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PanTS: The Pancreatic Tumor Segmentation Dataset

Wenxuan Li
Xinze Zhou
Qi Chen
Tianyu Lin
Pedro R. A. S. Bassi
Szymon Plotka
Jaroslaw B. Cwikla
Xiaoxi Chen
Chen Ye
Zheren Zhu
Kai Ding
Heng Li
Kang Wang
Yang Yang
Yucheng Tang
Daguang Xu
Alan L. Yuille
Zongwei Zhou
Main:9 Pages
7 Figures
Bibliography:6 Pages
3 Tables
Appendix:9 Pages
Abstract

PanTS is a large-scale, multi-institutional dataset curated to advance research in pancreatic CT analysis. It contains 36,390 CT scans from 145 medical centers, with expert-validated, voxel-wise annotations of over 993,000 anatomical structures, covering pancreatic tumors, pancreas head, body, and tail, and 24 surrounding anatomical structures such as vascular/skeletal structures and abdominal/thoracic organs. Each scan includes metadata such as patient age, sex, diagnosis, contrast phase, in-plane spacing, slice thickness, etc. AI models trained on PanTS achieve significantly better performance in pancreatic tumor detection, localization, and segmentation compared to those trained on existing public datasets. Our analysis indicates that these gains are directly attributable to the 16x larger-scale tumor annotations and indirectly supported by the 24 additional surrounding anatomical structures. As the largest and most comprehensive resource of its kind, PanTS offers a new benchmark for developing and evaluating AI models in pancreatic CT analysis.

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@article{li2025_2507.01291,
  title={ PanTS: The Pancreatic Tumor Segmentation Dataset },
  author={ Wenxuan Li and Xinze Zhou and Qi Chen and Tianyu Lin and Pedro R. A. S. Bassi and Szymon Plotka and Jaroslaw B. Cwikla and Xiaoxi Chen and Chen Ye and Zheren Zhu and Kai Ding and Heng Li and Kang Wang and Yang Yang and Yucheng Tang and Daguang Xu and Alan L. Yuille and Zongwei Zhou },
  journal={arXiv preprint arXiv:2507.01291},
  year={ 2025 }
}
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