Utilizing deep learning techniques to improve image quality and noise reduction in preclinical low-dose PET images in the sinogram domain

被引:2
|
作者
Doss, Kishore Krishnagiri Manoj [1 ]
Chen, Jyh-Cheng [1 ,2 ,3 ,4 ]
机构
[1] Natl Yang Ming Chiao Tung Univ, Dept Biomed Imaging & Radiol Sci, Taipei, Taiwan
[2] China Med Univ, Dept Med Imaging & Radiol Sci, Taichung, Taiwan
[3] Xuzhou Med Univ, Sch Med Imaging, Xuzhou, Peoples R China
[4] Natl Yang Ming Chiao Tung Univ, Dept Biomed Imaging & Radiol Sci, 155 Li Nong St,Sec 2, Taipei 112, Taiwan
关键词
deep learning; generative adversarial network; low-dose image; positron emission tomography; preclinical imaging; sinogram;
D O I
10.1002/mp.16830
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
BackgroundLow-dose positron emission tomography (LD-PET) imaging is commonly employed in preclinical research to minimize radiation exposure to animal subjects. However, LD-PET images often exhibit poor quality and high noise levels due to the low signal-to-noise ratio. Deep learning (DL) techniques such as generative adversarial networks (GANs) and convolutional neural network (CNN) have the capability to enhance the quality of images derived from noisy or low-quality PET data, which encodes critical information about radioactivity distribution in the body.PurposeOur objective was to optimize the image quality and reduce noise in preclinical PET images by utilizing the sinogram domain as input for DL models, resulting in improved image quality as compared to LD-PET images.MethodsA GAN and CNN model were utilized to predict high-dose (HD) preclinical PET sinograms from the corresponding LD preclinical PET sinograms. In order to generate the datasets, experiments were conducted on micro-phantoms, animal subjects (rats), and virtual simulations. The quality of DL-generated images was weighted by performing the following quantitative measures: structural similarity index measure (SSIM), root mean squared error (RMSE), peak signal-to-noise ratio (PSNR), signal-to-noise ratio (SNR), and contrast-to-noise ratio (CNR). Additionally, DL input and output were both subjected to a spatial resolution calculation of full width half maximum (FWHM) and full width tenth maximum (FWTM). DL outcomes were then compared with the conventional denoising algorithms such as non-local means (NLM), block-matching, and 3D filtering (BM3D).ResultsThe DL models effectively learned image features and produced high-quality images, as reflected in the quantitative metrics. Notably, the FWHM and FWTM values of DL PET images exhibited significantly improved accuracy compared to LD, NLM, and BM3D PET images, and just as precise as HD PET images. The MSE loss underscored the excellent performance of the models, indicating that the models performed well. To further improve the training, the generator loss (G loss) was increased to a value higher than the discriminator loss (D loss), thereby achieving convergence in the GAN model.ConclusionsThe sinograms generated by the GAN network closely resembled real HD preclinical PET sinograms and were more realistic than LD. There was a noticeable improvement in image quality and noise factor in the predicted HD images. Importantly, DL networks did not fully compromise the spatial resolution of the images.
引用
收藏
页码:209 / 223
页数:15
相关论文
共 50 条
  • [1] Leveraging deep neural networks to improve numerical and perceptual image quality in low-dose preclinical PET imaging
    Amirrashedi, Mahsa
    Sarkar, Saeed
    Mamizadeh, Hojjat
    Ghadiri, Hossein
    Ghafarian, Pardis
    Zaidi, Habib
    Ay, Mohammad Reza
    COMPUTERIZED MEDICAL IMAGING AND GRAPHICS, 2021, 94
  • [2] Noise reduction in low-dose positron emission tomography with adaptive parameter estimation in sinogram domain
    Kim, Kyu Bom
    Kim, Yeonkyeong
    Kim, Kyuseok
    Lee, Su Hwan
    NUCLEAR ENGINEERING AND TECHNOLOGY, 2024, 56 (10) : 4127 - 4133
  • [3] ICA-based noise reduction for PET sinogram-domain images
    Han, Xian-Hua
    Chen, Yen-Wei
    2007 IEEE/ICME INTERNATIONAL CONFERENCE ON COMPLEX MEDICAL ENGINEERING, VOLS 1-4, 2007, : 1655 - +
  • [4] Noise reduction with cross-tracer transfer deep learning for low-dose oncological PET
    Liu, Hui
    Wu, Jing
    Lu, Wenzhuo
    Onofrey, John
    Liu, Yi-Hwa
    Liu, Chi
    JOURNAL OF NUCLEAR MEDICINE, 2019, 60
  • [5] Low-dose CT reconstruction with simultaneous sinogram and image domain denoising by deep neural network
    Zhu, Jiongtao
    Su, Ting
    Deng, Xiaolei
    Sun, Xindong
    Zheng, Hairong
    Liang, Dong
    Ge, Yongshuai
    MEDICAL IMAGING 2020: PHYSICS OF MEDICAL IMAGING, 2020, 11312
  • [6] Noise reduction for low-dose CT sinogram based on fuzzy entropy
    Liu, Yi
    Zhang, Quan
    Gui, Zhi-Guo
    Dianzi Yu Xinxi Xuebao/Journal of Electronics and Information Technology, 2013, 35 (06): : 1421 - 1427
  • [7] Deep Convolutional approach for Low-Dose CT Image Noise Reduction
    Badretale, Seyyedomid
    Shaker, Fariba
    Babyn, Paul
    Alirezaie, Javad
    2017 24TH NATIONAL AND 2ND INTERNATIONAL IRANIAN CONFERENCE ON BIOMEDICAL ENGINEERING (ICBME), 2017, : 142 - 146
  • [8] SIPID: A DEEP LEARNING FRAMEWORK FOR SINOGRAM INTERPOLATION AND IMAGE DENOISING IN LOW-DOSE CT RECONSTRUCTION
    Yuan, Huizhuo
    Jia, Jinzhu
    Zhu, Zhanxing
    2018 IEEE 15TH INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING (ISBI 2018), 2018, : 1521 - 1524
  • [9] Image Denoising of Low-Dose PET Mouse Scans with Deep Learning: Validation Study for Preclinical Imaging Applicability
    Florence M. Muller
    Boris Vervenne
    Jens Maebe
    Eric Blankemeyer
    Mark A. Sellmyer
    Rong Zhou
    Joel S. Karp
    Christian Vanhove
    Stefaan Vandenberghe
    Molecular Imaging and Biology, 2024, 26 : 101 - 113
  • [10] Image Denoising of Low-Dose PET Mouse Scans with Deep Learning: Validation Study for Preclinical Imaging Applicability
    Muller, Florence M.
    Vervenne, Boris
    Maebe, Jens
    Blankemeyer, Eric
    Sellmyer, Mark A.
    Zhou, Rong
    Karp, Joel S.
    Vanhove, Christian
    Vandenberghe, Stefaan
    MOLECULAR IMAGING AND BIOLOGY, 2024, 26 (01) : 101 - 113