1308-P: A Voice-Based AI Algorithm Can Predict Type 2 Diabetes Status—Findings from the Colive Voice Study on U.S. Adult Participants

Introduction: Reducing undiagnosed type 2 diabetes (T2D) cases worldwide is an urgent public health challenge. Most current screening methods are invasive, lab-based, and costly. Meanwhile, there is a growing focus on noninvasive T2D detection through advanced artificial intelligence (AI) and digita...

Full description

Saved in:
Bibliographic Details
Published inDiabetes (New York, N.Y.) Vol. 73; no. Supplement_1; p. 1
Main Authors ELBEJI, ABIR, PIZZIMENTI, MÉGANE, AGUAYO, GLORIA A., FISCHER, AURELIE, AYADI, HANIN, MAUVAIS-JARVIS, FRANCK, RIVELINE, JEAN-PIERRE, DESPOTOVIC, VLADIMIR, FAGHERAZZI, GUY
Format Journal Article
LanguageEnglish
Published New York American Diabetes Association 14.06.2024
Subjects
Online AccessGet full text
ISSN0012-1797
1939-327X
DOI10.2337/db24-1308-P

Cover

Abstract Introduction: Reducing undiagnosed type 2 diabetes (T2D) cases worldwide is an urgent public health challenge. Most current screening methods are invasive, lab-based, and costly. Meanwhile, there is a growing focus on noninvasive T2D detection through advanced artificial intelligence (AI) and digital technology. This study explores the feasibility of using a voice-based AI algorithm to predict T2D status in adults, a preliminary step toward innovative screening tools. Objective: To develop and assess the performance of a voice-based AI algorithm for T2D status detection in the adult population in the US. Methods: We analyzed text reading voice recordings from 607 US participants from the Colive Voice study, adhering to the CONSORT AI standards. We trained and cross-validated algorithms with BYOL-S/CvT embeddings for each gender, evaluating them on accuracy, precision, recall, and AUC. Performance of the best models was stratified by age, BMI, and hypertension, and compared to the American Diabetes Association (ADA) score for T2D risk assessment using a Bland-Altman analysis. Results: We analyzed 323 females and 284 males; Females with T2D (age: 49.5 years, BMI: 35.8 kg/m²) vs without (40.0 years, 28.0 kg/m²). Males with T2D (47.6 years, 32.8 kg/m²) vs without (41.6 years, 26.6 kg/m²). The voice-based algorithm achieved good overall predictive capacity (AUC=75% for males, 71% for females) and correctly predicted 71% of male and 66% of female T2D cases. It is enhanced in females aged 60 years (AUC=74%) or older but also with the presence of hypertension for both genders (AUC=75%). We observed an overall agreement above 93% with the ADA risk score. Conclusion: This study demonstrates the feasibility of detecting T2D using exclusively voice features. It is the first step toward using voice analysis as a first-line T2D screening strategy. While the findings are promising, further research and validation are necessary to specifically target early-stage T2D cases.
AbstractList Introduction: Reducing undiagnosed type 2 diabetes (T2D) cases worldwide is an urgent public health challenge. Most current screening methods are invasive, lab-based, and costly. Meanwhile, there is a growing focus on noninvasive T2D detection through advanced artificial intelligence (AI) and digital technology. This study explores the feasibility of using a voice-based AI algorithm to predict T2D status in adults, a preliminary step toward innovative screening tools. Objective: To develop and assess the performance of a voice-based AI algorithm for T2D status detection in the adult population in the US. Methods: We analyzed text reading voice recordings from 607 US participants from the Colive Voice study, adhering to the CONSORT AI standards. We trained and cross-validated algorithms with BYOL-S/CvT embeddings for each gender, evaluating them on accuracy, precision, recall, and AUC. Performance of the best models was stratified by age, BMI, and hypertension, and compared to the American Diabetes Association (ADA) score for T2D risk assessment using a Bland-Altman analysis. Results: We analyzed 323 females and 284 males; Females with T2D (age: 49.5 years, BMI: 35.8 kg/m²) vs without (40.0 years, 28.0 kg/m²). Males with T2D (47.6 years, 32.8 kg/m²) vs without (41.6 years, 26.6 kg/m²). The voice-based algorithm achieved good overall predictive capacity (AUC=75% for males, 71% for females) and correctly predicted 71% of male and 66% of female T2D cases. It is enhanced in females aged 60 years (AUC=74%) or older but also with the presence of hypertension for both genders (AUC=75%). We observed an overall agreement above 93% with the ADA risk score. Conclusion: This study demonstrates the feasibility of detecting T2D using exclusively voice features. It is the first step toward using voice analysis as a first-line T2D screening strategy. While the findings are promising, further research and validation are necessary to specifically target early-stage T2D cases.
