Intelligent oncology: The convergence of artificial intelligence and oncology

Journal of the National Cancer Center - Tập 3 - Trang 83-91 - 2023
Bo Lin1, Zhibo Tan2, Yaqi Mo1, Xue Yang3, Yajie Liu2, Bo Xu1,3
1Chongqing Key Laboratory of Intelligent Oncology for Breast Cancer, Chongqing University Cancer Hospital and Chongqing University School of Medicine, Institute of Intelligent Oncology, Chongqing University, China
2Department of Radiation Oncology, Peking University Shenzhen Hospital, Department of Radiation Oncology, Peking University Shenzhen Hospital, Shenzhen, China
3Department of Biochemistry and Molecular Biology, Key Laboratory of Breast Cancer Prevention and Therapy, Ministry of Education, National Cancer Research Center, Tianjin Medical University Cancer Institute and Hospital, Tianjin, China

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