Probabilistic Inference of Hand Motion from Neural Activity in Motor Cortex
نویسندگان
چکیده
Statistical learning and probabilistic inference techniques are used to infer the hand position of a subject from multi-electrode recordings of neural activity in motor cortex. First, an array of electrodes provides training data of neural firing conditioned on hand kinematics. We learn a nonparametric representation of this firing activity using a Bayesian model and rigorously compare it with previous models using cross-validation. Second, we infer a posterior probability distribution over hand motion conditioned on a sequence of neural test data using Bayesian inference. The learned firing models of multiple cells are used to define a nonGaussian likelihood term which is combined with a prior probability for the kinematics. A particle filtering method is used to represent, update, and propagate the posterior distribution over time. The approach is compared with traditional linear filtering methods; the results suggest that it may be appropriate for neural prosthetic applications.
منابع مشابه
Bayesian Population Decoding of Motor Cortical Activity Using a Kalman Filter
Effective neural motor prostheses require a method for decoding neural activity representing desired movement. In particular, the accurate reconstruction of a continuous motion signal is necessary for the control of devices such as computer cursors, robots, or a patient's own paralyzed limbs. For such applications, we developed a real-time system that uses Bayesian inference techniques to estim...
متن کاملRobot control system using SMR signals detection
One of the important issues in designing a brain-computer interface system is to select the type of mental activity to be imagined. In some of these systems, mental activity varies with user intent and action that must be controlled by the brain-computer system, and in a number of other signals, the received signals contain the same activity-related mental activity that should be performed by t...
متن کاملProbabilistically Modeling and Decoding Neural Population Activity in Motor Cortex
This paper introduces and summarizes recent work on probabilistic models of motor cortical activity and methods for inferring, or decoding, hand movements from this activity. A simple generalization of previous encoding models is presented in which neural firing rates are represented as a linear function of hand movements. A Bayesian approach is taken to exploit this generative model of firing ...
متن کاملOptical Imaging of the Motor Cortex in the Brain in Order to Determine the Direction of the Hand Movements Using Functional Near-Infrared Spectroscopy (fNIRS)
Introduction: In recent years, optical imaging has attracted a lot of attention from scholars as a non- aggressive, efficient method for evaluating the activities of the motor cortex in the brain. Functional near-infrared spectroscopy (fNIRS (is a tool showing the hemodynamic changes in a cortical area of the brain according to optical principles. The present study has been de...
متن کاملNonparametric Representation of Neural Activity in Motor Cortex
It is well accepted that neural activity in motor cortex is correlated to hand motion, previous studies of cosine tuning curve (Georgopoulos et al.. 1982) and a modified version (Moran and Schwartz. 1999) are examples at revealing such relationships. Here by analyzing multi-electrode recordings of neural activity and simultaneously recorded hand motion during a continuous tracking task. we intr...
متن کامل