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This article is cited in 7 scientific papers (total in 7 papers)
NUMERICAL METHODS AND DATA ANALYSIS
Chest X-ray image classification for viral pneumonia and Сovid-19 using neural networks
V. G. Efremtseva, N. G. Efremtseva, E. P. Teterinb, P. E. Teterinc, E. S. Bazavluka a Independent researcher
b Kovrov State Technological Academy named after V.A.Degtyarev, Kovrov, Vladimir region, Russia
c National Research Nuclear University "MEPhI", Moscow, Russia
Abstract:
The use of neural networks to detect differences in radiographic images of patients with pneu-monia and COVID-19 is demonstrated. For the optimal selection of resize and neural network ar-chitecture parameters, hyperparameters, and adaptive image brightness adjustment, precision, recall, and f1-score metrics are used. The high values of these metrics of classification quality (> 0.91) strongly indicate a reliable difference between radiographic images of patients with pneumonia and patients with COVID-19, which opens up the possibility of creating a model with good predictive ability without involving ready-to-use complex models and without pre-training on third-party data, which is promising for the development of sensitive and reliable COVID-19 express-diagnostic methods.
Keywords:
обработка рентгенографических изображений, сверточная нейронная сеть, классификация, COVID-19.
Received: 13.06.2020 Accepted: 09.12.2020
Citation:
V. G. Efremtsev, N. G. Efremtsev, E. P. Teterin, P. E. Teterin, E. S. Bazavluk, “Chest X-ray image classification for viral pneumonia and Сovid-19 using neural networks”, Computer Optics, 45:1 (2021), 149–153
Linking options:
https://www.mathnet.ru/eng/co891 https://www.mathnet.ru/eng/co/v45/i1/p149
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