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The role of artificial intelligence in advancing population-based cancer registration
0
Zitationen
35
Autoren
2026
Jahr
Abstract
Cancer has become the second leading cause of death, the global cancer burden is rapidly increasing, and there are marked disparities between and within countries worldwide. Population-based cancer registries systematically collect data on cancer patients in defined populations, which play a crucial role in planning and assessing cancer prevention and control strategies. While the development of cancer registration has been marked by increasing standardization of definitions and methods and the electronic processing of data, the advent of artificial intelligence (AI) offers opportunities to further reduce the labor-intensive nature of registry operations, particularly where registry resources are scarce. These include enabling the processing of large datasets, extracting complex or unstructured data patterns to support cancer registration data abstraction, and facilitating data quality and control. The analysis and dissemination of registry data are also increasingly integrating AI methodologies. This paper provides a comprehensive overview of the application of AI in cancer registration. We investigate the challenges associated with integrating AI into existing cancer registry structures, with a particular emphasis on network and computational constraints, uneven resource allocation, and potential biases and limitations within AI systems. We propose a forward-looking AI-enhanced framework for cancer registration, highlighting AI's potential to optimize efficiency in cancer registration and the use of registry data for cancer control and cancer research.
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Autoren
- Shuai Ding
- Mingyuan Liu
- Hao Wang
- Cheng Song
- Luyue Zhao
- Zhihao Yang
- Yue Wang
- Yifan Wang
- Haitao Cui
- Zihao Liu
- Dongrun Liu
- Tomohiro Matsuda
- Megumi Hori
- Dimitris Katsimpokis
- Gijs Geleijnse
- Xavier Farré
- David Morrison
- Yaogang Wang
- Siwei Zhang
- Meicen Liu
- Qiushuo Geng
- Ling Ni
- Kexin Sun
- Bingfeng Han
- Shaoming Wang
- Ru Chen
- Li Li
- Hiromi Sugiyama
- Yun‐Sik Dho
- Yongyue Wei
- Wanqing Chen
- Isabelle Soerjomataram
- Freddie Bray
- Hongmei Zeng
- Jie He
Institutionen
- Hefei University(CN)
- Hefei University of Technology(CN)
- Chinese Academy of Medical Sciences & Peking Union Medical College(CN)
- Tianjin University of Traditional Chinese Medicine(CN)
- Peking University(CN)
- Tianjin Medical University(CN)
- National Cancer Center(US)
- National Cancer Research Institute(GB)
- Netherlands Comprehensive Cancer Organisation(NL)
- Public Health Agency(GB)
- Public Health Scotland(GB)
- Shenyang Pharmaceutical University(CN)
- Radiation Effects Research Foundation(JP)
- National Cancer Center(KR)
- Office of Readiness and Response(US)
- Centre international de recherche sur le cancer(FR)