Jiang Xiao, Li Shudong, Teng Peiqing, Gang Grace, Stayman J Webster
ArXiv. 2024 Jul 17:arXiv:2407.12956v1.
Diffusion Posterior Sampling(DPS) methodology is a novel framework that permits nonlinear CT reconstruction by integrating a diffusion prior and an analytic physical system model, allowing for one-time training for different applications. However, baseline DPS can struggle with large variability, hallucinations, and slow reconstruction. This work introduces a number of strategies designed to enhance the stability and efficiency of DPS CT reconstruction. Specifically, jumpstart sampling allows one to skip many reverse time steps, significantly reducing the reconstruction time as well as the sampling variability. Additionally, the likelihood update is modified to simplify the Jacobian computation and improve data consistency more efficiently. Finally, a hyperparameter sweep is conducted to investigate the effects of parameter tuning and to optimize the overall reconstruction performance. Simulation studies demonstrated that the proposed DPS technique achieves up to 46.72% PSNR and 51.50% SSIM enhancement in a low-mAs setting, and an over 31.43% variability reduction in a sparse-view setting. Moreover, reconstruction time is sped up from >23.5 s/slice to <1.5 s/slice. In a physical data study, the proposed DPS exhibits robustness on an anthropomorphic phantom reconstruction which does not strictly follow the prior distribution. Quantitative analysis demonstrates that the proposed DPS can accommodate various dose levels and number of views. With 10% dose, only a 5.60% and 4.84% reduction of PSNR and SSIM was observed for the proposed approach. Both simulation and phantom studies demonstrate that the proposed method can significantly improve reconstruction accuracy and reduce computational costs, greatly enhancing the practicality of DPS CT reconstruction.
扩散后验采样(DPS)方法是一种新颖的框架,它通过整合扩散先验和解析物理系统模型来实现非线性CT重建,从而允许针对不同应用进行一次性训练。然而,基线DPS可能会在较大的变异性、幻觉和重建速度慢等方面存在问题。这项工作引入了许多旨在提高DPS CT重建稳定性和效率的策略。具体而言,快速启动采样允许跳过许多反向时间步,显著减少重建时间以及采样变异性。此外,似然更新被修改以简化雅可比矩阵计算并更有效地提高数据一致性。最后,进行超参数扫描以研究参数调整的效果并优化整体重建性能。模拟研究表明,所提出的DPS技术在低毫安设置下可实现高达46.72%的峰值信噪比(PSNR)和51.50%的结构相似性指数(SSIM)增强,在稀疏视图设置下变异性降低超过31.43%。此外,重建时间从>23.5秒/切片加快到<1.5秒/切片。在物理数据研究中,所提出的DPS在不严格遵循先验分布的人体模型重建中表现出鲁棒性。定量分析表明,所提出的DPS可以适应各种剂量水平和视图数量。对于所提出的方法,在10%剂量下,仅观察到PSNR降低5.60%和SSIM降低4.84%。模拟和模型研究均表明,所提出的方法可以显著提高重建精度并降低计算成本,极大地增强了DPS CT重建的实用性。