IEEE Trans Neural Syst Rehabil Eng. 2018 Jul;26(7):1435-1442. doi: 10.1109/TNSRE.2018.2838448.
This paper aimed to develop a novel electromyography (EMG)-based neural-machine interface (NMI) that is user-generic for continuously predicting coordinated motion betweenmuscle contractionmetacarpophalangeal (MCP) and wrist flexion/extension. The NMI requires a minimum calibration procedure that only involves capturing maximal voluntary muscle contraction for themonitoredmuscles for individual users. At the center of the NMI is a user-generic musculoskeletal model based on the experimental data collected from six able-bodied (AB) subjects and nine different upper limb postures. The generic model was evaluated on-line on both AB subjects and a transradial amputee. The subjectswere instructed to performa virtual hand/wrist posture matching task with different upper limb postures. The on-line performanceof the genericmodelwas also compared with that of the musculoskeletal model customized to each individual user (called "specific model"). All subjects accomplished the assigned virtual tasks while using the user-generic NMI, although the AB subjects produced better performance than the amputee subject. Interestingly, compared with the specific model, the generic model produced comparable completion time, a reduced number of overshoots, and improved path efficiency in the virtual hand/wrist posture matching task. The results suggested that it is possible to design an EMG-driven NMI based on a musculoskeletalmodelthat could fit multiple users, including upper limb amputees, for predicting coordinated MCP and wrist motion. The present new method might address the challenges of existing advanced EMG-based NMI that require frequent and lengthy customization and calibration. Our future research will focus on evaluating the developed NMI for powered prosthetic arms.
本文旨在开发一种新型基于肌电图(EMG)的神经机器接口(NMI),该接口对用户具有通用性,可连续预测肌肉收缩的协同运动,涉及掌指(MCP)关节和腕关节的弯曲/伸展。NMI 需要一个最小的校准程序,仅涉及为每个用户的受监测肌肉捕获最大自主肌肉收缩。NMI 的核心是一个基于从六名健康(AB)受试者和九种不同上肢姿势收集的实验数据的用户通用肌肉骨骼模型。通用模型在 AB 受试者和一名桡骨截断截肢者上进行在线评估。要求受试者使用不同的上肢姿势执行虚拟手/腕姿势匹配任务。还比较了通用模型的在线性能与针对每个个体用户定制的肌肉骨骼模型(称为“特定模型”)的性能。所有受试者都完成了指定的虚拟任务,同时使用了用户通用的 NMI,尽管 AB 受试者的表现优于截肢受试者。有趣的是,与特定模型相比,通用模型在虚拟手/腕姿势匹配任务中产生了可比的完成时间、较少的过冲次数和更高的路径效率。结果表明,基于可适用于包括上肢截肢者在内的多个用户的肌肉骨骼模型,设计一种 EMG 驱动的 NMI 来预测 MCP 和腕关节的协同运动是可能的。本新方法可能解决现有基于先进 EMG 的 NMI 所面临的挑战,这些挑战需要频繁且冗长的定制和校准。我们未来的研究将集中在评估为动力假肢手臂开发的 NMI。