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Unpaired learning with a data-dependent noise-generative model for low-dose CT sinogram restoration

  • Yang Liu
  • , Shumao Pang
  • , Dong Zeng
  • , Guoxi Xie
  • , Jianhua Ma
  • , Ji He
  • Guangzhou Medical College
  • Southern Medical University

科研成果: 书/报告/会议事项章节会议稿件同行评审

3 引用 (Scopus)

摘要

Low-dose computed tomography (CT) is of great potential advantage for disease diagnosis. Usually, paired training datasets are difficult to obtain in clinical routine, which catalyzes the development of unsupervised learning techniques to improve the low-dose CT imaging. Recently, most existing unsupervised learning approaches for low-dose CT imaging were developed in the image domain, and only a few approaches have been developed in the sinogram domain, which is a challenging task. In this paper, we propose a dedicated unpaired learning technique for low-dose CT sinogram restoration with a novel data-dependent noise-generative model. The general idea is to construct a paired pseudo normal-/low-dose sinogram dataset based on the existing unpaired normal-/low-dose sinogram dataset, after which a sinogram restoration network can be obtained by training on the paired pseudo normal-/low-dose sinogram dataset. However, the difficulty of the presented idea lies in the construction of the pseudo low-dose sinogram generative network, due to the complexity of the texture feature and noise property in the sinogram domain. To address this issue, we construct an appropriative generative network architecture based on a reasonable noise-generative model in the sinogram domain, which can be used to produce pseudo low-dose sinogram data within an adversarial learning framework. To validate the proposed technique, a clinical dataset was adopted. Experimental results demonstrate that the proposed method can produce promising pseudo low-dose sinogram data, which is sufficient to train an effective sinogram restoration network. Both quantitative and qualitative measurements show that the proposed method can obtained promising low-dose CT imaging performance.

源语言英语
主期刊名Medical Imaging 2023
主期刊副标题Physics of Medical Imaging
编辑Lifeng Yu, Rebecca Fahrig, John M. Sabol
出版商SPIE
ISBN(电子版)9781510660311
DOI
出版状态已出版 - 2023
已对外发布
活动Medical Imaging 2023: Physics of Medical Imaging - San Diego, 美国
期限: 19 2月 202323 2月 2023

出版系列

姓名Progress in Biomedical Optics and Imaging - Proceedings of SPIE
12463
ISSN(印刷版)1605-7422

会议

会议Medical Imaging 2023: Physics of Medical Imaging
国家/地区美国
San Diego
时期19/02/2323/02/23

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