Introduction: Reducing undiagnosed type 2 diabetes (T2D) cases worldwide is an urgent public health challenge. Most current screening methods are invasive, lab-based, and costly. Meanwhile, there is a growing focus on noninvasive T2D detection through advanced artificial intelligence (AI) and digital technology. This study explores the feasibility of using a voice-based AI algorithm to predict T2D status in adults, a preliminary step toward innovative screening tools. Objective: To develop and assess the performance of a voice-based AI algorithm for T2D status detection in the adult population in the US. Methods: We analyzed text reading voice recordings from 607 US participants from the Colive Voice study, adhering to the CONSORT AI standards. We trained and cross-validated algorithms with BYOL-S/CvT embeddings for each gender, evaluating them on accuracy, precision, recall, and AUC. Performance of the best models was stratified by age, BMI, and hypertension, and compared to the American Diabetes Association (ADA) score for T2D risk assessment using a Bland-Altman analysis. Results: We analyzed 323 females and 284 males; Females with T2D (age: 49.5 years, BMI: 35.8 kg/m²) vs without (40.0 years, 28.0 kg/m²). Males with T2D (47.6 years, 32.8 kg/m²) vs without (41.6 years, 26.6 kg/m²). The voice-based algorithm achieved good overall predictive capacity (AUC=75% for males, 71% for females) and correctly predicted 71% of male and 66% of female T2D cases. It is enhanced in females aged 60 years (AUC=74%) or older but also with the presence of hypertension for both genders (AUC=75%). We observed an overall agreement above 93% with the ADA risk score. Conclusion: This study demonstrates the feasibility of detecting T2D using exclusively voice features. It is the first step toward using voice analysis as a first-line T2D screening strategy. While the findings are promising, further research and validation are necessary to specifically target early-stage T2D cases.
Author AYADI, HANIN
DESPOTOVIC, VLADIMIR
PIZZIMENTI, MÉGANE
RIVELINE, JEAN-PIERRE
FAGHERAZZI, GUY
ELBEJI, ABIR
AGUAYO, GLORIA A.
MAUVAIS-JARVIS, FRANCK
FISCHER, AURELIE
Author_xml – sequence: 1
  givenname: ABIR
  surname: ELBEJI
  fullname: ELBEJI, ABIR
– sequence: 2
  givenname: MÉGANE
  surname: PIZZIMENTI
  fullname: PIZZIMENTI, MÉGANE
– sequence: 3
  givenname: GLORIA A.
  surname: AGUAYO
  fullname: AGUAYO, GLORIA A.
– sequence: 4
  givenname: AURELIE
  surname: FISCHER
  fullname: FISCHER, AURELIE
– sequence: 5
  givenname: HANIN
  surname: AYADI
  fullname: AYADI, HANIN
– sequence: 6
  givenname: FRANCK
  surname: MAUVAIS-JARVIS
  fullname: MAUVAIS-JARVIS, FRANCK
– sequence: 7
  givenname: JEAN-PIERRE
  surname: RIVELINE
  fullname: RIVELINE, JEAN-PIERRE
– sequence: 8
  givenname: VLADIMIR
  surname: DESPOTOVIC
  fullname: DESPOTOVIC, VLADIMIR
– sequence: 9
  givenname: GUY
  surname: FAGHERAZZI
  fullname: FAGHERAZZI, GUY
BookMark eNotkM1KAzEUhYMo2KorX-CCS5man2kz426sf4WCBau4GzLJHZvSTmqSEbpz5wv4hD6JUyp3cTYf53C_PjlsXIOEnDM64ELIK1PxNGGCZsnsgPRYLvJEcPl2SHqUMp4wmctj0g9hSSkdddcj33v6Ggp4dVZjcqMCGigmUKzenbdxsYaxamDm0VgdYb7dIHC4tarCiAGeo4pt-P36ubeNsc17gNq7NcQFwtit7CfuazuuNVtwDbwMngdQmHYVYaZ8tNpuVBPDKTmq1Srg2X-ekPn93Xz8mEyfHibjYproUdo9IDKpFKtpJUasEkOdZak2GeaVybWutUm5MShkSqkWvM6lwWo4zFDJocpQoDghF_vajXcfLYZYLl3rm26xFIwxLjsrvKMu95T2LgSPdbnxdq38tmS03Ikud6LLnbpyJv4AvlRyIQ
ContentType Journal Article
Copyright Copyright American Diabetes Association Jun 2024
Copyright_xml – notice: Copyright American Diabetes Association Jun 2024
DBID AAYXX
CITATION
K9.
