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arxiv:2601.13166

From 100,000+ images to winning the first brain MRI foundation model challenges: Sharing lessons and models

Published on Jan 19
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Abstract

Foundation models for medical image analysis using U-Net architecture with anatomical priors and neuroimaging knowledge achieved superior performance in 3D brain MRI challenges while being significantly more efficient than transformer-based methods.

AI-generated summary

Developing Foundation Models for medical image analysis is essential to overcome the unique challenges of radiological tasks. The first challenges of this kind for 3D brain MRI, SSL3D and FOMO25, were held at MICCAI 2025. Our solution ranked first in tracks of both contests. It relies on a U-Net CNN architecture combined with strategies leveraging anatomical priors and neuroimaging domain knowledge. Notably, our models trained 1-2 orders of magnitude faster and were 10 times smaller than competing transformer-based approaches. Models are available here: https://github.com/jbanusco/BrainFM4Challenges.

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