Automated Detection and Segmentation of Brain Metastases in Malignant Melanoma: Evaluation of a Dedicated Deep Learning Model
Lenhard Pennig(University of Cologne), Kai Roman Laukamp(University of Cologne), Gina Fürtjes(University of Cologne), Michael Perkuhn(University of Cologne), Jan Borggrefe(University Hospital Cologne), Frank Thiele(University of Cologne), Simon Lennartz(L-3 Communications (United States)), Lukas Goertz(University of Cologne), Rahil Shahzad(University of Cologne), David Zopfs(L-3 Communications (United States)), Anna-Katharina Meißner(University of Cologne), Christoph Kabbasch(Society of Interventional Radiology), Liliana Caldeira(L-3 Communications (United States)), Stefan Grau(University of Cologne)
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