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Development and clinical deployment of a smartphone-based visual field deep learning system for glaucoma detection

By 2040, ~100 million people will have glaucoma. To date, there are a lack of high-efficiency glaucoma diagnostic tools based on visual fields (VFs). Herein, we develop and evaluate the performance of ‘iGlaucoma’, a smartphone application-based deep learning system (DLS) in detecting glaucomatous VF...

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Autores principales: Li, Fei, Song, Diping, Chen, Han, Xiong, Jian, Li, Xingyi, Zhong, Hua, Tang, Guangxian, Fan, Sujie, Lam, Dennis S. C., Pan, Weihua, Zheng, Yajuan, Li, Ying, Qu, Guoxiang, He, Junjun, Wang, Zhe, Jin, Ling, Zhou, Rouxi, Song, Yunhe, Sun, Yi, Cheng, Weijing, Yang, Chunman, Fan, Yazhi, Li, Yingjie, Zhang, Hengli, Yuan, Ye, Xu, Yang, Xiong, Yunfan, Jin, Lingfei, Lv, Aiguo, Niu, Lingzhi, Liu, Yuhong, Li, Shaoli, Zhang, Jiani, Zangwill, Linda M., Frangi, Alejandro F., Aung, Tin, Cheng, Ching-yu, Qiao, Yu, Zhang, Xiulan, Ting, Daniel S. W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7508974/
https://www.ncbi.nlm.nih.gov/pubmed/33043147
http://dx.doi.org/10.1038/s41746-020-00329-9
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author Li, Fei
Song, Diping
Chen, Han
Xiong, Jian
Li, Xingyi
Zhong, Hua
Tang, Guangxian
Fan, Sujie
Lam, Dennis S. C.
Pan, Weihua
Zheng, Yajuan
Li, Ying
Qu, Guoxiang
He, Junjun
Wang, Zhe
Jin, Ling
Zhou, Rouxi
Song, Yunhe
Sun, Yi
Cheng, Weijing
Yang, Chunman
Fan, Yazhi
Li, Yingjie
Zhang, Hengli
Yuan, Ye
Xu, Yang
Xiong, Yunfan
Jin, Lingfei
Lv, Aiguo
Niu, Lingzhi
Liu, Yuhong
Li, Shaoli
Zhang, Jiani
Zangwill, Linda M.
Frangi, Alejandro F.
Aung, Tin
Cheng, Ching-yu
Qiao, Yu
Zhang, Xiulan
Ting, Daniel S. W.
author_facet Li, Fei
Song, Diping
Chen, Han
Xiong, Jian
Li, Xingyi
Zhong, Hua
Tang, Guangxian
Fan, Sujie
Lam, Dennis S. C.
Pan, Weihua
Zheng, Yajuan
Li, Ying
Qu, Guoxiang
He, Junjun
Wang, Zhe
Jin, Ling
Zhou, Rouxi
Song, Yunhe
Sun, Yi
Cheng, Weijing
Yang, Chunman
Fan, Yazhi
Li, Yingjie
Zhang, Hengli
Yuan, Ye
Xu, Yang
Xiong, Yunfan
Jin, Lingfei
Lv, Aiguo
Niu, Lingzhi
Liu, Yuhong
Li, Shaoli
Zhang, Jiani
Zangwill, Linda M.
Frangi, Alejandro F.
Aung, Tin
Cheng, Ching-yu
Qiao, Yu
Zhang, Xiulan
Ting, Daniel S. W.
author_sort Li, Fei
collection PubMed
description By 2040, ~100 million people will have glaucoma. To date, there are a lack of high-efficiency glaucoma diagnostic tools based on visual fields (VFs). Herein, we develop and evaluate the performance of ‘iGlaucoma’, a smartphone application-based deep learning system (DLS) in detecting glaucomatous VF changes. A total of 1,614,808 data points of 10,784 VFs (5542 patients) from seven centers in China were included in this study, divided over two phases. In Phase I, 1,581,060 data points from 10,135 VFs of 5105 patients were included to train (8424 VFs), validate (598 VFs) and test (3 independent test sets—200, 406, 507 samples) the diagnostic performance of the DLS. In Phase II, using the same DLS, iGlaucoma cloud-based application further tested on 33,748 data points from 649 VFs of 437 patients from three glaucoma clinics. With reference to three experienced expert glaucomatologists, the diagnostic performance (area under curve [AUC], sensitivity and specificity) of the DLS and six ophthalmologists were evaluated in detecting glaucoma. In Phase I, the DLS outperformed all six ophthalmologists in the three test sets (AUC of 0.834–0.877, with a sensitivity of 0.831–0.922 and a specificity of 0.676–0.709). In Phase II, iGlaucoma had 0.99 accuracy in recognizing different patterns in pattern deviation probability plots region, with corresponding AUC, sensitivity and specificity of 0.966 (0.953–0.979), 0.954 (0.930–0.977), and 0.873 (0.838–0.908), respectively. The ‘iGlaucoma’ is a clinically effective glaucoma diagnostic tool to detect glaucoma from humphrey VFs, although the target population will need to be carefully identified with glaucoma expertise input.
