IEEE Rev Biomed Eng. 2020;13:169-183. doi: 10.1109/RBME.2019.2951328. Epub 2019 Nov 4.
Electroencephalography (EEG) is a noninvasive electrophysiological monitoring technique that records the electrical activities of the brain from the scalp using electrodes. EEG is not only an essential tool for diagnosing diseases and disorders affecting the brain, but also helps us to achieve a better understanding of brain's activities and structures. EEG recordings are weak, nonlinear, and nonstationary signals that contain various noise and artifacts. Therefore, for analyzing them, advanced signal processing techniques are required. Second order statistical features are usually sufficient for analyzing most basic signals. However, higher order statistical features possess characteristics that are missing in the second order; characteristics that can be highly beneficial for analysis of more complex signals, such as EEG. The primary goal of this article is to provide a comprehensive survey of the applications of higher order statistics or spectra (HOS) in EEG signal processing. Therefore, we start the survey with a summary of previous studies in EEG analysis followed by a brief mathematical description of HOS. Then, HOS related features and their applications in EEG analysis are presented. These applications are then grouped into three categories, each of which are further explored thoroughly with examples of prior studies. Finally, we provide some specific recommendations based on the literature survey and discuss possible future directions of this field.
脑电图(EEG)是一种非侵入性的电生理监测技术,它通过电极从头皮上记录大脑的电活动。EEG 不仅是诊断影响大脑的疾病和障碍的重要工具,还有助于我们更好地了解大脑的活动和结构。EEG 记录是微弱的、非线性的和非平稳的信号,其中包含各种噪声和伪迹。因此,需要先进的信号处理技术来分析它们。二阶统计特征通常足以分析大多数基本信号。然而,高阶统计特征具有二阶中缺失的特征;这些特征对于分析更复杂的信号(如 EEG)非常有帮助。本文的主要目标是全面调查高阶统计量或谱(HOS)在 EEG 信号处理中的应用。因此,我们从 EEG 分析的先前研究综述开始,然后简要介绍 HOS 的数学描述。然后,介绍了与 HOS 相关的特征及其在 EEG 分析中的应用。这些应用分为三类,每一类都通过先前研究的例子进行了深入探讨。最后,我们根据文献调查提供了一些具体建议,并讨论了该领域的可能未来方向。