Department of Electrical and Computer Engineering, The University of British Columbia, Vancouver, BC, V6T 1Z4, Canada.
IEEE Trans Med Imaging. 2011 Jan;30(1):11-21. doi: 10.1109/TMI.2010.2055884. Epub 2010 Jul 1.
In medical simulations involving tissue deformation, the finite element method (FEM) is a widely used technique, where the size, shape, and placement of the elements in a model are important factors that affect the interpolation and numerical errors of a solution. Conventional model generation schemes for FEM consist of a segmentation step delineating the anatomy followed by a meshing step generating elements conforming to this segmentation. In this paper, a single-step model generation technique is proposed based on optimization. Starting from an initial mesh covering the domain of interest, the mesh nodes are adjusted to minimize an objective function which penalizes intra-element intensity variations and poor element geometry for the entire mesh. Trade-offs between mesh geometry quality and intra-element variance are achieved by adjusting the relative weights of the geometric and intensity variation components of the cost function. This meshing approach enables a more accurate rendering of shapes with fewer elements and provides more accurate models for deformation simulation, especially when the image intensities represent a mechanical feature of the tissue such as the elastic modulus. The use of the proposed mesh optimization is demonstrated in 2-D and 3-D on synthetic phantoms, MR images of the brain, and CT images of the kidney. A comparison with previous meshing techniques that do not account for image intensity is also provided demonstrating the benefits of our approach.
在涉及组织变形的医学模拟中,有限元方法(FEM)是一种广泛使用的技术,其中模型中元素的大小、形状和位置是影响插值和数值解误差的重要因素。传统的 FEM 模型生成方案包括一个分割步骤,划定解剖结构,然后是一个网格生成步骤,生成符合此分割的元素。在本文中,提出了一种基于优化的单步模型生成技术。从覆盖感兴趣域的初始网格开始,调整网格节点以最小化目标函数,该目标函数惩罚整个网格内的元素内强度变化和较差的元素几何形状。通过调整成本函数的几何形状和强度变化分量的相对权重,可以在网格几何形状质量和元素内方差之间取得折衷。这种网格方法可以使用更少的元素更准确地呈现形状,并为变形模拟提供更准确的模型,特别是当图像强度表示组织的机械特征(例如弹性模量)时。在所提出的网格优化方法的演示中,使用了二维和三维的合成模型、大脑的磁共振图像和肾脏的 CT 图像。还提供了与不考虑图像强度的先前网格技术的比较,证明了我们方法的优势。