Cellular neural network modelling of soft tissue dynamics for surgical simulation

Technol Health Care. 2017 Jul 20;25(S1):337-344. doi: 10.3233/THC-171337.

Abstract

Background: Currently, the mechanical dynamics of soft tissue deformation is achieved by numerical time integrations such as the explicit or implicit integration; however, the explicit integration is stable only under a small time step, whereas the implicit integration is computationally expensive in spite of the accommodation of a large time step.

Objective: This paper presents a cellular neural network method for stable simulation of soft tissue deformation dynamics.

Method: The non-rigid motion equation is formulated as a cellular neural network with local connectivity of cells, and thus the dynamics of soft tissue deformation is transformed into the neural dynamics of the cellular neural network.

Results: Results show that the proposed method can achieve good accuracy at a small time step. It still remains stable at a large time step, while maintaining the computational efficiency of the explicit integration.

Conclusion: The proposed method can achieve stable soft tissue deformation with efficiency of explicit integration for surgical simulation.

Keywords: Soft tissue deformation; cellular neural network; dynamic systems; numerical time integration.

MeSH terms

  • Computer Simulation*
  • Humans
  • Models, Statistical
  • Neural Networks, Computer*
  • Subcutaneous Tissue / surgery*