Literature DB >> 29234807

Development and Validation of a Deep Learning System for Diabetic Retinopathy and Related Eye Diseases Using Retinal Images From Multiethnic Populations With Diabetes.

Daniel Shu Wei Ting1,2, Carol Yim-Lui Cheung1,3, Gilbert Lim4, Gavin Siew Wei Tan1,2, Nguyen D Quang1, Alfred Gan1, Haslina Hamzah1, Renata Garcia-Franco5, Ian Yew San Yeo1,2, Shu Yen Lee1,2, Edmund Yick Mun Wong1,2, Charumathi Sabanayagam1,2, Mani Baskaran1,2, Farah Ibrahim2, Ngiap Chuan Tan2,6, Eric A Finkelstein7, Ecosse L Lamoureux1,2, Ian Y Wong8, Neil M Bressler9, Sobha Sivaprasad10, Rohit Varma11, Jost B Jonas12, Ming Guang He13, Ching-Yu Cheng1,2, Gemmy Chui Ming Cheung1,2, Tin Aung1,2, Wynne Hsu4, Mong Li Lee4, Tien Yin Wong1,2.   

Abstract

Importance: A deep learning system (DLS) is a machine learning technology with potential for screening diabetic retinopathy and related eye diseases. Objective: To evaluate the performance of a DLS in detecting referable diabetic retinopathy, vision-threatening diabetic retinopathy, possible glaucoma, and age-related macular degeneration (AMD) in community and clinic-based multiethnic populations with diabetes. Design, Setting, and Participants: Diagnostic performance of a DLS for diabetic retinopathy and related eye diseases was evaluated using 494 661 retinal images. A DLS was trained for detecting diabetic retinopathy (using 76 370 images), possible glaucoma (125 189 images), and AMD (72 610 images), and performance of DLS was evaluated for detecting diabetic retinopathy (using 112 648 images), possible glaucoma (71 896 images), and AMD (35 948 images). Training of the DLS was completed in May 2016, and validation of the DLS was completed in May 2017 for detection of referable diabetic retinopathy (moderate nonproliferative diabetic retinopathy or worse) and vision-threatening diabetic retinopathy (severe nonproliferative diabetic retinopathy or worse) using a primary validation data set in the Singapore National Diabetic Retinopathy Screening Program and 10 multiethnic cohorts with diabetes. Exposures: Use of a deep learning system. Main Outcomes and Measures: Area under the receiver operating characteristic curve (AUC) and sensitivity and specificity of the DLS with professional graders (retinal specialists, general ophthalmologists, trained graders, or optometrists) as the reference standard.
Results: In the primary validation dataset (n = 14 880 patients; 71 896 images; mean [SD] age, 60.2 [2.2] years; 54.6% men), the prevalence of referable diabetic retinopathy was 3.0%; vision-threatening diabetic retinopathy, 0.6%; possible glaucoma, 0.1%; and AMD, 2.5%. The AUC of the DLS for referable diabetic retinopathy was 0.936 (95% CI, 0.925-0.943), sensitivity was 90.5% (95% CI, 87.3%-93.0%), and specificity was 91.6% (95% CI, 91.0%-92.2%). For vision-threatening diabetic retinopathy, AUC was 0.958 (95% CI, 0.956-0.961), sensitivity was 100% (95% CI, 94.1%-100.0%), and specificity was 91.1% (95% CI, 90.7%-91.4%). For possible glaucoma, AUC was 0.942 (95% CI, 0.929-0.954), sensitivity was 96.4% (95% CI, 81.7%-99.9%), and specificity was 87.2% (95% CI, 86.8%-87.5%). For AMD, AUC was 0.931 (95% CI, 0.928-0.935), sensitivity was 93.2% (95% CI, 91.1%-99.8%), and specificity was 88.7% (95% CI, 88.3%-89.0%). For referable diabetic retinopathy in the 10 additional datasets, AUC range was 0.889 to 0.983 (n = 40 752 images). Conclusions and Relevance: In this evaluation of retinal images from multiethnic cohorts of patients with diabetes, the DLS had high sensitivity and specificity for identifying diabetic retinopathy and related eye diseases. Further research is necessary to evaluate the applicability of the DLS in health care settings and the utility of the DLS to improve vision outcomes.

