Benchmarking histopathology foundation models in a multi-center dataset for skin cancer subtyping
- URL: http://arxiv.org/abs/2506.18668v1
- Date: Mon, 23 Jun 2025 14:12:16 GMT
- Title: Benchmarking histopathology foundation models in a multi-center dataset for skin cancer subtyping
- Authors: Pablo Meseguer, RocĂo del Amor, Valery Naranjo,
- Abstract summary: Pretraining on large-scale, in-domain datasets grants histopathology foundation models (FM) the ability to learn task-agnostic data representations.<n>In computational pathology, automated whole slide image analysis requires multiple instance learning (MIL) frameworks due to the gigapixel scale of the slides.<n>Our work presents a novel benchmark for evaluating histopathology FMs as patch-level feature extractors within a MIL classification framework.
- Score: 1.927195358774599
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Pretraining on large-scale, in-domain datasets grants histopathology foundation models (FM) the ability to learn task-agnostic data representations, enhancing transfer learning on downstream tasks. In computational pathology, automated whole slide image analysis requires multiple instance learning (MIL) frameworks due to the gigapixel scale of the slides. The diversity among histopathology FMs has highlighted the need to design real-world challenges for evaluating their effectiveness. To bridge this gap, our work presents a novel benchmark for evaluating histopathology FMs as patch-level feature extractors within a MIL classification framework. For that purpose, we leverage the AI4SkIN dataset, a multi-center cohort encompassing slides with challenging cutaneous spindle cell neoplasm subtypes. We also define the Foundation Model - Silhouette Index (FM-SI), a novel metric to measure model consistency against distribution shifts. Our experimentation shows that extracting less biased features enhances classification performance, especially in similarity-based MIL classifiers.
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