Low-dose CT denoising via convolutional neural network with an observer loss function

被引:22
作者
Han, Minah
Shim, Hyunjung
Baek, Jongduk [1 ,2 ]
机构
[1] Yonsei Univ, Sch Integrated Technol, Incheon, South Korea
[2] Yonsei Univ, Yonsei Inst Convergence Technol, Incheon, South Korea
基金
新加坡国家研究基金会;
关键词
convolutional neural netwrok; denoising; low-dose CT; perceptual loss; DETECTABILITY;
D O I
10.1002/mp.15161
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: Convolutional neural network (CNN)-based denoising is an effective method for reducing complex computed tomography (CT) noise. However, the image blur induced by denoising processes is a major concern. The main source of image blur is the pixel-level loss (e.g., mean squared error [MSE] and mean absolute error [MAE]) used to train a CNN denoiser. To reduce the image blur, feature-level loss is utilized to train a CNN denoiser. A CNN denoiser trained using visual geometry group (VGG) loss can preserve the small structures, edges, and texture of the image.However, VGG loss, derived from an ImageNet-pretrained image classifier, is not optimal for training a CNN denoiser for CT images. ImageNet contains natural RGB images, so the features extracted by the ImageNet-pretrained model cannot represent the characteristics of CT images that are highly correlated with diagnosis. Furthermore, a CNN denoiser trained with VGG loss causes bias in CT number. Therefore, we propose to use a binary classification network trained using CT images as a feature extractor and newly define the feature-level loss as observer loss. Methods: As obtaining labeled CT images for training classification network is difficult, we create labels by inserting simulated lesions. We conduct two separate classification tasks, signal-known-exactly (SKE) and signal-known-statistically (SKS), and define the corresponding feature-level losses as SKE loss and SKS loss, respectively. We use SKE loss and SKS loss to train CNN denoiser. Results: Compared to pixel-level losses, a CNN denoiser trained using observer loss (i.e., SKE loss and SKS loss) is effective in preserving structure, edge, and texture. Observer loss also resolves the bias in CT number, which is a problem of VGG loss. Comparing observer losses using SKE and SKS tasks, SKS yields images having a more similar noise structure to reference images. Conclusions: Using observer loss for training CNN denoiser is effective to preserve structure, edge, and texture in denoised images and prevent the CT number bias. In particular, when using SKS loss, denoised images having a similar noise structure to reference images are generated.
引用
收藏
页码:5727 / 5742
页数:16
相关论文
共 40 条
  • [31] An Adaptive Intelligence Algorithm for Undersampled Knee MRI Reconstruction
    Pezzotti, Nicola
    Yousefi, Sahar
    Elmahdy, Mohamed S.
    Van Gemert, Jeroen Hendrikus Fransiscus
    Schuelke, Christophe
    Doneva, Mariya
    Nielsen, Tim
    Kastryulin, Sergey
    Lelieveldt, Boudewijn P. F.
    Van Osch, Matthias J. P.
    De Weerdt, Elwin
    Staring, Marius
    [J]. IEEE ACCESS, 2020, 8 : 204825 - 204838
  • [32] Predictive models for observer performance in CT: Applications in protocol optimization
    Richard, S.
    Li, X.
    Yadava, G.
    Samei, E.
    [J]. MEDICAL IMAGING 2011: PHYSICS OF MEDICAL IMAGING, 2011, 7961
  • [33] Image information and visual quality
    Sheikh, HR
    Bovik, AC
    [J]. IEEE TRANSACTIONS ON IMAGE PROCESSING, 2006, 15 (02) : 430 - 444
  • [34] Simonyan K, 2015, Arxiv, DOI arXiv:1409.1556
  • [35] Vincent P, 2010, J MACH LEARN RES, V11, P3371
  • [36] Image quality assessment: From error visibility to structural similarity
    Wang, Z
    Bovik, AC
    Sheikh, HR
    Simoncelli, EP
    [J]. IEEE TRANSACTIONS ON IMAGE PROCESSING, 2004, 13 (04) : 600 - 612
  • [37] Low-Dose CT Image Denoising Using a Generative Adversarial Network With Wasserstein Distance and Perceptual Loss
    Yang, Qingsong
    Yan, Pingkun
    Zhang, Yanbo
    Yu, Hengyong
    Shi, Yongyi
    Mou, Xuanqin
    Kalra, Mannudeep K.
    Zhang, Yi
    Sun, Ling
    Wang, Ge
    [J]. IEEE TRANSACTIONS ON MEDICAL IMAGING, 2018, 37 (06) : 1348 - 1357
  • [38] Learning deep features to recognise speech emotion using merged deep CNN
    Zhao, Jianfeng
    Mao, Xia
    Chen, Lijiang
    [J]. IET SIGNAL PROCESSING, 2018, 12 (06) : 713 - 721
  • [39] Zhao YL, 2018, 2018 IEEE FOURTH INTERNATIONAL CONFERENCE ON MULTIMEDIA BIG DATA (BIGMM)
  • [40] Approximating the Ideal Observer and Hotelling Observer for Binary Signal Detection Tasks by Use of Supervised Learning Methods
    Zhou, Weimin
    Li, Hua
    Anastasio, Mark A.
    [J]. IEEE TRANSACTIONS ON MEDICAL IMAGING, 2019, 38 (10) : 2456 - 2468