MSP based source localization using EEG signals

M. A. Jatoi, N. Kamel, J. López, I. Faye, A. Malik
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引用次数: 4

Abstract

The localization of brain sources due to which neural signals are generated is known as brain source localization. These signals are measured by various neuroimaging techniques such as MRI, EEG, PET and MEG. Nevertheless, when the neuroimaging technique is EEG, then it is specifically termed as EEG source localization. This problem is also referred to as EEG inverse problem. This problem is defined by forward problem and inverse problem. Because of ill-posed nature of EEG inverse problem, there exists uncertainty in the solution. This uncertainty in the solution can be reduced by imparting prior information within a Bayesian framework. Hence, Bayesian technique provides some assumptions related to prior information to quantify the solutions. This involves the information of cortical manifold to construct the set of possible regions where the neural activity occurs. This research work discusses and implements the source reconstruction for real time EEG dataset for Bayesian technique (multiple sparse priors (MSP)), classical LORETA and minimum norm techniques. The results are compared in terms of negative variational free energy, intensity level and computational complexity and it is shown that MSP has highest free energy and intensity level as compared to classical methods.
基于MSP的脑电信号源定位
产生神经信号的脑源定位称为脑源定位。这些信号通过各种神经成像技术,如核磁共振、脑电图、PET和MEG来测量。然而,当神经成像技术是EEG时,则具体称为EEG源定位。这个问题也被称为EEG逆问题。这个问题被定义为正问题和逆问题。由于脑电逆问题的病态性,其解存在不确定性。通过在贝叶斯框架内传递先验信息,可以减少解决方案中的不确定性。因此,贝叶斯技术提供了一些与先验信息相关的假设来量化解决方案。这涉及到皮质流形的信息来构建神经活动发生的可能区域集。本研究讨论并实现了基于贝叶斯技术(multiple sparse priors, MSP)、经典LORETA和最小范数技术的实时脑电数据源重构。从负变分自由能、强度水平和计算复杂度方面对结果进行了比较,结果表明,与经典方法相比,MSP方法具有最高的自由能和强度水平。
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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