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...

Full description

Saved in:
Bibliographic Details
Published inFrontiers in physiology Vol. 12; p. 732244
Main Authors Ibarra, Emiro J., Parra, Jesús A., Alzamendi, Gabriel A., Cortés, Juan P., Espinoza, Víctor M., Mehta, Daryush D., Hillman, Robert E., Zañartu, Matías
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Media S.A 01.09.2021
Subjects
Online AccessGet full text
ISSN1664-042X
1664-042X
DOI10.3389/fphys.2021.732244

Cover

Loading…
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.
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
BookMark eNp9UstuGyEUHVWpmkfzAd1ULLuoXQYYhtlUiqy4teSkkdJE3SGGh0OCBxeYVP7A_FcZT5omXRQJceGecy5czmGx1_lOF8W7Ek4xZs0ns7nZximCqJzWGCFCXhUHJaVkAgn6sfcs3i-OY7yFeRCIICzfFPuYVLghVXlQPJzGZNciWd8Bb8Bl366cT0k4cBF0jH3QH8G1l3k_906BmXfOxgH8Ny06BRZdCraLVoKlCNtupTPhrI_SaXAik70fC8yDX4NzLe8ml30wQmpwbdsw5q6i7VZA5HQfMvlcp18-3GWKWOtdNJQR-S420y6CV73c8c680u5t8doIF_Xx43pUXM1Pv8--TpbfvixmJ8uJJLRKk1Zh0SCBGMO1NFWb28aEpA2TjElIhdKIUIgZo0ixGrVY6Zq2sjJ1LaCiDT4qFqOu8uKWb0LuXNhyLyzfHfiw4iIkm5_NmamEEpUmjZFE1Uho1jQIGUyJYagdtD6PWpu-XWsldW6hcC9EX2Y6e8NX_p4zQmCeWeDDo0DwP3sdE1_bKLVzotO-jxxVNakxxXCAvn9e66nIHx9kQDkCZPAxBm2eICXkg934zm58sBsf7ZY59T8cadPuM_N1rfsP8zeJM9_Y
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
Copyright_xml – notice: Copyright © 2021 Ibarra, Parra, Alzamendi, Cortés, Espinoza, Mehta, Hillman and Zañartu.
– notice: Copyright © 2021 Ibarra, Parra, Alzamendi, Cortés, Espinoza, Mehta, Hillman and Zañartu. 2021 Ibarra, Parra, Alzamendi, Cortés, Espinoza, Mehta, Hillman and Zañartu
DBID AAYXX
CITATION
NPM
7X8
5PM
DOA
DOI 10.3389/fphys.2021.732244
DatabaseName CrossRef
PubMed
MEDLINE - Academic
PubMed Central (Full Participant titles)
DOAJ Directory of Open Access Journals
DatabaseTitle CrossRef
PubMed
MEDLINE - Academic
DatabaseTitleList CrossRef

MEDLINE - Academic
PubMed

Database_xml – sequence: 1
  dbid: DOA
  name: DOAJ Directory of Open Access Journals
  url: https://www.doaj.org/
  sourceTypes: Open Website
– sequence: 2
  dbid: NPM
  name: PubMed
  url: https://proxy.k.utb.cz/login?url=http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?db=PubMed
  sourceTypes: Index Database
DeliveryMethod fulltext_linktorsrc
Discipline Anatomy & Physiology
EISSN 1664-042X
ExternalDocumentID oai_doaj_org_article_8f5ada5e49fc4d72ae89922f364f82b9
PMC8440844
34539451
10_3389_fphys_2021_732244
Genre Journal Article
GrantInformation_xml – fundername: NIDCD NIH HHS
  grantid: P50 DC015446
– fundername: National Institute on Deafness and Other Communication Disorders
  grantid: P50 DC015446
– fundername: Comisión Nacional de Investigación Científica y Tecnológica
  grantid: FONDECYT iniciación 11200665; BASAL FB0008; Becas de Doctorado Nacional 21190074; Becas de Doctorado Nacional 21202490; FONDECYT regular 1191369
GroupedDBID 53G
5VS
9T4
AAFWJ
AAKDD
AAYXX
ACGFO
ACGFS
ACXDI
ADBBV
ADRAZ
AENEX
AFPKN
ALMA_UNASSIGNED_HOLDINGS
AOIJS
BCNDV
CITATION
DIK
EMOBN
F5P
GROUPED_DOAJ
GX1
HYE
KQ8
M48
M~E
O5R
O5S
OK1
PGMZT
RNS
RPM
IAO
IEA
IHR
IHW
IPNFZ
ISR
NPM
RIG
7X8
5PM
ID FETCH-LOGICAL-c465t-bd3a92a28837cf5b3228ac698c88c06ade246038862d872b3de76bc5f77a0d693
IEDL.DBID M48
ISSN 1664-042X
IngestDate Wed Aug 27 01:30:07 EDT 2025
Thu Aug 21 17:39:40 EDT 2025
Fri Jul 11 08:47:43 EDT 2025
Thu Jan 02 22:39:53 EST 2025
Tue Jul 01 02:44:44 EDT 2025
Thu Apr 24 23:00:14 EDT 2025
IsDoiOpenAccess true
IsOpenAccess true
IsPeerReviewed true
IsScholarly true
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.
