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A comparison of computational methods for detecting bursts in neuronal spike trains and their application to human stem cell-derived neuronal networks

Accurate identification of bursting activity is an essential element in the characterization of neuronal network activity. Despite this, no one technique for identifying bursts in spike trains has been widely adopted. Instead, many methods have been developed for the analysis of bursting activity, o...

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Autores principales: Cotterill, Ellese, Charlesworth, Paul, Thomas, Christopher W., Paulsen, Ole, Eglen, Stephen J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Physiological Society 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4969396/
https://www.ncbi.nlm.nih.gov/pubmed/27098024
http://dx.doi.org/10.1152/jn.00093.2016
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author Cotterill, Ellese
Charlesworth, Paul
Thomas, Christopher W.
Paulsen, Ole
Eglen, Stephen J.
author_facet Cotterill, Ellese
Charlesworth, Paul
Thomas, Christopher W.
Paulsen, Ole
Eglen, Stephen J.
author_sort Cotterill, Ellese
collection PubMed
description Accurate identification of bursting activity is an essential element in the characterization of neuronal network activity. Despite this, no one technique for identifying bursts in spike trains has been widely adopted. Instead, many methods have been developed for the analysis of bursting activity, often on an ad hoc basis. Here we provide an unbiased assessment of the effectiveness of eight of these methods at detecting bursts in a range of spike trains. We suggest a list of features that an ideal burst detection technique should possess and use synthetic data to assess each method in regard to these properties. We further employ each of the methods to reanalyze microelectrode array (MEA) recordings from mouse retinal ganglion cells and examine their coherence with bursts detected by a human observer. We show that several common burst detection techniques perform poorly at analyzing spike trains with a variety of properties. We identify four promising burst detection techniques, which are then applied to MEA recordings of networks of human induced pluripotent stem cell-derived neurons and used to describe the ontogeny of bursting activity in these networks over several months of development. We conclude that no current method can provide “perfect” burst detection results across a range of spike trains; however, two burst detection techniques, the MaxInterval and logISI methods, outperform compared with others. We provide recommendations for the robust analysis of bursting activity in experimental recordings using current techniques.
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spelling pubmed-49693962016-08-19 A comparison of computational methods for detecting bursts in neuronal spike trains and their application to human stem cell-derived neuronal networks Cotterill, Ellese Charlesworth, Paul Thomas, Christopher W. Paulsen, Ole Eglen, Stephen J. J Neurophysiol Neural Circuits Accurate identification of bursting activity is an essential element in the characterization of neuronal network activity. Despite this, no one technique for identifying bursts in spike trains has been widely adopted. Instead, many methods have been developed for the analysis of bursting activity, often on an ad hoc basis. Here we provide an unbiased assessment of the effectiveness of eight of these methods at detecting bursts in a range of spike trains. We suggest a list of features that an ideal burst detection technique should possess and use synthetic data to assess each method in regard to these properties. We further employ each of the methods to reanalyze microelectrode array (MEA) recordings from mouse retinal ganglion cells and examine their coherence with bursts detected by a human observer. We show that several common burst detection techniques perform poorly at analyzing spike trains with a variety of properties. We identify four promising burst detection techniques, which are then applied to MEA recordings of networks of human induced pluripotent stem cell-derived neurons and used to describe the ontogeny of bursting activity in these networks over several months of development. We conclude that no current method can provide “perfect” burst detection results across a range of spike trains; however, two burst detection techniques, the MaxInterval and logISI methods, outperform compared with others. We provide recommendations for the robust analysis of bursting activity in experimental recordings using current techniques. American Physiological Society 2016-04-20 2016-08-01 /pmc/articles/PMC4969396/ /pubmed/27098024 http://dx.doi.org/10.1152/jn.00093.2016 Text en Copyright © 2016 the American Physiological Society http://creativecommons.org/licenses/by/3.0/deed.en_US Licensed under Creative Commons Attribution CC-BY 3.0 (http://creativecommons.org/licenses/by/3.0/deed.en_US) : the American Physiological Society.
spellingShingle Neural Circuits
Cotterill, Ellese
Charlesworth, Paul
Thomas, Christopher W.
Paulsen, Ole
Eglen, Stephen J.
A comparison of computational methods for detecting bursts in neuronal spike trains and their application to human stem cell-derived neuronal networks
title A comparison of computational methods for detecting bursts in neuronal spike trains and their application to human stem cell-derived neuronal networks
title_full A comparison of computational methods for detecting bursts in neuronal spike trains and their application to human stem cell-derived neuronal networks
title_fullStr A comparison of computational methods for detecting bursts in neuronal spike trains and their application to human stem cell-derived neuronal networks
title_full_unstemmed A comparison of computational methods for detecting bursts in neuronal spike trains and their application to human stem cell-derived neuronal networks
title_short A comparison of computational methods for detecting bursts in neuronal spike trains and their application to human stem cell-derived neuronal networks
title_sort comparison of computational methods for detecting bursts in neuronal spike trains and their application to human stem cell-derived neuronal networks
topic Neural Circuits
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4969396/
https://www.ncbi.nlm.nih.gov/pubmed/27098024
http://dx.doi.org/10.1152/jn.00093.2016
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