Hogea Cosmina, Biros George, Abraham Feby, Davatzikos Christos
Section of Biomedical Image Analysis, Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.
Phys Med Biol. 2007 Dec 7;52(23):6893-908. doi: 10.1088/0031-9155/52/23/008. Epub 2007 Nov 8.
We present a framework for black-box and flexible simulation of soft tissue deformation for medical imaging and surgical planning applications. Our main motivation in the present work is to develop robust algorithms that allow batch processing for registration of brains with tumors to statistical atlases of normal brains and construction of brain tumor atlases. We describe a fully Eulerian formulation able to handle large deformations effortlessly, with a level-set-based approach for evolving fronts. We use a regular grid-fictitious domain method approach, in which we approximate coefficient discontinuities, distributed forces and boundary conditions. This approach circumvents the need for unstructured mesh generation, which is often a bottleneck in the modeling and simulation pipeline. Our framework employs penalty approaches to impose boundary conditions and uses a matrix-free implementation coupled with a multigrid-accelerated Krylov solver. The overall scheme results in a scalable method with minimal storage requirements and optimal algorithmic complexity. We illustrate the potential of our framework to simulate realistic brain tumor mass effects at reduced computational cost, for aiding the registration process towards the construction of brain tumor atlases.
我们提出了一个用于医学成像和手术规划应用中软组织变形的黑箱式灵活模拟框架。我们当前工作的主要动机是开发强大的算法,这些算法允许对患有肿瘤的大脑与正常大脑的统计图谱进行批量配准,并构建脑肿瘤图谱。我们描述了一种完全欧拉公式,它能够轻松处理大变形,并采用基于水平集的前沿演化方法。我们使用正则网格 - 虚拟域方法,其中我们近似系数不连续性、分布力和边界条件。这种方法避免了生成非结构化网格的需求,而非结构化网格生成通常是建模和模拟流程中的一个瓶颈。我们的框架采用惩罚方法来施加边界条件,并使用无矩阵实现与多重网格加速的 Krylov 求解器相结合。总体方案产生了一种具有最小存储需求和最优算法复杂度的可扩展方法。我们展示了我们框架以降低的计算成本模拟逼真的脑肿瘤肿块效应的潜力,以辅助朝着构建脑肿瘤图谱的配准过程。