首页> 外文期刊>Annals of Biomedical Engineering: The Journal of the Biomedical Engineering Society >The removal of ocular artifacts from EEG signals using adaptive filters based on ocular source components.
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The removal of ocular artifacts from EEG signals using adaptive filters based on ocular source components.

机译:使用基于眼源成分的自适应滤波器从EEG信号中去除眼部伪影。

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摘要

Ocular artifacts are the most important form of interference in electroencephalogram (EEG) signals. An adaptive filter based on reference signals from an electrooculogram (EOG) can reduce ocular interference, but collecting EOG signals during a long-term EEG recording is inconvenient and uncomfortable for the patient. In contrast, blind source separation (BSS) is a method of decomposing multiple EEG channels into an equal number of source components (SCs) by independent component analysis. The ocular artifacts significantly contribute to some SCs but not others, so uncontaminated EEG signals can be obtained by discarding some or all of the affected SCs and re-mixing the remaining components. BSS can be performed without EOG data. This study presents a novel ocular-artifact removal method based on adaptive filtering using reference signals from the ocular SCs, which avoids the need for parallel EOG recordings. Based on the simulated EEG data derived from eight subjects, the new method achieved lower spectral errors and higher correlations between original uncorrupted samples and corrected samples than the adaptive filter using EOG signals and the standard BSS method, which demonstrated a better ocular-artifact reduction by the proposed method.
机译:眼部伪影是脑电图(EEG)信号中最重要的干扰形式。基于来自眼电图(EOG)的参考信号的自适应滤波器可以减少眼部干扰,但是在长期脑电图记录期间收集EOG信号会给患者带来不便且不舒服。相反,盲源分离(BSS)是通过独立成分分析将多个EEG通道分解为相等数量的源成分(SC)的方法。眼部伪影对某些SC的贡献很大,而对其他SC的贡献不大,因此可以通过丢弃部分或全部受影响的SC并重新混合其余成分来获得未污染的EEG信号。可以在没有EOG数据的情况下执行BSS。这项研究提出了一种新的眼人工伪影去除方法,该方法基于自适应滤波,使用了来自眼SC的参考信号进行自适应滤波,从而避免了对并行EOG记录的需求。与使用EOG信号和标准BSS方法的自适应滤波器相比,该新方法基于从八个对象获得的模拟EEG数据,与未使用EOG信号和标准BSS方法的自适应滤波器相比,在原始未损坏样本和校正样本之间实现了更低的光谱误差以及更高的相关性,这证明了通过建议的方法。

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