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Autores principales: Vasques, Xavier, Vanel, Laurent, Villette, Guillaume, Cif, Laura
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2502.11591
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author Vasques, Xavier
Vanel, Laurent
Villette, Guillaume
Cif, Laura
author_facet Vasques, Xavier
Vanel, Laurent
Villette, Guillaume
Cif, Laura
contents Classification and quantitative characterization of neuronal morphologies from histological neuronal reconstruction is challenging since it is still unclear how to delineate a neuronal cell class and which are the best features to define them by. The morphological neuron characterization represents a primary source to address anatomical comparisons, morphometric analysis of cells, or brain modeling. The objectives of this paper are (i) to develop and integrate a pipeline that goes from morphological feature extraction to classification and (ii) to assess and compare the accuracy of machine learning algorithms to classify neuron morphologies. The algorithms were trained on 430 digitally reconstructed neurons subjectively classified into layers and/or m-types using young and/or adult development state population of the somatosensory cortex in rats. For supervised algorithms, linear discriminant analysis provided better classification results in comparison with others. For unsupervised algorithms, the affinity propagation and the Ward algorithms provided slightly better results.
format Preprint
id arxiv_https___arxiv_org_abs_2502_11591
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Morphological Neuron Classification Using Machine Learning
Vasques, Xavier
Vanel, Laurent
Villette, Guillaume
Cif, Laura
Neurons and Cognition
Classification and quantitative characterization of neuronal morphologies from histological neuronal reconstruction is challenging since it is still unclear how to delineate a neuronal cell class and which are the best features to define them by. The morphological neuron characterization represents a primary source to address anatomical comparisons, morphometric analysis of cells, or brain modeling. The objectives of this paper are (i) to develop and integrate a pipeline that goes from morphological feature extraction to classification and (ii) to assess and compare the accuracy of machine learning algorithms to classify neuron morphologies. The algorithms were trained on 430 digitally reconstructed neurons subjectively classified into layers and/or m-types using young and/or adult development state population of the somatosensory cortex in rats. For supervised algorithms, linear discriminant analysis provided better classification results in comparison with others. For unsupervised algorithms, the affinity propagation and the Ward algorithms provided slightly better results.
title Morphological Neuron Classification Using Machine Learning
topic Neurons and Cognition
url https://arxiv.org/abs/2502.11591