| Literature DB >> 26236210 |
Ferran Galán1, Stuart N Baker1.
Abstract
Brain-machine interface (BMI) research assumes that patients with disconnected neural pathways could naturally control a prosthetic device by volitionally modulating sensorimotor cortical activity usually responsible for movement coordination. However, computational approaches to motor control challenge this view. This article examines the predictions of optimal feedback control (OFC) theory on the effects that loss of motor output and sensory feedback have on the normal generation of motor commands. Example simulations of unimpaired, totally disconnected, and deafferented controllers illustrate that by neglecting the dynamic interplay between motor commands, state estimation, feedback and behavior, current BMI systems face translational challenges rooted in a debatable assumption and experimental models of limited validity.Entities:
Keywords: brain-machine interface (BMI); dynamical systems; motor control; neuroprosthetics; optimal feedback control
Year: 2015 PMID: 26236210 PMCID: PMC4505102 DOI: 10.3389/fnbeh.2015.00186
Source DB: PubMed Journal: Front Behav Neurosci ISSN: 1662-5153 Impact factor: 3.558
Figure 1Optimal feedback control, putative neural substrates, and peripheral disconnections. Diagram illustrating OFC framework, its possible neural basis and both simulated peripheral disconnections: complete disconnection (red) and deafferentation (gray). See section “Peripheral disconnections in OFC” for details.
Figure 2Simulations of reaching movements produced by , , and controllers. Simulated single-joint reaching movements of the forearm (n = 20) toward a target placed 50 cm from starting position. (A) Position (B) motor command (C) position variance with respect to the average. (D) Motor command variance with respect to the average.