Multi-Material Decomposition Using Spectral Diffusion Posterior Sampling

Xiao Jiang, Grace J. Gang, J. Webster Stayman
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Abstract

Many spectral CT applications require accurate material decomposition. Existing material decomposition algorithms are often susceptible to significant noise magnification or, in the case of one-step model-based approaches, hampered by slow convergence rates and large computational requirements. In this work, we proposed a novel framework - spectral diffusion posterior sampling (spectral DPS) - for one-step reconstruction and multi-material decomposition, which combines sophisticated prior information captured by one-time unsupervised learning and an arbitrary analytic physical system model. Spectral DPS is built upon a general DPS framework for nonlinear inverse problems. Several strategies developed in previous work, including jumpstart sampling, Jacobian approximation, and multi-step likelihood updates are applied facilitate stable and accurate decompositions. The effectiveness of spectral DPS was evaluated on a simulated dual-layer and a kV-switching spectral system as well as on a physical cone-beam CT (CBCT) test bench. In simulation studies, spectral DPS improved PSNR by 27.49% to 71.93% over baseline DPS and by 26.53% to 57.30% over MBMD, depending on the the region of interest. In physical phantom study, spectral DPS achieved a <1% error in estimating the mean density in a homogeneous region. Compared with baseline DPS, spectral DPS effectively avoided generating false structures in the homogeneous phantom and reduced the variability around edges. Both simulation and physical phantom studies demonstrated the superior performance of spectral DPS for stable and accurate material decomposition.
利用频谱扩散后向采样进行多材料分解
现有的材料分解算法通常容易受到显著噪声放大的影响,或者在基于一步模型的方法中,由于收敛速度慢和计算量大而受到阻碍。在这项工作中,我们提出了一种用于一步重建和多材料分解的新框架--光谱扩散后置采样(Spectral DPS),它结合了一次性无监督学习和任意分析物理系统模型所捕获的复杂先验信息。光谱 DPS 建立在非线性逆问题的通用 DPS 框架之上,应用了之前工作中开发的几种策略,包括跳跃启动采样、雅各布近似和多步似然更新,以促进稳定而精确的分解。在模拟双层和 kV 切换光谱系统以及物理锥束 CT(CBCT)测试台上评估了光谱 DPS 的有效性。在模拟研究中,光谱 DPS 比基线 DPS 提高了 27.49% 到 71.93%,比 MBMD 提高了 26.53% 到 57.30%,具体取决于感兴趣的区域。在物理象学研究中,光谱 DPS 在估计均匀区域的平均密度时误差小于 1%。与基线 DPS 相比,光谱 DPS 有效地避免了在均质模型中产生虚假结构,并降低了边缘的不稳定性。模拟和物理模型研究都证明了光谱 DPS 在稳定、准确地分解材料方面的优越性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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