Phase-map synthesis from magnitude-only MR images using conditional score-based diffusion models with application in training of accelerated MRI reconstruction models
M. Berk Sahin, Dilek Yalcinkaya, Abolfazl Hashemi, Behzad Sharif

TL;DR
This paper introduces a conditional score-based diffusion model to synthesize phase maps from magnitude-only MR images, enabling the creation of large, realistic k-space datasets for training accelerated MRI reconstruction models.
Contribution
It presents a novel generative approach using diffusion models to produce phase information from magnitude images, improving training data diversity for MRI reconstruction.
Findings
SBDM-synthesized data improves MRI reconstruction quality.
Outperforms GAN-based and naive phase synthesis methods.
Enhances diagnostic fidelity by reducing hallucinated features.
Abstract
Accelerated magnetic resonance imaging (MRI) enabled by the training of deep learning (DL)-based image recon. models requires large and diverse raw k-space datasets. In most clinical MRI applications, due to storage and patient privacy concerns, raw k-space data is discarded and magnitude-only images are the only component saved. Consequently, a large portion of the DL-based MRI recon. literature has either relied on small training datasets or has used one of the few available open-source k-space datasets. At the same time, the growing number of anonymized magnitude-only image registries/databases motivates the development of techniques that can use them as training datasets for generalizable DL-based recon. models. Here we propose to address this challenge by employing a generative approach based on conditional score-based diffusion models (SBDMs): given a magnitude-only MR image, it…
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