Extraction of network topology from multi-electrode recordings: is there a small-world effect?

Detalhes bibliográficos
Autor(a) principal: Gerhard, Felipe
Data de Publicação: 2011
Outros Autores: Pipa, Gordon, Lima, Bruss, Maciel, Sergio Tulio Neuenschwander, Gerstner, Wulfram
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Repositório Institucional da UFRN
Texto Completo: https://repositorio.ufrn.br/jspui/handle/123456789/23110
Resumo: The simultaneous recording of the activity of many neurons poses challenges for multivariate data analysis. Here, we propose a general scheme of reconstruction of the functional network from spike train recordings. Effective, causal interactions are estimated by fitting generalized linear models on the neural responses, incorporating effects of the neurons’ self-history, of input from other neurons in the recorded network and of modulation by an external stimulus. The coupling terms arising from synaptic input can be transformed by thresholding into a binary connectivity matrix which is directed. Each link between two neurons represents a causal influence from one neuron to the other, given the observation of all other neurons from the population. The resulting graph is analyzed with respect to small-world and scale-free properties using quantitative measures for directed networks. Such graph-theoretic analyses have been performed on many complex dynamic networks, including the connectivity structure between different brain areas. Only few studies have attempted to look at the structure of cortical neural networks on the level of individual neurons. Here, using multi-electrode recordings from the visual system of the awake monkey, we find that cortical networks lack scale-free behavior, but show a small, but significant small-world structure. Assuming a simple distance-dependent probabilistic wiring between neurons, we find that this connectivity structure can account for all of the networks’ observed small-world‑ness. Moreover, for multi-electrode recordings the sampling of neurons is not uniform across the population. We show that the small-world-ness obtained by such a localized sub-sampling overestimates the strength of the true small-world structure of the network. This bias is likely to be present in all previous experiments based on multi-electrode recordings.
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spelling Gerhard, FelipePipa, GordonLima, BrussMaciel, Sergio Tulio NeuenschwanderGerstner, Wulfram2017-05-26T13:11:00Z2017-05-26T13:11:00Z2011-02-071662-5188https://repositorio.ufrn.br/jspui/handle/123456789/23110enggeneralized linear modelseffective connectivitysmall-world networksrandom samplingscale-free networksnetwork topologyawake monkey recordingsvisual systemExtraction of network topology from multi-electrode recordings: is there a small-world effect?info:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/articleThe simultaneous recording of the activity of many neurons poses challenges for multivariate data analysis. Here, we propose a general scheme of reconstruction of the functional network from spike train recordings. Effective, causal interactions are estimated by fitting generalized linear models on the neural responses, incorporating effects of the neurons’ self-history, of input from other neurons in the recorded network and of modulation by an external stimulus. The coupling terms arising from synaptic input can be transformed by thresholding into a binary connectivity matrix which is directed. Each link between two neurons represents a causal influence from one neuron to the other, given the observation of all other neurons from the population. The resulting graph is analyzed with respect to small-world and scale-free properties using quantitative measures for directed networks. Such graph-theoretic analyses have been performed on many complex dynamic networks, including the connectivity structure between different brain areas. Only few studies have attempted to look at the structure of cortical neural networks on the level of individual neurons. Here, using multi-electrode recordings from the visual system of the awake monkey, we find that cortical networks lack scale-free behavior, but show a small, but significant small-world structure. Assuming a simple distance-dependent probabilistic wiring between neurons, we find that this connectivity structure can account for all of the networks’ observed small-world‑ness. Moreover, for multi-electrode recordings the sampling of neurons is not uniform across the population. We show that the small-world-ness obtained by such a localized sub-sampling overestimates the strength of the true small-world structure of the network. 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dc.title.pt_BR.fl_str_mv Extraction of network topology from multi-electrode recordings: is there a small-world effect?
title Extraction of network topology from multi-electrode recordings: is there a small-world effect?
spellingShingle Extraction of network topology from multi-electrode recordings: is there a small-world effect?
Gerhard, Felipe
generalized linear models
effective connectivity
small-world networks
random sampling
scale-free networks
network topology
awake monkey recordings
visual system
title_short Extraction of network topology from multi-electrode recordings: is there a small-world effect?
title_full Extraction of network topology from multi-electrode recordings: is there a small-world effect?
title_fullStr Extraction of network topology from multi-electrode recordings: is there a small-world effect?
title_full_unstemmed Extraction of network topology from multi-electrode recordings: is there a small-world effect?
title_sort Extraction of network topology from multi-electrode recordings: is there a small-world effect?
author Gerhard, Felipe
author_facet Gerhard, Felipe
Pipa, Gordon
Lima, Bruss
Maciel, Sergio Tulio Neuenschwander
Gerstner, Wulfram
author_role author
author2 Pipa, Gordon
Lima, Bruss
Maciel, Sergio Tulio Neuenschwander
Gerstner, Wulfram
author2_role author
author
author
author
dc.contributor.author.fl_str_mv Gerhard, Felipe
Pipa, Gordon
Lima, Bruss
Maciel, Sergio Tulio Neuenschwander
Gerstner, Wulfram
dc.subject.por.fl_str_mv generalized linear models
effective connectivity
small-world networks
random sampling
scale-free networks
network topology
awake monkey recordings
visual system
topic generalized linear models
effective connectivity
small-world networks
random sampling
scale-free networks
network topology
awake monkey recordings
visual system
description The simultaneous recording of the activity of many neurons poses challenges for multivariate data analysis. Here, we propose a general scheme of reconstruction of the functional network from spike train recordings. Effective, causal interactions are estimated by fitting generalized linear models on the neural responses, incorporating effects of the neurons’ self-history, of input from other neurons in the recorded network and of modulation by an external stimulus. The coupling terms arising from synaptic input can be transformed by thresholding into a binary connectivity matrix which is directed. Each link between two neurons represents a causal influence from one neuron to the other, given the observation of all other neurons from the population. The resulting graph is analyzed with respect to small-world and scale-free properties using quantitative measures for directed networks. Such graph-theoretic analyses have been performed on many complex dynamic networks, including the connectivity structure between different brain areas. Only few studies have attempted to look at the structure of cortical neural networks on the level of individual neurons. Here, using multi-electrode recordings from the visual system of the awake monkey, we find that cortical networks lack scale-free behavior, but show a small, but significant small-world structure. Assuming a simple distance-dependent probabilistic wiring between neurons, we find that this connectivity structure can account for all of the networks’ observed small-world‑ness. Moreover, for multi-electrode recordings the sampling of neurons is not uniform across the population. We show that the small-world-ness obtained by such a localized sub-sampling overestimates the strength of the true small-world structure of the network. This bias is likely to be present in all previous experiments based on multi-electrode recordings.
publishDate 2011
dc.date.issued.fl_str_mv 2011-02-07
dc.date.accessioned.fl_str_mv 2017-05-26T13:11:00Z
dc.date.available.fl_str_mv 2017-05-26T13:11:00Z
dc.type.status.fl_str_mv info:eu-repo/semantics/publishedVersion
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dc.identifier.issn.none.fl_str_mv 1662-5188
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