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Detection and Removal of Muscle Artifacts from Scalp EEG Recordings in Patients with Epilepsy

机译:癫痫患者头皮脑电图记录中的肌肉伪影的检测和去除

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The Electroencephalogram (EEG) is often contaminated by muscle artifacts. EEG is a widely used recording technique for the study of many brain related diseases such as epilepsy. The detection and removal of muscle artifacts from the EEG signal poses a real challenge and is crucial for the reliable interpretation of EEG-based quantitative measures. In this paper, an automatic method for detection and removal of muscle artifacts from scalp EEG recordings, based on canonical correlation analysis (CCA), is introduced. To this end we exploit the fact that the EEG signal may exhibit altered autocorrelation structure and spectral characteristics during periods when it is contaminated by muscle activity. Therefore, we design classifiers in order to automatically discriminate between contaminated and non-contaminated EEG epochs using features based on the aforementioned quantities and examine their performance on simulated data and in scalp EEG recordings obtained from patients with epilepsy.
机译:脑电图(EEG)通常被肌肉伪影污染。脑电图是一种广泛使用的记录技术,用于研究许多与脑有关的疾病,例如癫痫病。从EEG信号中检测和消除肌肉伪影构成了一个真正的挑战,对于可靠地解释基于EEG的定量测量方法至关重要。在本文中,介绍了一种基于规范相关分析(CCA)的从头皮脑电图记录中检测和去除肌肉伪影的自动方法。为此,我们利用了以下事实:在被肌肉活动污染的期间,EEG信号可能表现出变化的自相关结构和频谱特性。因此,我们设计分类器,以便基于上述数量使用特征自动区分受污染和未受污染的脑电图时代,并检查其在模拟数据和从癫痫患者获得的头皮脑电图记录中的性能。

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