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A Low Computational Cost Algorithm for REM Sleep Detection Using Single Channel EEG

机译:一种低计算成本的单通道脑电图快速眼动睡眠检测算法

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摘要

The push towards low-power and wearable sleep systems requires using minimum number of recording channels to enhance battery life, keep processing load small and be more comfortable for the user. Since most sleep stages can be identified using EEG traces, enormous power savings could be achieved by using a single channel of EEG. However, detection of REM sleep from one channel EEG is challenging due to its electroencephalographic similarities with N1 and Wake stages. In this paper we investigate a novel feature in sleep EEG that demonstrates high discriminatory ability for detecting REM phases. We then use this feature, that is based on spectral edge frequency (SEF) in the 8-16 Hz frequency band, together with the absolute power and the relative power of the signal, to develop a simple REM detection algorithm. We evaluate the performance of this proposed algorithm with overnight single channel EEG recordings of 5 training and 15 independent test subjects. Our algorithm achieved sensitivity of 83%, specificity of 89% and selectivity of 61% on a test database consisting of 2221 REM epochs. It also achieved sensitivity and selectivity of 81 and 75% on PhysioNet Sleep-EDF database consisting of 8 subjects. These results demonstrate that SEF can be a useful feature for automatic detection of REM stages of sleep from a single channel EEG.
机译:朝着低功耗和可穿戴睡眠系统的方向发展,要求使用最少数量的记录通道来延长电池寿命,保持较小的处理负荷并使用户更舒适。由于可以使用EEG轨迹识别大多数睡眠阶段,因此通过使用单个EEG通道可以节省大量电能。然而,由于其脑电图与N1和Wake阶段的相似性,因此从一个通道的EEG检测REM睡眠具有挑战性。在本文中,我们研究了睡眠脑电图的一项新功能,该功能证明了对REM阶段的识别能力高。然后,我们基于8-16 Hz频带中的频谱边缘频率(SEF),以及信号的绝对功率和相对功率,使用此功能来开发一种简单的REM检测算法。我们用5个训练和15个独立测试对象的过夜单通道EEG记录评估了该算法的性能。我们的算法在由2221个REM时期组成的测试数据库上实现了83%的灵敏度,89%的特异性和61%的选择性。在由8位受试者组成的PhysioNet Sleep-EDF数据库上,它的灵敏度和选择性也达到了81和75%。这些结果表明,SEF可能是从单通道EEG自动检测REM睡眠阶段的有用功能。

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