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使用二阶差分图分析睁眼和闭眼脑电图信号。

Analysis of eyes open, eye closed EEG signals using second-order difference plot.

作者信息

Thuraisingham Ranjit A, Tran Yvonne, Boord Peter, Craig Ashley

机构信息

Department of Medical and Molecular Biosciences, University of Technology, Sydney, PO Box 123, Broadway, NSW 2007, Australia.

出版信息

Med Biol Eng Comput. 2007 Dec;45(12):1243-9. doi: 10.1007/s11517-007-0268-9. Epub 2007 Oct 10.

Abstract

An assistive technology developed for "hands free" control of electrical devices to be used by severely impaired people within their environment, relies upon using signal processing techniques for analyzing eyes closed (EC) and eyes open (EO) states in the electroencephalography (EEG) signal. Here, we apply a signal processing technique used in continuous chaotic modeling to investigate differences in the EEG time series between EC and EO states. This method is used to detect the degree of variability from a second-order difference plot, and quantifying this using a central tendency measures. The study used EEG time series of EO and EC states from 33 able-bodied and 17 spinal cord injured participants. The results found an increased EEG variability in brain activity during EC compared to EO. This increased EEG variability occurred in the O2 electrode, which overlays the primary visual cortex V1, and could be a result of the replacement of the coherent information obtained during EO by noise. A continuous measure of the variability was then used to demonstrate that this technique has the potential to be used as a switching mechanism for assistive technologies.

摘要

一种为严重残障人士在其环境中“免提”控制电气设备而开发的辅助技术,依赖于使用信号处理技术来分析脑电图(EEG)信号中的闭眼(EC)和睁眼(EO)状态。在此,我们应用一种用于连续混沌建模的信号处理技术,以研究EC和EO状态之间EEG时间序列的差异。该方法用于从二阶差分图检测变异性程度,并使用集中趋势度量对其进行量化。该研究使用了33名身体健全者和17名脊髓损伤参与者的EO和EC状态的EEG时间序列。结果发现,与EO相比,EC期间大脑活动的EEG变异性增加。这种EEG变异性增加发生在覆盖初级视觉皮层V1的O2电极上,可能是由于EO期间获得的相干信息被噪声取代的结果。然后使用变异性的连续度量来证明该技术有潜力用作辅助技术的切换机制。

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