coefficients for the linear filter were identified in a least-squares fit with 5-10 s of walking data (model training stage). The estimated and actual trajectories of separate walking data generally match well for walking at a range of speeds accounting for 63±22% (mean±S.D. for hip, knee, and ankle) of the variance in joint angle and 72±4% of the variance in joint angular velocities. These results indicate that a neural interface with primary sensory neurons in the dorsal root ganglion can provide accurate kinematic state information that may be useful for closed loop control of a neuroprosthesis.
Keywords
bioelectric phenomena; decoding; feedback; filters; gait analysis; least squares approximations; mechanoception; medical control systems; medical signal processing; microelectrodes; neuromuscular stimulation; prosthetics; 100 mum; 5 to 10 s; 7 to 14 day; biological motor control systems; cat dorsal root ganglia; chronically implanted multichannel electrode arrays; closed loop control; connective tissues; firing rates; hindlimb trajectory; histology; inflammatory tissues; joint angle; joint angular velocities; kinematic state feedback; least-squares fit; limb kinematics; linear filter; mechanoreceptors; microelectrode; motor neuroprostheses; multiple primary afferent neurons; normal locomotion; primary sensory neurons; prosthetic control; sensory feedback decoding; single unit recordings; walking; Decoding; Kinematics; Legged locomotion; Motor drives; Neurofeedback; Neurons; Nonlinear filters; Prosthetics; Stability; State feedback; Cat; chronic recording; locomotion; microelectrode array; neuroprosthesis; sensory neurons; Action Potentials; Afferent Pathways; Algorithms; Animals; Biomechanics; Cats; Feedback; Ganglia, Spinal; Information Storage and Retrieval; Joints; Locomotion; Mechanoreceptors; Range of Motion, Articular; Touch; User-Computer Interface;
fLanguage
English
Journal_Title
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1534-4320
Type
jour
DOI
10.1109/TNSRE.2006.875575
Filename
1642778
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