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智能手机音频记录中夜间哮喘性咳嗽及咳嗽发作的自动识别、分割与性别判定:观察性现场研究

Automatic Recognition, Segmentation, and Sex Assignment of Nocturnal Asthmatic Coughs and Cough Epochs in Smartphone Audio Recordings: Observational Field Study.

作者信息

Barata Filipe, Tinschert Peter, Rassouli Frank, Steurer-Stey Claudia, Fleisch Elgar, Puhan Milo Alan, Brutsche Martin, Kotz David, Kowatsch Tobias

机构信息

Center for Digital Health Interventions, Department of Management, Technology, and Economics, ETH Zurich, Zurich, Switzerland.

Center for Digital Health Interventions, Institute of Technology Management, University of St. Gallen, St. Gallen, Switzerland.

出版信息

J Med Internet Res. 2020 Jul 14;22(7):e18082. doi: 10.2196/18082.

Abstract

BACKGROUND

Asthma is one of the most prevalent chronic respiratory diseases. Despite increased investment in treatment, little progress has been made in the early recognition and treatment of asthma exacerbations over the last decade. Nocturnal cough monitoring may provide an opportunity to identify patients at risk for imminent exacerbations. Recently developed approaches enable smartphone-based cough monitoring. These approaches, however, have not undergone longitudinal overnight testing nor have they been specifically evaluated in the context of asthma. Also, the problem of distinguishing partner coughs from patient coughs when two or more people are sleeping in the same room using contact-free audio recordings remains unsolved.

OBJECTIVE

The objective of this study was to evaluate the automatic recognition and segmentation of nocturnal asthmatic coughs and cough epochs in smartphone-based audio recordings that were collected in the field. We also aimed to distinguish partner coughs from patient coughs in contact-free audio recordings by classifying coughs based on sex.

METHODS

We used a convolutional neural network model that we had developed in previous work for automated cough recognition. We further used techniques (such as ensemble learning, minibatch balancing, and thresholding) to address the imbalance in the data set. We evaluated the classifier in a classification task and a segmentation task. The cough-recognition classifier served as the basis for the cough-segmentation classifier from continuous audio recordings. We compared automated cough and cough-epoch counts to human-annotated cough and cough-epoch counts. We employed Gaussian mixture models to build a classifier for cough and cough-epoch signals based on sex.

RESULTS

We recorded audio data from 94 adults with asthma (overall: mean 43 years; SD 16 years; female: 54/94, 57%; male 40/94, 43%). Audio data were recorded by each participant in their everyday environment using a smartphone placed next to their bed; recordings were made over a period of 28 nights. Out of 704,697 sounds, we identified 30,304 sounds as coughs. A total of 26,166 coughs occurred without a 2-second pause between coughs, yielding 8238 cough epochs. The ensemble classifier performed well with a Matthews correlation coefficient of 92% in a pure classification task and achieved comparable cough counts to that of human annotators in the segmentation of coughing. The count difference between automated and human-annotated coughs was a mean -0.1 (95% CI -12.11, 11.91) coughs. The count difference between automated and human-annotated cough epochs was a mean 0.24 (95% CI -3.67, 4.15) cough epochs. The Gaussian mixture model cough epoch-based sex classification performed best yielding an accuracy of 83%.

CONCLUSIONS

Our study showed longitudinal nocturnal cough and cough-epoch recognition from nightly recorded smartphone-based audio from adults with asthma. The model distinguishes partner cough from patient cough in contact-free recordings by identifying cough and cough-epoch signals that correspond to the sex of the patient. This research represents a step towards enabling passive and scalable cough monitoring for adults with asthma.

摘要

背景

哮喘是最常见的慢性呼吸道疾病之一。尽管在治疗方面的投入有所增加,但在过去十年中,哮喘急性加重的早期识别和治疗进展甚微。夜间咳嗽监测可能为识别即将急性加重的患者提供机会。最近开发的方法能够实现基于智能手机的咳嗽监测。然而,这些方法尚未经过纵向的夜间测试,也未在哮喘背景下进行专门评估。此外,当两人或多人在同一房间睡觉时,使用非接触式录音区分伴侣咳嗽和患者咳嗽的问题仍未解决。

目的

本研究的目的是评估基于智能手机的现场录音中夜间哮喘咳嗽和咳嗽发作期的自动识别与分割。我们还旨在通过基于性别的咳嗽分类,在非接触式录音中区分伴侣咳嗽和患者咳嗽。

方法

我们使用了在先前工作中开发的用于自动咳嗽识别的卷积神经网络模型。我们进一步使用了诸如集成学习、小批量平衡和阈值处理等技术来解决数据集中的不平衡问题。我们在分类任务和分割任务中评估了分类器。咳嗽识别分类器是连续音频记录中咳嗽分割分类器的基础。我们将自动咳嗽和咳嗽发作期计数与人工标注的咳嗽和咳嗽发作期计数进行了比较。我们采用高斯混合模型构建基于性别的咳嗽和咳嗽发作期信号分类器。

结果

我们记录了94名成年哮喘患者的音频数据(总体:平均43岁;标准差16岁;女性:54/94,57%;男性40/94,43%)。每位参与者在其日常环境中使用放在床边的智能手机进行音频数据记录;记录持续28个晚上。在704,697个声音中,我们将30,304个声音识别为咳嗽。共有26,166次咳嗽在两次咳嗽之间没有2秒的停顿,产生了8238个咳嗽发作期。在纯分类任务中,集成分类器表现良好,马修斯相关系数为92%,在咳嗽分割中实现了与人工标注者相当的咳嗽计数。自动咳嗽和人工标注咳嗽之间的计数差异平均为-0.1(95%置信区间-12.11,11.91)次咳嗽。自动咳嗽发作期和人工标注咳嗽发作期之间的计数差异平均为0.24(95%置信区间-3.67,4.15)个咳嗽发作期。基于高斯混合模型的咳嗽发作期性别分类表现最佳,准确率为83%。

结论

我们的研究展示了从成年哮喘患者夜间基于智能手机的录音中进行纵向夜间咳嗽和咳嗽发作期识别。该模型通过识别与患者性别对应的咳嗽和咳嗽发作期信号,在非接触式录音中区分伴侣咳嗽和患者咳嗽。这项研究朝着实现对成年哮喘患者进行被动且可扩展的咳嗽监测迈出了一步。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6d6a/7388043/99e389b81849/jmir_v22i7e18082_fig1.jpg

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