IEEE Trans Neural Syst Rehabil Eng. 2018 Aug;26(8):1566-1576. doi: 10.1109/TNSRE.2018.2849202. Epub 2018 Jun 20.
Surface electromyography (sEMG) is a promising computer access method for individuals with motor impairments. However, optimal sensor placement is a tedious task requiring trial-and-error by an expert, particularly when recording from facial musculature likely to be spared in individuals with neurological impairments. We sought to reduce the sEMG sensor configuration complexity by using quantitative signal features extracted from a short calibration task to predict human-machine interface (HMI) performance. A cursor control system allowed individuals to activate specific sEMG-targeted muscles to control an onscreen cursor and navigate a target selection task. The task was repeated for a range of sensor configurations to elicit a range of signal qualities. Signal features were extracted from the calibration of each configuration and examined via a principle component factor analysis in order to predict the HMI performance during subsequent tasks. Feature components most influenced by the energy and the complexity of the EMG signal and muscle activity between the sensors were significantly predictive of the HMI performance. However, configuration order had a greater effect on performance than the configurations, suggesting that non-experts can place sEMG sensors in the vicinity of usable muscle sites for computer access and healthy individuals will learn to efficiently control the HMI system.
表面肌电图(sEMG)是一种有前途的计算机访问方法,适用于运动障碍患者。然而,最佳传感器放置是一项繁琐的任务,需要专家反复试验,特别是在记录可能免受神经损伤患者面部肌肉影响时。我们试图通过使用从短校准任务中提取的定量信号特征来减少 sEMG 传感器配置的复杂性,以预测人机界面(HMI)的性能。光标控制系统允许个人激活特定的 sEMG 靶向肌肉来控制屏幕上的光标并导航目标选择任务。针对一系列传感器配置重复执行该任务,以引出一系列信号质量。从每个配置的校准中提取信号特征,并通过主成分因子分析进行检查,以预测随后任务中的 HMI 性能。受 EMG 信号能量和复杂性以及传感器之间肌肉活动影响最大的特征分量可显著预测 HMI 性能。然而,配置顺序对性能的影响大于配置,这表明非专家可以将 sEMG 传感器放置在可用于计算机访问的可用肌肉部位附近,而健康个体将学会有效地控制 HMI 系统。