Department of Radiation Oncology and Molecular Radiation Sciences, Johns Hopkins University, Baltimore, MD, USA.
Phys Med Biol. 2012 Aug 7;57(15):4969-89. doi: 10.1088/0031-9155/57/15/4969. Epub 2012 Jul 17.
C-arm cone-beam CT (CBCT) can provide intraoperative 3D imaging capability for surgical guidance, but workflow and radiation dose are the significant barriers to broad utilization. One main reason is that each 3D image acquisition requires a complete scan with a full radiation dose to present a completely new 3D image every time. In this paper, we propose to utilize patient-specific CT or CBCT as prior knowledge to accurately reconstruct the aspects of the region that have changed by the surgical procedure from only a sparse set of x-rays. The proposed methods consist of a 3D-2D registration between the prior volume and a sparse set of intraoperative x-rays, creating digitally reconstructed radiographs (DRRs) from the registered prior volume, computing difference images by subtracting DRRs from the intraoperative x-rays, a penalized likelihood reconstruction of the volume of change (VOC) from the difference images, and finally a fusion of VOC reconstruction with the prior volume to visualize the entire surgical field. When the surgical changes are local and relatively small, the VOC reconstruction involves only a small volume size and a small number of projections, allowing less computation and lower radiation dose than is needed to reconstruct the entire surgical field. We applied this approach to sacroplasty phantom data obtained from a CBCT test bench and vertebroplasty data with a fresh cadaver acquired from a C-arm CBCT system with a flat-panel detector. The VOCs were reconstructed from a varying number of images (10-66 images) and compared to the CBCT ground truth using four different metrics (mean squared error, correlation coefficient, structural similarity index and perceptual difference model). The results show promising reconstruction quality with structural similarity to the ground truth close to 1 even when only 15-20 images were used, allowing dose reduction by the factor of 10-20.
C 形臂锥束 CT(CBCT)可为手术引导提供术中 3D 成像能力,但工作流程和辐射剂量是广泛应用的主要障碍。一个主要原因是每次获取 3D 图像都需要进行完整扫描,并且每次都需要使用全辐射剂量来呈现全新的 3D 图像。在本文中,我们提出利用患者特定的 CT 或 CBCT 作为先验知识,通过仅从稀疏的射线集重建手术过程中已更改的区域的各个方面。所提出的方法包括先验体积与稀疏的术中射线集之间的 3D-2D 配准,从配准的先验体积生成数字重建射线照片(DRR),通过从术中射线中减去 DRR 计算差图像,通过从差图像中对体积变化(VOC)进行惩罚似然重建,最后将 VOC 重建与先验体积融合以可视化整个手术区域。当手术变化局部且相对较小时,VOC 重建仅涉及较小的体积大小和较少的投影,因此比重建整个手术区域所需的计算量和辐射剂量都要小。我们将此方法应用于从 CBCT 测试台获得的骶骨成形术体模数据以及从具有平板探测器的 C 形臂 CBCT 系统获得的新鲜尸体的椎体成形术数据。从不同数量的图像(10-66 张图像)中重建 VOC,并使用四种不同的指标(均方误差、相关系数、结构相似性指数和感知差异模型)与 CBCT 地面实况进行比较。结果表明,即使仅使用 15-20 张图像,重建质量也具有很大的潜力,与地面实况的结构相似性接近 1,允许剂量降低 10-20 倍。