Screening for Diabetic Retinopathy Using an Automated Diagnostic System Based on Deep Learning: Diagnostic Accuracy Assessment

Autores da FMUP
Participantes de fora da FMUP
- Rêgo, S
- Dutra Medeiros, M
- Soares, F
Unidades de investigação
Abstract
Purpose: To evaluate the diagnostic accuracy of a diagnostic system software for the automated screening of diabetic retinopathy (DR) on digital colour fundus photographs, the 2019 Convolutional Neural Network (CNN) model with Inception-V3. Methods: In this cross-sectional study, 295 fundus images were analysed by the CNN model and compared to a panel of ophthalmologists. Images were obtained from a dataset acquired within a screening programme. Diagnostic accuracy measures and respective 95% CI were calculated. Results: The sensitivity and specificity of the CNN model in diagnosing referable DR was 81% (95% CI 66-90%) and 97% (95% CI 95-99%), respectively. Positive predictive value was 86% (95% CI 72-94%) and negative predictive value 96% (95% CI 93-98%). The positive likelihood ratio was 33 (95% CI 15-75) and the negative was 0.20 (95% CI 0.11-0.35). Its clinical impact is demonstrated by the change observed in the pre-test probability of referable DR (assuming a prevalence of 16%) to a post-test probability for a positive test result of 86% and for a negative test result of 4%. Conclusion: A CNN model negative test result safely excludes DR, and its use may significantly reduce the burden of ophthalmologists at reading centres.
Dados da publicação
- ISSN/ISSNe:
- 0030-3755, 1423-0267
- Tipo:
- Article
- Páginas:
- 250-257
- DOI:
- 10.1159/000512638
- Link para outro recurso:
- www.scopus.com
Ophthalmologica S. Karger AG
Citações Recebidas na Web of Science: 14
Citações Recebidas na Scopus: 19
Documentos
- Não há documentos
Filiações
Keywords
- Diabetic retinopathy; Screening; Artificial intelligence; Automated diagnosis
Campos de estudo
Financiamento
Proyectos asociados
iHIPI: Hiper-inflamação e perfil imunológico dos doentes com COVID-19 no Centro Hospitalar de Vila Gaia/Espinho
Investigador Principal: Matilde Filipa Monteiro Soares
Estudo Clínico Académico (iHIPI) . FCT . 2020
Citar a publicação
Rêgo S,Dutra M,Soares F,Monteiro M. Screening for Diabetic Retinopathy Using an Automated Diagnostic System Based on Deep Learning: Diagnostic Accuracy Assessment. Ophthalmologica. 2021. 244. (3):p. 250-257. IF:3,757. (2).