Fast and Adaptive Finite Element Approach for Modeling Brain Shift
Autor: | Grzegorz Soza, Roberto Grosso, Christopher Nimsky, Peter Hastreiter, Günther Greiner, Ulf Labsik, Rudolf Fahlbusch |
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Rok vydání: | 2003 |
Předmět: |
Work (thermodynamics)
Computer science Finite Element Analysis Models Neurological Context (language use) Deformation (meteorology) Unstructured grid Imaging Three-Dimensional Monitoring Intraoperative Preoperative Care Image Processing Computer-Assisted Humans Computer Simulation Simulation Consolidation (soil) Brain shift Process (computing) Brain Magnetic Resonance Imaging Finite element method Computer Science Applications Surgery Computer-Assisted Surgery Family Practice Algorithm Algorithms |
Zdroj: | Computer Aided Surgery. 8:241-246 |
ISSN: | 1097-0150 1092-9088 |
DOI: | 10.3109/10929080309146059 |
Popis: | In this paper we introduce a finite element-based strategy for simulation of brain deformation occurring during neurosurgery. The phenomenon, known as brain shift, causes a decrease in the accuracy of neuronavigation systems that rely on preoperatively acquired data. This can be compensated for with a computational model of the brain deformation process. By applying model calculations to preoperative images, an update within the operating room can be performed.One of the crucial concerns in the context of developing a physical-based model is the choice of governing equations describing the physics of the phenomenon. In this work, deformation of brain tissue is expressed in terms of a 3D consolidation model for a linearly elastic and porous fluid. The next crucial issue is ensuring stable calculations within the chosen model. For this purpose, we developed a special technique for generating the underlying geometry for the simulation. With this technique an unstructured grid consisting of regular tetrahedra is created, whereupon time-dependent finite element simulation is performed in an adaptive manner.We applied our algorithm to preoperative MR scans and investigated the value of the method. Due to the adaptivity of the method, only 5-10% of the computing time was needed as compared to traditional finite element approaches based on a uniformly subdivided grid. The results of the experiments were compared to the corresponding intraoperative MR scans. A close match between the computed deformation of the brain and the displacement resulting from the intraoperative data was observed.A model-based approach for the simulation of brain shift is presented. In this computational model the brain tissue is described as an elastic and porous material using Biot consolidation theory. Validating experiments conducted with MR data provided promising results. |
Databáze: | OpenAIRE |
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