Ermias Mergia Terefe1, Arabinda Ghosh2. 1. Department of Pharmacology and Pharmacognosy, School of Pharmacy and Health Sciences, United States International University-Africa, Nairobi, Kenya. 2. Microbiology Division, Department of Botany, Gauhati University, Guwahati, India.
Abstract
The human immunodeficiency virus (HIV) infection and the associated acquired immune deficiency syndrome (AIDS) remain global challenges even after decades of successful treatment, with eastern and southern Africa still bearing the highest burden of disease. Following a thorough computational study, we report top 10 phytochemicals isolated from Croton dichogamus as potent reverse transcriptase inhibitors. The pentacyclic triterpenoid, aleuritolic acid (L12) has displayed best docking pose with binding energy of -8.48 kcal/mol and Ki of 0.61 μM making it superior in binding efficiency when compared to all docked compounds including the FDA-approved drugs. Other phytochemicals such as crotoxide A, crothalimene A, crotodichogamoin B and crotonolide E have also displayed strong binding energies. These compounds could further be investigated as potential antiretroviral medication.
The human immunodeficiency virus (HIV) infection and the associated acquired immune deficiency syndrome (AIDS) remain global challenges even after decades of successful treatment, with eastern and southern Africa still bearing the highest burden of disease. Following a thorough computational study, we report top 10 phytochemicals isolated from Croton dichogamus as potent reverse transcriptase inhibitors. The pentacyclic triterpenoid, aleuritolic acid (L12) has displayed best docking pose with binding energy of -8.48 kcal/mol and Ki of 0.61 μM making it superior in binding efficiency when compared to all docked compounds including the FDA-approved drugs. Other phytochemicals such as crotoxide A, crothalimene A, crotodichogamoin B and crotonolide E have also displayed strong binding energies. These compounds could further be investigated as potential antiretroviral medication.
Globally more than 75.7 million people have been infected and more than 33 million
died since the HIV pandemic. Currently, 38 million people are living with the virus,
out of which 54% (20.7 million) live in southern and East African region. By the end
of 2020, the global death by the epidemic has reached more than half a million,
where more than 300,000 of these deaths occurred in southern and East African
region. In 2020, over 1.7 million people were infected by the virus.
In southern and East African region, more than 25% (5 million) people do not
have access to the treatment.Phytochemicals isolated from natural products are important sources of lead compounds
for the treatment of HIV/AIDS and other viral diseases. A number of natural products
were investigated as promising phytochemicals for treatment of HIV including
baicalin (a flavonoid),
calanolides (coumarins),
betulinic acid (a triterpene),[4,5] polycitone A (an alkaloid),
lithospermic acid, sulphated polysaccharides, cyanovirin-N,
pokeweed antiviral protein
and alpha-trichobitacin (proteins)The Croton genus has gained attention of many researchers for their
potential source of bioactive compounds against HIV. Among the
Croton genus, Croton dichogamus has wide
ethnomedicinal use in East African countries including treatment of fever, stomach
illness, respiratory disorders, malaria, impotence and infertility.[10-14] The objective of this study
was to elucidate and analyze the binding mode of phytochemicals isolated from
C. dichogamus in the active site of reverse transcriptase (PDB
ID: 1REV) and to compare results with the FDA-approved antiretroviral
drugs such as delaviridine (DLV), zidovudine (AZT), nevirapine (NVP) and abacavir
(ABC). The docking study gives a new insight into the investigation of molecular
interaction between the phytochemical compounds and allows us subsequently to select
one or more best active compounds that could be synthesized for an in
vitro test in a future study.
Materials and Methods
Computational tools
Docking studies were performed using AutoDock 4.2.6 (http://autodock.scripps.edu/).[15-17] Discovery Studio
Visualizer 3.1 Studio (Version 3.5, Accelrys Software Inc. Accelrys, San Diego,
CA, USA) was used to visualize the protein ligand interactions.
Ligand selection and preparation
The two dimensional structures of 24 phytochemicals isolated from Croton
dichogamus were obtained from literature and chemical structure
databases (Table S3 in Supplementary).[19,20] The ChemDraw 19.1
software was used to draw the 2D structures of compounds. For purpose of
comparison, the structures of 4 FDA-approved drugs (abacavir, delaviridine,
nevirapine and zidovudine) were obtained from pubchem database. The structures
for ligands (phytochemicals and ARV’s) were optimized for energy minimization
using the MMFF94 force field
and were subsequently converted to protein data bank (pdb) format using
Discovery studio.
In silico drug likeness and ADMET prediction
The ligands were screened on the basis of Lipinski’s “Rule of five,” such as
MW < 500, log P < 5, hydrogen bond donors < 5 and
hydrogen bond acceptors < 10
using SWISS ADME web based application.[21,23,24] Typical ADME prediction
methods that involve aqueous solubility (PlogS), PlogBB (blood/brain), logHIA
(intestinal barrier), PCaco-2 (cell permeability), logPgp
(substrate/non-Inhibitor), PlogS (aqueous solubility) and LogPapp (cell
permeability), CYP inhibition were calculated using ADMET SAR Toolbox and SWISS
ADME, a free web tool used to evaluate pharmacokinetics, drug-likeness and
medicinal chemistry friendliness of small molecules.Toxicity prediction that involve AMES toxicity, carcinogenicity, fish toxicity,
Tetrahymena Pyriformis toxicity (TPT), honey bee toxicity,
mutagenicity, tumerogenicity, reproductive effect and irritation were calculated
using admetSAR, a comprehensive source and free web tool for assessment of
chemical toxicity properties.
AMES toxicity test, is bacterial reverse mutation assay to detect
frame-shift mutations or base-pair substitutions invitro which may be detected
by exposure of histidine-dependent strains of Salmonella
typhimurium to a test compound. Tetrahymena
pyriformis toxicity is often used as a toxic endpoint.
Protein preparation
The three-dimensional structure of target HIV reverse transcriptase (PDBID: 1REV)
was retrieved from protein data bank (http://www.pdb.org) at 2.60 Å
RMSD resolution. 1REV has a molecular weight of 116.34 kDa and is active at a pH
of (6.5–8.1).The protein molecule 1REV was prepared using Swiss-PdbViewer v4.1 and autodock
4.2. The protein was in complex with a ligand, water molecules and heteroatoms.
Water molecules, inhibitor, and other heteroatoms from the protein were removed
using notepad ++ and used for docking. The preparation process involved:
deleting water molecules and co-crystallized DNA primer complex, adding hydrogen
atoms at a pH range of 6.5–8.1 for effective ligand binding using
Swiss-PdbViewer v4.1
and autodock 4.2.
