Computer Vision Foundation Models in Endoscopy: Proof of Concept in Oropharyngeal Cancer
Alberto Paderno,
Anita Rau,
Nikita Bedi
et al.
Abstract:ObjectivesTo evaluate the performance of vision transformer‐derived image embeddings for distinguishing between normal and neoplastic tissues in the oropharynx and to investigate the potential of computer vision (CV) foundation models in medical imaging.MethodsComputational study using endoscopic frames with a focus on the application of a self‐supervised vision transformer model (DINOv2) for tissue classification. High‐definition endoscopic images were used to extract image patches that were then normalized a… Show more
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