Investigation of the Role of Convolutional Neural Network Architectures in the Diagnosis of Glaucoma Using Color Fundus Photography
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Date
2022
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Turkish Ophthalmological Soc
Open Access Color
GOLD
Green Open Access
Yes
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Publicly Funded
No
Abstract
Objectives: To evaluate the performance of convolutional neural network (CNN) architectures to distinguish eyes with glaucoma from normal eyes. Materials and Methods: A total of 9,950 fundus photographs of 5,388 patients from the database of Eskisehir Osmangazi University Faculty of Medicine Ophthalmology Clinic were labelled as glaucoma, glaucoma suspect, or normal by three different experienced ophthalmologists. The categorized fundus photographs were evaluated using a state-of-the-art two-dimensional CNN and compared with deep residual networks (ResNet) and very deep neural networks (VGG). The accuracy, sensitivity, and specificity of glaucoma detection with the different algorithms were evaluated using a dataset of 238 normal and 320 glaucomatous fundus photographs. For the detection of suspected glaucoma, ResNet-101 architectures were tested with a data set of 170 normal, 170 glaucoma, and 167 glaucoma-suspect fundus photographs. Results: Accuracy, sensitivity, and specificity in detecting glaucoma were 96.2%, 99.5%, and 93.7% with ResNet-50; 97.4 degrees A, 97.8%, and 97.1% with ResNet-101; 98.9%, 100%, and 98.1% with VGG-19, and 99.4%, 100%, and 99% with the 2D CNN, respectively. Accuracy, sensitivity, and specificity values in distinguishing glaucoma suspects from normal eyes were 62%, 68%, and 56% and those for differentiating glaucoma from suspected glaucoma were 92%, 81%, and 97%, respectively. While 55 photographs could be evaluated in 2 seconds with CNN, a clinician spent an average of 24.2 seconds to evaluate a single photograph. Conclusion: An appropriately designed and trained CNN was able to distinguish glaucoma with high accuracy even with a small number of fundus photographs. Conclusion: An appropriately designed and trained CNN was able to distinguish glaucoma with high accuracy even with a small number of fundus photographs.
Description
Keywords
Glaucoma, convolutional neural network, artificial intelligence, telemedicine, Open-Angle Glaucoma, Machine Learning Classifiers, Vision Loss, Prevalence, Deep, Classification, Population, Worldwide, Chinese, Images, Artificial intelligence, Fundus Oculi, R, convolutional neural network, Convolutional neural network, Glaucoma, RE1-994, artificial intelligence, Telemedicine, Ophthalmology, glaucoma, Deep Learning, Photography, Medicine, Humans, Original Article, telemedicine, Neural Networks, Computer
Fields of Science
03 medical and health sciences, 0302 clinical medicine
Citation
WoS Q
Q4
Scopus Q
N/A

OpenCitations Citation Count
8
Source
Turk Oftalmolojı Dergısı-Turkısh Journal of Ophthalmology
Volume
52
Issue
3
Start Page
193
End Page
200
Collections
WoS İndeksli Yayınlar Koleksiyonu / WoS Indexed Publications Collection
PubMed İndeksli Yayınlar Koleksiyonu / PubMed Indexed Publications Collection
Scopus İndeksli Yayınlar Koleksiyonu / Scopus Indexed Publications Collection
TR Dizin İndeksli Yayınlar Koleksiyonu / TR Dizin Indexed Publications Collection
PubMed İndeksli Yayınlar Koleksiyonu / PubMed Indexed Publications Collection
Scopus İndeksli Yayınlar Koleksiyonu / Scopus Indexed Publications Collection
TR Dizin İndeksli Yayınlar Koleksiyonu / TR Dizin Indexed Publications Collection
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Citations
CrossRef : 7
Scopus : 10
PubMed : 4
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Mendeley Readers : 34
SCOPUS™ Citations
10
checked on Mar 23, 2026
Web of Science™ Citations
7
checked on Mar 23, 2026
Page Views
4
checked on Mar 23, 2026
Downloads
9
checked on Mar 23, 2026
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