LinkModel DirectLink
MergedId FETCHMERGED-LOGICAL-c465t-bd3a92a28837cf5b3228ac698c88c06ade246038862d872b3de76bc5f77a0d693
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
OpenAccessLink http://journals.scholarsportal.info/openUrl.xqy?doi=10.3389/fphys.2021.732244
PMID 34539451
PQID 2574736304
PQPubID 23479
ParticipantIDs doaj_primary_oai_doaj_org_article_8f5ada5e49fc4d72ae89922f364f82b9
pubmedcentral_primary_oai_pubmedcentral_nih_gov_8440844
proquest_miscellaneous_2574736304
pubmed_primary_34539451
crossref_primary_10_3389_fphys_2021_732244
crossref_citationtrail_10_3389_fphys_2021_732244
ProviderPackageCode CITATION
AAYXX
PublicationCentury 2000
PublicationDate 2021-09-01
PublicationDateYYYYMMDD 2021-09-01
PublicationDate_xml – month: 09
  year: 2021
  text: 2021-09-01
  day: 01
PublicationDecade 2020
PublicationPlace Switzerland
PublicationPlace_xml – name: Switzerland
PublicationTitle Frontiers in physiology
PublicationTitleAlternate Front Physiol
PublicationYear 2021
Publisher Frontiers Media S.A
Publisher_xml – name: Frontiers Media S.A
References Švec (B45) 2018; 61
Zañartu (B60) 2013; 21
Alzamendi (B4) 2021
Van Stan (B56) 2021; 64
Rothenberg (B41) 2013
Drioli (B13) 2020; 20
Hunter (B26) 2004; 115
Galindo (B17) 2017; 60
Mehta (B36) 2015; 3
Andreassen (B5) 2017; 25
Alzamendi (B3) 2019
Mehta (B35) 2019; 145
Bianco (B7) 2019; 146
Lucero (B32) 2015; 137
Marks (B33) 2020; 63
Kennedy (B28) 1995
Gómez (B19) 2018; 17
Bhattacharyya (B6) 2014; 124
Kingma (B29) 2017
Deng (B12) 2019; 146
B1
Hagan (B22) 2014
Gómez (B20) 2019; 7
Björklund (B9) 2016; 30
Hillman (B24) 2011; 21
Zañartu (B57) 2006
Espinoza (B16) 2017; 60
Ghassemi (B18) 2014; 61
Alzamendi (B2) 2020; 147
Titze (B47) 2002; 111
Hillman (B25) 2020; 29
Mehta (B37) 2012; 59
Titze (B50) 2015; 58
Cortés (B11) 2018; 13
Zañartu (B59) 2014; 136
Van Stan (B55); 60
Zhang (B62) 2020; 147
Espinoza (B15) 2020; 63
Cheyne (B10) 2006
Hadwin (B21) 2019; 9
Birkholz (B8) 2011
Zañartu (B61) 2007; 121
Story (B42) 2008; 123
Lin (B30) 2020; 14
Story (B44) 1998; 104
Llico (B31) 2015; 138
Kempster (B27) 2009; 18
Titze (B49) 2007; 121
Hertegård (B23) 1995; 9
Erath (B14) 2013; 55
Perkell (B39) 1991; 89
Titze (B51) 2002; 112
Titze (B52) 2003; 46
Van Stan (B53); 2
B58
Titze (B48) 2006
Van Stan (B54) 2020; 63
Marks (B34) 2019; 62
Švec (B46) 2005; 117
Perkell (B38) 1994; 96
Story (B43) 1995; 97
Popolo (B40) 2005; 48
References_xml – volume: 89
  start-page: 1777
  year: 1991
  ident: B39
  article-title: A system for signal processing and data extraction from aerodynamic, acoustic, and electroglottographic signals in the study of voice production
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.401011
– volume: 21
  start-page: 1929
  year: 2013
  ident: B60
  article-title: Subglottal impedance-based inverse filtering of voiced sounds using neck surface acceleration
  publication-title: IEEE Trans. Audio Speech Lang. Process.
