The cerebellar microcircuit has been the work bench for theoretical and computational modeling since the beginning of neuroscientific research. The regular neural architecture of the cerebellum inspired different solutions to the long-standing issue of how its circuitry could control motor learning and coordination. Originally, the cerebellar network was modeled using a statistical-topological approach that was later extended by considering the geometrical organization of local microcircuits. However, with the advancement in anatomical and physiological investigations, new discoveries have revealed an unexpected richness of connections, neuronal dynamics and plasticity, calling for a change in modeling strategies, so as to include the multitude of elementary aspects of the network into an integrated and easily updatable computational framework. Recently, biophysically accurate “realistic” models using a bottom-up strategy accounted for both detailed connectivity and neuronal non-linear membrane dynamics. In this perspective review, we will consider the state of the art and discuss how these initial efforts could be further improved. Moreover, we will consider how embodied neurorobotic models including spiking cerebellar networks could help explaining the role and interplay of distributed forms of plasticity. We envisage that realistic modeling, combined with closed-loop simulations, will help to capture the essence of cerebellar computations and could eventually be applied to neurological diseases and neurorobotic control systems

Modeling the cerebellar microcircuit: New strategies for a long-standing issue

D'ANGELO, EGIDIO UGO;Antonietti, Alberto;CASALI, STEFANO;CASELLATO, CLAUDIA;MAPELLI, LISA;MASOLI, STEFANO;PRESTORI, FRANCESCA;RIZZA, MARTINA FRANCESCA;
2016-01-01

Abstract

The cerebellar microcircuit has been the work bench for theoretical and computational modeling since the beginning of neuroscientific research. The regular neural architecture of the cerebellum inspired different solutions to the long-standing issue of how its circuitry could control motor learning and coordination. Originally, the cerebellar network was modeled using a statistical-topological approach that was later extended by considering the geometrical organization of local microcircuits. However, with the advancement in anatomical and physiological investigations, new discoveries have revealed an unexpected richness of connections, neuronal dynamics and plasticity, calling for a change in modeling strategies, so as to include the multitude of elementary aspects of the network into an integrated and easily updatable computational framework. Recently, biophysically accurate “realistic” models using a bottom-up strategy accounted for both detailed connectivity and neuronal non-linear membrane dynamics. In this perspective review, we will consider the state of the art and discuss how these initial efforts could be further improved. Moreover, we will consider how embodied neurorobotic models including spiking cerebellar networks could help explaining the role and interplay of distributed forms of plasticity. We envisage that realistic modeling, combined with closed-loop simulations, will help to capture the essence of cerebellar computations and could eventually be applied to neurological diseases and neurorobotic control systems
2016
Computer Science & Engineering includes resources on computer hardware and architecture, computer software, software engineering and design, computer graphics, programming languages, theoretical computing, computing methodologies, broad computing topics, and interdisciplinary computer applications.
Physiology considers resources that study the regulation of biological functions at the level of the whole organism. This includes research from biochemical, cell biological and whole system studies of human and animal physiology. Comparative physiology, biological rhythms, and physiological measurement are also included. Resources emphasizing cellular regulation, or the physiology of specific organs are excluded and are covered in the Cell & Developmental Biology and Medical Research: Organs & Systems categories.
Esperti anonimi
Inglese
Internazionale
ELETTRONICO
10
JULY
176
29
Cellular neurophysiology; Cerebellum; Computational modeling; Microcircuit; Motor learning; Neural plasticity; Neurorobotics; Spiking neural network; Cellular and Molecular Neuroscience
http://journal.frontiersin.org/article/10.3389/fncel.2016.00176/full
12
info:eu-repo/semantics/article
262
D'Angelo, EGIDIO UGO; Antonietti, Alberto; Casali, Stefano; Casellato, Claudia; Garrido, Jesus A.; Luque, Niceto Rafael; Mapelli, Lisa; Masoli, Stefan...espandi
1 Contributo su Rivista::1.1 Articolo in rivista
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11571/1177016
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