Duan Zhihao, Kizyte Asta, Forslund Emelie Butler, Gutierrez-Farewik Elena M, Herman Pawel, Wang Ruoli
Department of Engineering Mechanics, KTH MoveAbility, KTH Royal Institute of Technology, Stockholm, 100 44, Sweden.
Department of Neurobiology, Care Science and Society, Karolinska Institutet, Stockholm, 141 83, Sweden.
J Neuroeng Rehabil. 2025 Jun 5;22(1):128. doi: 10.1186/s12984-025-01659-z.
Individuals who have experienced spinal cord injury (SCI) may exhibit various muscle-related neurophysiological adaptations, including alterations in motor unit (MU) size and firing behavior. However, due to the technical challenges of in vivo measurement, our understanding of the alterations in the electrophysiological parameters of these MUs remains limited. This study proposed an integrated approach using high-density electromyography (HD-EMG) decomposition and motor neuron (MN) modelling to estimate the intrinsic properties of MUs in vivo and investigated alterations of these properties in persons with SCI.
HD-EMG signals were recorded during submaximal isometric dorsiflexion and plantar flexion tasks on tibialis anterior (TA), soleus, and gastrocnemius medialis muscles from twenty-six participants with SCI and eighteen non-disabled controls. The HD-EMG signals were subsequently decomposed into MN spike trains and the common synaptic input to the MN pool was estimated. A simplified leaky integrate-and-fire neuron model was then used to simulate MN spiking trains, with soma size and inert period as tunning parameters, which are crucial for MU recruitment and firing patterns, respectively. These parameters were estimated by fitting the instantaneous discharge frequencies of decomposed and simulated spike trains via a genetic algorithm.
The results showed a prolonged inert period in the TA of the persons with SCI. This finding suggested that the MUs in the TA have a slower recovery period before becoming excitable again, which may result in a lower firing rate of MUs in the TA muscle. No significant differences were observed in the soleus and gastrocnemius medialis muscles between the SCI and control groups for either the soma size or inert period parameters.
The simplified leaky integrate-and-fire model exhibited robustness in estimating MN parameters in vivo, offering valuable insights into personalized MU behavior monitoring. To the best knowledge of authors, this is the first study to combine HD-EMG and MU modeling to investigate MU electrophysiological changes in persons with SCI in vivo. This novel approach offers a comprehensive understanding of MU properties adaptations following neurological disorders and informs the development of novel rehabilitation strategies.
经历过脊髓损伤(SCI)的个体可能会表现出各种与肌肉相关的神经生理适应性变化,包括运动单位(MU)大小和放电行为的改变。然而,由于体内测量的技术挑战,我们对这些运动单位电生理参数变化的理解仍然有限。本研究提出了一种综合方法,使用高密度肌电图(HD-EMG)分解和运动神经元(MN)建模来估计体内运动单位的内在特性,并研究脊髓损伤患者这些特性的变化。
在26名脊髓损伤参与者和18名非残疾对照者的胫骨前肌(TA)、比目鱼肌和腓肠肌内侧进行次最大等长背屈和跖屈任务时,记录HD-EMG信号。随后将HD-EMG信号分解为运动神经元放电序列,并估计运动神经元池的共同突触输入。然后使用简化的泄漏积分发放神经元模型来模拟运动神经元放电序列,将胞体大小和不应期作为调整参数,这两个参数分别对运动单位募集和放电模式至关重要。通过遗传算法拟合分解和模拟放电序列的瞬时放电频率来估计这些参数。
结果显示脊髓损伤患者胫骨前肌的不应期延长。这一发现表明,胫骨前肌中的运动单位在再次变得可兴奋之前有更长的恢复期,这可能导致胫骨前肌中运动单位的放电率降低。在比目鱼肌和腓肠肌内侧,脊髓损伤组和对照组在胞体大小或不应期参数方面均未观察到显著差异。
简化的泄漏积分发放模型在估计体内运动神经元参数方面表现出稳健性,为个性化运动单位行为监测提供了有价值的见解。据作者所知,这是第一项结合HD-EMG和运动单位建模来研究脊髓损伤患者体内运动单位电生理变化的研究。这种新方法提供了对神经疾病后运动单位特性适应性的全面理解,并为新型康复策略的开发提供了依据。