Prognosis prediction of uterine cervical cancer using changes in the histogram and texture features of apparent diffusion coefficient during definitive chemoradiotherapy

Akiyo Takada, Hajime Yokota, Miho Watanabe Nemoto, Takuro Horikoshi, Koji Matsumoto, Yuji Habu, Hirokazu Usui, Katsuhiro Nasu, Makio Shozu, Takashi Uno

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