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Keratoconus Screening Based on Deep Learning Approach of Corneal Topography
PURPOSE: To develop and compare deep learning (DL) algorithms to detect keratoconus on the basis of corneal topography and validate with visualization methods. METHODS: We retrospectively collected corneal topographies of the study group with clinically manifested keratoconus and the control group w...
Autores principales: | , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
The Association for Research in Vision and Ophthalmology
2020
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7533740/ https://www.ncbi.nlm.nih.gov/pubmed/33062398 http://dx.doi.org/10.1167/tvst.9.2.53 |
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author | Kuo, Bo-I Chang, Wen-Yi Liao, Tai-Shan Liu, Fang-Yu Liu, Hsin-Yu Chu, Hsiao-Sang Chen, Wei-Li Hu, Fung-Rong Yen, Jia-Yush Wang, I-Jong |
author_facet | Kuo, Bo-I Chang, Wen-Yi Liao, Tai-Shan Liu, Fang-Yu Liu, Hsin-Yu Chu, Hsiao-Sang Chen, Wei-Li Hu, Fung-Rong Yen, Jia-Yush Wang, I-Jong |
author_sort | Kuo, Bo-I |
collection | PubMed |
description | PURPOSE: To develop and compare deep learning (DL) algorithms to detect keratoconus on the basis of corneal topography and validate with visualization methods. METHODS: We retrospectively collected corneal topographies of the study group with clinically manifested keratoconus and the control group with regular astigmatism. All images were divided into training and test datasets. We adopted three convolutional neural network (CNN) models for learning. The test dataset was applied to analyze the performance of the three models. In addition, for better discrimination and understanding, we displayed the pixel-wise discriminative features and class-discriminative heat map of diopter images for visualization. RESULTS: Overall, 170 keratoconus, 28 subclinical keratoconus and 156 normal topographic pictures were collected. The convergence of accuracy and loss for the training and test datasets after training revealed no overfitting in all three CNN models. The sensitivity and specificity of all CNN models were over 0.90, and the area under the receiver operating characteristic curve reached 0.995 in the ResNet152 model. The pixel-wise discriminative features and the heat map of the prediction layer in the VGG16 model both revealed it focused on the largest gradient difference of topographic maps, which was corresponding to the diagnostic clues of ophthalmologists. The subclinical keratoconus was positively predicted with our model and also correlated with topographic indexes. CONCLUSIONS: The DL models had fair accuracy for keratoconus screening based on corneal topographic images. The visualization mentioned in the current study revealed that the model focused on the appropriate region for diagnosis and rendered clinical explainability of deep learning more acceptable. TRANSLATIONAL RELEVANCE: These high accuracy CNN models can aid ophthalmologists in keratoconus screening with color-coded corneal topography maps. |
format | Online Article Text |
id | pubmed-7533740 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | The Association for Research in Vision and Ophthalmology |
record_format | MEDLINE/PubMed |
spelling | pubmed-75337402020-10-14 Keratoconus Screening Based on Deep Learning Approach of Corneal Topography Kuo, Bo-I Chang, Wen-Yi Liao, Tai-Shan Liu, Fang-Yu Liu, Hsin-Yu Chu, Hsiao-Sang Chen, Wei-Li Hu, Fung-Rong Yen, Jia-Yush Wang, I-Jong Transl Vis Sci Technol Special Issue PURPOSE: To develop and compare deep learning (DL) algorithms to detect keratoconus on the basis of corneal topography and validate with visualization methods. METHODS: We retrospectively collected corneal topographies of the study group with clinically manifested keratoconus and the control group with regular astigmatism. All images were divided into training and test datasets. We adopted three convolutional neural network (CNN) models for learning. The test dataset was applied to analyze the performance of the three models. In addition, for better discrimination and understanding, we displayed the pixel-wise discriminative features and class-discriminative heat map of diopter images for visualization. RESULTS: Overall, 170 keratoconus, 28 subclinical keratoconus and 156 normal topographic pictures were collected. The convergence of accuracy and loss for the training and test datasets after training revealed no overfitting in all three CNN models. The sensitivity and specificity of all CNN models were over 0.90, and the area under the receiver operating characteristic curve reached 0.995 in the ResNet152 model. The pixel-wise discriminative features and the heat map of the prediction layer in the VGG16 model both revealed it focused on the largest gradient difference of topographic maps, which was corresponding to the diagnostic clues of ophthalmologists. The subclinical keratoconus was positively predicted with our model and also correlated with topographic indexes. CONCLUSIONS: The DL models had fair accuracy for keratoconus screening based on corneal topographic images. The visualization mentioned in the current study revealed that the model focused on the appropriate region for diagnosis and rendered clinical explainability of deep learning more acceptable. TRANSLATIONAL RELEVANCE: These high accuracy CNN models can aid ophthalmologists in keratoconus screening with color-coded corneal topography maps. The Association for Research in Vision and Ophthalmology 2020-09-25 /pmc/articles/PMC7533740/ /pubmed/33062398 http://dx.doi.org/10.1167/tvst.9.2.53 Text en Copyright 2020 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License. |
spellingShingle | Special Issue Kuo, Bo-I Chang, Wen-Yi Liao, Tai-Shan Liu, Fang-Yu Liu, Hsin-Yu Chu, Hsiao-Sang Chen, Wei-Li Hu, Fung-Rong Yen, Jia-Yush Wang, I-Jong Keratoconus Screening Based on Deep Learning Approach of Corneal Topography |
title | Keratoconus Screening Based on Deep Learning Approach of Corneal Topography |
title_full | Keratoconus Screening Based on Deep Learning Approach of Corneal Topography |
title_fullStr | Keratoconus Screening Based on Deep Learning Approach of Corneal Topography |
title_full_unstemmed | Keratoconus Screening Based on Deep Learning Approach of Corneal Topography |
title_short | Keratoconus Screening Based on Deep Learning Approach of Corneal Topography |
title_sort | keratoconus screening based on deep learning approach of corneal topography |
topic | Special Issue |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7533740/ https://www.ncbi.nlm.nih.gov/pubmed/33062398 http://dx.doi.org/10.1167/tvst.9.2.53 |
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