» Articles » PMID: 16292640

Adaptation and Generalization in Acceleration-dependent Force Fields

Overview
Journal Exp Brain Res
Specialty Neurology
Date 2005 Nov 18
PMID 16292640
Citations 34
Authors
Affiliations
Soon will be listed here.
Abstract

Any passive rigid inertial object that we hold in our hand, e.g., a tennis racquet, imposes a field of forces on the arm that depends on limb position, velocity, and acceleration. A fundamental characteristic of this field is that the forces due to acceleration and velocity are linearly separable in the intrinsic coordinates of the limb. In order to learn such dynamics with a collection of basis elements, a control system would generalize correctly and therefore perform optimally if the basis elements that were sensitive to limb velocity were not sensitive to acceleration, and vice versa. However, in the mammalian nervous system proprioceptive sensors like muscle spindles encode a nonlinear combination of all components of limb state, with sensitivity to velocity dominating sensitivity to acceleration. Therefore, limb state in the space of proprioception is not linearly separable despite the fact that this separation is a desirable property of control systems that form models of inertial objects. In building internal models of limb dynamics, does the brain use a representation that is optimal for control of inertial objects, or a representation that is closely tied to how peripheral sensors measure limb state? Here we show that in humans, patterns of generalization of reaching movements in acceleration-dependent fields are strongly inconsistent with basis elements that are optimized for control of inertial objects. Unlike a robot controller that models the dynamics of the natural world and represents velocity and acceleration independently, internal models of dynamics that people learn appear to be rooted in the properties of proprioception, nonlinearly responding to the pattern of muscle activation and representing velocity more strongly than acceleration.

Citing Articles

Applied Motor Noise Affects Specific Learning Mechanisms during Short-Term Adaptation to Novel Movement Dynamics.

Foray K, Zhou W, Fitzgerald J, Gianferrara P, Joiner W eNeuro. 2024; 12(1.

PMID: 39592225 PMC: 11747976. DOI: 10.1523/ENEURO.0100-24.2024.


Inferring control objectives in a virtual balancing task in humans and monkeys.

Sadeghi M, Sharif Razavian R, Bazzi S, Chowdhury R, Batista A, Loughlin P Elife. 2024; 12.

PMID: 38738986 PMC: 11090506. DOI: 10.7554/eLife.88514.


Inferring control objectives in a virtual balancing task in humans and monkeys.

Sadeghi M, Sharif Razavian R, Bazzi S, Chowdhury R, Batista A, Loughlin P bioRxiv. 2023; .

PMID: 37205497 PMC: 10187212. DOI: 10.1101/2023.05.02.539055.


Force field generalization and the internal representation of motor learning.

Rezazadeh A, Berniker M PLoS One. 2019; 14(11):e0225002.

PMID: 31743347 PMC: 6863527. DOI: 10.1371/journal.pone.0225002.


A computational scheme for internal models not requiring precise system parameters.

Kim D PLoS One. 2019; 14(2):e0210616.

PMID: 30811420 PMC: 6392307. DOI: 10.1371/journal.pone.0210616.


References
1.
Singh K, Scott S . A motor learning strategy reflects neural circuitry for limb control. Nat Neurosci. 2003; 6(4):399-403. DOI: 10.1038/nn1026. View

2.
Lin C, Crago P . Structural model of the muscle spindle. Ann Biomed Eng. 2002; 30(1):68-83. DOI: 10.1114/1.1433488. View

3.
Matthews P . Evolving views on the internal operation and functional role of the muscle spindle. J Physiol. 1981; 320:1-30. PMC: 1244029. DOI: 10.1113/jphysiol.1981.sp013931. View

4.
Prochazka A, Gorassini M . Models of ensemble firing of muscle spindle afferents recorded during normal locomotion in cats. J Physiol. 1998; 507 ( Pt 1):277-91. PMC: 2230775. DOI: 10.1111/j.1469-7793.1998.277bu.x. View

5.
Lennerstrand G . Position and velocity sensitivity of muscle spindles in the cat. I. Primary and secondary endings deprived of fusimotor activation. Acta Physiol Scand. 1968; 73(3):281-99. DOI: 10.1111/j.1748-1716.1968.tb04106.x. View