Literature DB >> 32407764

An unsupervised deep learning technique for susceptibility artifact correction in reversed phase-encoding EPI images.

Soan T M Duong1, Son L Phung2, Abdesselam Bouzerdoum3, Mark M Schira4.   

Abstract

Echo planar imaging (EPI) is a fast and non-invasive magnetic resonance imaging technique that supports data acquisition at high spatial and temporal resolutions. However, susceptibility artifacts, which cause the misalignment to the underlying structural image, are unavoidable distortions in EPI. Traditional susceptibility artifact correction (SAC) methods estimate the displacement field by optimizing an objective function that involves one or more pairs of reversed phase-encoding (PE) images. The estimated displacement field is then used to unwarp the distorted images and produce the corrected images. Since this conventional approach is time-consuming, we propose an end-to-end deep learning technique, named S-Net, to correct the susceptibility artifacts the reversed-PE image pair. The proposed S-Net consists of two components: (i) a convolutional neural network to map a reversed-PE image pair to the displacement field; and (ii) a spatial transform unit to unwarp the input images and produce the corrected images. The S-Net is trained using a set of reversed-PE image pairs and an unsupervised loss function, without ground-truth data. For a new image pair of reversed-PE images, the displacement field and corrected images are obtained simultaneously by evaluating the trained S-Net directly. Evaluations on three different datasets demonstrate that S-Net can correct the susceptibility artifacts in the reversed-PE images. Compared with two state-of-the-art SAC methods (TOPUP and TISAC), the proposed S-Net runs significantly faster: 20 times faster than TISAC and 369 times faster than TOPUP, while achieving a similar correction accuracy. Consequently, S-Net accelerates the medical image processing pipelines and makes the real-time correction for MRI scanners feasible. Our proposed technique also opens up a new direction in learning-based SAC.
Copyright © 2020 Elsevier Inc. All rights reserved.

Keywords:  Deep learning; Echo planar imaging; Reversed phase-encoding; Susceptibility artifacts; Unsupervised learning

Mesh:

Year:  2020        PMID: 32407764     DOI: 10.1016/j.mri.2020.04.004

Source DB:  PubMed          Journal:  Magn Reson Imaging        ISSN: 0730-725X            Impact factor:   2.546


  4 in total

Review 1.  What's new and what's next in diffusion MRI preprocessing.

Authors:  Chantal M W Tax; Matteo Bastiani; Jelle Veraart; Eleftherios Garyfallidis; M Okan Irfanoglu
Journal:  Neuroimage       Date:  2021-12-26       Impact factor: 7.400

2.  Unsupervised Deep Learning for FOD-Based Susceptibility Distortion Correction in Diffusion MRI.

Authors:  Yuchuan Qiao; Yonggang Shi
Journal:  IEEE Trans Med Imaging       Date:  2022-05-02       Impact factor: 11.037

3.  Correcting Susceptibility Artifacts of MRI Sensors in Brain Scanning: A 3D Anatomy-Guided Deep Learning Approach.

Authors:  Soan T M Duong; Son Lam Phung; Abdesselam Bouzerdoum; Sui Paul Ang; Mark M Schira
Journal:  Sensors (Basel)       Date:  2021-03-26       Impact factor: 3.576

4.  Effect of Phase-Encoding Direction on Gender Differences: A Resting-State Functional Magnetic Resonance Imaging Study.

Authors:  Yun Wang; Xiongying Chen; Rui Liu; Zhifang Zhang; Jingjing Zhou; Yuan Feng; Chao Jiang; Xi-Nian Zuo; Yuan Zhou; Gang Wang
Journal:  Front Neurosci       Date:  2022-01-25       Impact factor: 4.677

  4 in total

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