MRI Image Generation Based on Text Prompts
Journal:
arXiv
Published Date:
May 23, 2025
Abstract
This study explores the use of text-prompted MRI image generation with the
Stable Diffusion (SD) model to address challenges in acquiring real MRI
datasets, such as high costs, limited rare case samples, and privacy concerns.
The SD model, pre-trained on natural images, was fine-tuned using the 3T
fastMRI dataset and the 0.3T M4Raw dataset, with the goal of generating brain
T1, T2, and FLAIR images across different magnetic field strengths. The
performance of the fine-tuned model was evaluated using quantitative
metrics,including Fr\'echet Inception Distance (FID) and Multi-Scale Structural
Similarity (MS-SSIM), showing improvements in image quality and semantic
consistency with the text prompts. To further evaluate the model's potential, a
simple classification task was carried out using a small 0.35T MRI dataset,
demonstrating that the synthetic images generated by the fine-tuned SD model
can effectively augment training datasets and improve the performance of MRI
constrast classification tasks. Overall, our findings suggest that
text-prompted MRI image generation is feasible and can serve as a useful tool
for medical AI applications.