TY - JOUR
T1 - Data- and Physics-Driven Deep Learning Based Reconstruction for Fast MRI
T2 - Fundamentals and Methodologies
AU - Huang, Jiahao
AU - Wu, Yinzhe
AU - Wang, Fanwen
AU - Fang, Yingying
AU - Nan, Yang
AU - Alkan, Cagan
AU - Abraham, Daniel
AU - Liao, Congyu
AU - Xu, Lei
AU - Gao, Zhifan
AU - Wu, Weiwen
AU - Zhu, Lei
AU - Chen, Zhaolin
AU - Lally, Peter
AU - Bangerter, Neal
AU - Setsompop, Kawin
AU - Guo, Yike
AU - Rueckert, Daniel
AU - Wang, Ge
AU - Yang, Guang
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - Magnetic Resonance Imaging (MRI) is a pivotal clinical diagnostic tool, yet its extended scanning times often compromise patient comfort and image quality, especially in volumetric, temporal and quantitative scans. This review elucidates recent advances in MRI acceleration via data and physics-driven models, leveraging techniques from algorithm unrolling models, enhancement-based methods, and plug-and-play models to the emerging full spectrum of generative model-based methods. We also explore the synergistic integration of data models with physics-based insights, encompassing the advancements in multi-coil hardware accelerations like parallel imaging and simultaneous multi-slice imaging, and the optimization of sampling patterns. We then focus on domain-specific challenges and opportunities, including image redundancy exploitation, image integrity, evaluation metrics, data heterogeneity, and model generalization. This work also discusses potential solutions and future research directions, with an emphasis on the role of data harmonization and federated learning for further improving the general applicability and performance of these methods in MRI reconstruction.
AB - Magnetic Resonance Imaging (MRI) is a pivotal clinical diagnostic tool, yet its extended scanning times often compromise patient comfort and image quality, especially in volumetric, temporal and quantitative scans. This review elucidates recent advances in MRI acceleration via data and physics-driven models, leveraging techniques from algorithm unrolling models, enhancement-based methods, and plug-and-play models to the emerging full spectrum of generative model-based methods. We also explore the synergistic integration of data models with physics-based insights, encompassing the advancements in multi-coil hardware accelerations like parallel imaging and simultaneous multi-slice imaging, and the optimization of sampling patterns. We then focus on domain-specific challenges and opportunities, including image redundancy exploitation, image integrity, evaluation metrics, data heterogeneity, and model generalization. This work also discusses potential solutions and future research directions, with an emphasis on the role of data harmonization and federated learning for further improving the general applicability and performance of these methods in MRI reconstruction.
KW - data-driven models
KW - deep learning
KW - fast MRI
KW - MRI
KW - reconstruction
UR - http://www.scopus.com/inward/record.url?scp=85207389627&partnerID=8YFLogxK
U2 - 10.1109/RBME.2024.3485022
DO - 10.1109/RBME.2024.3485022
M3 - Article
C2 - 39437302
AN - SCOPUS:85207389627
SN - 1937-3333
VL - 18
SP - 152
EP - 171
JO - IEEE Reviews in Biomedical Engineering
JF - IEEE Reviews in Biomedical Engineering
ER -