Department Artificial Intelligence in Biomedical Engineering, Friedrich-Alexander-Universität Erlangen-Nürnberg, Erlangen 91052, Germany.
Department of Bioengineering, Imperial College London, London W12 0BZ, United Kingdom.
J Neural Eng. 2024 Mar 25;21(2). doi: 10.1088/1741-2552/ad3498.
Surface electromyography (sEMG) is a non-invasive technique that records the electrical signals generated by muscles through electrodes placed on the skin. sEMG is the state-of-the-art method used to control active upper limb prostheses because of the association between its amplitude and the neural drive sent from the spinal cord to muscles. However, accurately estimating the kinematics of a freely moving human hand using sEMG from extrinsic hand muscles remains a challenge. Deep learning has been recently successfully applied to this problem by mapping raw sEMG signals into kinematics. Nonetheless, the optimal number of EMG signals and the type of pre-processing that would maximize performance have not been investigated yet.Here, we analyze the impact of these factors on the accuracy in kinematics estimates. For this purpose, we processed monopolar sEMG signals that were originally recorded from 320 electrodes over the forearm muscles of 13 subjects. We used a previously published deep learning method that can map the kinematics of the human hand with real-time resolution.While myocontrol algorithms essentially use the temporal envelope of the EMG signal as the only EMG feature, we show that our approach requires the full bandwidth of the signal in the temporal domain for accurate estimates. Spatial filtering however, had a smaller impact and low-order spatial filters may be suitable. Moreover, reducing the number of channels by ablation resulted in large performance losses. The highest accuracy was reached with the highest number of available sensors ( = 320). Importantly and unexpected, our results suggest that increasing the number of channels above those used in this study may further enhance the accuracy in predicting the kinematics of the human hand.We conclude that full bandwidth high-density EMG systems of hundreds of electrodes are needed for accurate kinematic estimates of the human hand.
表面肌电图(sEMG)是一种非侵入性技术,它通过放置在皮肤上的电极记录肌肉产生的电信号。sEMG 是控制主动上肢假肢的最新方法,因为其幅度与脊髓发送到肌肉的神经驱动之间存在关联。然而,使用来自外在手部肌肉的 sEMG 准确估计自由移动的人手的运动学仍然是一个挑战。深度学习最近已成功应用于通过将原始 sEMG 信号映射到手部运动学来解决此问题。然而,尚未研究可最大限度提高性能的最佳 EMG 信号数量和预处理类型。在这里,我们分析了这些因素对手部运动学估计准确性的影响。为此,我们处理了原本记录于 13 位受试者前臂肌肉上的 320 个电极的单极 sEMG 信号。我们使用了先前发表的深度学习方法,可以实时分辨率映射人手的运动学。虽然肌控算法本质上仅将 EMG 信号的时间包络用作唯一的 EMG 特征,但我们表明,我们的方法需要信号在时域内的全带宽才能进行准确的估计。然而,空间滤波的影响较小,低阶空间滤波器可能是合适的。此外,通过消融减少通道数量会导致性能损失很大。使用最高数量的可用传感器(= 320)达到了最高精度。重要的是,出人意料的是,我们的结果表明,在预测人手运动学方面,增加超过本研究中使用的通道数量可能会进一步提高准确性。我们得出结论,需要数百个电极的全带宽高密度 EMG 系统才能准确估计人手的运动学。