首页> 美国卫生研究院文献>Frontiers in Neuroinformatics >Enhancing Performance and Bit Rates in a Brain–Computer Interface System With Phase-to-Amplitude Cross-Frequency Coupling: Evidences From Traditional c-VEP Fast c-VEP and SSVEP Designs
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Enhancing Performance and Bit Rates in a Brain–Computer Interface System With Phase-to-Amplitude Cross-Frequency Coupling: Evidences From Traditional c-VEP Fast c-VEP and SSVEP Designs

机译:具有相-幅跨频耦合的脑机接口系统可提高性能和比特率:来自传统c-VEP快速c-VEP和SSVEP设计的证据

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摘要

A brain–computer interface (BCI) is a channel of communication that transforms brain activity into specific commands for manipulating a personal computer or other home or electrical devices. In other words, a BCI is an alternative way of interacting with the environment by using brain activity instead of muscles and nerves. For that reason, BCI systems are of high clinical value for targeted populations suffering from neurological disorders. In this paper, we present a new processing approach in three publicly available BCI data sets: (a) a well-known multi-class (N = 6) coded-modulated Visual Evoked potential (c-VEP)-based BCI system for able-bodied and disabled subjects; (b) a multi-class (N = 32) c-VEP with slow and fast stimulus representation; and (c) a steady-state Visual Evoked potential (SSVEP) multi-class (N = 5) flickering BCI system. Estimating cross-frequency coupling (CFC) and namely δ-θ [δ: (0.5–4 Hz), θ: (4–8 Hz)] phase-to-amplitude coupling (PAC) within sensor and across experimental time, we succeeded in achieving high classification accuracy and Information Transfer Rates (ITR) in the three data sets. Our approach outperformed the originally presented ITR on the three data sets. The bit rates obtained for both the disabled and able-bodied subjects reached the fastest reported level of >324 bits/min with the PAC estimator. Additionally, our approach outperformed alternative signal features such as the relative power (29.73 bits/min) and raw time series analysis (24.93 bits/min) and also the original reported bit rates of >10–25 bits/min. In the second data set, we succeeded in achieving an average ITR of 124.40 ± 11.68 for the slow 60 Hz and an average ITR of 233.99 ± 15.75 for the fast 120 Hz. In the third data set, we succeeded in achieving an average ITR of 106.44 ± 8.94. Current methodology outperforms any previous methodologies applied to each of the three free available BCI datasets.
机译:脑机接口(BCI)是一种沟通渠道,它将大脑活动转化为用于操纵个人计算机或其他家庭或电气设备的特定命令。换句话说,BCI是通过使用大脑活动而不是肌肉和神经与环境互动的另一种方式。因此,BCI系统对于患有神经系统疾病的目标人群具有很高的临床价值。在本文中,我们介绍了三种可公开使用的BCI数据集的新处理方法:(a)众所周知的基于多类(N = 6)编码调制的视觉诱发电位(c-VEP)的BCI系统-身体和残疾人科; (b)具有慢速和快速刺激表示的多类(N = 32)c-VEP; (c)稳态视觉诱发电位(SSVEP)多类(N = 5)闪烁BCI系统。估算跨频耦合(CFC),即在传感器内和整个实验时间内的δ-θ[δ:(0.5-4 Hz),θ:(4-8 Hz)]相间耦合(PAC),我们成功在三个数据集中实现较高的分类准确性和信息传输率(ITR)。在这三个数据集上,我们的方法优于最初提出的ITR。使用PAC估算器,为残疾和健全主体获得的比特率达到了最快的报告水平,> 324位/分钟。此外,我们的方法优于其他信号功能,例如相对功率(29.73位/分钟)和原始时间序列分析(24.93位/分钟),以及最初报告的> 10–25位/分钟的比特率>。在第二个数据集中,我们成功实现了慢60 Hz的平均ITR为124.40±11.68,而快120 Hz的平均ITR为233.99±15.75。在第三个数据集中,我们成功实现了106.44±8.94的平均ITR。当前的方法要优于应用于三个免费可用BCI数据集中的任何以前的方法。

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