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Sleep-awake Classification using EEG Band-power-ratios and Complexity Measures

机译:利用EEG带功率比和复杂度措施睡眠唤醒分类

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Single-channel sleep EEG data from eight subjects have been analyzed using Lempel-Ziv complexity measure and alpha-delta and gamma-delta power ratios. Complexity values are consistently high during the waking state for all the subjects and low during the sleep state. Similarly, both the power ratios are high when the subjects are awake and become low during sleep. We have obtained an accuracy of 93.9% in classifying EEG epochs into data corresponding to sleep or awake states. The misclassification is mainly arising from the fact that both the complexity values and the power ratios during the REM sleep state are sometimes comparable to the waking state. By adding another signal such as electromyogram or electrooculogram, one maybe able to minimize the misclassification. The uniqueness of our work is that we have been able to achieve a good accuracy using only one EEG channel, two carefully chosen simple features and a linear classifier.
机译:使用LEMPEL-ZIV复杂度测量和Alpha-Delta和Gamma-Delta功率比,分析了来自八个受试者的单通道睡眠脑电图数据。在睡眠状态期间,复杂性值在发光状态下始终高。同样,当受试者醒来时,功率比在睡眠期间变低。在将EEG时期分类到与睡眠或清醒状态相对应的数据中,我们已经获得了93.9%的准确性。错误分类主要是从REM睡眠状态期间复杂性值和功率比两者有时与发汗状态相媲美。通过添加另一个信号,例如电拍图或电依线图,可以使其能够最小化错误分类。我们工作的独特性是,我们只能使用一个脑电通道实现良好的准确性,两个仔细选择的简单功能和线性分类器。

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