Enhancing bone scan image quality: an improved self-supervised denoising approach

被引:0
|
作者
Yie, Si Young [1 ,2 ,3 ,4 ]
Kang, Seung Kwan [5 ]
Gil, Joonhyung [4 ]
Hwang, Donghwi [4 ]
Choi, Hongyoon [4 ]
Kim, Yu Kyeong [6 ]
Paeng, Jin Chul [4 ]
Lee, Jae Sung [1 ,2 ,3 ,4 ,5 ]
机构
[1] Interdisciplinary Program in Bioengineering, Seoul National University, Seoul, Korea, Republic of
[2] Integrated Major in Innovative Medical Science, Seoul National University, Seoul, Korea, Republic of
[3] Artificial Intelligence Institute, Seoul National University, Seoul, Korea, Republic of
[4] Department of Nuclear Medicine, Seoul National University Hospital, Seoul, Korea, Republic of
[5] Brightonix Imaging Inc., Seoul, Korea, Republic of
[6] Department of Nuclear Medicine, Seoul National University Boramae Medical Center, Seoul, Korea, Republic of
来源
Physics in Medicine and Biology | 2024年 / 69卷 / 21期
基金
新加坡国家研究基金会;
关键词
Diagnosis - Gamma rays - Image denoising;
D O I
10.1088/1361-6560/ad7e79
中图分类号
学科分类号
摘要
Objective. Bone scans play an important role in skeletal lesion assessment, but gamma cameras exhibit challenges with low sensitivity and high noise levels. Deep learning (DL) has emerged as a promising solution to enhance image quality without increasing radiation exposure or scan time. However, existing self-supervised denoising methods, such as Noise2Noise (N2N), may introduce deviations from the clinical standard in bone scans. This study proposes an improved self-supervised denoising technique to minimize discrepancies between DL-based denoising and full scan images. Approach. Retrospective analysis of 351 whole-body bone scan data sets was conducted. In this study, we used N2N and Noise2FullCount (N2F) denoising models, along with an interpolated version of N2N (iN2N). Denoising networks were separately trained for each reduced scan time from 5 to 50%, and also trained for mixed training datasets, which include all shortened scans. We performed quantitative analysis and clinical evaluation by nuclear medicine experts. Main results. The denoising networks effectively generated images resembling full scans, with N2F revealing distinctive patterns for different scan times, N2N producing smooth textures with slight blurring, and iN2N closely mirroring full scan patterns. Quantitative analysis showed that denoising improved with longer input times and mixed count training outperformed fixed count training. Traditional denoising methods lagged behind DL-based denoising. N2N demonstrated limitations in long-scan images. Clinical evaluation favored N2N and iN2N in resolution, noise, blurriness, and findings, showcasing their potential for enhanced diagnostic performance in quarter-time scans. Significance. The improved self-supervised denoising technique presented in this study offers a viable solution to enhance bone scan image quality, minimizing deviations from clinical standards. The method’s effectiveness was demonstrated quantitatively and clinically, showing promise for quarter-time scans without compromising diagnostic performance. This approach holds potential for improving bone scan interpretations, aiding in more accurate clinical diagnoses. © 2024 Institute of Physics and Engineering in Medicine. All rights, including for text and data mining, AI training, and similar technologies, are reserved.
引用
收藏
相关论文
共 50 条
  • [31] Random Sub-Samples Generation for Self-Supervised Real Image Denoising
    Pan, Yizhong
    Liu, Xiao
    Liao, Xiangyu
    Cao, Yuanzhouhan
    Ren, Chao
    2023 IEEE/CVF INTERNATIONAL CONFERENCE ON COMPUTER VISION (ICCV 2023), 2023, : 12116 - 12125
  • [32] Self-Supervised Deep Learning for Low-Dose CT Image Denoising
    Bai, T.
    Nguyen, D.
    Jiang, S.
    MEDICAL PHYSICS, 2020, 47 (06) : E658 - E658
  • [33] Spatially Adaptive Self-Supervised Learning for Real-World Image Denoising
    Li, Junyi
    Zhang, Zhilu
    Liu, Xiaoyu
    Feng, Chaoyu
    Wang, Xiaotao
    Lei, Lei
    Zuo, Wangmeng
    2023 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2023, : 9914 - 9924
  • [34] Noise2Same: Optimizing A Self-Supervised Bound for Image Denoising
    Xie, Yaochen
    Wang, Zhengyang
    Ji, Shuiwang
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 33, NEURIPS 2020, 2020, 33
  • [35] Self-Supervised Dynamic CT Perfusion Image Denoising With Deep Neural Networks
    Wu, Dufan
    Ren, Hui
    Li, Quanzheng
    IEEE TRANSACTIONS ON RADIATION AND PLASMA MEDICAL SCIENCES, 2021, 5 (03) : 350 - 361
  • [36] Self-supervised PET image denoising using a neighbor-to-neighbor network
    Song, Tzu-An
    Yang, Fan
    Dutta, Joyita
    JOURNAL OF NUCLEAR MEDICINE, 2023, 64
  • [37] Complementary Blind-Spot Network for Self-Supervised Real Image Denoising
    Fan L.
    Cui J.
    Li H.
    Yan X.
    Liu H.
    Zhang C.
    IEEE Transactions on Circuits and Systems for Video Technology, 2024, 34 (10) : 1 - 1
  • [38] Spatially Adaptive Self-Supervised Learning for Real-World Image Denoising
    Li, Junyi
    Zhang, Zhilu
    Liu, Xiaoyu
    Feng, Chaoyu
    Wang, Xiaotao
    Lei, Lei
    Zuo, Wangmeng
    Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2023, 2023-June : 9914 - 9924
  • [39] Noisy-as-Clean: Learning Self-Supervised Denoising From Corrupted Image
    Xu, Jun
    Huang, Yuan
    Cheng, Ming-Ming
    Liu, Li
    Zhu, Fan
    Xu, Zhou
    Shao, Ling
    IEEE TRANSACTIONS ON IMAGE PROCESSING, 2020, 29 : 9316 - 9329
  • [40] Neighbor2Neighbor: A Self-Supervised Framework for Deep Image Denoising
    Huang, Tao
    Li, Songjiang
    Jia, Xu
    Lu, Huchuan
    Liu, Jianzhuang
    IEEE TRANSACTIONS ON IMAGE PROCESSING, 2022, 31 : 4023 - 4038