Deep learning detects genetic alterations in cancer histology generated by adversarial networks
Jeremias Krause(RWTH Aachen University), Jakob Nikolas Kather(Heidelberg University), Christian Trautwein(TUM Klinikum), Heike I. Grabsch(University of Leeds), Amelie Echle(RWTH Aachen University), Alexander T. Pearson(University of Chicago), Kelly Offermans(Maastricht University), Michael Jendrusch(Heidelberg University), Peter Boor(RWTH Aachen University), Philip Quirke(University of Leeds), Josien C.A. Jenniskens(Maastricht University), Matthias Kloor(Heidelberg University), Titus J. Brinker(German Cancer Research Center), Tom Luedde(Heinrich Heine University Düsseldorf), Roman D. Buelow(RWTH Aachen University), Piet A. van den Brandt(Netherlands Comprehensive Cancer Organisation)
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