Deep learning-based classification of kidney transplant pathology: a retrospective, multicentre, proof-of-concept study.
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Jakob Nikolas Kather | P. Boor | G. Corthals | F. Bemelman | A. V. van Zuilen | J. Floege | H. Peters-Sengers | J. Kers | R. D. Bülow | M. Naesens | S. Florquin | J. Roelofs | S. Djudjaj | F. Fontana | S. von Stillfried | G. Breimer | B. Klinkhammer | A. Nurmohamed | David L. Hölscher | T. Pieters | Adeyemi Adefidipe Abiola | Rianne Hofstraat | Tri Q Nguyen | H. Peters-Sengers
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