Center for Biomedical Image Computation and Analytics, Department of Radiology, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA 19104, USA.
Computational Neurostimulation Research Program, Noninvasive Neuromodulation Unit, Experimental Therapeutics & Pathophysiology Branch, National Institute of Mental Health, NIH, MD 20892, USA.
Neuroimage. 2022 Dec 1;264:119705. doi: 10.1016/j.neuroimage.2022.119705. Epub 2022 Oct 21.
Electric fields (E-fields) induced by transcranial magnetic stimulation (TMS) can be modeled using partial differential equations (PDEs). Using state-of-the-art finite-element methods (FEM), it often takes tens of seconds to solve the PDEs for computing a high-resolution E-field, hampering the wide application of the E-field modeling in practice and research. To improve the E-field modeling's computational efficiency, we developed a self-supervised deep learning (DL) method to compute precise TMS E-fields. Given a head model and the primary E-field generated by TMS coils, a DL model was built to generate a E-field by minimizing a loss function that measures how well the generated E-field fits the governing PDE. The DL model was trained in a self-supervised manner, which does not require any external supervision. We evaluated the DL model using both a simulated sphere head model and realistic head models of 125 individuals and compared the accuracy and computational speed of the DL model with a state-of-the-art FEM. In realistic head models, the DL model obtained accurate E-fields that were significantly correlated with the FEM solutions. The DL model could obtain precise E-fields within seconds for whole head models at a high spatial resolution, faster than the FEM. The DL model built for the simulated sphere head model also obtained an accurate E-field whose average difference from the analytical E-fields was 0.0054, comparable to the FEM solution. These results demonstrated that the self-supervised DL method could obtain precise E-fields comparable to the FEM solutions with improved computational speed.
电场(E 场)由经颅磁刺激(TMS)产生,可以使用偏微分方程(PDE)来建模。使用最先进的有限元方法(FEM),计算高分辨率 E 场通常需要数十秒,这阻碍了 E 场建模在实践和研究中的广泛应用。为了提高 E 场建模的计算效率,我们开发了一种自监督深度学习(DL)方法来计算精确的 TMS E 场。给定头部模型和 TMS 线圈产生的主要 E 场,建立了一个 DL 模型,通过最小化损失函数来生成 E 场,该损失函数衡量生成的 E 场与控制 PDE 的拟合程度。DL 模型以自监督的方式进行训练,不需要任何外部监督。我们使用模拟球体头部模型和 125 个人的真实头部模型来评估 DL 模型,并将 DL 模型与最先进的 FEM 的准确性和计算速度进行比较。在真实的头部模型中,DL 模型获得了与 FEM 解显著相关的准确 E 场。DL 模型可以在几秒钟内为整个头部模型以高空间分辨率获得精确的 E 场,比 FEM 快。为模拟球体头部模型构建的 DL 模型也获得了准确的 E 场,其与解析 E 场的平均差异为 0.0054,与 FEM 解相当。这些结果表明,自监督的 DL 方法可以以提高的计算速度获得与 FEM 解相当的精确 E 场。