A self-supervised vision transformer to predict survival from histopathology in renal cell carcinoma
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J. Utikal | C. von Kalle | S. Fröhling | T. Brinker | Max Schmitt | T. Worst | M. Kriegmair | P. Nuhn | T. Gaiser | Z. Popovic | E. Krieghoff-Henning | K. Kowalewski | F. Wessels | F. Waldbillig | M. Neuberger | Matthias Steeg | M. Michel | Malin Nientiedt
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