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research article

Towards a supervised classification of neocortical interneuron morphologies

Mihaljevic, Bojan
•
Larranaga, Pedro
•
Benavides-Piccione, Ruth
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December 17, 2018
Bmc Bioinformatics

BackgroundThe challenge of classifying cortical interneurons is yet to be solved. Data-driven classification into established morphological types may provide insight and practical value.ResultsWe trained models using 217 high-quality morphologies of rat somatosensory neocortex interneurons reconstructed by a single laboratory and pre-classified into eight types. We quantified 103 axonal and dendritic morphometrics, including novel ones that capture features such as arbor orientation, extent in layer one, and dendritic polarity. We trained a one-versus-rest classifier for each type, combining well-known supervised classification algorithms with feature selection and over- and under-sampling. We accurately classified the nest basket, Martinotti, and basket cell types with the Martinotti model outperforming 39 out of 42 leading neuroscientists. We had moderate accuracy for the double bouquet, small and large basket types, and limited accuracy for the chandelier and bitufted types. We characterized the types with interpretable models or with up to ten morphometrics.ConclusionExcept for large basket, 50 high-quality reconstructions sufficed to learn an accurate model of a type. Improving these models may require quantifying complex arborization patterns and finding correlates of bouton-related features. Our study brings attention to practical aspects important for neuron classification and is readily reproducible, with all code and data available online.

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Type
research article
DOI
10.1186/s12859-018-2470-1
Web of Science ID

WOS:000453523200004

Author(s)
Mihaljevic, Bojan
Larranaga, Pedro
Benavides-Piccione, Ruth
Hill, Sean  
DeFelipe, Javier
Bielza, Concha
Date Issued

2018-12-17

Published in
Bmc Bioinformatics
Volume

19

Start page

511

Subjects

Biochemical Research Methods

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Biotechnology & Applied Microbiology

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Mathematical & Computational Biology

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Biochemistry & Molecular Biology

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Biotechnology & Applied Microbiology

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Mathematical & Computational Biology

•

feature selection

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martinotti

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morphometrics

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gabaergic interneurons

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digital reconstructions

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cells

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diversity

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nomenclature

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selection

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features

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
BBP-CORE  
BBP-GR-HILL  
Available on Infoscience
January 3, 2019
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/153328
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