Blood Vessel Segmentation Using U-Net for Glaucoma Diagnosis with Limited Data.

Schiesser L; Storp JJ; Yildirim K; Varghese J; Eter N

Research article (journal) | Peer reviewed

Abstract

Glaucoma is one of the leading causes of blindness worldwide. Therefore, early detection and diagnosis are key to preserve full vision in patients. As part of the SALUS study, we create a blood vessel segmentation model based on U-Net. We trained U-Net on three different loss functions and used hyperparameter tuning to find their optimal hyperparameters for each loss function. The best models for each of the loss functions achieved an accuracy of over 93%, Dice scores around 83% and Intersection over Union scores over 70%. They each identify large blood vessels reliably and even recognize smaller blood vessels in the retinal fundus images and thus pave the way for improved glaucoma management.

Details about the publication

JournalStudies in Health Technology and Informatics (Stud Health Technol Inform)
Volume302
Page range581-585
StatusPublished
Release year2023 (18/05/2023)
Language in which the publication is writtenEnglish
DOI10.3233/SHTI230209
KeywordsHumans; Blindness; Fundus Oculi; Glaucoma

Authors from the University of Münster

Eter, Nicole
Clinic for Ophthalmology
Storp, Jens Julian
Clinic for Ophthalmology
Varghese, Julian
Institute of Medical Informatics
Yildirim, Mustafa Kemal
Institute of Medical Informatics