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神经刺激参数化开源模型的验证。

Validation of a parameterized, open-source model of nerve stimulation.

机构信息

The University of Texas at Dallas, Erik Jonsson School of Engineering and Computer Science, 800 W Campbell Road, Richardson, TX, United States of America.

Texas Biomedical Device Center, 800 W Campbell Road, Richardson, TX, United States of America.

出版信息

J Neural Eng. 2021 Aug 11;18(4). doi: 10.1088/1741-2552/ac1983.

Abstract

Peripheral nerve stimulation is an effective treatment for various neurological disorders. The method of activation and stimulation parameters used impact the efficacy of the therapy, which emphasizes the need for tools to model this behavior. Computational modeling of nerve stimulation has proven to be a useful tool for estimating stimulation thresholds, optimizing electrode design, and exploring previously untested stimulation methods. Despite their utility, these tools require access to and familiarity with several pieces of specialized software. A simpler, streamlined process would increase accessibility significantly. We developed an open-source, parameterized model with a simple online user interface that allows user to adjust up to 36 different parameters (https://nervestimlab.utdallas.edu). The model accurately predicts fiber activation thresholds for nerve and electrode combinations reported in literature. Additionally, it replicates characteristic differences between stimulation methods, such as lower thresholds with monopolar stimulation as compared to tripolar stimulation. The model predicted that the difference in threshold between monophasic and biphasic waveforms, a well-characterized phenomenon, is not present during stimulation with bipolar electrodes.testing on the rat sciatic nerve validated this prediction, which has not been previously reported. The accuracy of the model when compared to previous experiments, as well as the ease of use and accessibility to generate testable hypotheses, indicate that this software may represent a useful tool for a variety of nerve stimulation applications.

摘要

周围神经刺激是治疗各种神经紊乱的有效方法。激活方法和使用的刺激参数会影响治疗效果,这强调了需要工具来模拟这种行为。神经刺激的计算建模已被证明是估计刺激阈值、优化电极设计和探索以前未经测试的刺激方法的有用工具。尽管这些工具非常有用,但它们需要访问和熟悉多种专门的软件。一个更简单、更精简的流程将大大提高可访问性。我们开发了一个带有简单在线用户界面的开源、参数化模型,用户可以调整多达 36 个不同的参数 (https://nervestimlab.utdallas.edu)。该模型准确预测了文献中报道的神经和电极组合的纤维激活阈值。此外,它还复制了刺激方法之间的特征差异,例如与三极刺激相比,单极刺激的阈值更低。该模型预测,在双极电极刺激时,单相和双相波形之间的阈值差异(这是一个特征明显的现象)并不存在。在大鼠坐骨神经上的测试验证了这一预测,这在以前的报告中尚未出现过。与以前的实验相比,该模型的准确性,以及生成可测试假设的易用性和可访问性,表明该软件可能代表了各种神经刺激应用的有用工具。

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