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AI-guided pipeline for protein-protein interaction drug discovery identifies a SARS-CoV-2 inhibitor.

Publication date: 2023-06-14

Author:

Trepte, Philipp
Secker, Christopher ; Kostova, Simona ; Maseko, Sibusiso B ; Choi, Soon Gang ; Blavier, Jeremy ; Minia, Igor ; Ramos, Eduardo Silva ; Cassonnet, Patricia ; Golusik, Sabrina ; Zenkner, Martina ; Beetz, Stephanie ; Liebich, Mara J ; Scharek, Nadine ; Schütz, Anja ; Sperling, Marcel ; Lisurek, Michael ; Wang, Yang ; Spirohn, Kerstin ; Hao, Tong ; Calderwood, Michael A ; Hill, David E ; Landthaler, Markus ; Olivet, Julien ; Twizere, Jean-Claude ; Vidal, Marc ; Wanker, Erich E

Keywords:

AlphaFold, SARS-CoV-2, VirtualFlow, machine learning, protein-protein interactions

Abstract:

Protein-protein interactions (PPIs) offer great opportunities to expand the druggable proteome and therapeutically tackle various diseases, but remain challenging targets for drug discovery. Here, we provide a comprehensive pipeline that combines experimental and computational tools to identify and validate PPI targets and perform early-stage drug discovery. We have developed a machine learning approach that prioritizes interactions by analyzing quantitative data from binary PPI assays and AlphaFold-Multimer predictions. Using the quantitative assay LuTHy together with our machine learning algorithm, we identified high-confidence interactions among SARS-CoV-2 proteins for which we predicted three-dimensional structures using AlphaFold Multimer. We employed VirtualFlow to target the contact interface of the NSP10-NSP16 SARS-CoV-2 methyltransferase complex by ultra-large virtual drug screening. Thereby, we identified a compound that binds to NSP10 and inhibits its interaction with NSP16, while also disrupting the methyltransferase activity of the complex, and SARS-CoV-2 replication. Overall, this pipeline will help to prioritize PPI targets to accelerate the discovery of early-stage drug candidates targeting protein complexes and pathways.