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Muscle Artifact Removal in Ictal Scalp-EEG Based on Blind Source Separation

机译:基于盲源分离的ICTAL头皮-EEG中的肌肉伪影去除

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Electroencephalogram (EEG) recordings are often contaminated with muscle artifacts. These artifacts obscure the EEG and complicate its interpretation or even make the interpretation unfeasible. This paper focuses on the particular context of extraction of low-voltage rapid ictal discharges from ictal scalp-EEG activity cantaminated by muscle artifact. In this context our aim was to evaluate the ability of Independent Component Analysis (ICA) and Canonical Correlation Analysis (CCA), to remove muscle artefacts from surface EEG signals. The efficiency of ICA and CCA to correct the muscular artifact was evaluated both on simulated data and on real data recorded in an epileptic patient. The obtained results show that some ICA methods and CCA removed successfully the muscle artifact without altering the recorded underlying ictal activity.
机译:脑电图(EEG)录音通常被肌肉伪影污染。这些伪影掩盖了脑电图并使其解释或使解释不可行。本文侧重于从肌肉工件颂扬的ICTAL头皮-eEG活性提取低压快速释放的特定背景。在这种情况下,我们的目标是评估独立分析分析(ICA)和规范相关分析(CCA)的能力,从表面EEG信号中除去肌肉人工制品。在模拟数据和记录在癫痫患者中记录的实际数据中评估ICA和CCA效率矫正肌肉伪影的效率。所得结果表明,一些ICA方法和CCA成功地删除了肌肉伪影,而不会改变记录的潜在的ICTAL活动。

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