  doi: 10.1109/TASL.2013.2263138
– volume: 59
  start-page: 3090
  year: 2012
  ident: B37
  article-title: Mobile voice health monitoring using a wearable accelerometer sensor and a smartphone platform
  publication-title: IEEE Trans. Biomed. Eng.
  doi: 10.1109/TBME.2012.2207896
– volume: 61
  start-page: 441
  year: 2018
  ident: B45
  article-title: Tutorial and guidelines on measurement of sound pressure level in voice and speech
  publication-title: J. Speech Lang. Hear. Res.
  doi: 10.1044/2017_JSLHR-S-17-0095
– volume: 2
  start-page: 4
  ident: B53
  article-title: Recent innovations in voice assessment expected to impact the clinical management of voice disorders
  publication-title: Perspect. ASHA Spcl. Interest Groups
  doi: 10.1044/persp2.SIG3.4
– volume: 62
  start-page: 3339
  year: 2019
  ident: B34
  article-title: Impact of nonmodal phonation on estimates of subglottal pressure from neck-surface acceleration in healthy speakers
  publication-title: J. Speech Lang. Hear. Res.
  doi: 10.1044/2019_JSLHR-S-19-0067
– volume: 123
  start-page: 327
  year: 2008
  ident: B42
  article-title: Comparison of magnetic resonance imaging-based vocal tract area functions obtained from the same speaker in 1994 and 2002
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.2805683
– start-page: 111
  volume-title: Proceedings of the 10th International Conference on Advances in Quantitative Laryngology, Voice and Speech Research
  year: 2013
  ident: B41
  article-title: “Rethinking the interpolation method for estimating subglottal pressure,”
– volume: 121
  start-page: 2254
  year: 2007
  ident: B49
  article-title: A two-dimensional biomechanical model of vocal fold posturing
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.2697573
– volume: 9
  start-page: 149
  year: 1995
  ident: B23
  article-title: A comparison of subglottal and intraoral pressure measurements during phonation
  publication-title: J. Voice
  doi: 10.1016/S0892-1997(05)80248-6
– volume: 138
  start-page: EL14
  year: 2015
  ident: B31
  article-title: Real-time estimation of aerodynamic features for ambulatory voice biofeedback
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.4922364
– volume: 136
  start-page: 3262
  year: 2014
  ident: B59
  article-title: Modeling the effects of a posterior glottal opening on vocal fold dynamics with implications for vocal hyperfunction
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.4901714
– ident: B58
– volume: 146
  start-page: 1492
  year: 2019
  ident: B12
  article-title: The effect of high-speed videoendoscopy configuration on reduced-order model parameter estimates by bayesian inference
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.5124256
– volume: 60
  start-page: 2452
  year: 2017
  ident: B17
  article-title: Modeling the pathophysiology of phonotraumatic vocal hyperfunction with a triangular glottal model of the vocal folds
  publication-title: J. Speech Lang. Hear. Res.