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Mesh:

Year:  2017        PMID: 29234807      PMCID: PMC5820739          DOI: 10.1001/jama.2017.18152

Source DB:  PubMed          Journal:  JAMA        ISSN: 0098-7484            Impact factor:   56.272


  35 in total

1.  The Wisconsin age-related maculopathy grading system.

Authors:  R Klein; M D Davis; Y L Magli; P Segal; B E Klein; L Hubbard
Journal:  Ophthalmology       Date:  1991-07       Impact factor: 12.079

2.  Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs.

Authors:  Varun Gulshan; Lily Peng; Marc Coram; Martin C Stumpe; Derek Wu; Arunachalam Narayanaswamy; Subhashini Venugopalan; Kasumi Widner; Tom Madams; Jorge Cuadros; Ramasamy Kim; Rajiv Raman; Philip C Nelson; Jessica L Mega; Dale R Webster
Journal:  JAMA       Date:  2016-12-13       Impact factor: 56.272

Review 3.  Diabetic retinopathy: global prevalence, major risk factors, screening practices and public health challenges: a review.

Authors:  Daniel Shu Wei Ting; Gemmy Chui Ming Cheung; Tien Yin Wong
Journal:  Clin Exp Ophthalmol       Date:  2016-02-17       Impact factor: 4.207

4.  Methodology and early findings of the Diabetes Management Project: a cohort study investigating the barriers to optimal diabetes care in diabetic patients with and without diabetic retinopathy.

Authors:  Ecosse Luc Lamoureux; Eva Fenwick; Jing Xie; Annie Mcauley; Theona Nicolaou; Melanie Larizza; Gwyn Rees; Salmaan Qureshi; Tien Yin Wong; Rehab Benarous; Mohamed Dirani
Journal:  Clin Exp Ophthalmol       Date:  2011-11-04       Impact factor: 4.207

Review 5.  Prevalence of diabetic retinopathy in various ethnic groups: a worldwide perspective.

Authors:  Sobha Sivaprasad; Bhaskar Gupta; Roxanne Crosby-Nwaobi; Jennifer Evans
Journal:  Surv Ophthalmol       Date:  2012-04-28       Impact factor: 6.048

6.  Cost-effectiveness of a National Telemedicine Diabetic Retinopathy Screening Program in Singapore.

Authors:  Hai V Nguyen; Gavin Siew Wei Tan; Robyn Jennifer Tapp; Shweta Mital; Daniel Shu Wei Ting; Hon Tym Wong; Colin S Tan; Augustinus Laude; E Shyong Tai; Ngiap Chuan Tan; Eric A Finkelstein; Tien Yin Wong; Ecosse L Lamoureux
Journal:  Ophthalmology       Date:  2016-10-07       Impact factor: 12.079

Review 7.  Proposed international clinical diabetic retinopathy and diabetic macular edema disease severity scales.

Authors:  C P Wilkinson; Frederick L Ferris; Ronald E Klein; Paul P Lee; Carl David Agardh; Matthew Davis; Diana Dills; Anselm Kampik; R Pararajasegaram; Juan T Verdaguer
Journal:  Ophthalmology       Date:  2003-09       Impact factor: 12.079

8.  Prevalence and risk factors for diabetic retinopathy: the Singapore Malay Eye Study.

Authors:  Tien Y Wong; Ning Cheung; Wan Ting Tay; Jie Jin Wang; Tin Aung; Seang Mei Saw; Su Chi Lim; E Shyong Tai; Paul Mitchell
Journal:  Ophthalmology       Date:  2008-06-26       Impact factor: 12.079

9.  The Beijing Eye Study.

Authors:  Jost B Jonas; Liang Xu; Ya Xing Wang
Journal:  Acta Ophthalmol       Date:  2009-05       Impact factor: 3.761

10.  Accuracy of diabetic retinopathy screening by trained non-physician graders using non-mydriatic fundus camera.

Authors:  Mayuri Bhargava; Carol Yim-Lui Cheung; Charumathi Sabanayagam; Ryo Kawasaki; C Alex Harper; Ecosse L Lamoureux; Wai Leng Chow; Adrian Ee; Haslina Hamzah; Maisie Ho; Wanling Wong; Tien Yin Wong
Journal:  Singapore Med J       Date:  2012-11       Impact factor: 1.858

