College of Science and Engineering, Flinders University, Adelaide, Australia; Medical Device Research Institute, Flinders University, Adelaide, Australia.
College of Science and Engineering, Flinders University, Adelaide, Australia; Medical Device Research Institute, Flinders University, Adelaide, Australia; Centre for Neuroscience, College of Medicine and Public Health, Flinders University, Adelaide, Australia.
Clin Neurophysiol. 2020 Jan;131(1):6-24. doi: 10.1016/j.clinph.2019.09.016. Epub 2019 Nov 4.
To present a new, automated and fast artefact-removal approach which significantly reduces the effect of contamination in scalp electrical recordings.
We used spectral and temporal characteristics of different sources recorded during a typical scalp electrical recording in order to improve a fast and effective artefact removal approach. Our experiments show that correlation coefficient and spectral gradient of brain components differ from artefactual components. We trained two binary support vector machine classifiers such that one separates brain components from muscle components, and the other separates brain components from mains power and environmental components. We compared the performance of the proposed approach with seven currently used alternatives on three datasets, measuring mains power artefact reduction, muscle artefact reduction and retention of brain neurophysiological responses.
The proposed approach significantly reduces the main power and muscle contamination from scalp electrical recording without affecting brain neurophysiological responses. None of the competitors outperformed the new approach.
The proposed approach is the best choice for artefact reduction of scalp electrical recordings. Further improvements are possible with improved component analysis algorithms.
This paper provides a definitive answer to an important question: Which artefact removal algorithm should be used on scalp electrical recordings?
提出一种新的自动化快速伪迹去除方法,可显著降低头皮电记录中污染的影响。
我们利用典型头皮电记录过程中记录的不同源的频谱和时频特征,以改进快速有效的伪迹去除方法。我们的实验表明,脑成分的相关系数和频谱梯度与伪迹成分不同。我们训练了两个二进制支持向量机分类器,一个将脑成分与肌肉成分分开,另一个将脑成分与市电和环境成分分开。我们在三个数据集上比较了所提出的方法与七种现有替代方法的性能,衡量了市电伪迹减少、肌肉伪迹减少和脑神经生理反应的保留。
所提出的方法可显著减少头皮电记录中的市电和肌肉污染,而不影响脑神经生理反应。没有一个竞争对手的表现优于新方法。
所提出的方法是头皮电记录伪迹去除的最佳选择。通过改进成分分析算法,可以进一步提高性能。
本文为一个重要问题提供了明确的答案:头皮电记录应该使用哪种伪迹去除算法?