Joint B0 and Image Reconstruction in Low-Field MRI by Physics-Informed Deep-Learning

被引:3
|
作者
Schote, David [1 ]
Winter, Lukas [1 ]
Kolbitsch, Christoph [1 ]
Rose, Georg [2 ,3 ]
Speck, Oliver [2 ,3 ]
Kofler, Andreas [1 ]
机构
[1] Phys Tech Bundesanstalt PTB, D-10587 Berlin, Germany
[2] Otto von Guericke Univ, Magdeburg, Germany
[3] Res Campus STIMULATE, Magdeburg, Germany
关键词
Low-field MRI; physics-informed deep learning; image reconstruction; unrolled optimization; field inhomogeneities; MAP ESTIMATION;
D O I
10.1109/TBME.2024.3396223
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Objective: We present a model-based image reconstruction approach based on unrolled neural networks which corrects for image distortion and noise in low-field B-0 similar to 50 mT) MRI. Methods: Utilising knowledge about the underlying physics, a novel network architecture (SH-Net) is introduced which involves the estimation of spherical harmonic coefficients to guarantee a spatially smooth field map estimate. The SH-Net is integrated in an end-to-end trainable model which jointly estimates the B-0-field map as well as the image. Experiments were conducted on retrospectively simulated low-field data of human knees. Results: We compare our model to different model-based approaches at distinct noise levels and various B-0-field distributions. Our results show that our physics-informed neural network approach outperforms the purely model-based methods by improving the PSNR up to 11.7% and the RMSE up to 86.3%. Conclusion: Our end-to-end trained model-based approach outperforms existing methods in reconstructing image and B-0-field maps in the low-field regime. Significance: low-field MRI is becoming increasingly more popular as it enables access to MR in challenging situations such as intensive care units or resource poor areas. Our method allows for fast and accurate image reconstruction in such low-field imaging with B-0-inhomogeneity compensation under a wide range of various environmental conditions.
引用
收藏
页码:2842 / 2853
页数:12
相关论文
共 50 条
  • [21] Deep Learning-based Method for Denoising and Image Enhancement in Low-Field MRI
    Dang Bich Thuy Le
    Sadinski, Meredith
    Nacev, Aleksandar
    Narayanan, Ram
    Kumar, Dinesh
    2021 IEEE INTERNATIONAL CONFERENCE ON IMAGING SYSTEMS AND TECHNIQUES (IST), 2021,
  • [22] Heat source field inversion and detection based on physics-informed deep learning
    Chi, Yimeng
    Li, Mingliang
    Long, Rui
    Liu, Zhichun
    Liu, Wei
    INTERNATIONAL COMMUNICATIONS IN HEAT AND MASS TRANSFER, 2025, 164
  • [23] Physics-Informed Self-supervised Deep Learning Reconstruction for Accelerated First-Pass Perfusion Cardiac MRI
    Martin-Gonzalez, Elena
    Alskaf, Ebraham
    Chiribiri, Amedeo
    Casaseca-de-la-Higuera, Pablo
    Alberola-Lopez, Carlos
    Nunes, Rita G.
    Correia, Teresa
    MACHINE LEARNING FOR MEDICAL IMAGE RECONSTRUCTION (MLMIR 2021), 2021, 12964 : 86 - 95
  • [24] Thermal fluid fields reconstruction for nanofluids convection based on physics-informed deep learning
    Yunzhu Li
    Tianyuan Liu
    Yonghui Xie
    Scientific Reports, 12
  • [25] Thermal fluid fields reconstruction for nanofluids convection based on physics-informed deep learning
    Li, Yunzhu
    Liu, Tianyuan
    Xie, Yonghui
    SCIENTIFIC REPORTS, 2022, 12 (01)
  • [26] Physics-informed Deep Diffusion MRI Reconstruction: Break the Bottleneck of Training Data in Artificial Intelligence
    Qian, Chen
    Wang, Zi
    Zhang, Xinlin
    Cai, Qingrui
    Kang, Taishan
    Jiang, Boyu
    Tao, Ran
    Wu, Zhigang
    Guo, Di
    Qu, Xiaobo
    2023 IEEE 20TH INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING, ISBI, 2023,
  • [27] A Physics-informed Deep-learning Intensity Prediction Scheme for Tropical Cyclones over the Western North Pacific
    Yitian ZHOU
    Ruifen ZHAN
    Yuqing WANG
    Peiyan CHEN
    Zhemin TAN
    Zhipeng XIE
    Xiuwen NIE
    AdvancesinAtmosphericSciences, 2024, 41 (07) : 1391 - 1402
  • [28] Physics-informed Deep Learning for Dual-Energy Computed Tomography Image Processing
    Maarten G. Poirot
    Rick H. J. Bergmans
    Bart R. Thomson
    Florine C. Jolink
    Sarah J. Moum
    Ramon G. Gonzalez
    Michael H. Lev
    Can Ozan Tan
    Rajiv Gupta
    Scientific Reports, 9
  • [29] Physics-informed Deep Learning for Dual-Energy Computed Tomography Image Processing
    Poirot, Maarten G.
    Bergmans, Rick H. J.
    Thomson, Bart R.
    Jolink, Florine C.
    Moum, Sarah J.
    Gonzalez, Ramon G.
    Lev, Michael H.
    Tan, Can Ozan
    Gupta, Rajiv
    SCIENTIFIC REPORTS, 2019, 9 (1)
  • [30] Battery state-of-health diagnostics during fast cycling using physics-informed deep-learning
    Weddle, Peter J.
    Kim, Sangwook
    Chen, Bor-Rong
    Yi, Zonggen
    Gasper, Paul
    Colclasure, Andrew M.
    Smith, Kandler
    Gering, Kevin L.
    Tanim, Tanvir R.
    Dufek, Eric J.
    JOURNAL OF POWER SOURCES, 2023, 585