The atom constraints were applied to the protein backbone and the
Magnesium Ion were fixed to avoid any modifications in the experimental
structure, and then saved in PDB format for energy minimization.
Active site prediction
The active site of reverse transcriptase (PDB ID: 1REV) was predicted using
MetaPocket 2.0 online server (https://projects.biotec.tu-dresden.de/metapocket/).[30,31] The
processed protein data file without heteroatoms was uploaded and the top result
from the three best (based on the z-score) potential ligand-binding site was
chosen for docking. Active site prediction using MetaPocket 2.0 has revealed
presence of 35 amino acid residues in the ligand binding pocket of 1REV. The
amino acid residues predicted were then compared with the amino acids in the
active site of the ligand-1REV complex. This was done by using LigPlot + v 2.2
and discovery studio softwares.
Molecular docking steps were performed after this step.
Molecular docking experiments
Docking experiment was performed with potential active site on HIV reverse
transcriptase enzyme using AutoDock 4.2.6 (http://autodock.scripps.edu/).
During docking at first the explicit hydrogens, charges, flexible
torsions, were assigned by the AD program for both the protein and ligands.Polar H-atoms were added to the target protein for correct ionization and
tautomeric states of amino acid residues. Kollman united charge and Gasteiger
charge were added to protein and ligands, respectively. Rigid roots were also
assigned to the ligand and five bonds were made “active” or rotatable.
The modified 3-dimensional structure of HIV-1RT and ligands accounting
for the flexibility of its bonds were converted to PDBQT format as required in
AutoDock calculations.The Lamarckian genetic algorithm (LGA) was utilized to search for the
conformations using the following docking parameters: a population size of 150
dockings, a maximum number of generations of 27,000, a maximum energy evaluation
of 25 million, 50 docking runs, and random initial positions and conformations.
Other parameters such as crossover rate and mutation rate, were used in
the default mode. The autogrid program was used to generate grid size for
specifying the search space and grid box was set with center x = -36.956;
y = 31.989; z = -19.75 and size x = 40; y = 60; z = 50 centered on the predicted
cavities with a default grip maps space 0.375 Å spacing. Pre-calculated grid
maps, which store grids of energy based on the interaction of the ligand atom
probes with receptor targets, were obtained using AutoGrid4.2.The least binding energy conformation was considered as the most favorable
docking pose. The images and output of AutoDock and all modeling studies were
analyzed using PyMOL.
The interaction between ligand and receptor and hydrogen bond lengths
were analyzed using LigPlot + and protein ligand interaction profiler server
https://plip-tool.biotec.tu-dresden.de/plip-web/plip/index.
Validation of the docking method
For the validation of docking tool, a decoy set of ligands was used along with
the active ligands. For decoy dataset generation, the co-crystal ligand (PDB ID:
1REV) was used. The physicochemical properties of co-crystal that is, molecular
weight, number of hydrogen bond acceptors, number of hydrogen bond donors and
LogP were used for decoy dataset generation in ChEMBL database. After generation
of decoy dataset, all the ligands were prepared by MGL tool for docking.
Autodock was used to dock all the ligands, that is, actives and decoys to the
specific site of protein.
Molecular dynamic simulation
Ligand-protein complexes that displayed better docking poses were subjected to
molecular dynamic (MD) simulation. Molecular dynamics simulation was performed
for 100 nanoseconds using Desmond-Maestro module 2020, a Package of Schrödinger LLC.
The initial stage of protein and ligand complexes for molecular dynamics
simulation were obtained from the docking studies. The protein–ligand complex
was preprocessed using Protein Preparation Wizard or Maestro, which also
included optimization and minimization of complexes. All systems were prepared
by the System Builder tool.The docked complex was first submerged in Transferable Intermolecular Interaction
Potential 3 Points (TIP3 P) water model in an orthorhombic shape.
The optimized potentials for the liquid simulations (OPLS) - 2005 force
field was used in the simulation and for energy calculation. The models were
made neutral by adding counter ions where needed. To mimic the physiological
conditions, 0.15 M salt (NaCl) was added. The MD simulation was performed under
thermodynamically stable conditions.The NPT ensemble with 300 K temperature and 1 atm pressure was select for
complete simulation. The models were relaxed before the simulation. The
trajectories of each complex were saved after every 100 ps (0.1 ns) for
analysis, and the stability of simulations was evaluated by calculating the root
mean square deviation (RMSD) of the protein and ligand over time. In addition,
each complex was subjected to specific parameters such as root mean square
fluctuation (RMSF), radius of gyration, conformational modification of ligands
and intermolecular interactions to analyze the level of structural changes.
Free energy binding calculation
To estimate and compare the binding affinity, the ligand binding energy of the
phytochemicals was calculated using the molecular mechanics-generalized born
surface area (MMGBSA) module in the Schrodinger Suite 2014
,
(Archontis, 2012; Ylilauri & Pentikäinen, 2013). Binding free energy
was averaged over 1000 snapshots extracted from the 100 ns trajectory. The
binding free energy ∆
was calculated with the MMGBSA methodology was applied based
on stable MD trajectory.is the free energy of the complex;
is the free energy of the receptor;
is the free energy of the ligand.
Results and Discussions
The docking was validated by the area under curve (AUC) graph and the early
enrichment factor (E.F) at 1% and 20%. The AUC value for the docking was 0.7040
while the E.F value at 1% and 20% was 2.38 and 2.48 respectively. The AUC values
indicate that the docking tool picks the active compounds and rank them better
than decoy compounds. Which means that the tool gives 70% true positive results.
There were a total 15 active ligands and the E.F at 1% shows that there were 8
ligands in top 1% results. From the results of this step, it can be concluded
that docking tools is validated.
The AUC graph is shown in Figure S1 in Supplementary.
Molecular docking analysis
Our computational docking study revealed that 10 of the docked compounds had a
greater binding efficiency ranging from -6.9 to -7.48 kcal/mol which is much
better as compared to the positive control drugs. The binding energies of
FDA-approved drugs ranged from -5.63 to -6.85 kcal/mol. Table 1 summarizes the docking results
for the phytochemicals and FDA-approved antiretroviral drugs.
Table 1.