NAPCQ
DOI 10.2337/db24-1308-P
DatabaseName CrossRef
ProQuest Health & Medical Complete (Alumni)
Nursing & Allied Health Premium
DatabaseTitle CrossRef
ProQuest Health & Medical Complete (Alumni)
Nursing & Allied Health Premium
DatabaseTitleList ProQuest Health & Medical Complete (Alumni)
CrossRef
DeliveryMethod fulltext_linktorsrc
Discipline Medicine
Public Health
EISSN 1939-327X
ExternalDocumentID 10_2337_db24_1308_P
Genre Conference Proceeding
GeographicLocations United States--US
GeographicLocations_xml – name: United States--US
GroupedDBID ---
.55
.XZ
08P
0R~
18M
29F
2WC
354
4.4
53G
5GY
5RE
5RS
5VS
6PF
8R4
8R5
AAFWJ
AAQQT
AAWTL
AAYEP
AAYXX
ABOCM
ACGFO
ACGOD
ACPRK
ADBBV
AEGXH
AENEX
AERZD
AHMBA
AIAGR
AIZAD
ALMA_UNASSIGNED_HOLDINGS
BAWUL
BES
BTFSW
CITATION
CS3
DIK
DU5
E3Z
EBS
EDB
EMOBN
EX3
F5P
FRP
GX1
H13
HZ~
IAO
IEA
IHR
INH
INR
IOF
IPO
K2M
KQ8
L7B
M5~
O5R
O5S
O9-
OHH
OK1
OVD
P2P
PCD
Q2X
RHI
RPM
SJN
SV3
TDI
TEORI
TR2
VVN
W8F
WH7
WOQ
WOW
X7M
YFH
YHG
YOC
ZY1
~KM
K9.
NAPCQ
ID FETCH-LOGICAL-c642-1387aa1f0b361b35c884cd8e9bd9ccfcd42dde37400c32f97deb558ea75a8e3e3
ISSN 0012-1797
IngestDate Mon Oct 06 18:17:53 EDT 2025
Wed Oct 01 04:55:00 EDT 2025
IsPeerReviewed true
IsScholarly true
Issue Supplement_1
Language English
LinkModel OpenURL
MergedId FETCHMERGED-LOGICAL-c642-1387aa1f0b361b35c884cd8e9bd9ccfcd42dde37400c32f97deb558ea75a8e3e3
Notes ObjectType-Conference Proceeding-1
SourceType-Scholarly Journals-1
content type line 14
PQID 3111276062
PQPubID 34443
ParticipantIDs proquest_journals_3111276062
crossref_primary_10_2337_db24_1308_P
ProviderPackageCode CITATION
AAYXX
PublicationCentury 2000
PublicationDate 2024-06-14
PublicationDateYYYYMMDD 2024-06-14
PublicationDate_xml – month: 06
  year: 2024
  text: 2024-06-14
  day: 14
PublicationDecade 2020
PublicationPlace New York
PublicationPlace_xml – name: New York
PublicationTitle Diabetes (New York, N.Y.)
PublicationYear 2024
Publisher American Diabetes Association
Publisher_xml – name: American Diabetes Association
SSID ssj0006060
Score 2.4562244
Snippet Introduction: Reducing undiagnosed type 2 diabetes (T2D) cases worldwide is an urgent public health challenge. Most current screening methods are invasive,...
