论文标题
DEEPTDC:基于深度学习的估计,对经颅直流刺激期间诱导的电流估计
DeeptDCS: Deep Learning-Based Estimation of Currents Induced During Transcranial Direct Current Stimulation
论文作者
论文摘要
目的:经颅直流刺激(TDC)是一种非侵入性脑刺激技术,用于在头部产生传导电流并破坏脑功能。为了快速评估TDCS诱导的电流密度,本文提出了一个名为DEEPTDCS的深度学习模拟器。方法:模拟器利用注意力网络的注意力为u-net,将头部组织的体积导体模型(VCM)作为输入,并输出整个头部的三维电流密度分布。电极配置也不增加输入通道的数量,并将其纳入VCM。这使得在提议的仿真器的训练和测试中可以直接合并电极(例如厚度,形状,大小和位置)的非参数特征。结果:关注U-NET优于标准U-NET及其其他三种变体(剩余的U-NET,关注剩余的U-NET和多尺度剩余U-NET)。通过微调模型,可以极大地增强DEEPTDC对非训练电极配置的概括能力。一个通过DEEPTDC仿真所需的计算时间是一秒钟的一部分。结论:与基于物理的开源模拟器相比,DEEPTDC的大小至少两个级数,同时提供令人满意的准确结果。意义:高计算效率允许在需要重复执行的应用中使用DEEPTDC,例如不确定性量化和TDC的优化研究。
Objective: Transcranial direct current stimulation (tDCS) is a non-invasive brain stimulation technique used to generate conduction currents in the head and disrupt brain functions. To rapidly evaluate the tDCS-induced current density in near real-time, this paper proposes a deep learning-based emulator, named DeeptDCS. Methods: The emulator leverages Attention U-net taking the volume conductor models (VCMs) of head tissues as inputs and outputting the three-dimensional current density distribution across the entire head. The electrode configurations are also incorporated into VCMs without increasing the number of input channels; this enables the straightforward incorporation of the non-parametric features of electrodes (e.g., thickness, shape, size, and position) in the training and testing of the proposed emulator. Results: Attention U-net outperforms standard U-net and its other three variants (Residual U-net, Attention Residual U-net, and Multi-scale Residual U-net) in terms of accuracy. The generalization ability of DeeptDCS to non-trained electrode configurations can be greatly enhanced through fine-tuning the model. The computational time required by one emulation via DeeptDCS is a fraction of a second. Conclusion: DeeptDCS is at least two orders of magnitudes faster than a physics-based open-source simulator, while providing satisfactorily accurate results. Significance: The high computational efficiency permits the use of DeeptDCS in applications requiring its repetitive execution, such as uncertainty quantification and optimization studies of tDCS.