Deep learning for risk prediction in patients with nasopharyngeal carcinoma using multi-parametric MRIs
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Tao Zhang | Dan Hou | Bingzhong Jing | Yishu Deng | Bin Li | Mengyun Qiang | Kuiyuan Liu | Liangru Ke | Taihe Li | Ying Sun | Xing Lv | Chaofeng Li | L. Ke | M. Qiang | Kuiyuan Liu | Bing-Zhong Jing | X. Lv | Dan Hou | Tao Zhang | Chaofeng Li | Ying Sun | Y. Deng | Bin Li | Taihe Li | Yishu Deng
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