EEG dynamic source localization using Marginalized Particle Filtering

B. Ebinger, N. Bouaynaya, P. Georgieva, L. Mihaylova
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引用次数: 6

Abstract

Localization of the brain neural generators that create Electroencephalographs (EEGs) has been an important problem in clinical, research and technological applications related to the brain. The active regions in the brain are modeled as equivalent current dipoles, and the positions and moments of these dipoles or brain sources are estimated. So far, the brain dipoles are assumed to be fixed or time-invariant. However, recent neurological studies are showing that brain sources are not static but vary (in terms of location and moment) depending on various internal and external stimuli. This paper presents a shift in the current paradigm of brain source localization by considering dynamic sources in the brain. We formulate the brain source estimation problem from EEG measurements as a (nonlinear) state-space model. We use the Particle Filter (PF), essentially a sequential Monte Carlo method, to track the trajectory of the moving dipoles in the brain. We further address the “curse of dimensionality,” issue of the PF by taking advantage of the structure of the EEG state-space model, and marginalizing out the linearly evolving states. A Kalman Filter is used to optimally estimate the linear elements, whereas the PF is used to track only the non-linear components. This technique reduces the dimension of the problem; thus exponentially reducing the computational cost. Our simulation results show that, where the PF fails, the Marginalized PF is able to successfully track two dipoles in the brain with only 500 particles.
基于边缘粒子滤波的脑电动态源定位
产生脑电图(eeg)的脑神经发生器的定位一直是与脑相关的临床、研究和技术应用中的一个重要问题。将脑中的活动区域建模为等效电流偶极子,并估计这些偶极子或脑源的位置和矩。到目前为止,大脑偶极子被认为是固定的或时不变的。然而,最近的神经学研究表明,脑源不是静态的,而是根据各种内部和外部刺激而变化的(在位置和时刻方面)。本文通过考虑大脑中的动态源,提出了当前脑源定位范式的转变。我们将脑电测量的脑源估计问题表述为一个(非线性)状态空间模型。我们使用粒子滤波(PF),本质上是一种顺序蒙特卡罗方法,来跟踪大脑中移动的偶极子的轨迹。我们通过利用EEG状态空间模型的结构进一步解决了PF的“维数诅咒”问题,并将线性演化状态边缘化。卡尔曼滤波器用于最优估计线性元素,而PF仅用于跟踪非线性元素。这种技术减少了问题的规模;从而以指数方式降低计算成本。我们的模拟结果表明,在PF失败的地方,边缘PF仅用500个粒子就能成功地跟踪大脑中的两个偶极子。
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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