A deep learning method for prediction of three‐dimensional dose distribution of helical tomotherapy
Medical Physics2019Vol. 46(5), pp. 1972–1983
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Zhiqiang Liu, Jiawei Fan, Minghui Li, Hui Yan, Zhihui Hu, Peng Huang, Yuan Tian, Junjie Miao, Jianrong Dai
Abstract
The study developed a new deep learning method for 3D voxel-by-voxel dose prediction, and shown to be able to produce accurately dose predictions for nasopharyngeal patients treated by HT. The predicted 3D dose map can be useful for improving radiotherapy planning design, ensuring plan quality and consistency, making clinical technique comparison, and guiding automatic treatment planning.
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