Fully automated unsupervised artefact removal in multichannel electroencephalogram using wavelet-independent component analysis with density-based spatial clustering of application with noise

Chong Yeh Sai, N. Mokhtar, M. Iwahashi, P. Cumming, H. Arof
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引用次数: 2

Abstract

Faculty Grant University of Malaya, Grant/Award Number: GPF062A‐2018; Ministry of Higher Education, Malaysia, Grant/Award Number: UM.C/ HIR/MOHE/ENG/16; Universiti Malaya, Grant/ Award Number: PG260‐2015B; JSPS KAKENHI, Grant/Award Number: JP21K11934 Abstract Electroencephalography (EEG) is a method for recording electrical activities arising from the cortical surface of the brain, which has found wide applications not just in clinical medicine, but also in neuroscience research and studies of Brain‐Computer Interface (BCI). However, EEG recordings often suffer from distortions due to artefactual components that degrade the true EEG signals. Artefactual components are any unwanted signals recorded in the EEG spectrum that originate from sources other than the neurophysiological activity of the human brain. Examples of the origin of artefactual components include eye blinking, facial or scalp muscles activities, and electrode slippage. Techniques for automated artefact removal such as Wavelet Transform and Independent Component Analysis (ICA) have been used to remove or reduce the effect of artefactual components on the EEG signals. However, detecting or identifying the signal artefacts to be removed presents a great challenge, as EEG signal properties vary between individuals and age groups. Techniques that rely on some arbitrarily defined threshold often fail to identify accurately the signal artefacts in a given dataset. In this study, a method is proposed using unsupervised machine learning coupled with Wavelet‐ICA to remove EEG artefacts. Using Density‐Based Spatial Clustering of Application with Noise (DBSCAN), a classification accuracy of 97.9% is achieved in identifying artefactual components. DBSCAN achieved excellent and robust performance in identifying artefactual components during the Wavelet‐ICA process, especially in consideration of the low‐density nature of typical artefactual signals. This new hybrid method provides a scalable and unsupervised solution for automated artefact removal that should be applicable for a wide range of EEG data types.
基于小波独立分量分析的多通道脑电图全自动无监督伪影去除与噪声应用的密度空间聚类
马来亚大学教师资助,资助/奖励编号:GPF062A‐2018;马来西亚高等教育部,资助/奖励编号:UM.C/ HIR/MOHE/ENG/16;马来亚大学,资助/奖励编号:PG260‐2015B;摘要脑电图(EEG)是一种记录大脑皮层表面电活动的方法,不仅在临床医学中广泛应用,而且在神经科学研究和脑机接口(BCI)研究中也有广泛的应用。然而,由于人工成分降低了真实的EEG信号,因此EEG记录经常受到失真的影响。人造成分是脑电图频谱中记录的任何不需要的信号,这些信号来自人脑神经生理活动以外的来源。人造成分的来源包括眨眼、面部或头皮肌肉活动和电极滑动。小波变换和独立分量分析(ICA)等人工信号自动去除技术已被用于去除或减少人工信号对脑电信号的影响。然而,检测或识别要去除的信号伪影是一个很大的挑战,因为脑电图信号的特性在个体和年龄组之间是不同的。依赖于一些任意定义的阈值的技术通常无法准确识别给定数据集中的信号伪影。在这项研究中,提出了一种使用无监督机器学习与小波ICA相结合的方法来去除EEG伪影。使用基于密度的噪声应用空间聚类(DBSCAN),识别人工成分的分类准确率达到97.9%。在小波- ICA过程中,DBSCAN在识别伪信号方面取得了优异的鲁棒性,特别是考虑到典型伪信号的低密度特性。这种新的混合方法为自动去除伪影提供了一种可扩展的无监督解决方案,适用于广泛的EEG数据类型。
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