CRCFound: A Colorectal Cancer CT Image Foundation Model Based on Self-Supervised Learning
Jul 23, 2025·
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Jing Yang
1st Author
Du CAI
Co-1st Author
,Junwei Liu
Co-1st Author
,Zhenfeng Zhuang
Co-1st Author
,Yibin Zhao
Feng-Ao Wang
Cheng-Hang LI
Chu-Ling HU
Bao-Wen GAI
Yiping Chen
Yixue Li
Liansheng Wang
Co-Corresponding Author
Feng GAO
Co-Corresponding Author
,Xiaojian Wu
Corresponding Author
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0 min readAbstract
Accurate risk stratification is crucial for determining the optimal treatment plan for patients with colorectal cancer (CRC). However, existing deep learning models perform poorly in the preoperative diagnosis of CRC and exhibit limited generalizability, primarily due to insufficient annotated data. To address these issues, CRCFound, a self-supervised learning-based CT image foundation model for CRC is proposed. After pretraining on 5137 unlabeled CRC CT images, CRCFound can learn universal feature representations and provide efficient and reliable adaptability for various clinical applications. Comprehensive benchmark tests are conducted on six different diagnostic tasks and two prognosis tasks to validate the performance of the pretrained model. Experimental results demonstrate that CRCFound can easily transfer to most CRC tasks and exhibit outstanding performance and generalization ability. Overall, CRCFound can solve the problem of insufficient annotated data and perform well in a wide range of downstream tasks of CRC, making it a promising solution for accurate diagnosis and personalized treatment of CRC patients.
Type
Publication
Advanced Science

Authors
Postdoc
I focus on leveraging explainable AI and large foundation models to advance medical imaging and digital pathology in colorectal cancer research.

Authors
Research Assistant
I am a research assistant focusing on deep learning, multimodal feature fusion, and medical AI system development.

Authors
PhD Student
I am a PhD student focusing on AI-driven colorectal cancer research and clinically useful model development.

Authors
PhD Student
I am a PhD student working on AI methods for colorectal cancer diagnosis and prognosis.

Authors
Professor
My research leverages AI and big data to improve diagnostics, prognostics, and ultimately, outcomes in cancer and other biomedical fields.