PLIP (Nature Medicine 2023)

github.com/pathologyfoundation/plip
Stale381updated 2 years ago
Python

First vision-and-language foundation model for pathology AI, fine-tuned from CLIP on 249K image-caption pairs, enabling open-ended visual-semantic search and zero-shot diagnosis across histopathology (Pathology Foundation, 376+ stars)

Sourced from

  • Awesome AI for Sciencegithub.com/pathologyfoundation/plip
  • GitHubgithub.com/pathologyfoundation/plip

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