CVAILGApr 5, 2025

A Survey of Pathology Foundation Model: Progress and Future Directions

arXiv:2504.04045v217 citationsh-index: 5Has CodeIJCAI
AI Analysis

This work addresses the need for structured analysis in computational pathology for researchers and practitioners, but it is incremental as it organizes existing knowledge rather than introducing new methods.

This survey tackles the lack of a systematic analysis framework for Pathology Foundation Models (PFMs) by presenting a hierarchical taxonomy for organizing PFMs and categorizing evaluation tasks, providing comprehensive benchmarking criteria to guide future development.

Computational pathology, which involves analyzing whole slide images for automated cancer diagnosis, relies on multiple instance learning, where performance depends heavily on the feature extractor and aggregator. Recent Pathology Foundation Models (PFMs), pretrained on large-scale histopathology data, have significantly enhanced both the extractor and aggregator, but they lack a systematic analysis framework. In this survey, we present a hierarchical taxonomy organizing PFMs through a top-down philosophy applicable to foundation model analysis in any domain: model scope, model pretraining, and model design. Additionally, we systematically categorize PFM evaluation tasks into slide-level, patch-level, multimodal, and biological tasks, providing comprehensive benchmarking criteria. Our analysis identifies critical challenges in both PFM development (pathology-specific methodology, end-to-end pretraining, data-model scalability) and utilization (effective adaptation, model maintenance), paving the way for future directions in this promising field. Resources referenced in this survey are available at https://github.com/BearCleverProud/AwesomeWSI.

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