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MLNAN:基于受限循环 Wasserstein 生成对抗网络的用于低剂量 CT 成像的多级噪声感知网络。

MLNAN: Multi-level noise-aware network for low-dose CT imaging implemented with constrained cycle Wasserstein generative adversarial networks.

机构信息

Lauterbur Research Center for Biomedical Imaging, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, China.

Lauterbur Research Center for Biomedical Imaging, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, China; Shenzhen College of Advanced Technology, University of Chinese Academy of Sciences, Beijing 101408, China.

出版信息

Artif Intell Med. 2023 Sep;143:102609. doi: 10.1016/j.artmed.2023.102609. Epub 2023 Jun 21.

DOI:10.1016/j.artmed.2023.102609
PMID:37673577
Abstract

Low-dose CT techniques attempt to minimize the radiation exposure of patients by estimating the high-resolution normal-dose CT images to reduce the risk of radiation-induced cancer. In recent years, many deep learning methods have been proposed to solve this problem by building a mapping function between low-dose CT images and their high-dose counterparts. However, most of these methods ignore the effect of different radiation doses on the final CT images, which results in large differences in the intensity of the noise observable in CT images. What'more, the noise intensity of low-dose CT images exists significantly differences under different medical devices manufacturers. In this paper, we propose a multi-level noise-aware network (MLNAN) implemented with constrained cycle Wasserstein generative adversarial networks to recovery the low-dose CT images under uncertain noise levels. Particularly, the noise-level classification is predicted and reused as a prior pattern in generator networks. Moreover, the discriminator network introduces noise-level determination. Under two dose-reduction strategies, experiments to evaluate the performance of proposed method are conducted on two datasets, including the simulated clinical AAPM challenge datasets and commercial CT datasets from United Imaging Healthcare (UIH). The experimental results illustrate the effectiveness of our proposed method in terms of noise suppression and structural detail preservation compared with several other deep-learning based methods. Ablation studies validate the effectiveness of the individual components regarding the afforded performance improvement. Further research for practical clinical applications and other medical modalities is required in future works.

摘要

低剂量 CT 技术试图通过估计高分辨率常规剂量 CT 图像来降低辐射诱发癌症的风险,从而最小化患者的辐射暴露。近年来,许多深度学习方法被提出,通过建立低剂量 CT 图像与其高剂量对应物之间的映射函数来解决这个问题。然而,这些方法中的大多数忽略了不同辐射剂量对最终 CT 图像的影响,导致 CT 图像中可观察到的噪声强度存在很大差异。更重要的是,不同医疗设备制造商生产的低剂量 CT 图像的噪声强度存在显著差异。在本文中,我们提出了一种基于受限循环 Wasserstein 生成对抗网络的多级噪声感知网络(MLNAN),用于在不确定噪声水平下恢复低剂量 CT 图像。特别是,噪声水平分类被预测并作为生成器网络中的先验模式重复使用。此外,鉴别器网络引入了噪声水平的确定。在两种剂量降低策略下,我们在两个数据集上进行了评估所提方法性能的实验,包括模拟的临床 AAPM 挑战赛数据集和来自 United Imaging Healthcare(UIH)的商业 CT 数据集。实验结果表明,与其他几种基于深度学习的方法相比,我们提出的方法在噪声抑制和结构细节保留方面具有更好的性能。消融研究验证了所提供的性能改进的各个组件的有效性。未来的工作需要进一步研究实际的临床应用和其他医学模式。

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