Distributed cerebellar plasticity implements adaptable gain control in a manipulation task: a closed-loop robotic simulation

Adaptable gain regulation is at the core of the forward controller operation performed by the cerebro-cerebellar loops and it allows the intensity of motor acts to be finely tuned in a predictive manner. In order to learn and store information about body-object dynamics and to generate an internal m...

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Main Authors: Jesus A Garrido Alcazar, Niceto Rafael Luque, Egidio eD‘Angelo, Eduardo eRos
Format: Article
Language:English
Published: Frontiers Media S.A. 2013-10-01
Series:Frontiers in Neural Circuits
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fncir.2013.00159/full
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spelling doaj-411253933f7a4599944b4c0474ba1d1f2020-11-25T01:04:28ZengFrontiers Media S.A.Frontiers in Neural Circuits1662-51102013-10-01710.3389/fncir.2013.0015958042Distributed cerebellar plasticity implements adaptable gain control in a manipulation task: a closed-loop robotic simulationJesus A Garrido Alcazar0Jesus A Garrido Alcazar1Niceto Rafael Luque2Egidio eD‘Angelo3Egidio eD‘Angelo4Eduardo eRos5University of PaviaConsorzio Interuniversitario per le Scienze Fisiche della Materia (CNISM)University of GranadaUniversity of PaviaIRCCS Istituto Neurologico Nazionale C. MondinoUniversity of GranadaAdaptable gain regulation is at the core of the forward controller operation performed by the cerebro-cerebellar loops and it allows the intensity of motor acts to be finely tuned in a predictive manner. In order to learn and store information about body-object dynamics and to generate an internal model of movement, the cerebellum is thought to employ long-term synaptic plasticity. LTD at the PF-PC synapse has classically been assumed to subserve this function (Marr, 1969). However, this plasticity alone cannot account for the broad dynamic ranges and time scales of cerebellar adaptation. We therefore tested the role of plasticity distributed over multiple synaptic sites (Gao et al., 2012; Hansel et al., 2001) by generating an analog cerebellar model embedded into a control loop connected to a robotic simulator. The robot used a three-joint arm and performed repetitive fast manipulations with different masses along an 8-shape trajectory. In accordance with biological evidence, the cerebellum model was endowed with both LTD and LTP at the PF-PC, MF-DCN and PC-DCN synapses. This resulted in a network scheme whose effectiveness was extended considerably compared to one including just PF-PC synaptic plasticity. Indeed, the system including distributed plasticity reliably self-adapted to manipulate different masses and to learn the arm-object dynamics over a time course that included fast learning and consolidation, along the lines of what has been observed in behavioral tests. In particular, PF-PC plasticity operated as a time correlator between the actual input state and the system error, while MF-DCN and PC-DCN plasticity played a key role in generating the gain controller. This model suggests that distributed synaptic plasticity allows generation of the complex learning properties of the cerebellum. The incorporation of further plasticity mechanisms and of spiking signal processing will allow this concept to be extended in a more realistic computational scenario.http://journal.frontiersin.org/Journal/10.3389/fncir.2013.00159/fullCerebellar Nucleimodelinggain controlLong-term synaptic plasticityLearning Consolidation
collection DOAJ
language English
format Article
sources DOAJ
author Jesus A Garrido Alcazar
Jesus A Garrido Alcazar
Niceto Rafael Luque
Egidio eD‘Angelo
Egidio eD‘Angelo
Eduardo eRos
spellingShingle Jesus A Garrido Alcazar
Jesus A Garrido Alcazar
Niceto Rafael Luque
Egidio eD‘Angelo
Egidio eD‘Angelo
Eduardo eRos
Distributed cerebellar plasticity implements adaptable gain control in a manipulation task: a closed-loop robotic simulation
Frontiers in Neural Circuits
Cerebellar Nuclei
modeling
gain control
Long-term synaptic plasticity
Learning Consolidation
author_facet Jesus A Garrido Alcazar
Jesus A Garrido Alcazar
Niceto Rafael Luque
Egidio eD‘Angelo
Egidio eD‘Angelo
Eduardo eRos
author_sort Jesus A Garrido Alcazar
title Distributed cerebellar plasticity implements adaptable gain control in a manipulation task: a closed-loop robotic simulation
title_short Distributed cerebellar plasticity implements adaptable gain control in a manipulation task: a closed-loop robotic simulation
title_full Distributed cerebellar plasticity implements adaptable gain control in a manipulation task: a closed-loop robotic simulation
title_fullStr Distributed cerebellar plasticity implements adaptable gain control in a manipulation task: a closed-loop robotic simulation
title_full_unstemmed Distributed cerebellar plasticity implements adaptable gain control in a manipulation task: a closed-loop robotic simulation
title_sort distributed cerebellar plasticity implements adaptable gain control in a manipulation task: a closed-loop robotic simulation
publisher Frontiers Media S.A.
series Frontiers in Neural Circuits
issn 1662-5110
publishDate 2013-10-01
description Adaptable gain regulation is at the core of the forward controller operation performed by the cerebro-cerebellar loops and it allows the intensity of motor acts to be finely tuned in a predictive manner. In order to learn and store information about body-object dynamics and to generate an internal model of movement, the cerebellum is thought to employ long-term synaptic plasticity. LTD at the PF-PC synapse has classically been assumed to subserve this function (Marr, 1969). However, this plasticity alone cannot account for the broad dynamic ranges and time scales of cerebellar adaptation. We therefore tested the role of plasticity distributed over multiple synaptic sites (Gao et al., 2012; Hansel et al., 2001) by generating an analog cerebellar model embedded into a control loop connected to a robotic simulator. The robot used a three-joint arm and performed repetitive fast manipulations with different masses along an 8-shape trajectory. In accordance with biological evidence, the cerebellum model was endowed with both LTD and LTP at the PF-PC, MF-DCN and PC-DCN synapses. This resulted in a network scheme whose effectiveness was extended considerably compared to one including just PF-PC synaptic plasticity. Indeed, the system including distributed plasticity reliably self-adapted to manipulate different masses and to learn the arm-object dynamics over a time course that included fast learning and consolidation, along the lines of what has been observed in behavioral tests. In particular, PF-PC plasticity operated as a time correlator between the actual input state and the system error, while MF-DCN and PC-DCN plasticity played a key role in generating the gain controller. This model suggests that distributed synaptic plasticity allows generation of the complex learning properties of the cerebellum. The incorporation of further plasticity mechanisms and of spiking signal processing will allow this concept to be extended in a more realistic computational scenario.
topic Cerebellar Nuclei
modeling
gain control
Long-term synaptic plasticity
Learning Consolidation
url http://journal.frontiersin.org/Journal/10.3389/fncir.2013.00159/full
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