Han Dong, Siebers Jeffrey V, Williamson Jeffrey F
Medical Physics Graduate Program, Department of Radiation Oncology, Virginia Commonwealth University, Richmond, Virginia 23298.
Department of Radiation Oncology, University of Virginia, Charlottesville, Virginia 22908.
Med Phys. 2016 Jan;43(1):600. doi: 10.1118/1.4939082.
To evaluate the accuracy and robustness of a simple, linear, separable, two-parameter model (basis vector model, BVM) in mapping proton stopping powers via dual energy computed tomography (DECT) imaging.
The BVM assumes that photon cross sections (attenuation coefficients) of unknown materials are linear combinations of the corresponding radiological quantities of dissimilar basis substances (i.e., polystyrene, CaCl2 aqueous solution, and water). The authors have extended this approach to the estimation of electron density and mean excitation energy, which are required parameters for computing proton stopping powers via the Bethe-Bloch equation. The authors compared the stopping power estimation accuracy of the BVM with that of a nonlinear, nonseparable photon cross section Torikoshi parametric fit model (VCU tPFM) as implemented by the authors and by Yang et al. ["Theoretical variance analysis of single- and dual-energy computed tomography methods for calculating proton stopping power ratios of biological tissues," Phys. Med. Biol. 55, 1343-1362 (2010)]. Using an idealized monoenergetic DECT imaging model, proton ranges estimated by the BVM, VCU tPFM, and Yang tPFM were compared to International Commission on Radiation Units and Measurements (ICRU) published reference values. The robustness of the stopping power prediction accuracy of tissue composition variations was assessed for both of the BVM and VCU tPFM. The sensitivity of accuracy to CT image uncertainty was also evaluated.
Based on the authors' idealized, error-free DECT imaging model, the root-mean-square error of BVM proton stopping power estimation for 175 MeV protons relative to ICRU reference values for 34 ICRU standard tissues is 0.20%, compared to 0.23% and 0.68% for the Yang and VCU tPFM models, respectively. The range estimation errors were less than 1 mm for the BVM and Yang tPFM models, respectively. The BVM estimation accuracy is not dependent on tissue type and proton energy range. The BVM is slightly more vulnerable to CT image intensity uncertainties than the tPFM models. Both the BVM and tPFM prediction accuracies were robust to uncertainties of tissue composition and independent of the choice of reference values. This reported accuracy does not include the impacts of I-value uncertainties and imaging artifacts and may not be achievable on current clinical CT scanners.
The proton stopping power estimation accuracy of the proposed linear, separable BVM model is comparable to or better than that of the nonseparable tPFM models proposed by other groups. In contrast to the tPFM, the BVM does not require an iterative solving for effective atomic number and electron density at every voxel; this improves the computational efficiency of DECT imaging when iterative, model-based image reconstruction algorithms are used to minimize noise and systematic imaging artifacts of CT images.
通过双能计算机断层扫描(DECT)成像评估一种简单、线性、可分离的双参数模型(基向量模型,BVM)在映射质子阻止本领方面的准确性和稳健性。
BVM假设未知材料的光子截面(衰减系数)是不同基物质(即聚苯乙烯、CaCl₂水溶液和水)相应放射学量的线性组合。作者已将此方法扩展到电子密度和平均激发能的估计,这是通过贝特 - 布洛赫方程计算质子阻止本领所需的参数。作者将BVM的阻止本领估计准确性与作者及Yang等人[《用于计算生物组织质子阻止本领比的单能和双能计算机断层扫描方法的理论方差分析》,《物理医学与生物学》55,1343 - 1362(2010)]所实现的非线性、不可分离的光子截面鸟越参数拟合模型(VCU tPFM)进行了比较。使用理想化的单能DECT成像模型,将BVM、VCU tPFM和Yang tPFM估计的质子射程与国际辐射单位与测量委员会(ICRU)公布的参考值进行比较。评估了BVM和VCU tPFM在组织成分变化时阻止本领预测准确性的稳健性。还评估了准确性对CT图像不确定性的敏感性。
基于作者理想化的、无误差的DECT成像模型,对于175 MeV质子,BVM质子阻止本领估计相对于34种ICRU标准组织的ICRU参考值的均方根误差为0.20%,而Yang和VCU tPFM模型分别为0.23%和0.68%。BVM和Yang tPFM模型的射程估计误差分别小于1 mm。BVM估计准确性不依赖于组织类型和质子能量范围。BVM比tPFM模型更容易受到CT图像强度不确定性的影响。BVM和tPFM的预测准确性对于组织成分的不确定性都很稳健,并且与参考值的选择无关。所报告的这种准确性不包括I值不确定性和成像伪影的影响,并且在当前临床CT扫描仪上可能无法实现。
所提出的线性、可分离BVM模型的质子阻止本领估计准确性与其他组提出的不可分离tPFM模型相当或更好。与tPFM不同,BVM不需要在每个体素处迭代求解有效原子序数和电子密度;当使用基于模型的迭代图像重建算法来最小化CT图像的噪声和系统成像伪影时,这提高了DECT成像的计算效率。