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Extending Transfer Entropy Improves Identification of Effective Connectivity in a Spiking Cortical Network Model

Transfer entropy (TE) is an information-theoretic measure which has received recent attention in neuroscience for its potential to identify effective connectivity between neurons. Calculating TE for large ensembles of spiking neurons is computationally intensive, and has caused most investigators to...

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Autores principales: Ito, Shinya, Hansen, Michael E., Heiland, Randy, Lumsdaine, Andrew, Litke, Alan M., Beggs, John M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3216957/
https://www.ncbi.nlm.nih.gov/pubmed/22102894
http://dx.doi.org/10.1371/journal.pone.0027431
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author Ito, Shinya
Hansen, Michael E.
Heiland, Randy
Lumsdaine, Andrew
Litke, Alan M.
Beggs, John M.
author_facet Ito, Shinya
Hansen, Michael E.
Heiland, Randy
Lumsdaine, Andrew
Litke, Alan M.
Beggs, John M.
author_sort Ito, Shinya
collection PubMed
description Transfer entropy (TE) is an information-theoretic measure which has received recent attention in neuroscience for its potential to identify effective connectivity between neurons. Calculating TE for large ensembles of spiking neurons is computationally intensive, and has caused most investigators to probe neural interactions at only a single time delay and at a message length of only a single time bin. This is problematic, as synaptic delays between cortical neurons, for example, range from one to tens of milliseconds. In addition, neurons produce bursts of spikes spanning multiple time bins. To address these issues, here we introduce a free software package that allows TE to be measured at multiple delays and message lengths. To assess performance, we applied these extensions of TE to a spiking cortical network model (Izhikevich, 2006) with known connectivity and a range of synaptic delays. For comparison, we also investigated single-delay TE, at a message length of one bin (D1TE), and cross-correlation (CC) methods. We found that D1TE could identify 36% of true connections when evaluated at a false positive rate of 1%. For extended versions of TE, this dramatically improved to 73% of true connections. In addition, the connections correctly identified by extended versions of TE accounted for 85% of the total synaptic weight in the network. Cross correlation methods generally performed more poorly than extended TE, but were useful when data length was short. A computational performance analysis demonstrated that the algorithm for extended TE, when used on currently available desktop computers, could extract effective connectivity from 1 hr recordings containing 200 neurons in ∼5 min. We conclude that extending TE to multiple delays and message lengths improves its ability to assess effective connectivity between spiking neurons. These extensions to TE soon could become practical tools for experimentalists who record hundreds of spiking neurons.
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spelling pubmed-32169572011-11-18 Extending Transfer Entropy Improves Identification of Effective Connectivity in a Spiking Cortical Network Model Ito, Shinya Hansen, Michael E. Heiland, Randy Lumsdaine, Andrew Litke, Alan M. Beggs, John M. PLoS One Research Article Transfer entropy (TE) is an information-theoretic measure which has received recent attention in neuroscience for its potential to identify effective connectivity between neurons. Calculating TE for large ensembles of spiking neurons is computationally intensive, and has caused most investigators to probe neural interactions at only a single time delay and at a message length of only a single time bin. This is problematic, as synaptic delays between cortical neurons, for example, range from one to tens of milliseconds. In addition, neurons produce bursts of spikes spanning multiple time bins. To address these issues, here we introduce a free software package that allows TE to be measured at multiple delays and message lengths. To assess performance, we applied these extensions of TE to a spiking cortical network model (Izhikevich, 2006) with known connectivity and a range of synaptic delays. For comparison, we also investigated single-delay TE, at a message length of one bin (D1TE), and cross-correlation (CC) methods. We found that D1TE could identify 36% of true connections when evaluated at a false positive rate of 1%. For extended versions of TE, this dramatically improved to 73% of true connections. In addition, the connections correctly identified by extended versions of TE accounted for 85% of the total synaptic weight in the network. Cross correlation methods generally performed more poorly than extended TE, but were useful when data length was short. A computational performance analysis demonstrated that the algorithm for extended TE, when used on currently available desktop computers, could extract effective connectivity from 1 hr recordings containing 200 neurons in ∼5 min. We conclude that extending TE to multiple delays and message lengths improves its ability to assess effective connectivity between spiking neurons. These extensions to TE soon could become practical tools for experimentalists who record hundreds of spiking neurons. Public Library of Science 2011-11-15 /pmc/articles/PMC3216957/ /pubmed/22102894 http://dx.doi.org/10.1371/journal.pone.0027431 Text en Ito et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Ito, Shinya
Hansen, Michael E.
Heiland, Randy
Lumsdaine, Andrew
Litke, Alan M.
Beggs, John M.
Extending Transfer Entropy Improves Identification of Effective Connectivity in a Spiking Cortical Network Model
title Extending Transfer Entropy Improves Identification of Effective Connectivity in a Spiking Cortical Network Model
title_full Extending Transfer Entropy Improves Identification of Effective Connectivity in a Spiking Cortical Network Model
title_fullStr Extending Transfer Entropy Improves Identification of Effective Connectivity in a Spiking Cortical Network Model
title_full_unstemmed Extending Transfer Entropy Improves Identification of Effective Connectivity in a Spiking Cortical Network Model
title_short Extending Transfer Entropy Improves Identification of Effective Connectivity in a Spiking Cortical Network Model
title_sort extending transfer entropy improves identification of effective connectivity in a spiking cortical network model
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3216957/
https://www.ncbi.nlm.nih.gov/pubmed/22102894
http://dx.doi.org/10.1371/journal.pone.0027431
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