COVIDGR dataset and COVID-SDNet methodology for predicting COVID-19 based on Chest X-Ray images

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...

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Hauptverfasser: Tabik, S, Gómez-Ríos, A, Martín-Rodríguez, J L, Sevillano-García, I, Rey-Area, M, Charte, D, Guirado, E, Suárez, J L, Luengo, J, Valero-González, M A, García-Villanova, P, Olmedo-Sánchez, E, Herrera, F
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creator Tabik, S
Gómez-Ríos, A
Martín-Rodríguez, J L
Sevillano-García, I
Rey-Area, M
Charte, D
Guirado, E
Suárez, J L
Luengo, J
Valero-González, M A
García-Villanova, P
Olmedo-Sánchez, E
Herrera, F
description 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 paper is three-fold: (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 levels of 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 \(97.72\% \pm 0.95 \%\), \(86.90\% \pm 3.20\%\), \(61.80\% \pm 5.49\%\) in severe, moderate and mild COVID-19 severity levels (Paper accepted for publication in Journal of Biomedical and Health Informatics). 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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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 paper is three-fold: (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 levels of 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 \(97.72\% \pm 0.95 \%\), \(86.90\% \pm 3.20\%\), \(61.80\% \pm 5.49\%\) in severe, moderate and mild COVID-19 severity levels (Paper accepted for publication in Journal of Biomedical and Health Informatics). Our approach could help in the early detection of COVID-19. 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subjects Chest
Classification
Computed tomography
Coronaviruses
COVID-19
Datasets
Health care facilities
Infectious diseases
Machine learning
Medical imaging
Neural networks
Scanners
Viral diseases
title COVIDGR dataset and COVID-SDNet methodology for predicting COVID-19 based on Chest X-Ray images
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