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A Likelihood Method for Computing Selection Times in Spiking and Local Field Potential Activity

The timing of neural responses to ongoing behavior is an important measure of the underlying neural processes. Neural processes are distributed across many different brain regions and measures of the timing of neural responses are routinely used to test relationships between different brain regions....

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Autores principales: Banerjee, Arpan, Dean, Heather L., Pesaran, Bijan
Formato: Texto
Lenguaje:English
Publicado: American Physiological Society 2010
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3007660/
https://www.ncbi.nlm.nih.gov/pubmed/20884767
http://dx.doi.org/10.1152/jn.00036.2010
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author Banerjee, Arpan
Dean, Heather L.
Pesaran, Bijan
author_facet Banerjee, Arpan
Dean, Heather L.
Pesaran, Bijan
author_sort Banerjee, Arpan
collection PubMed
description The timing of neural responses to ongoing behavior is an important measure of the underlying neural processes. Neural processes are distributed across many different brain regions and measures of the timing of neural responses are routinely used to test relationships between different brain regions. Testing detailed models of functional neural circuitry underlying behavior depends on extracting information from single trials. Despite their importance, existing methods for analyzing the timing of information in neural signals on single trials remain limited in their scope and application. We develop a novel method for estimating the timing of information in neural activity that we use to measure selection times, when an observer can reliably use observations of neural activity to select between two descriptions of the activity. The method is designed to satisfy three criteria: selection times should be computed from single trials, they should be computed from both spiking and local field potential (LFP) activity, and they should allow us to make comparisons between different recordings. Our approach characterizes the timing of information in terms of an accumulated log-likelihood ratio (AccLLR), which distinguishes between two alternative hypotheses and uses the AccLLR to estimate the selection time. We develop the AccLLR procedure for binary discrimination using example recordings of spiking and LFP activity in the posterior parietal cortex of a monkey performing a memory-guided saccade task. We propose that the AccLLR method is a general and practical framework for the analysis of signal timing in the nervous system.
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spelling pubmed-30076602011-12-01 A Likelihood Method for Computing Selection Times in Spiking and Local Field Potential Activity Banerjee, Arpan Dean, Heather L. Pesaran, Bijan J Neurophysiol Innovative Methodology The timing of neural responses to ongoing behavior is an important measure of the underlying neural processes. Neural processes are distributed across many different brain regions and measures of the timing of neural responses are routinely used to test relationships between different brain regions. Testing detailed models of functional neural circuitry underlying behavior depends on extracting information from single trials. Despite their importance, existing methods for analyzing the timing of information in neural signals on single trials remain limited in their scope and application. We develop a novel method for estimating the timing of information in neural activity that we use to measure selection times, when an observer can reliably use observations of neural activity to select between two descriptions of the activity. The method is designed to satisfy three criteria: selection times should be computed from single trials, they should be computed from both spiking and local field potential (LFP) activity, and they should allow us to make comparisons between different recordings. Our approach characterizes the timing of information in terms of an accumulated log-likelihood ratio (AccLLR), which distinguishes between two alternative hypotheses and uses the AccLLR to estimate the selection time. We develop the AccLLR procedure for binary discrimination using example recordings of spiking and LFP activity in the posterior parietal cortex of a monkey performing a memory-guided saccade task. We propose that the AccLLR method is a general and practical framework for the analysis of signal timing in the nervous system. American Physiological Society 2010-12 2010-09-08 /pmc/articles/PMC3007660/ /pubmed/20884767 http://dx.doi.org/10.1152/jn.00036.2010 Text en Copyright © 2010 the American Physiological Society This document may be redistributed and reused, subject to www.the-aps.org/publications/journals/funding_addendum_policy.htm (http://www.the-aps.org/publications/journals/funding_addendum_policy.htm) .
spellingShingle Innovative Methodology
Banerjee, Arpan
Dean, Heather L.
Pesaran, Bijan
A Likelihood Method for Computing Selection Times in Spiking and Local Field Potential Activity
title A Likelihood Method for Computing Selection Times in Spiking and Local Field Potential Activity
title_full A Likelihood Method for Computing Selection Times in Spiking and Local Field Potential Activity
title_fullStr A Likelihood Method for Computing Selection Times in Spiking and Local Field Potential Activity
title_full_unstemmed A Likelihood Method for Computing Selection Times in Spiking and Local Field Potential Activity
title_short A Likelihood Method for Computing Selection Times in Spiking and Local Field Potential Activity
title_sort likelihood method for computing selection times in spiking and local field potential activity
topic Innovative Methodology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3007660/
https://www.ncbi.nlm.nih.gov/pubmed/20884767
http://dx.doi.org/10.1152/jn.00036.2010
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