Author: Rola, Monika; Krassowski, Jakub; Górska, Julita; Grobelna, Anna; Płonka, Wojciech; Paneth, Agata; Paneth, Piotr
                    Title: Machine Learning augmented docking studies of aminothioureas at the SARS-CoV-2—ACE2 interface  Cord-id: yyiupnhb  Document date: 2021_9_9
                    ID: yyiupnhb
                    
                    Snippet: The current pandemic outbreak clearly indicated the urgent need for tools allowing fast predictions of bioactivity of a large number of compounds, either available or at least synthesizable. In the computational chemistry toolbox, several such tools are available, with the main ones being docking and structure-activity relationship modeling either by classical linear QSAR or Machine Learning techniques. In this contribution, we focus on the comparison of the results obtained using different dock
                    
                    
                    
                     
                    
                    
                    
                    
                        
                            
                                Document: The current pandemic outbreak clearly indicated the urgent need for tools allowing fast predictions of bioactivity of a large number of compounds, either available or at least synthesizable. In the computational chemistry toolbox, several such tools are available, with the main ones being docking and structure-activity relationship modeling either by classical linear QSAR or Machine Learning techniques. In this contribution, we focus on the comparison of the results obtained using different docking protocols on the example of the search for bioactivity of compounds containing N-N-C(S)-N scaffold at the S-protein of SARS-CoV-2 virus with ACE2 human receptor interface. Based on over 1800 structures in the training set we have predicted binding properties of the complete set of nearly 600000 structures from the same class using the Machine Learning Random Forest Regressor approach.
 
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