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Main Authors: Bahcekapili, Alper, Arslan, Duygu, Ozdemir, Umut, Ozkirli, Berkay, Akbas, Emre, Acar, Ahmet, Akar, Gozde B., He, Bingdou, Xu, Shuoyu, Caglar, Umit Mert, Temizel, Alptekin, Picaud, Guillaume, Chaumont, Marc, Subsol, Gérard, Téot, Luc, Alsharekh, Fahad, Alghannam, Shahad, Mao, Hexiang, Zhang, Wenhua
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.04681
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author Bahcekapili, Alper
Arslan, Duygu
Ozdemir, Umut
Ozkirli, Berkay
Akbas, Emre
Acar, Ahmet
Akar, Gozde B.
He, Bingdou
Xu, Shuoyu
Caglar, Umit Mert
Temizel, Alptekin
Picaud, Guillaume
Chaumont, Marc
Subsol, Gérard
Téot, Luc
Alsharekh, Fahad
Alghannam, Shahad
Mao, Hexiang
Zhang, Wenhua
author_facet Bahcekapili, Alper
Arslan, Duygu
Ozdemir, Umut
Ozkirli, Berkay
Akbas, Emre
Acar, Ahmet
Akar, Gozde B.
He, Bingdou
Xu, Shuoyu
Caglar, Umit Mert
Temizel, Alptekin
Picaud, Guillaume
Chaumont, Marc
Subsol, Gérard
Téot, Luc
Alsharekh, Fahad
Alghannam, Shahad
Mao, Hexiang
Zhang, Wenhua
contents Colorectal cancer (CRC) is the third most diagnosed cancer and the second leading cause of cancer-related death worldwide. Accurate histopathological grading of CRC is essential for prognosis and treatment planning but remains a subjective process prone to observer variability and limited by global shortages of trained pathologists. To promote automated and standardized solutions, we organized the ICIP Grand Challenge on Colorectal Cancer Tumor Grading and Segmentation using the publicly available METU CCTGS dataset. The dataset comprises 103 whole-slide images with expert pixel-level annotations for five tissue classes. Participants submitted segmentation masks via Codalab, evaluated using metrics such as macro F-score and mIoU. Among 39 participating teams, six outperformed the Swin Transformer baseline (62.92 F-score). This paper presents an overview of the challenge, dataset, and the top-performing methods
format Preprint
id arxiv_https___arxiv_org_abs_2507_04681
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Colorectal Cancer Tumor Grade Segmentation in Digital Histopathology Images: From Giga to Mini Challenge
Bahcekapili, Alper
Arslan, Duygu
Ozdemir, Umut
Ozkirli, Berkay
Akbas, Emre
Acar, Ahmet
Akar, Gozde B.
He, Bingdou
Xu, Shuoyu
Caglar, Umit Mert
Temizel, Alptekin
Picaud, Guillaume
Chaumont, Marc
Subsol, Gérard
Téot, Luc
Alsharekh, Fahad
Alghannam, Shahad
Mao, Hexiang
Zhang, Wenhua
Computer Vision and Pattern Recognition
Colorectal cancer (CRC) is the third most diagnosed cancer and the second leading cause of cancer-related death worldwide. Accurate histopathological grading of CRC is essential for prognosis and treatment planning but remains a subjective process prone to observer variability and limited by global shortages of trained pathologists. To promote automated and standardized solutions, we organized the ICIP Grand Challenge on Colorectal Cancer Tumor Grading and Segmentation using the publicly available METU CCTGS dataset. The dataset comprises 103 whole-slide images with expert pixel-level annotations for five tissue classes. Participants submitted segmentation masks via Codalab, evaluated using metrics such as macro F-score and mIoU. Among 39 participating teams, six outperformed the Swin Transformer baseline (62.92 F-score). This paper presents an overview of the challenge, dataset, and the top-performing methods
title Colorectal Cancer Tumor Grade Segmentation in Digital Histopathology Images: From Giga to Mini Challenge
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.04681