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SegRap2025: A benchmark of gross tumor volume and lymph node clinical target volume Segmentation for Radiotherapy Planning of nasopharyngeal carcinoma

  • Jia Fu
  • , Litingyu Wang
  • , He Li
  • , Zihao Luo
  • , Huamin Wang
  • , Chenyuan Bian
  • , Zijun Gao
  • , Chunbin Gu
  • , Xin Weng
  • , Jianghao Wu
  • , Yicheng Wu
  • , Jin Ye
  • , Linhao Li
  • , Yiwen Ye
  • , Yong Xia
  • , Elias Tappeiner
  • , Fei He
  • , Abdul Qayyum
  • , Moona Mazher
  • , Steven A. Niederer
  • Junqiang Chen, Chuanyi Huang, Lisheng Wang, Zhaohu Xing, Hongqiu Wang, Lei Zhu, Shichuan Zhang, Shaoting Zhang, Wenjun Liao, Guotai Wang
  • University of Electronic Science and Technology of China
  • Shanghai Artificial Intelligence Laboratory
  • Qingdao University
  • Chinese University of Hong Kong
  • Bank of China
  • Monash University
  • Imperial College London
  • Northwestern Polytechnical University Xian
  • UMIT TIROL - Private University for Health Sciences and Health Technology
  • University College London
  • Ltd.
  • Shanghai Jiao Tong University
  • The Hong Kong University of Science and Technology (Guangzhou)

科研成果: 期刊稿件短篇评述同行评审

摘要

Accurate delineation of Gross Tumor Volume (GTV), Lymph Node Clinical Target Volume (LN CTV), and Organ-at-Risk (OAR) from Computed Tomography (CT) scans is essential for precise radiotherapy planning in Nasopharyngeal Carcinoma (NPC). Building upon SegRap2023, which focused on OAR and GTV segmentation using single-center paired non-contrast CT (ncCT) and contrast-enhanced CT (ceCT) scans, the SegRap2025 challenge aims to enhance the generalizability and robustness of segmentation models across imaging centers and modalities. SegRap2025 comprises two tasks: Task01 addresses GTV segmentation using paired CT from the SegRap2023 dataset, with an additional external testing set to evaluate cross-center generalization, and Task02 focuses on LN CTV segmentation using multi-center training data and an unseen external testing set, where each case contains paired CT scans or a single modality, emphasizing both cross-center and cross-modality robustness. This paper presents the challenge setup and provides a comprehensive analysis of the solutions submitted by ten participating teams. For GTV segmentation task, the top-performing models achieved average Dice Similarity Coefficient (DSC) of 74.61% and 56.79% on the internal and external testing cohorts, respectively. For LN CTV segmentation task, the highest average DSC values reached 60.24%, 60.50%, and 57.23% on paired CT, ceCT-only, and ncCT-only subsets, respectively. SegRap2025 establishes a large-scale multi-center, multi-modality benchmark for evaluating the generalization and robustness in radiotherapy target segmentation, providing valuable insights toward clinically applicable automated radiotherapy planning systems. The benchmark is available at: https://hilab-git.github.io/SegRap2025_Challenge .

源语言英语
文章编号104121
期刊Medical Image Analysis
112
DOI
出版状态已出版 - 7月 2026

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