Selected article for: "ability good and acute respiratory syndrome"

Author: Sayed, Ahmed M.; Alhadrami, Hani A.; El-Gendy, Ahmed O.; Shamikh, Yara I.; Belbahri, Lassaad; Hassan, Hossam M.; Abdelmohsen, Usama Ramadan; Rateb, Mostafa E.
Title: Microbial Natural Products as Potential Inhibitors of SARS-CoV-2 Main Protease (M(pro))
  • Cord-id: y5dsfdwr
  • Document date: 2020_6_29
  • ID: y5dsfdwr
    Snippet: The main protease (M(pro)) of the newly emerged severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) was subjected to hyphenated pharmacophoric-based and structural-based virtual screenings using a library of microbial natural products (>24,000 compounds). Subsequent filtering of the resulted hits according to the Lipinski’s rules was applied to select only the drug-like molecules. Top-scoring hits were further filtered out depending on their ability to show constant good binding affin
    Document: The main protease (M(pro)) of the newly emerged severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) was subjected to hyphenated pharmacophoric-based and structural-based virtual screenings using a library of microbial natural products (>24,000 compounds). Subsequent filtering of the resulted hits according to the Lipinski’s rules was applied to select only the drug-like molecules. Top-scoring hits were further filtered out depending on their ability to show constant good binding affinities towards the molecular dynamic simulation (MDS)-derived enzyme’s conformers. Final MDS experiments were performed on the ligand–protein complexes (compounds 1–12, Table S1) to verify their binding modes and calculate their binding free energy. Consequently, a final selection of six compounds (1–6) was proposed to possess high potential as anti-SARS-CoV-2 drug candidates. Our study provides insight into the role of the M(pro) structural flexibility during interactions with the possible inhibitors and sheds light on the structure-based design of anti-coronavirus disease 2019 (COVID-19) therapeutics targeting SARS-CoV-2.

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