Unsupervised anomaly detection model learns normative healthy retinal anatomy in OCT B-scans with discrete latent representations, layer-aware supervision and triplet learning, achieving AUROC 0.799 on Kermany and 0.884 cross-dataset on Srinivasan while providing pixel-level localization.
Exploiting epis- temic uncertainty of anatomy segmentation for anomaly de- tection in retinal oct.IEEE transactions on medical imaging, 39(1):87–98, 2019
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Anatomy-Aware Unsupervised Detection and Localization of Retinal Abnormalities in Optical Coherence Tomography
Unsupervised anomaly detection model learns normative healthy retinal anatomy in OCT B-scans with discrete latent representations, layer-aware supervision and triplet learning, achieving AUROC 0.799 on Kermany and 0.884 cross-dataset on Srinivasan while providing pixel-level localization.