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首页> 外文期刊>Frontiers in Neuroscience >Single Trial Predictors for Gating Motor-Imagery Brain-Computer Interfaces Based on Sensorimotor Rhythm and Visual Evoked Potentials
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Single Trial Predictors for Gating Motor-Imagery Brain-Computer Interfaces Based on Sensorimotor Rhythm and Visual Evoked Potentials

机译:基于感觉运动节律和视觉诱发电位的门控运动图像脑计算机接口的单次试验预测因子

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摘要

For brain-computer interfaces (BCIs) that utilize visual cues to direct the user, the neural signals extracted by the computer are representative of ongoing processes, visual evoked responses, and voluntary modulation. We proposed to use three brain signatures for predicting success on a single trial of a BCI task. The first two features, the amplitude and phase of the pre-trial mu amplitude, were chosen as a correlate for cortical excitability. The remaining feature, related to the visually evoked response to the cue, served as a possible measure of fixation and attention to the task. Of these three features, mu rhythm amplitude over the central electrodes at the time of cue presentation and to a lesser extent the single trial visual evoked response were correlated with the success on the subsequent imagery task. Despite the potential for gating trials using these features, an offline gating simulation was limited in its ability to produce an increase in device throughput. This discrepancy highlights a distinction between the identification of predictive features, and the use of this knowledge in an online BCI. Using such a system, we cannot assume that the user will respond similarly when faced with a scenario where feedback is altered by trials that are gated on a regular basis. The results of this study suggest the possibility of using individualized, pre-task neural signatures for personalized, and asynchronous (self-paced) BCI applications, although these effects need to be quantified in a real-time adaptive scenario in a future study.
机译:对于利用视觉提示来指导用户的脑机接口(BCI),计算机提取的神经信号代表正在进行的过程,视觉诱发的反应和自愿性调节。我们建议在一次BCI任务的试验中使用三个大脑签名来预测成功。选择前两个特征,即预试验μ振幅的幅度和相位,作为皮质兴奋性的相关因子。其余的功能与视觉上对提示的反应有关,可以作为对任务固定和注意力的可能度量。在这三个特征中,提示提示时中心电极上的mu节律幅度以及较小程度的单个试验视觉诱发反应与后续图像任务的成功相关。尽管使用这些功能进行选通试验的潜力很大,但离线选通模拟在增加设备吞吐量方面的能力受到限制。这种差异突出显示了预测特征的识别与在线BCI中此知识的使用之间的区别。使用这样的系统,我们不能假设用户在面对定期通过定期试用而改变反馈的情况时会做出类似的反应。这项研究的结果表明,对于个性化和异步(自定进度)BCI应用程序,可以使用个性化的任务前神经签名,尽管这些影响需要在以后的研究中的实时自适应场景中进行量化。

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