IEEE Trans Biomed Eng. 2023 Jun;70(6):1911-1920. doi: 10.1109/TBME.2022.3232067. Epub 2023 May 19.
Robust neural decoding of intended motor output is crucial to enable intuitive control of assistive devices, such as robotic hands, to perform daily tasks. Few existing neural decoders can predict kinetic and kinematic variables simultaneously. The current study developed a continuous neural decoding approach that can concurrently predict fingertip forces and joint angles of multiple fingers.
We obtained motoneuron firing activities by decomposing high-density electromyogram (HD EMG) signals of the extrinsic finger muscles. The identified motoneurons were first grouped and then refined specific to each finger (index or middle) and task (finger force and dynamic movement) combination. The refined motoneuron groups (separate matrix) were then applied directly to new EMG data in real-time involving both finger force and dynamic movement tasks produced by both fingers. EMG-amplitude-based prediction was also performed as a comparison.
We found that the newly developed decoding approach outperformed the EMG-amplitude method for both finger force and joint angle estimations with a lower prediction error (Force: 3.47±0.43 vs 6.64±0.69% MVC, Joint Angle: 5.40±0.50° vs 12.8±0.65°) and a higher correlation (Force: 0.75±0.02 vs 0.66±0.05, Joint Angle: 0.94±0.01 vs 0.5±0.05) between the estimated and recorded motor output. The performance was also consistent for both fingers.
The developed neural decoding algorithm allowed us to accurately and concurrently predict finger forces and joint angles of multiple fingers in real-time.
Our approach can enable intuitive interactions with assistive robotic hands, and allow the performance of dexterous hand skills involving both force control tasks and dynamic movement control tasks.
稳健的运动意图神经解码对于实现对辅助设备(如机器人手)的直观控制至关重要,以便完成日常任务。目前,很少有神经解码器能够同时预测动力学和运动学变量。本研究开发了一种连续的神经解码方法,可以同时预测多个手指的指尖力和关节角度。
我们通过分解外在手指肌肉的高密度肌电图(HD EMG)信号来获得运动神经元的放电活动。首先对识别出的运动神经元进行分组,然后根据每个手指(食指或中指)和任务(手指力和动态运动)的组合进行细化。然后,将细化后的运动神经元组(单独的矩阵)直接应用于实时新的 EMG 数据,涉及两个手指产生的手指力和动态运动任务。还进行了基于 EMG 幅度的预测作为比较。
我们发现,新开发的解码方法在手指力和关节角度估计方面优于基于 EMG 幅度的方法,具有更低的预测误差(力:3.47±0.43% vs 6.64±0.69% MVC,关节角度:5.40±0.50° vs 12.8±0.65°)和更高的相关性(力:0.75±0.02 vs 0.66±0.05,关节角度:0.94±0.01 vs 0.5±0.05),估计的和记录的运动输出之间。对于两个手指,性能也是一致的。
开发的神经解码算法允许我们实时准确地同时预测多个手指的手指力和关节角度。
我们的方法可以实现与辅助机器人手的直观交互,并允许执行涉及力控制任务和动态运动控制任务的灵巧手部技能。