Literature DB >> 34096095

End-to-end deep learning nonrigid motion-corrected reconstruction for highly accelerated free-breathing coronary MRA.

Haikun Qi1,2, Reza Hajhosseiny1, Gastao Cruz1, Thomas Kuestner1,3, Karl Kunze1,4, Radhouene Neji1,4, René Botnar1,5, Claudia Prieto1,5.   

Abstract

PURPOSE: To develop an end-to-end deep learning technique for nonrigid motion-corrected (MoCo) reconstruction of ninefold undersampled free-breathing whole-heart coronary MRA (CMRA).
METHODS: A novel deep learning framework was developed consisting of a diffeomorphic registration network and a motion-informed model-based deep learning (MoDL) reconstruction network. The registration network receives as input highly undersampled (~22×) respiratory-resolved images and outputs 3D nonrigid respiratory motion fields between the images. The motion-informed MoDL performs MoCo reconstruction from undersampled data using the predicted motion fields. The whole deep learning framework, termed as MoCo-MoDL, was trained end-to-end in a supervised manner for simultaneous 3D nonrigid motion estimation and MoCo reconstruction. MoCo-MoDL was compared with a state-of-the-art nonrigid MoCo CMRA reconstruction technique in 15 retrospectively undersampled datasets and 9 prospectively undersampled acquisitions.
RESULTS: The acquisition time for ninefold accelerated CMRA was ~2.5 min. The reconstruction time was ~22 s for the proposed MoCo-MoDL and ~35 min for the conventional approach. MoCo-MoDL achieved higher peak SNR (27.86 ± 3.00 vs. 26.71 ± 2.79; P < .05) and structural similarity (0.78 ± 0.06 vs. 0.75 ± 0.06; P < .05) than the conventional approach. Similar vessel length and visual image quality score were obtained with the 2 methods, whereas improved vessel sharpness was observed with MoCo-MoDL.
CONCLUSION: An end-to-end deep learning approach was introduced for simultaneous nonrigid motion estimation and MoCo reconstruction of highly undersampled free-breathing whole-heart CMRA. The rapid free-breathing CMRA acquisition together with the fast reconstruction of the proposed approach promises easy integration into clinical workflow.
© 2021 International Society for Magnetic Resonance in Medicine.

Entities:  

Keywords:  coronary MRA; deep learning nonrigid motion correction; deep learning reconstruction; free-breathing cardiac MRI

Mesh:

Year:  2021        PMID: 34096095     DOI: 10.1002/mrm.28851

Source DB:  PubMed          Journal:  Magn Reson Med        ISSN: 0740-3194            Impact factor:   4.668


  4 in total

1.  Deformation-Compensated Learning for Image Reconstruction Without Ground Truth.

Authors:  Weijie Gan; Yu Sun; Cihat Eldeniz; Jiaming Liu; Hongyu An; Ulugbek S Kamilov
Journal:  IEEE Trans Med Imaging       Date:  2022-08-31       Impact factor: 11.037

2.  End-to-End Deep Learning of Non-rigid Groupwise Registration and Reconstruction of Dynamic MRI.

Authors:  Junwei Yang; Thomas Küstner; Peng Hu; Pietro Liò; Haikun Qi
Journal:  Front Cardiovasc Med       Date:  2022-04-28

Review 3.  Artificial intelligence in cardiac magnetic resonance fingerprinting.

Authors:  Carlos Velasco; Thomas J Fletcher; René M Botnar; Claudia Prieto
Journal:  Front Cardiovasc Med       Date:  2022-09-20

4.  Image Features of Magnetic Resonance Angiography under Deep Learning in Exploring the Effect of Comprehensive Rehabilitation Nursing on the Neurological Function Recovery of Patients with Acute Stroke.

Authors:  Rui Yang; Ying Zhang; Miao Xu; Jing Ma
Journal:  Contrast Media Mol Imaging       Date:  2021-09-10       Impact factor: 3.161

  4 in total

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