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COVIDGR Dataset and COVID-SDNet Methodology for Predicting COVID-19 Based on Chest X-Ray Images

[PDF] COVIDGR_Dataset_and_COVID-SDNet_Methodology_for_Predicting_COVID-19_Based_on_Chest_X-Ray_Images.pdf (4.090Mb)
Identificadores
URI: https://hdl.handle.net/10481/101122
DOI: 10.1109/JBHI.2020.3037127
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Autor
Tabik, Siham; Gómez Ríos, Anabel; Martín Rodríguez, José Luis; Sevillano García, Iván; Charte Luque, Francisco David; Guirado, Emilio; Suárez, Juan Luis; Luengo Martín, Julián; García-Villanova, P; Olmedo-Sánchez, E.
Editorial
IEEE
Materia
Deep learning
 
Covid-19
 
Smart Data
 
convolutional neural network
 
Fecha
2020-11-10
Referencia bibliográfica
IEEE Journal of Biomedical and Health Informatics Volume: 24, Issue: 12,
Resumen
Currently, Coronavirus disease (COVID-19), one of the most infectious diseases in the 21st century, is diagnosed using RT-PCR testing, CT scans and/or Chest X-Ray (CXR) images. CT (Computed Tomography) scanners and RT-PCR testing are not available in most medical centers and hence in many cases CXR images become the most time/cost effective tool for assisting clinicians in making decisions. Deep learning neural networks have a great potential for building COVID-19 triage systems and detecting COVID-19 patients, especially patients with low severity. Unfortunately, current databases do not allow building such systems as they are highly heterogeneous and biased towards severe cases. This article is threefold: (i) we demystify the high sensitivities achieved by most recent COVID-19 classification models, (ii) under a close collaboration with Hospital Universitario Clínico San Cecilio, Granada, Spain, we built COVIDGR-1.0, a homogeneous and balanced database that includes all levelsof severity, from normal with Positive RT-PCR, Mild, Moderate to Severe. COVIDGR-1.0 contains 426 positive and 426 negative PA (PosteroAnterior) CXR views and (iii) we propose COVID Smart Data based Network (COVID-SDNet) methodology for improving the generalization capacity of COVID-classification models. Our approach reaches good and stable results with an accuracy of 97.72% ± 0.95%, 86.90% ± 3.20%, 61.80% ± 5.49% in severe, moderate and mild COVID-19 severity levels. Our approach could help in the early detection of COVID-19. COVIDGR-1.0 along with the severity level labels are available to the scientific community through this link https://dasci.es/es/transferencia/ open-data/covidgr/.
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