Functional parcellation of mouse visual cortex using statistical techniques reveals response-dependent clustering of cortical processing areas.

The visual cortex of the mouse brain can be divided into ten or more areas that each contain complete or partial retinotopic maps of the contralateral visual field. It is generally assumed that these areas represent discrete processing regions. In contrast to the conventional input-output characteri...

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Main Authors: Mari Ganesh Kumar, Ming Hu, Aadhirai Ramanujan, Mriganka Sur, Hema A Murthy
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-02-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1008548
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spelling doaj-b410f48f206a4de2982019246795da372021-07-09T04:32:11ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582021-02-01172e100854810.1371/journal.pcbi.1008548Functional parcellation of mouse visual cortex using statistical techniques reveals response-dependent clustering of cortical processing areas.Mari Ganesh KumarMing HuAadhirai RamanujanMriganka SurHema A MurthyThe visual cortex of the mouse brain can be divided into ten or more areas that each contain complete or partial retinotopic maps of the contralateral visual field. It is generally assumed that these areas represent discrete processing regions. In contrast to the conventional input-output characterizations of neuronal responses to standard visual stimuli, here we asked whether six of the core visual areas have responses that are functionally distinct from each other for a given visual stimulus set, by applying machine learning techniques to distinguish the areas based on their activity patterns. Visual areas defined by retinotopic mapping were examined using supervised classifiers applied to responses elicited by a range of stimuli. Using two distinct datasets obtained using wide-field and two-photon imaging, we show that the area labels predicted by the classifiers were highly consistent with the labels obtained using retinotopy. Furthermore, the classifiers were able to model the boundaries of visual areas using resting state cortical responses obtained without any overt stimulus, in both datasets. With the wide-field dataset, clustering neuronal responses using a constrained semi-supervised classifier showed graceful degradation of accuracy. The results suggest that responses from visual cortical areas can be classified effectively using data-driven models. These responses likely reflect unique circuits within each area that give rise to activity with stronger intra-areal than inter-areal correlations, and their responses to controlled visual stimuli across trials drive higher areal classification accuracy than resting state responses.https://doi.org/10.1371/journal.pcbi.1008548
collection DOAJ
language English
format Article
sources DOAJ
author Mari Ganesh Kumar
Ming Hu
Aadhirai Ramanujan
Mriganka Sur
Hema A Murthy
spellingShingle Mari Ganesh Kumar
Ming Hu
Aadhirai Ramanujan
Mriganka Sur
Hema A Murthy
Functional parcellation of mouse visual cortex using statistical techniques reveals response-dependent clustering of cortical processing areas.
PLoS Computational Biology
author_facet Mari Ganesh Kumar
Ming Hu
Aadhirai Ramanujan
Mriganka Sur
Hema A Murthy
author_sort Mari Ganesh Kumar
title Functional parcellation of mouse visual cortex using statistical techniques reveals response-dependent clustering of cortical processing areas.
title_short Functional parcellation of mouse visual cortex using statistical techniques reveals response-dependent clustering of cortical processing areas.
title_full Functional parcellation of mouse visual cortex using statistical techniques reveals response-dependent clustering of cortical processing areas.
title_fullStr Functional parcellation of mouse visual cortex using statistical techniques reveals response-dependent clustering of cortical processing areas.
title_full_unstemmed Functional parcellation of mouse visual cortex using statistical techniques reveals response-dependent clustering of cortical processing areas.
title_sort functional parcellation of mouse visual cortex using statistical techniques reveals response-dependent clustering of cortical processing areas.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2021-02-01
description The visual cortex of the mouse brain can be divided into ten or more areas that each contain complete or partial retinotopic maps of the contralateral visual field. It is generally assumed that these areas represent discrete processing regions. In contrast to the conventional input-output characterizations of neuronal responses to standard visual stimuli, here we asked whether six of the core visual areas have responses that are functionally distinct from each other for a given visual stimulus set, by applying machine learning techniques to distinguish the areas based on their activity patterns. Visual areas defined by retinotopic mapping were examined using supervised classifiers applied to responses elicited by a range of stimuli. Using two distinct datasets obtained using wide-field and two-photon imaging, we show that the area labels predicted by the classifiers were highly consistent with the labels obtained using retinotopy. Furthermore, the classifiers were able to model the boundaries of visual areas using resting state cortical responses obtained without any overt stimulus, in both datasets. With the wide-field dataset, clustering neuronal responses using a constrained semi-supervised classifier showed graceful degradation of accuracy. The results suggest that responses from visual cortical areas can be classified effectively using data-driven models. These responses likely reflect unique circuits within each area that give rise to activity with stronger intra-areal than inter-areal correlations, and their responses to controlled visual stimuli across trials drive higher areal classification accuracy than resting state responses.
url https://doi.org/10.1371/journal.pcbi.1008548
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