Articles producció científica> Medicina i Cirurgia

Artificial Intelligence-Based Screening System for Diabetic Retinopathy in Primary Care

  • Identification data

    Identifier: imarina:9380949
    Authors:
    Baget-Bernaldiz, MarcFontoba-Poveda, BenildeRomero-Aroca, PedroNavarro-Gil, RaulHernando-Comerma, AdrianaBautista-Perez, AngelLlagostera-Serra, MonicaMorente-Lorenzo, CristianVizcarro, MontseMira-Puerto, Alejandra
    Abstract:
    Background: This study aimed to test an artificial intelligence-based reading system (AIRS) capable of reading retinographies of type 2 diabetic (T2DM) patients and a predictive algorithm (DRPA) that predicts the risk of each patient with T2DM of developing diabetic retinopathy (DR). Methods: We tested the ability of the AIRS to read and classify 15,297 retinal photographs from our database of diabetics and 1200 retinal images taken with Messidor-2 into the different DR categories. We tested the DRPA in a sample of 40,129 T2DM patients. The results obtained by the AIRS and the DRPA were then compared with those provided by four retina specialists regarding sensitivity (S), specificity (SP), positive predictive value (PPV), negative predictive value (NPV), accuracy (ACC), and area under the curve (AUC). Results: The results of testing the AIRS for identifying referral DR (RDR) in our database were ACC = 98.6, S = 96.7, SP = 99.8, PPV = 99.0, NPV = 98.0, and AUC = 0.958, and in Messidor-2 were ACC = 96.78%, S = 94.64%, SP = 99.14%, PPV = 90.54%, NPV = 99.53%, and AUC = 0.918. The results of our DRPA when predicting the presence of any type of DR were ACC = 0.97, S = 0.89, SP = 0.98, PPV = 0.79, NPV = 0.98, and AUC = 0.92. Conclusions: The AIRS performed well when reading and classifying the retinographies of T2DM patients with RDR. The DRPA performed well in predicting the absence of DR based on some clinical variables.
  • Others:

    Author, as appears in the article.: Baget-Bernaldiz, Marc; Fontoba-Poveda, Benilde; Romero-Aroca, Pedro; Navarro-Gil, Raul; Hernando-Comerma, Adriana; Bautista-Perez, Angel; Llagostera-Serra, Monica; Morente-Lorenzo, Cristian; Vizcarro, Montse; Mira-Puerto, Alejandra
    Department: Medicina i Cirurgia
    URV's Author/s: Baget Bernaldiz, Marc / Llagostera Serra, Mònica / Mira Puerto, Alejandra / Navarro Gil, Raúl / Romero Aroca, Pedro
    Keywords: Validation Technology Risk-assessment Primary care Primary car Prevalence Optimization Model Guideline Frequency Diabetic retinopathy screening Diabetic retinopathy Cost-effectiveness Artificial intelligence Algorithm
    Abstract: Background: This study aimed to test an artificial intelligence-based reading system (AIRS) capable of reading retinographies of type 2 diabetic (T2DM) patients and a predictive algorithm (DRPA) that predicts the risk of each patient with T2DM of developing diabetic retinopathy (DR). Methods: We tested the ability of the AIRS to read and classify 15,297 retinal photographs from our database of diabetics and 1200 retinal images taken with Messidor-2 into the different DR categories. We tested the DRPA in a sample of 40,129 T2DM patients. The results obtained by the AIRS and the DRPA were then compared with those provided by four retina specialists regarding sensitivity (S), specificity (SP), positive predictive value (PPV), negative predictive value (NPV), accuracy (ACC), and area under the curve (AUC). Results: The results of testing the AIRS for identifying referral DR (RDR) in our database were ACC = 98.6, S = 96.7, SP = 99.8, PPV = 99.0, NPV = 98.0, and AUC = 0.958, and in Messidor-2 were ACC = 96.78%, S = 94.64%, SP = 99.14%, PPV = 90.54%, NPV = 99.53%, and AUC = 0.918. The results of our DRPA when predicting the presence of any type of DR were ACC = 0.97, S = 0.89, SP = 0.98, PPV = 0.79, NPV = 0.98, and AUC = 0.92. Conclusions: The AIRS performed well when reading and classifying the retinographies of T2DM patients with RDR. The DRPA performed well in predicting the absence of DR based on some clinical variables.
    Thematic Areas: Medicine, general & internal Internal medicine Clinical biochemistry
    licence for use: https://creativecommons.org/licenses/by/3.0/es/
    Author's mail: monica.llagostera@urv.cat marc.baget@urv.cat alejandra.mira@urv.cat alejandra.mira@urv.cat raul.navarrog@estudiants.urv.cat pedro.romero@urv.cat
    Author identifier: 0000-0001-8548-0290 0000-0001-8548-0290 0000-0003-2970-205X 0000-0002-7061-8987
    Record's date: 2025-02-18
    Paper version: info:eu-repo/semantics/publishedVersion
    Paper original source: Diagnostics. 14 (17): 1992-
    APA: Baget-Bernaldiz, Marc; Fontoba-Poveda, Benilde; Romero-Aroca, Pedro; Navarro-Gil, Raul; Hernando-Comerma, Adriana; Bautista-Perez, Angel; Llagostera-S (2024). Artificial Intelligence-Based Screening System for Diabetic Retinopathy in Primary Care. Diagnostics, 14(17), 1992-. DOI: 10.3390/diagnostics14171992
    Licence document URL: https://repositori.urv.cat/ca/proteccio-de-dades/
    Entity: Universitat Rovira i Virgili
    Journal publication year: 2024
    Publication Type: Journal Publications
  • Keywords:

    Clinical Biochemistry,Medicine, General & Internal
    Validation
    Technology
    Risk-assessment
    Primary care
    Primary car
    Prevalence
    Optimization
    Model
    Guideline
    Frequency
    Diabetic retinopathy screening
    Diabetic retinopathy
    Cost-effectiveness
    Artificial intelligence
    Algorithm
    Medicine, general & internal
    Internal medicine
    Clinical biochemistry
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