Denoising digital breast tomosynthesis projections using deep learning with synthetic data as training set

被引:0
作者
de Araujo, Darlan M. N. [1 ]
Salvadeo, Denis H. P. [1 ]
de Paula, Davi D. [1 ]
机构
[1] Sao Paulo State Univ, Inst Geociences & Exact Sci, Rio Claro, Brazil
关键词
deep learning; image denoising; digital breast tomosynthesis; synthetic data; virtual clinical trials; IMAGE; MAMMOGRAPHY; TRANSFORM; PIPELINE;
D O I
10.1117/1.JMI.10.3.034001
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: Image denoising based on deep neural networks (DNN) needs a big dataset containing digital breast tomosynthesis (DBT) projections acquired in different radiation doses to be trained, which is impracticable. Therefore, we propose extensively investigating the use of synthetic data generated by software for training DNNs to denoise DBT real data.Approach: The approach consists of generating a synthetic dataset representative of the DBT sample space by software, containing noisy and original images. Synthetic data were generated in two different ways: (a) virtual DBT projections generated by OpenVCT and (b) noisy images synthesized from photography regarding noise models used in DBT (e.g., Poisson-Gaussian noise). Then, DNN-based denoising techniques were trained using a synthetic dataset and tested for denoising physical DBT data. Results were evaluated in quantitative (PSNR and SSIM measures) and qualitative (visual analysis) terms. Furthermore, a dimensionality reduction technique (t-SNE) was used for visualization of sample spaces of synthetic and real datasets.Results: The experiments showed that training DNN models with synthetic data could denoise DBT real data, achieving competitive results to traditional methods in quantitative terms but showing a better balance between noise filtering and detail preservation in a visual analysis. T-SNE enables us to visualize if synthetic and real noises are in the same sample space.Conclusion: We propose a solution for the lack of suitable training data to train DNN models for denoising DBT projections, showing that we just need the synthesized noise to be in the same sample space as the target image.
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页数:27
相关论文
共 48 条
  • [1] Abadi M., 2015, TensorFlow. Large-Scale Machine Learning on Heterogeneous Systems, V1
  • [2] K-SVD: An algorithm for designing overcomplete dictionaries for sparse representation
    Aharon, Michal
    Elad, Michael
    Bruckstein, Alfred
    [J]. IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2006, 54 (11) : 4311 - 4322
  • [3] ANSCOMBE FJ, 1948, BIOMETRIKA, V35, P246, DOI 10.1093/biomet/35.3-4.246
  • [4] Badano A, 2018, JAMA NETW OPEN, V1, DOI [10.1001/jamanetworkopen.2018.5474, 10.1007/s42001-018-0015-z]
  • [5] OpenVCT: A GPU-Accelerated Virtual Clinical Trial Pipeline for Mammography and Digital Breast Tomosynthesis
    Barufaldi, Bruno
    Higginbotham, David
    Bakic, Predrag R.
    Maidment, Andrew D. A.
    [J]. MEDICAL IMAGING 2018: PHYSICS OF MEDICAL IMAGING, 2018, 10573
  • [6] Restoration of low-dose digital breast tomosynthesis
    Borges, Lucas R.
    Azzari, Lucio
    Bakic, Predrag R.
    Maidment, Andrew D. A.
    Vieira, Marcelo A. C.
    Foi, Alessandro
    [J]. MEASUREMENT SCIENCE AND TECHNOLOGY, 2018, 29 (06)
  • [7] Pipeline for effective denoising of digital mammography and digital breast tomosynthesis
    Borges, Lucas R.
    Bakic, Predrag R.
    Foi, Alessandro
    Maidment, Andrew D. A.
    Vieira, Marcelo A. C.
    [J]. MEDICAL IMAGING 2017: PHYSICS OF MEDICAL IMAGING, 2017, 10132
  • [8] A review of image denoising algorithms, with a new one
    Buades, A
    Coll, B
    Morel, JM
    [J]. MULTISCALE MODELING & SIMULATION, 2005, 4 (02) : 490 - 530
  • [9] Non-Local Means Denoising
    Buades, Antoni
    Coll, Bartomeu
    Morel, Jean-Michel
    [J]. IMAGE PROCESSING ON LINE, 2011, 1 : 208 - 212
  • [10] Buda M., 2020, DETECTION MASSES ARC, DOI [10.1001/jamanetworkopen.2021.19100, DOI 10.1001/JAMANETWORKOPEN.2021.19100]