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脑深部电刺激计算容积导体模型中神经激活程度的自适应估计。

Adaptive Estimation of the Neural Activation Extent in Computational Volume Conductor Models of Deep Brain Stimulation.

出版信息

IEEE Trans Biomed Eng. 2018 Aug;65(8):1828-1839. doi: 10.1109/TBME.2017.2758324. Epub 2017 Dec 6.

Abstract

OBJECTIVE

The aim of this study is to propose an adaptive scheme embedded into an open-source environment for the estimation of the neural activation extent during deep brain stimulation and to investigate the feasibility of approximating the neural activation extent by thresholds of the field solution.

METHODS

Open-source solutions for solving the field equation in volume conductor models of deep brain stimulation and computing the neural activation are embedded into a Python package to estimate the neural activation dependent on the dielectric tissue properties and axon parameters by employing a spatially adaptive scheme. Feasibility of the approximation of the neural activation extent by field thresholds is investigated to further reduce the computational expense.

RESULTS

The varying extents of neural activation for different patient-specific dielectric properties were estimated with the adaptive scheme. The results revealed the strong influence of the dielectric properties of the encapsulation layer in the acute and chronic phase after surgery. The computational time required to determine the neural activation extent in each studied model case was substantially reduced.

CONCLUSION

The neural activation extent is altered by patient-specific parameters. Threshold values of the electric potential and electric field norm facilitate a computationally efficient method to estimate the neural activation extent.

SIGNIFICANCE

The presented adaptive scheme is able to robustly determine neural activation extents and field threshold estimates for varying dielectric tissue properties and axon diameters while substantially reducing the computational expense.

摘要

目的

本研究旨在提出一种嵌入开源环境的自适应方案,用于估计深部脑刺激过程中的神经激活程度,并研究通过场解的阈值来近似神经激活程度的可行性。

方法

将用于解决深部脑刺激容积导体模型中场方程和计算神经激活的开源解决方案嵌入到一个 Python 包中,通过使用空间自适应方案,根据介电组织特性和轴突参数来估计依赖于神经激活的程度。研究了通过场阈值来近似神经激活程度的可行性,以进一步降低计算成本。

结果

采用自适应方案估计了不同患者特定介电特性的神经激活程度的变化。结果显示了手术后急性和慢性阶段包膜层介电特性的强烈影响。在每个研究模型案例中确定神经激活程度所需的计算时间大大减少。

结论

神经激活程度受患者特定参数的影响。电位和电场范数的阈值值有助于一种计算效率高的方法来估计神经激活程度。

意义

所提出的自适应方案能够稳健地确定神经激活程度和场阈值估计,适用于变化的介电组织特性和轴突直径,同时大大降低了计算成本。

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