Hasse Katelyn, Neylon John, Sheng Ke, Santhanam Anand P
Department of Radiation Oncology, University of California, Los Angeles, Los Angeles, California 90095.
Med Phys. 2016 Mar;43(3):1299-1311. doi: 10.1118/1.4941745.
Breast elastography is a critical tool for improving the targeted radiotherapy treatment of breast tumors. Current breast radiotherapy imaging protocols only involve prone and supine CT scans. There is a lack of knowledge on the quantitative accuracy with which breast elasticity can be systematically measured using only prone and supine CT datasets. The purpose of this paper is to describe a quantitative elasticity estimation technique for breast anatomy using only these supine/prone patient postures. Using biomechanical, high-resolution breast geometry obtained from CT scans, a systematic assessment was performed in order to determine the feasibility of this methodology for clinically relevant elasticity distributions.
A model-guided inverse analysis approach is presented in this paper. A graphics processing unit (GPU)-based linear elastic biomechanical model was employed as a forward model for the inverse analysis with the breast geometry in a prone position. The elasticity estimation was performed using a gradient-based iterative optimization scheme and a fast-simulated annealing (FSA) algorithm. Numerical studies were conducted to systematically analyze the feasibility of elasticity estimation. For simulating gravity-induced breast deformation, the breast geometry was anchored at its base, resembling the chest-wall/breast tissue interface. Ground-truth elasticity distributions were assigned to the model, representing tumor presence within breast tissue. Model geometry resolution was varied to estimate its influence on convergence of the system. A priori information was approximated and utilized to record the effect on time and accuracy of convergence. The role of the FSA process was also recorded. A novel error metric that combined elasticity and displacement error was used to quantify the systematic feasibility study. For the authors' purposes, convergence was set to be obtained when each voxel of tissue was within 1 mm of ground-truth deformation.
The authors' analyses showed that a ∼97% model convergence was systematically observed with no-a priori information. Varying the model geometry resolution showed no significant accuracy improvements. The GPU-based forward model enabled the inverse analysis to be completed within 10-70 min. Using a priori information about the underlying anatomy, the computation time decreased by as much as 50%, while accuracy improved from 96.81% to 98.26%. The use of FSA was observed to allow the iterative estimation methodology to converge more precisely.
By utilizing a forward iterative approach to solve the inverse elasticity problem, this work indicates the feasibility and potential of the fast reconstruction of breast tissue elasticity using supine/prone patient postures.
乳腺弹性成像对于改善乳腺肿瘤的靶向放射治疗至关重要。当前的乳腺放射治疗成像方案仅包括俯卧位和仰卧位CT扫描。对于仅使用俯卧位和仰卧位CT数据集系统测量乳腺弹性的定量准确性,人们了解不足。本文的目的是描述一种仅使用这些仰卧位/俯卧位患者姿势来估计乳腺解剖结构弹性的定量技术。利用从CT扫描获得的生物力学、高分辨率乳腺几何结构,进行了系统评估,以确定该方法对于临床相关弹性分布的可行性。
本文提出了一种模型引导的逆分析方法。基于图形处理单元(GPU)的线性弹性生物力学模型被用作逆分析的正向模型,乳腺几何结构处于俯卧位。弹性估计使用基于梯度的迭代优化方案和快速模拟退火(FSA)算法进行。进行了数值研究以系统分析弹性估计的可行性。为了模拟重力引起的乳腺变形,乳腺几何结构在其底部固定,类似于胸壁/乳腺组织界面。将真实弹性分布分配给模型,代表乳腺组织内肿瘤的存在。改变模型几何分辨率以估计其对系统收敛的影响。近似并利用先验信息来记录其对收敛时间和准确性的影响。还记录了FSA过程的作用。一种结合弹性和位移误差的新型误差度量用于量化系统可行性研究。就作者的目的而言,当组织的每个体素在真实变形的1毫米范围内时,设定为获得收敛。
作者的分析表明,在没有先验信息的情况下,系统地观察到约97%的模型收敛。改变模型几何分辨率未显示出显著的准确性提高。基于GPU的正向模型使逆分析能够在10 - 70分钟内完成。利用关于基础解剖结构的先验信息,计算时间减少多达50%,而准确性从96.81%提高到98.26%。观察到使用FSA可使迭代估计方法更精确地收敛。
通过利用正向迭代方法解决逆弹性问题,这项工作表明了使用仰卧位/俯卧位患者姿势快速重建乳腺组织弹性的可行性和潜力。