由 Bridge2AI-voice 联合会举办的 2024 语音人工智能研讨会摘要。

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2024-10-30 eCollection Date: 2024-01-01 DOI:10.3389/fdgth.2024.1484818
Ruth Bahr, James Anibal, Steven Bedrick, Jean-Christophe Bélisle-Pipon, Yael Bensoussan, Nate Blaylock, Joris Castermans, Keith Comito, David Dorr, Greg Hale, Christie Jackson, Andrea Krussel, Kimberly Kuman, Akash Raj Komarlu, Jordan Lerner-Ellis, Maria Powell, Vardit Ravitsky, Anaïs Rameau, Charlie Reavis, Alexandros Sigaras, Samantha Salvi Cruz, Jenny Vojtech, Megan Urbano, Stephanie Watts, Robin Zhao, Jamie Toghranegar
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引用次数: 0

摘要

简介2024 年语音人工智能研讨会由 Bridge2AI-Voice 联合会主办,由来自不同领域的专家举办深度教育研讨会,探讨语音生物标记和人工智能(AI)在医疗保健领域应用的最新进展。通过五场研讨会,与会者了解到的主题包括声乐生物标记数据的国际标准化、人工智能解决方案的实际部署、嗓音疾病的辅助技术、嗓音数据收集的最佳实践以及深度学习在嗓音分析中的应用。这些研讨会旨在促进学术界、工业界和医疗机构之间的合作,推动基于语音的人工智能工具的开发和实施:每次研讨会都结合了讲座、案例研究和互动讨论。录音誊本使用 Whisper(7.13.1 版)生成,由 ChatGPT(4.0 版)汇总,然后由作者审阅。研讨会涵盖了各种方法,从信号处理和机器学习操作(MLOps)到围绕人工智能语音数据收集的伦理问题。人工智能驱动的语音失调管理工具的实际演示以及在临床和非临床环境中实施语音人工智能模型的技术讨论为与会者提供了实践经验:主要成果包括讨论了统一声乐生物标记物研究利益相关者的国际标准、在实验室外部署人工智能解决方案的实际挑战、Bridge2AI-Voice 数据收集流程回顾,以及人工智能在增强嗓音障碍患者能力方面的潜力。此外,演讲者还分享了人工智能伦理实践、可扩展的机器学习框架以及使用不同语音数据集的先进数据收集技术方面的创新。研讨会强调了人工智能在检测和分析语音信号方面的成功整合,以及在标准化、隐私和临床验证过程中取得的重大进展:研讨会强调了跨学科合作对于解决语音生物标记领域的技术、伦理和临床挑战的重要性。虽然人工智能模型在分析语音数据方面已显示出前景,但数据可变性、安全性和可扩展性等挑战依然存在。未来的工作重点必须是完善数据收集标准、推进人工智能伦理实践,以及确保纳入多样化的数据集以提高模型的稳健性。通过促进研究人员、临床医生和技术专家之间的合作,本次研讨会为人工智能驱动的语音分析在医疗诊断和治疗方面的未来创新奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Workshop summaries from the 2024 voice AI symposium, presented by the Bridge2AI-voice consortium.

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.

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