Conditional Graph Neural Network for Predicting Soft Tissue Deformation and Forces
Journal:
arXiv
Published Date:
Jul 7, 2025
Abstract
Soft tissue simulation in virtual environments is becoming increasingly
important for medical applications. However, the high deformability of soft
tissue poses significant challenges. Existing methods rely on segmentation,
meshing and estimation of stiffness properties of tissues. In addition, the
integration of haptic feedback requires precise force estimation to enable a
more immersive experience. We introduce a novel data-driven model, a
conditional graph neural network (cGNN) to tackle this complexity. Our model
takes surface points and the location of applied forces, and is specifically
designed to predict the deformation of the points and the forces exerted on
them. We trained our model on experimentally collected surface tracking data of
a soft tissue phantom and used transfer learning to overcome the data scarcity
by initially training it with mass-spring simulations and fine-tuning it with
the experimental data. This approach improves the generalisation capability of
the model and enables accurate predictions of tissue deformations and
corresponding interaction forces. The results demonstrate that the model can
predict deformations with a distance error of 0.35$\pm$0.03 mm for deformations
up to 30 mm and the force with an absolute error of 0.37$\pm$0.05 N for forces
up to 7.5 N. Our data-driven approach presents a promising solution to the
intricate challenge of simulating soft tissues within virtual environments.
Beyond its applicability in medical simulations, this approach holds the
potential to benefit various fields where realistic soft tissue simulations are
required.