Title :
High-performance brain-machine interface enabled by an adaptive optimal feedback-controlled point process decoder
Author :
Shanechi, Maryam M. ; Orsborn, Amy ; Moorman, Helene ; Gowda, Suraj ; Carmena, Jose M.
Author_Institution :
Sch. of Electr. & Comput. Eng., Cornell Univ., Ithaca, NY, USA
Abstract :
Brain-machine interface (BMI) performance has been improved using Kalman filters (KF) combined with closed-loop decoder adaptation (CLDA). CLDA fits the decoder parameters during closed-loop BMI operation based on the neural activity and inferred user velocity intention. These advances have resulted in the recent ReFIT-KF and SmoothBatch-KF decoders. Here we demonstrate high-performance and robust BMI control using a novel closed-loop BMI architecture termed adaptive optimal feedback-controlled (OFC) point process filter (PPF). Adaptive OFC-PPF allows subjects to issue neural commands and receive feedback with every spike event and hence at a faster rate than the KF. Moreover, it adapts the decoder parameters with every spike event in contrast to current CLDA techniques that do so on the time-scale of minutes. Finally, unlike current methods that rotate the decoded velocity vector, adaptive OFC-PPF constructs an infinite-horizon OFC model of the brain to infer velocity intention during adaptation. Preliminary data collected in a monkey suggests that adaptive OFC-PPF improves BMI control. OFC-PPF outperformed SmoothBatch-KF in a self-paced center-out movement task with 8 targets. This improvement was due to both the PPF´s increased rate of control and feedback compared with the KF, and to the OFC model suggesting that the OFC better approximates the user´s strategy. Also, the spike-by-spike adaptation resulted in faster performance convergence compared to current techniques. Thus adaptive OFC-PPF enabled proficient BMI control in this monkey.
Keywords :
adaptive control; brain-computer interfaces; closed loop systems; control engineering computing; feedback; robust control; BMI performance; CLDA techniques; Kalman filters; OFC point process filter; adaptive OFC-PPF; adaptive optimal feedback-controlled point process decoder; closed-loop BMI architecture; closed-loop decoder adaptation; decoded velocity vector; high-performance brain-machine interface; infinite-horizon OFC model; monkey; robust BMI control; self-paced center-out movement task; Adaptation models; Brain modeling; Convergence; Decoding; Estimation; Kinematics; Neurons;
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2014 36th Annual International Conference of the IEEE
Conference_Location :
Chicago, IL
DOI :
10.1109/EMBC.2014.6945115