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Development of Automated Sleep Stage Classification System Using Multivariate Projection-Based Fixed Boundary Empirical Wavelet Transform and Entropy Features Extracted from Multichannel EEG Signals

机译:使用基于多变量投影的固定边界经验小波变换和从多机组EEG信号提取的自动睡眠阶段分类系统的开发

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摘要

The categorization of sleep stages helps to diagnose different sleep-related ailments. In this paper, an entropy-based information–theoretic approach is introduced for the automated categorization of sleep stages using multi-channel electroencephalogram (EEG) signals. This approach comprises of three stages. First, the decomposition of multi-channel EEG signals into sub-band signals or modes is performed using a novel multivariate projection-based fixed boundary empirical wavelet transform (MPFBEWT) filter bank. Second, entropy features such as bubble and dispersion entropies are computed from the modes of multi-channel EEG signals. Third, a hybrid learning classifier based on class-specific residuals using sparse representation and distances from nearest neighbors is used to categorize sleep stages automatically using entropy-based features computed from MPFBEWT domain modes of multi-channel EEG signals. The proposed approach is evaluated using the multi-channel EEG signals obtained from the cyclic alternating pattern (CAP) sleep database. Our results reveal that the proposed sleep staging approach has obtained accuracies of 91.77%, 88.14%, 80.13%, and 73.88% for the automated categorization of wake vs. sleep, wake vs. rapid eye movement (REM) vs. Non-REM, wake vs. light sleep vs. deep sleep vs. REM sleep, and wake vs. S1-sleep vs. S2-sleep vs. S3-sleep vs. REM sleep schemes, respectively. The developed method has obtained the highest overall accuracy compared to the state-of-art approaches and is ready to be tested with more subjects before clinical application.
机译:睡眠阶段的分类有助于诊断不同的睡眠相关的疾病。在本文中,引入了一种基于熵的信息理论方法,用于使用多通道脑电图(EEG)信号自动分类睡眠阶段。这种方法包括三个阶段。首先,使用基于新的基于多变量投影的固定边界经验小波变换(MPFBEWT)滤波器来执行多通道EEG信号到子带信号或模式的分解。其次,从多通道EEG信号的模式计算熵特征,例如气泡和分散熵。第三,基于使用稀疏表示和距离最近邻居的距离的特定类残差的混合学习分类器用于自动使用从多通道EEG信号的MPFBewt域模式计算的基于熵的特征自动对睡眠阶段进行分类。使用从循环交替模式(帽)睡眠数据库获得的多通道EEG信号来评估所提出的方法。我们的研究结果表明,该睡眠分期方法的准确性为91.77%,88.14%,80.13%和73.88%,用于尾尾,睡眠与睡眠,快速眼球(REM)与非REM,唤醒与光睡眠与深睡眠与REM睡眠,以及尾瓣与S2睡眠与S3-Sleep与S3-Sleep与S3-Sleep Vs.Ax.Rem睡眠方案。与最先进的方法相比,开发方法获得了最高的总体精度,并准备在临床应用前用更多受试者进行测试。

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