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Published in: Graefe's Archive for Clinical and Experimental Ophthalmology 11/2020

01-11-2020 | Glaucoma | Glaucoma

Prediction of visual field from swept-source optical coherence tomography using deep learning algorithms

Authors: Keunheung Park, Jinmi Kim, Sangyoon Kim, Jonghoon Shin

Published in: Graefe's Archive for Clinical and Experimental Ophthalmology | Issue 11/2020

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Abstract

Purpose

To develop a deep learning method to predict visual field (VF) from wide-angle swept-source optical coherence tomography (SS-OCT) and compare the performance of three Google Inception architectures.

Methods

Three deep learning models (with Inception-ResNet-v2, Inception-v3, and Inception-v4) were trained to predict 24-2 VF from the macular ganglion cell-inner plexiform layer and the peripapillary retinal nerve fibre layer map obtained by SS-OCT. The prediction performance of the three models was evaluated by using the root mean square error (RMSE) between the actual and predicted VF. The performance was also compared among different glaucoma severities and Garway-Heath sectorizations.

Results

The training dataset comprised images of 2220 eyes from 1120 subjects, and the test dataset was obtained from another 305 subjects (305 eyes). In all subjects, the global prediction errors (RMSEs) were 4.44 ± 2.09 dB, 4.78 ± 2.38 dB, and 4.85 ± 2.66 dB for the Inception-ResNet-v2, Inception-v3, and Inception-v4 architectures, respectively, and the prediction error of Inception-ResNet-v2 was significantly lower than the other two (P < 0.001). As glaucoma progressed, the prediction error of all three architectures significantly worsened to 6.59 dB, 7.33 dB, and 7.79 dB, respectively. In the analysis of sectors, the nasal sector had the lowest prediction error, followed by the superotemporal sector.

Conclusions

Inception-ResNet-v2 achieved the best performance, and the global prediction error (RMSE) was 4.44 dB. As glaucoma progressed, the prediction error became larger. This method may help clinicians determine VF, particularly for patients who are unable to undergo a physical VF test.
Appendix
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Metadata
Title
Prediction of visual field from swept-source optical coherence tomography using deep learning algorithms
Authors
Keunheung Park
Jinmi Kim
Sangyoon Kim
Jonghoon Shin
Publication date
01-11-2020
Publisher
Springer Berlin Heidelberg
Keyword
Glaucoma
Published in
Graefe's Archive for Clinical and Experimental Ophthalmology / Issue 11/2020
Print ISSN: 0721-832X
Electronic ISSN: 1435-702X
DOI
https://doi.org/10.1007/s00417-020-04909-z

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