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单手个体手指运动的单次试验辨别:一项 MEG 和 EEG 的联合研究。

Single trial discrimination of individual finger movements on one hand: a combined MEG and EEG study.

机构信息

Department of Neurology, University Medical Center Magdeburg AöR, Leipziger Str 44, 3120 Magdeburg, Germany.

出版信息

Neuroimage. 2012 Feb 15;59(4):3316-24. doi: 10.1016/j.neuroimage.2011.11.053. Epub 2011 Nov 30.

DOI:10.1016/j.neuroimage.2011.11.053
PMID:22155040
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC4028834/
Abstract

It is crucial to understand what brain signals can be decoded from single trials with different recording techniques for the development of Brain-Machine Interfaces. A specific challenge for non-invasive recording methods are activations confined to small spatial areas on the cortex such as the finger representation of one hand. Here we study the information content of single trial brain activity in non-invasive MEG and EEG recordings elicited by finger movements of one hand. We investigate the feasibility of decoding which of four fingers of one hand performed a slight button press. With MEG we demonstrate reliable discrimination of single button presses performed with the thumb, the index, the middle or the little finger (average over all subjects and fingers 57%, best subject 70%, empirical guessing level: 25.1%). EEG decoding performance was less robust (average over all subjects and fingers 43%, best subject 54%, empirical guessing level 25.1%). Spatiotemporal patterns of amplitude variations in the time series provided best information for discriminating finger movements. Non-phase-locked changes of mu and beta oscillations were less predictive. Movement related high gamma oscillations were observed in average induced oscillation amplitudes in the MEG but did not provide sufficient information about the finger's identity in single trials. Importantly, pre-movement neuronal activity provided information about the preparation of the movement of a specific finger. Our study demonstrates the potential of non-invasive MEG to provide informative features for individual finger control in a Brain-Machine Interface neuroprosthesis.

摘要

理解使用不同记录技术从单次试验中解码大脑信号对于脑机接口的发展至关重要。对于非侵入性记录方法来说,一个特定的挑战是激活仅限于皮质的小空间区域,例如一只手的手指代表。在这里,我们研究了由一只手的手指运动引起的非侵入性 MEG 和 EEG 记录中单次试验大脑活动的信息含量。我们研究了解码一只手的四个手指中哪一个执行轻微按钮按下的可行性。使用 MEG,我们证明了可靠地区分拇指、食指、中指或小指(所有受试者和手指的平均水平为 57%,最佳受试者为 70%,经验猜测水平:25.1%)进行的单次按钮按下。EEG 解码性能不太稳健(所有受试者和手指的平均水平为 43%,最佳受试者为 54%,经验猜测水平为 25.1%)。时间序列中幅度变化的时空模式为区分手指运动提供了最佳信息。无相位锁定的 mu 和 beta 振荡变化预测性较差。在 MEG 中观察到平均诱导的振荡幅度中的运动相关高伽马振荡,但在单次试验中没有提供关于手指身份的足够信息。重要的是,运动前神经元活动提供了关于特定手指运动准备的信息。我们的研究表明,非侵入性 MEG 具有为神经假肢中的个体手指控制提供信息特征的潜力。

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