Understanding auditory spectro-temporal receptive fields and their changes with input statistics by efficient coding principles.

Spectro-temporal receptive fields (STRFs) have been widely used as linear approximations to the signal transform from sound spectrograms to neural responses along the auditory pathway. Their dependence on statistical attributes of the stimuli, such as sound intensity, is usually explained by nonline...

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Main Authors: Lingyun Zhao, Li Zhaoping
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-08-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC3158037?pdf=render
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spelling doaj-9432ed4da66e48b79174c990e16afa992020-11-25T02:05:18ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582011-08-0178e100212310.1371/journal.pcbi.1002123Understanding auditory spectro-temporal receptive fields and their changes with input statistics by efficient coding principles.Lingyun ZhaoLi ZhaopingSpectro-temporal receptive fields (STRFs) have been widely used as linear approximations to the signal transform from sound spectrograms to neural responses along the auditory pathway. Their dependence on statistical attributes of the stimuli, such as sound intensity, is usually explained by nonlinear mechanisms and models. Here, we apply an efficient coding principle which has been successfully used to understand receptive fields in early stages of visual processing, in order to provide a computational understanding of the STRFs. According to this principle, STRFs result from an optimal tradeoff between maximizing the sensory information the brain receives, and minimizing the cost of the neural activities required to represent and transmit this information. Both terms depend on the statistical properties of the sensory inputs and the noise that corrupts them. The STRFs should therefore depend on the input power spectrum and the signal-to-noise ratio, which is assumed to increase with input intensity. We analytically derive the optimal STRFs when signal and noise are approximated as Gaussians. Under the constraint that they should be spectro-temporally local, the STRFs are predicted to adapt from being band-pass to low-pass filters as the input intensity reduces, or the input correlation becomes longer range in sound frequency or time. These predictions qualitatively match physiological observations. Our prediction as to how the STRFs should be determined by the input power spectrum could readily be tested, since this spectrum depends on the stimulus ensemble. The potentials and limitations of the efficient coding principle are discussed.http://europepmc.org/articles/PMC3158037?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Lingyun Zhao
Li Zhaoping
spellingShingle Lingyun Zhao
Li Zhaoping
Understanding auditory spectro-temporal receptive fields and their changes with input statistics by efficient coding principles.
PLoS Computational Biology
author_facet Lingyun Zhao
Li Zhaoping
author_sort Lingyun Zhao
title Understanding auditory spectro-temporal receptive fields and their changes with input statistics by efficient coding principles.
title_short Understanding auditory spectro-temporal receptive fields and their changes with input statistics by efficient coding principles.
title_full Understanding auditory spectro-temporal receptive fields and their changes with input statistics by efficient coding principles.
title_fullStr Understanding auditory spectro-temporal receptive fields and their changes with input statistics by efficient coding principles.
title_full_unstemmed Understanding auditory spectro-temporal receptive fields and their changes with input statistics by efficient coding principles.
title_sort understanding auditory spectro-temporal receptive fields and their changes with input statistics by efficient coding principles.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2011-08-01
description Spectro-temporal receptive fields (STRFs) have been widely used as linear approximations to the signal transform from sound spectrograms to neural responses along the auditory pathway. Their dependence on statistical attributes of the stimuli, such as sound intensity, is usually explained by nonlinear mechanisms and models. Here, we apply an efficient coding principle which has been successfully used to understand receptive fields in early stages of visual processing, in order to provide a computational understanding of the STRFs. According to this principle, STRFs result from an optimal tradeoff between maximizing the sensory information the brain receives, and minimizing the cost of the neural activities required to represent and transmit this information. Both terms depend on the statistical properties of the sensory inputs and the noise that corrupts them. The STRFs should therefore depend on the input power spectrum and the signal-to-noise ratio, which is assumed to increase with input intensity. We analytically derive the optimal STRFs when signal and noise are approximated as Gaussians. Under the constraint that they should be spectro-temporally local, the STRFs are predicted to adapt from being band-pass to low-pass filters as the input intensity reduces, or the input correlation becomes longer range in sound frequency or time. These predictions qualitatively match physiological observations. Our prediction as to how the STRFs should be determined by the input power spectrum could readily be tested, since this spectrum depends on the stimulus ensemble. The potentials and limitations of the efficient coding principle are discussed.
url http://europepmc.org/articles/PMC3158037?pdf=render
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AT lizhaoping understandingauditoryspectrotemporalreceptivefieldsandtheirchangeswithinputstatisticsbyefficientcodingprinciples
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