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An Artificial-Intelligence–Based Automated Grading and Lesions Segmentation System for Myopic Maculopathy Based on Color Fundus Photographs

PURPOSE: To develop deep learning models based on color fundus photographs that can automatically grade myopic maculopathy, diagnose pathologic myopia, and identify and segment myopia-related lesions. METHODS: Photographs were graded and annotated by four ophthalmologists and were then divided into...

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Autores principales: Tang, Jia, Yuan, Mingzhen, Tian, Kaibin, Wang, Yuelin, Wang, Dongyue, Yang, Jingyuan, Yang, Zhikun, He, Xixi, Luo, Yan, Li, Ying, Xu, Jie, Li, Xirong, Ding, Dayong, Ren, Yanhan, Chen, Youxin, Sadda, Srinivas R., Yu, Weihong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Association for Research in Vision and Ophthalmology 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9206390/
https://www.ncbi.nlm.nih.gov/pubmed/35704327
http://dx.doi.org/10.1167/tvst.11.6.16
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author Tang, Jia
Yuan, Mingzhen
Tian, Kaibin
Wang, Yuelin
Wang, Dongyue
Yang, Jingyuan
Yang, Zhikun
He, Xixi
Luo, Yan
Li, Ying
Xu, Jie
Li, Xirong
Ding, Dayong
Ren, Yanhan
Chen, Youxin
Sadda, Srinivas R.
Yu, Weihong
author_facet Tang, Jia
Yuan, Mingzhen
Tian, Kaibin
Wang, Yuelin
Wang, Dongyue
Yang, Jingyuan
Yang, Zhikun
He, Xixi
Luo, Yan
Li, Ying
Xu, Jie
Li, Xirong
Ding, Dayong
Ren, Yanhan
Chen, Youxin
Sadda, Srinivas R.
Yu, Weihong
author_sort Tang, Jia
collection PubMed
description PURPOSE: To develop deep learning models based on color fundus photographs that can automatically grade myopic maculopathy, diagnose pathologic myopia, and identify and segment myopia-related lesions. METHODS: Photographs were graded and annotated by four ophthalmologists and were then divided into a high-consistency subgroup or a low-consistency subgroup according to the consistency between the results of the graders. ResNet-50 network was used to develop the classification model, and DeepLabv3+ network was used to develop the segmentation model for lesion identification. The two models were then combined to develop the classification-and-segmentation–based co-decision model. RESULTS: This study included 1395 color fundus photographs from 895 patients. The grading accuracy of the co-decision model was 0.9370, and the quadratic-weighted κ coefficient was 0.9651; the co-decision model achieved an area under the receiver operating characteristic curve of 0.9980 in diagnosing pathologic myopia. The photograph-level F(1) values of the segmentation model identifying optic disc, peripapillary atrophy, diffuse atrophy, patchy atrophy, and macular atrophy were all >0.95; the pixel-level F(1) values for segmenting optic disc and peripapillary atrophy were both >0.9; the pixel-level F(1) values for segmenting diffuse atrophy, patchy atrophy, and macular atrophy were all >0.8; and the photograph-level recall/sensitivity for detecting lacquer cracks was 0.9230. CONCLUSIONS: The models could accurately and automatically grade myopic maculopathy, diagnose pathologic myopia, and identify and monitor progression of the lesions. TRANSLATIONAL RELEVANCE: The models can potentially help with the diagnosis, screening, and follow-up for pathologic myopic in clinical practice.
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spelling pubmed-92063902022-06-19 An Artificial-Intelligence–Based Automated Grading and Lesions Segmentation System for Myopic Maculopathy Based on Color Fundus Photographs Tang, Jia Yuan, Mingzhen Tian, Kaibin Wang, Yuelin Wang, Dongyue Yang, Jingyuan Yang, Zhikun He, Xixi Luo, Yan Li, Ying Xu, Jie Li, Xirong Ding, Dayong Ren, Yanhan Chen, Youxin Sadda, Srinivas R. Yu, Weihong Transl Vis Sci Technol Article PURPOSE: To develop deep learning models based on color fundus photographs that can automatically grade myopic maculopathy, diagnose pathologic myopia, and identify and segment myopia-related lesions. METHODS: Photographs were graded and annotated by four ophthalmologists and were then divided into a high-consistency subgroup or a low-consistency subgroup according to the consistency between the results of the graders. ResNet-50 network was used to develop the classification model, and DeepLabv3+ network was used to develop the segmentation model for lesion identification. The two models were then combined to develop the classification-and-segmentation–based co-decision model. RESULTS: This study included 1395 color fundus photographs from 895 patients. The grading accuracy of the co-decision model was 0.9370, and the quadratic-weighted κ coefficient was 0.9651; the co-decision model achieved an area under the receiver operating characteristic curve of 0.9980 in diagnosing pathologic myopia. The photograph-level F(1) values of the segmentation model identifying optic disc, peripapillary atrophy, diffuse atrophy, patchy atrophy, and macular atrophy were all >0.95; the pixel-level F(1) values for segmenting optic disc and peripapillary atrophy were both >0.9; the pixel-level F(1) values for segmenting diffuse atrophy, patchy atrophy, and macular atrophy were all >0.8; and the photograph-level recall/sensitivity for detecting lacquer cracks was 0.9230. CONCLUSIONS: The models could accurately and automatically grade myopic maculopathy, diagnose pathologic myopia, and identify and monitor progression of the lesions. TRANSLATIONAL RELEVANCE: The models can potentially help with the diagnosis, screening, and follow-up for pathologic myopic in clinical practice. The Association for Research in Vision and Ophthalmology 2022-06-15 /pmc/articles/PMC9206390/ /pubmed/35704327 http://dx.doi.org/10.1167/tvst.11.6.16 Text en Copyright 2022 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
spellingShingle Article
Tang, Jia
Yuan, Mingzhen
Tian, Kaibin
Wang, Yuelin
Wang, Dongyue
Yang, Jingyuan
Yang, Zhikun
He, Xixi
Luo, Yan
Li, Ying
Xu, Jie
Li, Xirong
Ding, Dayong
Ren, Yanhan
Chen, Youxin
Sadda, Srinivas R.
Yu, Weihong
An Artificial-Intelligence–Based Automated Grading and Lesions Segmentation System for Myopic Maculopathy Based on Color Fundus Photographs
title An Artificial-Intelligence–Based Automated Grading and Lesions Segmentation System for Myopic Maculopathy Based on Color Fundus Photographs
title_full An Artificial-Intelligence–Based Automated Grading and Lesions Segmentation System for Myopic Maculopathy Based on Color Fundus Photographs
title_fullStr An Artificial-Intelligence–Based Automated Grading and Lesions Segmentation System for Myopic Maculopathy Based on Color Fundus Photographs
title_full_unstemmed An Artificial-Intelligence–Based Automated Grading and Lesions Segmentation System for Myopic Maculopathy Based on Color Fundus Photographs
title_short An Artificial-Intelligence–Based Automated Grading and Lesions Segmentation System for Myopic Maculopathy Based on Color Fundus Photographs
title_sort artificial-intelligence–based automated grading and lesions segmentation system for myopic maculopathy based on color fundus photographs
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9206390/
https://www.ncbi.nlm.nih.gov/pubmed/35704327
http://dx.doi.org/10.1167/tvst.11.6.16
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