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基于统计地面反力估计的混合神经肌肉骨骼建模在步态中进行关节力矩预测:一项探索性研究。

Joint Torque Prediction via Hybrid Neuromusculoskeletal Modelling during Gait Using Statistical Ground Reaction Estimates: An Exploratory Study.

机构信息

Department of Electrical Engineering and Automation, Aalto University, 02150 Espoo, Finland.

出版信息

Sensors (Basel). 2021 Oct 2;21(19):6597. doi: 10.3390/s21196597.

Abstract

Joint torques of lower extremity are important clinical indicators of gait capability. This parameter can be quantified via hybrid neuromusculoskeletal modelling that combines electromyography-driven modelling and static optimisation. The simulations rely on kinematics and external force measurements, for example, ground reaction forces (GRF) and the corresponding centres of pressure (COP), which are conventionally acquired using force plates. This bulky equipment, however, hinders gait analysis in real-world environments. While this portability issue could potentially be solved by estimating the parameters through machine learning, the effect of the estimation errors on joint torque prediction with biomechanical models remains to be investigated. This study first estimated GRF and COP through feedforward artificial neural networks, and then leveraged them to predict lower-limb sagittal joint torques via (i) inverse dynamics and (ii) hybrid modelling. The approach was evaluated on five healthy subjects, individually. The predicted torques were validated with the measured torques, showing that hip was the most sensitive whereas ankle was the most resistive to the GRF/COP estimates for both models, with average metrics values being 0.70 < R2 < 0.97 and 0.069 < RMSE < 0.15 (Nm/kg). This study demonstrated the feasibility of torque prediction based on personalised (neuro)musculoskeletal modelling using statistical ground reaction estimates, thus providing insights into potential real-world mobile joint torque quantification.

摘要

下肢关节扭矩是步态能力的重要临床指标。该参数可通过混合神经肌肉骨骼建模进行量化,该建模结合了肌电图驱动建模和静态优化。模拟依赖于运动学和外力测量,例如地面反作用力 (GRF) 和相应的压力中心 (COP),这些通常使用测力板获得。然而,这种笨重的设备妨碍了现实环境中的步态分析。虽然通过机器学习估计参数可能会解决这种便携性问题,但生物力学模型中关节扭矩预测的估计误差的影响仍有待研究。本研究首先通过前馈人工神经网络估计 GRF 和 COP,然后利用它们通过 (i) 逆动力学和 (ii) 混合建模来预测下肢矢状面关节扭矩。该方法分别对五名健康受试者进行了评估。所预测的扭矩与测量的扭矩进行了验证,结果表明,对于两种模型,髋关节对 GRF/COP 估计最敏感,而踝关节最抵抗,平均指标值为 0.70 < R2 < 0.97 和 0.069 < RMSE < 0.15 (Nm/kg)。本研究证明了基于个性化(神经)肌肉骨骼建模和统计地面反作用力估计进行扭矩预测的可行性,从而为潜在的现实世界移动关节扭矩量化提供了思路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/de72/8512679/94439287eef7/sensors-21-06597-g001.jpg

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