Performance of a deep learning algorithm for the evaluation of CAD-RADS classification with CCTA.
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D. Andreini | G. Pontone | L. Saba | L. Fusini | C. D. De Cecco | G. Muscogiuri | A. Guaricci | M. Pepi | G. Colombo | A. Baggiano | M. Guglielmo | M. Gatti | M. Rabbat | M. Chiesa | F. Baessato | A. Cavaliere | G. Cicala | S. Dell'Aversana | A. Loffreno | V. Palmisano | G. Rizzon | Michela Trotta
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