Moridera Takayoshi, Rashed Essam A, Mizutani Shogo, Hirata Akimasa
Department of Electrical and Mechanical Engineering, Nagoya Institute of Technology, Nagoya, Japan.
Department of Mathematics, Faculty of Science, Suez Canal University, Ismailia, Egypt.
Front Neurosci. 2021 Jun 28;15:695668. doi: 10.3389/fnins.2021.695668. eCollection 2021.
Electroencephalogram (EEG) is a method to monitor electrophysiological activity on the scalp, which represents the macroscopic activity of the brain. However, it is challenging to identify EEG source regions inside the brain based on data measured by a scalp-attached network of electrodes. The accuracy of EEG source localization significantly depends on the type of head modeling and inverse problem solver. In this study, we adopted different models with a resolution of 0.5 mm to account for thin tissues/fluids, such as the cerebrospinal fluid (CSF) and dura. In particular, a spatially dependent conductivity (segmentation-free) model created using deep learning was developed and used for more realist representation of electrical conductivity. We then adopted a multi-grid-based finite-difference method (FDM) for forward problem analysis and a sparse-based algorithm to solve the inverse problem. This enabled us to perform efficient source localization using high-resolution model with a reasonable computational cost. Results indicated that the abrupt spatial change in conductivity, inherent in conventional segmentation-based head models, may trigger source localization error accumulation. The accurate modeling of the CSF, whose conductivity is the highest in the head, was an important factor affecting localization accuracy. Moreover, computational experiments with different noise levels and electrode setups demonstrate the robustness of the proposed method with segmentation-free head model.
脑电图(EEG)是一种监测头皮上电生理活动的方法,它代表了大脑的宏观活动。然而,基于头皮附着电极网络测量的数据来识别大脑内部的EEG源区域具有挑战性。EEG源定位的准确性很大程度上取决于头部建模的类型和逆问题求解器。在本研究中,我们采用了分辨率为0.5毫米的不同模型来考虑薄组织/流体,如脑脊液(CSF)和硬脑膜。特别是,开发了一种使用深度学习创建的空间相关电导率(无分割)模型,并用于更真实地表示电导率。然后,我们采用基于多重网格的有限差分法(FDM)进行正问题分析,并采用基于稀疏的算法来解决逆问题。这使我们能够以合理的计算成本使用高分辨率模型进行高效的源定位。结果表明,传统基于分割的头部模型中固有的电导率突然空间变化可能会引发源定位误差积累。CSF的精确建模是影响定位准确性的一个重要因素,CSF在头部中的电导率最高。此外,不同噪声水平和电极设置的计算实验证明了所提出的无分割头部模型方法的鲁棒性。