Arviv Oshrit, Harpaz Yuval, Tsizin Evgeny, Benoliel Tal, Ekstein Dana, Medvedovsky Mordekhay
Department of Neurology, Agnes Ginges Center of Human Neurogenetics, Hadassah Medical Center, Jerusalem, Israel.
Faculty of Medicine, Hebrew University of Jerusalem, Jerusalem, Israel.
Front Neurosci. 2022 Sep 6;16:947228. doi: 10.3389/fnins.2022.947228. eCollection 2022.
Magnetoencephalography (MEG) source estimation of brain electromagnetic fields is an ill-posed problem. A virtual MEG helmet (VMH), can be constructed by recording in different head positions and then transforming the multiple head-MEG coordinates into one head frame (i.e., as though the MEG helmet was moving while the head remained static). The constructed VMH has sensors placed in various distances and angles, thus improving the spatial sampling of neuromagnetic fields. VMH has been previously shown to increase total information in comparison to a standard MEG helmet. The aim of this study was to examine whether VMH can improve source estimation accuracy. To this end, controlled simulations were carried out, in which the source characteristics are predefined. A series of VMHs were constructed by applying two or three translations and rotations to a standard 248 channel MEG array. In each simulation, the magnetic field generated by 1 to 5 dipoles was forward projected, alongside noise components. The results of this study showed that at low noise levels (e.g., averaged data of similar signals), VMHs can significantly improve the accuracy of source estimations, compared to the standard MEG array. Moreover, when utilizing a priori information, tailoring the constructed VMHs to specific sets of postulated neuronal sources can further improve the accuracy. This is shown to be a robust and stable method, even for proximate locations. Overall, VMH may add significant precision to MEG source estimation, for research and clinical benefits, such as in challenging epilepsy cases, aiding in surgical design.
脑电磁场的脑磁图(MEG)源估计是一个不适定问题。可以通过在不同头部位置进行记录,然后将多个头部 - MEG坐标转换到一个头部框架中(即好像MEG头盔在移动而头部保持静止)来构建虚拟MEG头盔(VMH)。构建的VMH具有以各种距离和角度放置的传感器,从而改善了神经磁场的空间采样。先前已证明VMH与标准MEG头盔相比可增加总信息量。本研究的目的是检验VMH是否能提高源估计的准确性。为此,进行了受控模拟,其中源特征是预先定义的。通过对标准的248通道MEG阵列应用两次或三次平移和旋转来构建一系列VMH。在每次模拟中,由1至5个偶极子产生的磁场与噪声分量一起进行正向投影。本研究结果表明,在低噪声水平下(例如,相似信号的平均数据),与标准MEG阵列相比,VMH可显著提高源估计的准确性。此外,当利用先验信息时,根据假定的神经元源的特定集合定制构建的VMH可进一步提高准确性。即使对于相邻位置,这也被证明是一种稳健且稳定的方法。总体而言,VMH可能会显著提高MEG源估计的精度,带来研究和临床益处,例如在具有挑战性的癫痫病例中,有助于手术设计。