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A Finite-Difference Solution for the EEG Forward Problem in Inhomogeneous Anisotropic Media

机译:非均匀各向异性介质脑电图的有限差异解决方案

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摘要

Accurate source localization of electroencephalographic (EEG) signals requires detailed information about the geometry and physical properties of head tissues. Indeed, these strongly influence the propagation of neural activity from the brain to the sensors. Finite difference methods (FDMs) are head modelling approaches relying on volumetric data information, which can be directly obtained using magnetic resonance (MR) imaging. The specific goal of this study is to develop a computationally efficient FDM solution that can flexibly integrate voxel-wise conductivity and anisotropy information. Given the high computational complexity of FDMs, we pay particular attention to attain a very low numerical error, as evaluated using exact analytical solutions for spherical volume conductor models. We then demonstrate the computational efficiency of our FDM numerical solver, by comparing it with alternative solutions. Finally, we apply the developed head modelling tool to high-resolution MR images from a real experimental subject, to demonstrate the potential added value of incorporating detailed voxel-wise conductivity and anisotropy information. Our results clearly show that the developed FDM can contribute to a more precise head modelling, and therefore to a more reliable use of EEG as a brain imaging tool.
机译:脑电图(EEG)信号的精确源定位需要有关头组织的几何形状和物理性质的详细信息。实际上,这些强烈影响神经活动从大脑传播到传感器。有限差分方法(FDMS)是依赖于体积数据信息的头部建模方法,其可以使用磁共振(MR)成像直接获得。本研究的具体目标是开发一种可以灵活地整合体素 - 明智的电导率和各向异性信息的计算上有效的FDM解决方案。鉴于FDMS的高计算复杂性,我们特别注意达到非常低的数值误差,这是使用球形体积导体模型的精确分析解决方案评估的非常低的数值误差。然后,我们通过将其与替代解决方案进行比较来展示我们的FDM数值求解器的计算效率。最后,我们将发达的头部建模工具应用于真实实验对象的高分辨率MR图像,以展示包含详细的体素 - 明智电导率和各向异性信息的潜在附加值。我们的结果清楚地表明,发达的FDM可以有助于更精确的头部建模,因此可以更可靠地使用EEG作为脑成像工具。

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