Real-time simulation of viscoelastic tissue behavior with physics-guided deep learning
Mohammad Karami, Herv\'e Lombaert, David Rivest-H\'enault

TL;DR
This paper introduces a physics-guided deep learning approach combining CNN and LSTM layers to simulate viscoelastic tissue behavior in real-time, improving accuracy and generalization over traditional methods for virtual reality surgical training.
Contribution
It presents a novel deep learning model with a physics-guided loss function for more accurate and physically consistent tissue deformation predictions, enabling real-time applications.
Findings
Enhanced prediction accuracy by 8-30% over conventional CNN models.
Better generalization to unseen tissue cases.
Achieved real-time simulation suitable for virtual reality applications.
Abstract
Finite element methods (FEM) are popular approaches for simulation of soft tissues with elastic or viscoelastic behavior. However, their usage in real-time applications, such as in virtual reality surgical training, is limited by computational cost. In this application scenario, which typically involves transportable simulators, the computing hardware severely constrains the size or the level of details of the simulated scene. To address this limitation, data-driven approaches have been suggested to simulate mechanical deformations by learning the mapping rules from FEM generated datasets. Herein, we propose a deep learning method for predicting displacement fields of soft tissues with viscoelastic properties. The main contribution of this work is the use of a physics-guided loss function for the optimization of the deep learning model parameters. The proposed deep learning model is…
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