Two-Layer Tight Frame Sparsifying Model for Compressed Sensing Magnetic Resonance Imaging.
Shanshan WangJianbo LiuXi PengPei DongQiegen LiuDong LiangPublished in: BioMed research international (2016)
Compressed sensing magnetic resonance imaging (CSMRI) employs image sparsity to reconstruct MR images from incoherently undersampled K-space data. Existing CSMRI approaches have exploited analysis transform, synthesis dictionary, and their variants to trigger image sparsity. Nevertheless, the accuracy, efficiency, or acceleration rate of existing CSMRI methods can still be improved due to either lack of adaptability, high complexity of the training, or insufficient sparsity promotion. To properly balance the three factors, this paper proposes a two-layer tight frame sparsifying (TRIMS) model for CSMRI by sparsifying the image with a product of a fixed tight frame and an adaptively learned tight frame. The two-layer sparsifying and adaptive learning nature of TRIMS has enabled accurate MR reconstruction from highly undersampled data with efficiency. To solve the reconstruction problem, a three-level Bregman numerical algorithm is developed. The proposed approach has been compared to three state-of-the-art methods over scanned physical phantom and in vivo MR datasets and encouraging performances have been achieved.
Keyphrases
- deep learning
- magnetic resonance imaging
- contrast enhanced
- blood brain barrier
- electronic health record
- magnetic resonance
- artificial intelligence
- convolutional neural network
- big data
- computed tomography
- machine learning
- physical activity
- diffusion weighted imaging
- dna methylation
- data analysis
- dual energy
- mass spectrometry
- optical coherence tomography
- rna seq