Bélaise Colombe, Michaud Benjamin, Dal Maso Fabien, Mombaur Katja, Begon Mickaël
Laboratory of Simulation and Modelisation of Movement, Université de Montréal, Montreal, QC, Canada; Sainte-Justine Hospital Research Center, Montreal, QC, Canada.
Laboratory of Simulation and Modelisation of Movement, Université de Montréal, Montreal, QC, Canada; Sainte-Justine Hospital Research Center, Montreal, QC, Canada; Department of Kinesiology, Université de Montréal, Montreal, QC, Canada.
J Biomech. 2018 Feb 8;68:99-106. doi: 10.1016/j.jbiomech.2017.12.028. Epub 2018 Jan 4.
The choice of the cost-function for predicting muscle forces during a movement remains a challenge, especially in patients with neuromuscular disorders. Forward dynamics-based optimisations mainly track joint kinematics or torques, combined with a least-excitation criterion. Tracking marker trajectories and/or electromyography (EMG) has rarely been proposed. Our objective was to determine the best tracking objective-function to accurately predict the upper-limb muscle forces. A musculoskeletal model was created and EMG was simulated to obtain a reference movement - a shoulder abduction. A Gaussian noise (mean = 0; standard deviation = 15%) was added to the simulated EMG. Another noise - corresponding to the actual soft tissue artefacts (STA) of experimental shoulder abduction movements - was added to the trajectories of the markers placed on the model. Muscle forces were estimated from these noisy data, using forward dynamics assisted by six non-linear least-squared objective-functions. These functions involved the tracking of marker trajectories, joint angles or torques, with and without EMG-tracking. All six approaches used the same musculoskeletal model and were solved using a direct multiple shooting algorithm. Finally, the predicted joint angles, muscle forces and activations were compared to the reference values, using root-mean-square errors (RMSe) and biases. The force RMSe of the approach tracking both marker trajectories and EMG (18.45 ± 12.60 N) was almost five times lower than the one of the approach tracking only joint angles (82.37 ± 66.26 N) or torques (85.10 ± 116.40 N). Therefore, using EMG as a complementary tracking-data in forward dynamics seems to be promising for the estimation of muscle forces.
在运动过程中选择用于预测肌肉力量的成本函数仍然是一项挑战,尤其是对于患有神经肌肉疾病的患者。基于正向动力学的优化主要跟踪关节运动学或扭矩,并结合最小激励准则。很少有人提出跟踪标记轨迹和/或肌电图(EMG)。我们的目标是确定最佳的跟踪目标函数,以准确预测上肢肌肉力量。创建了一个肌肉骨骼模型,并模拟了肌电图以获得参考运动——肩部外展。向模拟的肌电图中添加了高斯噪声(均值 = 0;标准差 = 15%)。另一种噪声——对应于实验性肩部外展运动的实际软组织伪影(STA)——被添加到放置在模型上的标记轨迹中。使用六个非线性最小二乘目标函数辅助的正向动力学,从这些有噪声的数据中估计肌肉力量。这些函数涉及标记轨迹、关节角度或扭矩的跟踪,有或没有肌电图跟踪。所有六种方法都使用相同的肌肉骨骼模型,并使用直接多重射击算法求解。最后,使用均方根误差(RMSe)和偏差将预测的关节角度、肌肉力量和激活与参考值进行比较。跟踪标记轨迹和肌电图的方法的力RMSe(18.45±12.60 N)几乎比仅跟踪关节角度(82.37±66.26 N)或扭矩(85.10±116.40 N)的方法低五倍。因此,在正向动力学中使用肌电图作为补充跟踪数据似乎有望用于估计肌肉力量。