Estimation of Subglottal Pressure, Vocal Fold Collision Pressure, and Intrinsic Laryngeal Muscle Activation From Neck-Surface Vibration Using a Neural Network Framework and a Voice Production Model
The ambulatory assessment of vocal function can be significantly enhanced by having access to physiologically based features that describe underlying pathophysiological mechanisms in individuals with voice disorders. This type of enhancement can improve methods for the prevention, diagnosis, and tre...
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Published in | Frontiers in physiology Vol. 12; p. 732244 |
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Main Authors | , , , , , , , |
Format | Journal Article |
Language | English |
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Switzerland
Frontiers Media S.A
01.09.2021
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Online Access | Get full text |
ISSN | 1664-042X 1664-042X |
DOI | 10.3389/fphys.2021.732244 |
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Abstract | The ambulatory assessment of vocal function can be significantly enhanced by having access to physiologically based features that describe underlying pathophysiological mechanisms in individuals with voice disorders. This type of enhancement can improve methods for the prevention, diagnosis, and treatment of behaviorally based voice disorders. Unfortunately, the direct measurement of important vocal features such as subglottal pressure, vocal fold collision pressure, and laryngeal muscle activation is impractical in laboratory and ambulatory settings. In this study, we introduce a method to estimate these features during phonation from a neck-surface vibration signal through a framework that integrates a physiologically relevant model of voice production and machine learning tools. The signal from a neck-surface accelerometer is first processed using subglottal impedance-based inverse filtering to yield an estimate of the unsteady glottal airflow. Seven aerodynamic and acoustic features are extracted from the neck surface accelerometer and an optional microphone signal. A neural network architecture is selected to provide a mapping between the seven input features and subglottal pressure, vocal fold collision pressure, and cricothyroid and thyroarytenoid muscle activation. This non-linear mapping is trained solely with 13,000 Monte Carlo simulations of a voice production model that utilizes a symmetric triangular body-cover model of the vocal folds. The performance of the method was compared against laboratory data from synchronous recordings of oral airflow, intraoral pressure, microphone, and neck-surface vibration in 79 vocally healthy female participants uttering consecutive /pæ/ syllable strings at comfortable, loud, and soft levels. The mean absolute error and root-mean-square error for estimating the mean subglottal pressure were 191 Pa (1.95 cm H
2
O) and 243 Pa (2.48 cm H
2
O), respectively, which are comparable with previous studies but with the key advantage of not requiring subject-specific training and yielding more output measures. The validation of vocal fold collision pressure and laryngeal muscle activation was performed with synthetic values as reference. These initial results provide valuable insight for further vocal fold model refinement and constitute a proof of concept that the proposed machine learning method is a feasible option for providing physiologically relevant measures for laboratory and ambulatory assessment of vocal function. |
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AbstractList | The ambulatory assessment of vocal function can be significantly enhanced by having access to physiologically based features that describe underlying pathophysiological mechanisms in individuals with voice disorders. This type of enhancement can improve methods for the prevention, diagnosis, and treatment of behaviorally based voice disorders. Unfortunately, the direct measurement of important vocal features such as subglottal pressure, vocal fold collision pressure, and laryngeal muscle activation is impractical in laboratory and ambulatory settings. In this study, we introduce a method to estimate these features during phonation from a neck-surface vibration signal through a framework that integrates a physiologically relevant model of voice production and machine learning tools. The signal from a neck-surface accelerometer is first processed using subglottal impedance-based inverse filtering to yield an estimate of the unsteady glottal airflow. Seven aerodynamic and acoustic features are extracted from the neck surface accelerometer and an optional microphone signal. A neural network architecture is selected to provide a mapping between the seven input features and subglottal pressure, vocal fold collision pressure, and cricothyroid and thyroarytenoid muscle activation. This non-linear mapping is trained solely with 13,000 Monte Carlo simulations of a voice production model that utilizes a symmetric triangular body-cover model of the vocal folds. The performance of the method was compared against laboratory data from synchronous recordings of oral airflow, intraoral pressure, microphone, and neck-surface vibration in 79 vocally healthy female participants uttering consecutive /pæ/ syllable strings at comfortable, loud, and soft levels. The mean absolute error and root-mean-square error for estimating the mean subglottal pressure were 191 Pa (1.95 cm H
