SANTIS: Sampling-Augmented Neural neTwork with Incoherent Structure for MR image reconstruction Journal Article


Authors: Liu, F.; Samsonov, A.; Chen, L.; Kijowski, R.; Feng, L.
Article Title: SANTIS: Sampling-Augmented Neural neTwork with Incoherent Structure for MR image reconstruction
Abstract: Purpose: To develop and evaluate a novel deep learning–based reconstruction framework called SANTIS (Sampling-Augmented Neural neTwork with Incoherent Structure) for efficient MR image reconstruction with improved robustness against sampling pattern discrepancy. Methods: With a combination of data cycle–consistent adversarial network, end-to-end convolutional neural network mapping, and data fidelity enforcement for reconstructing undersampled MR data, SANTIS additionally utilizes a sampling-augmented training strategy by extensively varying undersampling patterns during training, so that the network is capable of learning various aliasing structures and thereby removing undersampling artifacts more effectively and robustly. The performance of SANTIS was demonstrated for accelerated knee imaging and liver imaging using a Cartesian trajectory and a golden-angle radial trajectory, respectively. Quantitative metrics were used to assess its performance against different references. The feasibility of SANTIS in reconstructing dynamic contrast-enhanced images was also demonstrated using transfer learning. Results: Compared to conventional reconstruction that exploits image sparsity, SANTIS achieved consistently improved reconstruction performance (lower errors and greater image sharpness). Compared to standard learning-based methods without sampling augmentation (e.g., training with a fixed undersampling pattern), SANTIS provides comparable reconstruction performance, but significantly improved robustness, against sampling pattern discrepancy. SANTIS also achieved encouraging results for reconstructing liver images acquired at different contrast phases. Conclusion: By extensively varying undersampling patterns, the sampling-augmented training strategy in SANTIS can remove undersampling artifacts more robustly. The novel concept behind SANTIS can particularly be useful for improving the robustness of deep learning–based image reconstruction against discrepancy between training and inference, an important, but currently less explored, topic. © 2019 International Society for Magnetic Resonance in Medicine
Keywords: controlled study; liver; feasibility study; quantitative analysis; contrast enhancement; knee; artifact; image reconstruction; error; sampling; article; deep learning; data augmentation; data cycle-consistent adversarial network; reconstruction robustness; sampling discrepancy; transfer of learning
Journal Title: Magnetic Resonance in Medicine
Volume: 82
Issue: 5
ISSN: 0740-3194
Publisher: John Wiley & Sons  
Date Published: 2019-11-01
Start Page: 1890
End Page: 1904
Language: English
DOI: 10.1002/mrm.27827
PUBMED: 31166049
PROVIDER: scopus
PMCID: PMC6660404
DOI/URL:
Notes: Article -- Export Date: 30 August 2019 -- Source: Scopus
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  1. Li Feng
    10 Feng