A generalizable pathology foundation model using a unified knowledge distillation pretraining framework
- PMID: 40897898
- DOI: 10.1038/s41551-025-01488-4
A generalizable pathology foundation model using a unified knowledge distillation pretraining framework
Abstract
The generalization ability of foundation models in the field of computational pathology (CPath) is crucial for their clinical success. However, current foundation models have only been evaluated on a limited type and number of tasks, leaving their generalization ability unclear. We establish a comprehensive benchmark to evaluate the performance of off-the-shelf foundation models across six distinct clinical task types, encompassing a total of 72 specific tasks. Our findings reveal that existing foundation models excel at certain task types but struggle to effectively handle the full breadth of clinical tasks. To improve the generalization of pathology foundation models, we propose a unified knowledge distillation framework consisting of both expert and self knowledge distillation, where the former allows the model to learn from the knowledge of multiple expert models, while the latter leverages self distillation to enable image representation learning via local-global alignment. On the basis of this framework, we develop a Generalizable Pathology Foundation Model (GPFM). Evaluated on the established benchmark, GPFM achieves an average rank of 1.6, ranking first in 42 tasks, positioning it as a promising method for feature representation in CPath.
© 2025. The Author(s), under exclusive licence to Springer Nature Limited.
Conflict of interest statement
Ethics declaration: This project has been reviewed and approved by the Human and Artefacts Research Ethics Committee (HAREC) of Hong Kong University of Science and Technology (protocol no. HREP-2024-0212). Competing interests: The authors declare no competing interests.
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