An Optimization-Based Meta-Learning Model for MRI Reconstruction with Diverse Dataset

被引:9
作者
Bian, Wanyu [1 ]
Chen, Yunmei [1 ]
Ye, Xiaojing [2 ]
Zhang, Qingchao [1 ]
机构
[1] Univ Florida, Dept Math, Gainesville, FL 32611 USA
[2] Georgia State Univ, Dept Math & Stat, Atlanta, GA 30303 USA
关键词
MRI reconstruction; meta-learning; domain generalization; INVERSE PROBLEMS; NEURAL-NETWORKS; ALGORITHM; ERROR;
D O I
10.3390/jimaging7110231
中图分类号
TB8 [摄影技术];
学科分类号
0804 ;
摘要
This work aims at developing a generalizable Magnetic Resonance Imaging (MRI) reconstruction method in the meta-learning framework. Specifically, we develop a deep reconstruction network induced by a learnable optimization algorithm (LOA) to solve the nonconvex nonsmooth variational model of MRI image reconstruction. In this model, the nonconvex nonsmooth regularization term is parameterized as a structured deep network where the network parameters can be learned from data. We partition these network parameters into two parts: a task-invariant part for the common feature encoder component of the regularization, and a task-specific part to account for the variations in the heterogeneous training and testing data. We train the regularization parameters in a bilevel optimization framework which significantly improves the robustness of the training process and the generalization ability of the network. We conduct a series of numerical experiments using heterogeneous MRI data sets with various undersampling patterns, ratios, and acquisition settings. The experimental results show that our network yields greatly improved reconstruction quality over existing methods and can generalize well to new reconstruction problems whose undersampling patterns/trajectories are not present during training.
引用
收藏
页数:29
相关论文
共 50 条
  • [1] A Review of Optimization-Based Deep Learning Models for MRI Reconstruction
    Bian, Wanyu
    Tamilselvam, Yokhesh Krishnasamy
    APPLIEDMATH, 2024, 4 (03): : 1098 - 1127
  • [2] FASTER OPTIMIZATION-BASED META-LEARNING ADAPTATION PHASE
    Khabarlak, K. S.
    RADIO ELECTRONICS COMPUTER SCIENCE CONTROL, 2022, (01) : 82 - 92
  • [3] Online Meta-Learning for Hybrid Model-Based Deep Receivers
    Raviv, Tomer
    Park, Sangwoo
    Simeone, Osvaldo
    Eldar, Yonina C.
    Shlezinger, Nir
    IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, 2023, 22 (10) : 6415 - 6431
  • [4] Efficient hyperparameters optimization through model-based reinforcement learning with experience exploiting and meta-learning
    Liu, Xiyuan
    Wu, Jia
    Chen, Senpeng
    SOFT COMPUTING, 2023, 27 (13) : 8661 - 8678
  • [5] Efficient hyperparameters optimization through model-based reinforcement learning with experience exploiting and meta-learning
    Xiyuan Liu
    Jia Wu
    Senpeng Chen
    Soft Computing, 2023, 27 : 8661 - 8678
  • [6] Generalizing supervised deep learning MRI reconstruction to multiple and unseen contrasts using meta-learning hypernetworks
    Ramanarayanan, Sriprabha
    Palla, Arun
    Ram, Keerthi
    Sivaprakasam, Mohanasankar
    APPLIED SOFT COMPUTING, 2023, 146
  • [7] Memory-Based Optimization Methods for Model-Agnostic Meta-Learning and Personalized Federated Learning
    Wang, Bokun
    Yuan, Zhuoning
    Ying, Yiming
    Yang, Tianbao
    JOURNAL OF MACHINE LEARNING RESEARCH, 2023, 24
  • [8] Active Dataset Generation for Meta-learning System Quality Improvement
    Zabashta, Alexey
    Filchenkov, Andrey
    INTELLIGENT DATA ENGINEERING AND AUTOMATED LEARNING - IDEAL 2019, PT I, 2019, 11871 : 394 - 401
  • [9] Meta-Learning Assisted Source Domain Optimization for Transfer Learning Based Optical Fiber Nonlinear Equalization
    Zhang, Jing
    Xu, Tao
    Jin, Taowei
    Jiang, Wenshan
    Hu, Shaohua
    Huang, Xiatao
    Xu, Bo
    Yu, Zhenming
    Yi, Xingwen
    Qiu, Kun
    JOURNAL OF LIGHTWAVE TECHNOLOGY, 2023, 41 (05) : 1269 - 1277
  • [10] Online Optimization Method of Learning Process for Meta-Learning
    Xu, Zhixiong
    Zhang, Wei
    Li, Ailin
    Zhao, Feifei
    Jing, Yuanyuan
    Wan, Zheng
    Cao, Lei
    Chen, Xiliang
    COMPUTER JOURNAL, 2023, 67 (05) : 1645 - 1651