Petersen Eike, Rostalski Philipp
Institute for Electrical Engineering in Medicine, University of Lübeck, Lübeck, Germany.
Front Physiol. 2019 Mar 8;10:176. doi: 10.3389/fphys.2019.00176. eCollection 2019.
Neuromuscular physiology is a vibrant research field that has recently seen exciting advances. Previous publications have focused on thorough analyses of particular aspects of neuromuscular physiology, yet an integration of the various novel findings into a single, comprehensive model is missing. In this article, we provide a unified description of a comprehensive mathematical model of surface electromyographic (EMG) measurements and the corresponding force signal in skeletal muscles, both consolidating and extending the results of previous studies regarding various components of the neuromuscular system. The model comprises motor unit (MU) pool organization, recruitment and rate coding, intracellular action potential generation and the resulting EMG measurements, as well as the generated muscular force during voluntary isometric contractions. Mathematically, it consists of a large number of linear PDEs, ODEs, and various stochastic nonlinear relationships, some of which are solved analytically, others numerically. A parameterization of the electrical and mechanical components of the model is proposed that ensures a physiologically meaningful EMG-force relation in the simulated signals, in particular taking the continuous, size-dependent distribution of MU parameters into account. Moreover, a novel nonlinear transformation of the common drive model input is proposed, which ensures that the model force output equals the desired target force. On a physiological level, this corresponds to adjusting the rate coding model to the force generating capabilities of the simulated muscle, while from a control theoretic point of view, this step is equivalent to an exact linearizing transformation of the controlled neuromuscular system. Finally, an alternative analytical formulation of the EMG model is proposed, which renders the physiological meaning of the model more clear and facilitates a mathematical proof that muscle fibers in this model at no point in time represent a net current source or sink. A consistent description of a complete physiological model as presented here, including thorough justification of model component choices, will facilitate the use of these advanced models in future research. Results of a numerical simulation highlight the model's capability to reproduce many physiological effects observed in experimental measurements, and to produce realistic synthetic data that are useful for the validation of signal processing algorithms.
神经肌肉生理学是一个充满活力的研究领域,最近取得了令人兴奋的进展。以往的出版物侧重于对神经肌肉生理学特定方面的深入分析,但缺少将各种新发现整合到一个单一、全面模型中的情况。在本文中,我们提供了一个关于表面肌电图(EMG)测量和骨骼肌中相应力信号的综合数学模型的统一描述,既巩固又扩展了先前关于神经肌肉系统各个组成部分的研究结果。该模型包括运动单位(MU)池组织、募集和速率编码、细胞内动作电位产生以及由此产生的EMG测量,以及在自愿等长收缩期间产生的肌肉力量。在数学上,它由大量线性偏微分方程、常微分方程和各种随机非线性关系组成,其中一些通过解析求解,另一些通过数值求解。提出了该模型电气和机械组件的参数化方法,以确保模拟信号中具有生理意义的EMG-力关系,特别是考虑到MU参数的连续、大小依赖性分布。此外,提出了一种对共同驱动模型输入的新型非线性变换,可确保模型力输出等于期望的目标力。在生理层面上,这相当于根据模拟肌肉的力产生能力调整速率编码模型,而从控制理论的角度来看,这一步等同于对受控神经肌肉系统进行精确的线性化变换。最后,提出了EMG模型的一种替代解析公式,这使得模型的生理意义更加清晰,并有助于进行数学证明,即该模型中的肌纤维在任何时刻都不代表净电流源或汇。这里给出的完整生理模型的一致描述,包括对模型组件选择的充分论证,将有助于这些先进模型在未来研究中的应用。数值模拟结果突出了该模型再现实验测量中观察到的许多生理效应的能力,以及生成可用于验证信号处理算法的逼真合成数据的能力。