Use Case Evaluation and Digital Workflow of Breast Cancer Care by Artificial Intelligence and Blockchain Technology Application
Sebastian Griewing(Philipps University of Marburg), Niklas Gremke(Philipps University of Marburg), Uwe Wagner(Philipps University of Marburg), Michael Lingenfelder(Philipps University of Marburg)
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