A comparison of adaptive and non-adaptive EEG source localization algorithms using a realistic head model.

John P Russell, Zoltan J Koles
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引用次数: 3

Abstract

An accurate and robust electroencephalogram (EEG) source localization algorithm would be a definite asset for the surgical treatment of patients with epilepsy. Due to the underdetermined nature of the EEG inverse problem, a variety of algorithms with unique constraints and assumptions are applied to select the current dipole source distribution that best accounts for the scalp recordings. We investigated four algorithms: two non-adaptive algorithms: the minimum norm and LORETA as well as two adaptive algorithms: the Borgiotti-Kaplan and eigenspace projection beamformers. Compared over a range of SNR values and single source locations, we found that the eigenspace projection beamformer exhibited superior localizing capabilities compared to the other three algorithms while minimizing source current dispersion. The size of the data window required to accurately localize using the adaptive beamformers was also investigated to improve algorithm efficiency and minimize stationary source assumptions.

基于真实头部模型的自适应与非自适应脑电信号源定位算法的比较。
一种准确、鲁棒的脑电图源定位算法对于癫痫患者的手术治疗具有重要意义。由于脑电图反问题的不确定性质,采用各种具有独特约束和假设的算法来选择最能解释头皮记录的电流偶极子源分布。我们研究了四种算法:两种非自适应算法:最小范数和LORETA,以及两种自适应算法:Borgiotti-Kaplan和特征空间投影波束形成。在信噪比值和单源位置范围内进行比较,我们发现与其他三种算法相比,本征空间投影波束形成器在最小化源电流色散的同时表现出优越的定位能力。研究了采用自适应波束形成器精确定位所需的数据窗口大小,以提高算法效率和最小化平稳源假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.20
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