X-ray of the lungs and neural networks: classification of pneumonia and COVID-19

L. Parolina (Moscow, Russian Federation), V. Efremtsev (Moscow, Russian Federation), N. Efremtsev (Moscow, Russian Federation), E. Teterin (Moscow, Russian Federation), P. Teterin (Moscow, Russian Federation), E. Bazavluk (Moscow, Russian Federation), N. Doctorova (Moscow, Russian Federation)

Source: Virtual Congress 2021 – Imaging in COVID-19
Session: Imaging in COVID-19
Session type: E-poster
Number: 3247

Congress or journal article abstractE-poster

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L. Parolina (Moscow, Russian Federation), V. Efremtsev (Moscow, Russian Federation), N. Efremtsev (Moscow, Russian Federation), E. Teterin (Moscow, Russian Federation), P. Teterin (Moscow, Russian Federation), E. Bazavluk (Moscow, Russian Federation), N. Doctorova (Moscow, Russian Federation). X-ray of the lungs and neural networks: classification of pneumonia and COVID-19. 3247

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