Real-Time Cardiac Artifact Removal from EEG Using a Hybrid Approach

Aysa Jafarifarmand, M. Badamchizadeh
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引用次数: 3

Abstract

BACKGROUND: Electroencephalogram (EEG) signals are sometimes contaminated by cardiac artifacts (CAs). The artifacts resulted by electrical activities of heart, named electrocardiogram (ECG), appear in EEG recordings as spiky potentials that may obscure the information in EEG data and reduce their interpretability. OBJECTIVE: Real-time removal of CAs is of great importance in several applications of EEG, and particularly brain-computer interface (BCI). The process is, however, often neglected due to the time-consuming computations. METHODS: This paper applies a new real-time hybrid approach to remove ECG artifacts from EEG signals. The method is based on the combination of independent component analysis (ICA) and adaptive noise cancellation (ANC), referred to as ICA-ANC. ICA is applied to a few EEG signals in order to extract the reference signal for ANC. The method so utilizes a few EEG channels without synchronous ECG channel, and thus is suited to portable BCI applications. RESULTS: ICA-ANC is evaluated for datasets of five different subjects. CAs are efficiently removed while preserving the cerebral information. The approach is shown to outperform a state of the art method. CONCLUSION: The proposed new algorithm is capable of real-time cardiac artifacts removal using a few EEG channels.
利用混合方法实时去除脑电图中的心脏伪影
背景:脑电图(EEG)信号有时会受到心脏伪影(CAs)的污染。由心脏电活动产生的伪影,称为心电图(ECG),在脑电图记录中以尖峰电位的形式出现,这可能会模糊脑电图数据中的信息并降低其可解释性。目的:实时去除脑内脑区在脑电图的一些应用中,特别是脑机接口(BCI)中非常重要。然而,由于计算时间长,这个过程经常被忽略。方法:采用一种新的实时混合方法从脑电信号中去除心电伪影。该方法基于独立分量分析(ICA)和自适应噪声消除(ANC)相结合的方法,简称ICA-ANC。将ICA应用于少量的脑电信号中,提取出ANC的参考信号。该方法利用了较少的脑电通道,无需同步心电通道,适合便携式脑机接口应用。结果:ICA-ANC对5个不同受试者的数据集进行了评估。在保留大脑信息的同时有效地去除ca。这种方法被证明比最先进的方法更有效。结论:所提出的新算法能够利用少量脑电信号通道实时去除心脏伪影。
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