CVAPMLFeb 16

Distributional Deep Learning for Super-Resolution of 4D Flow MRI under Domain Shift

arXiv:2602.15167v1
Originality Incremental advance
AI Analysis

This addresses domain shift in medical imaging super-resolution for 4D Flow MRI, which is critical for assessing aneurysm rupture risk, but is incremental as it builds on existing deep learning approaches with a focus on robustness.

The paper tackles the problem of super-resolution for 4D Flow MRI under domain shift, where low-resolution data differ from training downsampled images, and proposes a distributional deep learning framework that significantly outperforms traditional methods in real data applications.

Super-resolution is widely used in medical imaging to enhance low-quality data, reducing scan time and improving abnormality detection. Conventional super-resolution approaches typically rely on paired datasets of downsampled and original high resolution images, training models to reconstruct high resolution images from their artificially degraded counterparts. However, in real-world clinical settings, low resolution data often arise from acquisition mechanisms that differ significantly from simple downsampling. As a result, these inputs may lie outside the domain of the training data, leading to poor model generalization due to domain shift. To address this limitation, we propose a distributional deep learning framework that improves model robustness and domain generalization. We develop this approch for enhancing the resolution of 4D Flow MRI (4DF). This is a novel imaging modality that captures hemodynamic flow velocity and clinically relevant metrics such as vessel wall stress. These metrics are critical for assessing aneurysm rupture risk. Our model is initially trained on high resolution computational fluid dynamics (CFD) simulations and their downsampled counterparts. It is then fine-tuned on a small, harmonized dataset of paired 4D Flow MRI and CFD samples. We derive the theoretical properties of our distributional estimators and demonstrate that our framework significantly outperforms traditional deep learning approaches through real data applications. This highlights the effectiveness of distributional learning in addressing domain shift and improving super-resolution performance in clinically realistic scenarios.

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