Deep learning radiomic analysis of DCE-MRI combined with clinical characteristics predicts pathological complete response to neoadjuvant chemotherapy in breast cancer
Yuting Li(Hubei University of Medicine), Bihua Liu(Guangdong Medical College), Haoyu Pan(Shenzhen University Health Science Center), Yang Yang(Shihezi University), Zhangnan Zhong(Shenzhen University Health Science Center), Dinghua Xu(Guangdong Medical College), Bingsheng Huang(Shenzhen University Health Science Center), Yan Li(Guiyang Medical University), Xiaotong Xie(Panyu District Central Hospital), Yaheng Fan(Shenzhen University Health Science Center)
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