Description:
Background: The current outbreak of Coronavirus Disease 2019 (SARS-CoV-2) led to public
health emergencies all over the world and made it a global concern. Also, the lack of an
effective treatment to combat this virus is another concern that has appeared. Today, increasing
knowledge of biological structures like increasing computer power brings about a chance to use
computational methods efficiently in different phases of drug discovery and development for
helping solve this new global problem.
Methods: In this study, 3D pharmacophores were generated based on thirty-one structures with
functional affinity inhibition (antiviral drugs used for SARS and MERS) with IC50<250 µM from
the literature data. A 3D-QSAR model has been developed and validated to be utilized in virtual
screening.
Results: The best pharmacophore models have been utilized as 3D queries for virtual screening
to gain promising inhibitors from a data set of thousands of natural compounds retrieved
from PubChem. The hit compounds were subsequently used for molecular docking studies
to investigate their affinity to the 3D structure of the SARS-CoV-2 receptors. The ADMET
properties calculate for the hits with high binding affinity.
Conclusion: The study outcomes can help understand the molecular characteristics and
mechanisms of the binding of hit compounds to SARS-CoV-2 receptors and promising
identification inhibitors that are likely to be evolved into drugs.
URL:
http://103.158.96.210:88/web_repository/uploads/no_data.jpg
Type:
Journal
Document:
Diploma III Farmasi
Date:
23-06-2024
Author:
Samira Norouzi