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打鼾声音分析可检测到特定于 NREM 或 REM 睡眠的阻塞性睡眠呼吸暂停的存在。

Snore Sound Analysis Can Detect the Presence of Obstructive Sleep Apnea Specific to NREM or REM Sleep.

机构信息

School of Information Technology and Electrical Engineering, The University of Queensland, St Lucia, Brisbane, Australia.

Sleep Disorders Centre, Department of Respiratory and Sleep Medicine, Princess Alexandra Hospital, Woolloongabba, Australia.

出版信息

J Clin Sleep Med. 2018 Jun 15;14(6):991-1003. doi: 10.5664/jcsm.7168.

Abstract

STUDY OBJECTIVES

Severities of obstructive sleep apnea (OSA) estimated both for the overall sleep duration and for the time spent in rapid eye movement (REM) and non-rapid eye movement (NREM) sleep are important in managing the disease. The objective of this study is to investigate a method by which snore sounds can be analyzed to detect the presence of OSA in NREM and REM sleep.

METHODS

Using bedside microphones, snoring and breathing-related sounds were acquired from 91 patients with OSA (35 females and 56 males) undergoing routine diagnostic polysomnography studies. A previously developed automated mathematical algorithm was applied to label each snore sound as belonging to either NREM or REM sleep. The snore sounds were then used to compute a set of mathematical features characteristic to OSA and to train a logistic regression model (LRM) to classify patients into an OSA or non-OSA category in each sleep state. The performance of the LRM was estimated using a leave-one-patient-out cross-validation technique within the entire dataset. We used the polysomnography-based diagnosis as our reference method.

RESULTS

The models achieved 80% to 86% accuracy for detecting OSA in NREM sleep and 82% to 85% in REM sleep. When separate models were developed for females and males, the accuracy for detecting OSA in NREM sleep was 91% in females and 88% to 89% in males. Accuracy for detecting OSA in REM sleep was 88% to 91% in females and 89% to 91% in males.

CONCLUSIONS

Snore sounds carry sufficient information to detect the presence of OSA during NREM and REM sleep. Because the methods used include technology that is fully automated and sensors that do not have a physical connection to the patient, it has potential for OSA screening in the home environment. The accuracy of the method can be improved by developing sex-specific models.

摘要

研究目的

评估阻塞性睡眠呼吸暂停(OSA)的严重程度,无论是基于总睡眠时间还是快速眼动(REM)和非快速眼动(NREM)睡眠时间,对于疾病的管理都很重要。本研究的目的是探讨一种通过分析鼾声来检测 NREM 和 REM 睡眠中 OSA 存在的方法。

方法

使用床边麦克风,从 91 名接受常规诊断多导睡眠图研究的 OSA 患者(35 名女性和 56 名男性)中采集打鼾和呼吸相关声音。应用先前开发的自动数学算法将每个鼾声标记为属于 NREM 或 REM 睡眠。然后使用鼾声计算一组与 OSA 特征相关的数学特征,并训练逻辑回归模型(LRM)在每个睡眠状态下将患者分类为 OSA 或非 OSA 类别。在整个数据集内使用每位患者留一交叉验证技术估计 LRM 的性能。我们使用多导睡眠图诊断作为参考方法。

结果

模型在 NREM 睡眠中检测 OSA 的准确率为 80%至 86%,在 REM 睡眠中为 82%至 85%。当为女性和男性分别开发单独的模型时,女性在 NREM 睡眠中检测 OSA 的准确率为 91%,男性为 88%至 89%。在 REM 睡眠中检测 OSA 的准确率在女性中为 88%至 91%,在男性中为 89%至 91%。

结论

鼾声包含足够的信息来检测 NREM 和 REM 睡眠期间 OSA 的存在。由于所使用的方法包括完全自动化的技术和与患者没有物理连接的传感器,因此它有可能在家庭环境中进行 OSA 筛查。通过开发针对特定性别的模型,可以提高该方法的准确性。

相似文献

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Snoring sound classification from respiratory signal.基于呼吸信号的鼾声分类
Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:3215-3218. doi: 10.1109/EMBC.2016.7591413.

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Automatic picking of snore events from overnight breath sound recordings.从夜间呼吸音记录中自动挑选打鼾事件。
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