Literature DB >> 32593933

Subsampled brain MRI reconstruction by generative adversarial neural networks.

Roy Shaul1, Itamar David1, Ohad Shitrit1, Tammy Riklin Raviv2.   

Abstract

A main challenge in magnetic resonance imaging (MRI) is speeding up scan time. Beyond improving patient experience and reducing operational costs, faster scans are essential for time-sensitive imaging, such as fetal, cardiac, or functional MRI, where temporal resolution is important and target movement is unavoidable, yet must be reduced. Current MRI acquisition methods speed up scan time at the expense of lower spatial resolution and costlier hardware. We introduce a practical, software-only framework, based on deep learning, for accelerating MRI acquisition, while maintaining anatomically meaningful imaging. This is accomplished by MRI subsampling followed by estimating the missing k-space samples via generative adversarial neural networks. A generator-discriminator interplay enables the introduction of an adversarial cost in addition to fidelity and image-quality losses used for optimizing the reconstruction. Promising reconstruction results are obtained from feasible sampling patterns of up to a fivefold acceleration of diverse brain MRIs, from a large publicly available dataset of healthy adult scans as well as multimodal acquisitions of multiple sclerosis patients and dynamic contrast-enhanced MRI (DCE-MRI) sequences of stroke and tumor patients. Clinical usability of the reconstructed MRI scans is assessed by performing either lesion or healthy tissue segmentation and comparing the results to those obtained by using the original, fully sampled images. Reconstruction quality and usability of the DCE-MRI sequences is demonstrated by calculating the pharmacokinetic (PK) parameters. The proposed MRI reconstruction approach is shown to outperform state-of-the-art methods for all datasets tested in terms of the peak signal-to-noise ratio (PSNR), the structural similarity index (SSIM), as well as either the mean squared error (MSE) with respect to the PK parameters, calculated for the fully sampled DCE-MRI sequences, or the segmentation compatibility, measured in terms of Dice scores and Hausdorff distance. The code is available on GitHub.
Copyright © 2020 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Deep learning; GANs; K-space subsampling; MRI reconstruction

Mesh:

Year:  2020        PMID: 32593933     DOI: 10.1016/j.media.2020.101747

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  5 in total

Review 1.  The role of generative adversarial networks in brain MRI: a scoping review.

Authors:  Hazrat Ali; Md Rafiul Biswas; Farida Mohsen; Uzair Shah; Asma Alamgir; Osama Mousa; Zubair Shah
Journal:  Insights Imaging       Date:  2022-06-04

2.  Enhancing magnetic resonance imaging-driven Alzheimer's disease classification performance using generative adversarial learning.

Authors:  Xiao Zhou; Shangran Qiu; Prajakta S Joshi; Chonghua Xue; Ronald J Killiany; Asim Z Mian; Sang P Chin; Rhoda Au; Vijaya B Kolachalama
Journal:  Alzheimers Res Ther       Date:  2021-03-14       Impact factor: 8.823

Review 3.  Generative Adversarial Networks in Brain Imaging: A Narrative Review.

Authors:  Maria Elena Laino; Pierandrea Cancian; Letterio Salvatore Politi; Matteo Giovanni Della Porta; Luca Saba; Victor Savevski
Journal:  J Imaging       Date:  2022-03-23

4.  A review and experimental evaluation of deep learning methods for MRI reconstruction.

Authors:  Arghya Pal; Yogesh Rathi
Journal:  J Mach Learn Biomed Imaging       Date:  2022-03-11

5.  Edge-enhanced dual discriminator generative adversarial network for fast MRI with parallel imaging using multi-view information.

Authors:  Jiahao Huang; Weiping Ding; Jun Lv; Jingwen Yang; Hao Dong; Javier Del Ser; Jun Xia; Tiaojuan Ren; Stephen T Wong; Guang Yang
Journal:  Appl Intell (Dordr)       Date:  2022-01-28       Impact factor: 5.019

  5 in total

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