iGRLDTI: an improved graph representation learning method for predicting drug–target interactions over heterogeneous biological information network
Bo-Wei Zhao(Chinese Academy of Sciences), Lun Hu(Chinese Academy of Sciences), Yu‐An Huang(Northwestern Polytechnical University), Zhu‐Hong You(Northwestern Polytechnical University), Xiaorui Su(Chinese Academy of Sciences), Pengwei Hu(Xinjiang Technical Institute of Physics & Chemistry)
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