Control and Intelligent Processing Center of Excellence, School of Electrical and Computer Engineering, College of Engineering, University of Tehran, Tehran, Iran.
Comput Methods Programs Biomed. 2013 Oct;112(1):47-57. doi: 10.1016/j.cmpb.2013.06.007. Epub 2013 Jul 26.
The conventional method for sleep staging is to analyze polysomnograms (PSGs) recorded in a sleep lab. The electroencephalogram (EEG) is one of the most important signals in PSGs but recording and analysis of this signal presents a number of technical challenges, especially at home. Instead, electrocardiograms (ECGs) are much easier to record and may offer an attractive alternative for home sleep monitoring. The heart rate variability (HRV) signal proves suitable for automatic sleep staging. Thirty PSGs from the Sleep Heart Health Study (SHHS) database were used. Three feature sets were extracted from 5- and 0.5-min HRV segments: time-domain features, nonlinear-dynamics features and time-frequency features. The latter was achieved by using empirical mode decomposition (EMD) and discrete wavelet transform (DWT) methods. Normalized energies in important frequency bands of HRV signals were computed using time-frequency methods. ANOVA and t-test were used for statistical evaluations. Automatic sleep staging was based on HRV signal features. The ANOVA followed by a post hoc Bonferroni was used for individual feature assessment. Most features were beneficial for sleep staging. A t-test was used to compare the means of extracted features in 5- and 0.5-min HRV segments. The results showed that the extracted features means were statistically similar for a small number of features. A separability measure showed that time-frequency features, especially EMD features, had larger separation than others. There was not a sizable difference in separability of linear features between 5- and 0.5-min HRV segments but separability of nonlinear features, especially EMD features, decreased in 0.5-min HRV segments. HRV signal features were classified by linear discriminant (LD) and quadratic discriminant (QD) methods. Classification results based on features from 5-min segments surpassed those obtained from 0.5-min segments. The best result was obtained from features using 5-min HRV segments classified by the LD classifier. A combination of linear/nonlinear features from HRV signals is effective in automatic sleep staging. Moreover, time-frequency features are more informative than others. In addition, a separability measure and classification results showed that HRV signal features, especially nonlinear features, extracted from 5-min segments are more discriminative than those from 0.5-min segments in automatic sleep staging.
传统的睡眠分期方法是分析在睡眠实验室中记录的多导睡眠图(PSG)。脑电图(EEG)是 PSG 中最重要的信号之一,但该信号的记录和分析存在许多技术挑战,尤其是在家中。相比之下,心电图(ECG)更容易记录,并且可能是家庭睡眠监测的一种有吸引力的替代方法。心率变异性(HRV)信号非常适合自动睡眠分期。使用睡眠心脏健康研究(SHHS)数据库中的 30 个 PSG。从 5 分钟和 0.5 分钟的 HRV 段中提取了三个特征集:时域特征、非线性动力学特征和时频特征。后者是通过使用经验模态分解(EMD)和离散小波变换(DWT)方法实现的。使用时频方法计算 HRV 信号重要频段的归一化能量。使用 ANOVA 和 t 检验进行统计评估。自动睡眠分期基于 HRV 信号特征。使用方差分析(ANOVA)和事后 Bonferroni 用于单个特征评估。大多数特征都对睡眠分期有益。使用 t 检验比较 5 分钟和 0.5 分钟 HRV 段中提取特征的均值。结果表明,对于少数特征,提取特征的均值在统计学上是相似的。分离度量表明,时频特征,特别是 EMD 特征,比其他特征具有更大的分离度。在 5 分钟和 0.5 分钟 HRV 段之间,线性特征的分离度没有明显差异,但非线性特征的分离度,特别是 EMD 特征,在 0.5 分钟 HRV 段中减小。HRV 信号特征通过线性判别(LD)和二次判别(QD)方法进行分类。基于 5 分钟段特征的分类结果优于基于 0.5 分钟段特征的分类结果。基于使用 5 分钟 HRV 段的特征,使用 LD 分类器进行分类的结果最佳。HRV 信号线性/非线性特征的组合在自动睡眠分期中是有效的。此外,时频特征比其他特征更具信息量。此外,分离度量和分类结果表明,HRV 信号特征,特别是从 5 分钟段提取的非线性特征,在自动睡眠分期中的可分离性优于从 0.5 分钟段提取的特征。