Self-supervised attention-based deep learning for pan-cancer mutation prediction from histopathology
Oliver Lester Saldanha(University Hospital Carl Gustav Carus), Jakob Nikolas Kather(German Cancer Research Center), Alexander T. Pearson(University of Chicago), Marko van Treeck(University Hospital Carl Gustav Carus), Jan Niehues(University of Zurich), Tobias Paul Seraphin(Düsseldorf University Hospital), Didem Çifçi(University Hospital Carl Gustav Carus), Siddhi Ramesh(University of Chicago), Gregory Patrick Veldhuizen(Fresenius (Germany)), Chiara Maria Lavinia Loeffler(RWTH Aachen University), Katherine Hewitt(University Hospital Carl Gustav Carus)
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