Boosting Personalised Musculoskeletal Modelling with Physics-informed Knowledge Transfer
Jie Zhang, Yihui Zhao, Tianzhe Bao, Zhenhong Li, Kun Qian, Alejandro, F. Frangi, Sheng Quan Xie, Zhi-Qiang Zhang

TL;DR
This paper introduces a physics-informed deep transfer learning framework that improves personalized musculoskeletal models' accuracy on unseen data by embedding physics knowledge into the learning process, demonstrated with muscle force and joint kinematics prediction.
Contribution
It proposes a novel transfer learning approach that incorporates physics-based constraints into deep neural networks for personalized musculoskeletal modeling.
Findings
Enhanced model generalization to unseen subjects
Effective integration of physics laws as soft constraints
Improved prediction accuracy on experimental data
Abstract
Data-driven methods have become increasingly more prominent for musculoskeletal modelling due to their conceptually intuitive simple and fast implementation. However, the performance of a pre-trained 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 personalised musculoskeletal model in clinical applications. This paper 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: 1) For the generic model, physics-based domain knowledge is embedded into the loss function of the data-driven model as soft constraints to penalise/regularise the data-driven model. 2) For the personalised model, the parameters relating to…
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Taxonomy
TopicsMuscle activation and electromyography studies · Stroke Rehabilitation and Recovery · Sports injuries and prevention
