论文标题

肌肉骨骼建模的物理信息深度学习:从表面EMG预测肌肉力和关节运动学

Physics-informed Deep Learning for Musculoskeletal Modelling: Predicting Muscle Forces and Joint Kinematics from Surface EMG

论文作者

Zhang, Jie, Zhao, Yihui, Shone, Fergus, Li, Zhenhong, Frangi, Alejandro F., Xie, Shengquan, Zhang, Zhiqiang

论文摘要

肌肉骨骼模型已被广泛用于详细的生物力学分析,以表征各种功能障碍,因为它们能够估算运动变量(即肌肉力量和关节力矩),无法在体内轻易测量。基于物理学的计算神经肌肉骨骼模型可以解释神经驱动与肌肉,肌肉动力学,身体和关节运动学和动力学之间的动态相互作用。尽管如此,此类解决方案仍遭受了缓慢的影响,尤其是对于复杂模型而言,阻碍了实时应用程序中的实用程序。近年来,由于快速和简单实施的好处,数据驱动的方法已成为一种有希望的替代方法,但它们无法反映基本的神经力学过程。本文提出了一个针对肌肉骨骼建模的物理知识的深度学习框架,其中基于物理的域知识被带入数据驱动的模型中,作为软限制,以惩罚/正常数据驱动的模型。我们将同步肌肉力和关节运动学预测从表面肌电图(SEMG)作为示例来说明所提出的框架。卷积神经网络(CNN)被用作实施拟议框架的深神经网络。同时,使用肌肉力量和关节运动学之间的物理定律,使用了软限制。对两组数据进行了实验验证,包括一组基准数据集和一个来自六个健康受试者的自我收集的数据集。实验结果证明了拟议框架的有效性和鲁棒性。

Musculoskeletal models have been widely used for detailed biomechanical analysis to characterise various functional impairments given their ability to estimate movement variables (i.e., muscle forces and joint moment) which cannot be readily measured in vivo. Physics-based computational neuromusculoskeletal models can interpret the dynamic interaction between neural drive to muscles, muscle dynamics, body and joint kinematics and kinetics. Still, such set of solutions suffers from slowness, especially for the complex models, hindering the utility in real-time applications. In recent years, data-driven methods has emerged as a promising alternative due to the benefits in speedy and simple implementation, but they cannot reflect the underlying neuromechanical processes. This paper proposes a physics-informed deep learning framework for musculoskeletal modelling, where physics-based domain knowledge is brought into the data-driven model as soft constraints to penalise/regularise the data-driven model. We use the synchronous muscle forces and joint kinematics prediction from surface electromyogram (sEMG) as the exemplar to illustrate the proposed framework. Convolutional neural network (CNN) is employed as the deep neural network to implement the proposed framework. At the same time, the physics law between muscle forces and joint kinematics is used the soft constraint. Experimental validations on two groups of data, including one benchmark dataset and one self-collected dataset from six healthy subjects, are performed. The experimental results demonstrate the effectiveness and robustness of the proposed framework.

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