The Limited Utility of Multiunit Data in Differentiating Neuronal Population Activity.

To date, single neuron recordings remain the gold standard for monitoring the activity of neuronal populations. Since obtaining single neuron recordings is not always possible, high frequency or 'multiunit activity' (MUA) is often used as a surrogate. Although MUA recordings allow one to m...

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Main Authors: Corey J Keller, Christopher Chen, Fred A Lado, Kamran Khodakhah
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4844128?pdf=render
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spelling doaj-187d743200a449c89d966ff50ee1a3372020-11-24T21:47:26ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01114e015315410.1371/journal.pone.0153154The Limited Utility of Multiunit Data in Differentiating Neuronal Population Activity.Corey J KellerChristopher ChenFred A LadoKamran KhodakhahTo date, single neuron recordings remain the gold standard for monitoring the activity of neuronal populations. Since obtaining single neuron recordings is not always possible, high frequency or 'multiunit activity' (MUA) is often used as a surrogate. Although MUA recordings allow one to monitor the activity of a large number of neurons, they do not allow identification of specific neuronal subtypes, the knowledge of which is often critical for understanding electrophysiological processes. Here, we explored whether prior knowledge of the single unit waveform of specific neuron types is sufficient to permit the use of MUA to monitor and distinguish differential activity of individual neuron types. We used an experimental and modeling approach to determine if components of the MUA can monitor medium spiny neurons (MSNs) and fast-spiking interneurons (FSIs) in the mouse dorsal striatum. We demonstrate that when well-isolated spikes are recorded, the MUA at frequencies greater than 100Hz is correlated with single unit spiking, highly dependent on the waveform of each neuron type, and accurately reflects the timing and spectral signature of each neuron. However, in the absence of well-isolated spikes (the norm in most MUA recordings), the MUA did not typically contain sufficient information to permit accurate prediction of the respective population activity of MSNs and FSIs. Thus, even under ideal conditions for the MUA to reliably predict the moment-to-moment activity of specific local neuronal ensembles, knowledge of the spike waveform of the underlying neuronal populations is necessary, but not sufficient.http://europepmc.org/articles/PMC4844128?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Corey J Keller
Christopher Chen
Fred A Lado
Kamran Khodakhah
spellingShingle Corey J Keller
Christopher Chen
Fred A Lado
Kamran Khodakhah
The Limited Utility of Multiunit Data in Differentiating Neuronal Population Activity.
PLoS ONE
author_facet Corey J Keller
Christopher Chen
Fred A Lado
Kamran Khodakhah
author_sort Corey J Keller
title The Limited Utility of Multiunit Data in Differentiating Neuronal Population Activity.
title_short The Limited Utility of Multiunit Data in Differentiating Neuronal Population Activity.
title_full The Limited Utility of Multiunit Data in Differentiating Neuronal Population Activity.
title_fullStr The Limited Utility of Multiunit Data in Differentiating Neuronal Population Activity.
title_full_unstemmed The Limited Utility of Multiunit Data in Differentiating Neuronal Population Activity.
title_sort limited utility of multiunit data in differentiating neuronal population activity.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description To date, single neuron recordings remain the gold standard for monitoring the activity of neuronal populations. Since obtaining single neuron recordings is not always possible, high frequency or 'multiunit activity' (MUA) is often used as a surrogate. Although MUA recordings allow one to monitor the activity of a large number of neurons, they do not allow identification of specific neuronal subtypes, the knowledge of which is often critical for understanding electrophysiological processes. Here, we explored whether prior knowledge of the single unit waveform of specific neuron types is sufficient to permit the use of MUA to monitor and distinguish differential activity of individual neuron types. We used an experimental and modeling approach to determine if components of the MUA can monitor medium spiny neurons (MSNs) and fast-spiking interneurons (FSIs) in the mouse dorsal striatum. We demonstrate that when well-isolated spikes are recorded, the MUA at frequencies greater than 100Hz is correlated with single unit spiking, highly dependent on the waveform of each neuron type, and accurately reflects the timing and spectral signature of each neuron. However, in the absence of well-isolated spikes (the norm in most MUA recordings), the MUA did not typically contain sufficient information to permit accurate prediction of the respective population activity of MSNs and FSIs. Thus, even under ideal conditions for the MUA to reliably predict the moment-to-moment activity of specific local neuronal ensembles, knowledge of the spike waveform of the underlying neuronal populations is necessary, but not sufficient.
url http://europepmc.org/articles/PMC4844128?pdf=render
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