School of Mathematical Sciences, Capital Normal University, Beijing, 100048, People's Republic of China.
Centre for Mathematical Imaging Techniques, University of Liverpool, Liverpool, L69 7ZL, United Kingdom.
Phys Med Biol. 2024 Mar 26;69(7). doi: 10.1088/1361-6560/ad29ba.
Self-supervised learning methods have been successfully applied for low-dose computed tomography (LDCT) denoising, with the advantage of not requiring labeled data. Conventional self-supervised methods operate only in the image domain, ignoring valuable priors in the sinogram domain. Recently proposed dual-domain methods address this limitation but encounter issues with blurring artifacts in the reconstructed image due to the inhomogeneous distribution of noise levels in low-dose sinograms.To tackle this challenge, this paper proposes SDBDNet, an end-to-end dual-domain self-supervised method for LDCT denoising. With the network designed based on the properties of inhomogeneous noise in low-dose sinograms and the principle of moderate sinogram-domain denoising, SDBDNet achieves effective denoising in dual domains without introducing blurring artifacts. Specifically, we split the sinogram into two subsets based on the positions of detector cells to generate paired training data with high similarity and independent noise. These sub-sinograms are then restored to their original size using 1D interpolation and learning-based correction. To achieve adaptive and moderate smoothing in the sinogram domain, we integrate Dropblock, a type of convolution layer with regularization, into SDBDNet, and set a weighted average between the denoised sinograms and their noisy counterparts, leading to a well-balanced dual-domain approach.Numerical experiments show that our method outperforms popular non-learning and self-supervised learning methods, demonstrating its effectiveness and superior performance.While introducing a novel high-performance dual-domain self-supervised LDCT denoising method, this paper also emphasizes and verifies the importance of appropriate sinogram-domain denoising in dual-domain methods, which might inspire future work.
自监督学习方法已成功应用于低剂量计算机断层扫描 (LDCT) 降噪,其优点是不需要标记数据。传统的自监督方法仅在图像域中运行,忽略了正弦图域中的有价值的先验信息。最近提出的双域方法解决了这一限制,但由于低剂量正弦图中噪声水平的不均匀分布,在重建图像中会出现模糊伪影的问题。为了解决这一挑战,本文提出了 SDBDNet,这是一种用于 LDCT 降噪的端到端双域自监督方法。该网络基于低剂量正弦图中不均匀噪声的特性和适度正弦图域降噪的原理进行设计,可在不引入模糊伪影的情况下在双域中实现有效降噪。具体来说,我们根据探测器单元的位置将正弦图分为两个子集,以生成具有高相似度和独立噪声的配对训练数据。然后,通过 1D 插值和基于学习的校正将这些子正弦图恢复到原始大小。为了在正弦图域中实现自适应和适度平滑,我们将 Dropblock(一种具有正则化的卷积层)集成到 SDBDNet 中,并在去噪正弦图及其噪声对应物之间设置加权平均值,从而实现了一种平衡的双域方法。数值实验表明,我们的方法优于流行的非学习和自监督学习方法,证明了其有效性和优越的性能。在引入新颖的高性能双域自监督 LDCT 降噪方法的同时,本文还强调并验证了在双域方法中适当的正弦图域降噪的重要性,这可能会激发未来的工作。