Molecular docking analysis of phytochemicals isolated from Croton
dichogamus against HIV-1 reverse transcriptase (PDB:
1REV).
Abbreviations: ABC, abacavir; AZT, zidovudine; DLV, delaviridine;
FDA, Food and Drug Administration; NVP, nevirapine.
Molecular docking analysis of phytochemicals isolated from Croton
dichogamus against HIV-1 reverse transcriptase (PDB:
1REV).Abbreviations: ABC, abacavir; AZT, zidovudine; DLV, delaviridine;
FDA, Food and Drug Administration; NVP, nevirapine.Aleuritolic acid (L12), had the best binding conformation with the reverse
transcriptase enzyme with a binding energy of -8.48 kcal/mol followed by
Crotoxide A (L135), Crothalimene A (L292) and Crotodichogamoin B (L216) with
-7.73, -7.48, -7.42 kcal/mol respectively (Table 1). The binding efficiency of
the top 10 phytochemicals was greater than the binding efficiency of the FDA
approved drugs delaviridine (-6.85 kcal/mol), zidovudine (-5.68 kcal/mol),
nevirapine (-5.65 kcal/mol) and abacavir (-5.63 kcal/mol) which confirms that
these phytochemicals might have potential reverse transcriptase inhibitory
activity.
Binding free energy
As molecular docking only measures the geometric fit of ligands at the active
site of a protein in static conditions, molecular dynamics simulations were
run for 100 ns to allow for the ligands to become “comfortable” within an
enzyme’s binding site, to assess the binding free energy of the system. The
more negative the values, the better the binding free energy between the
enzyme (HIV-1 RT 1REV) and the ligands.The binding free energy (∆
) of FDA approved drugs and 13 phytochemical compounds
isolated from C. dichogamus were determined using the
MMGBSA method. As shown in Table 2, the free binding energy
of the phytochemicals and the FDA-approved drugs is in agreement with the
molecular docking results. Delavirdine (DLV) showed the highest binding
energy (-50.85 kcal/mol) than the other FDA approved reverse transcriptase
inhibitors and phytochemicals compounds. Among the phytochemical compounds
aleuritolic acid displayed the highest free binding energy of
-173.52 kcal/mol, followed by furocrotinsulolide A (-40.53 kcal/mol),
crotoxide A (-38.07 kcal/mol), crotohaumanoxide (-35.78 kcal/mol) and
Crothalimene (-32.73 kcal/mol). These five phytochemical compounds displayed
higher free binding energy as compared to the ARV drugs.
Table 2.
Binding free energy for phytochemical compounds from C.
dichogamus and FDA approved drugs to HIV-RT 1REV.
Code
Name of complex
Energy component
(kcal/mol)
ΔGbind
ΔGbind Coulomb
ΔGbind Covalent
ΔGbind SolvGB
ΔGbind vdW
FDA approved drugs
DLV
Delaviridine
−50.85 ± 0.25
−19.24 ± 0.21
−0.11 ± 0.06
−52.49 ± 0.26
−32.09 ± 0.11
ABC
Abacavir
−29.01 ± 0.22
−3.38 ± 0.09
−0.22 ± 0.04
−43.09 ± 0.26
−20.58 ± 0.08
NVP
Nevirapine
−28.06 ± 0.17
−6.37 ± 0.11
−0.11 ± 0.09
−28.19 ± 0.19
−21.08 ± 0.09
AZT
Zidovudine
−27.39 ± 0.24
−3.58 ± 0.10
−0.59 ± 0.03
−40.57 ± 0.28
−23.04 ± 0.11
Phytochemical compounds
L12
Aleuritolic acid
−173.52 ± 1.28
−35.35 ± 0.64
−0.41 ± 0.06
−114.78 ± 1.17
−27.79 ± 0.15
L105
Furocrotinsulolide A
−40.53 ± 0.22
−6.38 ± 0.13
−0.41 ± 0.08
−30.58 ± 0.23
−31.14 ± 0.18
L135
Crotoxide A
−38.07 ± 0.16
−8.9 ± 0.09
−0.67 ± 0.04
−25.47 ± 0.16
−28.4 ± 0.10
L140
Crotohaumanoxide
−35.78 ± 0.19
−8.76 ± 0.09
−0.99 ± 0.07
−37.55 ± 0.21
−24.93 ± 0.13
L292
Crothalimene A
−32.73 ± 0.17
−5.22 ± 0.07
−0.11 ± 0.07
−31.65 ± 0.18
−24.99 ± 0.11
L216
Crotodichogamoin B
−31.98 ± 0.21
−7.75 ± 0.11
−1.58 ± 0.09
−29.76 ± 0.18
−24.18 ± 0.13
L104
Crotonolide E
−30.95 ± 0.21
−5.73 ± 0.13
−0.11 ± 0.06
−26.85 ± 0.19
−29.04 ± 0.15
L215
Crotodichogamoin A
−28.53 ± 0.16
−4.19 ± 0.06
−0.02 ± 0.07
−29.60 ± 0.17
−22.29 ± 0.09
L293
Crothalimene B
−26.07 ± 0.19
−2.96 ± 0.12
−0.44 ± 0.07
−26.11 ± 0.18
−20.46 ± 0.11
L136
Crotoxide B
−24.05 ± 0.23
−3.21 ± 0.09
−0.69 ± 0.14
−43.69 ± 0.24
−18.98 ± 0.15
L214
Depressin
−24.04 ± 0.17
−1.56 ± 0.07
−0.21 ± 0.06
−21.88 ± 0.14
−21.49 ± 0.14
L436
Cadalene
−22.83 ± 0.15
−1.99 ± 0.04
−0.24 ± 0.03
−15.23 ± 0.11
−19.12 ± 0.12
L440
4-patchoulen-3-one (cyperotundone)
−19.28 ± 0.23
−2.14 ± 0.09
−0.42 ± 0.07
−15.51 ± 0.19
−15.83 ± 0.12
Abbreviations: ABC, abacavir; AZT, zidovudine; DLV, delaviridine;
FDA, Food and Drug Administration; NVP, nevirapine.
