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使用强化学习从肌电图或关节运动学估算人体关节力矩:基于肌肉骨骼的生物力学的替代解决方案。

Using Reinforcement Learning to Estimate Human Joint Moments From Electromyography or Joint Kinematics: An Alternative Solution to Musculoskeletal-Based Biomechanics.

机构信息

Joint Department of Biomedical Engineering, University of North Carolina at Chapel Hill/North Carolina State University, Raleigh, NC 27695.

Department of Mechanical and Aerospace Engineering, North Carolina State University, Raleigh, NC 27695.

出版信息

J Biomech Eng. 2021 Apr 1;143(4). doi: 10.1115/1.4049333.

Abstract

Reinforcement learning (RL) has potential to provide innovative solutions to existing challenges in estimating joint moments in motion analysis, such as kinematic or electromyography (EMG) noise and unknown model parameters. Here, we explore feasibility of RL to assist joint moment estimation for biomechanical applications. Forearm and hand kinematics and forearm EMGs from four muscles during free finger and wrist movement were collected from six healthy subjects. Using the proximal policy optimization approach, we trained two types of RL agents that estimated joint moment based on measured kinematics or measured EMGs, respectively. To quantify the performance of trained RL agents, the estimated joint moment was used to drive a forward dynamic model for estimating kinematics, which was then compared with measured kinematics using Pearson correlation coefficient. The results demonstrated that both trained RL agents are feasible to estimate joint moment for wrist and metacarpophalangeal (MCP) joint motion prediction. The correlation coefficients between predicted and measured kinematics, derived from the kinematics-driven agent and subject-specific EMG-driven agents, were 98% ± 1% and 94% ± 3% for the wrist, respectively, and were 95% ± 2% and 84% ± 6% for the metacarpophalangeal joint, respectively. In addition, a biomechanically reasonable joint moment-angle-EMG relationship (i.e., dependence of joint moment on joint angle and EMG) was predicted using only 15 s of collected data. In conclusion, this study illustrates that an RL approach can be an alternative technique to conventional inverse dynamic analysis in human biomechanics study and EMG-driven human-machine interfacing applications.

摘要

强化学习 (RL) 有潜力为运动分析中估计关节力矩的现有挑战提供创新的解决方案,例如运动学或肌电图 (EMG) 噪声和未知模型参数。在这里,我们探索了 RL 辅助生物力学应用中关节力矩估计的可行性。从六位健康受试者中收集了自由手指和手腕运动期间前臂和手部运动学以及四块肌肉的前臂 EMG。使用近端策略优化方法,我们分别训练了两种基于测量运动学或测量 EMG 来估计关节力矩的 RL 代理。为了量化训练后的 RL 代理的性能,使用估计的关节力矩来驱动正向动力学模型以估计运动学,然后使用 Pearson 相关系数将估计的运动学与测量的运动学进行比较。结果表明,两种训练后的 RL 代理都可以用于估计腕关节和掌指关节 (MCP) 运动预测的关节力矩。由运动学驱动的代理和基于个体 EMG 驱动的代理预测的运动学与测量的运动学之间的相关系数分别为腕关节的 98%±1%和 94%±3%,MCP 关节的 95%±2%和 84%±6%。此外,仅使用 15 秒收集的数据即可预测出具有合理生物力学的关节力矩-角度-EMG 关系(即关节力矩对关节角度和 EMG 的依赖性)。总之,本研究表明,RL 方法可以替代传统的反向动力学分析,用于人体生物力学研究和基于肌电的人机交互应用。

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