Incorporation of residual attention modules into two neural networks for low-dose CT denoising

被引:23
|
作者
Li, Mei [1 ,2 ]
Du, Qiang [2 ]
Duan, Luwen [2 ]
Yang, Xiaodong [2 ]
Zheng, Jian [2 ]
Jiang, Haochuan [3 ]
Li, Ming [2 ]
机构
[1] Changchun Univ Sci & Technol, Changchun, Peoples R China
[2] Chinese Acad Sci, Suzhou Inst Biomed Engn & Technol, Dept Med Imaging, Suzhou, Peoples R China
[3] Minfound Med Syst Co Ltd, Shaoxing, Zhejiang, Peoples R China
关键词
image denoising; low-dose CT; RED-CNN; residual attention module; WGAN; IMAGE-RECONSTRUCTION; NOISE-REDUCTION;
D O I
10.1002/mp.14856
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose: The low-dose computed tomography (CT) imaging can reduce the damage caused by x-ray radiation to the human body. However, low-dose CT images have a different degree of artifacts than conventional CT images, and their resolution is lower than that of conventional CT images, which can affect disease diagnosis by clinicians. Therefore, methods for noise-level reduction and resolution improvement in low-dose CT images have inevitably become a research hotspot in the field of low-dose CT imaging. Methods: In this paper, residual attention modules (RAMs) are incorporated into the residual encoder-decoder convolutional neural network (RED-CNN) and generative adversarial network with Wasserstein distance (WGAN) to learn features that are beneficial to improving the performances of denoising networks, and developed models are denoted as RED-CNN-RAM and WGAN-RAM, respectively. In detail, RAM is composed of a multi-scale convolution module and an attention module built on the residual network architecture, where the attention module consists of a channel attention module and a spatial attention module. The residual network architecture solves the problem of network degradation with increased network depth. The function of the attention module is to learn which features are beneficial to reduce the noise level of low-dose CT images to reduce the loss of detail in the final denoising images, which is also the key point of the proposed algorithms. Results: To develop a robust network for low-dose CT image denoising, multidose-level torso phantom images provided by a cooperating equipment vendor are used to train the network, which can improve the network's adaptability to clinical application. In addition, a clinical dataset is used to test the network's migration capabilities and clinical applicability. The experimental results demonstrate that these proposed networks can effectively remove noise and artifacts from multidose CT scans. Subjective and objective analyses of multiple groups of comparison experiments show that the proposed networks achieve good noise suppression performance while preserving the image texture details. Conclusion: In this study, two deep learning network models are developed using multidose-level CT images acquired from a commercial spiral CT scanner. The two network models can reduce and even remove streaking artifacts, and noise from low-dose CT images confirms the effectiveness of the proposed algorithms. (C) 2021 American Association of Physicists in Medicine
引用
收藏
页码:2973 / 2990
页数:18
相关论文
共 50 条
  • [21] Quadratic Autoencoder for Low-Dose CT Denoising
    Fan, Fenglei
    Shan, Hongming
    Wang, Ge
    [J]. 15TH INTERNATIONAL MEETING ON FULLY THREE-DIMENSIONAL IMAGE RECONSTRUCTION IN RADIOLOGY AND NUCLEAR MEDICINE, 2019, 11072
  • [22] A Neural Regression Framework for Low-Dose Coronary CT Angiography (CCTA) Denoising
    Green, Michael
    Marom, Edith M.
    Kiryati, Nahum
    Konen, Eli
    Mayer, Arnaldo
    [J]. PATCH-BASED TECHNIQUES IN MEDICAL IMAGING (PATCH-MI 2017), 2017, 10530 : 102 - 110
  • [23] Low-Dose CT Image Denoising Method Based on Convolutional Neural Network
    Zhang Yungang
    Yi Benshun
    Wu Chenyue
    Feng Yu
    [J]. ACTA OPTICA SINICA, 2018, 38 (04)
  • [24] Low-dose CT Image Denoising Using Classification Densely Connected Residual Network
    Ming, Jun
    Yi, Benshun
    Zhang, Yungang
    [J]. KSII TRANSACTIONS ON INTERNET AND INFORMATION SYSTEMS, 2020, 14 (06) : 2480 - 2496
  • [25] Improved Residual Encoder-Decoder Network for Low-Dose CT Image Denoising
    Zhang Y.
    Yang J.
    Yi B.
    [J]. Shanghai Jiaotong Daxue Xuebao/Journal of Shanghai Jiaotong University, 2019, 53 (08): : 983 - 989
  • [26] A Novel Network for Low-Dose CT Denoising Based on Dual-Branch Structure and Multi-Scale Residual Attention
    Zhang, Ju
    Ye, Lieli
    Gong, Weiwei
    Chen, Mingyang
    Liu, Guangyu
    Cheng, Yun
    [J]. JOURNAL OF IMAGING INFORMATICS IN MEDICINE, 2024, : 1245 - 1264
  • [27] 3D Residual Convolutional Neural Network for Low Dose CT Denoising
    Zamyatin, Alex
    Yu, Leiming
    Rozas, David
    [J]. MEDICAL IMAGING 2022: PHYSICS OF MEDICAL IMAGING, 2022, 12031
  • [28] Cascaded Convolutional Neural Networks with Perceptual Loss for Low Dose CT Denoising
    Ataei, Sepehr
    Alirezaie, Javad
    Babyn, Paul
    [J]. 2020 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2020,
  • [29] Low-dose CT denoising via convolutional neural network with an observer loss function
    Han, Minah
    Shim, Hyunjung
    Baek, Jongduk
    [J]. MEDICAL PHYSICS, 2021, 48 (10) : 5727 - 5742
  • [30] 3-D Neural denoising for low-dose Coronary CT Angiography (CCTA)
    Green, Michael
    Marom, Edith M.
    Kone, Eli
    Kiryati, Nahum
    Mayer, Arnaldo
    [J]. COMPUTERIZED MEDICAL IMAGING AND GRAPHICS, 2018, 70 : 185 - 191