Objective assessment of stored blood quality by deep learning
Minh Doan(GlaxoSmithKline (United States)), Anne E. Carpenter(Broad Institute), Michael C. Kolios(St. Michael's Hospital), Juan Carlos Caicedo(Broad Institute), Ruben N. Pinto(St. Michael's Hospital), Stefanie Siegert(University of Lausanne), Tracey R. Turner(Canadian Blood Services), Holger Hennig(Broad Institute), Shantanu Singh(Broad Institute), Joseph A. Sebastian(St. Michael's Hospital), Jason P. Acker(University of Alberta), Aline Roch(University of Geneva), Paul Rees(Royal Botanic Gardens, Kew), Anne Wilson(University of Lausanne), Olga Mykhailova(Canadian Blood Services), Allen Goodman(Broad Institute), Claire McQuin(Broad Institute), Michael Parsons(Ontario Institute for Cancer Research), Olaf Wolkenhauer(Stellenbosch University)
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