Binding free energy for phytochemical compounds from C.
dichogamus and FDA approved drugs to HIV-RT 1REV.Abbreviations: ABC, abacavir; AZT, zidovudine; DLV, delaviridine;
FDA, Food and Drug Administration; NVP, nevirapine.From our MMGBSA calculations it is possible to note that electrostatic
(∆
) and van der Waals (∆
) energies play the main role in the binding free energy of
the ligands. Overall, the results provide a set of guidelines for design
novel and more potent reverse transcriptase inhibitors.It was also interesting to note that although compounds crotonolide E,
crotodichogamoin B and crotoxide B demonstrated relatively high docking
scores, binding free energy calculations for these systems indicated
dissimilar results. This validates the need for molecular dynamic
simulations, which may allow for a compound to become “comfortable” within
an enzyme’s binding site.
Structural analysis of the most optimal phytochemical-HIV RT
complexes
To further establish the mechanistic inhibitory characteristics of the top
ten selected phytochemical compounds with antiviral activity against HIV1-RT
and to better understand the complex stability and backbone fluctuation,
Root Mean Square Deviation (RMSD), Root Mean Square Fluctuation (RMSF),
Radius of Gyration (RoG) and ligand interaction plots were assessed as
previously described by previous studies.[38,41,42]The Root Mean Square Deviation (RMSD) of the protein backbone was calculated
to check the stability of structure during the simulation period. Figure 1 depicts the
RMSD plot for the four phytochemical compounds and the FDA approved drugs.
In this study, RMSD values for the C-alpha atoms of the structures were
determined. The RMSD of each complex was compared to protein RMSD and the
RMSD values of the four FDA approved drugs. Deviation in a range of 1-2 Å
between the RMSD of the protein alone and RMSD of the complex is considered
as acceptable and stable. RMSD measures protein stability as the simulation
progresses.
Figure 1.
RMSD profile of protein backbone atoms of HIV1-RT 1REV (A), FDA
approved antiretreoviral drugs delaviridine-DLV, Nevirapine NVP,
Zidovudine AZT and Abacavir ABC drugs (B), Aleuritolic acid, L12
(C); Crotoxide A, L135 (D); Crothalimene A, L292 (E);
Crotodichogamoin B, L216 (F), calculated over the course of 100 ns
molecular dynamic simulation.
ABC indicates abacavir; AZT, zidovudine; DLV, delaviridine; FDA, Food
and Drug Administration; NVP, nevirapine; RMSD, root mean square
deviation.
RMSD profile of protein backbone atoms of HIV1-RT 1REV (A), FDA
approved antiretreoviral drugs delaviridine-DLV, Nevirapine NVP,
Zidovudine AZT and Abacavir ABC drugs (B), Aleuritolic acid, L12
(C); Crotoxide A, L135 (D); Crothalimene A, L292 (E);
Crotodichogamoin B, L216 (F), calculated over the course of 100 ns
molecular dynamic simulation.ABC indicates abacavir; AZT, zidovudine; DLV, delaviridine; FDA, Food
and Drug Administration; NVP, nevirapine; RMSD, root mean square
deviation.The first 30 ns of the simulation of Crotohalimene A (L292), Crotodichogamoin
B (L216) and Aleuritolic acid (L12) showed instability of the enzyme, but
from 30 to 100 ns of simulation the enzyme was stable. The RMSD plots of
Aleuritolic acid (L12) and Crotodichogamoin B (L216) with average values of
6.75 ± 0.03 Å and 6.72 ± 0.03 Å respectively are similar to the RMSD of
nevirapine (6.71 ± 0.03 Å). This indicates the same enzyme stability between
the phytochemical compounds and the FDA-approved drugs. Similarly, the RMSD
plots of Crotohalimene A (L292) and Depressin (L214) with average values of
8.85 ± 0.06 Å and 7.09 ± 0.04 Å, respectively are related to the RMSD of the
apo-enzyme 1REV (7.52 ± 0.05 Å) (reverse transcriptase enzyme without
ligand), which indicates the same stability between the phytochemical
compounds and the apo-enzyme.The calculated RMSD between the phytochemical compounds aleuritolic acid
(L12), crotoxide A (L135), crothalimene (L292), crotohaumanoxide (L140) and
crotodichogamoin B (L216) is within 0.1 nm (1 Å) as compared with the
protein HIV-RT (1REV), and the control drugs nevirapine, etravirine and
delaviridine indicating only a very small change in the ligands position
during the simulation period. This will tell us that these ligands were well
stabilized in the protein binding site during the period of simulation,
which will infer a more likely similar stability in biological system.For a drug to bring about an agonistic or antagonistic effect to a protein it
should first be stable within the protein. Achieving a given response by a
drug requires that the drug stabilize specific conformational states of the
receptor and thus specific conformational states in the protein binding
pocket. So measuring RMSD of a drug candidate and comparing it with
reference drugs is important to determine the stability of the drug within
the protein. Therefore, the lower RMSD is, the better the model will be in
comparison to the target structure.The Root Mean Square Fluctuation (RMSF) was calculated to check the
flexibility of amino acids residues during simulation. The RMSF values
monitor the fluctuation of each amino acid residue as they interact with the
ligand throughout a trajectory. The RMSF values of the phytochemicals were
compared to the RMSF of the four FDA approved drugs.Figure 2A Shows the
RMSF plot of reference (1REV). The amino acid residues that showed low RMSF
values remained rigid during simulation and the residues with higher RMSF
values showed fluctuations during simulation. RMSF plot shows a minor
fluctuation in the region of ~ 11 to 26 amino acids. There are major
fluctuations seen in the regions of ~ 30 to 50, 70 to 80, 120 to 140, 230 to
270, 280 to 300. It showed that these amino acids residues were present on
the cytoplasmic side of C terminal helix. The plot showed fluctuations at
some positions ignoring the C-terminal helix while remaining protein showed
less fluctuations.
Figure 2.
RMSF profile of protein backbone atoms of HIV1-RT 1REV (A), FDA
approved antiretreoviral drugs delaviridine-DLV, Nevirapine NVP,
Zidovudine AZT and Abacavir ABC drugs (B), Aleuritolic acid, L12
(C); Crotoxide A, L135 (D); Crothalimene A, L292 (E);
Crotodichogamoin B, L216 (F), calculated over the course of 100 ns
molecular dynamic simulation.
ABC indicates abacavir; AZT, zidovudine; DLV, delaviridine; FDA, Food
and Drug Administration; NVP, nevirapine; RMSF, root mean square
fluctuation.
