Division of Image Processing, Department of Radiology, Leiden University Medical Center, P.O. Box 9600, 2300 RC Leiden, The Netherlands.
Med Image Anal. 2011 Feb;15(1):112-24. doi: 10.1016/j.media.2010.08.003. Epub 2010 Sep 24.
The traditional Hessian-related vessel filters often suffer from detecting complex structures like bifurcations due to an over-simplified cylindrical model. To solve this problem, we present a shape-tuned strain energy density function to measure vessel likelihood in 3D medical images. This method is initially inspired by established stress-strain principles in mechanics. By considering the Hessian matrix as a stress tensor, the three invariants from orthogonal tensor decomposition are used independently or combined to formulate distinctive functions for vascular shape discrimination, brightness contrast and structure strength measuring. Moreover, a mathematical description of Hessian eigenvalues for general vessel shapes is obtained, based on an intensity continuity assumption, and a relative Hessian strength term is presented to ensure the dominance of second-order derivatives as well as suppress undesired step-edges. Finally, we adopt the multi-scale scheme to find an optimal solution through scale space. The proposed method is validated in experiments with a digital phantom and non-contrast-enhanced pulmonary CT data. It is shown that our model performed more effectively in enhancing vessel bifurcations and preserving details, compared to three existing filters.
传统的 Hesse 相关血管滤波器由于采用过于简化的圆柱模型,往往难以检测到分叉等复杂结构。为了解决这个问题,我们提出了一种形状调整的应变能密度函数,用于测量 3D 医学图像中的血管可能性。这种方法最初是受力学中已建立的应力-应变原理启发。通过将 Hessian 矩阵视为应力张量,使用三个正交张量分解的不变量独立或组合,形成用于血管形状识别、亮度对比和结构强度测量的独特函数。此外,基于强度连续性假设,获得了一般血管形状的 Hessian 特征值的数学描述,并提出了相对 Hessian 强度项,以确保二阶导数的主导地位,并抑制不需要的阶跃边缘。最后,我们采用多尺度方案通过尺度空间找到最佳解决方案。该方法在数字体模和非对比增强肺部 CT 数据的实验中得到验证。结果表明,与三种现有滤波器相比,我们的模型在增强血管分叉和保留细节方面表现更有效。