Deep learning-based Subtyping of Atypical and Normal Mitoses using a Hierarchical Anchor-Free Object Detector
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C. Bertram | K. Breininger | M. Aubreville | T. Donovan | Jonathan Ganz | Jonas Ammeling | R. Fick | Katharina Breininger | J. Ganz | J. Ammeling
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