Synthetic breath-hold CT generation from free-breathing CT: a novel deep learning approach to predict cardiac dose reduction in deep-inspiration breath-hold radiotherapy
Yutaro Koide(Nagoya University Hospital), Takeshi Kodaira(Aichi Cancer Center), Takahiro Aoyama(Aichi Cancer Center), Kohei Wakabayashi(Aichi Cancer Center), Hiroyuki Tachibana(Aichi Cancer Center), Hidetoshi Shimizu(Aichi Cancer Center), Risei Miyauchi(Aichi Cancer Center), Tomoki Kitagawa(Aichi Cancer Center)
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