Ouyang Guang, Zhou Changsong
Faculty of Education, The University of Hong Kong, Hong Kong.
Department of Physics, Centre for Nonlinear Studies, The Beijing-Hong Kong-Singapore Joint Centre for Nonlinear and Complex Systems (Hong Kong), Institute of Computational and Theoretical Studies, Hong Kong Baptist University, Kowloon Tong, Hong Kong.
Bioengineering (Basel). 2023 Sep 7;10(9):1054. doi: 10.3390/bioengineering10091054.
Characterizing the brain's dynamic pattern of response to an input in electroencephalography (EEG) is not a trivial task due to the entanglement of the complex spontaneous brain activity. In this context, the brain's response can be defined as (1) the additional neural activity components generated after the input or (2) the changes in the ongoing spontaneous activities induced by the input. Moreover, the response can be manifested in multiple features. Three commonly studied examples of features are (1) transient temporal waveform, (2) time-frequency representation, and (3) phase dynamics. The most extensively used method of average event-related potentials (ERPs) captures the first one, while the latter two and other more complex features are attracting increasing attention. However, there has not been much work providing a systematic illustration and guidance for how to effectively exploit multifaceted features in neural cognitive research. Based on a visual oddball ERPs dataset with 200 participants, this work demonstrates how the information from the above-mentioned features are complementary to each other and how they can be integrated based on stereotypical neural-network-based machine learning approaches to better exploit neural dynamic information in basic and applied cognitive research.
由于复杂的自发脑活动相互纠缠,在脑电图(EEG)中表征大脑对输入的动态反应模式并非易事。在此背景下,大脑的反应可定义为:(1)输入后产生的额外神经活动成分,或(2)由输入引起的正在进行的自发活动的变化。此外,这种反应可以体现在多个特征中。特征的三个常见研究示例为:(1)瞬态时间波形,(2)时频表示,以及(3)相位动力学。最广泛使用的平均事件相关电位(ERP)方法捕捉的是第一个示例,而后两个示例以及其他更复杂的特征正受到越来越多的关注。然而,对于如何在神经认知研究中有效利用多方面特征,尚未有太多工作提供系统的阐述和指导。基于一个有200名参与者的视觉Oddball ERP数据集,这项工作展示了上述特征中的信息如何相互补充,以及如何基于基于刻板神经网络的机器学习方法将它们整合起来,以便在基础和应用认知研究中更好地利用神经动态信息。