Department of Bioengineering, Imperial College London, London SW7 2AZ, United Kingdom.
Department of Civil and Environmental Engineering, Imperial College London, London SW7 2AZ, United Kingdom.
eNeuro. 2023 Sep 13;10(9). doi: 10.1523/ENEURO.0064-23.2023. Print 2023 Sep.
The spinal motor neurons are the only neural cells whose individual activity can be noninvasively identified. This is usually done using grids of surface electromyographic (EMG) electrodes and source separation algorithms; an approach called EMG decomposition. In this study, we combined computational and experimental analyses to assess how the design parameters of grids of electrodes influence the number and the properties of the identified motor units. We first computed the percentage of motor units that could be theoretically discriminated within a pool of 200 simulated motor units when decomposing EMG signals recorded with grids of various sizes and interelectrode distances (IEDs). Increasing the density, the number of electrodes, and the size of the grids, increased the number of motor units that our decomposition algorithm could theoretically discriminate, i.e., up to 83.5% of the simulated pool (range across conditions: 30.5-83.5%). We then identified motor units from experimental EMG signals recorded in six participants with grids of various sizes (range: 2-36 cm) and IED (range: 4-16 mm). The configuration with the largest number of electrodes and the shortest IED maximized the number of identified motor units (56 ± 14; range: 39-79) and the percentage of early recruited motor units within these samples (29 ± 14%). Finally, the number of identified motor units further increased with a prototyped grid of 256 electrodes and an IED of 2 mm. Taken together, our results showed that larger and denser surface grids of electrodes allow to identify a more representative pool of motor units than currently reported in experimental studies.
脊髓运动神经元是唯一可以非侵入性识别其个体活动的神经细胞。这通常是通过表面肌电图 (EMG) 电极网格和源分离算法来实现的;这种方法称为 EMG 分解。在这项研究中,我们结合了计算和实验分析,以评估电极网格的设计参数如何影响识别出的运动单元的数量和特性。我们首先计算了当使用各种大小和电极间距离 (IED) 的网格记录 EMG 信号时,在 200 个模拟运动单元池中理论上可以区分的运动单元的百分比。增加网格的密度、电极数量和大小,可以增加我们的分解算法理论上可以区分的运动单元的数量,即高达 83.5%的模拟池(条件范围:30.5-83.5%)。然后,我们使用各种大小(范围:2-36 cm)和 IED(范围:4-16 mm)的网格从六名参与者的实验 EMG 信号中识别运动单元。电极数量最多和 IED 最短的配置最大限度地增加了识别的运动单元数量(56±14;范围:39-79)和这些样本中早期募集的运动单元的百分比(29±14%)。最后,使用具有 256 个电极和 2mm IED 的原型网格进一步增加了识别的运动单元数量。总之,我们的结果表明,更大和更密集的表面电极网格可以识别出比目前在实验研究中报道的更具代表性的运动单元池。