RMSF profile of protein backbone atoms of HIV1-RT 1REV (A), FDA
approved antiretreoviral drugs delaviridine-DLV, Nevirapine NVP,
Zidovudine AZT and Abacavir ABC drugs (B), Aleuritolic acid, L12
(C); Crotoxide A, L135 (D); Crothalimene A, L292 (E);
Crotodichogamoin B, L216 (F), calculated over the course of 100 ns
molecular dynamic simulation.ABC indicates abacavir; AZT, zidovudine; DLV, delaviridine; FDA, Food
and Drug Administration; NVP, nevirapine; RMSF, root mean square
fluctuation.Figure 2B shows the
RMSF plots of controls, that is, DLV, AZT, NVP, and ABC. This plot shows
that the amino acid residues of protein behaved like reference 1REV during
simulation. All the fluctuations are same as reference. A minor difference
in the loop region (11 to 26 and 70 to 80) was observed. The overall plots
showed similar trends. As shown in Figure 2C, RMSF plot of 1REV + L12
complex shows a similar trend like NVP control.As depicted in Figure
2, the RMSF plot of 1REV + L135 showed that the amino acid
residues have same trend in fluctuations as the control ABC, while
1REV + L292 and 1REV + L216 complexes showed related RMSF plot to NVP. RMSF
is useful for characterizing local changes along the protein chain. On RMSF
graphs, peaks indicate areas of the protein that fluctuate the most during
the simulation.The radius of gyration was calculated to examine the compactness of system.
The high value of RoG shows the unfolding events during simulation. Figure 3A shows the
RoG plot of reference (1REV). From the plot, it can be observed that the
system remained compact till ~ 5 ns and then it showed distortion till 10 ns
and then it gained stability. Protein showed some unfolding events during ~
30 to 35 ns, 41 to 44 ns, but it was compact during remaining time. From the
plot, it can be observed that, besides for some time, the protein remained
compacted during 100 ns long simulation.
Figure 3.
RoG profile of protein backbone atoms of HIV1-RT 1REV (A), FDA
approved antiretreoviral drugs delaviridine-DLV, Nevirapine NVP,
Zidovudine AZT and Abacavir ABC drugs (B), Aleuritolic acid, L12
(C); Crotoxide A, L135 (D); Crothalimene A, L292 (E);
Crotodichogamoin B, L216 (F), calculated over the course of 100 ns
molecular dynamic simulation.
ABC indicates abacavir; AZT, zidovudine; DLV, delaviridine; FDA, Food
and Drug Administration; NVP, nevirapine; RoG, radius of
gyration.
RoG profile of protein backbone atoms of HIV1-RT 1REV (A), FDA
approved antiretreoviral drugs delaviridine-DLV, Nevirapine NVP,
Zidovudine AZT and Abacavir ABC drugs (B), Aleuritolic acid, L12
(C); Crotoxide A, L135 (D); Crothalimene A, L292 (E);
Crotodichogamoin B, L216 (F), calculated over the course of 100 ns
molecular dynamic simulation.ABC indicates abacavir; AZT, zidovudine; DLV, delaviridine; FDA, Food
and Drug Administration; NVP, nevirapine; RoG, radius of
gyration.The RoG values of crotodichogamoin B, L216 (34.19 Å), furocrotinsulolide A,
L105 (34.12 Å) show similarity with average RoG values with zidovudine
(34.29 Å) and the reverse transcriptase enzyme (34.97 Å). The RoG values of
crothalimene B, L293 (39.57 Å), crothalimene A, L292 (37.03 Å), and
crotohaumanoxide, L140 (37.83 Å) show similarity with the RoG of Nevirapine,
NVP (38.45 Å).Similarly, the RoG values of Crotonolide E, L104 (33.83 Å) and Cadalene, L436
(33.65 Å) show related RoG values with zidovudine (34.29 Å) while the RoG
values of Crotoxide B, L136 (36.52 Å) and Crotoxide A, L135 (35.76 Å) is
related with the RoG value of Delaviridine (36.42 Å) (Figure 3).If a protein is stably folded, it will likely maintain a relatively steady
value of RoG. If a protein unfolds, its RoG will change over time. The RoG
is used to assess the overall dimensions and stabilities of the
enzyme-ligand complex and is a function of the mass-weighted RMS distances
of atoms from the center of mass.
Ligand-RT interaction with different amino acids
Active site prediction using MetaPocket 2.0 revealed presence of 35 amino acid
residues in the ligand binding pocket of 1REV. To gain insight on the binding
modes of studied phytochemicals as per the molecular docking results, visual
poses inspection analysis was performed for the top 10 phytochemicals which
exhibited highest binding energy in the active site pocket of the HIV-RT (PDBID:
1REV).The interactions of phytochemicals with key residues of HIV-1 reverse
transcriptase demonstrated that the ligands interact with most of residues of
the hydrophobic pocket as shown in Table S1 in Supplementary. Most of the residues involved on the
hydrophobic interaction include ASN 265, GLU 378, GLY 352, HIS 96, ILE 382, SER
268, TRP 266.In silico binding studies suggest that inhibitors that undergo hydrogen bonding
with the main chain backbone of Lys101, LYS 350, LYS 353 and pi-pi interaction
with the aromatic side chain of Trp229 improves the inhibitor selectivity for RT
and thus helps in further drug design attempts to obtain potent phytochemical
compounds or their derivatives.Our results also demonstrate that most of the ligands formed hydrogen bonds with
at least one key residue of the enzyme, the most represented are ARG 355, ARG
356, ARG 358, GLN 269, ILE 94, LEU 92, LYS 350, LYS 353, LYS 374, TYR 232 and
the distances of hydrogen bonds vary between 2 Å and 4 Å.
Interaction of aleuritolic acid (L12)
Aleuritolic acid (L12) is a pentacyclic triterpenoid isolated from the stem
bark of C. megalocarpus,
C. dichogamus, C. psudopulchellus and C.
oligandrus,
C. urucurana
and Jatropha isabellei.
Previous studies have proven anti-inflammatory,
antifilarial,
anti-HIV,
antinociceptive
and antioxidant
activity of aleuritolic acid its derivative acetyl aleuritolic
acid.Aleuritolic acid forms strong binding to the receptor with an estimated free
binding energy of -8.48 kcal/mol and Ki of 0.61 uM making it superior in
binding efficiency as compared to all docked compounds including the
FDA-approved drugs.This high binding energy of aleuritolic acid in the binding site is
attributed to the Pi-alkyl interactions with ILE 382 and VAL 382, Pi-Sigma
interactions with HIS 96 which involves charge transfer and helps in
intercalating the compound in the binding site of the receptor (1REV) as
shown in Figure 4.
