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EEG source localization using a sparsity prior based on Brodmann areas

机译:使用基于Brodmann区域的稀疏先验进行脑电信号源定位

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摘要

Localizing the sources of electrical activity in the brain from electroencephalographic (EEG) data is an important tool for noninvasive study of brain dynamics. Generally, the source localization process involves a high-dimensional inverse problem that has an infinite number of solutions and thus requires additional constraints to be considered to have a unique solution. In this article, we propose a novel method for EEG source localization. The proposed method is based on dividing the cerebral cortex of the brain into a finite number of functional zones which correspond to unitary functional areas in the brain. To specify the sparsity profile of human brain activity more concisely, the proposed approach considers grouping of the electrical current dipoles inside each of the functional zones. In this article, we investigate the use of Brodmann's areas as the functional zones while sparse Bayesian learning is used to perform sparse approximation. Numerical experiments are conducted on a realistic head model obtained from segmentation of MRI images of the head and includes four major compartments namely scalp, skull, cerebrospinal fluid (CSF), and brain with relative conductivity values. Three different electrode setups are tested in the numerical experiments. The results demonstrate that the proposed approach is quite promising in solving the EEG source localization problem. In a noiseless environment with 71 electrodes, the proposed method was found to accurately locate up to 6 simultaneously active sources with accuracy >70%.
机译:从脑电图(EEG)数据定位大脑中电活动的来源是非侵入性研究大脑动力学的重要工具。通常,源定位过程涉及具有无限数量的解的高维逆问题,因此需要考虑其他约束条件才能具有唯一解。在本文中,我们提出了一种新的脑电信号源定位方法。所提出的方法基于将大脑的大脑皮层划分为与大脑中单一功能区域相对应的有限数量的功能区。为了更简明地指定人脑活动的稀疏性,提出的方法考虑了每个功能区内的电流偶极子的分组。在本文中,我们研究使用Brodmann区域作为功能区,同时使用稀疏贝叶斯学习进行稀疏近似。在从头部的MRI图像分割中获得的真实头部模型上进行了数值实验,并包括四个主要区域,即头皮,头骨,脑脊液(CSF)和具有相对电导率值的大脑。在数值实验中测试了三种不同的电极设置。结果表明,该方法在解决脑电信号源定位问题上具有很大的发展前景。在具有71个电极的无噪声环境中,发现该方法可以精确定位多达6个同时发生的有源源,其准确度> 70%。

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