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A Multi-Organ Nucleus Segmentation Challenge
Neeraj Kumar
*
, Ruchika Verma
, Deepak Anand
, Yanning Zhou
, Omer Fahri Onder
, Efstratios Tsougenis
, Hao Chen
, Pheng Ann Heng
, Jiahui Li
, Zhiqiang Hu
, Yunzhi Wang
, Navid Alemi Koohbanani
, Mostafa Jahanifar
, Neda Zamani Tajeddin
, Ali Gooya
, Nasir Rajpoot
, Xuhua Ren
, Sihang Zhou
, Qian Wang
, Dinggang Shen
Cheng Kun Yang, Chi Hung Weng, Wei Hsiang Yu, Chao Yuan Yeh, Shuang Yang, Shuoyu Xu, Pak Hei Yeung, Peng Sun, Amirreza Mahbod, Gerald Schaefer, Isabella Ellinger, Rupert Ecker, Orjan Smedby, Chunliang Wang, Benjamin Chidester, That Vinh Ton, Minh Triet Tran, Jian Ma, Minh N. Do, Simon Graham, Quoc Dang Vu,
Jin Tae Kwak
, Akshaykumar Gunda, Raviteja Chunduri, Corey Hu, Xiaoyang Zhou, Dariush Lotfi, Reza Safdari, Antanas Kascenas, Alison O'Neil, Dennis Eschweiler, Johannes Stegmaier, Yanping Cui, Baocai Yin, Kailin Chen, Xinmei Tian, Philipp Gruening, Erhardt Barth, Elad Arbel, Itay Remer, Amir Ben-Dor, Ekaterina Sirazitdinova, Matthias Kohl, Stefan Braunewell, Yuexiang Li, Xinpeng Xie, Linlin Shen, Jun Ma, Krishanu Das Baksi, Mohammad Azam Khan, Jaegul Choo, Adrian Colomer, Valery Naranjo, Linmin Pei, Khan M. Iftekharuddin, Kaushiki Roy, Debotosh Bhattacharjee, Anibal Pedraza, Maria Gloria Bueno, Sabarinathan Devanathan, Saravanan Radhakrishnan, Praveen Koduganty, Zihan Wu, Guanyu Cai, Xiaojie Liu, Yuqin Wang, Amit Sethi
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*
Corresponding author for this work
Research output
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peer-review
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Keyphrases
Segmentation Challenge
100%
Nuclei Segmentation
100%
Multi-organ
100%
Training Set
66%
Segmentation Method
66%
Semantic Segmentation
66%
U-Net
66%
Digital Pathology
66%
Popular
33%
Accuracy Improvement
33%
Colour Use
33%
Watershed Segmentation
33%
Post-processing Techniques
33%
Human Annotator
33%
Jaccard Index
33%
MICCAI
33%
Segmentation Map
33%
Fully Convolutional Network
33%
Data Augmentation
33%
Mask R-CNN
33%
Instance Segmentation
33%
Visual Biomarkers
33%
Color Normalization
33%
Computer Science
Annotation
100%
Image Segmentation
100%
Segmentation Technique
100%
Processing Strategy
50%
Postprocessing
50%
Watershed Segmentation
50%
Segmentation Map
50%
Data Augmentation
50%
U-Net
50%
Residual Neural Network
50%
Instance Segmentation
50%
Fully Convolutional Network
50%