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Obstructive Sleep Apnea (OSA) Classification using Analysis of Breathing Sounds During Speech

机译:妨碍睡眠呼吸暂停(OSA)分类使用呼吸声音分析

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Obstructive sleep apnea (OSA) is a sleep disorder in which pharyngeal collapse during sleep, causes a complete or partial airway obstruction. OSA is common and can have severe impacts, but often remains unrecognized. In this study, we propose a novel method which able to detect OSA subjects while they are awake, by analyzing breathing sounds during speech. The hypothesis is that OSA is associated with anatomical andfunctional abnormalities of the upper airway, which in turn, affect the acoustic parameters of a natural breathing sound during speech. The proposed OSA detector is a fully automated system, which consists of three consecutive steps including: 1) locating breathing sounds during continuous speech, 2) extracting acoustic features that quantify the breathing properties, and 3) OSA/non-OSA classification based on the detected breathing sounds. Based on breathing sounds analysis alone (90 male subjects; 72 for training, 18 for validation), our system yields an encouraging results (accuracy of 76.5%) showing the potential of speech analysis to detect OSA. Such a system can be integrated with other non-contact OSA detectors to provide a reliable and OSA syndrome-screening tool.
机译:阻塞性睡眠呼吸暂停(OSA)是睡眠期间咽部塌陷的睡眠障碍,导致完整或部分气道阻塞。 OSA是常见的并且可能产生严重影响,但通常仍然无法识别。在这项研究中,我们提出了一种新的方法,可以通过分析演讲中的呼吸声来检测OSA受试者。假设是OSA与上呼吸道的解剖学和功能异常相关,这又影响了语音期间自然呼吸声的声学参数。所提出的OSA检测器是一个全自动系统,它由三个连续步骤组成,包括:1)在连续语音期间定位呼吸声,2)提取量化呼吸特性的声学特征,以及3)基于以下的OSA /非OSA分类。检测到呼吸声。仅基于呼吸声分析单独分析(90名男性受试者; 72训练,18次验证),我们的系统产生了令人鼓舞的结果(准确性为76.5%),显示出言语分析检测OSA的潜力。这种系统可以与其他非联系OSA检测器集成,以提供可靠和OSA综合征筛选工具。

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