Title :
Closed-Loop Decoder Adaptation on Intermediate Time-Scales Facilitates Rapid BMI Performance Improvements Independent of Decoder Initialization Conditions
Author :
Orsborn, Amy L. ; Dangi, Siddharth ; Moorman, Helene G. ; Carmena, Jose M.
Author_Institution :
San Francisco Grad. Group in Bioeng., Univ. of California Berkeley, Berkeley, CA, USA
fDate :
7/1/2012 12:00:00 AM
Abstract :
Closed-loop decoder adaptation (CLDA) shows great promise to improve closed-loop brain-machine interface (BMI) performance. Developing adaptation algorithms capable of rapidly improving performance, independent of initial performance, may be crucial for clinical applications where patients have limited movement and sensory abilities due to motor deficits. Given the subject-decoder interactions inherent in closed-loop BMIs, the decoder adaptation time-scale may be of particular importance when initial performance is limited. Here, we present SmoothBatch, a CLDA algorithm which updates decoder parameters on a 1-2 min time-scale using an exponentially weighted sliding average. The algorithm was experimentally tested with one nonhuman primate performing a center-out reaching BMI task. SmoothBatch was seeded four ways with varying offline decoding power: 1) visual observation of a cursor (n = 20), 2) ipsilateral arm movements (n = 8), 3) baseline neural activity ( n = 17), and 4) arbitrary weights (n = 11). SmoothBatch rapidly improved performance regardless of seeding, with performance improvements from 0.018 0.133 successes/min to >;8 successes/min within 13.1 5.5 min (n = 56). After decoder adaptation ceased, the subject maintained high performance. Moreover, performance improvements were paralleled by SmoothBatch convergence, suggesting that CLDA involves a co-adaptation process between the subject and the decoder.
Keywords :
brain-computer interfaces; closed loop systems; neurophysiology; CLDA algorithm; SmoothBatch convergence; adaptation algorithms; baseline neural activity; clinical applications; closed-loop BMI; closed-loop brain-machine interface performance; closed-loop decoder adaptation; coadaptation process; decoder adaptation time-scale; decoder initialization conditions; decoder parameters; exponentially weighted sliding average; intermediate time-scales; ipsilateral arm movements; motor deficits; nonhuman primate; offline decoding power; rapid BMI performance; sensory ability; subject-decoder interactions; visual observation; Adaptive algorithms; Adaptive control; Brain computer interfaces; Closed loop systems; Kinematics; Adaptive control; brain–machine interfaces (BMIs); closed loop systems; motor cortex; Algorithms; Animals; Biofeedback, Psychology; Brain; Electroencephalography; Evoked Potentials, Motor; Feedback; Humans; Macaca mulatta; Male; Movement; Pattern Recognition, Automated; User-Computer Interface;
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
DOI :
10.1109/TNSRE.2012.2185066