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基于多任务深度学习的经颅磁刺激中最优线圈位置的实时估计。

Real-time estimation of the optimal coil placement in transcranial magnetic stimulation using multi-task deep learning.

机构信息

Research Unit Medical Informatics, RISC Software GmbH, Softwarepark 32a, Hagenberg, 4232, Austria.

Department of Radiology, Medical University of Graz, Auenbruggerplatz 9, Graz, 8036, Austria.

出版信息

Sci Rep. 2024 Aug 21;14(1):19361. doi: 10.1038/s41598-024-70367-w.

Abstract

Transcranial magnetic stimulation (TMS) has emerged as a promising neuromodulation technique with both therapeutic and diagnostic applications. As accurate coil placement is known to be essential for focal stimulation, computational models have been established to help find the optimal coil positioning by maximizing electric fields at the cortical target. While these numerical simulations provide realistic and subject-specific field distributions, they are computationally demanding, precluding their use in real-time applications. In this paper, we developed a novel multi-task deep neural network which simultaneously predicts the optimal coil placement for a given cortical target as well as the associated TMS-induced electric field. Trained on large amounts of preceding numerical optimizations, the Attention U-Net-based neural surrogate provided accurate coil optimizations in only 35 ms, a fraction of time compared to the state-of-the-art numerical framework. The mean errors on the position estimates were below 2 mm, i.e., smaller than previously reported manual coil positioning errors. The predicted electric fields were also highly correlated (r> 0.97) with their numerical references. In addition to healthy subjects, we validated our approach also in glioblastoma patients. We first statistically underlined the importance of using realistic heterogeneous tumor conductivities instead of simply adopting values from the surrounding healthy tissue. Second, applying the trained neural surrogate to tumor patients yielded similar accurate positioning and electric field estimates as in healthy subjects. Our findings provide a promising framework for future real-time electric field-optimized TMS applications.

摘要

经颅磁刺激(TMS)作为一种有前途的神经调节技术,具有治疗和诊断应用。由于准确的线圈放置对于焦点刺激至关重要,因此已经建立了计算模型来通过最大化皮质靶区的电场来帮助找到最佳的线圈定位。虽然这些数值模拟提供了真实和特定于主体的场分布,但它们计算量大,排除了它们在实时应用中的使用。在本文中,我们开发了一种新颖的多任务深度神经网络,该网络可以同时预测给定皮质靶区的最佳线圈位置以及相关的 TMS 诱导电场。在大量先前的数值优化训练后,基于注意力 U-Net 的神经替代物仅需 35 毫秒即可提供准确的线圈优化,这与最先进的数值框架相比时间大大缩短。位置估计的平均误差低于 2 毫米,即小于先前报道的手动线圈定位误差。预测的电场也与数值参考高度相关(r>0.97)。除了健康受试者,我们还在胶质母细胞瘤患者中验证了我们的方法。我们首先从统计学上强调了使用现实的异质肿瘤电导率而不是简单地采用周围健康组织的值的重要性。其次,将训练有素的神经替代物应用于肿瘤患者,可获得与健康受试者相似的准确定位和电场估计。我们的发现为未来实时电场优化 TMS 应用提供了有前途的框架。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0156/11339299/beff62b312fa/41598_2024_70367_Fig1_HTML.jpg

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