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Machine Learning Methods for Prediction of Dose Distribution and Response to Treatmentin Tumor Precision Radiotherapy: A Review |
Liu Guocai1,2#*, Gu Dongdong1,3, Liu Jinguang1,4 |
1(College of Electrical and Information Engineering, Hunan University, Changsha 410082, China) 2(National Engineering Research Center for Robot Visual Perception and Control Technology, Changsha 410082, China) 3(Shanghai United Imaging Intelligence Co.,Ltd., Shanghai 200032, China) 4(School of Computational Science and Electronics, Hu′nan Institute of Engineering, Xiangtan 411104, Hunan, China) |
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Abstract Intensity modulated radiation therapy (IMRT) is a main technology for tumor treatment in clinics. In order to design a clinically acceptable and executable IMRT plan, key factors including radiotherapy dose calculation, dose distribution prediction and optimization evaluation are required to carefully consider. Meanwhile, it also needs to predict and evaluate the outcome, toxicity and side effects of radiotherapy and chemotherapy. This article reviewed machine learning methods based on the images for dose distribution prediction and responses to the tumor radiotherapy and chemotherapy, including deep learning methods for dose prediction as well as deep learning, radiomics, logistic regression methods for outcome prediction of IMRT, stereotactic body radiotherapy (SBRT), volumetric arc modulated radiation therapy (VMAT). Finally, the future research directions and research contents were proposed.
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Received: 18 May 2021
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Corresponding Authors:
*E-mail: lgc630819@hnu.edu.cn
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About author:: #Member, Chinese Society of Biomedical Engineering |
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