Research progress on image standard database of artificial intelligence-assisted radiotherapy for lung cancer
Han Ziming, Zhang Tao, Men Kuo, Bi Nan
Department of Radiation Oncology, National Cancer Center / National Clinical Research Center for Cancer / Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing 100021, China
Abstract:Lung cancer is the malignant tumor with the highest mortality rate in the world. Radiotherapy plays an important role in the comprehensive treatment of lung cancer. With the continuous advancement of radiotherapy technology and equipment, it has become one of the effective therapeutic options for lung cancer. In recent years, artificial intelligence technology has developed rapidly and has been widely applied in clinical practice, especially in the diagnosis and treatment of lung cancer imaging. The image database can be obtained by sorting and summarizing the images, which can be used in clinical work and scientific research. In this article, the application of artificial intelligence in lung cancer radiotherapy imaging and lung cancer imaging database was reviewed, aiming to provide reference for the construction of artificial intelligence radiotherapy imaging database for lung cancer.
Han Ziming,Zhang Tao,Men Kuo et al. Research progress on image standard database of artificial intelligence-assisted radiotherapy for lung cancer[J]. Chinese Journal of Radiation Oncology, 2023, 32(1): 86-90.
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