4.7 Article

2D probabilistic undersampling pattern optimization for MR image reconstruction

Journal

MEDICAL IMAGE ANALYSIS
Volume 77, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.media.2021.102346

Keywords

Magnetic resonance imaging; Undersampling; Probability distribution; Deep learning

Funding

  1. National Natural Science Foundation of China [81873894, 82172050]
  2. Natural Science Foundation of Zhejiang Province, China [LR20H180001]
  3. MOE Frontier Science Center for Brain Science & Brain-Machine Integration, Zhejiang University

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This study proposes a joint optimization model to improve the image quality of 3D MRI by simultaneously optimizing the undersampling pattern and the reconstruction model. The model utilizes a probabilistic undersampling layer and an inverse Fourier transform layer to connect the Fourier domain and the image domain. The results demonstrate that the proposed method outperforms existing undersampling strategies in terms of image quality.
With 3D magnetic resonance imaging (MRI), a tradeoff exists between higher image quality and shorter scan time. One way to solve this problem is to reconstruct high-quality MRI images from undersampled k-space. There have been many recent studies exploring effective k-space undersampling patterns and designing MRI reconstruction methods from undersampled k-space, which are two necessary steps. Most studies separately considered these two steps, although in theory, their performance is dependent on each other. In this study, we propose a joint optimization model, trained end-to-end, to simultaneously optimize the undersampling pattern in the Fourier domain and the reconstruction model in the image domain. A 2D probabilistic undersampling layer was designed to optimize the undersampling pattern and probability distribution in a differentiable manner. A 2D inverse Fourier transform layer was implemented to connect the Fourier domain and the image domain during the forward and back propagation. Finally, we discovered an optimized relationship between the probability distribution of the undersampling pattern and its corresponding sampling rate. Further testing was performed using 3D T1-weighted MR images of the brain from the MICCAI 2013 Grand Challenge on Multi-Atlas Labeling dataset and locally acquired brain 3D T1-weighted MR images of healthy volunteers and contrast-enhanced 3D T1 weighted MR images of high-grade glioma patients. The results showed that the recovered MR images using our 2D probabilistic undersampling pattern (with or without the reconstruction network) significantly outperformed those using the existing start-of-the-art undersampling strategies for both qualitative and quantitative comparison, suggesting the advantages and some extent of the generalization of our proposed method.(c) 2022 Elsevier B.V. All rights reserved.

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