Litcius/Paper detail

Identifying the Edges of the Optic Cup and the Optic Disc in Glaucoma Patients by Segmentation

Srikanth Tadisetty, Ranjith Chodavarapu, Ruoming Jin, Robert J. Clements, Minzhong Yu

2023Sensors31 citationsDOIOpen Access PDF

Abstract

With recent advancements in artificial intelligence, fundus diseases can be classified automatically for early diagnosis, and this is an interest of many researchers. The study aims to detect the edges of the optic cup and the optic disc of fundus images taken from glaucoma patients, which has further applications in the analysis of the cup-to-disc ratio (CDR). We apply a modified U-Net model architecture on various fundus datasets and use segmentation metrics to evaluate the model. We apply edge detection and dilation to post-process the segmentation and better visualize the optic cup and optic disc. Our model results are based on ORIGA, RIM-ONE v3, REFUGE, and Drishti-GS datasets. Our results show that our methodology obtains promising segmentation efficiency for CDR analysis.

Topics & Concepts

Optic discOptic cup (embryology)GlaucomaSegmentationFundus (uterus)Artificial intelligenceComputer scienceDilation (metric space)Edge detectionOptic diskEnhanced Data Rates for GSM EvolutionImage segmentationComputer visionPattern recognition (psychology)Image processingOphthalmologyImage (mathematics)MedicineMathematicsBiologyPhenotypeEye developmentCombinatoricsGeneBiochemistryRetinal Imaging and AnalysisGlaucoma and retinal disordersDigital Imaging for Blood Diseases