Literature DB >> 35753594

Stacked U-Nets with self-assisted priors towards robust correction of rigid motion artifact in brain MRI.

Mohammed A Al-Masni1, Seul Lee1, Jaeuk Yi1, Sewook Kim1, Sung-Min Gho2, Young Hun Choi3, Dong-Hyun Kim4.   

Abstract

Magnetic Resonance Imaging (MRI) is sensitive to motion caused by patient movement due to the relatively long data acquisition time. This could cause severe degradation of image quality and therefore affect the overall diagnosis. In this paper, we develop an efficient retrospective 2D deep learning method called stacked U-Nets with self-assisted priors to address the problem of rigid motion artifacts in 3D brain MRI. The proposed work exploits the usage of additional knowledge priors from the corrupted images themselves without the need for additional contrast data. The proposed network learns the missed structural details through sharing auxiliary information from the contiguous slices of the same distorted subject. We further design a refinement stacked U-Nets that facilitates preserving the spatial image details and improves the pixel-to-pixel dependency. To perform network training, simulation of MRI motion artifacts is inevitable. The proposed network is optimized by minimizing the loss of structural similarity (SSIM) using the synthesized motion-corrupted images from 83 real motion-free subjects. We present an intensive analysis using various types of image priors: the proposed self-assisted priors and priors from other image contrast of the same subject. The experimental analysis proves the effectiveness and feasibility of our self-assisted priors since it does not require any further data scans. The overall image quality of the motion-corrected images via the proposed motion correction network significantly improves SSIM from 71.66% to 95.03% and declines the mean square error from 99.25 to 29.76. These results indicate the high similarity of the brain's anatomical structure in the corrected images compared to the motion-free data. The motion-corrected results of both the simulated and real motion data showed the potential of the proposed motion correction network to be feasible and applicable in clinical practices.
Copyright © 2022 The Authors. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Deep learning; MRI; Motion artifact correction; Prior-assisted; Stacked U-Nets

Mesh:

Year:  2022        PMID: 35753594     DOI: 10.1016/j.neuroimage.2022.119411

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   7.400


  1 in total

1.  Movement-related artefacts (MR-ART) dataset of matched motion-corrupted and clean structural MRI brain scans.

Authors:  Ádám Nárai; Petra Hermann; Tibor Auer; Péter Kemenczky; János Szalma; István Homolya; Eszter Somogyi; Pál Vakli; Béla Weiss; Zoltán Vidnyánszky
Journal:  Sci Data       Date:  2022-10-17       Impact factor: 8.501

  1 in total

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