  doi: 10.1044/2017_JSLHR-S-16-0412
– volume: 63
  start-page: 3934
  year: 2020
  ident: B54
  article-title: Changes in a daily phonotrauma index after laryngeal surgery and voice therapy: implications for the role of daily voice use in the etiology and pathophysiology of phonotraumatic vocal hyperfunction
  publication-title: J. Speech Lang. Hear. Res.
  doi: 10.1044/2020_JSLHR-20-00168
– volume: 21
  start-page: 56
  year: 2011
  ident: B24
  article-title: Ambulatory monitoring of daily voice use
  publication-title: Perspect. Voice Disord.
  doi: 10.1044/vvd21.2.56
– volume: 104
  start-page: 471
  year: 1998
  ident: B44
  article-title: Vocal tract area functions for an adult female speaker based on volumetric imaging
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.423298
– volume: 61
  start-page: 1668
  year: 2014
  ident: B18
  article-title: Learning to detect vocal hyperfunction from ambulatory neck-surface acceleration features: initial results for vocal fold nodules
  publication-title: IEEE Trans. Biomed. Eng.
  doi: 10.1109/TBME.2013.2297372
– volume: 20
  start-page: 100373
  year: 2020
  ident: B13
  article-title: Fitting a biomechanical model of the folds to high-speed video data through bayesian estimation
  publication-title: Inform. Med. Unlocked
  doi: 10.1016/j.imu.2020.100373
– volume: 124
  start-page: 2359
  year: 2014
  ident: B6
  article-title: The prevalence of voice problems among adults in the united states
  publication-title: Laryngoscope
  doi: 10.1002/lary.24740
– volume: 115
  start-page: 1747
  year: 2004
  ident: B26
  article-title: A three-dimensional model of vocal fold abduction/adduction
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.1652033
– volume: 7
  start-page: 1
  year: 2019
  ident: B20
  article-title: Laryngeal pressure estimation with a recurrent neural network
  publication-title: IEEE J. Transl. Eng. Health Med.
  doi: 10.1109/JTEHM.2018.2886021
– volume: 29
  start-page: 2254
  year: 2020
  ident: B25
  article-title: An updated theoretical framework for vocal hyperfunction
  publication-title: Am. J. Speech Lang. Pathol.
  doi: 10.1044/2020_AJSLP-20-00104
– start-page: 1942
  year: 1995
  ident: B28
  article-title: “Particle swarm optimization,”
  publication-title: Proceedings of the IEEE International Conference on Neural Networks
  doi: 10.1109/ICNN.1995.488968
– volume-title: The 13th International Conference on Advances in Quantitative Laryngology, Voice and Speech Research
  year: 2019
  ident: B3
  article-title: “Updated rules for constructing a triangular body-cover model of the vocal folds from intrinsic laryngeal muscle activation,”
– volume: 64
  start-page: 1457
  year: 2021
  ident: B56
  article-title: Differences in daily voice use measures between female patients with nonphonotraumatic vocal hyperfunction and matched controls
  publication-title: J. Speech Lang. Hear. Res.
  doi: 10.1044/2021_JSLHR-20-00538
– volume-title: Neural Network Design
  year: 2014
  ident: B22
– volume: 60
  start-page: 853
  ident: B55
  article-title: Ambulatory voice biofeedback: relative frequency and summary feedback effects on performance and retention of reduced vocal intensity in the daily lives of participants with normal voices
  publication-title: J. Speech Lang. Hear. Res.
  doi: 10.1044/2016_JSLHR-S-16-0164
– volume: 17
  start-page: 777
  year: 2018
  ident: B19
  article-title: Physical parameter estimation from porcine ex vivo vocal fold dynamics in an inverse problem framework
  publication-title: Biomech. Model Mechanobiol.
  doi: 10.1007/s10237-017-0992-5
– volume: 3
  start-page: 155
  year: 2015
  ident: B36
  article-title: Using ambulatory voice monitoring to investigate common voice disorders: research update
  publication-title: Front. Bioeng. Biotechnol.
  doi: 10.3389/fbioe.2015.00155
– volume: 63
  start-page: 2861
  year: 2020
  ident: B15
  article-title: Glottal aerodynamics estimated from neck-surface vibration in women with phonotraumatic and nonphonotraumatic vocal hyperfunction
  publication-title: J. Speech Lang. Hear. Res.
