http://www.sciencedirect.com/science/article/pii/S0022510X1630507X
Choose an option to locate/access this article:
Check if you have access through your login credentials or your institution
Check accessHighlights
- •
- Computational models can be used to better understand motor control mechanisms.
- •
- Neuroplasticity occurs in case of permanent changes of brain structure and function.
- •
- Neuroplasticity is modulated by administration of drugs.
- •
- Motor learning is sustained by positive interaction with external environment.
- •
- Internal models have been described to explain the activation of voluntary movements.
Abstract
Computational
approaches for modelling the central nervous system (CNS) aim to
develop theories on processes occurring in the brain that allow the
transformation of all information needed for the execution of motor
acts. Computational models have been proposed in several fields, to
interpret not only the CNS functioning, but also its efferent behaviour.
Computational model theories can provide insights into neuromuscular
and brain function allowing us to reach a deeper understanding of
neuroplasticity. Neuroplasticity is the process occurring in the CNS
that is able to permanently change both structure and function due to
interaction with the external environment. To understand such a complex
process several paradigms related to motor learning and computational
modeling have been put forward. These paradigms have been explained
through several internal model concepts, and supported by
neurophysiological and neuroimaging studies. Therefore, it has been
possible to make theories about the basis of different learning
paradigms according to known computational models.
Here
we review the computational models and motor learning paradigms used to
describe the CNS and neuromuscular functions, as well as their role in
the recovery process. These theories have the potential to provide a way
to rigorously explain all the potential of CNS learning, providing a
basis for future clinical studies.
No comments:
Post a Comment