Information and discriminability as measures of reliability of sensory coding.

Response variability is a fundamental issue in neural coding because it limits all information processing. The reliability of neuronal coding is quantified by various approaches in different studies. In most cases it is largely unclear to what extent the conclusions depend on the applied reliability...

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Main Authors: Jan Grewe, Matti Weckström, Martin Egelhaaf, Anne-Kathrin Warzecha
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2007-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC2121128?pdf=render
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spelling doaj-5be7ad3b4a9e40aa941ce6820c78befc2020-11-25T02:09:24ZengPublic Library of Science (PLoS)PLoS ONE1932-62032007-01-01212e132810.1371/journal.pone.0001328Information and discriminability as measures of reliability of sensory coding.Jan GreweMatti WeckströmMartin EgelhaafAnne-Kathrin WarzechaResponse variability is a fundamental issue in neural coding because it limits all information processing. The reliability of neuronal coding is quantified by various approaches in different studies. In most cases it is largely unclear to what extent the conclusions depend on the applied reliability measure, making a comparison across studies almost impossible. We demonstrate that different reliability measures can lead to very different conclusions even if applied to the same set of data: in particular, we applied information theoretical measures (Shannon information capacity and Kullback-Leibler divergence) as well as a discrimination measure derived from signal-detection theory to the responses of blowfly photoreceptors which represent a well established model system for sensory information processing. We stimulated the photoreceptors with white noise modulated light intensity fluctuations of different contrasts. Surprisingly, the signal-detection approach leads to a safe discrimination of the photoreceptor response even when the response signal-to-noise ratio (SNR) is well below unity whereas Shannon information capacity and also Kullback-Leibler divergence indicate a very low performance. Applying different measures, can, therefore, lead to very different interpretations concerning the system's coding performance. As a consequence of the lower sensitivity compared to the signal-detection approach, the information theoretical measures overestimate internal noise sources and underestimate the importance of photon shot noise. We stress that none of the used measures and, most likely no other measure alone, allows for an unbiased estimation of a neuron's coding properties. Therefore the applied measure needs to be selected with respect to the scientific question and the analyzed neuron's functional context.http://europepmc.org/articles/PMC2121128?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Jan Grewe
Matti Weckström
Martin Egelhaaf
Anne-Kathrin Warzecha
spellingShingle Jan Grewe
Matti Weckström
Martin Egelhaaf
Anne-Kathrin Warzecha
Information and discriminability as measures of reliability of sensory coding.
PLoS ONE
author_facet Jan Grewe
Matti Weckström
Martin Egelhaaf
Anne-Kathrin Warzecha
author_sort Jan Grewe
title Information and discriminability as measures of reliability of sensory coding.
title_short Information and discriminability as measures of reliability of sensory coding.
title_full Information and discriminability as measures of reliability of sensory coding.
title_fullStr Information and discriminability as measures of reliability of sensory coding.
title_full_unstemmed Information and discriminability as measures of reliability of sensory coding.
title_sort information and discriminability as measures of reliability of sensory coding.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2007-01-01
description Response variability is a fundamental issue in neural coding because it limits all information processing. The reliability of neuronal coding is quantified by various approaches in different studies. In most cases it is largely unclear to what extent the conclusions depend on the applied reliability measure, making a comparison across studies almost impossible. We demonstrate that different reliability measures can lead to very different conclusions even if applied to the same set of data: in particular, we applied information theoretical measures (Shannon information capacity and Kullback-Leibler divergence) as well as a discrimination measure derived from signal-detection theory to the responses of blowfly photoreceptors which represent a well established model system for sensory information processing. We stimulated the photoreceptors with white noise modulated light intensity fluctuations of different contrasts. Surprisingly, the signal-detection approach leads to a safe discrimination of the photoreceptor response even when the response signal-to-noise ratio (SNR) is well below unity whereas Shannon information capacity and also Kullback-Leibler divergence indicate a very low performance. Applying different measures, can, therefore, lead to very different interpretations concerning the system's coding performance. As a consequence of the lower sensitivity compared to the signal-detection approach, the information theoretical measures overestimate internal noise sources and underestimate the importance of photon shot noise. We stress that none of the used measures and, most likely no other measure alone, allows for an unbiased estimation of a neuron's coding properties. Therefore the applied measure needs to be selected with respect to the scientific question and the analyzed neuron's functional context.
url http://europepmc.org/articles/PMC2121128?pdf=render
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