有效的脑驱动控制的自然基础。

S Makeig, S Enghoff, T P Jung, T J Sejnowski
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引用次数: 89

摘要

对计算机屏幕显示或移动设备的非侵入性脑驱动控制的前景引起了许多人的兴趣,并且对少数“闭锁”受试者至关重要,这些受试者经历了几乎完全的运动瘫痪,但保留了感觉和精神能力。目前,一些研究小组正试图利用自发性头皮脑电图(EEG)的特定特征,包括中枢mu节律(9-12 Hz)的操作性条件反射,实现脑驱动的屏幕显示控制。独立分量分析(ICA)是一种新的脑电图分解技术,为内源性脑电图节律检测和操作控制系统的设计提供了新的研究基础,从而实现基于脑电图的灵活通信。ICA将多通道脑电图数据分离为空间静态和时间独立的成分,包括后置α节律和中央mu活动的独立成分。我们使用来自视觉选择性注意任务的数据证明,ica衍生的mu成分对运动事件的光谱反应性比单个头皮通道的活动测量强得多。因此,自发脑电图的ICA分解似乎为操作性条件反射提供了自然基础,从而在运动受限和锁定的受试者中实现高效和多维的脑驱动控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A natural basis for efficient brain-actuated control.

The prospect of noninvasive brain-actuated control of computerized screen displays or locomotive devices is of interest to many and of crucial importance to a few 'locked-in' subjects who experience near total motor paralysis while retaining sensory and mental faculties. Currently several groups are attempting to achieve brain-actuated control of screen displays using operant conditioning of particular features of the spontaneous scalp electroencephalogram (EEG) including central mu-rhythms (9-12 Hz). A new EEG decomposition technique, independent component analysis (ICA), appears to be a foundation for new research in the design of systems for detection and operant control of endogenous EEG rhythms to achieve flexible EEG-based communication. ICA separates multichannel EEG data into spatially static and temporally independent components including separate components accounting for posterior alpha rhythms and central mu activities. We demonstrate using data from a visual selective attention task that ICA-derived mu-components can show much stronger spectral reactivity to motor events than activity measures for single scalp channels. ICA decompositions of spontaneous EEG would thus appear to form a natural basis for operant conditioning to achieve efficient and multidimensional brain-actuated control in motor-limited and locked-in subjects.

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