Submitted:
08 July 2025
Posted:
09 July 2025
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Abstract
Keywords:
Introduction
Cerebellum Architecture
Purkinje Cell
Cerebellar neurons
Perspective
Conclusion
References
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| Neuron | Role | Circuit function |
|---|---|---|
| Purkinje cell | Main output of cerebellar cortex. Receives parallel and climbing fiber input | Inhibits deep cerebellar nuclei. Modulates motor output |
| Granule cell | Receives mossy fiber input; sends axons as parallel fibers to PC dendrites | Enables sensorimotor coding and timing |
| Golgi cell | Inhibits granule cells via feedback and feedforward loops | Regulates signal duration and gain |
| Basket cell | Inhibits PC soma | Refines PC output spatially |
| Stellate cell | Inhibits PC dendrites | Controls dendritic integration temporally |
| Climbing fiber | Originates from inferior olive. Forms powerful synapse on PC soma and dendrites | Delivers error signal. Induces LTD |
| Mossy fiber | Carries sensorimotor information from periphery or cortex to granule cells | Initiates parallel fiber pathways |
| Deep nuclei | Output of cerebellum. Receives inhibition from PC and excitation from mossy/climbing fibers | Executes motor commands; learning feedback loop |
| Covered | Unexplored |
|---|---|
| Motor control | Emotional modulation and mood regulation |
| Eye movement coordination | Complex cognitive tasks |
| STDP plasticity | Functional integration between multiple cerebellar layers |
| Forward/inverse internal models | Missing cells implementation |
| Error correction via climbing fibers | |
| Spike timing encoding | |
| Biomedichal simulation | |
| Purkinje, golgi and granule cells |
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