Inspecting the Mechanism of Fragment Hits Binding on SARS-CoV-2 M pro by Using Supervised Molecular Dynamics (SuMD) Simulations

Computational approaches supporting the early characterization of fragment molecular recognition mechanism represent a valuable complement to more expansive and low-throughput experimental techniques. In this retrospective study, we have investigated the geometric accuracy with which high-throughput...

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Veröffentlicht in:ChemMedChem 2021-07, Vol.16 (13), p.2075-2081
Hauptverfasser: Bissaro, Maicol, Bolcato, Giovanni, Pavan, Matteo, Bassani, Davide, Sturlese, Mattia, Moro, Stefano
Format: Artikel
Sprache:eng
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Zusammenfassung:Computational approaches supporting the early characterization of fragment molecular recognition mechanism represent a valuable complement to more expansive and low-throughput experimental techniques. In this retrospective study, we have investigated the geometric accuracy with which high-throughput supervised molecular dynamics simulations (HT-SuMD) can anticipate the experimental bound state for a set of 23 fragments targeting the SARS-CoV-2 main protease. Despite the encouraging results herein reported, in line with those previously described for other MD-based posing approaches, a high number of incorrect binding modes still complicate HT-SuMD routine application. To overcome this limitation, fragment pose stability has been investigated and integrated as part of our in-silico pipeline, allowing us to prioritize only the more reliable predictions.
ISSN:1860-7179
1860-7187
DOI:10.1002/cmdc.202100156