2
O) and 243 Pa (2.48 cm H
2
O), respectively, which are comparable with previous studies but with the key advantage of not requiring subject-specific training and yielding more output measures. The validation of vocal fold collision pressure and laryngeal muscle activation was performed with synthetic values as reference. These initial results provide valuable insight for further vocal fold model refinement and constitute a proof of concept that the proposed machine learning method is a feasible option for providing physiologically relevant measures for laboratory and ambulatory assessment of vocal function. The ambulatory assessment of vocal function can be significantly enhanced by having access to physiologically based features that describe underlying pathophysiological mechanisms in individuals with voice disorders. This type of enhancement can improve methods for the prevention, diagnosis, and treatment of behaviorally based voice disorders. Unfortunately, the direct measurement of important vocal features such as subglottal pressure, vocal fold collision pressure, and laryngeal muscle activation is impractical in laboratory and ambulatory settings. In this study, we introduce a method to estimate these features during phonation from a neck-surface vibration signal through a framework that integrates a physiologically relevant model of voice production and machine learning tools. The signal from a neck-surface accelerometer is first processed using subglottal impedance-based inverse filtering to yield an estimate of the unsteady glottal airflow. Seven aerodynamic and acoustic features are extracted from the neck surface accelerometer and an optional microphone signal. A neural network architecture is selected to provide a mapping between the seven input features and subglottal pressure, vocal fold collision pressure, and cricothyroid and thyroarytenoid muscle activation. This non-linear mapping is trained solely with 13,000 Monte Carlo simulations of a voice production model that utilizes a symmetric triangular body-cover model of the vocal folds. The performance of the method was compared against laboratory data from synchronous recordings of oral airflow, intraoral pressure, microphone, and neck-surface vibration in 79 vocally healthy female participants uttering consecutive /pæ/ syllable strings at comfortable, loud, and soft levels. The mean absolute error and root-mean-square error for estimating the mean subglottal pressure were 191 Pa (1.95 cm H2O) and 243 Pa (2.48 cm H2O), respectively, which are comparable with previous studies but with the key advantage of not requiring subject-specific training and yielding more output measures. The validation of vocal fold collision pressure and laryngeal muscle activation was performed with synthetic values as reference. These initial results provide valuable insight for further vocal fold model refinement and constitute a proof of concept that the proposed machine learning method is a feasible option for providing physiologically relevant measures for laboratory and ambulatory assessment of vocal function.The ambulatory assessment of vocal function can be significantly enhanced by having access to physiologically based features that describe underlying pathophysiological mechanisms in individuals with voice disorders. This type of enhancement can improve methods for the prevention, diagnosis, and treatment of behaviorally based voice disorders. Unfortunately, the direct measurement of important vocal features such as subglottal pressure, vocal fold collision pressure, and laryngeal muscle activation is impractical in laboratory and ambulatory settings. In this study, we introduce a method to estimate these features during phonation from a neck-surface vibration signal through a framework that integrates a physiologically relevant model of voice production and machine learning tools. The signal from a neck-surface accelerometer is first processed using subglottal impedance-based inverse filtering to yield an estimate of the unsteady glottal airflow. Seven aerodynamic and acoustic features are extracted from the neck surface accelerometer and an optional microphone signal. A neural network architecture is selected to provide a mapping between the seven input features and subglottal pressure, vocal fold collision pressure, and cricothyroid and thyroarytenoid muscle activation. This non-linear mapping is trained solely with 13,000 Monte Carlo simulations of a voice production model that utilizes a symmetric triangular body-cover model of the vocal folds. The performance of the method was compared against laboratory data from synchronous recordings of oral airflow, intraoral pressure, microphone, and neck-surface vibration in 79 vocally healthy female participants uttering consecutive /pæ/ syllable strings at comfortable, loud, and soft levels. The mean absolute error and root-mean-square error for estimating the mean subglottal pressure were 191 Pa (1.95 cm H2O) and 243 Pa (2.48 cm H2O), respectively, which are comparable with previous studies but with the key advantage of not requiring subject-specific training and yielding more output measures. The validation of vocal fold collision pressure and laryngeal muscle activation was performed with synthetic values as reference. These