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Accuracy of Single Dipole Source Localization by BP Neural Networks from 18-Channel EEGs

机译:18通道脑电图的BP神经网络对单偶极子源定位的精度

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A problem of estimating biopotential sources in the brain based on EEG signals observed on the scalp is known as an important inverse problem of electrophysiology. Usually there is no closed-form solution for this problem and it requires iterative techniques such as the Levenberg-Marquardt algorithm. Considering the nonlinear properties of inverse problem, and signal to noise ratio inherent in EEG signals, a back propagation neural network has been recently proposed as a solution. In this paper, we investigated the properties of neural networks and its localization accuracy for single dipole source localization. Based on the results of extensive studies, we concluded the neural networks are highly feasible in single-source localization with a small number of electrodes (18 electrodes), also examined the usefulness of this method for clinical application with a case of epilepsy.
机译:基于在头皮上观察到的EEG信号估计脑中生物电势来源的问题被称为电生理的重要逆问题。通常没有针对此问题的闭式解决方案,并且需要诸如Levenberg-Marquardt算法之类的迭代技术。考虑到反问题的非线性特性以及EEG信号固有的信噪比,最近提出了一种反向传播神经网络作为解决方案。在本文中,我们研究了神经网络的特性及其在单偶极子源定位中的定位精度。根据大量研究的结果,我们得出结论,神经网络在单源定位中使用少量电极(18个电极)是高度可行的,还检验了这种方法在癫痫病例中的临床应用价值。

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