Huang Gan, Zhao Zhiheng, Zhang Shaorong, Hu Zhenxing, Fan Jiaming, Fu Meisong, Chen Jiale, Xiao Yaqiong, Wang Jun, Dan Guo
School of Biomedical Engineering, Health Science Center, Shenzhen University, Shenzhen, Guangdong, China.
Guangdong Provincial Key Laboratory of Biomedical Measurements and Ultrasound Imaging, Shenzhen, Guangdong, China.
Front Neurosci. 2023 Feb 13;17:1122661. doi: 10.3389/fnins.2023.1122661. eCollection 2023.
Inter- and intra-subject variability are caused by the variability of the psychological and neurophysiological factors over time and across subjects. In the application of in Brain-Computer Interfaces (BCI), the existence of inter- and intra-subject variability reduced the generalization ability of machine learning models seriously, which further limited the use of BCI in real life. Although many transfer learning methods can compensate for the inter- and intra-subject variability to some extent, there is still a lack of clear understanding about the change of feature distribution between the cross-subject and cross-session electroencephalography (EEG) signal.
To investigate this issue, an online platform for motor-imagery BCI decoding has been built in this work. The EEG signal from both the multi-subject (Exp1) and multi-session (Exp2) experiments has been analyzed from multiple perspectives.
Firstly we found that with the similar variability of classification results, the time-frequency response of the EEG signal within-subject in Exp2 is more consistent than cross-subject results in Exp1. Secondly, the standard deviation of the common spatial pattern (CSP) feature has a significant difference between Exp1 and Exp2. Thirdly, for model training, different strategies for the training sample selection should be applied for the cross-subject and cross-session tasks.
All these findings have deepened the understanding of inter- and intra-subject variability. They can also guide practice for the new transfer learning methods development in EEG-based BCI. In addition, these results also proved that BCI inefficiency was not caused by the subject's unable to generate the event-related desynchronization/synchronization (ERD/ERS) signal during the motor imagery.
个体间和个体内的变异性是由心理和神经生理因素随时间和个体的变化而引起的。在脑机接口(BCI)的应用中,个体间和个体内变异性的存在严重降低了机器学习模型的泛化能力,这进一步限制了BCI在现实生活中的应用。尽管许多迁移学习方法可以在一定程度上补偿个体间和个体内的变异性,但对于跨个体和跨时段脑电图(EEG)信号之间特征分布的变化仍缺乏清晰的认识。
为了研究这个问题,本研究构建了一个用于运动想象BCI解码的在线平台。从多个角度分析了多主体(实验1)和多时段(实验2)实验的EEG信号。
首先,我们发现,在分类结果变异性相似的情况下,实验2中个体内EEG信号的时频响应比实验1中的跨个体结果更一致。其次,共同空间模式(CSP)特征的标准差在实验1和实验2之间存在显著差异。第三,对于模型训练,应针对跨个体和跨时段任务应用不同的训练样本选择策略。
所有这些发现加深了对个体间和个体内变异性的理解。它们还可以指导基于EEG的BCI中新迁移学习方法开发的实践。此外,这些结果还证明,BCI效率低下不是由受试者在运动想象期间无法产生事件相关去同步化/同步化(ERD/ERS)信号引起的。