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spelling pubmed-75089742020-10-08 Development and clinical deployment of a smartphone-based visual field deep learning system for glaucoma detection Li, Fei Song, Diping Chen, Han Xiong, Jian Li, Xingyi Zhong, Hua Tang, Guangxian Fan, Sujie Lam, Dennis S. C. Pan, Weihua Zheng, Yajuan Li, Ying Qu, Guoxiang He, Junjun Wang, Zhe Jin, Ling Zhou, Rouxi Song, Yunhe Sun, Yi Cheng, Weijing Yang, Chunman Fan, Yazhi Li, Yingjie Zhang, Hengli Yuan, Ye Xu, Yang Xiong, Yunfan Jin, Lingfei Lv, Aiguo Niu, Lingzhi Liu, Yuhong Li, Shaoli Zhang, Jiani Zangwill, Linda M. Frangi, Alejandro F. Aung, Tin Cheng, Ching-yu Qiao, Yu Zhang, Xiulan Ting, Daniel S. W. NPJ Digit Med Article By 2040, ~100 million people will have glaucoma. To date, there are a lack of high-efficiency glaucoma diagnostic tools based on visual fields (VFs). Herein, we develop and evaluate the performance of ‘iGlaucoma’, a smartphone application-based deep learning system (DLS) in detecting glaucomatous VF changes. A total of 1,614,808 data points of 10,784 VFs (5542 patients) from seven centers in China were included in this study, divided over two phases. In Phase I, 1,581,060 data points from 10,135 VFs of 5105 patients were included to train (8424 VFs), validate (598 VFs) and test (3 independent test sets—200, 406, 507 samples) the diagnostic performance of the DLS. In Phase II, using the same DLS, iGlaucoma cloud-based application further tested on 33,748 data points from 649 VFs of 437 patients from three glaucoma clinics. With reference to three experienced expert glaucomatologists, the diagnostic performance (area under curve [AUC], sensitivity and specificity) of the DLS and six ophthalmologists were evaluated in detecting glaucoma. In Phase I, the DLS outperformed all six ophthalmologists in the three test sets (AUC of 0.834–0.877, with a sensitivity of 0.831–0.922 and a specificity of 0.676–0.709). In Phase II, iGlaucoma had 0.99 accuracy in recognizing different patterns in pattern deviation probability plots region, with corresponding AUC, sensitivity and specificity of 0.966 (0.953–0.979), 0.954 (0.930–0.977), and 0.873 (0.838–0.908), respectively. The ‘iGlaucoma’ is a clinically effective glaucoma diagnostic tool to detect glaucoma from humphrey VFs, although the target population will need to be carefully identified with glaucoma expertise input. Nature Publishing Group UK 2020-09-22 /pmc/articles/PMC7508974/ /pubmed/33043147 http://dx.doi.org/10.1038/s41746-020-00329-9 Text en © The Author(s) 2020, corrected publication 2022 https://creativecommons.org/licenses/by/4.0/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/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Li, Fei
Song, Diping
Chen, Han
Xiong, Jian
Li, Xingyi
Zhong, Hua
Tang, Guangxian
Fan, Sujie
Lam, Dennis S. C.
Pan, Weihua
Zheng, Yajuan
Li, Ying
Qu, Guoxiang
He, Junjun
Wang, Zhe
Jin, Ling
Zhou, Rouxi
Song, Yunhe
Sun, Yi
Cheng, Weijing
Yang, Chunman
Fan, Yazhi
Li, Yingjie
Zhang, Hengli
Yuan, Ye
Xu, Yang
Xiong, Yunfan
Jin, Lingfei
Lv, Aiguo
Niu, Lingzhi
Liu, Yuhong
Li, Shaoli
Zhang, Jiani
Zangwill, Linda M.
Frangi, Alejandro F.
Aung, Tin
Cheng, Ching-yu
Qiao, Yu
Zhang, Xiulan
Ting, Daniel S. W.
Development and clinical deployment of a smartphone-based visual field deep learning system for glaucoma detection
title Development and clinical deployment of a smartphone-based visual field deep learning system for glaucoma detection
title_full Development and clinical deployment of a smartphone-based visual field deep learning system for glaucoma detection
title_fullStr Development and clinical deployment of a smartphone-based visual field deep learning system for glaucoma detection
title_full_unstemmed Development and clinical deployment of a smartphone-based visual field deep learning system for glaucoma detection
title_short Development and clinical deployment of a smartphone-based visual field deep learning system for glaucoma detection
title_sort development and clinical deployment of a smartphone-based visual field deep learning system for glaucoma detection
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7508974/
https://www.ncbi.nlm.nih.gov/pubmed/33043147
http://dx.doi.org/10.1038/s41746-020-00329-9
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