Department of Radiation Oncology, Stanford University, Stanford, CA 94305-5847, USA.
Phys Med Biol. 2012 Apr 21;57(8):2287-307. doi: 10.1088/0031-9155/57/8/2287. Epub 2012 Mar 30.
Volumetric cone-beam CT (CBCT) images are acquired repeatedly during a course of radiation therapy and a natural question to ask is whether CBCT images obtained earlier in the process can be utilized as prior knowledge to reduce patient imaging dose in subsequent scans. The purpose of this work is to develop an adaptive prior image constrained compressed sensing (APICCS) method to solve this problem. Reconstructed images using full projections are taken on the first day of radiation therapy treatment and are used as prior images. The subsequent scans are acquired using a protocol of sparse projections. In the proposed APICCS algorithm, the prior images are utilized as an initial guess and are incorporated into the objective function in the compressed sensing (CS)-based iterative reconstruction process. Furthermore, the prior information is employed to detect any possible mismatched regions between the prior and current images for improved reconstruction. For this purpose, the prior images and the reconstructed images are classified into three anatomical regions: air, soft tissue and bone. Mismatched regions are identified by local differences of the corresponding groups in the two classified sets of images. A distance transformation is then introduced to convert the information into an adaptive voxel-dependent relaxation map. In constructing the relaxation map, the matched regions (unchanged anatomy) between the prior and current images are assigned with smaller weight values, which are translated into less influence on the CS iterative reconstruction process. On the other hand, the mismatched regions (changed anatomy) are associated with larger values and the regions are updated more by the new projection data, thus avoiding any possible adverse effects of prior images. The APICCS approach was systematically assessed by using patient data acquired under standard and low-dose protocols for qualitative and quantitative comparisons. The APICCS method provides an effective way for us to enhance the image quality at the matched regions between the prior and current images compared to the existing PICCS algorithm. Compared to the current CBCT imaging protocols, the APICCS algorithm allows an imaging dose reduction of 10-40 times due to the greatly reduced number of projections and lower x-ray tube current level coming from the low-dose protocol.
体层锥形束 CT(CBCT)图像在放射治疗过程中会被反复获取,人们自然会问,早期获取的 CBCT 图像是否可以作为先验知识,以减少后续扫描中的患者成像剂量。本研究旨在开发一种自适应先验图像约束压缩感知(APICCS)方法来解决这个问题。在放射治疗的第一天采集完整投影的重建图像,并将其用作先验图像。随后的扫描使用稀疏投影方案获取。在提出的 APICCS 算法中,将先验图像用作初始猜测,并将其纳入基于压缩感知(CS)的迭代重建过程的目标函数中。此外,利用先验信息检测先验图像和当前图像之间可能存在的不匹配区域,以进行改进的重建。为此,将先验图像和重建图像分为三个解剖区域:空气、软组织和骨骼。通过在两组分类图像中对应组的局部差异来识别不匹配区域。然后引入距离变换,将信息转换为自适应体素相关的松弛图。在构建松弛图时,将先验图像和当前图像之间匹配的区域(不变的解剖结构)分配较小的权重值,这意味着它们对 CS 迭代重建过程的影响较小。另一方面,将不匹配的区域(变化的解剖结构)与较大的值相关联,并且这些区域由新的投影数据更多地更新,从而避免先验图像的任何可能的不利影响。使用标准和低剂量协议获取的患者数据,对 APICCS 方法进行了系统评估,进行了定性和定量比较。与现有的 PICCS 算法相比,APICCS 方法为我们提供了一种有效方法,可以增强先验图像和当前图像之间匹配区域的图像质量。与现有的 CBCT 成像协议相比,由于低剂量协议中投影数量大大减少和 X 射线管电流水平降低,APICCS 算法允许成像剂量减少 10-40 倍。