• J Magn Reson Imaging · Apr 2021

    Review

    Artificial Intelligence for MR Image Reconstruction: An Overview for Clinicians.

    • Dana J Lin, Patricia M Johnson, Florian Knoll, and Yvonne W Lui.
    • Department of Radiology, NYU School of Medicine/NYU Langone Health, New York, New York, USA.
    • J Magn Reson Imaging. 2021 Apr 1; 53 (4): 1015-1028.

    AbstractArtificial intelligence (AI) shows tremendous promise in the field of medical imaging, with recent breakthroughs applying deep-learning models for data acquisition, classification problems, segmentation, image synthesis, and image reconstruction. With an eye towards clinical applications, we summarize the active field of deep-learning-based MR image reconstruction. We review the basic concepts of how deep-learning algorithms aid in the transformation of raw k-space data to image data, and specifically examine accelerated imaging and artifact suppression. Recent efforts in these areas show that deep-learning-based algorithms can match and, in some cases, eclipse conventional reconstruction methods in terms of image quality and computational efficiency across a host of clinical imaging applications, including musculoskeletal, abdominal, cardiac, and brain imaging. This article is an introductory overview aimed at clinical radiologists with no experience in deep-learning-based MR image reconstruction and should enable them to understand the basic concepts and current clinical applications of this rapidly growing area of research across multiple organ systems.© 2020 International Society for Magnetic Resonance in Medicine.

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