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Psychophysiological Arousal in Young Children Who Stutter: An Interpretable AI Approach

The presented first-of-its-kind study effectively identifies and visualizes the second-by-second pattern differences in the physiological arousal of preschool-age children who do stutter (CWS) and who do not stutter (CWNS) while speaking perceptually fluently in two challenging conditions: speaking...

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Autores principales: SHARMA, HARSHIT, XIAO, YI, TUMANOVA, VICTORIA, SALEKIN, ASIF
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10138305/
https://www.ncbi.nlm.nih.gov/pubmed/37122815
http://dx.doi.org/10.1145/3550326
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author SHARMA, HARSHIT
XIAO, YI
TUMANOVA, VICTORIA
SALEKIN, ASIF
author_facet SHARMA, HARSHIT
XIAO, YI
TUMANOVA, VICTORIA
SALEKIN, ASIF
author_sort SHARMA, HARSHIT
collection PubMed
description The presented first-of-its-kind study effectively identifies and visualizes the second-by-second pattern differences in the physiological arousal of preschool-age children who do stutter (CWS) and who do not stutter (CWNS) while speaking perceptually fluently in two challenging conditions: speaking in stressful situations and narration. The first condition may affect children’s speech due to high arousal; the latter introduces linguistic, cognitive, and communicative demands on speakers. We collected physiological parameters data from 70 children in the two target conditions. First, we adopt a novel modality-wise multiple-instance-learning (MI-MIL) approach to classify CWS vs. CWNS in different conditions effectively. The evaluation of this classifier addresses four critical research questions that align with state-of-the-art speech science studies’ interests. Later, we leverage SHAP classifier interpretations to visualize the salient, fine-grain, and temporal physiological parameters unique to CWS at the population/group-level and personalized-level. While group-level identification of distinct patterns would enhance our understanding of stuttering etiology and development, the personalized-level identification would enable remote, continuous, and real-time assessment of stuttering children’s physiological arousal, which may lead to personalized, just-in-time interventions, resulting in an improvement in speech fluency. The presented MI-MIL approach is novel, generalizable to different domains, and real-time executable. Finally, comprehensive evaluations are done on multiple datasets, presented framework, and several baselines that identified notable insights on CWSs’ physiological arousal during speech production.
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spelling pubmed-101383052023-04-27 Psychophysiological Arousal in Young Children Who Stutter: An Interpretable AI Approach SHARMA, HARSHIT XIAO, YI TUMANOVA, VICTORIA SALEKIN, ASIF Proc ACM Interact Mob Wearable Ubiquitous Technol Article The presented first-of-its-kind study effectively identifies and visualizes the second-by-second pattern differences in the physiological arousal of preschool-age children who do stutter (CWS) and who do not stutter (CWNS) while speaking perceptually fluently in two challenging conditions: speaking in stressful situations and narration. The first condition may affect children’s speech due to high arousal; the latter introduces linguistic, cognitive, and communicative demands on speakers. We collected physiological parameters data from 70 children in the two target conditions. First, we adopt a novel modality-wise multiple-instance-learning (MI-MIL) approach to classify CWS vs. CWNS in different conditions effectively. The evaluation of this classifier addresses four critical research questions that align with state-of-the-art speech science studies’ interests. Later, we leverage SHAP classifier interpretations to visualize the salient, fine-grain, and temporal physiological parameters unique to CWS at the population/group-level and personalized-level. While group-level identification of distinct patterns would enhance our understanding of stuttering etiology and development, the personalized-level identification would enable remote, continuous, and real-time assessment of stuttering children’s physiological arousal, which may lead to personalized, just-in-time interventions, resulting in an improvement in speech fluency. The presented MI-MIL approach is novel, generalizable to different domains, and real-time executable. Finally, comprehensive evaluations are done on multiple datasets, presented framework, and several baselines that identified notable insights on CWSs’ physiological arousal during speech production. 2022-09 2022-09-07 /pmc/articles/PMC10138305/ /pubmed/37122815 http://dx.doi.org/10.1145/3550326 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial International 4.0 License.
spellingShingle Article
SHARMA, HARSHIT
XIAO, YI
TUMANOVA, VICTORIA
SALEKIN, ASIF
Psychophysiological Arousal in Young Children Who Stutter: An Interpretable AI Approach
title Psychophysiological Arousal in Young Children Who Stutter: An Interpretable AI Approach
title_full Psychophysiological Arousal in Young Children Who Stutter: An Interpretable AI Approach
title_fullStr Psychophysiological Arousal in Young Children Who Stutter: An Interpretable AI Approach
title_full_unstemmed Psychophysiological Arousal in Young Children Who Stutter: An Interpretable AI Approach
title_short Psychophysiological Arousal in Young Children Who Stutter: An Interpretable AI Approach
title_sort psychophysiological arousal in young children who stutter: an interpretable ai approach
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10138305/
https://www.ncbi.nlm.nih.gov/pubmed/37122815
http://dx.doi.org/10.1145/3550326
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