基于模糊聚类的脑电信号降噪自动分量抑制

C. Bedoya, Daniel Estrada, S. Trujillo, N. Trujillo, David A. Pineda, J. López
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引用次数: 6

摘要

在测量脑反应的技术中,脑电图(EEG)仍然是最受欢迎的获取脑电活动的技术。目前,事件相关电位(ERPs)被用于检测大脑因刺激而产生的电生理反应。由于脑电图具有高时间分辨率和微创性,因此通常采用脑电图测量。然而,脑电图以其高噪音水平而闻名。伪噪声(肌肉运动)是脑电图中最常见和最不受欢迎的噪声源。基本上有两种不同的减少它的方法:(i)用工件(手动)抑制时间窗口。(ii)使用噪声估计算法去除信号中由伪影产生的不确定性成分。典型的;这些算法基于独立分量分析(ICA)。然而,ICA要求合格的医疗人员使用目视检查进行部件剔除,也就是说,他们依赖于受过训练的人员进行视觉伪制品或部件剔除。本文提出了一种基于模糊聚类的零件自动剔除方法。它考虑所有组件的贡献,以便删除那些不需要的元素。该方法支持模仿人类学习过程的决策过程。它不像大多数基于模糊聚类的分类方法那样需要类数作为输入参数,并且可以估计数据之间的相似度,从而实现非迭代过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic component rejection based on fuzzy clustering for noise reduction in electroencephalographic signals
Among the techniques for measuring brain response, Electroencephalography (EEG) remains as the most popular for acquiring electrical brain activity over time. Currently, Event Related Potentials (ERPs) are used to detect electrophysiological responses of the brain due to a stimulus. They are usually measured by EEG due to its high temporal resolution and minimal invasiveness of the procedure. Nevertheless, EEG is well known for its high noise levels. Artifact noise (Muscular movement) is the most common and non-desired source of noise in EEG. There are basically two different ways of reducing it: (i) Suppressing the time windows with artifacts (manually). (ii) Using noise estimation algorithms to remove non-deterministic components produced by artifacts in the signal. Typically; those algorithms are based on Independent Component Analysis (ICA). However, ICA requires performing component rejection by qualified medical personnel using visual inspection, i.e., they are dependent of trained personnel for performing visual artifact or component rejection. In this manuscript a new approach for automatic component rejection based on fuzzy clustering is proposed. It considers the contributions of all components in order to remove those with non-desired elements. The proposed approach supports the decision-making procedure imitating the human learning process. It does not require the number of classes as input parameter as most of the based fuzzy clustering classification methodologies, and estimates the similarity among data leading to a non-iterative process.
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