UNI (Nature Medicine 2024)
github.com/mahmoodlab/uniGeneral-purpose pathology foundation model pretrained on 100K+ diagnostic whole-slide images across 20 major tissue types, achieving state-of-the-art transfer learning across 30+ clinical tasks and serving as a universal feature extractor for digital pathology (Mahmood Lab, 722+ stars)
Sourced from
- Awesome AI for Science — github.com/mahmoodlab/uni
- GitHub — github.com/mahmoodlab/uni
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