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首页> 外文期刊>Journal of Biomechanics >Lumped-parameter electromyogram-driven musculoskeletal hand model: A potential platform for real-time prosthesis control
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Lumped-parameter electromyogram-driven musculoskeletal hand model: A potential platform for real-time prosthesis control

机译:集总参数肌电图驱动的肌肉骨骼手模型:实时假体控制的潜在平台

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摘要

Simple, lumped-parameter musculoskeletal models may be more adaptable and practical for clinical real-time control applications, such as prosthesis control. In this study, we determined whether a lumped-parameter, EMG-driven musculoskeletal model with four muscles could predict wrist and metacarpophalangeal (MCP) joint flexion/extension. Forearm EMG signals and joint kinematics were collected simultaneously from 5 able-bodied (AB) subjects. For one subject with unilateral transradial amputation (TRA), joint kinematics were collected from the sound arm during bilateral mirrored motion. Twenty-two model parameters were optimized such that joint kinematics predicted by EMG-driven forward dynamic simulation closely matched measured kinematics. Cross validation was employed to evaluate the model kinematic predictions using Pearson's correlation coefficient (r). Model predictions of joint angles were highly to very highly positively correlated with measured values at the wrist (AB mean r=0.94, TRA r=0.92) and MCP (AB mean r=0.88, TRA r=0.93) joints during single joint wrist and MCP movements, respectively. In simultaneous multi-joint movement, the prediction accuracy for TRA at the MCP joint decreased (r=0.56), while r-values derived from AB subjects and TRA wrist motion were still above 0.75. Though parameters were optimized to match experimental sub-maximal kinematics, passive and maximum isometric joint moments predicted by the model were comparable to reported experimental measures. Our results showed the promise of a lumped-parameter musculoskeletal model for hand/wrist kinematic estimation. Therefore, the model might be useful for EMG control of powered upper limb prostheses, but more work is needed to demonstrate its online performance. (C) 2016 Elsevier Ltd. All rights reserved.
机译:简单的,集总参数的肌肉骨骼模型对于临床实时控制应用(例如假体控制)可能更具适应性和实用性。在这项研究中,我们确定了由四块肌肉,由肌电图驱动的集总参数驱动的肌肉骨骼模型是否可以预测腕关节和掌指关节(MCP)的屈伸。同时从5名健全(AB)受试者中收集前臂EMG信号和关节运动学。对于一名单侧经radi动脉截肢术(TRA)的受试者,在双边镜像运动期间从声臂收集关节运动学信息。优化了22个模型参数,以使由EMG驱动的前向动态模拟预测的联合运动学与测得的运动学紧密匹配。使用Pearson相关系数(r),使用交叉验证来评估模型运动学预测。单关节手腕和足踝关节的关节角度模型预测与手腕处的测量值(AB平均r = 0.94,TRA r = 0.92)和MCP(AB平均r = 0.88,TRA r = 0.93)高度相关。 MCP动作分别。在同时进行的多关节运动中,MCP关节上TRA的预测准确性下降(r = 0.56),而来自AB对象和TRA腕部运动的r值仍高于0.75。尽管已对参数进行了优化以匹配实验次最大运动学,但模型预测的被动和最大等距关节力矩可与已报道的实验方法相媲美。我们的结果表明了用于手/腕运动学估计的集总参数肌肉骨骼模型的希望。因此,该模型可能对电动上肢假体的EMG控制有用,但需要更多工作来证明其在线性能。 (C)2016 Elsevier Ltd.保留所有权利。

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