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1.
Chinese Journal of Radiation Oncology ; (6): 928-932, 2022.
Article in Chinese | WPRIM | ID: wpr-956934

ABSTRACT

Objective:To establish the mouse model with radiation-induced pulmonary fibrosis, and to identify and analyze it from the aspects of function, imaging and pathology.Methods:Thirty C57BL/6 mice were randomly divided into the control group, 16 Gy irradiation group and 20Gy irradiation group. The mice in the irradiation groups received a single 16 Gy or 20 Gy chest X-ray irradiation, and underwent functional examination, imaging examination and pathological examination at 3 and 6 months after irradiation.Results:At 6 months after irradiation, hair on the chest and back of the mice turned white and fell off, and the airway resistance was increased significantly. CT images showed extensive patch shadows and consolidation in the lung. Three dimensional reconstruction suggested that the lung of mice was distorted and deformed, and the volume was decreased significantly. Pathological examination confirmed that there was extensive pulmonary fibrosis.Conclusions:Significant pulmonary fibrosis occurs after 6 months of chest irradiation in mice. The animal model of radiation-induced pulmonary fibrosis in C57BL/6 mice was successfully established.

2.
Chinese Journal of Radiological Medicine and Protection ; (12): 155-159, 2021.
Article in Chinese | WPRIM | ID: wpr-884491

ABSTRACT

Radiation therapy is one of the main treatment methods for cancer. Machine learning can be used in all aspects of clinical practice in radiation therapy, including clinical decision support, automatic segmentation of target volumes, prediction of treatment efficacy and side effects. Despite the challenges of lacking structured data and poor interpretability of models, the application of machine learning in radiotherapy will become increasingly profound and extensive. This review contains three aspects: introduction of machine learning, the clinical application of machine learning in radiotherapy, challenges and solutions.

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