CT- sdm:不同采样率下稀疏视图CT重建的采样扩散模型

Liutao Yang;Jiahao Huang;Guang Yang;Daoqiang Zhang
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引用次数: 0

摘要

稀疏视图x射线计算机断层扫描已成为当代减轻辐射剂量的技术。由于减少了投影视图的数量,传统的重建方法可能导致严重的伪影。近年来,利用深度学习方法在稀疏视图计算机断层扫描(SVCT)去除伪影方面取得了可喜的进展。然而,由于深度学习模型泛化能力的限制,目前的方法通常是在固定的采样率上训练模型,这影响了模型在实际临床环境中部署的可用性和灵活性。针对这一问题,本研究提出了一种自适应重构方法,在不同采样率下实现SVCT的高性能重构。具体而言,我们在提出的SVCT (CT-SDM)采样扩散模型中设计了一种新的成像退化算子来模拟正弦图域的投影过程。因此,CT-SDM可以逐渐将投影视图添加到高度欠采样的测量中,以泛化全视图图。通过在扩散推理中选择合适的起始点,该模型可以仅用一个训练模型就能从不同的采样率中恢复出全视图的正弦图。在多个数据集上的实验验证了我们方法的有效性和鲁棒性,证明了它在不同采样率下从稀疏视图CT扫描重建高质量图像方面的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CT-SDM: A Sampling Diffusion Model for Sparse-View CT Reconstruction Across Various Sampling Rates
Sparse views X-ray computed tomography has emerged as a contemporary technique to mitigate radiation dose. Because of the reduced number of projection views, traditional reconstruction methods can lead to severe artifacts. Recently, research studies utilizing deep learning methods has made promising progress in removing artifacts for Sparse-View Computed Tomography (SVCT). However, given the limitations on the generalization capability of deep learning models, current methods usually train models on fixed sampling rates, affecting the usability and flexibility of model deployment in real clinical settings. To address this issue, our study proposes a adaptive reconstruction method to achieve high-performance SVCT reconstruction at various sampling rate. Specifically, we design a novel imaging degradation operator in the proposed sampling diffusion model for SVCT (CT-SDM) to simulate the projection process in the sinogram domain. Thus, the CT-SDM can gradually add projection views to highly undersampled measurements to generalize the full-view sinograms. By choosing an appropriate starting point in diffusion inference, the proposed model can recover the full-view sinograms from various sampling rate with only one trained model. Experiments on several datasets have verified the effectiveness and robustness of our approach, demonstrating its superiority in reconstructing high-quality images from sparse-view CT scans across various sampling rates.
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