基于数据和物理驱动的深度学习快速核磁共振成像重建:基础与方法论。

IF 17.2 1区 工程技术 Q1 ENGINEERING, BIOMEDICAL IEEE Reviews in Biomedical Engineering Pub Date : 2024-10-22 DOI:10.1109/RBME.2024.3485022
Jiahao Huang, Yinzhe Wu, Fanwen Wang, Yingying Fang, Yang Nan, Cagan Alkan, Daniel Abraham, Congyu Liao, Lei Xu, Zhifan Gao, Weiwen Wu, Lei Zhu, Zhaolin Chen, Peter Lally, Neal Bangerter, Kawin Setsompop, Yike Guo, Daniel Rueckert, Ge Wang, Guang Yang
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引用次数: 0

摘要

磁共振成像(MRI)是一种关键的临床诊断工具,但其扫描时间的延长往往会影响患者的舒适度和图像质量,尤其是在容积、时间和定量扫描方面。这篇综述阐明了通过数据和物理驱动模型进行核磁共振成像加速的最新进展,利用了从算法解卷模型、基于增强的方法、即插即用模型到新兴的基于生成模型的全方位方法等技术。我们还探讨了数据模型与基于物理的洞察力的协同整合,包括多线圈硬件加速(如并行成像和同步多切片成像)的进步,以及采样模式的优化。然后,我们重点讨论了特定领域的挑战和机遇,包括图像冗余利用、图像完整性、评估指标、数据异质性和模型泛化。这项工作还讨论了潜在的解决方案和未来的研究方向,重点是数据协调和联合学习的作用,以进一步提高这些方法在磁共振成像重建中的普遍适用性和性能。
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Data- and Physics-driven Deep Learning Based Reconstruction for Fast MRI: Fundamentals and Methodologies.

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.

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来源期刊
IEEE Reviews in Biomedical Engineering
IEEE Reviews in Biomedical Engineering Engineering-Biomedical Engineering
CiteScore
31.70
自引率
0.60%
发文量
93
期刊介绍: IEEE Reviews in Biomedical Engineering (RBME) serves as a platform to review the state-of-the-art and trends in the interdisciplinary field of biomedical engineering, which encompasses engineering, life sciences, and medicine. The journal aims to consolidate research and reviews for members of all IEEE societies interested in biomedical engineering. Recognizing the demand for comprehensive reviews among authors of various IEEE journals, RBME addresses this need by receiving, reviewing, and publishing scholarly works under one umbrella. It covers a broad spectrum, from historical to modern developments in biomedical engineering and the integration of technologies from various IEEE societies into the life sciences and medicine.
期刊最新文献
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