Department of Biomedical Engineering, College of Precision Instruments and Optoelectronics Engineering, Tianjin University, Tianjin 300072, People's Republic of China.
J Neural Eng. 2019 Oct 23;16(6):066012. doi: 10.1088/1741-2552/ab377d.
We proposed a brain-computer interface (BCI) based visual-haptic neurofeedback training (NFT) by incorporating synchronous visual scene and proprioceptive electrical stimulation feedback. The goal of this work was to improve sensorimotor cortical activations and classification performance during motor imagery (MI). In addition, their correlations and brain network patterns were also investigated respectively.
64-channel electroencephalographic (EEG) data were recorded in nineteen healthy subjects during MI before and after NFT. During NFT sessions, the synchronous visual-haptic feedbacks were driven by real-time lateralized relative event-related desynchronization (lrERD).
By comparison between previous and posterior control sessions, the cortical activations measured by multi-band (i.e. alpha_1: 8-10 Hz, alpha_2: 11-13 Hz, beta_1: 15-20 Hz and beta_2: 22-28 Hz) absolute ERD powers and lrERD patterns were significantly enhanced after the NFT. The classification performance was also significantly improved, achieving a ~9% improvement and reaching ~85% in mean classification accuracy from a relatively poor performance. Additionally, there were significant correlations between lrERD patterns and classification accuracies. The partial directed coherence based functional connectivity (FC) networks covering the sensorimotor area also showed an increase after the NFT.
These findings validate the feasibility of our proposed NFT to improve sensorimotor cortical activations and BCI performance during motor imagery. And it is promising to optimize conventional NFT manner and evaluate the effectiveness of motor training.
我们提出了一种基于脑-机接口(BCI)的视觉-触觉神经反馈训练(NFT),通过整合同步视觉场景和本体感觉电刺激反馈来实现。本研究的目的是提高运动想象(MI)期间感觉运动皮质的激活和分类性能。此外,还分别研究了它们的相关性和脑网络模式。
19 名健康受试者在 NFT 前后的 MI 期间记录了 64 通道脑电图(EEG)数据。在 NFT 过程中,同步的视觉-触觉反馈由实时侧向相对事件相关去同步(lrERD)驱动。
通过比较前后控制期,NFT 后多频段(即 alpha_1:8-10 Hz、alpha_2:11-13 Hz、beta_1:15-20 Hz 和 beta_2:22-28 Hz)绝对 ERD 功率和 lrERD 模式的皮质激活明显增强。分类性能也显著提高,平均分类准确率从相对较差的性能提高了约 9%,达到约 85%。此外,lrERD 模式与分类准确率之间存在显著相关性。基于偏导相干的感觉运动区功能连接(FC)网络在 NFT 后也显示出增加。
这些发现验证了我们提出的 NFT 改善运动想象期间感觉运动皮质激活和 BCI 性能的可行性。它有望优化传统的 NFT 方式,并评估运动训练的效果。