Li Shudong, Tivnan Matthew, Stayman J Webster
Biomedical Engineering, Johns Hopkins University, Baltimore, MD, USA.
Radiology, Harvard Medical School and Massachusetts General Hospital, Boston, MA, USA.
Proc SPIE Int Soc Opt Eng. 2024 Feb;12925. doi: 10.1117/12.3007693. Epub 2024 Apr 1.
Diffusion models have been demonstrated as powerful deep learning tools for image generation in CT reconstruction and restoration. Recently, diffusion posterior sampling, where a score-based diffusion prior is combined with a likelihood model, has been used to produce high quality CT images given low-quality measurements. This technique is attractive since it permits a one-time, unsupervised training of a CT prior; which can then be incorporated with an arbitrary data model. However, current methods only rely on a model of x-ray CT physics to reconstruct or restore images. While it is common to linearize the transmission tomography reconstruction problem, this is an approximation to the true and inherently nonlinear forward model. We propose a new method that solves the inverse problem of CT image reconstruction via diffusion posterior sampling. We implement a traditional unconditional diffusion model by training a prior score function estimator, and apply Bayes rule to combine this prior with a measurement likelihood score function derived from the nonlinear physical model to arrive at a posterior score function that can be used to sample the reverse-time diffusion process. This plug-and-play method allows incorporation of a diffusion-based prior with generalized nonlinear CT image reconstruction into multiple CT system designs with different forward models, without the need for any additional training. We demonstrate the technique in both fully sampled low dose data and sparse-view geometries using a single unsupervised training of the prior.
扩散模型已被证明是用于CT重建和恢复中图像生成的强大深度学习工具。最近,扩散后验采样(即将基于分数的扩散先验与似然模型相结合)已被用于在低质量测量的情况下生成高质量的CT图像。该技术具有吸引力,因为它允许对CT先验进行一次性无监督训练;然后可以将其与任意数据模型相结合。然而,当前的方法仅依赖于X射线CT物理模型来重建或恢复图像。虽然将透射断层扫描重建问题线性化很常见,但这只是对真实且本质上非线性的正向模型的一种近似。我们提出了一种通过扩散后验采样解决CT图像重建逆问题的新方法。我们通过训练先验分数函数估计器来实现传统的无条件扩散模型,并应用贝叶斯规则将此先验与从非线性物理模型导出的测量似然分数函数相结合,以得到可用于对反向时间扩散过程进行采样的后验分数函数。这种即插即用的方法允许将基于扩散的先验与广义非线性CT图像重建纳入具有不同正向模型的多个CT系统设计中,而无需任何额外的训练。我们使用先验的单次无监督训练在全采样低剂量数据和稀疏视图几何结构中展示了该技术。