Risholm Petter, Ross James, Washko George R, Wells William M
Surgical Planning Lab, Department of Radiology, Harvard Medical School, Brigham and Women's Hospital, Boston, Massachusetts USA.
Inf Process Med Imaging. 2011;22:699-710. doi: 10.1007/978-3-642-22092-0_57.
We formulate registration-based elastography in a probabilistic framework and apply it to study lung elasticity in the presence of emphysematous and fibrotic tissue. The elasticity calculations are based on a Finite Element discretization of a linear elastic biomechanical model. We marginalize over the boundary conditions (deformation) of the biomechanical model to determine the posterior distribution over elasticity parameters. Image similarity is included in the likelihood, an elastic prior is included to constrain the boundary conditions, while a Markov model is used to spatially smooth the inhomogeneous elasticity. We use a Markov Chain Monte Carlo (MCMC) technique to characterize the posterior distribution over elasticity from which we extract the most probable elasticity as well as the uncertainty of this estimate. Even though registration-based lung elastography with inhomogeneous elasticity is challenging due the problem's highly underdetermined nature and the sparse image information available in lung CT, we show promising preliminary results on estimating lung elasticity contrast in the presence of emphysematous and fibrotic tissue.
我们在概率框架中制定基于配准的弹性成像方法,并将其应用于研究存在肺气肿和纤维化组织时的肺弹性。弹性计算基于线性弹性生物力学模型的有限元离散化。我们对生物力学模型的边界条件(变形)进行边缘化,以确定弹性参数的后验分布。似然函数中包含图像相似性,包含弹性先验以约束边界条件,同时使用马尔可夫模型在空间上平滑不均匀的弹性。我们使用马尔可夫链蒙特卡罗(MCMC)技术来表征弹性的后验分布,从中提取最可能的弹性以及该估计的不确定性。尽管由于问题的高度欠定性质和肺部CT中可用的稀疏图像信息,具有不均匀弹性的基于配准的肺弹性成像具有挑战性,但我们在估计存在肺气肿和纤维化组织时的肺弹性对比度方面显示出了有前景的初步结果。