Boosting Personalized Musculoskeletal Modeling With Physics-Informed Knowledge Transfer

被引:14
|
作者
Zhang, Jie [1 ,2 ]
Zhao, Yihui [1 ]
Bao, Tianzhe [3 ]
Li, Zhenhong [1 ]
Qian, Kun [1 ]
Frangi, Alejandro F. [4 ,5 ,6 ]
Xie, Sheng Quan [1 ]
Zhang, Zhi-Qiang [1 ]
机构
[1] Univ Leeds, Sch Elect & Elect Engn, Leeds LS2 9JT, England
[2] Univ Sci & Technol Beijing, Sch Automation & Elect Engn, Beijing 100083, Peoples R China
[3] Univ Hlth & Rehabil Sci, Sch Rehabil Sci & Engn, Qingdao 261000, Peoples R China
[4] Univ Leeds, Sch Comp, Leeds LS2 9JT, England
[5] Alan Turing Inst, London NW1 2DB, England
[6] Katholieke Univ Leuven, Dept Elect Engn, B-3000 Leuven, Belgium
基金
英国工程与自然科学研究理事会;
关键词
Muscles; Electromyography; Data models; Kinematics; Predictive models; Deep learning; Transfer learning; Personalized musculoskeletal model; physics-informed deep transfer learning; surface electromyogram (sEMG); wrist muscle forces and joint kinematics estimation; MACHINE;
D O I
10.1109/TIM.2022.3227604
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Data-driven methods have become increasingly more prominent for musculoskeletal modeling due to their conceptually intuitive simple and fast implementation. However, the performance of a pretrained data-driven model using the data from specific subject(s) may be seriously degraded when validated using the data from a new subject, hindering the utility of the personalized musculoskeletal model in clinical applications. This article develops an active physics-informed deep transfer learning framework to enhance the dynamic tracking capability of the musculoskeletal model on the unseen data. The salient advantages of the proposed framework are twofold. First, for the generic model, physics-based domain knowledge is embedded into the loss function of the data-driven model as soft constraints to penalize/regularize the data-driven model. Second, for the personalized model, the parameters relating to the feature extraction will be directly inherited from the generic model, and only the parameters relating to the subject-specific inference will be fine-tuned by jointly minimizing the conventional data prediction loss and the modified physics-based loss. In this article, we use the synchronous muscle forces and joint kinematics prediction from surface electromyogram (sEMG) as the exemplar to illustrate the proposed framework. Moreover, convolutional neural network (CNN) is employed as the deep neural network to implement the proposed framework, and the physics law between muscle forces and joint kinematics is utilized as the soft constraints. Results of comprehensive experiments on a self-collected dataset from eight healthy subjects indicate the effectiveness and great generalization of the proposed framework.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Physics-Informed Knowledge Transfer for Underwater Monocular Depth Estimation
    Yang, Jinghe
    Gong, Mingming
    Pu, Ye
    COMPUTER VISION - ECCV 2024, PT LXXI, 2025, 15129 : 449 - 465
  • [2] Physics-informed neural networks for modeling atmospheric radiative transfer
    Zucker, Shai
    Batenkov, Dmitry
    Rozenhaimer, Michal Segal
    JOURNAL OF QUANTITATIVE SPECTROSCOPY & RADIATIVE TRANSFER, 2025, 331
  • [3] Boosting Personalized Musculoskeletal Modeling with Deep Transfer Learning: A Case Study
    Han, Lijun
    Cheng, Long
    Li, Houcheng
    Zou, Yongxiang
    ADVANCES IN NEURAL NETWORKS-ISNN 2024, 2024, 14827 : 622 - 629
  • [4] Modeling unobserved geothermal structures using a physics-informed neural network with transfer learning of prior knowledge
    Shima, Akihiro
    Ishitsuka, Kazuya
    Lin, Weiren
    Bjarkason, Elvar K.
    Suzuki, Anna
    GEOTHERMAL ENERGY, 2024, 12 (01):
  • [5] Physics-Informed Machine Learning for Surrogate Modeling of Heat Transfer Phenomena
    Suzuki, Tomoyuki
    Hirohata, Kenji
    Ito, Yasutaka
    Hato, Takehiro
    Kano, Akira
    JOURNAL OF COMPUTATIONAL AND NONLINEAR DYNAMICS, 2023, 18 (11):
  • [6] Toward Robust and Efficient Musculoskeletal Modeling Using Distributed Physics-Informed Deep Learning
    Zhang, Jie
    Ruan, Ziling
    Li, Qing
    Zhang, Zhi-Qiang
    IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2023, 72
  • [7] Modeling and Control of a Chemical Process Network Using Physics-Informed Transfer Learning
    Xiao, Ming
    Wu, Zhe
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2023, 62 (42) : 17216 - 17227
  • [8] Physics-informed differentiable method for piano modeling
    Simionato, Riccardo
    Fasciani, Stefano
    Holm, Sverre
    FRONTIERS IN SIGNAL PROCESSING, 2024, 3
  • [9] Physics-Informed Transfer Learning for Process Control Applications
    Arce Munoz, Samuel
    Pershing, Jonathan
    Hedengren, John D.
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2024,
  • [10] Physics-Informed Neural Networks for Heat Transfer Problems
    Cai, Shengze
    Wang, Zhicheng
    Wang, Sifan
    Perdikaris, Paris
    Karniadakis, George E. M.
    JOURNAL OF HEAT TRANSFER-TRANSACTIONS OF THE ASME, 2021, 143 (06):