首页> 外文会议>33rd Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Snoring analysis for the screening of sleep apnea hypopnea syndrome with a single-channel device developed using polysomnographic and snoring databases
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Snoring analysis for the screening of sleep apnea hypopnea syndrome with a single-channel device developed using polysomnographic and snoring databases

机译:使用多导睡眠图和打nor数据库开发的单通道设备进行打nor分析,以筛查睡眠呼吸暂停低通气综合征

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Several studies have shown differences in acoustic snoring characteristics between patients with Sleep Apnea-Hypopnea Syndrome (SAHS) and simple snorers. Usually a few manually isolated snores are analyzed, with an emphasis on postapneic snores in SAHS patients. Automatic analysis of snores can provide objective information over a longer period of sleep. Although some snore detection methods have recently been proposed, they have not yet been applied to full-night analysis devices for screening purposes. We used a new automatic snoring detection and analysis system to monitor snoring during full-night studies to assess whether the acoustic characteristics of snores differ in relation to the Apnea-Hypopnea Index (AHI) and to classify snoring subjects according to their AHI. A complete procedure for device development was designed, using databases with polysomnography (PSG) and snoring signals. This included annotation of many types of episodes by an expert physician: snores, inspiration and exhalation breath sounds, speech and noise artifacts, The AHI of each subject was estimated with classical PSG analysis, as a gold standard. The system was able to correctly classify 77% of subjects in 4 severity levels, based on snoring analysis and sound-based apnea detection. The sensitivity and specificity of the system, to identify healthy subjects from pathologic patients (mild to severe SAHS), were 83% and 100%, respectively. Besides, the Apnea Index (AI) obtained with the system correlated with the obtained by PSG or Respiratory Polygraphy (RP) (r=0.87, p<0.05).
机译:几项研究表明,睡眠呼吸暂停低通气综合征(SAHS)与单纯打nor者之间的声音打nor特征存在差异。通常会分析一些手动隔离的打ore,重点是SAHS患者的呼吸暂停后打sn。打analysis的自动分析可以在更长的睡眠时间内提供客观信息。尽管最近已经提出了一些打sn检测方法,但尚未将其用于筛选的整夜分析设备。我们使用了一种新型的自动打s检测和分析系统,以在整夜研究期间监测打nor,以评估打sn的声学特征是否与呼吸暂停低通气指数(AHI)有关,并根据打A对象对打A进行分类。使用带有多导睡眠图(PSG)和打信号的数据库,设计了用于设备开发的完整程序。其中包括由专家医师对多种发作类型的注释:打sn,吸气和呼气的呼吸音,语音和噪音伪像。通过经典PSG分析估计每个受试者的AHI,作为黄金标准。该系统能够基于打nor分析和基于声音的呼吸暂停检测,将77%的受试者正确分类为4种严重程度。该系统用于从病理患者(轻度至重度SAHS)中识别健康受试者的敏感性和特异性分别为83%和100%。此外,通过该系统获得的呼吸暂停指数(AI)与通过PSG或呼吸描记术(RP)获得的呼吸暂停指数(AI)相关(r = 0.87,p <0.05)。

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