Shuldau N.A.1, 2, Yushkevich A.M.1, Furs K.V.1, Tuzikov A.V.1, Andrianov A.M.3
Development of a Deep Learning Generative Neural Network for Computer-Aided Design of Potential SARS-Cov-2 Inhibitors
Mathematical Biology & Bioinformatics. 2022;17(2):188-207.
doi: 10.17537/2022.17.188.
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