georg-wolflein/pathology-foundation-models
List of pathology feature extractors and foundation models
This list compiles advanced feature extraction models for analyzing digital pathology slides. It helps researchers and pathologists quickly find powerful pre-trained models that can process high-resolution whole slide images (WSIs) to identify important visual patterns. The output from these models can then be used in downstream tasks like disease classification or prognosis prediction. This resource is for computational pathologists, medical imaging researchers, and AI developers working with digital pathology.
177 stars.
Use this if you are a researcher or developer in computational pathology looking for state-of-the-art, pre-trained models to extract meaningful features from digital pathology slides for further analysis.
Not ideal if you are looking for a ready-to-use application for direct diagnostic support or if you are not working with digital pathology images.
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Feb 15, 2026
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