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A local inhibitory plasticity rule for control of neuronal firing rate and supralinear dendritic integration
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Inhibitory synapses can control a neuron’s firing rate and also control
supralinear dendritic integration. It is not known how inhibitory
synapses can learn to perform these functions using only signals
available locally at the synaptic site. We study an inhibitory
plasticity rule based on the Bienenstock-Cooper-Munro theory in
multicompartment models of striatal projection neurons, and show that it
can perform these two functions. The rule uses local voltage-gated
calcium concentration in the dendrites to regulate inhibitory synaptic
strength. We show that, for rate-coded inputs, the rule can achieve
precise control of neuronal firing rate after changes in excitatory
input rate or excitatory synaptic strength. Additionally, for
sparsely-coded inputs that activate localized synaptic clusters in a
single dendrite, the rule can either allow or inhibit the evoked evoked
supralinear dendritic responses, or equalize their amplitude. Finally,
we demonstrate the use of learning to inhibit supralinear dendritic
integration for solving the nonlinear feature binding problem (NFBP), in
tandem with a simple excitatory plasticity rule. We conclude by
discussing why the collateral inhibitory synapses between striatal
projection neurons could contribute to solving the NFBP with this
plasticity rule.
Title: A local inhibitory plasticity rule for control of neuronal firing rate and supralinear dendritic integration
Description:
Inhibitory synapses can control a neuron’s firing rate and also control
supralinear dendritic integration.
It is not known how inhibitory
synapses can learn to perform these functions using only signals
available locally at the synaptic site.
We study an inhibitory
plasticity rule based on the Bienenstock-Cooper-Munro theory in
multicompartment models of striatal projection neurons, and show that it
can perform these two functions.
The rule uses local voltage-gated
calcium concentration in the dendrites to regulate inhibitory synaptic
strength.
We show that, for rate-coded inputs, the rule can achieve
precise control of neuronal firing rate after changes in excitatory
input rate or excitatory synaptic strength.
Additionally, for
sparsely-coded inputs that activate localized synaptic clusters in a
single dendrite, the rule can either allow or inhibit the evoked evoked
supralinear dendritic responses, or equalize their amplitude.
Finally,
we demonstrate the use of learning to inhibit supralinear dendritic
integration for solving the nonlinear feature binding problem (NFBP), in
tandem with a simple excitatory plasticity rule.
We conclude by
discussing why the collateral inhibitory synapses between striatal
projection neurons could contribute to solving the NFBP with this
plasticity rule.
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