Preliminary Application of Synthetic Computed Tomography Image Generation from Magnetic Resonance Image Using Deep-Learning in Breast Cancer Patients |
Jeon, Wan
(Department of Radiation Oncology, Dongnam Institute of Radiological and Medical Sciences)
An, Hyun Joon (Department of Radiation Oncology, Seoul National University Hospital) Kim, Jung-in (Department of Radiation Oncology, Seoul National University Hospital) Park, Jong Min (Department of Radiation Oncology, Seoul National University Hospital) Kim, Hyoungnyoun (GenAI Inc.) Shin, Kyung Hwan (Department of Radiation Oncology, Seoul National University Hospital) Chie, Eui Kyu (Department of Radiation Oncology, Seoul National University Hospital) |
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