A metric learning approach for endoscopic kidney stone identification
Jorge Gonzalez-Zapata, Francisco Lopez-Tiro, Elias, Villalvazo-Avila, Daniel Flores-Araiza, Jacques Hubert, Andres, Mendez-Vazquez, Gilberto Ochoa-Ruiz, Christian Daul

TL;DR
This paper introduces a Guided Deep Metric Learning approach using a teacher-student architecture to improve kidney stone identification in endoscopy, especially for rare classes with limited data, outperforming existing deep learning methods.
Contribution
The paper proposes a novel Guided Deep Metric Learning architecture inspired by Few-Shot Learning, utilizing a teacher-student scheme for better generalization and handling of new classes in kidney stone identification.
Findings
Improved identification accuracy by 10-12% over existing methods.
Merged multi-view embeddings increased accuracy by up to 30%.
Effective handling of rare classes with few samples.
Abstract
Several Deep Learning (DL) methods have recently been proposed for an automated identification of kidney stones during an ureteroscopy to enable rapid therapeutic decisions. Even if these DL approaches led to promising results, they are mainly appropriate for kidney stone types for which numerous labelled data are available. However, only few labelled images are available for some rare kidney stone types. This contribution exploits Deep Metric Learning (DML) methods i) to handle such classes with few samples, ii) to generalize well to out of distribution samples, and iii) to cope better with new classes which are added to the database. The proposed Guided Deep Metric Learning approach is based on a novel architecture which was designed to learn data representations in an improved way. The solution was inspired by Few-Shot Learning (FSL) and makes use of a teacher-student approach. The…
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Taxonomy
TopicsKidney Stones and Urolithiasis Treatments · Colorectal Cancer Screening and Detection · Pediatric Urology and Nephrology Studies
MethodsKnowledge Distillation
