Accelerated Multi-Contrast MRI Reconstruction via Frequency and Spatial Mutual Learning
Qi Chen, Xiaohan Xing, Zhen Chen, Zhiwei Xiong

TL;DR
This paper introduces FSMNet, a novel network that efficiently captures global and local dependencies across multiple MRI modalities using frequency and spatial features, significantly improving reconstruction quality.
Contribution
The paper proposes FSMNet, a new multi-contrast MRI reconstruction method that leverages frequency and spatial mutual learning to enhance global dependency modeling and reconstruction accuracy.
Findings
Achieves state-of-the-art performance on BraTS and fastMRI datasets.
Effectively captures global dependencies with frequency domain features.
Outperforms existing methods across various acceleration factors.
Abstract
To accelerate Magnetic Resonance (MR) imaging procedures, Multi-Contrast MR Reconstruction (MCMR) has become a prevalent trend that utilizes an easily obtainable modality as an auxiliary to support high-quality reconstruction of the target modality with under-sampled k-space measurements. The exploration of global dependency and complementary information across different modalities is essential for MCMR. However, existing methods either struggle to capture global dependency due to the limited receptive field or suffer from quadratic computational complexity. To tackle this dilemma, we propose a novel Frequency and Spatial Mutual Learning Network (FSMNet), which efficiently explores global dependencies across different modalities. Specifically, the features for each modality are extracted by the Frequency-Spatial Feature Extraction (FSFE) module, featuring a frequency branch and a…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Sparse and Compressive Sensing Techniques
