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Unsupervised and Self-supervised Learning in Low-Dose Computed Tomography Denoising: Insights from Training Strategies.
Zhao, Feixiang; Liu, Mingzhe; Xiang, Mingrong; Li, Dongfen; Jiang, Xin; Jin, Xiance; Lin, Cai; Wang, Ruili.
Affiliation
  • Zhao F; School of Data Science and Artificial Intelligence, Wenzhou University of Technology, Ouhai District, Wenzhou, 325000, Zhejiang, China.
  • Liu M; College of Nuclear Technology and Automation Engineering, Chengdu University of Technology, 1 East Third Road, Chengdu, 610059, Sichuan, China.
  • Xiang M; School of Data Science and Artificial Intelligence, Wenzhou University of Technology, Ouhai District, Wenzhou, 325000, Zhejiang, China.
  • Li D; College of Computer Science and Cyber Security, Chengdu University of Technology, 1 East Third Road, Chengdu, 610059, Sichuan, China.
  • Jiang X; School of Data Science and Artificial Intelligence, Wenzhou University of Technology, Ouhai District, Wenzhou, 325000, Zhejiang, China. mingrong.xiang@hotmail.com.
  • Jin X; School of Information Technology, Deakin University, Melbourne Burwood Campus, 221 Burwood Hwy, Melbourne, 3125, Victoria, Australia. mingrong.xiang@hotmail.com.
  • Lin C; College of Computer Science and Cyber Security, Chengdu University of Technology, 1 East Third Road, Chengdu, 610059, Sichuan, China.
  • Wang R; School of Data Science and Artificial Intelligence, Wenzhou University of Technology, Ouhai District, Wenzhou, 325000, Zhejiang, China.
J Imaging Inform Med ; 2024 Sep 04.
Article in En | MEDLINE | ID: mdl-39231886
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.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Imaging Inform Med Year: 2024 Document type: Article Affiliation country: China Country of publication: Suiza

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Imaging Inform Med Year: 2024 Document type: Article Affiliation country: China Country of publication: Suiza