Deep Residual Dense U-Net for Resolution Enhancement in Accelerated MRI Acquisition
Pak Lun Kevin Ding, Zhiqiang Li, Yuxiang Zhou, Baoxin Li

TL;DR
This paper introduces a deep residual dense U-Net architecture for high-quality MRI image reconstruction from accelerated, undersampled data, improving resolution and reducing artifacts compared to existing methods.
Contribution
It proposes a novel deep learning model with residual dense blocks and a k-space-aware loss function for enhanced MRI resolution recovery.
Findings
Outperforms state-of-the-art methods in image quality metrics
Provides clearer, artifact-free MRI reconstructions
Demonstrates potential for faster MRI scans with high fidelity
Abstract
Typical Magnetic Resonance Imaging (MRI) scan may take 20 to 60 minutes. Reducing MRI scan time is beneficial for both patient experience and cost considerations. Accelerated MRI scan may be achieved by acquiring less amount of k-space data (down-sampling in the k-space). However, this leads to lower resolution and aliasing artifacts for the reconstructed images. There are many existing approaches for attempting to reconstruct high-quality images from down-sampled k-space data, with varying complexity and performance. In recent years, deep-learning approaches have been proposed for this task, and promising results have been reported. Still, the problem remains challenging especially because of the high fidelity requirement in most medical applications employing reconstructed MRI images. In this work, we propose a deep-learning approach, aiming at reconstructing high-quality images from…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced Image Processing Techniques · Medical Image Segmentation Techniques
MethodsMax Pooling · U-Net · Convolution · Concatenated Skip Connection · Batch Normalization · *Communicated@Fast*How Do I Communicate to Expedia? · Dense Block
