Finding the balance between model complexity and performance: Using ventral striatal oscillations to classify feeding behavior in rats.

The ventral striatum (VS) is a central node within a distributed network that controls appetitive behavior, and neuromodulation of the VS has demonstrated therapeutic potential for appetitive disorders. Local field potential (LFP) oscillations recorded from deep brain stimulation (DBS) electrodes wi...

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Main Authors: Lucas L Dwiel, Jibran Y Khokhar, Michael A Connerney, Alan I Green, Wilder T Doucette
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-04-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1006838
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spelling doaj-d158aca8f3074f718143b74319de87632021-04-21T15:11:33ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582019-04-01154e100683810.1371/journal.pcbi.1006838Finding the balance between model complexity and performance: Using ventral striatal oscillations to classify feeding behavior in rats.Lucas L DwielJibran Y KhokharMichael A ConnerneyAlan I GreenWilder T DoucetteThe ventral striatum (VS) is a central node within a distributed network that controls appetitive behavior, and neuromodulation of the VS has demonstrated therapeutic potential for appetitive disorders. Local field potential (LFP) oscillations recorded from deep brain stimulation (DBS) electrodes within the VS are a pragmatic source of neural systems-level information about appetitive behavior that could be used in responsive neuromodulation systems. Here, we recorded LFPs from the bilateral nucleus accumbens core and shell (subregions of the VS) during limited access to palatable food across varying conditions of hunger and food palatability in male rats. We used standard statistical methods (logistic regression) as well as the machine learning algorithm lasso to predict aspects of feeding behavior using VS LFPs. We were able to predict the amount of food eaten, the increase in consumption following food deprivation, and the type of food eaten. Further, we were able to predict whether the initiation of feeding was imminent up to 42.5 seconds before feeding began and classify current behavior as either feeding or not-feeding. In classifying feeding behavior, we found an optimal balance between model complexity and performance with models using 3 LFP features primarily from the alpha and high gamma frequencies. As shown here, unbiased methods can identify systems-level neural activity linked to domains of mental illness with potential application to the development and personalization of novel treatments.https://doi.org/10.1371/journal.pcbi.1006838
collection DOAJ
language English
format Article
sources DOAJ
author Lucas L Dwiel
Jibran Y Khokhar
Michael A Connerney
Alan I Green
Wilder T Doucette
spellingShingle Lucas L Dwiel
Jibran Y Khokhar
Michael A Connerney
Alan I Green
Wilder T Doucette
Finding the balance between model complexity and performance: Using ventral striatal oscillations to classify feeding behavior in rats.
PLoS Computational Biology
author_facet Lucas L Dwiel
Jibran Y Khokhar
Michael A Connerney
Alan I Green
Wilder T Doucette
author_sort Lucas L Dwiel
title Finding the balance between model complexity and performance: Using ventral striatal oscillations to classify feeding behavior in rats.
title_short Finding the balance between model complexity and performance: Using ventral striatal oscillations to classify feeding behavior in rats.
title_full Finding the balance between model complexity and performance: Using ventral striatal oscillations to classify feeding behavior in rats.
title_fullStr Finding the balance between model complexity and performance: Using ventral striatal oscillations to classify feeding behavior in rats.
title_full_unstemmed Finding the balance between model complexity and performance: Using ventral striatal oscillations to classify feeding behavior in rats.
title_sort finding the balance between model complexity and performance: using ventral striatal oscillations to classify feeding behavior in rats.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2019-04-01
description The ventral striatum (VS) is a central node within a distributed network that controls appetitive behavior, and neuromodulation of the VS has demonstrated therapeutic potential for appetitive disorders. Local field potential (LFP) oscillations recorded from deep brain stimulation (DBS) electrodes within the VS are a pragmatic source of neural systems-level information about appetitive behavior that could be used in responsive neuromodulation systems. Here, we recorded LFPs from the bilateral nucleus accumbens core and shell (subregions of the VS) during limited access to palatable food across varying conditions of hunger and food palatability in male rats. We used standard statistical methods (logistic regression) as well as the machine learning algorithm lasso to predict aspects of feeding behavior using VS LFPs. We were able to predict the amount of food eaten, the increase in consumption following food deprivation, and the type of food eaten. Further, we were able to predict whether the initiation of feeding was imminent up to 42.5 seconds before feeding began and classify current behavior as either feeding or not-feeding. In classifying feeding behavior, we found an optimal balance between model complexity and performance with models using 3 LFP features primarily from the alpha and high gamma frequencies. As shown here, unbiased methods can identify systems-level neural activity linked to domains of mental illness with potential application to the development and personalization of novel treatments.
url https://doi.org/10.1371/journal.pcbi.1006838
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