Fully Automated Delineation of Gross Tumor Volume for Head and Neck Cancer on PET-CT Using Deep Learning: A Dual-Center Study
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Qiaoliang Li | Zhewei Chen | Liyun Zheng | Bingsheng Huang | Shi-Ting Feng | Yufeng Ye | Bin Huang | Po-Man Wu | Ching-Yee Oliver Wong | Yong Liu | Tianfu Wang | Tianfu Wang | Po-Man Wu | Liyun Zheng | Qiaoliang Li | Bingsheng Huang | S. Feng | C. Wong | Zhewei Chen | Yufeng Ye | Bin Huang | Yong Liu | Po‐Man Wu
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