Tackling stain variability using CycleGAN-based stain augmentation

Journal of Pathology Informatics - Tập 13 - Trang 100140 - 2022
Nassim Bouteldja1, David L. Hölscher1, Roman D. Bülow1, Ian S.D. Roberts2, Rosanna Coppo3,4, Peter Boor1,5
1Institute of Pathology, RWTH Aachen University Hospital, Aachen, Germany
2Department of Cellular Pathology, Oxford University Hospitals National Health Service Foundation Trust, Oxford, United Kingdom
3Fondazione Ricerca Molinette, Torino, Italy
4Regina Margherita Children’s University Hospital, Torino, Italy
5Department of Nephrology and Immunology, RWTH Aachen University Hospital, Aachen, Germany

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