Deep-learning-assisted automatic digitization of applicators in 3D CT image-based high-dose-rate brachytherapy of gynecological cancer.
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Xun Jia | Chenyang Shen | Peter Klages | Yesenia Gonzalez | Hyunuk Jung | X. Jia | Chenyang Shen | K. Albuquerque | Kevin Albuquerque | P. Klages | Hyunuk Jung | Y. Gonzalez
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