Algorithms for the Analysis of Ensemble Neural Spiking Activity Using Simultaneous-Event Multivariate Point-Process Models

Understanding how ensembles of neurons represent and transmit information in the patterns of their joint spiking activity is a fundamental question in computational neuroscience. At present, analyses of spiking activity from neuronal ensembles are limited because multivariate point process (MPP) mod...

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Main Authors: Demba eBa, Simona eTemereanca, Emery N Brown
Format: Article
Language:English
Published: Frontiers Media S.A. 2014-02-01
Series:Frontiers in Computational Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fncom.2014.00006/full
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spelling doaj-d54637c5fdd54070bd3636c49d5e8a822020-11-25T00:11:58ZengFrontiers Media S.A.Frontiers in Computational Neuroscience1662-51882014-02-01810.3389/fncom.2014.0000665683Algorithms for the Analysis of Ensemble Neural Spiking Activity Using Simultaneous-Event Multivariate Point-Process ModelsDemba eBa0Demba eBa1Simona eTemereanca2Emery N Brown3Emery N Brown4Massachusetts General HospitalMassachusetts Institute of TechnologyMassachusetts General HospitalMassachusetts General HospitalMassachusetts Institute of TechnologyUnderstanding how ensembles of neurons represent and transmit information in the patterns of their joint spiking activity is a fundamental question in computational neuroscience. At present, analyses of spiking activity from neuronal ensembles are limited because multivariate point process (MPP) models cannot represent simultaneous occurrences of spike events at an arbitrarily small time resolution. Solo recently reported a simultaneous-event multivariate point process (SEMPP) model to correct this key limitation. In this paper, we show how Solo's discrete-time formulation of the SEMPP model can be efficiently fit to ensemble neural spiking activity using a multinomial generalized linear model (mGLM). Unlike existing approximate procedures for fitting the discrete-time SEMPP model, the mGLM is an exact algorithm. The MPP time-rescaling theorem can be used to assess model goodness-of-fit. We also derive a new marked point-process (MkPP) representation of the SEMPP model that leads to new thinning and time-rescaling algorithms for simulating an SEMPP stochastic process. These algorithms are much simpler than multivariate extensions of algorithms for simulating a univariate point process, and could not be arrived at without the MkPP representation. We illustrate the versatility of the SEMPP model by analyzing neural spiking activity from pairs of simultaneously-recorded rat thalamic neurons stimulated by periodic whisker deflections, and by simulating SEMPP data. In the data analysis example, the SEMPP model demonstrates that whisker motion significantly modulates simultaneous spiking activity at the one millisecond time scale and that the stimulus effect is more than one order of magnitude greater for simultaneous activity compared with non-simultaneous activity. Together, the mGLM, the MPP time-rescaling theorem and the MkPP representation of the SEMPP model offer a theoretically sound, practical tool for measuring joint spiking propensity in a neuronal ensemble.http://journal.frontiersin.org/Journal/10.3389/fncom.2014.00006/fullmultivariate point process (MPP) modelssimultaneous-event multivariate point process (SEMPP) modelSolo's discrete-time formulation of the SEMPP modelthalamic synchronymarked point-process (MkPP) representation
collection DOAJ
language English
format Article
sources DOAJ
author Demba eBa
Demba eBa
Simona eTemereanca
Emery N Brown
Emery N Brown
spellingShingle Demba eBa
Demba eBa
Simona eTemereanca
Emery N Brown
Emery N Brown
Algorithms for the Analysis of Ensemble Neural Spiking Activity Using Simultaneous-Event Multivariate Point-Process Models
Frontiers in Computational Neuroscience
multivariate point process (MPP) models
simultaneous-event multivariate point process (SEMPP) model
Solo's discrete-time formulation of the SEMPP model
thalamic synchrony
marked point-process (MkPP) representation
author_facet Demba eBa
Demba eBa
Simona eTemereanca
Emery N Brown
Emery N Brown
author_sort Demba eBa
title Algorithms for the Analysis of Ensemble Neural Spiking Activity Using Simultaneous-Event Multivariate Point-Process Models
title_short Algorithms for the Analysis of Ensemble Neural Spiking Activity Using Simultaneous-Event Multivariate Point-Process Models
title_full Algorithms for the Analysis of Ensemble Neural Spiking Activity Using Simultaneous-Event Multivariate Point-Process Models
title_fullStr Algorithms for the Analysis of Ensemble Neural Spiking Activity Using Simultaneous-Event Multivariate Point-Process Models
title_full_unstemmed Algorithms for the Analysis of Ensemble Neural Spiking Activity Using Simultaneous-Event Multivariate Point-Process Models
title_sort algorithms for the analysis of ensemble neural spiking activity using simultaneous-event multivariate point-process models
publisher Frontiers Media S.A.
series Frontiers in Computational Neuroscience
issn 1662-5188
publishDate 2014-02-01
description Understanding how ensembles of neurons represent and transmit information in the patterns of their joint spiking activity is a fundamental question in computational neuroscience. At present, analyses of spiking activity from neuronal ensembles are limited because multivariate point process (MPP) models cannot represent simultaneous occurrences of spike events at an arbitrarily small time resolution. Solo recently reported a simultaneous-event multivariate point process (SEMPP) model to correct this key limitation. In this paper, we show how Solo's discrete-time formulation of the SEMPP model can be efficiently fit to ensemble neural spiking activity using a multinomial generalized linear model (mGLM). Unlike existing approximate procedures for fitting the discrete-time SEMPP model, the mGLM is an exact algorithm. The MPP time-rescaling theorem can be used to assess model goodness-of-fit. We also derive a new marked point-process (MkPP) representation of the SEMPP model that leads to new thinning and time-rescaling algorithms for simulating an SEMPP stochastic process. These algorithms are much simpler than multivariate extensions of algorithms for simulating a univariate point process, and could not be arrived at without the MkPP representation. We illustrate the versatility of the SEMPP model by analyzing neural spiking activity from pairs of simultaneously-recorded rat thalamic neurons stimulated by periodic whisker deflections, and by simulating SEMPP data. In the data analysis example, the SEMPP model demonstrates that whisker motion significantly modulates simultaneous spiking activity at the one millisecond time scale and that the stimulus effect is more than one order of magnitude greater for simultaneous activity compared with non-simultaneous activity. Together, the mGLM, the MPP time-rescaling theorem and the MkPP representation of the SEMPP model offer a theoretically sound, practical tool for measuring joint spiking propensity in a neuronal ensemble.
topic multivariate point process (MPP) models
simultaneous-event multivariate point process (SEMPP) model
Solo's discrete-time formulation of the SEMPP model
thalamic synchrony
marked point-process (MkPP) representation
url http://journal.frontiersin.org/Journal/10.3389/fncom.2014.00006/full
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