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阻塞性睡眠呼吸暂停患者鼾声发作内声学特征的隐马尔可夫模型

Hidden Markov modelling of intra-snore episode behavior of acoustic characteristics of obstructive sleep apnea patients.

作者信息

Herath Dulip L, Abeyratne Udantha R, Hukins Craig

机构信息

Information Technology & Electrical Engineering, The University of Queensland, 4072, Australia.

出版信息

Physiol Meas. 2015 Dec;36(12):2379-404. doi: 10.1088/0967-3334/36/12/2379. Epub 2015 Oct 26.

Abstract

Obstructive sleep apnea (OSA) is a breathing disorder that can cause serious medical consequences. It is caused by full (apnea) or partial (hypopnea) obstructions of the upper airway during sleep. The gold standard for diagnosis of OSA is the polysomnography (PSG). The main measure for OSA diagnosis is the apnea-hypopnea index (AHI). However, the AHI is a time averaged summary measure of vast amounts of information gathered in an overnight PSG study. It cannot capture the dynamic characteristics associated with apnea/hypopnea events and their overnight distribution. The dynamic characteristics of apnea/hypopnea events are affected by the structural and functional characteristics of the upper airway. The upper airway characteristics also affect the upper airway collapsibility. These effects are manifested in snoring sounds generated from the vibrations of upper airway structures which are then modified by the upper airway geometric and physical characteristics. Hence, it is highly likely that the acoustical behavior of snoring is affected by the upper airway structural and functional characteristics. In the current work, we propose a novel method to model the intra-snore episode behavior of the acoustic characteristics of snoring sounds which can indirectly describe the instantaneous and temporal dynamics of the upper airway. We model the intra-snore episode acoustical behavior by using hidden Markov models (HMMs) with Mel frequency cepstral coefficients. Assuming significant differences in the anatomical and physiological upper airway configurations between low-AHI and high-AHI subjects, we defined different snorer groups with respect to AHI thresholds 15 and 30 and also developed HMM-based classifiers to classify snore episodes into those groups. We also define a measure called instantaneous apneaness score (IAS) in terms of the log-likelihoods produced by respective HMMs. IAS indicates the degree of class membership of each episode to one of the predefined groups as well as the instantaneous OSA severity. We then assigned each patient to an overall AHI band based on the majority vote of each episode of snoring. The proposed method has a diagnostic sensitivity and specificity between 87-91%.

摘要

阻塞性睡眠呼吸暂停(OSA)是一种可导致严重医学后果的呼吸障碍。它是由睡眠期间上呼吸道的完全(呼吸暂停)或部分(呼吸不足)阻塞引起的。OSA诊断的金标准是多导睡眠图(PSG)。OSA诊断的主要指标是呼吸暂停低通气指数(AHI)。然而,AHI是在整夜PSG研究中收集的大量信息的时间平均汇总指标。它无法捕捉与呼吸暂停/低通气事件及其整夜分布相关的动态特征。呼吸暂停/低通气事件的动态特征受上呼吸道的结构和功能特征影响。上呼吸道特征也会影响上呼吸道的可塌陷性。这些影响表现为上呼吸道结构振动产生的打鼾声,然后由上呼吸道的几何和物理特征进行改变。因此,打鼾的声学行为很可能受到上呼吸道结构和功能特征的影响。在当前工作中,我们提出了一种新颖的方法来模拟打鼾声音声学特征的鼾声内发作行为,该方法可以间接描述上呼吸道的瞬时和时间动态。我们使用具有梅尔频率倒谱系数的隐马尔可夫模型(HMM)来模拟鼾声内发作的声学行为。假设低AHI和高AHI受试者在上呼吸道解剖和生理结构上存在显著差异,我们根据AHI阈值15和30定义了不同的打鼾者组,并开发了基于HMM的分类器将打鼾发作分类到这些组中。我们还根据各个HMM产生的对数似然定义了一种称为瞬时呼吸暂停评分(IAS)的指标。IAS表示每个发作属于预定义组之一的程度以及瞬时OSA严重程度。然后,我们根据每次打鼾发作的多数投票将每位患者分配到一个总体AHI频段。所提出的方法具有87 - 91%的诊断敏感性和特异性。

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