Context-aware Skin Cancer Epithelial Cell Classification with Scalable Graph Transformers
Lucas Sanc\'er\'e, No\'emie Moreau, Katarzyna Bozek

TL;DR
This paper introduces a scalable graph transformer approach for classifying epithelial cells in whole-slide images of skin cancer, outperforming traditional image-based methods by leveraging tissue-level context.
Contribution
It presents a novel application of scalable Graph Transformers to full-WSI cell graphs, improving classification accuracy over existing image-based models in skin cancer analysis.
Findings
Graph Transformer models achieved higher accuracy than image-based methods.
Combining morphological, texture, and cellular context features improved classification.
The approach scales to multiple WSIs, maintaining high performance.
Abstract
Whole-slide images (WSIs) from cancer patients contain rich information that can be used for medical diagnosis or to follow treatment progress. To automate their analysis, numerous deep learning methods based on convolutional neural networks and Vision Transformers have been developed and have achieved strong performance in segmentation and classification tasks. However, due to the large size and complex cellular organization of WSIs, these models rely on patch-based representations, losing vital tissue-level context. We propose using scalable Graph Transformers on a full-WSI cell graph for classification. We evaluate this methodology on a challenging task: the classification of healthy versus tumor epithelial cells in cutaneous squamous cell carcinoma (cSCC), where both cell types exhibit very similar morphologies and are therefore difficult to differentiate for image-based approaches.…
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Taxonomy
TopicsCutaneous Melanoma Detection and Management · AI in cancer detection · Cell Image Analysis Techniques
