Carl E. Ravin Advanced Imaging Laboratories, Duke University Medical Center, 2424 Erwin Road, Suite 302, Durham, North Carolina 27705.
Med Phys. 2014 Feb;41(2):021911. doi: 10.1118/1.4863481.
In quantitative myocardial CT perfusion imaging, beam hardening effect due to dense bone and high concentration iodinated contrast agent can result in visible artifacts and inaccurate CT numbers. In this paper, an efficient polyenergetic Simultaneous Algebraic Reconstruction Technique (pSART) was presented to eliminate the beam hardening artifacts and to improve the CT quantitative imaging ability.
Our algorithm made three a priori assumptions: (1) the human body is composed of several base materials (e.g., fat, breast, soft tissue, bone, and iodine); (2) images can be coarsely segmented to two types of regions, i.e., nonbone regions and noniodine regions; and (3) each voxel can be decomposed into a mixture of two most suitable base materials according to its attenuation value and its corresponding region type information. Based on the above assumptions, energy-independent accumulated effective lengths of all base materials can be fast computed in the forward ray-tracing process and be used repeatedly to obtain accurate polyenergetic projections, with which a SART-based equation can correctly update each voxel in the backward projecting process to iteratively reconstruct artifact-free images. This approach effectively reduces the influence of polyenergetic x-ray sources and it further enables monoenergetic images to be reconstructed at any arbitrarily preselected target energies. A series of simulation tests were performed on a size-variable cylindrical phantom and a realistic anthropomorphic thorax phantom. In addition, a phantom experiment was also performed on a clinical CT scanner to further quantitatively validate the proposed algorithm.
The simulations with the cylindrical phantom and the anthropomorphic thorax phantom showed that the proposed algorithm completely eliminated beam hardening artifacts and enabled quantitative imaging across different materials, phantom sizes, and spectra, as the absolute relative errors were reduced from [-7.5%, 12.1%] for SART to [-0.1%, 0.1%] for pSART. When using low kVp spectra and high reference energies, pSART also showed improved reconstruction efficiency in terms of convergence speed compared to the conventional SART algorithm. The phantom experiment on a clinical CT scanner indicated that the quantitative advantage of pSART is realizable in experimental CT acquisition, as the absolute relative errors across material inserts were less than 0.4%.
By incorporatinga priori information (material attenuation coefficients, x-ray source spectrum, and region type information) into the reconstruction process, the proposed pSART algorithm could effectively eliminate beam hardening artifacts, reconstruct the accurate attenuation coefficients for precise quantitative imaging, and accelerate the reconstruction process.
在定量心肌 CT 灌注成像中,由于致密骨和高浓度碘造影剂引起的射束硬化效应会导致明显的伪影和不准确的 CT 值。本文提出了一种高效的多能量同时代数重建技术(pSART),以消除射束硬化伪影并提高 CT 定量成像能力。
我们的算法做出了三个先验假设:(1)人体由几种基本物质组成(例如脂肪、乳房、软组织、骨和碘);(2)图像可以粗略地分为两种类型的区域,即非骨区域和非碘区域;(3)根据衰减值及其对应区域类型信息,每个体素可以分解为两种最合适的基本物质的混合物。基于上述假设,可以在正向射线追踪过程中快速计算所有基本物质的独立能量累积有效长度,并反复使用以获得准确的多能量投影,基于 SART 的方程可以正确更新反向投影过程中的每个体素来迭代重建无伪影的图像。该方法有效地减少了多能射线源的影响,并且可以进一步在任意预先选择的目标能量下重建单能图像。在可变尺寸的圆柱形体模和逼真的人体胸部体模上进行了一系列模拟测试。此外,还在临床 CT 扫描仪上进行了体模实验,以进一步定量验证所提出的算法。
圆柱形体模和人体胸部体模的模拟结果表明,所提出的算法完全消除了射束硬化伪影,并能够在不同材料、体模尺寸和光谱下进行定量成像,因为 SART 的绝对相对误差从[-7.5%,12.1%]降低到 pSART 的[-0.1%,0.1%]。当使用低 kVp 光谱和高参考能量时,pSART 与传统的 SART 算法相比,在收敛速度方面也显示出了改进的重建效率。在临床 CT 扫描仪上进行的体模实验表明,pSART 的定量优势在实验 CT 采集过程中是可行的,因为材料插入物之间的绝对相对误差小于 0.4%。
通过将先验信息(材料衰减系数、X 射线源光谱和区域类型信息)纳入重建过程,所提出的 pSART 算法可以有效地消除射束硬化伪影,重建准确的衰减系数,实现精确的定量成像,并加速重建过程。