TY - JOUR
T1 - Workshop summaries from the 2024 voice AI symposium, presented by the Bridge2AI-voice consortium
AU - the Bridge2AI-Voice Consortium
AU - Bahr, Ruth
AU - Anibal, James
AU - Bedrick, Steven
AU - Bélisle-Pipon, Jean Christophe
AU - Bensoussan, Yael
AU - Blaylock, Nate
AU - Castermans, Joris
AU - Comito, Keith
AU - Dorr, David
AU - Hale, Greg
AU - Jackson, Christie
AU - Krussel, Andrea
AU - Kuman, Kimberly
AU - Komarlu, Akash Raj
AU - Lerner-Ellis, Jordan
AU - Powell, Maria
AU - Ravitsky, Vardit
AU - Rameau, Anaïs
AU - Reavis, Charlie
AU - Sigaras, Alexandros
AU - Cruz, Samantha Salvi
AU - Vojtech, Jenny
AU - Urbano, Megan
AU - Watts, Stephanie
AU - Zhao, Robin
AU - Toghranegar, Jamie
N1 - Publisher Copyright:
2024 Bahr, Anibal, Bedrick, Bélisle-Pipon, Bensoussan, Blaylock, Castermans, Comito, Dorr, Hale, Jackson, Krussel, Kuman, Komarlu, Lerner-Ellis, Powell, Ravitsky, Rameau, Reavis, Sigaras, Cruz, Vojtech, Urbano, Watts, Zhao, Toghranegar and the Bridge2AI-Voice Consortium.
PY - 2024
Y1 - 2024
N2 - Introduction: The 2024 Voice AI Symposium, presented by the Bridge2AI-Voice Consortium, featured deep-dive educational workshops conducted by experts from diverse fields to explore the latest advancements in voice biomarkers and artificial intelligence (AI) applications in healthcare. Through five workshops, attendees learned about topics including international standardization of vocal biomarker data, real-world deployment of AI solutions, assistive technologies for voice disorders, best practices for voice data collection, and deep learning applications in voice analysis. These workshops aimed to foster collaboration between academia, industry, and healthcare to advance the development and implementation of voice-based AI tools. Methods: Each workshop featured a combination of lectures, case studies, and interactive discussions. Transcripts of audio recordings were generated using Whisper (Version 7.13.1) and summarized by ChatGPT (Version 4.0), then reviewed by the authors. The workshops covered various methodologies, from signal processing and machine learning operations (MLOps) to ethical concerns surrounding AI-powered voice data collection. Practical demonstrations of AI-driven tools for voice disorder management and technical discussions on implementing voice AI models in clinical and non-clinical settings provided attendees with hands-on experience. Results: Key outcomes included the discussion of international standards to unify stakeholders in vocal biomarker research, practical challenges in deploying AI solutions outside the laboratory, review of Bridge2AI-Voice data collection processes, and the potential of AI to empower individuals with voice disorders. Additionally, presenters shared innovations in ethical AI practices, scalable machine learning frameworks, and advanced data collection techniques using diverse voice datasets. The symposium highlighted the successful integration of AI in detecting and analyzing voice signals for various health applications, with significant advancements in standardization, privacy, and clinical validation processes. Discussion: The symposium underscored the importance of interdisciplinary collaboration to address the technical, ethical, and clinical challenges in the field of voice biomarkers. While AI models have shown promise in analyzing voice data, challenges such as data variability, security, and scalability remain. Future efforts must focus on refining data collection standards, advancing ethical AI practices, and ensuring diverse dataset inclusion to improve model robustness. By fostering collaboration among researchers, clinicians, and technologists, the symposium laid a foundation for future innovations in AI-driven voice analysis for healthcare diagnostics and treatment.
AB - Introduction: The 2024 Voice AI Symposium, presented by the Bridge2AI-Voice Consortium, featured deep-dive educational workshops conducted by experts from diverse fields to explore the latest advancements in voice biomarkers and artificial intelligence (AI) applications in healthcare. Through five workshops, attendees learned about topics including international standardization of vocal biomarker data, real-world deployment of AI solutions, assistive technologies for voice disorders, best practices for voice data collection, and deep learning applications in voice analysis. These workshops aimed to foster collaboration between academia, industry, and healthcare to advance the development and implementation of voice-based AI tools. Methods: Each workshop featured a combination of lectures, case studies, and interactive discussions. Transcripts of audio recordings were generated using Whisper (Version 7.13.1) and summarized by ChatGPT (Version 4.0), then reviewed by the authors. The workshops covered various methodologies, from signal processing and machine learning operations (MLOps) to ethical concerns surrounding AI-powered voice data collection. Practical demonstrations of AI-driven tools for voice disorder management and technical discussions on implementing voice AI models in clinical and non-clinical settings provided attendees with hands-on experience. Results: Key outcomes included the discussion of international standards to unify stakeholders in vocal biomarker research, practical challenges in deploying AI solutions outside the laboratory, review of Bridge2AI-Voice data collection processes, and the potential of AI to empower individuals with voice disorders. Additionally, presenters shared innovations in ethical AI practices, scalable machine learning frameworks, and advanced data collection techniques using diverse voice datasets. The symposium highlighted the successful integration of AI in detecting and analyzing voice signals for various health applications, with significant advancements in standardization, privacy, and clinical validation processes. Discussion: The symposium underscored the importance of interdisciplinary collaboration to address the technical, ethical, and clinical challenges in the field of voice biomarkers. While AI models have shown promise in analyzing voice data, challenges such as data variability, security, and scalability remain. Future efforts must focus on refining data collection standards, advancing ethical AI practices, and ensuring diverse dataset inclusion to improve model robustness. By fostering collaboration among researchers, clinicians, and technologists, the symposium laid a foundation for future innovations in AI-driven voice analysis for healthcare diagnostics and treatment.
KW - artificial intelligence
KW - artificial intelligence—AI
KW - audiomics
KW - Bridge2AI
KW - Bridge2AI-Voice
KW - ethical AI
KW - voice biomarker
KW - voice biomarkers
UR - http://www.scopus.com/inward/record.url?scp=85208926503&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85208926503&partnerID=8YFLogxK
U2 - 10.3389/fdgth.2024.1484818
DO - 10.3389/fdgth.2024.1484818
M3 - Short survey
AN - SCOPUS:85208926503
SN - 2673-253X
VL - 6
JO - Frontiers in Digital Health
JF - Frontiers in Digital Health
M1 - 1484818
ER -