Wan Feng, da Cruz Janir Nuno, Nan Wenya, Wong Chi Man, Vai Mang I, Rosa Agostinho
Department of Electrical and Computer Engineering, Faculty of Science and Technology, University of Macau, Macau, People's Republic of China.
J Neural Eng. 2016 Jun;13(3):036019. doi: 10.1088/1741-2560/13/3/036019. Epub 2016 May 6.
Steady-state visual evoked potential (SSVEP)-based brain-computer interfaces (BCIs) can provide relatively easy, reliable and high speed communication. However, the performance is still not satisfactory, especially in some users who are not able to generate strong enough SSVEP signals. This work aims to strengthen a user's SSVEP by alpha down-regulating neurofeedback training (NFT) and consequently improve the performance of the user in using SSVEP-based BCIs.
An experiment with two steps was designed and conducted. The first step was to investigate the relationship between the resting alpha activity and the SSVEP-based BCI performance, in order to determine the training parameter for the NFT. Then in the second step, half of the subjects with 'low' performance (i.e. BCI classification accuracy <80%) were randomly assigned to a NFT group to perform a real-time NFT, and the rest half to a non-NFT control group for comparison.
The first step revealed a significant negative correlation between the BCI performance and the individual alpha band (IAB) amplitudes in the eyes-open resting condition in a total of 33 subjects. In the second step, it was found that during the IAB down-regulating NFT, on average the subjects were able to successfully decrease their IAB amplitude over training sessions. More importantly, the NFT group showed an average increase of 16.5% in the SSVEP signal SNR (signal-to-noise ratio) and an average increase of 20.3% in the BCI classification accuracy, which was significant compared to the non-NFT control group.
These findings indicate that the alpha down-regulating NFT can be used to improve the SSVEP signal quality and the subjects' performance in using SSVEP-based BCIs. It could be helpful to the SSVEP related studies and would contribute to more effective SSVEP-based BCI applications.
基于稳态视觉诱发电位(SSVEP)的脑机接口(BCI)能够提供相对简便、可靠且高速的通信方式。然而,其性能仍不尽人意,尤其是在一些无法产生足够强的SSVEP信号的用户中。本研究旨在通过α波下调神经反馈训练(NFT)增强用户的SSVEP,并进而提高用户使用基于SSVEP的BCI的性能。
设计并开展了一个分两步的实验。第一步是探究静息α波活动与基于SSVEP的BCI性能之间的关系,以确定NFT的训练参数。然后在第二步中,将表现“较差”(即BCI分类准确率<80%)的受试者中的一半随机分配到NFT组进行实时NFT,另一半则分配到非NFT对照组进行比较。
第一步显示,在总共33名受试者中,BCI性能与睁眼静息状态下的个体α波频段(IAB)振幅之间存在显著负相关。在第二步中,发现进行IAB下调NFT期间,受试者平均能够在训练过程中成功降低其IAB振幅。更重要的是,NFT组的SSVEP信号信噪比(SNR)平均提高了16.5%,BCI分类准确率平均提高了20.3%,与非NFT对照组相比有显著差异。
这些发现表明,α波下调NFT可用于改善SSVEP信号质量以及受试者使用基于SSVEP的BCI的性能。这可能有助于与SSVEP相关的研究,并将有助于更有效地应用基于SSVEP的BCI。