PAINT: Prior-aided Alternate Iterative NeTwork for Ultra-low-dose CT Imaging Using Diffusion Model-restored Sinogram.

Kaile Chen, Weikang Zhang, Ziheng Deng, Yufu Zhou, Jun Zhao
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Abstract

Obtaining multiple CT scans from the same patient is required in many clinical scenarios, such as lung nodule screening and image-guided radiation therapy. Repeated scans would expose patients to higher radiation dose and increase the risk of cancer. In this study, we aim to achieve ultra-low-dose imaging for subsequent scans by collecting extremely undersampled sinogram via regional few-view scanning, and preserve image quality utilizing the preceding fullsampled scan as prior. To fully exploit prior information, we propose a two-stage framework consisting of diffusion model-based sinogram restoration and deep learning-based unrolled iterative reconstruction. Specifically, the undersampled sinogram is first restored by a conditional diffusion model with sinogram-domain prior guidance. Then, we formulate the undersampled data reconstruction problem as an optimization problem combining fidelity terms for both undersampled and restored data, along with a regularization term based on image-domain prior. Next, we propose Prior-aided Alternate Iterative NeTwork (PAINT) to solve the optimization problem. PAINT alternately updates the undersampled or restored data fidelity term, and unrolls the iterations to integrate neural network-based prior regularization. In the case of 112 mm field of view in simulated data experiments, our proposed framework achieved superior performance in terms of CT value accuracy and image details preservation. Clinical data experiments also demonstrated that our proposed framework outperformed the comparison methods in artifact reduction and structure recovery.

PAINT:基于扩散模型恢复Sinogram超低剂量CT成像的先验辅助交替迭代网络。
在许多临床情况下,需要对同一患者进行多次CT扫描,例如肺结节筛查和图像引导放射治疗。重复扫描会使病人暴露在更高的辐射剂量下,增加患癌症的风险。在本研究中,我们的目标是通过区域少视点扫描收集极度欠采样的正弦图,为后续扫描实现超低剂量成像,并利用之前的全采样扫描保持图像质量。为了充分利用先验信息,我们提出了一个两阶段框架,包括基于扩散模型的正弦图恢复和基于深度学习的展开迭代重建。具体地说,欠采样的正弦图首先通过带有正弦图域先验引导的条件扩散模型恢复。然后,我们将欠采样数据重建问题表述为将欠采样和恢复数据的保真度项以及基于图像域先验的正则化项结合在一起的优化问题。接下来,我们提出了先验辅助交替迭代网络(PAINT)来解决优化问题。PAINT交替更新欠采样或恢复的数据保真度项,并展开迭代以集成基于神经网络的先验正则化。在模拟数据实验中,在112 mm视场的情况下,我们提出的框架在CT值精度和图像细节保存方面取得了优异的性能。临床数据实验也表明,我们提出的框架在伪影减少和结构恢复方面优于比较方法。
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