Teng Peiqing, Jiang Xiao, Cai Liang, Lee Efren, Zhang Ruoqiao, Zhou Jian, Stayman J Webster
Electrical and Computer Engineering, Johns Hopkins University, Baltimore, MD, USA.
Biomedical Engineering, Johns Hopkins University, Baltimore, MD, USA.
Proc SPIE Int Soc Opt Eng. 2025 Feb;13405. doi: 10.1117/12.3047466. Epub 2025 Apr 8.
Diffusion models have demonstrated a powerful capability to generate a diversity of high quality images based on a training distribution. Recently, such diffusion models have been used in CT restoration and reconstruction via conditional generation. Diffusion posterior sampling (DPS) is a conditional generation method with several advantages, including unsupervised learning of the prior distribution and plug-and-play capabilities with different forward models to encompass different acquisition methods, protocols, etc. However, most current DPS work has focused on two-dimensional models for both the prior and system models. Almost all clinical CT systems are inherently three-dimensional using helical or cone-beam acquisitions. While the extension to 3D is mathematically straightforward, computational demands prohibit direct application on most platforms. In this research, we propose strategies for 3D DPS CT reconstruction using a 3D neural network to learn the prior distribution. We develop modifications to a standard DPS algorithm to substantially reduce memory requirements and to accelerate the sampling speed. We evaluate different alternatives that permit 3D DPS in realistic CT volume sizes and compare relative merits of each strategy.
扩散模型已展现出基于训练分布生成各种高质量图像的强大能力。最近,此类扩散模型已通过条件生成用于CT图像的恢复和重建。扩散后验采样(DPS)是一种条件生成方法,具有多个优点,包括对先验分布进行无监督学习以及与不同前向模型具有即插即用能力,以涵盖不同的采集方法、协议等。然而,当前大多数DPS工作都集中在先验模型和系统模型的二维模型上。几乎所有临床CT系统本质上都是使用螺旋或锥形束采集的三维系统。虽然向三维扩展在数学上很简单,但计算需求使得在大多数平台上无法直接应用。在本研究中,我们提出了使用三维神经网络学习先验分布进行三维DPS CT重建的策略。我们对标准DPS算法进行了改进,以大幅降低内存需求并加快采样速度。我们评估了在实际CT体积大小下允许进行三维DPS的不同替代方案,并比较了每种策略的相对优点。