Real-time simulation of viscoelastic tissue behavior with physics-guided
deep learning
- URL: http://arxiv.org/abs/2301.04614v1
- Date: Wed, 11 Jan 2023 18:17:10 GMT
- Title: Real-time simulation of viscoelastic tissue behavior with physics-guided
deep learning
- Authors: Mohammad Karami and Herv\'e Lombaert and David Rivest-H\'enault
- Abstract summary: We propose a deep learning method for predicting displacement fields of soft tissues with viselastic properties.
The proposed method achieves a better accuracy over the conventional CNN models.
It is hoped that the present investigation will help in filling the gap in applying deep learning in virtual reality.
- Score: 0.8250374560598492
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- 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 based on convolutional
(CNN) and recurrent layers (LSTM) to predict spatiotemporal variations. It is
augmented with a mass conservation law in the lost function to prevent the
generation of physically inconsistent results. The deep learning model is
trained on a set of FEM datasets that are generated from a commercially
available state-of-the-art numerical neurosurgery simulator. The use of the
physics-guided loss function in a deep learning model has led to a better
generalization in the prediction of deformations in unseen simulation cases.
Moreover, the proposed method achieves a better accuracy over the conventional
CNN models, where improvements were observed in unseen tissue from 8% to 30%
depending on the magnitude of external forces. It is hoped that the present
investigation will help in filling the gap in applying deep learning in virtual
reality simulators, hence improving their computational performance (compared
to FEM simulations) and ultimately their usefulness.
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