Memory-Efficient Training for Fully Unrolled Deep Learned PET Image Reconstruction With Iteration-Dependent Targets

被引:9
作者
Corda-D'Incan, Guillaume [1 ]
Schnabel, Julia A. [1 ]
Reader, Andrew J. [1 ]
机构
[1] Kings Coll London, St Thomas Hosp, Dept Biomed Engn, Sch Biomed Engn & Imaging Sci, London SE1 7EH, England
基金
英国工程与自然科学研究理事会;
关键词
Deep learning; model-based image reconstruction (MBIR); positron emission tomography (PET) reconstruction; PROJECTION; ALGORITHM;
D O I
10.1109/TRPMS.2021.3101947
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
We propose a new version of the forward-backward splitting expectation-maximization network (FBSEM-Net) along with a new memory-efficient training method enabling the training of fully unrolled implementations of 3-D FBSEM-Net. FBSEM-Net unfolds the maximum a posteriori expectation-maximization algorithm and replaces the regularization step by a residual convolutional neural network. Both the gradient of the prior and the regularization strength are learned from training data. In this new implementation, three modifications of the original framework are included. First, iteration-dependent networks are used to have a customized regularization at each iteration. Second, iteration-dependent targets and losses are introduced so that the regularized reconstruction matches the reconstruction of noise-free data at every iteration. Third, sequential training is performed, making training of large unrolled networks far more memory efficient and feasible. Since sequential training permits unrolling a high number of iterations, there is no need for artificial use of the regularization step as a leapfrogging acceleration. The results obtained on 2-D and 3-D simulated data show that FBSEM-Net using iteration-dependent targets and losses improves the consistency in the optimization of the network parameters over different training runs. We also found that using iteration-dependent targets increases the generalization capabilities of the network. Furthermore, unrolled networks using iteration-dependent regularization allowed a slight reduction in reconstruction error compared to using a fixed regularization network at each iteration. Finally, we demonstrate that sequential training successfully addresses potentially serious memory issues during the training of deep unrolled networks. In particular, it enables the training of 3-D fully unrolled FBSEM-Net, not previously feasible, by reducing the memory usage by up to 98% compared to a conventional end-to-end training. We also note that the truncation of the backpropagation (due to sequential training) does not notably impact the network's performance compared to conventional training with a full backpropagation through the entire network.
引用
收藏
页码:552 / 563
页数:12
相关论文
共 21 条
  • [1] Bowsher JE, 2004, IEEE NUCL SCI CONF R, P2488
  • [2] Chun IY, 2018, PROCEEDINGS 2018 IEEE 13TH IMAGE, VIDEO, AND MULTIDIMENSIONAL SIGNAL PROCESSING WORKSHOP (IVMSP)
  • [3] Proximal Splitting Methods in Signal Processing
    Combettes, Patrick L.
    Pesquet, Jean-Christophe
    [J]. FIXED-POINT ALGORITHMS FOR INVERSE PROBLEMS IN SCIENCE AND ENGINEERING, 2011, 49 : 185 - +
  • [4] Corda-DIncan G., 2020, P IEEE NSS MIC C REC, P1
  • [5] A MODIFIED EXPECTATION MAXIMIZATION ALGORITHM FOR PENALIZED LIKELIHOOD ESTIMATION IN EMISSION TOMOGRAPHY
    DEPIERRO, AR
    [J]. IEEE TRANSACTIONS ON MEDICAL IMAGING, 1995, 14 (01) : 132 - 137
  • [6] ON THE RELATION BETWEEN THE ISRA AND THE EM ALGORITHM FOR POSITRON EMISSION TOMOGRAPHY
    DEPIERRO, AR
    [J]. IEEE TRANSACTIONS ON MEDICAL IMAGING, 1993, 12 (02) : 328 - 333
  • [7] PET Reconstruction With an Anatomical MRI Prior Using Parallel Level Sets
    Ehrhardt, Matthias J.
    Markiewicz, Pawel
    Liljeroth, Maria
    Barnes, Anna
    Kolehmainen, Ville
    Duncan, John S.
    Pizarro, Luis
    Atkinson, David
    Hutton, Brian F.
    Ourselin, Sebastien
    Thielemans, Kris
    Arridge, Simon R.
    [J]. IEEE TRANSACTIONS ON MEDICAL IMAGING, 2016, 35 (09) : 2189 - 2199
  • [8] Ghani M. U., 2018, P 2018 IEEE 13 IM
  • [9] Gong K., 2017, P IEEE NUCL SCI S ME, P1, DOI [10.1109/NSSMIC.2017.8532782, DOI 10.1109/NSSMIC.2017.8532782]
  • [10] MAPEM-Net: An Unrolled Neural Network for Fully 3D PET Image Reconstruction
    Gong, Kuang
    Wu, Dufan
    Kim, Kyungsang
    Yang, Jaewon
    Sun, Tao
    El Fakhri, Georges
    Seo, Youngho
    Li, Quanzheng
    [J]. 15TH INTERNATIONAL MEETING ON FULLY THREE-DIMENSIONAL IMAGE RECONSTRUCTION IN RADIOLOGY AND NUCLEAR MEDICINE, 2019, 11072