Furthermore, it displayed hydrophobic interactions with residues in the
active binding site including – ASN 265, GLN 269, GLU 378, GLY 352, HIS 96,
ILE 94, LYS 350, LYS 353, LYS 374, PRO 95, SER 268, TYR 232, TYR 339.
Similar interacting amino acids were reported previously by Singh et al,
Seal et al.
Figure 4.
Docked poses of Aleuritolic acid (L12) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-8.48 kcal/mol) (A) 3D Aleuritolic acid with surrounding amino acids
of 1REV; (B) 2D view of interaction type of Aleuritolic acid with
surrounding amino acids of 1REV.
Docked poses of Aleuritolic acid (L12) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-8.48 kcal/mol) (A) 3D Aleuritolic acid with surrounding amino acids
of 1REV; (B) 2D view of interaction type of Aleuritolic acid with
surrounding amino acids of 1REV.Aleuritolic acid forms two hydrogen bonds with LYS353 with an interatomic
distance of 2.77 Å and 3.62 Å. The hydroxyl group at position 1 and the
carboxyl acid moiety at the 11th position have a role in forming these
hydrogen bonds. The in-silico predicted inhibition constant (Ki) value of
aleuritolic acid was 0.61 uM (Table 1). Inhibition constant
value is the half-maximum inhibition of an enzyme by a chemical compound and
is used to estimate the potential of substrate/inhibitor in
enhancing/inhibiting the biological and function of enzymes.
Compounds with an inhibition constant less than 100 mM are considered
to be potential inhibitors whereas inhibition constant greater than 100 mM
are non-potent inhibitors.
Based on this, aleuritolic acid could be a potential potent inhibitor
of reverse transcriptase enzyme.
Interaction of crotoxide A (L135) and crotoxide B (L136)
Crotoxide A (L135) is a crotofolane-type diterpenoid isolated from leaves of
C. dichogamus.
The compound has a very good docking pose with the reverse
transcriptase enzyme (PDB: 1REV) with a binding energy of -7.73 kcal/mol and
inhibitory constant of 2.11 μM making it the second most active compound to
inhibit the enzyme. As depicted in Figure 5, corotoxide interacts with
the following amino acid residues of the enzyme LEU 92, HIS 96, VAL 381, ILE
382, GLY 93, PRO 95, ILE 94, ILE 94. It forms two hydrogen bonding with ILE
94 (2.01 Å and 3.01 Å) and His 96 (3.05 Å). It also forms Pi-alkyl bond with
VAL 381, PRO 95 and ILE 382, these interactions are playing a crucial role
in the recognition of ligand by protein.
Figure 5.
Docked poses of Crotoxide A (L135) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-7.73 kcal/mol) (A) 3D Crotoxide A (L135) with surrounding amino
acids of 1REV; (B) 2D view of interaction type of Crotoxide A (L135)
with surrounding amino acids of 1REV.
Docked poses of Crotoxide A (L135) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-7.73 kcal/mol) (A) 3D Crotoxide A (L135) with surrounding amino
acids of 1REV; (B) 2D view of interaction type of Crotoxide A (L135)
with surrounding amino acids of 1REV.The furan ring is responsible for formation of the hydrogen bonding with HIS
96 and for the formation of Pi-Alkyl bond with ILE 382, PRO 95 and VAL382.
The hydroxyl group at position 12 is responsible for the formation of
hydrogen bonding with LEU 92 and ILE 94 (Table S1 in Supplementary).From structure activity relationship of Crotoxide A and B, as shown in Figure 6,
substitution of C-12 hydroxyl group by acetyl group like in the case of
Crotoxide B will reduce the binding efficiency (binding energy
-7.15 kcal/mol) of the ligand to the receptor. Hence Crotoxide A was ranked
the second while Crotoxide B (L136) was ranked as the sixth most active
compound to inhibit reverse transcriptase enzyme (PDB ID: 1REV) as shown in
Table
1.
Figure 6.
Chemical structure of Crotoxide A (L135) and Crotoxide B (L136).
Chemical structure of Crotoxide A (L135) and Crotoxide B (L136).Crotoxide B (L136) forms 7 hydrogen bonds with LYS 353, LYS 374 (3.43 Å), ALA
355, TYR 339 (2.79 Å), ASN 265 (2.87 Å), LYS 374 (3.43 Å) (Figure 7). The acetyl
moiety at C-12, the hydroxyl group at C-7, and the furan ring has played
crucial role in the hydrogen bond formation. This implies that Crotoxide B
can be a potential hit compound that can inhibit reverse transcriptase
enzyme.
Figure 7.
Docked poses of Crotoxide B (L136) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-7.15 kcal/mol) (A) 3D Crotoxide B (L136) with surrounding amino
acids of 1REV; (B) 2D view of interaction type of Crotoxide A (L136)
with surrounding amino acids of 1REV.
Docked poses of Crotoxide B (L136) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-7.15 kcal/mol) (A) 3D Crotoxide B (L136) with surrounding amino
acids of 1REV; (B) 2D view of interaction type of Crotoxide A (L136)
with surrounding amino acids of 1REV.
Interaction of crothalimene A (L292) and crothalimene B (L293)
Crothalimene A (L292) is a halimene type diterpenoid isolated from C.
dichogamus.
It binds to the reverse transcriptase enzyme (PDB ID: 1REV)
satisfactorily with a binding energy of -7.48 kcal/mol and Ki of 3.3 μM
making it the third most active drug with the ability to inhibit the enzyme.
As depicted in Figure
8, crothalimene A (L292) forms two hydrogen bonds with Ile 382
(2.31 Å) and Tyr 232 (2.69 Å). The hydrogen acceptor groups at position
number 2 and 17 are responsible for formation of these hydrogen bonds. It
also forms Pi-alkyl interactions with HIS 96, ILE 94, VAL 381, and PRO95
which is important for conformational stability of the compound and also for
recognition of ligand by protein.
It also displayed a number of hydrophobic contacts with 10 amino acid
residues HIS 96 (3.30 Å), VAL 381 (3.56 Å), ILE 382 (3.60 Å), ILE 94
(2.94 Å), ILE 382 (2.31 Å), HIS 96 (5.29 Å), TYR 232 (2.69 Å), PRO 95, LEU
92, GLY 93. The naphthalene moiety could be responsible for these
hydrophobic contacts.
Figure 8.
