4.4 Article

Incorporating prior knowledge via volumetric deep residual network to optimize the reconstruction of sparsely sampled MRI

Journal

MAGNETIC RESONANCE IMAGING
Volume 66, Issue -, Pages 93-103

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.mri.2019.03.012

Keywords

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Funding

  1. NIH/NCI [1R01 CA176553]
  2. NIH/NIAMS [1R01 AR068987]
  3. NIH/NINDS [1R01 NS092650]
  4. Varian Medical Systems
  5. Google Inc.

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For sparse sampling that accelerates magnetic resonance (MR) image acquisition, non-linear reconstruction algorithms have been developed, which incorporated patient specific a prior information. More generic a prior information could be acquired via deep learning and utilized for image reconstruction. In this study, we developed a volumetric hierarchical deep residual convolutional neural network, referred to as T-Net, to provide a data-driven end-to-end mapping from sparsely sampled MR images to fully sampled MR images, where cartilage MR images were acquired using an Ultra-short TE sequence and retrospectively undersampled using pseudo-random Cartesian and radial acquisition schemes. The network had a hierarchical architecture that promoted the sparsity of feature maps and increased the receptive field, which were valuable for signal synthesis and artifact suppression. Relatively dense local connections and global shortcuts were established to facilitate residual learning and compensate for details lost in hierarchical processing. Additionally, volumetric processing was adopted to fully exploit spatial continuity in three-dimensional space. Data consistency was further enforced. The network was trained with 336 three-dimensional images (each consisting of 32 slices) and tested by 24 images. The incorporation of a priori information acquired via deep learning facilitated high acceleration factors (as high as 8) while maintaining high image fidelity (quantitatively evaluated using the structural similarity index measurement). The proposed T-Net had an improved performance as compared to several state-of-the-art networks.

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