SMG: self-supervised masked graph learning for cancer gene identification
Yan Cui(Kyoto University), Jiangning Song(Australian Regenerative Medicine Institute), Tong Pan(Monash University), Xiaoyu Wang(Australian Regenerative Medicine Institute), Shanshan Li(Wuxi People's Hospital), Tatsuya Akutsu(Kyoto University), Ying Zhang(Liaoning University), Yiwen Zhang(Harvard University), Zhe Zhang, Yuming Guo(Chinese Academy of Sciences), Zhikang Wang(Australian Regenerative Medicine Institute)
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