COVIDetect: A Desktop Application as a Diagnostic Tool for Novel Coronavirus (COVID-19) Pneumonia in Chest X-ray Images Using Convolutional Neural Network

The COVID-19 pandemic has heavily affected the well-being of people worldwide. Current diagnostic tools, like the RT-PCR, are expensive and time-consuming; thus, there is a need for cheaper and faster means of COVID-19 detection. This study proposes using a desktop application with a convolutional n...

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Main Authors: Arellano, Vincent A., Tolentino, Michael Angelo C.
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Published: Animo Repository 2021
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Online Access:https://animorepository.dlsu.edu.ph/conf_shsrescon/2021/paper_csr/6
https://animorepository.dlsu.edu.ph/context/conf_shsrescon/article/1654/viewcontent/CSTR_COVIDetect_A_Desktop_Application_as_a_Diagnostic_Tool_for_Novel.pdf
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Institution: De La Salle University
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spelling oai:animorepository.dlsu.edu.ph:conf_shsrescon-16542023-08-23T09:52:45Z COVIDetect: A Desktop Application as a Diagnostic Tool for Novel Coronavirus (COVID-19) Pneumonia in Chest X-ray Images Using Convolutional Neural Network Arellano, Vincent A. Tolentino, Michael Angelo C. The COVID-19 pandemic has heavily affected the well-being of people worldwide. Current diagnostic tools, like the RT-PCR, are expensive and time-consuming; thus, there is a need for cheaper and faster means of COVID-19 detection. This study proposes using a desktop application with a convolutional neural network (CNN) and visual analysis as a supplementary diagnostic tool for detecting COVID-19 pneumonia in chest X-ray images. The CNN used is a sequential Keras model that was trained and tested through eight epochs using an augmented dataset. Random data augmentation techniques applied were rotation and horizontal flipping, which increased the total images used to 13,584. Visual analysis was created using the Grad-CAM algorithm to determine patterns in chest X-ray images. These were implemented in a desktop application and evaluated by a professional pulmonologist. Results showed that the CNN achieved an average accuracy rate of 97.96% among the three classes, which was superior among related studies. The CNN also achieved a precision, recall, and F1-score of 99.67%, 99.62%, and 99.64% respectively for COVID-19 pneumonia, 99.26%, 94.83%, and 96.99% respectively for viral pneumonia, and 95.12%, 99.42%, and 97.22% respectively for normal chest X-ray images. Meanwhile, the visual analysis was also accurate, as evaluated by a professional pulmonologist, where patterns of haziness were determined. Hence, this could serve as an effective supplementary diagnostic tool for healthcare professionals for faster and more accurate diagnosis of COVID-19 and viral pneumonia patients. 2021-04-29T20:00:00Z text application/pdf https://animorepository.dlsu.edu.ph/conf_shsrescon/2021/paper_csr/6 https://animorepository.dlsu.edu.ph/context/conf_shsrescon/article/1654/viewcontent/CSTR_COVIDetect_A_Desktop_Application_as_a_Diagnostic_Tool_for_Novel.pdf DLSU Senior High School Research Congress Animo Repository COVID-19 pneumonia convolutional neural network chest x-ray image desktop application Grad-CAM
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic COVID-19
pneumonia
convolutional neural network
chest x-ray image
desktop application
Grad-CAM
spellingShingle COVID-19
pneumonia
convolutional neural network
chest x-ray image
desktop application
Grad-CAM
Arellano, Vincent A.
Tolentino, Michael Angelo C.
COVIDetect: A Desktop Application as a Diagnostic Tool for Novel Coronavirus (COVID-19) Pneumonia in Chest X-ray Images Using Convolutional Neural Network
description The COVID-19 pandemic has heavily affected the well-being of people worldwide. Current diagnostic tools, like the RT-PCR, are expensive and time-consuming; thus, there is a need for cheaper and faster means of COVID-19 detection. This study proposes using a desktop application with a convolutional neural network (CNN) and visual analysis as a supplementary diagnostic tool for detecting COVID-19 pneumonia in chest X-ray images. The CNN used is a sequential Keras model that was trained and tested through eight epochs using an augmented dataset. Random data augmentation techniques applied were rotation and horizontal flipping, which increased the total images used to 13,584. Visual analysis was created using the Grad-CAM algorithm to determine patterns in chest X-ray images. These were implemented in a desktop application and evaluated by a professional pulmonologist. Results showed that the CNN achieved an average accuracy rate of 97.96% among the three classes, which was superior among related studies. The CNN also achieved a precision, recall, and F1-score of 99.67%, 99.62%, and 99.64% respectively for COVID-19 pneumonia, 99.26%, 94.83%, and 96.99% respectively for viral pneumonia, and 95.12%, 99.42%, and 97.22% respectively for normal chest X-ray images. Meanwhile, the visual analysis was also accurate, as evaluated by a professional pulmonologist, where patterns of haziness were determined. Hence, this could serve as an effective supplementary diagnostic tool for healthcare professionals for faster and more accurate diagnosis of COVID-19 and viral pneumonia patients.
format text
author Arellano, Vincent A.
Tolentino, Michael Angelo C.
author_facet Arellano, Vincent A.
Tolentino, Michael Angelo C.
author_sort Arellano, Vincent A.
title COVIDetect: A Desktop Application as a Diagnostic Tool for Novel Coronavirus (COVID-19) Pneumonia in Chest X-ray Images Using Convolutional Neural Network
title_short COVIDetect: A Desktop Application as a Diagnostic Tool for Novel Coronavirus (COVID-19) Pneumonia in Chest X-ray Images Using Convolutional Neural Network
title_full COVIDetect: A Desktop Application as a Diagnostic Tool for Novel Coronavirus (COVID-19) Pneumonia in Chest X-ray Images Using Convolutional Neural Network
title_fullStr COVIDetect: A Desktop Application as a Diagnostic Tool for Novel Coronavirus (COVID-19) Pneumonia in Chest X-ray Images Using Convolutional Neural Network
title_full_unstemmed COVIDetect: A Desktop Application as a Diagnostic Tool for Novel Coronavirus (COVID-19) Pneumonia in Chest X-ray Images Using Convolutional Neural Network
title_sort covidetect: a desktop application as a diagnostic tool for novel coronavirus (covid-19) pneumonia in chest x-ray images using convolutional neural network
publisher Animo Repository
publishDate 2021
url https://animorepository.dlsu.edu.ph/conf_shsrescon/2021/paper_csr/6
https://animorepository.dlsu.edu.ph/context/conf_shsrescon/article/1654/viewcontent/CSTR_COVIDetect_A_Desktop_Application_as_a_Diagnostic_Tool_for_Novel.pdf
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