A model-based brain switch via periodic motor imagery modulation for asynchronous brain-computer interfaces.

Jianjun Meng, Songwei Li, Guangye Li, Ruijie Luo, Xinjun Sheng, Xiangyang Zhu
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Abstract

Objective.Brain switches provide a tangible solution to asynchronized brain-computer interface, which decodes user intention without a pre-programmed structure. However, most brain switches based on electroencephalography signals have high false positive rates (FPRs), resulting in less practicality. This research aims to improve the operating mode and usability of the brain switch.Approach.Here, we propose a novel virtual physical model-based brain switch that leverages periodic active modulation. An optimization problem of minimizing the triggering time subject to a required FPR is formulated, numerical and analytical approximate solutions are obtained based on the model.Main results.Our motor imagery (MI)-based brain switch can reach 0.8FP/h FPR with a median triggering time of 58 s. We evaluated the proposed brain switch during online device control, and their average FPRs substantially outperformed the conventional brain switches in the literature. We further improved the proposed brain switch with the Common Spatial Pattern (CSP) and optimization method. An average FPR of 0.3 FPs/h was obtained for the MI-CSP-based brain switch, and the average triggering time improved to 21.6 s.Significance.This study provides a new approach that could significantly reduce the brain switch's FPR to less than 1 Fps/h, which was less than 10% of the FPR (decreasing by more than a magnitude of order) by other endogenous methods, and the reaction time was comparable to the state-of-the-art approaches. This represents a significant advancement over the current non-invasive asynchronous BCI and will open widespread avenues for translating BCI towards clinical applications.

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基于模型的大脑开关,通过周期性运动图像调制实现异步脑机接口。
目的:脑开关为异步脑机接口(aBCI)提供了一种切实可行的解决方案,它可以在没有预编程结构的情况下解码用户意图。然而,大多数基于脑电图(EEG)信号的脑开关具有较高的误判率(FPR),导致实用性较低。本研究旨在改进大脑开关的操作模式和实用性:在此,我们提出了一种基于虚拟物理模型的新型大脑开关,它利用了周期性主动调制。方法:在此,我们提出了一种新颖的基于虚拟物理模型的大脑开关,它利用了周期性主动调制,并提出了一个优化问题,即在所需 FPR 的条件下尽量减少触发时间,并根据模型获得了数值和分析近似解:主要结果:我们的基于运动想象(MI)的大脑开关可以达到 0.8FP/h FPR,中位触发时间为 58 秒。我们评估了在线设备控制中的脑开关,其平均 FPR 大大优于文献中的传统脑开关。我们利用通用空间模式(CSP)和优化方法进一步改进了拟议的脑开关。基于 MI-CSP 的脑开关的平均 FPR 为 0.3 FPs/小时,平均触发时间缩短至 21.6 秒:这项研究提供了一种新方法,可将大脑开关的 FPR 显著降低到 1 FPs/hour 以下,不到其他内源方法 FPR 的 10%(降低了一个数量级以上),而且反应时间(RT)与最先进的方法相当。与目前的非侵入式异步生物识别(BCI)相比,这是一项重大进步,将为生物识别(BCI)的临床应用开辟广泛的途径。
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