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  387 in total

1.  An Observational Study of Deep Learning and Automated Evaluation of Cervical Images for Cancer Screening.

Authors:  Liming Hu; David Bell; Sameer Antani; Zhiyun Xue; Kai Yu; Matthew P Horning; Noni Gachuhi; Benjamin Wilson; Mayoore S Jaiswal; Brian Befano; L Rodney Long; Rolando Herrero; Mark H Einstein; Robert D Burk; Maria Demarco; Julia C Gage; Ana Cecilia Rodriguez; Nicolas Wentzensen; Mark Schiffman
Journal:  J Natl Cancer Inst       Date:  2019-09-01       Impact factor: 13.506

2.  Assessment of Deep Generative Models for High-Resolution Synthetic Retinal Image Generation of Age-Related Macular Degeneration.

Authors:  Philippe M Burlina; Neil Joshi; Katia D Pacheco; T Y Alvin Liu; Neil M Bressler
Journal:  JAMA Ophthalmol       Date:  2019-03-01       Impact factor: 7.389

3.  Visualizing Deep Learning Models for the Detection of Referable Diabetic Retinopathy and Glaucoma.

Authors:  Stuart Keel; Jinrong Wu; Pei Ying Lee; Jane Scheetz; Mingguang He
Journal:  JAMA Ophthalmol       Date:  2019-03-01       Impact factor: 7.389

4.  From Machine to Machine: An OCT-Trained Deep Learning Algorithm for Objective Quantification of Glaucomatous Damage in Fundus Photographs.

Authors:  Felipe A Medeiros; Alessandro A Jammal; Atalie C Thompson
Journal:  Ophthalmology       Date:  2018-12-20       Impact factor: 12.079

5.  Artificial Intelligence Screening for Diabetic Retinopathy: the Real-World Emerging Application.

Authors:  Valentina Bellemo; Gilbert Lim; Tyler Hyungtaek Rim; Gavin S W Tan; Carol Y Cheung; SriniVas Sadda; Ming-Guang He; Adnan Tufail; Mong Li Lee; Wynne Hsu; Daniel Shu Wei Ting
Journal:  Curr Diab Rep       Date:  2019-07-31       Impact factor: 4.810

6.  Retinal Pathologic Features on OCT among Eyes of Older Adults Judged Healthy by Color Fundus Photography.

Authors:  Jason N Crosson; Thomas A Swain; Mark E Clark; Carrie E Huisingh; Gerald McGwin; Cynthia Owsley; Christine A Curcio
Journal:  Ophthalmol Retina       Date:  2019-03-30

7.  Evaluation of an AI system for the automated detection of glaucoma from stereoscopic optic disc photographs: the European Optic Disc Assessment Study.

Authors:  Thomas W Rogers; Nicolas Jaccard; Francis Carbonaro; Hans G Lemij; Koenraad A Vermeer; Nicolaas J Reus; Sameer Trikha
Journal:  Eye (Lond)       Date:  2019-07-02       Impact factor: 3.775

8.  Accuracy of ultrawide-field fundus ophthalmoscopy-assisted deep learning for detecting treatment-naïve proliferative diabetic retinopathy.

Authors:  Toshihiko Nagasawa; Hitoshi Tabuchi; Hiroki Masumoto; Hiroki Enno; Masanori Niki; Zaigen Ohara; Yuki Yoshizumi; Hideharu Ohsugi; Yoshinori Mitamura
Journal:  Int Ophthalmol       Date:  2019-02-23       Impact factor: 2.031

9.  Automated semantic labeling of pediatric musculoskeletal radiographs using deep learning.

Authors:  Paul H Yi; Tae Kyung Kim; Jinchi Wei; Jiwon Shin; Ferdinand K Hui; Haris I Sair; Gregory D Hager; Jan Fritz
Journal:  Pediatr Radiol       Date:  2019-04-30

Review 10.  Artificial Intelligence for Mammography and Digital Breast Tomosynthesis: Current Concepts and Future Perspectives.

Authors:  Krzysztof J Geras; Ritse M Mann; Linda Moy
Journal:  Radiology       Date:  2019-09-24       Impact factor: 11.105

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