BackgroundNeural activation patterns proceed often by schemes or motifs distributed across the involved cortical networks. As neurons are correlated, the estimate of all possible dependencies quickly goes out of control. The complex nesting of different oscillation frequencies and their high non-stationariety further hamper any quantitative evaluation of spiking network activities. The problem is exacerbated by the intrinsic variability of neural patterns.Methodology/Principal FindingsOur technique introduces two important novelties and enables to insulate essential patterns on larger sets of spiking neurons and brain activity regimes. First, the sampling procedure over N units is based on a fixed spike number k in order to detect N-dimensional arrays (k-sequences), whose sum over all dimension is k. Then k-sequences variability is greatly reduced by a hierarchical separative clustering, that assigns large amounts of distinct k-sequences to few classes. Iterative separations are stopped when the dimension of each cluster comes to be smaller than a certain threshold. As threshold tuning critically impacts on the number of classes extracted, we developed an effective cost criterion to select the shortest possible description of our dataset. Finally we described three indexes (C,S,R) to evaluate the average pattern complexity, the structure of essential classes and their stability in time.Conclusions/SignificanceWe validated this algorithm with four kinds of surrogated activity, ranging from random to very regular patterned. Then we characterized a selection of ongoing activity recordings. By the S index we identified unstable, moderatly and strongly stable patterns while by the C and the R indices we evidenced their non-random structure. Our algorithm seems able to extract interesting and non-trivial spatial dynamics from multisource neuronal recordings of ongoing and potentially stimulated activity. Combined with time-frequency analysis of LFPs could provide a powerful multiscale approach linking population oscillations with multisite discharge patterns.

Extraction and Characterization of Essential Discharge Patterns from Multisite Recordings of Spiking Ongoing Activity

