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Epiretinal Membrane Detection at the Ophthalmologist Level using Deep Learning of Optical Coherence Tomography

Purpose: Previous deep learning studies on optical coherence tomography (OCT) mainly focused on diabetic retinopathy and age-related macular degeneration. We proposed a deep learning model that can identify epiretinal membrane (ERM) in OCT with ophthalmologist-level performance. Design: Cross-sectio...

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Autores principales: Lo, Ying-Chih, Lin, Keng-Hung, Bair, Henry, Sheu, Wayne Huey-Herng, Chang, Chi-Sen, Shen, Ying-Cheng, Hung, Che-Lun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7242423/
https://www.ncbi.nlm.nih.gov/pubmed/32439844
http://dx.doi.org/10.1038/s41598-020-65405-2
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author Lo, Ying-Chih
Lin, Keng-Hung
Bair, Henry
Sheu, Wayne Huey-Herng
Chang, Chi-Sen
Shen, Ying-Cheng
Hung, Che-Lun
author_facet Lo, Ying-Chih
Lin, Keng-Hung
Bair, Henry
Sheu, Wayne Huey-Herng
Chang, Chi-Sen
Shen, Ying-Cheng
Hung, Che-Lun
author_sort Lo, Ying-Chih
collection PubMed
description Purpose: Previous deep learning studies on optical coherence tomography (OCT) mainly focused on diabetic retinopathy and age-related macular degeneration. We proposed a deep learning model that can identify epiretinal membrane (ERM) in OCT with ophthalmologist-level performance. Design: Cross-sectional study. Participants: A total of 3,618 central fovea cross section OCT images from 1,475 eyes of 964 patients. Methods: We retrospectively collected 7,652 OCT images from 1,197 patients. From these images, 2,171 were normal and 1,447 were ERM OCT. A total of 3,141 OCT images was used as training dataset and 477 images as testing dataset. DL algorithm was used to train the interpretation model. Diagnostic results by four board-certified non-retinal specialized ophthalmologists on the testing dataset were compared with those generated by the DL model. Main Outcome Measures: We calculated for the derived DL model the following characteristics: sensitivity, specificity, F1 score and area under curve (AUC) of the receiver operating characteristic (ROC) curve. These were calculated according to the gold standard results which were parallel diagnoses of the retinal specialist. Performance of the DL model was finally compared with that of non-retinal specialized ophthalmologists. Results: Regarding the diagnosis of ERM in OCT images, the trained DL model had the following characteristics in performance: sensitivity: 98.7%, specificity: 98.0%, and F1 score: 0.945. The accuracy on the training dataset was 99.7% (95% CI: 99.4 - 99.9%), and for the testing dataset, diagnostic accuracy was 98.1% (95% CI: 96.5 - 99.1%). AUC of the ROC curve was 0.999. The DL model slightly outperformed the average non-retinal specialized ophthalmologists. Conclusions: An ophthalmologist-level DL model was built here to accurately identify ERM in OCT images. The performance of the model was slightly better than the average non-retinal specialized ophthalmologists. The derived model may play a role to assist clinicians to promote the efficiency and safety of healthcare in the future.
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spelling pubmed-72424232020-05-30 Epiretinal Membrane Detection at the Ophthalmologist Level using Deep Learning of Optical Coherence Tomography Lo, Ying-Chih Lin, Keng-Hung Bair, Henry Sheu, Wayne Huey-Herng Chang, Chi-Sen Shen, Ying-Cheng Hung, Che-Lun Sci Rep Article Purpose: Previous deep learning studies on optical coherence tomography (OCT) mainly focused on diabetic retinopathy and age-related macular degeneration. We proposed a deep learning model that can identify epiretinal membrane (ERM) in OCT with ophthalmologist-level performance. Design: Cross-sectional study. Participants: A total of 3,618 central fovea cross section OCT images from 1,475 eyes of 964 patients. Methods: We retrospectively collected 7,652 OCT images from 1,197 patients. From these images, 2,171 were normal and 1,447 were ERM OCT. A total of 3,141 OCT images was used as training dataset and 477 images as testing dataset. DL algorithm was used to train the interpretation model. Diagnostic results by four board-certified non-retinal specialized ophthalmologists on the testing dataset were compared with those generated by the DL model. Main Outcome Measures: We calculated for the derived DL model the following characteristics: sensitivity, specificity, F1 score and area under curve (AUC) of the receiver operating characteristic (ROC) curve. These were calculated according to the gold standard results which were parallel diagnoses of the retinal specialist. Performance of the DL model was finally compared with that of non-retinal specialized ophthalmologists. Results: Regarding the diagnosis of ERM in OCT images, the trained DL model had the following characteristics in performance: sensitivity: 98.7%, specificity: 98.0%, and F1 score: 0.945. The accuracy on the training dataset was 99.7% (95% CI: 99.4 - 99.9%), and for the testing dataset, diagnostic accuracy was 98.1% (95% CI: 96.5 - 99.1%). AUC of the ROC curve was 0.999. The DL model slightly outperformed the average non-retinal specialized ophthalmologists. Conclusions: An ophthalmologist-level DL model was built here to accurately identify ERM in OCT images. The performance of the model was slightly better than the average non-retinal specialized ophthalmologists. The derived model may play a role to assist clinicians to promote the efficiency and safety of healthcare in the future. Nature Publishing Group UK 2020-05-21 /pmc/articles/PMC7242423/ /pubmed/32439844 http://dx.doi.org/10.1038/s41598-020-65405-2 Text en © The Author(s) 2020 Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons license and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/.
spellingShingle Article
Lo, Ying-Chih
Lin, Keng-Hung
Bair, Henry
Sheu, Wayne Huey-Herng
Chang, Chi-Sen
Shen, Ying-Cheng
Hung, Che-Lun
Epiretinal Membrane Detection at the Ophthalmologist Level using Deep Learning of Optical Coherence Tomography
title Epiretinal Membrane Detection at the Ophthalmologist Level using Deep Learning of Optical Coherence Tomography
title_full Epiretinal Membrane Detection at the Ophthalmologist Level using Deep Learning of Optical Coherence Tomography
title_fullStr Epiretinal Membrane Detection at the Ophthalmologist Level using Deep Learning of Optical Coherence Tomography
title_full_unstemmed Epiretinal Membrane Detection at the Ophthalmologist Level using Deep Learning of Optical Coherence Tomography
title_short Epiretinal Membrane Detection at the Ophthalmologist Level using Deep Learning of Optical Coherence Tomography
title_sort epiretinal membrane detection at the ophthalmologist level using deep learning of optical coherence tomography
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7242423/
https://www.ncbi.nlm.nih.gov/pubmed/32439844
http://dx.doi.org/10.1038/s41598-020-65405-2
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