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2
An AI-Based Low-Risk Lung Health Image Visualization Framework Using LR-ULDCT.基于 AI 的低风险肺部健康图像可视化框架,使用 LR-ULDCT。
J Imaging Inform Med. 2024 Oct;37(5):2047-2062. doi: 10.1007/s10278-024-01062-5. Epub 2024 Mar 15.
3
A Review of deep learning methods for denoising of medical low-dose CT images.深度学习方法在医学低剂量 CT 图像去噪中的研究进展。
Comput Biol Med. 2024 Mar;171:108112. doi: 10.1016/j.compbiomed.2024.108112. Epub 2024 Feb 15.
4
Segment anything in medical images.在医学图像中分割任何内容。
Nat Commun. 2024 Jan 22;15(1):654. doi: 10.1038/s41467-024-44824-z.
5
Self-supervised deep learning for joint 3D low-dose PET/CT image denoising.基于自监督深度学习的联合 3D 低剂量 PET/CT 图像去噪。
Comput Biol Med. 2023 Oct;165:107391. doi: 10.1016/j.compbiomed.2023.107391. Epub 2023 Aug 26.
6
MLNAN: Multi-level noise-aware network for low-dose CT imaging implemented with constrained cycle Wasserstein generative adversarial networks.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。
Artif Intell Med. 2023 Sep;143:102609. doi: 10.1016/j.artmed.2023.102609. Epub 2023 Jun 21.
7
Unsupervised learning-based dual-domain method for low-dose CT denoising.基于无监督学习的双域低剂量 CT 去噪方法。
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8
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10
HCformer: Hybrid CNN-Transformer for LDCT Image Denoising.HCformer:用于 LDCT 图像去噪的混合 CNN-Transformer。
J Digit Imaging. 2023 Oct;36(5):2290-2305. doi: 10.1007/s10278-023-00842-9. Epub 2023 Jun 29.

低剂量计算机断层扫描去噪中的无监督和自监督学习:训练策略的见解

Unsupervised and Self-supervised Learning in Low-Dose Computed Tomography Denoising: Insights from Training Strategies.

作者信息

Zhao Feixiang, Liu Mingzhe, Xiang Mingrong, Li Dongfen, Jiang Xin, Jin Xiance, Lin Cai, Wang Ruili

机构信息

School of Data Science and Artificial Intelligence, Wenzhou University of Technology, Ouhai District, Wenzhou, 325000, Zhejiang, China.

College of Nuclear Technology and Automation Engineering, Chengdu University of Technology, 1 East Third Road, Chengdu, 610059, Sichuan, China.

出版信息

J Imaging Inform Med. 2025 Apr;38(2):902-930. doi: 10.1007/s10278-024-01213-8. Epub 2024 Sep 4.

DOI:10.1007/s10278-024-01213-8
PMID:39231886
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11950483/
Abstract

In recent years, X-ray low-dose computed tomography (LDCT) has garnered widespread attention due to its significant reduction in the risk of patient radiation exposure. However, LDCT images often contain a substantial amount of noises, adversely affecting diagnostic quality. To mitigate this, a plethora of LDCT denoising methods have been proposed. Among them, deep learning (DL) approaches have emerged as the most effective, due to their robust feature extraction capabilities. Yet, the prevalent use of supervised training paradigms is often impractical due to the challenges in acquiring low-dose and normal-dose CT pairs in clinical settings. Consequently, unsupervised and self-supervised deep learning methods have been introduced for LDCT denoising, showing considerable potential for clinical applications. These methods' efficacy hinges on training strategies. Notably, there appears to be no comprehensive reviews of these strategies. Our review aims to address this gap, offering insights and guidance for researchers and practitioners. Based on training strategies, we categorize the LDCT methods into six groups: (i) cycle consistency-based, (ii) score matching-based, (iii) statistical characteristics of noise-based, (iv) similarity-based, (v) LDCT synthesis model-based, and (vi) hybrid methods. For each category, we delve into the theoretical underpinnings, training strategies, strengths, and limitations. In addition, we also summarize the open source codes of the reviewed methods. Finally, the review concludes with a discussion on open issues and future research directions.

摘要

近年来,X射线低剂量计算机断层扫描(LDCT)因其显著降低患者辐射暴露风险而受到广泛关注。然而,LDCT图像通常包含大量噪声,对诊断质量产生不利影响。为了缓解这一问题,人们提出了大量的LDCT去噪方法。其中,深度学习(DL)方法因其强大的特征提取能力而成为最有效的方法。然而,由于在临床环境中获取低剂量和正常剂量CT对存在挑战,监督训练范式的普遍使用往往不切实际。因此,无监督和自监督深度学习方法被引入用于LDCT去噪,显示出在临床应用中的巨大潜力。这些方法的有效性取决于训练策略。值得注意的是,目前似乎没有对这些策略进行全面的综述。我们的综述旨在填补这一空白,为研究人员和从业人员提供见解和指导。基于训练策略,我们将LDCT方法分为六类:(i)基于循环一致性的方法,(ii)基于得分匹配的方法,(iii)基于噪声统计特征的方法,(iv)基于相似性的方法,(v)基于LDCT合成模型的方法,以及(vi)混合方法。对于每一类,我们深入探讨其理论基础、训练策略、优点和局限性。此外,我们还总结了所综述方法的开源代码。最后,综述以对开放问题和未来研究方向的讨论作为结尾。