  doi: 10.1044/2020_JSLHR-20-00189
– volume: 18
  start-page: 124
  year: 2009
  ident: B27
  article-title: Consensus auditory-perceptual evaluation of voice: development of a standardized clinical protocol
  publication-title: Am. J. Speech Lang. Pathol.
  doi: 10.1044/1058-0360(2008/08-0017)
– volume: 117
  start-page: 1386
  year: 2005
  ident: B46
  article-title: Estimation of sound pressure levels of voiced speech from skin vibration of the neck
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.1850074
– start-page: 118
  year: 2006
  ident: B10
  article-title: “Estimating glottal voicing source characteristics by measuring and modeling the acceleration of the skin on the neck,”
  publication-title: 2006 3rd IEEE/EMBS International Summer School on Medical Devices and Biosensors
  doi: 10.1109/ISSMDBS.2006.360113
– volume: 121
  start-page: 1119
  year: 2007
  ident: B61
  article-title: Influence of acoustic loading on an effective single mass model of the vocal folds
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.2409491
– start-page: 2681
  volume-title: Interspeech 2011: 12th Annual Conference ofthe International Speech Communi- cation Association
  year: 2011
  ident: B8
  article-title: “Synthesis of breathy, normal, and pressed phonation using a two-mass model with a triangular glottis,”
  doi: 10.21437/Interspeech.2011-685
– volume: 137
  start-page: 2970
  year: 2015
  ident: B32
  article-title: Smoothness of an equation for the glottal flow rate versus the glottal area
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.4919297
– volume: 58
  start-page: 1425
  year: 2015
  ident: B50
  article-title: Comparison of vocal vibration-dose measures for potential-damage risk criteria
  publication-title: J. Speech Lang. Hear. Res.
  doi: 10.1044/2015_JSLHR-S-13-0128
– volume: 147
  start-page: EL264
  year: 2020
  ident: B62
  article-title: Estimation of vocal fold physiology from voice acoustics using machine learning
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/10.0000927
– ident: B1
– volume: 30
  start-page: 15
  year: 2016
  ident: B9
  article-title: Relationship between subglottal pressure and sound pressure level in untrained voices
  publication-title: J. Voice
  doi: 10.1016/j.jvoice.2015.03.006
– volume-title: The Myoelastic Aerodynamic Theory of Phonation, 1st Edn
  year: 2006
  ident: B48
– volume: 55
  start-page: 667
  year: 2013
  ident: B14
  article-title: A review of lumped-element models of voiced speech
  publication-title: Speech Commun.
  doi: 10.1016/j.specom.2013.02.002
– volume: 13
  start-page: e0209017
  year: 2018
  ident: B11
  article-title: Ambulatory assessment of phonotraumatic vocal hyperfunction using glottal airflow measures estimated from neck-surface acceleration
  publication-title: PLoS ONE
  doi: 10.1371/journal.pone.0209017
– volume: 96
  start-page: 695
  year: 1994
  ident: B38
  article-title: Group differences in measures of voice production and revised values of maximum airflow declination rate
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.410307
– volume: 63
  start-page: 2202
  year: 2020
  ident: B33
  article-title: Estimation of subglottal pressure from neck surface vibration in patients with voice disorders
  publication-title: J. Speech Lang. Hear. Res.
  doi: 10.1044/2020_JSLHR-19-00409
– year: 2021
  ident: B4
  article-title: Triangular body-cover model of the vocal folds with coordinated activation of five intrinsic laryngeal muscles with applications to vocal hyperfunction
  publication-title: arXiv preprint arXiv:2108.01115
– volume: 146
  start-page: 3590
  year: 2019
  ident: B7
  article-title: Machine learning in acoustics: theory and applications
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.5133944
– volume: 60
  start-page: 2159
  year: 2017
  ident: B16
  article-title: Glottal aerodynamic measures in women with phonotraumatic and nonphonotraumatic vocal hyperfunction
  publication-title: J. Speech Lang. Hear Res.
  doi: 10.1044/2017_JSLHR-S-16-0337
– volume: 46
  start-page: 919
  year: 2003
  ident: B52
  article-title: Vocal dose measures: quantifying accumulated vibration exposure in vocal fold tissues
  publication-title: J Speech Lang. Hear. Res.
