A combined convolutional and recurrent neural network for enhanced glaucoma detection

Abstract Glaucoma, a leading cause of blindness, is a multifaceted disease with several patho-physiological features manifesting in single fundus images (e.g., optic nerve cupping) as well as fundus videos (e.g., vascular pulsatility index). Current convolutional neural networks (CNNs) developed to...

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Main Authors: Soheila Gheisari, Sahar Shariflou, Jack Phu, Paul J. Kennedy, Ashish Agar, Michael Kalloniatis, S. Mojtaba Golzan
Format: Article
Language:English
Published: Nature Publishing Group 2021-01-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-81554-4
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spelling doaj-7c2228465968407c9872f6dbb79a31c42021-01-24T12:33:07ZengNature Publishing GroupScientific Reports2045-23222021-01-0111111110.1038/s41598-021-81554-4A combined convolutional and recurrent neural network for enhanced glaucoma detectionSoheila Gheisari0Sahar Shariflou1Jack Phu2Paul J. Kennedy3Ashish Agar4Michael Kalloniatis5S. Mojtaba Golzan6Vision Science Group, Graduate School of Health, University of Technology SydneyVision Science Group, Graduate School of Health, University of Technology SydneyCentre for Eye Health, School of Optometry and Vision Science, University of New South WalesCenter for Artificial Intelligence, Faculty of Engineering and Information Technology, University of Technology SydneyDepartment of Ophthalmology, Prince of Wales HospitalCentre for Eye Health, School of Optometry and Vision Science, University of New South WalesVision Science Group, Graduate School of Health, University of Technology SydneyAbstract Glaucoma, a leading cause of blindness, is a multifaceted disease with several patho-physiological features manifesting in single fundus images (e.g., optic nerve cupping) as well as fundus videos (e.g., vascular pulsatility index). Current convolutional neural networks (CNNs) developed to detect glaucoma are all based on spatial features embedded in an image. We developed a combined CNN and recurrent neural network (RNN) that not only extracts the spatial features in a fundus image but also the temporal features embedded in a fundus video (i.e., sequential images). A total of 1810 fundus images and 295 fundus videos were used to train a CNN and a combined CNN and Long Short-Term Memory RNN. The combined CNN/RNN model reached an average F-measure of 96.2% in separating glaucoma from healthy eyes. In contrast, the base CNN model reached an average F-measure of only 79.2%. This proof-of-concept study demonstrates that extracting spatial and temporal features from fundus videos using a combined CNN and RNN, can markedly enhance the accuracy of glaucoma detection.https://doi.org/10.1038/s41598-021-81554-4
collection DOAJ
language English
format Article
sources DOAJ
author Soheila Gheisari
Sahar Shariflou
Jack Phu
Paul J. Kennedy
Ashish Agar
Michael Kalloniatis
S. Mojtaba Golzan
spellingShingle Soheila Gheisari
Sahar Shariflou
Jack Phu
Paul J. Kennedy
Ashish Agar
Michael Kalloniatis
S. Mojtaba Golzan
A combined convolutional and recurrent neural network for enhanced glaucoma detection
Scientific Reports
author_facet Soheila Gheisari
Sahar Shariflou
Jack Phu
Paul J. Kennedy
Ashish Agar
Michael Kalloniatis
S. Mojtaba Golzan
author_sort Soheila Gheisari
title A combined convolutional and recurrent neural network for enhanced glaucoma detection
title_short A combined convolutional and recurrent neural network for enhanced glaucoma detection
title_full A combined convolutional and recurrent neural network for enhanced glaucoma detection
title_fullStr A combined convolutional and recurrent neural network for enhanced glaucoma detection
title_full_unstemmed A combined convolutional and recurrent neural network for enhanced glaucoma detection
title_sort combined convolutional and recurrent neural network for enhanced glaucoma detection
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-01-01
description Abstract Glaucoma, a leading cause of blindness, is a multifaceted disease with several patho-physiological features manifesting in single fundus images (e.g., optic nerve cupping) as well as fundus videos (e.g., vascular pulsatility index). Current convolutional neural networks (CNNs) developed to detect glaucoma are all based on spatial features embedded in an image. We developed a combined CNN and recurrent neural network (RNN) that not only extracts the spatial features in a fundus image but also the temporal features embedded in a fundus video (i.e., sequential images). A total of 1810 fundus images and 295 fundus videos were used to train a CNN and a combined CNN and Long Short-Term Memory RNN. The combined CNN/RNN model reached an average F-measure of 96.2% in separating glaucoma from healthy eyes. In contrast, the base CNN model reached an average F-measure of only 79.2%. This proof-of-concept study demonstrates that extracting spatial and temporal features from fundus videos using a combined CNN and RNN, can markedly enhance the accuracy of glaucoma detection.
url https://doi.org/10.1038/s41598-021-81554-4
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