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基于脑电图的脑机接口 (BCI):基于事件相关去同步/同步和状态控制的二维虚拟轮椅控制。

Electroencephalography (EEG)-based brain-computer interface (BCI): a 2-D virtual wheelchair control based on event-related desynchronization/synchronization and state control.

机构信息

Department of Biomedical Engineering, Virginia Commonwealth University, Richmond, VA 843067, USA.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2012 May;20(3):379-88. doi: 10.1109/TNSRE.2012.2190299. Epub 2012 Apr 5.

DOI:10.1109/TNSRE.2012.2190299
PMID:22498703
Abstract

This study aims to propose an effective and practical paradigm for a brain-computer interface (BCI)-based 2-D virtual wheelchair control. The paradigm was based on the multi-class discrimination of spatiotemporally distinguishable phenomenon of event-related desynchronization/synchronization (ERD/ERS) in electroencephalogram signals associated with motor execution/imagery of right/left hand movement. Comparing with traditional method using ERD only, where bilateral ERDs appear during left/right hand mental tasks, the 2-D control exhibited high accuracy within a short time, as incorporating ERS into the paradigm hypothetically enhanced the spatiotemoral feature contrast of ERS versus ERD. We also expected users to experience ease of control by including a noncontrol state. In this study, the control command was sent discretely whereas the virtual wheelchair was moving continuously. We tested five healthy subjects in a single visit with two sessions, i.e., motor execution and motor imagery. Each session included a 20 min calibration and two sets of games that were less than 30 min. Average target hit rate was as high as 98.4% with motor imagery. Every subject achieved 100% hit rate in the second set of wheelchair control games. The average time to hit a target 10 m away was about 59 s, with 39 s for the best set. The superior control performance in subjects without intensive BCI training suggested a practical wheelchair control paradigm for BCI users.

摘要

本研究旨在提出一种基于脑-机接口(BCI)的二维虚拟轮椅控制的有效且实用的范例。该范例基于事件相关去同步/同步(ERD/ERS)的时空可区分现象的多类判别,与右手/左手运动的运动执行/想象相关的脑电图信号。与传统方法相比,传统方法仅使用 ERD,在左手/右手心理任务期间出现双侧 ERD,二维控制在短时间内表现出高精度,因为将 ERS 纳入范例假设增强了 ERS 与 ERD 的时空特征对比。我们还期望通过包括非控制状态来使使用者体验到控制的便利性。在这项研究中,控制命令是离散发送的,而虚拟轮椅是连续移动的。我们在一次就诊中对五名健康受试者进行了两次测试,即运动执行和运动想象。每个会话包括 20 分钟的校准和两组不到 30 分钟的游戏。在运动想象中,平均目标命中率高达 98.4%。每个受试者在第二组轮椅控制游戏中都达到了 100%的命中率。击中 10 米远目标的平均时间约为 59 秒,最佳组为 39 秒。在没有密集 BCI 训练的受试者中表现出的优越控制性能表明,该范例对于 BCI 用户来说是一种实用的轮椅控制范例。

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