Liberati Diego;
2009

Abstract

BackgroundNeural activation patterns proceed often by schemes or motifs distributed across the involved cortical networks. As neurons are correlated, the estimate of all possible dependencies quickly goes out of control. The complex nesting of different oscillation frequencies and their high non-stationariety further hamper any quantitative evaluation of spiking network activities. The problem is exacerbated by the intrinsic variability of neural patterns.Methodology/Principal FindingsOur technique introduces two important novelties and enables to insulate essential patterns on larger sets of spiking neurons and brain activity regimes. First, the sampling procedure over N units is based on a fixed spike number k in order to detect N-dimensional arrays (k-sequences), whose sum over all dimension is k. Then k-sequences variability is greatly reduced by a hierarchical separative clustering, that assigns large amounts of distinct k-sequences to few classes. Iterative separations are stopped when the dimension of each cluster comes to be smaller than a certain threshold. As threshold tuning critically impacts on the number of classes extracted, we developed an effective cost criterion to select the shortest possible description of our dataset. Finally we described three indexes (C,S,R) to evaluate the average pattern complexity, the structure of essential classes and their stability in time.Conclusions/SignificanceWe validated this algorithm with four kinds of surrogated activity, ranging from random to very regular patterned. Then we characterized a selection of ongoing activity recordings. By the S index we identified unstable, moderatly and strongly stable patterns while by the C and the R indices we evidenced their non-random structure. Our algorithm seems able to extract interesting and non-trivial spatial dynamics from multisource neuronal recordings of ongoing and potentially stimulated activity. Combined with time-frequency analysis of LFPs could provide a powerful multiscale approach linking population oscillations with multisite discharge patterns.
Campo DC Valore Lingua
dc.authority.ancejournal PLOS ONE -
dc.authority.orgunit Istituto di Elettronica e di Ingegneria dell'Informazione e delle Telecomunicazioni - IEIIT -
dc.authority.people Biella Gabriele E M it
dc.authority.people Liberati Diego it
dc.authority.people Storchi Riccardo it
dc.authority.people Baselli Giuseppe it
dc.collection.id.s b3f88f24-048a-4e43-8ab1-6697b90e068e *
dc.collection.name 01.01 Articolo in rivista *
dc.contributor.appartenenza Istituto di Elettronica e di Ingegneria dell'Informazione e delle Telecomunicazioni - IEIIT *
dc.contributor.appartenenza.mi 877 *
dc.date.accessioned 2024/02/19 15:10:12 -
dc.date.available 2024/02/19 15:10:12 -
dc.date.issued 2009 -
dc.description.abstracteng BackgroundNeural activation patterns proceed often by schemes or motifs distributed across the involved cortical networks. As neurons are correlated, the estimate of all possible dependencies quickly goes out of control. The complex nesting of different oscillation frequencies and their high non-stationariety further hamper any quantitative evaluation of spiking network activities. The problem is exacerbated by the intrinsic variability of neural patterns.Methodology/Principal FindingsOur technique introduces two important novelties and enables to insulate essential patterns on larger sets of spiking neurons and brain activity regimes. First, the sampling procedure over N units is based on a fixed spike number k in order to detect N-dimensional arrays (k-sequences), whose sum over all dimension is k. Then k-sequences variability is greatly reduced by a hierarchical separative clustering, that assigns large amounts of distinct k-sequences to few classes. Iterative separations are stopped when the dimension of each cluster comes to be smaller than a certain threshold. As threshold tuning critically impacts on the number of classes extracted, we developed an effective cost criterion to select the shortest possible description of our dataset. Finally we described three indexes (C,S,R) to evaluate the average pattern complexity, the structure of essential classes and their stability in time.Conclusions/SignificanceWe validated this algorithm with four kinds of surrogated activity, ranging from random to very regular patterned. Then we characterized a selection of ongoing activity recordings. By the S index we identified unstable, moderatly and strongly stable patterns while by the C and the R indices we evidenced their non-random structure. Our algorithm seems able to extract interesting and non-trivial spatial dynamics from multisource neuronal recordings of ongoing and potentially stimulated activity. Combined with time-frequency analysis of LFPs could provide a powerful multiscale approach linking population oscillations with multisite discharge patterns. -
dc.description.affiliations cnr -
dc.description.allpeople Biella Gabriele, E M; Liberati, Diego; Storchi, Riccardo; Baselli, Giuseppe -
dc.description.allpeopleoriginal Biella, Gabriele E M; Liberati, Diego; Storchi, Riccardo; Baselli, Giuseppe -
dc.description.fulltext none en
dc.description.numberofauthors 4 -
dc.identifier.isi WOS:DATA2013082003699623 -
dc.identifier.uri https://hdl.handle.net/20.500.14243/362399 -
dc.language.iso eng -
dc.subject.keywords Information and computing sciences -
dc.subject.keywords Medicine -
dc.subject.keywords Mathematics -
dc.subject.keywords Neuroscience -
dc.subject.keywords characterization -
dc.subject.keywords multisite -
dc.subject.keywords Extra -
dc.subject.keywords patterns -
dc.subject.keywords recordings -
dc.subject.keywords discharge -
dc.subject.keywords spiking -
dc.subject.singlekeyword Information and computing sciences *
dc.subject.singlekeyword Medicine *
dc.subject.singlekeyword Mathematics *
dc.subject.singlekeyword Neuroscience *
dc.subject.singlekeyword characterization *
dc.subject.singlekeyword multisite *
dc.subject.singlekeyword Extra *
dc.subject.singlekeyword patterns *
dc.subject.singlekeyword recordings *
dc.subject.singlekeyword discharge *
dc.subject.singlekeyword spiking *
dc.title Extraction and Characterization of Essential Discharge Patterns from Multisite Recordings of Spiking Ongoing Activity en
dc.type.driver info:eu-repo/semantics/article -
dc.type.full 01 Contributo su Rivista::01.01 Articolo in rivista it
dc.type.miur 262 -
dc.type.referee Sì, ma tipo non specificato -
dc.ugov.descaux1 404830 -
iris.isi.metadataErrorDescription 0 -
iris.isi.metadataErrorType ERROR_NO_MATCH -
iris.isi.metadataStatus ERROR -
iris.orcid.lastModifiedDate 2024/04/05 00:44:55 *
iris.orcid.lastModifiedMillisecond 1712270695132 *
iris.scopus.extIssued 2009 -
iris.scopus.extTitle Extraction and characterization of essential discharge patterns from multisite recordings of spiking ongoing activity -
iris.sitodocente.maxattempts 2 -
Appare nelle tipologie: 01.01 Articolo in rivista
File in questo prodotto:
Non ci sono file associati a questo prodotto.

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/362399
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus ND
  • ???jsp.display-item.citation.isi??? ND
social impact