TY - JOUR
T1 - SegRap2023
T2 - A benchmark of organs-at-risk and gross tumor volume Segmentation for Radiotherapy Planning of Nasopharyngeal Carcinoma
AU - Luo, Xiangde
AU - Fu, Jia
AU - Zhong, Yunxin
AU - Liu, Shuolin
AU - Han, Bing
AU - Astaraki, Mehdi
AU - Bendazzoli, Simone
AU - Toma-Dasu, Iuliana
AU - Ye, Yiwen
AU - Chen, Ziyang
AU - Xia, Yong
AU - Su, Yanzhou
AU - Ye, Jin
AU - He, Junjun
AU - Xing, Zhaohu
AU - Wang, Hongqiu
AU - Zhu, Lei
AU - Yang, Kaixiang
AU - Fang, Xin
AU - Wang, Zhiwei
AU - Lee, Chan Woong
AU - Park, Sang Joon
AU - Chun, Jaehee
AU - Ulrich, Constantin
AU - Maier-Hein, Klaus H.
AU - Ndipenoch, Nchongmaje
AU - Miron, Alina
AU - Li, Yongmin
AU - Zhang, Yimeng
AU - Chen, Yu
AU - Bai, Lu
AU - Huang, Jinlong
AU - An, Chengyang
AU - Wang, Lisheng
AU - Huang, Kaiwen
AU - Gu, Yunqi
AU - Zhou, Tao
AU - Zhou, Mu
AU - Zhang, Shichuan
AU - Liao, Wenjun
AU - Wang, Guotai
AU - Zhang, Shaoting
N1 - Publisher Copyright:
© 2025 Elsevier B.V.
PY - 2025/4
Y1 - 2025/4
N2 - Radiation therapy is a primary and effective treatment strategy for NasoPharyngeal Carcinoma (NPC). The precise delineation of Gross Tumor Volumes (GTVs) and Organs-At-Risk (OARs) is crucial in radiation treatment, directly impacting patient prognosis. Despite that deep learning has achieved remarkable performance on various medical image segmentation tasks, its performance on OARs and GTVs of NPC is still limited, and high-quality benchmark datasets on this task are highly desirable for model development and evaluation. To alleviate this problem, the SegRap2023 challenge was organized in conjunction with MICCAI2023 and presented a large-scale benchmark for OAR and GTV segmentation with 400 Computed Tomography (CT) scans from 200 NPC patients, each with a pair of pre-aligned non-contrast and contrast-enhanced CT scans. The challenge aimed to segment 45 OARs and 2 GTVs from the paired CT scans per patient, and received 10 and 11 complete submissions for the two tasks, respectively. In this paper, we detail the challenge and analyze the solutions of all participants. The average Dice similarity coefficient scores for all submissions ranged from 76.68% to 86.70%, and 70.42% to 73.44% for OARs and GTVs, respectively. We conclude that the segmentation of relatively large OARs is well-addressed, and more efforts are needed for GTVs and small or thin OARs. The benchmark remains available at: https://segrap2023.grand-challenge.org.
AB - Radiation therapy is a primary and effective treatment strategy for NasoPharyngeal Carcinoma (NPC). The precise delineation of Gross Tumor Volumes (GTVs) and Organs-At-Risk (OARs) is crucial in radiation treatment, directly impacting patient prognosis. Despite that deep learning has achieved remarkable performance on various medical image segmentation tasks, its performance on OARs and GTVs of NPC is still limited, and high-quality benchmark datasets on this task are highly desirable for model development and evaluation. To alleviate this problem, the SegRap2023 challenge was organized in conjunction with MICCAI2023 and presented a large-scale benchmark for OAR and GTV segmentation with 400 Computed Tomography (CT) scans from 200 NPC patients, each with a pair of pre-aligned non-contrast and contrast-enhanced CT scans. The challenge aimed to segment 45 OARs and 2 GTVs from the paired CT scans per patient, and received 10 and 11 complete submissions for the two tasks, respectively. In this paper, we detail the challenge and analyze the solutions of all participants. The average Dice similarity coefficient scores for all submissions ranged from 76.68% to 86.70%, and 70.42% to 73.44% for OARs and GTVs, respectively. We conclude that the segmentation of relatively large OARs is well-addressed, and more efforts are needed for GTVs and small or thin OARs. The benchmark remains available at: https://segrap2023.grand-challenge.org.
KW - Gross tumor volume
KW - Nasopharyngeal carcinoma
KW - Organ-at-risk
KW - Segmentation
UR - http://www.scopus.com/inward/record.url?scp=85213961296&partnerID=8YFLogxK
U2 - 10.1016/j.media.2024.103447
DO - 10.1016/j.media.2024.103447
M3 - 短篇评述
AN - SCOPUS:85213961296
SN - 1361-8415
VL - 101
JO - Medical Image Analysis
JF - Medical Image Analysis
M1 - 103447
ER -