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化合物神经动作电位的计算模型:高效基于滤波器的方法来量化组织电导率、传导距离和神经纤维参数的影响。

Computational models of compound nerve action potentials: Efficient filter-based methods to quantify effects of tissue conductivities, conduction distance, and nerve fiber parameters.

机构信息

Department of Biomedical Engineering, Duke University, Durham, North Carolina, United States of America.

Department of Electrical and Computer Engineering, Duke University, Durham, North Carolina, United States of America.

出版信息

PLoS Comput Biol. 2024 Mar 1;20(3):e1011833. doi: 10.1371/journal.pcbi.1011833. eCollection 2024 Mar.

Abstract

BACKGROUND

Peripheral nerve recordings can enhance the efficacy of neurostimulation therapies by providing a feedback signal to adjust stimulation settings for greater efficacy or reduced side effects. Computational models can accelerate the development of interfaces with high signal-to-noise ratio and selective recording. However, validation and tuning of model outputs against in vivo recordings remains computationally prohibitive due to the large number of fibers in a nerve.

METHODS

We designed and implemented highly efficient modeling methods for simulating electrically evoked compound nerve action potential (CNAP) signals. The method simulated a subset of fiber diameters present in the nerve using NEURON, interpolated action potential templates across fiber diameters, and filtered the templates with a weighting function derived from fiber-specific conduction velocity and electromagnetic reciprocity outputs of a volume conductor model. We applied the methods to simulate CNAPs from rat cervical vagus nerve.

RESULTS

Brute force simulation of a rat vagal CNAP with all 1,759 myelinated and 13,283 unmyelinated fibers in NEURON required 286 and 15,860 CPU hours, respectively, while filtering interpolated templates required 30 and 38 seconds on a desktop computer while maintaining accuracy. Modeled CNAP amplitude could vary by over two orders of magnitude depending on tissue conductivities and cuff opening within experimentally relevant ranges. Conduction distance and fiber diameter distribution also strongly influenced the modeled CNAP amplitude, shape, and latency. Modeled and in vivo signals had comparable shape, amplitude, and latency for myelinated fibers but not for unmyelinated fibers.

CONCLUSIONS

Highly efficient methods of modeling neural recordings quantified the large impact that tissue properties, conduction distance, and nerve fiber parameters have on CNAPs. These methods expand the computational accessibility of neural recording models, enable efficient model tuning for validation, and facilitate the design of novel recording interfaces for neurostimulation feedback and understanding physiological systems.

摘要

背景

外周神经记录可以通过提供反馈信号来增强神经刺激疗法的效果,从而调整刺激设置以提高疗效或减少副作用。计算模型可以加速具有高信噪比和选择性记录的接口的开发。然而,由于神经中存在大量纤维,对模型输出进行体内记录的验证和调整在计算上仍然是不可行的。

方法

我们设计并实施了高效的建模方法,用于模拟电诱发复合神经动作电位(CNAP)信号。该方法使用 NEURON 模拟神经中存在的一小部分纤维直径,在纤维直径之间插值动作电位模板,并使用源自纤维特定传导速度和容积导体模型电磁互易输出的加权函数对模板进行滤波。我们应用这些方法来模拟大鼠颈迷走神经的 CNAP。

结果

在 NEURON 中对具有 1759 个有髓和 13283 个无髓纤维的大鼠迷走神经 CNAP 进行暴力模拟分别需要 286 和 15860 CPU 小时,而在台式计算机上对插值模板进行滤波分别需要 30 和 38 秒,同时保持准确性。在实验相关范围内,组织电导率和袖带开口的变化会导致模型化的 CNAP 幅度变化两个数量级以上。传导距离和纤维直径分布也强烈影响模型化的 CNAP 幅度、形状和潜伏期。对于有髓纤维,模型化和体内信号具有相似的形状、幅度和潜伏期,但对于无髓纤维则不然。

结论

高效的神经记录建模方法量化了组织特性、传导距离和神经纤维参数对 CNAP 的巨大影响。这些方法扩展了神经记录模型的计算可访问性,使模型调整能够高效验证,并促进新型记录接口的设计,以实现神经刺激反馈和对生理系统的理解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fea5/10936855/e33911807d7a/pcbi.1011833.g001.jpg

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