• DocumentCode
    49980
  • Title

    Smoothness as a Failure Mode of Bayesian Mixture Models in Brain–Machine Interfaces

  • Author

    Yousefi, Siamak ; Wein, Alex ; Kowalski, Kevin C. ; Richardson, Andrew G. ; Srinivasan, Lakshminarayan

  • Author_Institution
    Hamilton Glaucoma Center, Univ. of California at San Diego, La Jolla, CA, USA
  • Volume
    23
  • Issue
    1
  • fYear
    2015
  • fDate
    Jan. 2015
  • Firstpage
    128
  • Lastpage
    137
  • Abstract
    Various recursive Bayesian filters based on reach state equations (RSE) have been proposed to convert neural signals into reaching movements in brain-machine interfaces. When the target is known, RSE produce exquisitely smooth trajectories relative to the random walk prior in the basic Kalman filter. More realistically, the target is unknown, and gaze analysis or other side information is expected to provide a discrete set of potential targets. In anticipation of this scenario, various groups have implemented RSE-based mixture (hybrid) models, which define a discrete random variable to represent target identity. While principled, this approach sacrifices the smoothness of RSE with known targets. This paper combines empirical spiking data from primary motor cortex and mathematical analysis to explain this loss in performance. We focus on angular velocity as a meaningful and convenient measure of smoothness. Our results demonstrate that angular velocity in the trajectory is approximately proportional to change in target probability. The constant of proportionality equals the difference in heading between parallel filters from the two most probable targets, suggesting a smoothness benefit to more narrowly spaced targets. Simulation confirms that measures to smooth the data likelihood also improve the smoothness of hybrid trajectories, including increased ensemble size and uniformity in preferred directions. We speculate that closed-loop training or neuronal subset selection could be used to shape the user´s tuning curves towards this end.
  • Keywords
    Bayes methods; Kalman filters; angular velocity; biomechanics; biomedical equipment; brain; feature extraction; feature selection; gaze tracking; learning (artificial intelligence); man-machine systems; mathematical analysis; medical control systems; medical signal processing; mixture models; neurophysiology; object detection; random processes; recursive filters; smoothing methods; trajectory control; Bayesian mixture model failure mode; Kalman filter; RSE smoothness; RSE-based hybrid model; RSE-based mixture model; angular velocity; brain-machine interface; closed-loop training; data likelihood smoothing; discrete potential target set; discrete random variable; empirical spiking data; ensemble size; gaze analysis; hybrid trajectory smoothness; known target condition; mathematical analysis; narrowly spaced target; neural signal conversion; neuronal subset selection; parallel filter; performance loss; preferred direction uniformity; primary motor cortex; proportionality constant; random walk prior; reach state equation; reaching movement; recursive Bayesian filter; simulation; smooth trajectory; smoothness measure; target identity representation; target probability change; user tuning curve; Angular velocity; Bayes methods; Brain modeling; Equations; Mathematical model; Neurons; Trajectory; Bayesian mixture model; brain–machine interface (BMI); general purpose filter design; neural decoding; neuroprosthesis;
  • fLanguage
    English
  • Journal_Title
    Neural Systems and Rehabilitation Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1534-4320
  • Type

    jour

  • DOI
    10.1109/TNSRE.2014.2329698
  • Filename
    6832621