Electrical Stimulation Induced Current Distribution in Peripheral Nerves Varies Significantly with the Extent of Nerve Damage: A Computational Study Utilizing Convolutional Neural Network and Realistic Nerve Models.

Jinze Du, Andres Morales, Pragya Kosta, Jean-Marie C Bouteiller, Gema Martinez, David Warren, Eduardo Fernandez, Gianluca Lazzi
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引用次数: 1

Abstract

Although electrical stimulation is an established treatment option for multiple central nervous and peripheral nervous system diseases, its effects on the tissue and subsequent safety of the stimulation are not well understood. Therefore, it is crucial to design stimulation protocols that maximize therapeutic efficacy while avoiding any potential tissue damage. Further, the stimulation levels need to be adjusted regularly to ensure that they are safe even with the changes to the nerve due to long-term stimulation. Using the latest advances in computing capabilities and machine learning approaches, we developed computational models of peripheral nerve stimulation based on very high-resolution cross-sectional images of the nerves. We generated nerve models constructed from non-stimulated (healthy) and over-stimulated (damaged) rat sciatic nerves to examine how the current density distribution is affected by nerve damage. Using our in-house numerical solver, the Admittance Method (AM), we computed the induced current distribution inside the nerves and compared the current penetration for healthy and damaged nerves. Our computational results indicate that when the nerve is damaged, primarily evidenced by the decreased nerve fiber packing, the current penetrates deeper inside the nerve than in the healthy case. As safety limits for electrical stimulation of biological tissue are still debated, we ultimately aim to utilize our computational models to determine refined safety criteria and help design safer and more efficacious electrical stimulation protocols.

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外周神经中电刺激诱导的电流分布随神经损伤程度的不同而显著变化:一项利用卷积神经网络和真实神经模型的计算研究。
尽管电刺激是多种中枢神经和外周神经系统疾病的既定治疗选择,但其对组织的影响和随后的刺激安全性尚不清楚。因此,设计刺激方案以最大限度地提高治疗效果,同时避免任何潜在的组织损伤,这一点至关重要。此外,刺激水平需要定期调整,以确保即使由于长期刺激而导致神经发生变化,它们也是安全的。利用计算能力和机器学习方法的最新进展,我们基于非常高分辨率的神经横截面图像开发了外周神经刺激的计算模型。我们生成了由未刺激(健康)和过度刺激(受损)的大鼠坐骨神经构建的神经模型,以检查电流密度分布如何受到神经损伤的影响。使用我们的内部数值求解器导纳法(AM),我们计算了神经内部的感应电流分布,并比较了健康和受损神经的电流穿透情况。我们的计算结果表明,当神经受损时,主要通过神经纤维堆积减少来证明,电流比健康情况下更深入神经内部。由于生物组织电刺激的安全极限仍存在争议,我们最终的目标是利用我们的计算模型来确定完善的安全标准,并帮助设计更安全、更有效的电刺激协议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Electrical Stimulation Induced Current Distribution in Peripheral Nerves Varies Significantly with the Extent of Nerve Damage: A Computational Study Utilizing Convolutional Neural Network and Realistic Nerve Models. KANT: A tool for Grounding and Knowledge Management Covid-19 Detection by Wavelet Entropy and Self-adaptive PSO Real-Life Validation of Emotion Detection System with Wearables Measuring Motion Sickness Through Racing Simulator Based on Virtual Reality
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