Flexible resonance in prefrontal networks with strong feedback inhibition.

Oscillations are ubiquitous features of brain dynamics that undergo task-related changes in synchrony, power, and frequency. The impact of those changes on target networks is poorly understood. In this work, we used a biophysically detailed model of prefrontal cortex (PFC) to explore the effects of...

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Main Authors: Jason S Sherfey, Salva Ardid, Joachim Hass, Michael E Hasselmo, Nancy J Kopell
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-08-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC6103521?pdf=render
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spelling doaj-869bc47f77ee4fbfb71f6adaa216325c2020-11-25T02:20:15ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582018-08-01148e100635710.1371/journal.pcbi.1006357Flexible resonance in prefrontal networks with strong feedback inhibition.Jason S SherfeySalva ArdidJoachim HassMichael E HasselmoNancy J KopellOscillations are ubiquitous features of brain dynamics that undergo task-related changes in synchrony, power, and frequency. The impact of those changes on target networks is poorly understood. In this work, we used a biophysically detailed model of prefrontal cortex (PFC) to explore the effects of varying the spike rate, synchrony, and waveform of strong oscillatory inputs on the behavior of cortical networks driven by them. Interacting populations of excitatory and inhibitory neurons with strong feedback inhibition are inhibition-based network oscillators that exhibit resonance (i.e., larger responses to preferred input frequencies). We quantified network responses in terms of mean firing rates and the population frequency of network oscillation; and characterized their behavior in terms of the natural response to asynchronous input and the resonant response to oscillatory inputs. We show that strong feedback inhibition causes the PFC to generate internal (natural) oscillations in the beta/gamma frequency range (>15 Hz) and to maximize principal cell spiking in response to external oscillations at slightly higher frequencies. Importantly, we found that the fastest oscillation frequency that can be relayed by the network maximizes local inhibition and is equal to a frequency even higher than that which maximizes the firing rate of excitatory cells; we call this phenomenon population frequency resonance. This form of resonance is shown to determine the optimal driving frequency for suppressing responses to asynchronous activity. Lastly, we demonstrate that the natural and resonant frequencies can be tuned by changes in neuronal excitability, the duration of feedback inhibition, and dynamic properties of the input. Our results predict that PFC networks are tuned for generating and selectively responding to beta- and gamma-rhythmic signals due to the natural and resonant properties of inhibition-based oscillators. They also suggest strategies for optimizing transcranial stimulation and using oscillatory networks in neuromorphic engineering.http://europepmc.org/articles/PMC6103521?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Jason S Sherfey
Salva Ardid
Joachim Hass
Michael E Hasselmo
Nancy J Kopell
spellingShingle Jason S Sherfey
Salva Ardid
Joachim Hass
Michael E Hasselmo
Nancy J Kopell
Flexible resonance in prefrontal networks with strong feedback inhibition.
PLoS Computational Biology
author_facet Jason S Sherfey
Salva Ardid
Joachim Hass
Michael E Hasselmo
Nancy J Kopell
author_sort Jason S Sherfey
title Flexible resonance in prefrontal networks with strong feedback inhibition.
title_short Flexible resonance in prefrontal networks with strong feedback inhibition.
title_full Flexible resonance in prefrontal networks with strong feedback inhibition.
title_fullStr Flexible resonance in prefrontal networks with strong feedback inhibition.
title_full_unstemmed Flexible resonance in prefrontal networks with strong feedback inhibition.
title_sort flexible resonance in prefrontal networks with strong feedback inhibition.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2018-08-01
description Oscillations are ubiquitous features of brain dynamics that undergo task-related changes in synchrony, power, and frequency. The impact of those changes on target networks is poorly understood. In this work, we used a biophysically detailed model of prefrontal cortex (PFC) to explore the effects of varying the spike rate, synchrony, and waveform of strong oscillatory inputs on the behavior of cortical networks driven by them. Interacting populations of excitatory and inhibitory neurons with strong feedback inhibition are inhibition-based network oscillators that exhibit resonance (i.e., larger responses to preferred input frequencies). We quantified network responses in terms of mean firing rates and the population frequency of network oscillation; and characterized their behavior in terms of the natural response to asynchronous input and the resonant response to oscillatory inputs. We show that strong feedback inhibition causes the PFC to generate internal (natural) oscillations in the beta/gamma frequency range (>15 Hz) and to maximize principal cell spiking in response to external oscillations at slightly higher frequencies. Importantly, we found that the fastest oscillation frequency that can be relayed by the network maximizes local inhibition and is equal to a frequency even higher than that which maximizes the firing rate of excitatory cells; we call this phenomenon population frequency resonance. This form of resonance is shown to determine the optimal driving frequency for suppressing responses to asynchronous activity. Lastly, we demonstrate that the natural and resonant frequencies can be tuned by changes in neuronal excitability, the duration of feedback inhibition, and dynamic properties of the input. Our results predict that PFC networks are tuned for generating and selectively responding to beta- and gamma-rhythmic signals due to the natural and resonant properties of inhibition-based oscillators. They also suggest strategies for optimizing transcranial stimulation and using oscillatory networks in neuromorphic engineering.
url http://europepmc.org/articles/PMC6103521?pdf=render
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