iAMPCN: a deep-learning approach for identifying antimicrobial peptides and their functional activities
Jing Xu(Nanjing University of Science and Technology), Jiangning Song(Australian Regenerative Medicine Institute), Cornelia B. Landersdorfer(Monash University), Xudong Guo(Northwest A&F University), Fuyi Li(Australian Regenerative Medicine Institute), Anton Y. Peleg(Australian Regenerative Medicine Institute), Seiya Imoto(The University of Tokyo), Hsin‐Hui Shen(Division of Materials Science and Engineering), Chen Li(Monash University), Jian Li(Beijing Hospital), Jianhua Yao(Tencent (China)), Tatsuya Akutsu(Kyoto University)
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