Joint Probability-Based Neuronal Spike Train Classification

Neuronal spike trains are used by the nervous system to encode and transmit information. Euclidean distance-based methods (EDBMs) have been applied to quantify the similarity between temporally-discretized spike trains and model responses. In this study, using the same discretization procedure, we d...

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Main Authors: Yan Chen, Vitaliy Marchenko, Robert F. Rogers
Format: Article
Language:English
Published: Hindawi Limited 2009-01-01
Series:Computational and Mathematical Methods in Medicine
Online Access:http://dx.doi.org/10.1080/17486700802448615
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spelling doaj-42f4db4a79774cdb872f3f46560656bb2020-11-25T00:09:18ZengHindawi LimitedComputational and Mathematical Methods in Medicine1748-670X1748-67182009-01-0110322923910.1080/17486700802448615Joint Probability-Based Neuronal Spike Train ClassificationYan Chen0Vitaliy Marchenko1Robert F. Rogers2Department of Electrical and Computer Engineering, University of Delaware, Newark, DE, USADepartment of Electrical and Computer Engineering, University of Delaware, Newark, DE, USADepartment of Electrical and Computer Engineering, University of Delaware, Newark, DE, USANeuronal spike trains are used by the nervous system to encode and transmit information. Euclidean distance-based methods (EDBMs) have been applied to quantify the similarity between temporally-discretized spike trains and model responses. In this study, using the same discretization procedure, we developed and applied a joint probability-based method (JPBM) to classify individual spike trains of slowly adapting pulmonary stretch receptors (SARs). The activity of individual SARs was recorded in anaesthetized, paralysed adult male rabbits, which were artificially-ventilated at constant rate and one of three different volumes. Two-thirds of the responses to the 600 stimuli presented at each volume were used to construct three response models (one for each stimulus volume) consisting of a series of time bins, each with spike probabilities. The remaining one-third of the responses where used as test responses to be classified into one of the three model responses. This was done by computing the joint probability of observing the same series of events (spikes or no spikes, dictated by the test response) in a given model and determining which probability of the three was highest. The JPBM generally produced better classification accuracy than the EDBM, and both performed well above chance. Both methods were similarly affected by variations in discretization parameters, response epoch duration, and two different response alignment strategies. Increasing bin widths increased classification accuracy, which also improved with increased observation time, but primarily during periods of increasing lung inflation. Thus, the JPBM is a simple and effective method performing spike train classification.http://dx.doi.org/10.1080/17486700802448615
collection DOAJ
language English
format Article
sources DOAJ
author Yan Chen
Vitaliy Marchenko
Robert F. Rogers
spellingShingle Yan Chen
Vitaliy Marchenko
Robert F. Rogers
Joint Probability-Based Neuronal Spike Train Classification
Computational and Mathematical Methods in Medicine
author_facet Yan Chen
Vitaliy Marchenko
Robert F. Rogers
author_sort Yan Chen
title Joint Probability-Based Neuronal Spike Train Classification
title_short Joint Probability-Based Neuronal Spike Train Classification
title_full Joint Probability-Based Neuronal Spike Train Classification
title_fullStr Joint Probability-Based Neuronal Spike Train Classification
title_full_unstemmed Joint Probability-Based Neuronal Spike Train Classification
title_sort joint probability-based neuronal spike train classification
publisher Hindawi Limited
series Computational and Mathematical Methods in Medicine
issn 1748-670X
1748-6718
publishDate 2009-01-01
description Neuronal spike trains are used by the nervous system to encode and transmit information. Euclidean distance-based methods (EDBMs) have been applied to quantify the similarity between temporally-discretized spike trains and model responses. In this study, using the same discretization procedure, we developed and applied a joint probability-based method (JPBM) to classify individual spike trains of slowly adapting pulmonary stretch receptors (SARs). The activity of individual SARs was recorded in anaesthetized, paralysed adult male rabbits, which were artificially-ventilated at constant rate and one of three different volumes. Two-thirds of the responses to the 600 stimuli presented at each volume were used to construct three response models (one for each stimulus volume) consisting of a series of time bins, each with spike probabilities. The remaining one-third of the responses where used as test responses to be classified into one of the three model responses. This was done by computing the joint probability of observing the same series of events (spikes or no spikes, dictated by the test response) in a given model and determining which probability of the three was highest. The JPBM generally produced better classification accuracy than the EDBM, and both performed well above chance. Both methods were similarly affected by variations in discretization parameters, response epoch duration, and two different response alignment strategies. Increasing bin widths increased classification accuracy, which also improved with increased observation time, but primarily during periods of increasing lung inflation. Thus, the JPBM is a simple and effective method performing spike train classification.
url http://dx.doi.org/10.1080/17486700802448615
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AT vitaliymarchenko jointprobabilitybasedneuronalspiketrainclassification
AT robertfrogers jointprobabilitybasedneuronalspiketrainclassification
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