  doi: 10.1044/1092-4388(2003/072)
– volume: 147
  start-page: EL434
  year: 2020
  ident: B2
  article-title: Bayesian estimation of vocal function measures using laryngeal high-speed videoendoscopy and glottal airflow estimates: an in vivo case study
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/10.0001276
– year: 2017
  ident: B29
  article-title: Adam: a method for stochastic optimization
  publication-title: arXiv preprint arXiv:1412.6980
– volume: 111
  start-page: 367
  year: 2002
  ident: B47
  article-title: Regulating glottal airflow in phonation: application of the maximum power transfer theorem to a low dimensional phonation model
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.1417526
– volume-title: Influence of acoustic loading on the flow-induced oscillations of single mass models of the human larynx
  year: 2006
  ident: B57
– volume: 14
  start-page: 449
  year: 2020
  ident: B30
  article-title: Improved subglottal pressure estimation from neck-surface vibration in healthy speakers producing non-modal phonation
  publication-title: IEEE J. Select. Top. Signal Process.
  doi: 10.1109/jstsp.2019.2959267
– volume: 145
  start-page: EL386
  year: 2019
  ident: B35
  article-title: The difference between first and second harmonic amplitudes correlates between glottal airflow and neck-surface accelerometer signals during phonation
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.5100909
– volume: 97
  start-page: 1249
  year: 1995
  ident: B43
  article-title: Voice simulation with a body-cover model of the vocal folds
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.412234
– volume: 25
  start-page: 447
  year: 2017
  ident: B5
  article-title: Emerging techniques in assessment and treatment of muscle tension dysphonia
  publication-title: Curr. Opin. Otolaryngol. Head Neck Surg.
  doi: 10.1097/MOO.0000000000000405
– volume: 48
  start-page: 780
  year: 2005
  ident: B40
  article-title: Adaptation of a pocket PC for use as a wearable voice dosimeter
  publication-title: J. Speech Lang. Hear. Res.
  doi: 10.1044/1092-4388(2005/054)
– volume: 112
  start-page: 1064
  year: 2002
  ident: B51
  article-title: Rules for controlling low-dimensional vocal fold models with muscle activation
  publication-title: J. Acoust. Soc. Am.
  doi: 10.1121/1.1496080
– volume: 9
  start-page: 2735
  year: 2019
  ident: B21
  article-title: Bayesian inference of vocal fold material properties from glottal area waveforms using a 2D finite element model
  publication-title: Appl. Sci.
  doi: 10.3390/app9132735
SSID ssj0000402001
Score 2.3591096
Snippet The ambulatory assessment of vocal function can be significantly enhanced by having access to physiologically based features that describe underlying...
SourceID doaj
pubmedcentral
proquest
pubmed
crossref
SourceType Open Website
Open Access Repository
Aggregation Database
Index Database
Enrichment Source
StartPage 732244
SubjectTerms ambulatory monitoring
clinical voice assessment
neck-surface accelerometer