initial results provide valuable insight for further vocal fold model refinement and constitute a proof of concept that the proposed machine learning method is a feasible option for providing physiologically relevant measures for laboratory and ambulatory assessment of vocal function. The ambulatory assessment of vocal function can be significantly enhanced by having access to physiologically based features that describe underlying pathophysiological mechanisms in individuals with voice disorders. This type of enhancement can improve methods for the prevention, diagnosis, and treatment of behaviorally based voice disorders. Unfortunately, the direct measurement of important vocal features such as subglottal pressure, vocal fold collision pressure, and laryngeal muscle activation is impractical in laboratory and ambulatory settings. In this study, we introduce a method to estimate these features during phonation from a neck-surface vibration signal through a framework that integrates a physiologically relevant model of voice production and machine learning tools. The signal from a neck-surface accelerometer is first processed using subglottal impedance-based inverse filtering to yield an estimate of the unsteady glottal airflow. Seven aerodynamic and acoustic features are extracted from the neck surface accelerometer and an optional microphone signal. A neural network architecture is selected to provide a mapping between the seven input features and subglottal pressure, vocal fold collision pressure, and cricothyroid and thyroarytenoid muscle activation. This non-linear mapping is trained solely with 13,000 Monte Carlo simulations of a voice production model that utilizes a symmetric triangular body-cover model of the vocal folds. The performance of the method was compared against laboratory data from synchronous recordings of oral airflow, intraoral pressure, microphone, and neck-surface vibration in 79 vocally healthy female participants uttering consecutive /pæ/ syllable strings at comfortable, loud, and soft levels. The mean absolute error and root-mean-square error for estimating the mean subglottal pressure were 191 Pa (1.95 cm H O) and 243 Pa (2.48 cm H O), respectively, which are comparable with previous studies but with the key advantage of not requiring subject-specific training and yielding more output measures. The validation of vocal fold collision pressure and laryngeal muscle activation was performed with synthetic values as reference. These initial results provide valuable insight for further vocal fold model refinement and constitute a proof of concept that the proposed machine learning method is a feasible option for providing physiologically relevant measures for laboratory and ambulatory assessment of vocal function. The ambulatory assessment of vocal function can be significantly enhanced by having access to physiologically based features that describe underlying pathophysiological mechanisms in individuals with voice disorders. This type of enhancement can improve methods for the prevention, diagnosis, and treatment of behaviorally based voice disorders. Unfortunately, the direct measurement of important vocal features such as subglottal pressure, vocal fold collision pressure, and laryngeal muscle activation is impractical in laboratory and ambulatory settings. In this study, we introduce a method to estimate these features during phonation from a neck-surface vibration signal through a framework that integrates a physiologically relevant model of voice production and machine learning tools. The signal from a neck-surface accelerometer is first processed using subglottal impedance-based inverse filtering to yield an estimate of the unsteady glottal airflow. Seven aerodynamic and acoustic features are extracted from the neck surface accelerometer and an optional microphone signal. A neural network architecture is selected to provide a mapping between the seven input features and subglottal pressure, vocal fold collision pressure, and cricothyroid and thyroarytenoid muscle activation. This non-linear mapping is trained solely with 13,000 Monte Carlo simulations of a voice production model that utilizes a symmetric triangular body-cover model of the vocal folds. The performance of the method was compared against laboratory data from synchronous recordings of oral airflow, intraoral pressure, microphone, and neck-surface vibration in 79 vocally healthy female participants uttering consecutive /pæ/ syllable strings at comfortable, loud, and soft levels. The mean absolute error and root-mean-square error for estimating the mean subglottal pressure were 191 Pa (1.95 cm H2O) and 243 Pa (2.48 cm H2O), respectively, which are comparable with previous studies but with the key advantage of not requiring subject-specific training and yielding more output measures. The validation of vocal fold collision pressure and laryngeal muscle activation was performed with synthetic values as reference. These initial results provide valuable insight for further vocal fold model refinement and constitute a proof of concept that the proposed machine learning method is a feasible option for providing physiologically relevant measures for laboratory and ambulatory assessment of vocal function. |
Author | Hillman, Robert E. Cortés, Juan P. Alzamendi, Gabriel A. Parra, Jesús A. Zañartu, Matías Espinoza, Víctor M. Ibarra, Emiro J. Mehta, Daryush D. |
