Mitosis Detection in the Wild: Multi-Tumor and Context-Aware Generalization in the MIDOG 2025 Challenge
Marc Aubreville(Flensburg University of Applied Sciences), Vangala Govindakrishnan Saipradeep, Christian Marzahl, Yosuke Yamagishi, Guillaume Balezo, Dev Kumar Das, Sujatha Kotte, Piotr Giedziun, Andrew Broad, Norbert Ropiak, 배유안, Shan E Ahmed Raza(Institute of Cancer Research), Seungho Choe, Francesco Tortorella, Taryn Donovan, Vidushi Walia, Mostafa Jahanifar, Gennaro Percannella, Mattia Sarno, Shouhei Hanaoka, Esha Sadia Nasir, Biwen Meng, Mieko Ochi(Kanagawa Prefectural Hospital Organization), Charles‐Antoine Collins‐Fekete(University College London), Raphaël Bourgade(Inserm), Yasemin Topuz, Sudeep Banerjee, Zhuoyan Shen, Viktoria Weiss, Brian Napora, Lavish Ramchandani, Navya Sri Kelam, Nitin Singhal, Tengyou Xu, Daniel Hieber, Sara Krauss, Songül Varlı, Jonas Ammeling, Jingxin Liu, Jie Xiao, Izabela Wasiak, Shaojun Liu, Thomas Walter, Hongyan Gu, Jiaqi Lv, Alex Wright, Mateusz Maniewski, Mario Vento, Robert Klopfleisch, April Khademi
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