Multi-Resolution Histopathology Patch Graphs for Ovarian Cancer Subtyping
Jack Breen, Katie Allen, Kieran Zucker, Nicolas M. Orsi, Nishant, Ravikumar

TL;DR
This study thoroughly validates multi-resolution graph models for ovarian cancer subtyping, demonstrating their potential for clinical use with high accuracy across multiple datasets.
Contribution
It introduces a comprehensive validation of multi-resolution graph models, highlighting the importance of foundation models over traditional CNNs for feature extraction.
Findings
Best model achieved 99% accuracy on external validation
Multi-resolution approach outperformed single-resolution models
Foundation models significantly improved performance
Abstract
Computer vision models are increasingly capable of classifying ovarian epithelial cancer subtypes, but they differ from pathologists by processing small tissue patches at a single resolution. Multi-resolution graph models leverage the spatial relationships of patches at multiple magnifications, learning the context for each patch. In this study, we conduct the most thorough validation of a graph model for ovarian cancer subtyping to date. Seven models were tuned and trained using five-fold cross-validation on a set of 1864 whole slide images (WSIs) from 434 patients treated at Leeds Teaching Hospitals NHS Trust. The cross-validation models were ensembled and evaluated using a balanced hold-out test set of 100 WSIs from 30 patients, and an external validation set of 80 WSIs from 80 patients in the Transcanadian Study. The best-performing model, a graph model using 10x+20x magnification…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Radiomics and Machine Learning in Medical Imaging
MethodsSparse Evolutionary Training
