Abstract 2105: HE2RNA: A deep learning model for transcriptomic learning from digital pathology
Elodie Pronier, Gilles Wainrib(Larkin University), Charlie Saillard(Laboratoire Procédés et Ingénierie en Mécanique et Matériaux), Pierre Courtiol, Mikhail Zaslavskiy, Sylvain Toldo, Meriem Sefta, Matahi Moarii, Thomas Clozel(NewYork–Presbyterian Hospital), Julien Caldéraro(Inserm), Benoît Schmauch(Owl Research Institute), Pascale Maillé(Inserm), Alberto Romagnoni
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