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基于内容-噪声互补学习的医学图像去噪

Content-Noise Complementary Learning for Medical Image Denoising.

出版信息

IEEE Trans Med Imaging. 2022 Feb;41(2):407-419. doi: 10.1109/TMI.2021.3113365. Epub 2022 Feb 2.

Abstract

Medical imaging denoising faces great challenges, yet is in great demand. With its distinctive characteristics, medical imaging denoising in the image domain requires innovative deep learning strategies. In this study, we propose a simple yet effective strategy, the content-noise complementary learning (CNCL) strategy, in which two deep learning predictors are used to learn the respective content and noise of the image dataset complementarily. A medical image denoising pipeline based on the CNCL strategy is presented, and is implemented as a generative adversarial network, where various representative networks (including U-Net, DnCNN, and SRDenseNet) are investigated as the predictors. The performance of these implemented models has been validated on medical imaging datasets including CT, MR, and PET. The results show that this strategy outperforms state-of-the-art denoising algorithms in terms of visual quality and quantitative metrics, and the strategy demonstrates a robust generalization capability. These findings validate that this simple yet effective strategy demonstrates promising potential for medical image denoising tasks, which could exert a clinical impact in the future. Code is available at: https://github.com/gengmufeng/CNCL-denoising.

摘要

医学影像去噪面临巨大挑战,但需求巨大。医学影像去噪在图像域中具有独特的特点,需要创新的深度学习策略。在这项研究中,我们提出了一种简单而有效的策略,即内容-噪声互补学习(CNCL)策略,其中使用两个深度学习预测器来互补地学习图像数据集的内容和噪声。提出了一种基于 CNCL 策略的医学图像去噪流水线,并将其实现为生成对抗网络,其中研究了各种代表性网络(包括 U-Net、DnCNN 和 SRDenseNet)作为预测器。在包括 CT、MR 和 PET 在内的医学成像数据集上验证了这些实现模型的性能。结果表明,该策略在视觉质量和定量指标方面优于最先进的去噪算法,并且该策略表现出稳健的泛化能力。这些发现验证了这种简单而有效的策略在医学图像去噪任务中具有很大的潜力,将来可能会对临床产生影响。代码可在:https://github.com/gengmufeng/CNCL-denoising 获得。

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