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Self-Supervised Polyp Re-Identification in Colonoscopy

About

Computer-aided polyp detection (CADe) is becoming a standard, integral part of any modern colonoscopy system. A typical colonoscopy CADe detects a polyp in a single frame and does not track it through the video sequence. Yet, many downstream tasks including polyp characterization (CADx), quality metrics, automatic reporting, require aggregating polyp data from multiple frames. In this work we propose a robust long term polyp tracking method based on re-identification by visual appearance. Our solution uses an attention-based self-supervised ML model, specifically designed to leverage the temporal nature of video input. We quantitatively evaluate method's performance and demonstrate its value for the CADx task.

Yotam Intrator, Natalie Aizenberg, Amir Livne, Ehud Rivlin, Roman Goldenberg• 2023

Related benchmarks

TaskDatasetResultRank
Re-identificationSUN
AUROC89.36
18
RetrievalREAL-Colon
mAP51.04
18
Size EstimationPolypSize
F1 Score65.35
18
Histology classificationPolypsSet
Accuracy66.22
18
Pathological malignancy classificationPolyp-Path (5-fold cross-val)
Accuracy67.586
12
Polyp Re-identificationPolyp-Twin (test)
uAP67.2
10
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