Abstract
A large family of enzymes with the function of hydrolyzing peptide bonds, called peptidases
or cysteine proteases (CPs), are divided into three categories according to the peptide chain involved.
CPs catalyze the hydrolysis of amide, ester, thiol ester, and thioester peptide bonds. They can
be divided into several groups, such as papain-like (CA), viral chymotrypsin-like CPs (CB), papainlike
endopeptidases of RNA viruses (CC), legumain-type caspases (CD), and showing active residues
of His, Glu/Asp, Gln, Cys (CE). The catalytic mechanism of CPs is the essential cysteine residue present
in the active site. These mechanisms are often studied through computational methods that provide
new information about the catalytic mechanism and identify inhibitors. The role of computational
methods during drug design and development stages is increasing. Methods in Computer-Aided Drug
Design (CADD) accelerate the discovery process, increase the chances of selecting more promising
molecules for experimental studies, and can identify critical mechanisms involved in the pathophysiology
and molecular pathways of action. Molecular dynamics (MD) simulations are essential in any
drug discovery program due to their high capacity for simulating a physiological environment capable
of unveiling significant inhibition mechanisms of new compounds against target proteins, especially
CPs. Here, a brief approach will be shown on MD simulations and how the studies were applied to
identify inhibitors or critical information against cysteine protease from several microorganisms, such
as Trypanosoma cruzi (cruzain), Trypanosoma brucei (rhodesain), Plasmodium spp. (falcipain), and
SARS-CoV-2 (Mpro). We hope the readers will gain new insights and use our study as a guide for potential
compound identifications using MD simulations.
Keywords:
Neglected tropical diseases, molecular modeling, computer-aided drug design, computational chemistry, cysteine protease, molecular mechanics.
Graphical Abstract
[3]
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http://dx.doi.org/10.1093/nar/gky1004] [PMID:
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