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首页> 外文期刊>Turkish Journal of Electrical Engineering and Computer Sciences >Automated elimination of EOG artifacts in sleep EEG using regression method
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Automated elimination of EOG artifacts in sleep EEG using regression method

机译:使用回归方法自动消除睡眠EEG中的EOG伪影

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Sleep electroencephalogram (EEG) signal is an important clinical tool for automatic sleep staging process. Sleep EEG signal is effected by artifacts and other biological signal sources, such as electrooculogram (EOG) and electromyogram (EMG), and since it is effected, its clinical utility reduces. Therefore, eliminating EOG artifacts from sleep EEG signal is a major challenge for automatic sleep staging. We have studied the effects of EOG signals on sleep EEG and tried to remove them from the EEG signals by using regression method. The EEG and EOG recordings of seven subjects were obtained from the Sleep Research Laboratory of Meram Medicine Faculty of Necmettin Erbakan University. A dataset consisting of 58 h and 6941 epochs was used in the research. Then, in order to see the consequences of this process, we classified pure sleep EEG and artifact-eliminated EEG signals with artificial neural networks (ANN). The results showed that elimination of EOG artifacts raised the classification accuracy on each subject at a range of 1 % - 1.5 %. However, this increase was obtained for a single parameter. This can be regarded as an important improvement if the whole system is considered. However, different artifact elimination strategies combined with different classification methods for another sleep EEG artifact may give higher accuracy differences between original and purified signals.
机译:睡眠脑电图(EEG)信号是自动睡眠分期过程的重要临床工具。睡眠EEG信号受伪影和其他生物信号源(如眼电图(EOG)和肌电图(EMG))的影响,并且由于受到影响,其临床效用降低。因此,从睡眠EEG信号中消除EOG伪影是自动睡眠分期的主要挑战。我们已经研究了EOG信号对睡眠EEG的影响,并尝试通过回归方法将其从EEG信号中删除。从Necmettin Erbakan大学Meram医学系的睡眠研究实验室获得了七个受试者的EEG和EOG记录。该研究使用了一个由58个小时和6941个纪元组成的数据集。然后,为了查看此过程的后果,我们使用人工神经网络(ANN)对纯睡眠EEG和消除伪影的EEG信号进行了分类。结果表明,消除EOG伪影可在1%-1.5%的范围内提高每个主题的分类精度。但是,此增加是针对单个参数获得的。如果考虑整个系统,这可以被认为是一项重要的改进。但是,将不同的伪影消除策略与另一种睡眠EEG伪影的不同分类方法相结合,可能会在原始信号和纯化信号之间产生更高的精度差异。

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