A Comprehensive Evaluation of Histopathology Foundation Models for Ovarian Cancer Subtype Classification
Jack Breen, Katie Allen, Kieran Zucker, Lucy Godson, Nicolas M. Orsi,, Nishant Ravikumar

TL;DR
This study rigorously evaluates various histopathology foundation models for ovarian cancer subtype classification, demonstrating that these models significantly outperform traditional methods and could enhance clinical diagnostic accuracy.
Contribution
It provides the most comprehensive single-task validation of histopathology foundation models for ovarian cancer subtyping, comparing multiple models and hyperparameter tuning effects.
Findings
Foundation models outperform ImageNet-pretrained ResNets in classification accuracy.
Hyperparameter tuning improves model performance significantly.
Models show potential for clinical utility in ovarian cancer diagnosis.
Abstract
Large pretrained transformers are increasingly being developed as generalised foundation models which can underpin powerful task-specific artificial intelligence models. Histopathology foundation models show great promise across many tasks, but analyses have typically been limited by arbitrary hyperparameters that were not tuned to the specific task. We report the most rigorous single-task validation of histopathology foundation models to date, specifically in ovarian cancer morphological subtyping. Attention-based multiple instance learning classifiers were compared using three ImageNet-pretrained feature extractors and fourteen histopathology foundation models. The training set consisted of 1864 whole slide images from 434 ovarian carcinoma cases at Leeds Teaching Hospitals NHS Trust. Five-class classification performance was evaluated through five-fold cross-validation, and these…
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Taxonomy
TopicsAI in cancer detection
MethodsAttention Is All You Need · Sparse Evolutionary Training · Average Pooling · Global Average Pooling · Convolution · Linear Layer · Softmax · Kaiming Initialization · Max Pooling · Multi-Head Attention