Docked poses of Crothalimene A (L292) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-7.48 kcal/mol) (A) 3D Crothalimene A (L292) with surrounding amino
acids of 1REV; (B) 2D view of interaction type of Crothalimene A
(L292) with surrounding amino acids of 1REV.
Docked poses of Crothalimene A (L292) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-7.48 kcal/mol) (A) 3D Crothalimene A (L292) with surrounding amino
acids of 1REV; (B) 2D view of interaction type of Crothalimene A
(L292) with surrounding amino acids of 1REV.Crotohalmane A (L292) and crothalimene B (L293) have related chemical
structures as depicted in Figure 9. Their structural difference lies in the presence of
additional tetrahydro 4 H pyran-2-one ring in the structure of Crothalimene.
The tetrahydro 4 H pyran-2-one ring has a role in forming strong binding in
the receptor pocket. The structural difference has impacted the binding
energy, inhibitory constant and the different bonds created between the
compound and the amino acids within the active enzyme site. The binding
energy and inhibition constant for crothalimene B was -6.92 kcal/mol and
11.92 μM, respectively.
Figure 9.
Structure of Crothalimene A and Crothalimene B.
Structure of Crothalimene A and Crothalimene B.Crothalimene B forms hydrophobic contacts with the following amino acids ILE
94, LYS 350, GLU 378, HIS 96, ILE 94, PRO 95, GLN 269, and TYR 232 in the
active site of the reverse transcriptase (PDB ID: 1 REV). It also forms
Pi-alkyl bonding with ILE 94, ILE 382 and VAL 381. The pyran and naphthalene
rings are responsible for this binding and contribute for the stability of
the conformation.As depicted in Figures
8 and 10, C-2 of both compounds is involved in hydrogen bonding with
ILE 382 and LYS 350 respectively for crothalimene A and B. The furan moiety
in crothalimene B has no role in formation of the hydrogen bond but is
engaged in the Pi-alkyl bonding with ILE 382 and VAL 381 which contributes
for receptor fitting and stabilization.
Figure 10.
Docked poses of Crothalimene B (L293) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-7.48 kcal/mol) (A) 3D Crothalimene B (L293) with surrounding amino
acids of 1REV; (B) 2D view of interaction type Crothalimene B (L293)
with surrounding amino acids of 1REV.
Docked poses of Crothalimene B (L293) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-7.48 kcal/mol) (A) 3D Crothalimene B (L293) with surrounding amino
acids of 1REV; (B) 2D view of interaction type Crothalimene B (L293)
with surrounding amino acids of 1REV.
Interaction of crotodichogamin A (L215) and crotodichogamoin B
(L216)
Crotodichogamoin B (L216) is a crotofolane type diterpenoids
isolated from the roots of C. dichogamus.
The compound binds well with 1REV ligand binding site with a free
binding energy of -7.42 kcal/mol and inhibition constant of 3.62 μM making
it the fourth most active molecule to inhibit reverse transcriptase (1REV).
As illustrated in Figures
9 and 11, crotodichogamin B forms hydrophobic contacts with 5 amino
acids TYR 232, MET 230, GLN 269, LYS 350, PRO 95 and four hydrogen bonding
with LYS 350 (2.91 Å), TYR 232 (2.27 Å), GLU 378 (3.72 Å), GLU 378 (3.13 Å),
and HIS 96 (4.53 Å). The stability of the complex in the binding pocket can
be linked to the Pi-stacked interaction including Pi-cation interaction with
HIS 96, Pi-alkyl interactions with ILE 94, ILE 382, VAL 381 and MET 230. The
phenyl group is responsible for the formation of hydrogen bonding with LYS
350 and Pi-cation interaction with HIS 96.
Figure 11.
Docked poses of Crotodichogamoin B (L216) with the active site region
of reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-7.42 kcal/mol) (A) 3D Crotodichogamoin B (L216) with surrounding
amino acids of 1REV; (B) 2D view of interaction type
Crotodichogamoin B (L216) with surrounding amino acids of 1REV.
Docked poses of Crotodichogamoin B (L216) with the active site region
of reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
-7.42 kcal/mol) (A) 3D Crotodichogamoin B (L216) with surrounding
amino acids of 1REV; (B) 2D view of interaction type
Crotodichogamoin B (L216) with surrounding amino acids of 1REV.Crotodichogamin A (L215) has a lower binding efficiency as compared to
crotodichogamin B. Its binding energy and inhibitor constant is
-6.9 kcal/mol and 11.23 uM respectively ranking as the 10th
active compound to inhibit the reverse transcriptase (PDB ID: 1REV) enzyme.
As depicted in Figure
11, it forms 8 hydrophobic contacts with ILE 94, MET 230, TRP
266, GLN 269, GLU 378, LYS 350, HIS 96, and TYR 232 amino acids in the
active site of the enzyme. It also forms hydrogen bonding with TYR 232
(1.78 Å), HIS 96 (4.34 Å) and LYS 350. Crotodichogamin A forms Pi-cation
interaction with HIS 96 and Pi-alkyl interactions ILE 94, ILE 382, TRP
266.The two epoxide moieties play a role in forming hydrogen bond with Tyr 232,
while the furan ring is engaged in hydrogen bonding with LYS 350, and
formation of HIS 96. As shown in Figure 12, the difference in
binding energy among crotodichogamin A and B could be attributed to the
presence of cycloheptane ring in crotodichogamin B which increases its
hydrophobicity and receptor affinity which is displayed by the pi-alkyl bond
formed with ILE 94 and MET230
Figure 12.
Chemical structures of Crotodichogamin A and B.
Chemical structures of Crotodichogamin A and B.
Interaction of crotonolide E (L104) with reverse transcriptase enzyme
(PDB ID: 1REV)
Crotonolide E (L104) is a clerodane type diterpenoid isolated from the roots
of C. dichogamus and C.
megalocarpus.[49,57] As visualized in
Figure 13, it
forms six hydrophobic contacts ILE 94 (3.29 Å), ILE 94 (3.52 Å), HIS 96
(2.94 Å), TRP 266 (3.82 Å), PRO 95, GLU 378, and one hydrogen bond with TYR
232 (2.79 Å). The compound also forms Pi-alkyl bond with TRP 266, ILE 382,
PRO 95. Crotonolide E has free binding energy of -7.31 kcal/mol and
inhibition constant of 4.42 μM with reverse transcriptase (PDB ID: 1REV)
enzyme.
