A proof of concept for a deep learning system that can aid embryologists in predicting blastocyst survival after thaw
Phil Marsh(University of California, San Francisco), Mitchell P. Rosen(University of California, San Francisco), Z Wang(Stanford University), F. Rabara(University of California, San Francisco), A.Y. Ng(IntraHealth International), Wen Lin(University of California, San Francisco), Matthew P. Lungren(Microsoft (United States)), Amy Kaing(University of California, San Francisco), Rhodel Simbulan(University of California, San Francisco), Salustiano Ribeiro(University of California, San Francisco), Eduardo Hariton(Reproductive Science Center), Utkan Demirci(Stanford University), Dahlia Radif(Stanford University), Anthony M. Rajah(University of California, San Francisco), Pranav Rajpurkar(Harvard University)
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