A deep learning strategy to identify cell types across species from high-density extracellular recordings.

dc.contributor.author

Beau, Maxime

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Herzfeld, David J

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Naveros, Francisco

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Hemelt, Marie E

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D'Agostino, Federico

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Oostland, Marlies

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Sánchez-López, Alvaro

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Chung, Young Yoon

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Maibach, Michael

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Kyranakis, Stephen

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Stabb, Hannah N

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Martínez Lopera, M Gabriela

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Lajko, Agoston

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Zedler, Marie

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Ohmae, Shogo

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Hall, Nathan J

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Clark, Beverley A

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Cohen, Dana

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Lisberger, Stephen G

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Kostadinov, Dimitar

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Hull, Court

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Häusser, Michael

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Medina, Javier F

dc.date.accessioned

2025-04-01T13:28:35Z

dc.date.available

2025-04-01T13:28:35Z

dc.date.issued

2025-02

dc.description.abstract

High-density probes allow electrophysiological recordings from many neurons simultaneously across entire brain circuits but fail to reveal cell type. Here, we develop a strategy to identify cell types from extracellular recordings in awake animals and reveal the computational roles of neurons with distinct functional, molecular, and anatomical properties. We combine optogenetics and pharmacology using the cerebellum as a testbed to generate a curated ground-truth library of electrophysiological properties for Purkinje cells, molecular layer interneurons, Golgi cells, and mossy fibers. We train a semi-supervised deep learning classifier that predicts cell types with greater than 95% accuracy based on the waveform, discharge statistics, and layer of the recorded neuron. The classifier's predictions agree with expert classification on recordings using different probes, in different laboratories, from functionally distinct cerebellar regions, and across species. Our classifier extends the power of modern dynamical systems analyses by revealing the unique contributions of simultaneously recorded cell types during behavior.

dc.identifier

S0092-8674(25)00110-2

dc.identifier.issn

0092-8674

dc.identifier.issn

1097-4172

dc.identifier.uri

https://hdl.handle.net/10161/32159

dc.language

eng

dc.publisher

Elsevier BV

dc.relation.ispartof

Cell

dc.relation.isversionof

10.1016/j.cell.2025.01.041

dc.rights.uri

https://creativecommons.org/licenses/by-nc/4.0

dc.subject

Neuropixels

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cell-type identification

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cerebellar cortex

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cerebellum

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circuit mapping

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classification

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machine learning

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variational autoencoder

dc.title

A deep learning strategy to identify cell types across species from high-density extracellular recordings.

dc.type

Journal article

duke.contributor.orcid

Lisberger, Stephen G|0000-0001-7859-4361

duke.contributor.orcid

Hull, Court|0000-0002-0360-8367

pubs.begin-page

S0092-8674(25)00110-2

pubs.organisational-group

Duke

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School of Medicine

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Basic Science Departments

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Neurobiology

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University Institutes and Centers

pubs.organisational-group

Duke Institute for Brain Sciences

pubs.publication-status

Published

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