Deep learning-enabled coronary CT angiography for plaque and stenosis quantification and cardiac risk prediction: an international multicentre study
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D. Dey | S. Achenbach | H. Gransar | P. Slomka | M. Dweck | D. Newby | B. Tamarappoo | S. Nicholls | M. Williams | M. Doris | Y. Otaki | J. Kwiecinski | S. Cadet | E. Tzolos | D. Han | M. Marwan | K. Grodecki | A. Lin | A. Razipour | P. McElhinney | A. Kwan | K. Pieszko | Hidenari Matsumoto | M. Goeller | K. Kuronuma | D. Wong | A. Killekar | A. Shanbhag | N. Manral | Caroline Park | D. Berman | Guadalupe Flores Tomasino | M. Williams | Yuka Otaki
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