Arhivă
Revista Română de Informatică și Automatică / Vol. 32, Nr. 3, 2022
COVID-19 diagnosis from chest CT scan images using deep learning
Raghad ALASSIRI, Felwa ABUKHODAIR, Manal KALKATAWI, Khalid KHASHOGGI, Reem ALOTAIBI
Coronavirus disease 2019 (COVID-19) has caused nearly 600 million individual infections worldwide and more than 6 million deaths were reported. With recent advancements in deep learning techniques, there have been significant efforts to detect and diagnose COVID-19 from computerized tomography (CT) scan medical images using deep learning. A retrospective study to detect COVID-19 using deep learning algorithms is conducted in this paper. It aims to improve training results of pre-trained models using transfer learning and data augmentation The performance of different models was measured and the difference in performance with and without using data augmentation was computed. Also, a Convolutional Neural Network (CNN) model was proposed and data augmentation was used to achieve high accuracy ratios. Finally, designed a website that uses the trained models where doctors can upload CT scan images and get COVID-19 classification (https://covid-e46e8.web.app/) was designed. The highest results from pre-trained models without using data augmentation were for DenseNet121, which was equal to 81.4%, and the highest accuracy after using the data augmentation was for MobileNet, which was equal to 83.4%. The rate of accuracy improvement percentage after using data augmentation was about 3%. The conclusion was that data augmentation could improve the accuracy of COVID-19 detection models as it increases the number of samples used to train these models.
Cuvinte cheie:
COVID-19, deep learning models, CT scan, data augmentation, transfer learning.
Vizualizează articolul complet:
CITAREA ACESTUI ARTICOL SUNT URMĂTOARELE:
Raghad ALASSIRI,
Felwa ABUKHODAIR,
Manal KALKATAWI,
Khalid KHASHOGGI,
Reem ALOTAIBI,
„COVID-19 diagnosis from chest CT scan images using deep learning”,
Revista Română de Informatică și Automatică,
ISSN 1220-1758,
vol. 32(3),
pp. 65-72,
2022.
https://doi.org/10.33436/v32i3y202205