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跨领域无配对学习在低剂量 CT 成像中的应用。

Cross-Domain Unpaired Learning for Low-Dose CT Imaging.

出版信息

IEEE J Biomed Health Inform. 2023 Nov;27(11):5471-5482. doi: 10.1109/JBHI.2023.3312748. Epub 2023 Nov 7.

DOI:10.1109/JBHI.2023.3312748
PMID:37676796
Abstract

Supervised deep-learning techniques with paired training datasets have been widely studied for low-dose computed tomography (LDCT) imaging with excellent performance. However, the paired training datasets are usually difficult to obtain in clinical routine, which restricts the wide adoption of supervised deep-learning techniques in clinical practices. To address this issue, a general idea is to construct a pseudo paired training dataset based on the widely available unpaired data, after which, supervised deep-learning techniques can be adopted for improving the LDCT imaging performance by training on the pseudo paired training dataset. However, due to the complexity of noise properties in CT imaging, the LDCT data are difficult to generate in order to construct the pseudo paired training dataset. In this article, we propose a simple yet effective cross-domain unpaired learning framework for pseudo LDCT data generation and LDCT image reconstruction, which is denoted as CrossDuL. Specifically, a dedicated pseudo LDCT sinogram generative module is constructed based on a data-dependent noise model in the sinogram domain, and then instead of in the sinogram domain, a pseudo paired dataset is constructed in the image domain to train an LDCT image restoration module. To validate the effectiveness of the proposed framework, clinical datasets are adopted. Experimental results demonstrate that the CrossDuL framework can obtain promising LDCT imaging performance in both quantitative and qualitative measurements.

摘要

基于配对训练数据集的监督深度学习技术已被广泛研究用于低剂量 CT(LDCT)成像,并取得了优异的性能。然而,配对训练数据集在临床常规中通常难以获得,这限制了监督深度学习技术在临床实践中的广泛应用。为了解决这个问题,一个通用的想法是基于广泛可用的未配对数据构建伪配对训练数据集,然后可以采用监督深度学习技术通过在伪配对训练数据集上进行训练来提高 LDCT 成像性能。然而,由于 CT 成像中噪声特性的复杂性,难以生成 LDCT 数据来构建伪配对训练数据集。在本文中,我们提出了一种简单而有效的用于伪 LDCT 数据生成和 LDCT 图像重建的跨域非配对学习框架,称为 CrossDuL。具体来说,基于在谱域中的数据相关噪声模型构建了一个专用的伪 LDCT 谱生成模块,然后在图像域中而不是在谱域中构建伪配对数据集来训练 LDCT 图像恢复模块。为了验证所提出框架的有效性,采用了临床数据集。实验结果表明,CrossDuL 框架在定量和定性测量方面都可以获得有前景的 LDCT 成像性能。

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