使用智能手机和机器学习连续收集声音来测量咳嗽。

Q1 Computer Science
Digital Biomarkers Pub Date : 2019-12-10 eCollection Date: 2019-09-01 DOI:10.1159/000504666
Lucia Kvapilova, Vladimir Boza, Peter Dubec, Martin Majernik, Jan Bogar, Jamileh Jamison, Jennifer C Goldsack, Duncan J Kimmel, Daniel R Karlin
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引用次数: 46

摘要

背景:尽管研究小组努力开发和实施至少部分自动化,咳嗽计数仍然不切实际。24小时咳嗽频率的分析是一个既定的调节终点,如果以自动化的方式解决,有可能以患者为中心的方式缓解多个24小时期间的咳嗽症状评估,支持开发慢性咳嗽的新治疗方法,这是一个未满足的临床需求。鉴于最近的技术进步,我们提出了一种基于智能手机的客观连续声音收集系统,适用于自动咳嗽检测和分析。两种能力被确定为自然咳嗽评估的必要条件:(1)以连续的方式记录声音(声音收集),(2)从记录的声音中检测咳嗽(咳嗽检测)。方法:这项工作不涉及任何人体受试者测试或试验。对于声音收集,我们设计、构建并验证了一个智能手机声音收集应用程序的技术参数。我们的咳嗽检测工作描述了一个用于声音分析和咳嗽识别的数学模型的发展。将模型的性能与先前公布的商业可用解决方案的结果和人类评分者进行比较。比较的解决方案采用以下方法自动或半自动评估咳嗽:使用带有多个麦克风的动态装置记录24小时声音,自动消除静音,手动记录咳嗽计数。结果:声音收集:该应用程序展示了使用手机内部麦克风连续录制声音的能力;技术验证告知配置技术参数和用户体验参数。咳嗽检测:对于由公开数据创建的数据集,我们的咳嗽识别灵敏度在99.5%特异性预设下为90,在99.9%特异性预设下为75。结论:声音收集:应用程序可靠地收集声音数据,并将其安全地上传到远程服务器以供后续分析;开发的声音数据收集应用程序是迈向未来临床试验的关键的第一步。咳嗽检测:咳嗽检测技术的初步实验产生了令人鼓舞的结果,可应用于未来研究中收集的患者数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Continuous Sound Collection Using Smartphones and Machine Learning to Measure Cough.

Background: Despite the efforts of research groups to develop and implement at least partial automation, cough counting remains impractical. Analysis of 24-h cough frequency is an established regulatory endpoint which, if addressed in an automated manner, has the potential to ease cough symptom evaluation over multiple 24-h periods in a patient-centric way, supporting the development of novel treatments for chronic cough, an unmet clinical need.

Objectives: In light of recent technological advancements, we propose a system based on the use of smartphones for objective continuous sound collection, suitable for automated cough detection and analysis. Two capabilities were identified as necessary for naturalistic cough assessment: (1) recording sound in a continuous manner (sound collection), and (2) detection of coughs from the recorded sound (cough detection).

Methods: This work did not involve any human subject testing or trials. For sound collection, we designed, built, and verified technical parameters of a smartphone application for sound collection. Our cough detection work describes the development of a mathematical model for sound analysis and cough identification. Performance of the model was compared to previously published results of commercially available solutions and to human raters. The compared solutions use the following methods to automatically or semi-automatically assess cough: 24-h sound recording with an ambulatory device with multiple microphones, automatic silence removal, and manual recording review for cough count.

Results: Sound collection: the application demonstrated the ability to continuously record sounds using the phone's internal microphone; the technical verification informed the configuration of the technical and user experience parameters. Cough detection: our cough recognition sensitivity to cough as determined by human listeners was 90 at 99.5% specificity preset and 75 at 99.9% specificity preset for a dataset created from publicly available data.

Conclusions: Sound collection: the application reliably collects sound data and uploads them securely to a remote server for subsequent analysis; the developed sound data collection application is a critical first step toward future incorporation in clinical trials. Cough detection: initial experiments with cough detection techniques yielded encouraging results for application to patient-collected data from future studies.

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来源期刊
Digital Biomarkers
Digital Biomarkers Medicine-Medicine (miscellaneous)
CiteScore
10.60
自引率
0.00%
发文量
12
审稿时长
23 weeks
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