Multi-task deep learning for fine-grained classification and grading in breast cancer histopathological images
Lingqiao Li(Guilin University of Electronic Technology), Longhao Zhang(Beijing University of Posts and Telecommunications), Yubei He(The University of Melbourne), Yongxian Fan(Guilin University of Electronic Technology), Huihua Yang(Beijing University of Posts and Telecommunications), Zhenbing Liu(Guilin University of Electronic Technology), Zhong‐Ming Li(Sichuan University), Zhiwei Cao(Beijing University of Posts and Telecommunications), Xipeng Pan(Beijing University of Posts and Telecommunications)
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