Authors
Yamin Arefeen, Sidharth Kumar, Steven Warach, Hamidreza Saber, Jonathan Isaac Tamir
Published in
Magnetic resonance in medicine. Jul 09, 2026. Epub Jul 09, 2026.
Abstract
To develop a data-efficient strategy for accelerated MRI reconstruction with Diffusion Probabilistic Generative Models (DPMs) that enables faster scan times in clinical stroke MRI when only limited fully-sampled data are available.
Our simple training strategy first pre-trains a DPM on a large, diverse collection of publicly available fastMRI brain data and then fine-tunes on a small target dataset using carefully selected learning rates and fine-tuning durations. The approach is evaluated on controlled fastMRI experiments and on clinical stroke MRI data with a blinded clinical reader study.
DPMs pre-trained on 4000 non-FLAIR subjects and fine-tuned on FLAIR data from only 20 target subjects achieve reconstruction performance comparable to models trained with substantially more target-domain FLAIR data across multiple acceleration factors. Moderate fine-tuning with a reduced learning rate yields improved performance, while insufficient or excessive fine-tuning degrades reconstruction quality. In a blinded reader study of 80 subjects at a single clinical site, images reconstructed from accelerated data using the proposed approach are rated comparably to standard-of-care on the image quality and structural delineation metrics defined in this work.
Large-scale pre-training combined with targeted fine-tuning can enable DPM-based MRI reconstruction for our data-constrained, accelerated clinical stroke MRI application. In the single-site settings evaluated here, the proposed approach reduces the need for large application-specific datasets while maintaining clinically acceptable image quality, providing preliminary evidence for pre-trained and fine-tuned diffusion models as a strategy for accelerated MRI in targeted applications.
PMID:
42424126
Bibliographic data and abstract were imported from PubMed on 10 Jul 2026.
Read full publication at:
Please sign in
to see all details.
Advertisement
Stats
- Recommendations n/a n/a positive of 0 vote(s)
- Views 0
- Comments 0