Sartori Massimo, Farina Dario, Lloyd David G
J Biomech. 2014 Nov 28;47(15):3613-21. doi: 10.1016/j.jbiomech.2014.10.009.
Current electromyography (EMG)-driven musculoskeletal models are used to estimate joint moments measured from an individual׳s extremities during dynamic movement with varying levels of accuracy. The main benefit is the underlying musculoskeletal dynamics is simulated as a function of realistic, subject-specific, neural-excitation patterns provided by the EMG data. The main disadvantage is surface EMG cannot provide information on deeply located muscles. Furthermore, EMG data may be affected by cross-talk, recording and post-processing artifacts that could adversely influence the EMG׳s information content. This limits the EMG-driven model׳s ability to calculate the multi-muscle dynamics and the resulting joint moments about multiple degrees of freedom. We present a hybrid neuromusculoskeletal model that combines calibration, subject-specificity, EMG-driven and static optimization methods together. In this, the joint moment tracking errors are minimized by balancing the information content extracted from the experimental EMG data and from that generated by a static optimization method. Using movement data from five healthy male subjects during walking and running we explored the hybrid model׳s best configuration to minimally adjust recorded EMGs and predict missing EMGs while attaining the best tracking of joint moments. Minimally adjusted and predicted excitations substantially improved the experimental joint moment tracking accuracy than current EMG-driven models. The ability of the hybrid model to predict missing muscle EMGs was also examined. The proposed hybrid model enables muscle-driven simulations of human movement while enforcing physiological constraints on muscle excitation patterns. This might have important implications for studying pathological movement for which EMG recordings are limited.
当前的肌电图(EMG)驱动的肌肉骨骼模型用于估计个体在动态运动过程中从四肢测量的关节力矩,其精度各不相同。主要优点是,根据EMG数据提供的真实的、个体特异性的神经兴奋模式来模拟潜在的肌肉骨骼动力学。主要缺点是表面肌电图无法提供深部肌肉的信息。此外,EMG数据可能会受到串扰、记录和后处理伪迹的影响,这些可能会对EMG的信息内容产生不利影响。这限制了EMG驱动模型计算多肌肉动力学以及围绕多个自由度产生的关节力矩的能力。我们提出了一种混合神经肌肉骨骼模型,该模型将校准、个体特异性、EMG驱动和静态优化方法结合在一起。在此模型中,通过平衡从实验EMG数据中提取的信息内容与静态优化方法生成的信息内容,使关节力矩跟踪误差最小化。利用五名健康男性受试者在行走和跑步过程中的运动数据,我们探索了混合模型的最佳配置,以在最小程度调整记录的EMG并预测缺失的EMG的同时,实现对关节力矩的最佳跟踪。与当前的EMG驱动模型相比,经过最小程度调整和预测的激励显著提高了实验关节力矩跟踪精度。我们还检验了混合模型预测缺失肌肉EMG的能力。所提出的混合模型能够在对肌肉兴奋模式施加生理约束的同时,实现对人体运动的肌肉驱动模拟。这可能对研究EMG记录有限的病理运动具有重要意义。