Voice EHR: introducing multimodal audio data for health.

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES Frontiers in digital health Pub Date : 2025-01-28 eCollection Date: 2024-01-01 DOI:10.3389/fdgth.2024.1448351
James Anibal, Hannah Huth, Ming Li, Lindsey Hazen, Veronica Daoud, Dominique Ebedes, Yen Minh Lam, Hang Nguyen, Phuc Vo Hong, Michael Kleinman, Shelley Ost, Christopher Jackson, Laura Sprabery, Cheran Elangovan, Balaji Krishnaiah, Lee Akst, Ioan Lina, Iqbal Elyazar, Lenny Ekawati, Stefan Jansen, Richard Nduwayezu, Charisse Garcia, Jeffrey Plum, Jacqueline Brenner, Miranda Song, Emily Ricotta, David Clifton, C Louise Thwaites, Yael Bensoussan, Bradford Wood
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Abstract

Introduction: Artificial intelligence (AI) models trained on audio data may have the potential to rapidly perform clinical tasks, enhancing medical decision-making and potentially improving outcomes through early detection. Existing technologies depend on limited datasets collected with expensive recording equipment in high-income countries, which challenges deployment in resource-constrained, high-volume settings where audio data may have a profound impact on health equity.

Methods: This report introduces a novel protocol for audio data collection and a corresponding application that captures health information through guided questions.

Results: To demonstrate the potential of Voice EHR as a biomarker of health, initial experiments on data quality and multiple case studies are presented in this report. Large language models (LLMs) were used to compare transcribed Voice EHR data with data (from the same patients) collected through conventional techniques like multiple choice questions. Information contained in the Voice EHR samples was consistently rated as equally or more relevant to a health evaluation.

Discussion: The HEAR application facilitates the collection of an audio electronic health record ("Voice EHR") that may contain complex biomarkers of health from conventional voice/respiratory features, speech patterns, and spoken language with semantic meaning and longitudinal context-potentially compensating for the typical limitations of unimodal clinical datasets.

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语音电子病历:为健康引入多模态音频数据。
导读:经过音频数据训练的人工智能(AI)模型可能有潜力快速执行临床任务,增强医疗决策,并有可能通过早期检测改善结果。现有技术依赖于高收入国家用昂贵的录音设备收集的有限数据集,这对在资源有限、音频数据可能对卫生公平产生深远影响的大容量环境中部署音频数据提出了挑战。方法:本报告介绍了一种用于音频数据收集的新协议和通过引导问题捕获健康信息的相应应用程序。结果:为了证明语音电子病历作为健康生物标志物的潜力,本报告介绍了数据质量的初步实验和多个案例研究。使用大型语言模型(llm)将转录的语音EHR数据与通过选择题等传统技术收集的数据(来自同一患者)进行比较。语音电子病历样本中包含的信息始终被评为与健康评估同等或更相关。讨论:HEAR应用程序促进了音频电子健康记录(“语音EHR”)的收集,该记录可能包含来自传统语音/呼吸特征、语音模式和具有语义和纵向上下文的口语的复杂生物健康标志物,潜在地弥补了单峰临床数据集的典型局限性。
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CiteScore
4.20
自引率
0.00%
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0
审稿时长
13 weeks
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