Litcius/Paper detail

Robust Fovea Detection in Retinal OCT Imaging Using Deep Learning

Simon Schurer-Waldheim, Philipp Seebock, Hrvoje Bogunovic, Bianca S. Gerendas, Ursula Schmidt-Erfurth

2022IEEE Journal of Biomedical and Health Informatics13 citationsDOIOpen Access PDF

Abstract

The fovea centralis is an essential landmark in the retina where the photoreceptor layer is entirely composed of cones responsible for sharp, central vision. The localization of this anatomical landmark in optical coherence tomography (OCT) volumes is important for assessing visual function correlates and treatment guidance in macular disease. In this study, the "PRE U-net" is introduced as a novel approach for a fully automated fovea centralis detection, addressing the localization as a pixel-wise regression task. 2D B-scans are sampled from each image volume and are concatenated with spatial location information to train the deep network. A total of 5586 OCT volumes from 1,541 eyes were used to train, validate and test the deep learning method. The test data is comprised of healthy subjects and patients affected by neovascular age-related macular degeneration (nAMD), diabetic macula edema (DME) and macular edema from retinal vein occlusion (RVO), covering the three major retinal diseases responsible for blindness. Our experiments demonstrate that the PRE U-net significantly outperforms state-of-the-art methods and improves the robustness of automated localization, which is of value for clinical practice.

Topics & Concepts

Optical coherence tomographyArtificial intelligenceMacular degenerationComputer scienceDeep learningRetinalLandmarkFovea centralisRetinaRobustness (evolution)OphthalmologyComputer visionMacular edemaBranch retinal vein occlusionOptic discOcclusionDiabetic retinopathyMedicineRetinal VeinOptic diskOptometryMacula LuteaMedical imagingRetinopathyPattern recognition (psychology)Retinal Imaging and AnalysisRetinal Diseases and TreatmentsOptical Coherence Tomography Applications