Jiang Xiao, Gang Grace J, Stayman J Webster
Department of Biomedical Engineering, Johns Hopkins University, Baltimore MD, 21205, USA.
Department of Radiology, University of Pennsylvania, Philadelphia PA, 19104, USA.
Proc SPIE Int Soc Opt Eng. 2025 Feb;13405. doi: 10.1117/12.3046496. Epub 2025 Apr 8.
Medical implants are often made of dense materials and pose great challenges to accurate CT reconstruction and visualization, especially in regions close to or surrounding implants. Moreover, it is common that diagnostics involving implanted patients require distinct visualization strategies for implants and anatomy indvidually. In this work, we propose a novel approach for joint estimation of anatomy and implants as separate image volumes using a mixed prior model. This prior model leverages a learning-based diffusion prior for the anatomy image and a simple 0-norm sparsity prior for implants to decouple the two volumes. Additionally, a hybrid mono-polyenergetic forward model is employed to effectively accommodate the spectral effects of implants. The proposed reconstruction process alternates between two steps: Diffusion posterior sampling is used to update the anatomy image, and classic optimization updates to the implant image and associated spectral coefficients. Evaluation in spine imaging with metal pedicle screw implants demonstrates that the proposed algorithm can achieve accurate decompositions. Moreover, anatomy reconstruction between the two pedicle screws, an area where all competing algorithms typically fail, is successful in visualizing details. The proposed algorithm also effectively avoids streaking and beam hardening artifacts in soft tissue, achieving 15.25% higher PSNR and 24.29% higher SSIM compared to normalized metal artifacts reduction (NMAR). These results suggest that mixed prior models can help to separate spatially and spectrally distinct objects that differ from standard anatomical features in ordinary single-energy CT to not only improve image quality but to enhance visualization of the two distinct image volumes.
医用植入物通常由致密材料制成,这给准确的CT重建和可视化带来了巨大挑战,尤其是在靠近植入物或围绕植入物的区域。此外,涉及植入患者的诊断通常需要针对植入物和解剖结构分别采用不同的可视化策略。在这项工作中,我们提出了一种新颖的方法,使用混合先验模型将解剖结构和植入物作为单独的图像体积进行联合估计。该先验模型利用基于学习的扩散先验来处理解剖图像,并使用简单的0范数稀疏先验来处理植入物,以分离这两个体积。此外,采用混合单能-多能前向模型来有效适应植入物的光谱效应。所提出的重建过程在两个步骤之间交替进行:扩散后验采样用于更新解剖图像,经典优化用于更新植入物图像和相关光谱系数。在使用金属椎弓根螺钉植入物的脊柱成像中的评估表明,所提出的算法可以实现准确的分解。此外,在两个椎弓根螺钉之间的解剖结构重建,这是所有竞争算法通常都会失败的区域,成功地实现了细节可视化。与归一化金属伪影减少(NMAR)相比,所提出的算法还有效避免了软组织中的条纹和束硬化伪影,PSNR提高了15.25%,SSIM提高了24.29%。这些结果表明,混合先验模型有助于分离在空间和光谱上与普通单能CT中的标准解剖特征不同的物体,不仅可以提高图像质量,还可以增强两个不同图像体积的可视化效果。