AuthorAffiliation | 2 School of Electrical Engineering, University of the Andes , Mérida , Venezuela 5 Department of Sound, Faculty of Arts, University of Chile , Santiago , Chile 1 Department of Electronic Engineering, Universidad Técnica Federico Santa María , Valparaíso , Chile 4 Center for Laryngeal Surgery and Voice Rehabilitation Laboratory, Massachusetts General Hospital–Harvard Medical School , Boston, MA , United States 3 Institute for Research and Development on Bioengineering and Bioinformatics, Consejo Nacional de Investigaciones Científicas y Técnicas - Universidad Nacional de Entre Ríos , Oro Verde , Argentina |
AuthorAffiliation_xml | – name: 5 Department of Sound, Faculty of Arts, University of Chile , Santiago , Chile – name: 4 Center for Laryngeal Surgery and Voice Rehabilitation Laboratory, Massachusetts General Hospital–Harvard Medical School , Boston, MA , United States – name: 3 Institute for Research and Development on Bioengineering and Bioinformatics, Consejo Nacional de Investigaciones Científicas y Técnicas - Universidad Nacional de Entre Ríos , Oro Verde , Argentina – name: 1 Department of Electronic Engineering, Universidad Técnica Federico Santa María , Valparaíso , Chile – name: 2 School of Electrical Engineering, University of the Andes , Mérida , Venezuela |
Author_xml | – sequence: 1 givenname: Emiro J. surname: Ibarra fullname: Ibarra, Emiro J. – sequence: 2 givenname: Jesús A. surname: Parra fullname: Parra, Jesús A. – sequence: 3 givenname: Gabriel A. surname: Alzamendi fullname: Alzamendi, Gabriel A. – sequence: 4 givenname: Juan P. surname: Cortés fullname: Cortés, Juan P. – sequence: 5 givenname: Víctor M. surname: Espinoza fullname: Espinoza, Víctor M. – sequence: 6 givenname: Daryush D. surname: Mehta fullname: Mehta, Daryush D. – sequence: 7 givenname: Robert E. surname: Hillman fullname: Hillman, Robert E. – sequence: 8 givenname: Matías surname: Zañartu fullname: Zañartu, Matías |
BackLink | https://www.ncbi.nlm.nih.gov/pubmed/34539451$$D View this record in MEDLINE/PubMed |
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CitedBy_id | crossref_primary_10_1016_j_apacoust_2023_109348 crossref_primary_10_1121_10_0009616 crossref_primary_10_1016_j_bspc_2025_107681 crossref_primary_10_3390_app12010401 crossref_primary_10_1016_j_jvoice_2022_03_029 crossref_primary_10_1121_10_0009169 crossref_primary_10_1121_10_0009599 crossref_primary_10_3389_fphys_2024_1282574 crossref_primary_10_1016_j_compbiomed_2024_107946 crossref_primary_10_1007_s10237_024_01869_9 crossref_primary_10_3389_fnins_2022_1004013 crossref_primary_10_1044_2023_JSLHR_23_00273 crossref_primary_10_3390_app122110692 crossref_primary_10_1044_2024_JSLHR_24_00419 |
Cites_doi | 10.1121/1.401011 10.1109/TASL.2013.2263138 10.1109/TBME.2012.2207896 10.1044/2017_JSLHR-S-17-0095 10.1044/persp2.SIG3.4 10.1044/2019_JSLHR-S-19-0067 10.1121/1.2805683 10.1121/1.2697573 10.1016/S0892-1997(05)80248-6 10.1121/1.4922364 10.1121/1.4901714 10.1121/1.5124256 10.1044/2017_JSLHR-S-16-0412 10.1044/2020_JSLHR-20-00168 10.1044/vvd21.2.56 10.1121/1.423298 10.1109/TBME.2013.2297372 10.1016/j.imu.2020.100373 10.1002/lary.24740 10.1121/1.1652033 10.1109/JTEHM.2018.2886021 10.1044/2020_AJSLP-20-00104 10.1109/ICNN.1995.488968 10.1044/2021_JSLHR-20-00538 10.1044/2016_JSLHR-S-16-0164 10.1007/s10237-017-0992-5 10.3389/fbioe.2015.00155 10.1044/2020_JSLHR-20-00189 10.1044/1058-0360(2008/08-0017) 10.1121/1.1850074 10.1109/ISSMDBS.2006.360113 10.1121/1.2409491 10.21437/Interspeech.2011-685 10.1121/1.4919297 10.1044/2015_JSLHR-S-13-0128 10.1121/10.0000927 10.1016/j.jvoice.2015.03.006 10.1016/j.specom.2013.02.002 10.1371/journal.pone.0209017 10.1121/1.410307 10.1044/2020_JSLHR-19-00409 10.1121/1.5133944 10.1044/2017_JSLHR-S-16-0337 10.1044/1092-4388(2003/072) 10.1121/10.0001276 10.1121/1.1417526 10.1109/jstsp.2019.2959267 10.1121/1.5100909 10.1121/1.412234 10.1097/MOO.0000000000000405 10.1044/1092-4388(2005/054) 10.1121/1.1496080 10.3390/app9132735 |
ContentType | Journal Article |
Copyright | Copyright © 2021 Ibarra, Parra, Alzamendi, Cortés, Espinoza, Mehta, Hillman and Zañartu. Copyright © 2021 Ibarra, Parra, Alzamendi, Cortés, Espinoza, Mehta, Hillman and Zañartu. 2021 Ibarra, Parra, Alzamendi, Cortés, Espinoza, Mehta, Hillman and Zañartu |
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Keywords | ambulatory monitoring clinical voice assessment neck-surface accelerometer subglottal pressure estimation voice production model neural networks |
Language | English |
License | Copyright © 2021 Ibarra, Parra, Alzamendi, Cortés, Espinoza, Mehta, Hillman and Zañartu. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. |
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Notes | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 23 Edited by: Michael Döllinger, University Hospital Erlangen, Germany Reviewed by: Wenjun Kou, Northwestern University, United States; Xudong Zheng, University of Maine, United States This article was submitted to Computational Physiology and Medicine, a section of the journal Frontiers in Physiology |
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Title | Estimation of Subglottal Pressure, Vocal Fold Collision Pressure, and Intrinsic Laryngeal Muscle Activation From Neck-Surface Vibration Using a Neural Network Framework and a Voice Production Model |
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