neural networks
Physiology
subglottal pressure estimation
voice production model
SummonAdditionalLinks – databaseName: DOAJ Directory of Open Access Journals
  dbid: DOA
  link: http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwrV1LbxMxELZQT1wQUB4BigYJcUCk3ayfewyoUUGQC7TqbeX1o1RNd9E2OfQH8r-YsTdRghBcuK53NCPP2J6xZ75h7LX3hap0evJ3eiwsxinoN1OBT0VwZiWhilO2xVydnIpP5_J8q9UX5YRleOA8cUcmSuutDKKKTnhd2mAISjVyJaIpm1S6h2feVjCV9mAKi4pJfsbEKKw6inRTcEi8DzUasRA7B1HC6_-Tk_l7ruTW4TO7z-4NXiNMs7QP2J3QPmT70xYj5utbeAMpjzNdkO-zn8e4anNBInQRcGe4WHRL9LEhlwL24R2c0QkGs27hgW4OUn351rBtPXxEQS5b1CF8tv1te4EOJXxZ3SB7mLp1TzSY9d01zIO7Gn9d9dG6AGcUf6exlI0AFgj_A4nnOeEcSYZ0sMTGoiy4VyHzhDxLdNSebfGInc6Ov304GQ_NGsZOKLkcN57bqrTUvFi7KBucY2OdqowzxhXK-lAKRdAzqvRGlw33QavGyai1Lbyq-GO213ZteMpA8BIdE1fE6HEft8L4SenQTbXUq91LPmLFWnO1G5DMqaHGosaIhpRdJ2XXpOw6K3vE3m5IfmQYj7_9_J7MYfMjIXCnD2iX9WCX9b_scsRerY2pxhVLzzC2Dd0KOUkM4bjiBTJ6ko1rw4oLySshJyOmd8xuR5bdkfbye0IFN9Q7XIhn_0P45-wuzUfOpXvB9pb9Khyg87VsXqZ19gvD0jCg
  priority: 102
  providerName: Directory of Open Access Journals
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
URI https://www.ncbi.nlm.nih.gov/pubmed/34539451
https://www.proquest.com/docview/2574736304
https://pubmed.ncbi.nlm.nih.gov/PMC8440844
https://doaj.org/article/8f5ada5e49fc4d72ae89922f364f82b9
Volume 12
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwlV1Lj9MwELaW5cIFAcujPFZGQhwQKamfyQGhgrZaENsLdNVb5PhRVmQTyLYS_YH8L2actNqiColj4jjjZMb2jD3-PkJeOJeqXMctf6sTYSBOAb8ZD_jkCGfGEFUcsy2m6nQmPs3l_IBs6K36H3i1N7RDPqlZWw1__Vy_gw7_FiNOmG_fBFwEGOJrhxrsU4gb5CZMTBqZHM56bz8OzBgrRULkkVKYfsHm3T7n_rfszFQR0H-fF_p3MuW12Wlyh9zu3Uo67uzgLjnw9T1yNK4hpL5c05c0JnrGFfQj8vsEunV3YpE2gcLQsaiaJXw_7c4Ktv41Pccpjk6aylFcWogH0K8Vm9rRj9CQixqUTD-bdl0vwOOkZ6srEE_HdkOaRidtc0mn3n5PvqzaYKyn5xigx7KYrkANRYAQqDztMtKhSp8vFsUYaAsMZiA8QtNiPeRvq-6T2eTk64fTpGdzSKxQcpmUjpucGWQ31jbIEv5xZqzKM5tlNlXGeSYUYtMo5jLNSu68VqWVQWuTOpXzB-Swbmr_iFDBGXguNg3BwUBvROZGzIIfa5DM3Uk-IOlGc4Xtoc6RcaMqIORBZRdR2QUqu-iUPSCvtlV-dDgf_3r4PZrD9kGE6I43mnZR9D2-yII0zkgv8mCF08z4DDGAA1ciZKzMB-T5xpgK6NK4T2Nq36xAkoQYjyuegqCHnXFtRXEheS7kaED0jtnttGW3pL74FmHDMyQXF-Lx_3zpE3ILr7qkuqfkcNmu_DPwwpblcVy9OI497A820TKk
linkProvider Scholars Portal
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=Estimation+of+Subglottal+Pressure%2C+Vocal+Fold+Collision+Pressure%2C+and+Intrinsic+Laryngeal+Muscle+Activation+From+Neck-Surface+Vibration+Using+a+Neural+Network+Framework+and+a+Voice+Production+Model&rft.jtitle=Frontiers+in+physiology&rft.au=Ibarra%2C+Emiro+J.&rft.au=Parra%2C+Jes%C3%BAs+A.&rft.au=Alzamendi%2C+Gabriel+A.&rft.au=Cort%C3%A9s%2C+Juan+P.&rft.date=2021-09-01&rft.issn=1664-042X&rft.eissn=1664-042X&rft.volume=12&rft_id=info:doi/10.3389%2Ffphys.2021.732244&rft.externalDBID=n%2Fa&rft.externalDocID=10_3389_fphys_2021_732244
thumbnail_l http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=1664-042X&client=summon
thumbnail_m http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=1664-042X&client=summon
thumbnail_s http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=1664-042X&client=summon