Neurophysics Group, 'Gleb Wataghin' Physics Institute, University of Campinas (UNICAMP), Brazil. Brazilian Institute of Neuroscience and Neurotechnology (BRAINN), Brazil.
Biomed Phys Eng Express. 2020 Apr 27;6(3):035030. doi: 10.1088/2057-1976/ab8992.
Motor imagery (MI) constitutes a recurrent strategy for signals generation in brain-computer interfaces (BCIs) - systems that aim to control external devices by directly associating brain responses to distinct commands. Although great improvement has been achieved in MI-BCIs performance over recent years, they still suffer from inter- and intra-subject variability issues. As an attempt to cope with this, some studies have suggested that MI training should aid users to appropriately modulate their response for BCI usage: generally, this training is performed based on the sensorimotor rhythms' modulation over the primary sensorimotor cortex (PMC), with the signal being feedbacked to the user. Nonetheless, recent studies have revisited the actual involvement of the PMC into MI, and little to no attention has been devoted to understanding the participation of other cortical areas into training protocols. Therefore, in this work, our aim was to analyze the response induced by hands MI of 10 healthy subjects in the form of event-related desynchronizations (ERDs) and to assess whether features from beyond the PMC might be useful for hands MI classification. We investigated how this response occurs for distinct frequency intervals between 7-30 Hz, and ex0plored changes in their evocation pattern across 12 MI training sessions without feedback. Overall, we found that ERD patterns occur differently for the frequencies encompassed by the μ and β bands, with its evocation being favored for the first band. Over time, the no-feedback approach was inefficient to aid in enhancing ERD evocation (EO). Moreover, to some extent, EO tends to decrease over blocks within a given run, and runs within an MI session, but remains stable within an MI block. We also found that the C3/C4 pair is not necessarily optimal for data classification, and both spectral and spatial subjects' specificities should be considered when designing training protocols.
运动想象(MI)构成了脑机接口(BCI)中信号产生的一种常用策略 - 这些系统旨在通过将大脑对不同命令的反应直接关联来控制外部设备。尽管近年来 MI-BCI 的性能有了很大的提高,但它们仍然存在着个体间和个体内的变异性问题。为了应对这一问题,一些研究表明,MI 训练应该帮助用户适当调节他们对 BCI 的反应:通常,这种训练是基于对初级感觉运动皮层(PMC)上感觉运动节律的调制,信号反馈给用户。然而,最近的研究重新审视了 PMC 实际参与 MI 的情况,几乎没有关注理解其他皮质区域参与训练方案的情况。因此,在这项工作中,我们的目的是分析 10 名健康受试者进行手部 MI 时以事件相关去同步(ERD)形式诱导的反应,并评估 PMC 之外的特征是否可用于手部 MI 分类。我们研究了在 7-30 Hz 之间的不同频率间隔下,这种反应是如何发生的,并探索了在没有反馈的情况下,经过 12 次 MI 训练后,其诱发模式的变化。总的来说,我们发现 ERD 模式在μ和β频段所包含的频率下发生的方式不同,其诱发更有利于第一个频段。随着时间的推移,无反馈方法对于增强 ERD 诱发(EO)效率不高。此外,在给定的运行中,EO 在块内会在一定程度上减少,在 MI 会话内的运行中也会减少,但在 MI 块内保持稳定。我们还发现,C3/C4 对不一定是数据分类的最佳选择,在设计训练方案时,应考虑光谱和空间的个体特异性。