Protein Family-Specific Models Using Deep Neural Networks and Transfer Learning Improve Virtual Screening and Highlight the Need for More Data
Fergus Imrie(University of California, Los Angeles), Charlotte M. Deane(University of Oxford), Mihaela van der Schaar(University of California, Los Angeles), A.R. Bradley(University of Oxford)
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