Center for Sensory-Motor Interaction, Department of Health Science and Technology, Aalborg University, Aalborg DK-9220, Denmark.
IEEE Trans Neural Syst Rehabil Eng. 2012 May;20(3):371-8. doi: 10.1109/TNSRE.2011.2178039. Epub 2011 Dec 13.
This paper proposes and tests on able-bodied subjects a control strategy that can be practically applied in unilateral transradial amputees for simultaneous and proportional control of multiple degrees-of-freedom (DOFs). We used artificial neural networks to estimate kinematics of the complex wrist/hand from high-density surface electromyography (EMG) signals of the contralateral limb during mirrored bilateral movements in free space. The movements tested involved the concurrent activation of wrist flexion/extension, radial/ulnar deviation, forearm pronation/supination, and hand closing. The accuracy in estimation was in the range 79%-88% (r(2) index) for the four DOFs in six able-bodied subjects. Moreover, the estimation of the pronation/supination angle (wrist rotation) was influenced by the reduction in the number of EMG channels used for the estimation to a greater extent than the other DOFs. In conclusion, the proposed method and set-up provide a viable means for proportional and simultaneous control of multiple DOFs for hand prostheses.
本文提出并在健全受试者身上测试了一种控制策略,该策略可实际应用于单侧桡骨截肢者,以实现多个自由度(DOF)的同时和比例控制。我们使用人工神经网络来估计复杂的腕/手的运动学,方法是从对侧肢体在自由空间中镜像双侧运动时的高密度表面肌电图(EMG)信号中进行估计。测试的运动涉及腕关节屈伸、桡骨/尺骨偏斜、前臂旋前/旋后和手闭合的同时激活。在六个健康受试者中,四个 DOF 的估计准确性在 79%-88%(r(2)指数)范围内。此外,用于估计的 EMG 通道数量的减少对手部旋转(腕关节旋转)的估计影响大于其他 DOF。总之,所提出的方法和设置为手部假肢的多自由度的比例和同步控制提供了一种可行的手段。