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dc.contributor.authorReis, Mateus Augusto dospt_BR
dc.contributor.authorKünas, Cristiano Alexpt_BR
dc.contributor.authorAraújo, Thiago da Silvapt_BR
dc.contributor.authorSchneiders, Josianept_BR
dc.contributor.authorAzevedo, Pietro Baptista dept_BR
dc.contributor.authorNakayama, Luis Filipept_BR
dc.contributor.authorRados, Dimitris Rucks Varvakipt_BR
dc.contributor.authorUmpierre, Roberto Nunespt_BR
dc.contributor.authorSilva, Otávio Berwanger dapt_BR
dc.contributor.authorLavinsky, Danielpt_BR
dc.contributor.authorMalerbi, Fernando Kornpt_BR
dc.contributor.authorNavaux, Philippe Olivier Alexandrept_BR
dc.contributor.authorSchaan, Beatriz D'Agordpt_BR
dc.date.accessioned2025-02-07T06:56:29Zpt_BR
dc.date.issued2024pt_BR
dc.identifier.issn1758-5996pt_BR
dc.identifier.urihttp://hdl.handle.net/10183/284924pt_BR
dc.description.abstractBackground: In healthcare systems in general, access to diabetic retinopathy (DR) screening is limited. Artificial intelligence has the potential to increase care delivery. Therefore, we trained and evaluated the diagnostic accuracy of a machine learning algorithm for automated detection of DR. Methods: We included color fundus photographs from individuals from 4 databases (primary and specialized care settings), excluding uninterpretable images. The datasets consist of images from Brazilian patients, which differs from previous work. This modification allows for a more tailored application of the model to Brazilian patients, ensuring that the nuances and characteristics of this specific population are adequately captured. The sample was fractionated in training (70%) and testing (30%) samples. A convolutional neural network was trained for image classification. The reference test was the combined decision from three ophthalmologists. The sensitivity, specificity, and area under the ROC curve of the algorithm for detecting referable DR (moderate non-proliferative DR; severe non-proliferative DR; proliferative DR and/or clinically significant macular edema) were estimated. Results: A total of 15,816 images (4590 patients) were included. The overall prevalence of any degree of DR was 26.5%. Compared with human evaluators (manual method of diagnosing DR performed by an ophthalmologist), the deep learning algorithm achieved an area under the ROC curve of 0.98 (95% CI 0.97–0.98), with a specificity of 94.6% (95% CI 93.8–95.3) and a sensitivity of 93.5% (95% CI 92.2–94.9) at the point of greatest efficiency to detect referable DR. Conclusions: A large database showed that this deep learning algorithm was accurate in detecting referable DR. This finding aids to universal healthcare systems like Brazil, optimizing screening processes and can serve as a tool for improving DR screening, making it more agile and expanding care access.en
dc.format.mimetypeapplication/pdfpt_BR
dc.language.isoengpt_BR
dc.relation.ispartofDiabetology & metabolic syndrome. [São Paulo]. Vol. 16 (2024), 209, 9 p.pt_BR
dc.rightsOpen Accessen
dc.subjectDiabetic retinopathyen
dc.subjectRetinopatia diabéticapt_BR
dc.subjectInteligência artificialpt_BR
dc.subjectArtificial intelligenceen
dc.subjectDiabetes mellituspt_BR
dc.subjectTelemedicinapt_BR
dc.subjectBrasilpt_BR
dc.titleAdvancing healthcare with artificial intelligence : diagnostic accuracy of machine learning algorithm in diagnosis of diabetic retinopathy in the Brazilian populationpt_BR
dc.typeArtigo de periódicopt_BR
dc.identifier.nrb001240720pt_BR
dc.description.originTelemedicinapt_BR
dc.type.originNacionalpt_BR


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