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Unraveling Spatial-Spectral Dynamics of Speech Categorization Speed Using Convolutional Neural Networks

The process of categorizing sounds into distinct phonetic categories is known as categorical perception (CP). Response times (RTs) provide a measure of perceptual difficulty during labeling decisions (i.e., categorization). The RT is quasi-stochastic in nature due to individuality and variations in...

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Autores principales: Moinuddin, Kazi Ashraf, Havugimana, Felix, Al-Fahad, Rakib, Bidelman, Gavin M., Yeasin, Mohammed
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9856675/
https://www.ncbi.nlm.nih.gov/pubmed/36672055
http://dx.doi.org/10.3390/brainsci13010075
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author Moinuddin, Kazi Ashraf
Havugimana, Felix
Al-Fahad, Rakib
Bidelman, Gavin M.
Yeasin, Mohammed
author_facet Moinuddin, Kazi Ashraf
Havugimana, Felix
Al-Fahad, Rakib
Bidelman, Gavin M.
Yeasin, Mohammed
author_sort Moinuddin, Kazi Ashraf
collection PubMed
description The process of categorizing sounds into distinct phonetic categories is known as categorical perception (CP). Response times (RTs) provide a measure of perceptual difficulty during labeling decisions (i.e., categorization). The RT is quasi-stochastic in nature due to individuality and variations in perceptual tasks. To identify the source of RT variation in CP, we have built models to decode the brain regions and frequency bands driving fast, medium and slow response decision speeds. In particular, we implemented a parameter optimized convolutional neural network (CNN) to classify listeners’ behavioral RTs from their neural EEG data. We adopted visual interpretation of model response using Guided-GradCAM to identify spatial-spectral correlates of RT. Our framework includes (but is not limited to): (i) a data augmentation technique designed to reduce noise and control the overall variance of EEG dataset; (ii) bandpower topomaps to learn the spatial-spectral representation using CNN; (iii) large-scale Bayesian hyper-parameter optimization to find best performing CNN model; (iv) ANOVA and posthoc analysis on Guided-GradCAM activation values to measure the effect of neural regions and frequency bands on behavioral responses. Using this framework, we observe that [Formula: see text] (10–20 Hz) activity over left frontal, right prefrontal/frontal, and right cerebellar regions are correlated with RT variation. Our results indicate that attention, template matching, temporal prediction of acoustics, motor control, and decision uncertainty are the most probable factors in RT variation.
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spelling pubmed-98566752023-01-21 Unraveling Spatial-Spectral Dynamics of Speech Categorization Speed Using Convolutional Neural Networks Moinuddin, Kazi Ashraf Havugimana, Felix Al-Fahad, Rakib Bidelman, Gavin M. Yeasin, Mohammed Brain Sci Article The process of categorizing sounds into distinct phonetic categories is known as categorical perception (CP). Response times (RTs) provide a measure of perceptual difficulty during labeling decisions (i.e., categorization). The RT is quasi-stochastic in nature due to individuality and variations in perceptual tasks. To identify the source of RT variation in CP, we have built models to decode the brain regions and frequency bands driving fast, medium and slow response decision speeds. In particular, we implemented a parameter optimized convolutional neural network (CNN) to classify listeners’ behavioral RTs from their neural EEG data. We adopted visual interpretation of model response using Guided-GradCAM to identify spatial-spectral correlates of RT. Our framework includes (but is not limited to): (i) a data augmentation technique designed to reduce noise and control the overall variance of EEG dataset; (ii) bandpower topomaps to learn the spatial-spectral representation using CNN; (iii) large-scale Bayesian hyper-parameter optimization to find best performing CNN model; (iv) ANOVA and posthoc analysis on Guided-GradCAM activation values to measure the effect of neural regions and frequency bands on behavioral responses. Using this framework, we observe that [Formula: see text] (10–20 Hz) activity over left frontal, right prefrontal/frontal, and right cerebellar regions are correlated with RT variation. Our results indicate that attention, template matching, temporal prediction of acoustics, motor control, and decision uncertainty are the most probable factors in RT variation. MDPI 2022-12-30 /pmc/articles/PMC9856675/ /pubmed/36672055 http://dx.doi.org/10.3390/brainsci13010075 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Moinuddin, Kazi Ashraf
Havugimana, Felix
Al-Fahad, Rakib
Bidelman, Gavin M.
Yeasin, Mohammed
Unraveling Spatial-Spectral Dynamics of Speech Categorization Speed Using Convolutional Neural Networks
title Unraveling Spatial-Spectral Dynamics of Speech Categorization Speed Using Convolutional Neural Networks
title_full Unraveling Spatial-Spectral Dynamics of Speech Categorization Speed Using Convolutional Neural Networks
title_fullStr Unraveling Spatial-Spectral Dynamics of Speech Categorization Speed Using Convolutional Neural Networks
title_full_unstemmed Unraveling Spatial-Spectral Dynamics of Speech Categorization Speed Using Convolutional Neural Networks
title_short Unraveling Spatial-Spectral Dynamics of Speech Categorization Speed Using Convolutional Neural Networks
title_sort unraveling spatial-spectral dynamics of speech categorization speed using convolutional neural networks
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9856675/
https://www.ncbi.nlm.nih.gov/pubmed/36672055
http://dx.doi.org/10.3390/brainsci13010075
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