采用l曲线和GCV方法选择皮质电位成像的正则化参数。

Narayan P Subramaniyam, Outi Rm Väisänen, Katrina E Wendel, Jaakko Av Malmivuo
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引用次数: 5

摘要

背景:脑电图(EEG)是一种有吸引力且简单的测量大脑活动的技术。它具有良好的时间分辨率和简单的非侵入性和传感器设计。然而,由于颅骨的低导电性,降低了EEG的空间分辨率。在本文中,我们计算了脑电图头皮电位在覆盖大脑(皮质)的封闭表面上的电位分布。我们比较了用于获得正则化参数的两种方法- l曲线和广义交叉验证(GCV),并研究了将这些技术应用于视觉诱发电位(VEP)数据的N170分量的可行性。方法:利用人眼(VHM)图像数据集,建立头部有限差分法(FDM)模型。使用的EEG数据集(256通道)是VEP的N170分量。得到了皮层电位与头皮电位之间的正向转移矩阵。利用吉洪诺夫正则化,得到脑皮层电位分布。结果:分别用l曲线法和GCV法求解了3名受试者的皮质电位分布。共获得18个脑皮层电位分布(3个被试,每个被试分别有恐惧面孔、中性面孔和对照对象三种刺激)。结论:与l曲线相比,GCV法在寻找最优正则化参数方面具有更强的鲁棒性。皮层电位成像是获取VEP数据皮层电位分布的可靠方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Cortical potential imaging using L-curve and GCV method to choose the regularisation parameter.

Cortical potential imaging using L-curve and GCV method to choose the regularisation parameter.

Cortical potential imaging using L-curve and GCV method to choose the regularisation parameter.

Cortical potential imaging using L-curve and GCV method to choose the regularisation parameter.

Background: The electroencephalography (EEG) is an attractive and a simple technique to measure the brain activity. It is attractive due its excellent temporal resolution and simple due to its non-invasiveness and sensor design. However, the spatial resolution of EEG is reduced due to the low conducting skull. In this paper, we compute the potential distribution over the closed surface covering the brain (cortex) from the EEG scalp potential. We compare two methods - L-curve and generalised cross validation (GCV) used to obtain the regularisation parameter and also investigate the feasibility in applying such techniques to N170 component of the visually evoked potential (VEP) data.

Methods: Using the image data set of the visible human man (VHM), a finite difference method (FDM) model of the head was constructed. The EEG dataset (256-channel) used was the N170 component of the VEP. A forward transfer matrix relating the cortical potential to the scalp potential was obtained. Using Tikhonov regularisation, the potential distribution over the cortex was obtained.

Results: The cortical potential distribution for three subjects was solved using both L-curve and GCV method. A total of 18 cortical potential distributions were obtained (3 subjects with three stimuli each - fearful face, neutral face, control objects).

Conclusions: The GCV method is a more robust method compared to L-curve to find the optimal regularisation parameter. Cortical potential imaging is a reliable method to obtain the potential distribution over cortex for VEP data.

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