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Dendritic morphology predicts pattern recognition performance in multi-compartmental model neurons with and without active conductances

In this paper we examine how a neuron’s dendritic morphology can affect its pattern recognition performance. We use two different algorithms to systematically explore the space of dendritic morphologies: an algorithm that generates all possible dendritic trees with 22 terminal points, and one that c...

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Detalles Bibliográficos
Autores principales: de Sousa, Giseli, Maex, Reinoud, Adams, Rod, Davey, Neil, Steuber, Volker
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer US 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4350002/
https://www.ncbi.nlm.nih.gov/pubmed/25380637
http://dx.doi.org/10.1007/s10827-014-0537-1
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author de Sousa, Giseli
Maex, Reinoud
Adams, Rod
Davey, Neil
Steuber, Volker
author_facet de Sousa, Giseli
Maex, Reinoud
Adams, Rod
Davey, Neil
Steuber, Volker
author_sort de Sousa, Giseli
collection PubMed
description In this paper we examine how a neuron’s dendritic morphology can affect its pattern recognition performance. We use two different algorithms to systematically explore the space of dendritic morphologies: an algorithm that generates all possible dendritic trees with 22 terminal points, and one that creates representative samples of trees with 128 terminal points. Based on these trees, we construct multi-compartmental models. To assess the performance of the resulting neuronal models, we quantify their ability to discriminate learnt and novel input patterns. We find that the dendritic morphology does have a considerable effect on pattern recognition performance and that the neuronal performance is inversely correlated with the mean depth of the dendritic tree. The results also reveal that the asymmetry index of the dendritic tree does not correlate with the performance for the full range of tree morphologies. The performance of neurons with dendritic tapering is best predicted by the mean and variance of the electrotonic distance of their synapses to the soma. All relationships found for passive neuron models also hold, even in more accentuated form, for neurons with active membranes.
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spelling pubmed-43500022015-03-11 Dendritic morphology predicts pattern recognition performance in multi-compartmental model neurons with and without active conductances de Sousa, Giseli Maex, Reinoud Adams, Rod Davey, Neil Steuber, Volker J Comput Neurosci Article In this paper we examine how a neuron’s dendritic morphology can affect its pattern recognition performance. We use two different algorithms to systematically explore the space of dendritic morphologies: an algorithm that generates all possible dendritic trees with 22 terminal points, and one that creates representative samples of trees with 128 terminal points. Based on these trees, we construct multi-compartmental models. To assess the performance of the resulting neuronal models, we quantify their ability to discriminate learnt and novel input patterns. We find that the dendritic morphology does have a considerable effect on pattern recognition performance and that the neuronal performance is inversely correlated with the mean depth of the dendritic tree. The results also reveal that the asymmetry index of the dendritic tree does not correlate with the performance for the full range of tree morphologies. The performance of neurons with dendritic tapering is best predicted by the mean and variance of the electrotonic distance of their synapses to the soma. All relationships found for passive neuron models also hold, even in more accentuated form, for neurons with active membranes. Springer US 2014-11-08 2015 /pmc/articles/PMC4350002/ /pubmed/25380637 http://dx.doi.org/10.1007/s10827-014-0537-1 Text en © The Author(s) 2014
spellingShingle Article
de Sousa, Giseli
Maex, Reinoud
Adams, Rod
Davey, Neil
Steuber, Volker
Dendritic morphology predicts pattern recognition performance in multi-compartmental model neurons with and without active conductances
title Dendritic morphology predicts pattern recognition performance in multi-compartmental model neurons with and without active conductances
title_full Dendritic morphology predicts pattern recognition performance in multi-compartmental model neurons with and without active conductances
title_fullStr Dendritic morphology predicts pattern recognition performance in multi-compartmental model neurons with and without active conductances
title_full_unstemmed Dendritic morphology predicts pattern recognition performance in multi-compartmental model neurons with and without active conductances
title_short Dendritic morphology predicts pattern recognition performance in multi-compartmental model neurons with and without active conductances
title_sort dendritic morphology predicts pattern recognition performance in multi-compartmental model neurons with and without active conductances
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4350002/
https://www.ncbi.nlm.nih.gov/pubmed/25380637
http://dx.doi.org/10.1007/s10827-014-0537-1
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