The Bridge2AI-voice application: initial feasibility study of voice data acquisition through mobile health.

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2025-04-15 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1514971
Elijah Moothedan, Micah Boyer, Stephanie Watts, Yassmeen Abdel-Aty, Satrajit Ghosh, Anaïs Rameau, Alexandros Sigaras, Olivier Elemento, Yael Bensoussan
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引用次数: 0

Abstract

Introduction: Bridge2AI-Voice, a collaborative multi-institutional consortium, aims to generate a large-scale, ethically sourced voice, speech, and cough database linked to health metadata in order to support AI-driven research. A novel smartphone application, the Bridge2AI-Voice app, was created to collect standardized recordings of acoustic tasks, validated patient questionnaires, and validated patient reported outcomes. Before broad data collection, a feasibility study was undertaken to assess the viability of the app in a clinical setting through task performance metrics and participant feedback.

Materials & methods: Participants were recruited from a tertiary academic voice center. Participants were instructed to complete a series of tasks through the application on an iPad. The Plan-Do-Study-Act model for quality improvement was implemented. Data collected included demographics and task metrics including time of completion, successful task/recording completion, and need for assistance. Participant feedback was measured by a qualitative interview adapted from the Mobile App Rating Scale.

Results: Forty-seven participants were enrolled (61% female, 92% reported primary language of English, mean age of 58.3 years). All owned smart devices, with 49% using mobile health apps. Overall task completion rate was 68%, with acoustic tasks successfully recorded in 41% of cases. Participants requested assistance in 41% of successfully completed tasks, with challenges mainly related to design and instruction understandability. Interview responses reflected favorable perception of voice-screening apps and their features.

Conclusion: Findings suggest that the Bridge2AI-Voice application is a promising tool for voice data acquisition in a clinical setting. However, development of improved User Interface/User Experience and broader, diverse feasibility studies are needed for a usable tool.Level of evidence: 3.

Bridge2AI-voice应用:通过移动医疗获取语音数据的初步可行性研究。
简介:Bridge2AI-Voice是一个多机构合作联盟,旨在生成与健康元数据相关联的大规模、道德来源的声音、语音和咳嗽数据库,以支持人工智能驱动的研究。一款名为Bridge2AI-Voice的新型智能手机应用程序可以收集声学任务的标准化录音,验证患者问卷,并验证患者报告的结果。在广泛的数据收集之前,进行了可行性研究,通过任务绩效指标和参与者反馈来评估应用程序在临床环境中的可行性。材料与方法:研究对象来自某高等学术语音中心。参与者被要求通过iPad上的应用程序完成一系列任务。实施计划-执行-研究-行动质量改进模式。收集的数据包括人口统计数据和任务指标,包括完成时间、成功完成任务/记录以及需要帮助。参与者的反馈是通过移动应用评级量表进行的定性访谈来衡量的。结果:纳入47名参与者(61%为女性,92%报告主要语言为英语,平均年龄58.3岁)。所有人都拥有智能设备,49%的人使用移动健康应用程序。总体任务完成率为68%,其中41%的案例成功记录了声学任务。在41%的成功完成任务的参与者中,请求帮助的挑战主要与设计和指令的可理解性有关。受访者的回答反映出对语音筛选应用及其功能的好感。结论:研究结果表明,Bridge2AI-Voice应用程序是临床环境中语音数据采集的有前途的工具。然而,开发一个可用的工具需要改进用户界面/用户体验和更广泛、多样化的可行性研究。证据等级:3。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.20
自引率
0.00%
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审稿时长
13 weeks
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