In this work we present PhyNeSS - a novel Physics-driven Neural Networks-based Surgical Simulation system which, for the first time, combines the complexity and accuracy of physics-based non-linear soft tissue models and commercial finite element codes with the high speed of execution of machine learned neural networks. While soft tissue is inherently nonlinear, physics-based simulation of nonlinear tissue behavior with haptic feedback is very challenging as the solution of the coupled nonlinear partial differential equations is iterative and therefore extremely computationally intensive. The major contribution of this paper is that through an unprecedented combination of hard and soft computing methods, it is able to reduce the solution of nonlinear problems to almost the same complexity as solving linear problems. This promises to resolve one of the longest-standing technical challenges of real time surgical simulation. The first phase of the method is a pre-computation phase, in which each node of the organ model, with known linear or nonlinear material properties, is provided with carefully chosen prescribed displacements and the response, computed using commercial finite element software tools, is recorded off-line and stored in a large database. The data in then vastly condensed into a set of coefficients describing neurons of a Radial Basis Function (RBF) networks or easier storage and rapid reproduction. During real-time computations, as the surgical tool interacts with the organ models, these neural networks are used to reconstruct the deformation fields as well as the reaction forces at the surgical tool tip. We present simulation results for realistic surgical scenarios with real time force feedback.
[1]
Cagatay Basdogan,et al.
Haptics in minimally invasive surgical simulation and training
,
2004,
IEEE Computer Graphics and Applications.
[2]
A. Peirce.
Computer Methods in Applied Mechanics and Engineering
,
2010
.
[3]
Vincent Hayward,et al.
High-fidelity haptic synthesis of contact with deformable bodies
,
2004,
IEEE Computer Graphics and Applications.
[4]
Ludek Matyska,et al.
An Algorithm of State-Space Precomputation Allowing Non-linear Haptic Deformation Modelling Using Finite Element Method
,
2007,
Second Joint EuroHaptics Conference and Symposium on Haptic Interfaces for Virtual Environment and Teleoperator Systems (WHC'07).
[5]
Suvranu De,et al.
Real time simulation of nonlinear tissue response in virtual surgery using the point collocation-based method of finite spheres
,
2007
.
[6]
Yasuaki Kuroe,et al.
A learning method for vector field approximation by neural networks
,
1998,
1998 IEEE International Joint Conference on Neural Networks Proceedings. IEEE World Congress on Computational Intelligence (Cat. No.98CH36227).
[7]
Y. Iiguni,et al.
Interpolation capability of the periodic radial basis function
,
2005,
2005 5th International Conference on Information Communications & Signal Processing.
[8]
Gábor Székely,et al.
Data-Driven Haptic Rendering of Visco-Elastic Effects
,
2008,
2008 Symposium on Haptic Interfaces for Virtual Environment and Teleoperator Systems.
[9]
Anderson Maciel,et al.
Towards a Virtual Basic Laparoscopic Skill Trainer (VBLaST)
,
2008,
MMVR.