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基于睡眠开始至睡眠结束期间记录的呼吸音预测阻塞性睡眠呼吸暂停。

Prediction of Obstructive Sleep Apnea Based on Respiratory Sounds Recorded Between Sleep Onset and Sleep Offset.

作者信息

Kim Jeong-Whun, Kim Taehoon, Shin Jaeyoung, Choe Goun, Lim Hyun Jung, Rhee Chae-Seo, Lee Kyogu, Cho Sung-Woo

机构信息

Department of Otorhinolaryngology-Head and Neck Surgery, Seoul National University Bundang Hospital, Seoul National University College of Medicine, Seongnam, Korea.

Music and Audio Research Group, Graduate School of Convergence Science and Technology, Seoul National University, Seoul, Korea.

出版信息

Clin Exp Otorhinolaryngol. 2019 Feb;12(1):72-78. doi: 10.21053/ceo.2018.00388. Epub 2018 Sep 8.

Abstract

OBJECTIVES

To develop a simple algorithm for prescreening of obstructive sleep apnea (OSA) on the basis of respiratory sounds recorded during polysomnography during all sleep stages between sleep onset and offset.

METHODS

Patients who underwent attended, in-laboratory, full-night polysomnography were included. For all patients, audio recordings were performed with an air-conduction microphone during polysomnography. Analyses included all sleep stages (i.e., N1, N2, N3, rapid eye movement, and waking). After noise reduction preprocessing, data were segmented into 5-s windows and sound features were extracted. Prediction models were established and validated with 10-fold cross-validation by using simple logistic regression. Binary classifications were separately conducted for three different threshold criteria at apnea hypopnea index (AHI) of 5, 15, or 30. Prediction model characteristics, including accuracy, sensitivity, specificity, positive predictive value (precision), negative predictive value, and area under the curve (AUC) of the receiver operating characteristic were computed.

RESULTS

A total of 116 subjects were included; their mean age, body mass index, and AHI were 50.4 years, 25.5 kg/m2 , and 23.0/hr, respectively. A total of 508 sound features were extracted from respiratory sounds recorded throughout sleep. Accuracies of binary classifiers at AHIs of 5, 15, and 30 were 82.7%, 84.4%, and 85.3%, respectively. Prediction performances for the classifiers at AHIs of 5, 15, and 30 were AUC, 0.83, 0.901, and 0.91; sensitivity, 87.5%, 81.6%, and 60%; and specificity, 67.8%, 87.5%, and 94.1%. Respective precision values of the classifiers were 89.5%, 87.5%, and 78.2% for AHIs of 5, 15, and 30.

CONCLUSION

This study showed that our binary classifier predicted patients with AHI of ≥15 with sensitivity and specificity of >80% by using respiratory sounds during sleep. Since our prediction model included all sleep stage data, algorithms based on respiratory sounds may have a high value for prescreening OSA with mobile devices.

摘要

目的

基于睡眠开始至结束期间多导睡眠图记录的呼吸音,开发一种用于阻塞性睡眠呼吸暂停(OSA)预筛查的简单算法。

方法

纳入在实验室接受全程监测的全夜多导睡眠图检查的患者。对所有患者,在多导睡眠图检查期间使用气导麦克风进行音频记录。分析包括所有睡眠阶段(即N1、N2、N3、快速眼动期和清醒期)。经过降噪预处理后,将数据分割为5秒的窗口并提取声音特征。通过简单逻辑回归建立预测模型并采用10折交叉验证进行验证。在呼吸暂停低通气指数(AHI)为5、15或30时,针对三种不同的阈值标准分别进行二元分类。计算预测模型的特征,包括准确率、敏感性、特异性、阳性预测值(精确率)、阴性预测值以及受试者工作特征曲线下面积(AUC)。

结果

共纳入116名受试者;他们的平均年龄、体重指数和AHI分别为50.4岁、25.5kg/m²和23.0次/小时。从整个睡眠期间记录的呼吸音中总共提取了508个声音特征。AHI为5、15和30时二元分类器的准确率分别为82.7%、84.4%和85.3%。AHI为5、15和30时分类器的预测性能分别为:AUC为0.83、0.901和0.91;敏感性为87.5%、81.6%和60%;特异性为67.8%、87.5%和94.1%。AHI为5、15和30时分类器各自的精确率值分别为89.5%、87.5%和78.2%。

结论

本研究表明,我们的二元分类器通过使用睡眠期间的呼吸音,对AHI≥15的患者进行预测,其敏感性和特异性均>80%。由于我们的预测模型纳入了所有睡眠阶段的数据,基于呼吸音的算法可能在使用移动设备对OSA进行预筛查方面具有很高的价值。

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