SourceID proquest
crossref
SourceType Aggregation Database
Index Database
StartPage 1
SubjectTerms Algorithms
Artificial intelligence
Diabetes
Diabetes mellitus (non-insulin dependent)
Feasibility studies
Females
Hypertension
Males
Population studies
Public health
Risk assessment
Title 1308-P: A Voice-Based AI Algorithm Can Predict Type 2 Diabetes Status—Findings from the Colive Voice Study on U.S. Adult Participants
URI https://www.proquest.com/docview/3111276062
Volume 73
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
journalDatabaseRights – providerCode: PRVAFT
  databaseName: Open Access Digital Library
  customDbUrl:
  eissn: 1939-327X
  dateEnd: 99991231
  omitProxy: true
  ssIdentifier: ssj0006060
  issn: 0012-1797
  databaseCode: KQ8
  dateStart: 20000101
  isFulltext: true
  titleUrlDefault: http://grweb.coalliance.org/oadl/oadl.html
  providerName: Colorado Alliance of Research Libraries
– providerCode: PRVAFT
  databaseName: Open Access Digital Library
  customDbUrl:
  eissn: 1939-327X
  dateEnd: 99991231
  omitProxy: true
  ssIdentifier: ssj0006060
  issn: 0012-1797
  databaseCode: KQ8
  dateStart: 19980101
  isFulltext: true
  titleUrlDefault: http://grweb.coalliance.org/oadl/oadl.html
  providerName: Colorado Alliance of Research Libraries
– providerCode: PRVBFR
  databaseName: Free Medical Journals
  customDbUrl:
  eissn: 1939-327X
  dateEnd: 99991231
  omitProxy: true
  ssIdentifier: ssj0006060
  issn: 0012-1797
  databaseCode: DIK
  dateStart: 19520101
  isFulltext: true
  titleUrlDefault: http://www.freemedicaljournals.com
  providerName: Flying Publisher
– providerCode: PRVFQY
  databaseName: GFMER Free Medical Journals
  customDbUrl:
  eissn: 1939-327X
  dateEnd: 99991231
  omitProxy: true
  ssIdentifier: ssj0006060
  issn: 0012-1797
  databaseCode: GX1
  dateStart: 0
  isFulltext: true
  titleUrlDefault: http://www.gfmer.ch/Medical_journals/Free_medical.php
  providerName: Geneva Foundation for Medical Education and Research
– providerCode: PRVAQN
  databaseName: PubMed Central
  customDbUrl:
  eissn: 1939-327X
  dateEnd: 20241103
  omitProxy: true
  ssIdentifier: ssj0006060
  issn: 0012-1797
  databaseCode: RPM
  dateStart: 20080701
  isFulltext: true
  titleUrlDefault: https://www.ncbi.nlm.nih.gov/pmc/
  providerName: National Library of Medicine
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwnV3Nb9MwFLfKkBASQjBA2xjIh4lLldLaSZNwC-1Ky-hUaR3qLbIdpxSVdlvbw3rn3-Jv4z07X6smBFyiyJYcy-8Xv-_3CDmRnEtXi6bjuUyhgiKdIE1TJ0xBVm6KNGmarLThebt_6X6eeJNa7Vclammzlg21vTev5H-oCmNAV8yS_QfKFovCALwDfeEJFIbnX9EYOEPgjGxy-dcl_PLOR2BKST0a1KP5dAl6_7cf9Q5eczfoj1nXx9bg2s0NrihqblZOb2ZyW1ZlsklnOceQIrOoiTW8Ra_CZeOiUY-wYgdInlk8dlYKKhdwuxVb7m6Xn4rV4XQu9XcTSBDJWREfPJptt6bbgJkZWif-VJSe_2i6EbfGuPsJIwdFaYntzVY5_CKsET3TVXsGczHuqlXaMwtHVbHfXZxmN3mLYWlVy6y1vbxDHjqc-ZPq7e7zyvXcuo9pMG7KDiQS9mLpVvLGPB6gH13Eo24v_jI4P3t3de1g1zL07mctXB6Qhwy4CrYO6Q7OCkkAlEObApXt1eaH4vfeV752VyK6KxAYKWf8jDzN1BMaWaw9JzW92CePhlkAxj55Ys281GavvSA_7eIfaEQrAKTRgBYApABAmgGQIgApo_mp0x0AUgQgBQBSC0C7KDUApMsFRQBSA0BaBeBLMu6djjt9J-vs4SjQd7HupS9EK21K3m5J7qkgcFUS6FAmoVKpSlwGXJf7wF8UZ2noJ1p6XqCF74lAc81fkb3FcqEPCOU-Y7LNfSV46HIF6jcLYchvC5cLVyaH5CQ_3PjK1m-JQe9FGsRIA3TnBvHokBznBx9nP_gq5iAHwErNNjv68_Rr8rhE8jHZW99s9BuQVdfyrQHEb6hMkdg
linkProvider Flying Publisher
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=1308-P%3A+A+Voice-Based+AI+Algorithm+Can+Predict+Type+2+Diabetes+Status-Findings+from+the+Colive+Voice+Study+on+U.S.+Adult+Participants&rft.jtitle=Diabetes+%28New+York%2C+N.Y.%29&rft.au=Elbeji%2C+Abir&rft.au=Pizzimenti%2C+M%C3%A9gane&rft.au=Aguayo%2C+Gloria+A&rft.au=Fischer%2C+Aurelie&rft.date=2024-06-14&rft.pub=American+Diabetes+Association&rft.issn=0012-1797&rft.eissn=1939-327X&rft.volume=73&rft.spage=1&rft_id=info:doi/10.2337%2Fdb24-1308-P&rft.externalDBID=HAS_PDF_LINK
thumbnail_l http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=0012-1797&client=summon
thumbnail_m http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=0012-1797&client=summon
thumbnail_s http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=0012-1797&client=summon