Title | Movienet: Deep space-time-coil reconstruction network without k-space data consistency for fast motion-resolved 4D MRI. |
Publication Type | Journal Article |
Year of Publication | 2024 |
Authors | Murray V, Siddiq S, Crane C, Homsi MEl, Kim T-H, Wu C, Otazo R |
Journal | Magn Reson Med |
Volume | 91 |
Issue | 2 |
Pagination | 600-614 |
Date Published | 2024 Feb |
ISSN | 1522-2594 |
Keywords | Acceleration, Image Processing, Computer-Assisted, Imaging, Three-Dimensional, Magnetic Resonance Imaging, Motion, Respiration, Respiratory-Gated Imaging Techniques |
Abstract | PURPOSE: To develop a novel deep learning approach for 4D-MRI reconstruction, named Movienet, which exploits space-time-coil correlations and motion preservation instead of k-space data consistency, to accelerate the acquisition of golden-angle radial data and enable subsecond reconstruction times in dynamic MRI. METHODS: Movienet uses a U-net architecture with modified residual learning blocks that operate entirely in the image domain to remove aliasing artifacts and reconstruct an unaliased motion-resolved 4D image. Motion preservation is enforced by sorting the input image and reference for training in a linear motion order from expiration to inspiration. The input image was collected with a lower scan time than the reference XD-GRASP image used for training. Movienet is demonstrated for motion-resolved 4D MRI and motion-resistant 3D MRI of abdominal tumors on a therapeutic 1.5T MR-Linac (1.5-fold acquisition acceleration) and diagnostic 3T MRI scanners (2-fold and 2.25-fold acquisition acceleration for 4D and 3D, respectively). Image quality was evaluated quantitatively and qualitatively by expert clinical readers. RESULTS: The reconstruction time of Movienet was 0.69 s (4 motion states) and 0.75 s (10 motion states), which is substantially lower than iterative XD-GRASP and unrolled reconstruction networks. Movienet enables faster acquisition than XD-GRASP with similar overall image quality and improved suppression of streaking artifacts. CONCLUSION: Movienet accelerates data acquisition with respect to compressed sensing and reconstructs 4D images in less than 1 s, which would enable an efficient implementation of 4D MRI in a clinical setting for fast motion-resistant 3D anatomical imaging or motion-resolved 4D imaging. |
DOI | 10.1002/mrm.29892 |
Alternate Journal | Magn Reson Med |
PubMed ID | 37849064 |
Grant List | P30 CA008748 / CA / NCI NIH HHS / United States R01 CA255661 / CA / NCI NIH HHS / United States |