Idris A Elbakri, Fessler Jeffrey A
Electrical Engineering and Computer Science Department, University of Michigan, 1301 Beal Ave, Ann Arbor, MI 48109, USA.
Phys Med Biol. 2003 Aug 7;48(15):2453-77. doi: 10.1088/0031-9155/48/15/314.
This paper describes a statistical image reconstruction method for x-ray CT that is based on a physical model that accounts for the polyenergetic x-ray source spectrum and the measurement nonlinearities caused by energy-dependent attenuation. Unlike our earlier work, the proposed algorithm does not require pre-segmentation of the object into the various tissue classes (e.g., bone and soft tissue) and allows mixed pixels. The attenuation coefficient of each voxel is modelled as the product of its unknown density and a weighted sum of energy-dependent mass attenuation coefficients. We formulate a penalized-likelihood function for this polyenergetic model and develop an iterative algorithm for estimating the unknown density of each voxel. Applying this method to simulated x-ray CT measurements of objects containing both bone and soft tissue yields images with significantly reduced beam hardening artefacts relative to conventional beam hardening correction methods. We also apply the method to real data acquired from a phantom containing various concentrations of potassium phosphate solution. The algorithm reconstructs an image with accurate density values for the different concentrations, demonstrating its potential for quantitative CT applications.
本文描述了一种用于X射线计算机断层扫描(CT)的统计图像重建方法,该方法基于一个物理模型,该模型考虑了多能X射线源光谱以及由能量依赖型衰减引起的测量非线性。与我们早期的工作不同,所提出的算法不需要将物体预先分割成各种组织类别(例如,骨骼和软组织),并且允许混合像素。每个体素的衰减系数被建模为其未知密度与能量依赖型质量衰减系数加权和的乘积。我们为这个多能模型制定了一个惩罚似然函数,并开发了一种迭代算法来估计每个体素的未知密度。将该方法应用于包含骨骼和软组织的物体的模拟X射线CT测量中,相对于传统的束硬化校正方法,所得到的图像的束硬化伪影显著减少。我们还将该方法应用于从包含不同浓度磷酸钾溶液的体模获取的真实数据。该算法重建出了具有不同浓度准确密度值的图像,证明了其在定量CT应用中的潜力。