Spiking network optimized for word recognition in noise predicts auditory system hierarchy.

The auditory neural code is resilient to acoustic variability and capable of recognizing sounds amongst competing sound sources, yet, the transformations enabling noise robust abilities are largely unknown. We report that a hierarchical spiking neural network (HSNN) optimized to maximize word recogn...

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Main Authors: Fatemeh Khatami, Monty A Escabí
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-06-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1007558
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spelling doaj-4c70a1f5f3df445286c58974906f1f932021-04-21T15:15:57ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582020-06-01166e100755810.1371/journal.pcbi.1007558Spiking network optimized for word recognition in noise predicts auditory system hierarchy.Fatemeh KhatamiMonty A EscabíThe auditory neural code is resilient to acoustic variability and capable of recognizing sounds amongst competing sound sources, yet, the transformations enabling noise robust abilities are largely unknown. We report that a hierarchical spiking neural network (HSNN) optimized to maximize word recognition accuracy in noise and multiple talkers predicts organizational hierarchy of the ascending auditory pathway. Comparisons with data from auditory nerve, midbrain, thalamus and cortex reveals that the optimal HSNN predicts several transformations of the ascending auditory pathway including a sequential loss of temporal resolution and synchronization ability, increasing sparseness, and selectivity. The optimal organizational scheme enhances performance by selectively filtering out noise and fast temporal cues such as voicing periodicity, that are not directly relevant to the word recognition task. An identical network arranged to enable high information transfer fails to predict auditory pathway organization and has substantially poorer performance. Furthermore, conventional single-layer linear and nonlinear receptive field networks that capture the overall feature extraction of the HSNN fail to achieve similar performance. The findings suggest that the auditory pathway hierarchy and its sequential nonlinear feature extraction computations enhance relevant cues while removing non-informative sources of noise, thus enhancing the representation of sounds in noise impoverished conditions.https://doi.org/10.1371/journal.pcbi.1007558
collection DOAJ
language English
format Article
sources DOAJ
author Fatemeh Khatami
Monty A Escabí
spellingShingle Fatemeh Khatami
Monty A Escabí
Spiking network optimized for word recognition in noise predicts auditory system hierarchy.
PLoS Computational Biology
author_facet Fatemeh Khatami
Monty A Escabí
author_sort Fatemeh Khatami
title Spiking network optimized for word recognition in noise predicts auditory system hierarchy.
title_short Spiking network optimized for word recognition in noise predicts auditory system hierarchy.
title_full Spiking network optimized for word recognition in noise predicts auditory system hierarchy.
title_fullStr Spiking network optimized for word recognition in noise predicts auditory system hierarchy.
title_full_unstemmed Spiking network optimized for word recognition in noise predicts auditory system hierarchy.
title_sort spiking network optimized for word recognition in noise predicts auditory system hierarchy.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2020-06-01
description The auditory neural code is resilient to acoustic variability and capable of recognizing sounds amongst competing sound sources, yet, the transformations enabling noise robust abilities are largely unknown. We report that a hierarchical spiking neural network (HSNN) optimized to maximize word recognition accuracy in noise and multiple talkers predicts organizational hierarchy of the ascending auditory pathway. Comparisons with data from auditory nerve, midbrain, thalamus and cortex reveals that the optimal HSNN predicts several transformations of the ascending auditory pathway including a sequential loss of temporal resolution and synchronization ability, increasing sparseness, and selectivity. The optimal organizational scheme enhances performance by selectively filtering out noise and fast temporal cues such as voicing periodicity, that are not directly relevant to the word recognition task. An identical network arranged to enable high information transfer fails to predict auditory pathway organization and has substantially poorer performance. Furthermore, conventional single-layer linear and nonlinear receptive field networks that capture the overall feature extraction of the HSNN fail to achieve similar performance. The findings suggest that the auditory pathway hierarchy and its sequential nonlinear feature extraction computations enhance relevant cues while removing non-informative sources of noise, thus enhancing the representation of sounds in noise impoverished conditions.
url https://doi.org/10.1371/journal.pcbi.1007558
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AT montyaescabi spikingnetworkoptimizedforwordrecognitioninnoisepredictsauditorysystemhierarchy
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