Impact of pixel-based machine-learning techniques on automated frameworks for delineation of gross tumor volume regions for stereotactic body radiation therapy
Yasuo Kawata(Kyushu University), Masayuki Sasaki(Kyushu University), Koujirou Ikushima(Kyushu University), Kento Morita(Kyushu University), Ze Jin(Hebei Agricultural University), Chiaki Tokunaga(Kyushu University Hospital), Hidetake Yabuuchi(Kyushu University), T. Sasaki(Kyushu University), Yoshiyuki Shioyama(SAGA Heavy Ion Medical Accelerator in Tosu), Hiroshi Honda(Kyushu University), Hidetaka Arimura(Kyushu University)
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