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HRV and EEG Signal Features for Computer-Aided Detection of Sleep Apnea

机译:HRV和EEG信号功能,用于睡眠呼吸暂停的计算机辅助检测

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Sleep apnea is a disorder in which individuals stop breathing during their sleep. Sleep apnea is categorized as obstructive, central or mixed. As an attempt to advance obstructive sleep apnea treatment, in recent years new techniques for sleep stage classification have been developed by biomedical engineers and clinicians for sensitive and timely detection of sleep disorders. In this paper, we present a compendium of features extracted from polysomnography: data acquired from twenty five patients (21 males and 4 females) suffering from sleep apnea (age: 50 ± 10 years, range 28-68 years). Sleep data were available online from the Physionet database. Time and frequency domain algorithms were applied to 3 biopotentials to extract features as follows: EEG (Hjorth Parameters, Harmonic Hjorth Parameters, Itakura Distance, Detrended Fluctuation Analysis, Relative Energy Band Percent, and Correlation Dimension), EMG (Energy Content), and EOG (Energy Content Band). Heart Rate Variability (HRV) signals were then derived from ECG signals using an Enhanced Hil-bert Transform algorithm. Features extracted from the HRV signals were: R-R statistics (mean, standard deviation, maximum and minimum R-R values), detrended fluctuation analysis parameters, frequency components (LF, HF and LF/HF ratio) and approximate entropy. Results show that trends detected by these features could distinguish between different sleep stages at a highly significant level (p<0.01). These features could prove very helpful in computer-aided detection of sleep apnea.
机译:睡眠呼吸暂停是一种单独的疾病,在他们睡眠期间的人停止呼吸。睡眠呼吸暂停被分类为阻塞性,中央或混合。作为推进阻塞性睡眠呼吸暂停治疗的尝试,近年来,睡眠阶段分类的新技术已经由生物医学工程师和临床医生开发,用于敏感,及时检测睡眠障碍。在本文中,我们提出了一种从多核癌中提取的特征的汇编:从患有睡眠呼吸暂停的二十五名患者(21名男性和4名女性)中获得的数据(年龄:50±10年,范围28-68岁)。睡眠数据可以在MeviceioNet数据库中在线获取。将时间和频率域算法应用于3个生物能递,以提取以下特征:EEG(Hjort参数,谐波Hjort参数,Itakura距离,受损波动分析,相对能源带百分比和相关维度),EMG(能量内容)和EOG (能量内容带)。然后使用增强的HIL-BERT变换算法从ECG信号导出心率变异性(HRV)信号。从HRV信号中提取的功能是:R-R统计(平均值,标准偏差,最小和最小R-R值),波动分析参数,频率分量(LF,HF和LF / HF比率)和近似熵。结果表明,这些特征检测到的趋势可以在非常显着的水平下区分不同的睡眠阶段(P <0.01)。这些特征可以证明对睡眠呼吸暂停的计算机辅助检测非常有用。

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