Machine learning automatically detects COVID-19 using chest CTs in a large multicenter cohort
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Dorin Comaniciu | Thomas Flohr | Sasa Grbic | Bogdan Georgescu | Pina Sanelli | Shikha Chaganti | Savvas Nicolaou | Guillaume Chabin | Nakul Gupta | Valentin Ziebandt | Eduardo J. Mortani Barbosa | Gorka Bastarrika Aleman | Jordi Broncano Cabrero | Philippe Grenier | François Mellot | Thomas Re | Alexander W. Sauter | Youngjin Yoo | Thomas J. Re | P. Grenier | D. Comaniciu | T. Flohr | S. Nicolaou | B. Georgescu | A. Sauter | Y. Yoo | S. Chaganti | G. Chabin | Sasa Grbic | F. Mellot | P. Sanelli | Valentin Ziebandt | E. M. Mortani Barbosa | Nakul Gupta | G. Alemañ
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