Figure 13.
Docked poses of Crotonolide E (L104) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
−7.31 kcal/mol) (A) 3D Crotonolide E (L104) with surrounding amino
acids of 1REV; (B) 2D view of interaction type Crotonolide E (L104)
with surrounding amino acids of 1REV.
Docked poses of Crotonolide E (L104) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
−7.31 kcal/mol) (A) 3D Crotonolide E (L104) with surrounding amino
acids of 1REV; (B) 2D view of interaction type Crotonolide E (L104)
with surrounding amino acids of 1REV.
Interaction of furocrotinsulolide A (L105) with reverse transcriptase
enzyme (PDB ID: 1REV)
Furocrotinsulolide A (L 105) is a clerodane type diterpenoid isolated from
the roots of C. dichogamus, C.
megalocarpus and C. insularis.[57,58] It
forms hydrogen bonding with LYS 353 (1.94 Å), LYS 353 (2.65 Å), LYS 374
(1.95 Å) in the active site of the enzyme. The hydroxyl groups in C-2 and
C-3 are responsible for the formation of the hydrogen bond. Our computations
studies indicated that the binding energy of Furocrotinsulolide A with the
receptor is -6.92 kcal/mol (Figure 14).
Figure 14.
Docked poses of Furocrotinsulolide A (L105) with the active site
region of reverse transcriptase (PDB ID: 1REV) enzyme (binding
energy −6.92 kcal/mol) (A) 3D Furocrotinsulolide A (L105) with
surrounding amino acids of 1REV; (B) 2D view of interaction type
Furocrotinsulolide A (L105) with surrounding amino acids of
1REV.
Docked poses of Furocrotinsulolide A (L105) with the active site
region of reverse transcriptase (PDB ID: 1REV) enzyme (binding
energy −6.92 kcal/mol) (A) 3D Furocrotinsulolide A (L105) with
surrounding amino acids of 1REV; (B) 2D view of interaction type
Furocrotinsulolide A (L105) with surrounding amino acids of
1REV.
Interaction of depressin (L214) with reverse transcriptase enzyme (PDB
ID: 1REV)
Depressin (L214) is Caspian diterpenoid isolated from roots of C.
dichogamus.[10,59] It forms good docking
pose with the reverse transcriptase (PDB ID: 1REV) at free binding energy of
-6.92 kcal/ml and inhibition constant of 8.53 μM. This interaction was
supported by hydrophobic interactions with ILE 94 (3.26 Å), ILE 94 (3.10 Å),
HIS 96 (3.22 Å, TYR 232 (3.43 Å), TRP 266, GLN 269, MET 230 found in the
active site of the enzyme. It also forms hydrogen bonding with LYS 350
(2.58 Å), HIS 96 (3.15 Å). The carbonyl group at C-13 (Figure 15) is responsible for the
formation of hydrogen bond with Lys 350.
Figure 15.
Docked poses of Depressin (L214) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
−6.92 kcal/mol) (A) 3D Depressin (L214) with surrounding amino acids
of 1REV; (B) 2D view of interaction type Depressin (L214) with
surrounding amino acids of 1REV.
Docked poses of Depressin (L214) with the active site region of
reverse transcriptase (PDB ID: 1REV) enzyme (binding energy
−6.92 kcal/mol) (A) 3D Depressin (L214) with surrounding amino acids
of 1REV; (B) 2D view of interaction type Depressin (L214) with
surrounding amino acids of 1REV.
In silico pharmacokinetic ADMET prediction
The phytochemical compounds investigated fulfill the Lipinski rule of drug
likeness and have acceptable molecular weight and solubility profile except
aleuritolic acid (L12) and Depressin (L214) which had logP value of 6.06 and
7.31, respectively, Table S2 in Supplementary. The polar surface area of the
phytochemical compounds was predicted to be less than 100 indicating that
these compounds had good oral absorption or membrane permeability.
Among the FDA-approved drugs RPV and NVP were predicted to have good
absorption while the other drugs had displayed strong polarity. Generally,
drugs with smaller PSA are more easily absorbed.[61,62]The phytochemical compounds and the FDA-approved drugs were predicted as
having ideal lipophilicity (AlogP98 [WLOGP] ⩽ 5) except aleuritolic acid
(L12) and depressin (L214) that display poor lipophilicity, AlogP98 (WLOGP) > 5.
With regard to intestinal absorption (human), absorbance of less than
30% is considered to be poorly absorbed. The phytochemical compounds and the
FDA-approved drugs were predicted to have good absorption. Gastrointestinal
(GIT) absorption is significant for the maintenance of optimal drug levels
in the systemic circulation. For drugs or potential compounds to reach their
target, they must be absorbed from the GIT and enter the systemic
circulation in enough amount or quantities.
Highly absorbed drugs from the GIT will easily attain optimal
concentration and exert a pharmacological effect at its target site.With regard to skin permeability, the log Kp > -2.5, the compound is
considered to be relatively low skin permeability.
Crothalimene B (L293) and depressin (L215) had predicted low skin
permeability, while the other phytochemical compounds and ARV drugs were
predicted to have high skin permeability. Skin permeability is a significant
consideration for many consumer products efficacy, and of interest for the
development of transdermal drug delivery.As shown in Table
3, among the FDA approved antiretroviral drugs, DLV, RPV, ETV and
ABC are predicted to be P-glycoprotein substrates. Similarly, the 10
phytochemical compounds isolated from C. dichogamus are
predicted to be P-glycoprotein substrates, hence they may be actively exuded
from cells by P-glycoprotein and while compounds L292, L216, L293, L2215 and
L12 are predicted to be P-glycoprotein inhibitors.
Among the phytochemical compounds L12 and L214 were predicted to be
pumped out of the cell by P-glycoprotein efflux pump. While L293, L216,
L104, L292, L135, L215 and L105 were predicted to cross the BBB.
Table 3.
Predicted ADMET properties of phytochemical compounds isolated from
C. dichogamus and FDA approved drugs.
Properties
L12
L135
L292
L216
L104
L136
L105
L293
L214
L215
DLV
RPV
NVP
ETR
AZT
ABC
TDF
Abbreviation: FDA, Food and Drug Administration.
Key for color coding: Red for highly positive, yes; Green for
negative, no.
Predicted ADMET properties of phytochemical compounds isolated from
C. dichogamus and FDA approved drugs.Abbreviation: FDA, Food and Drug Administration.Key for color coding: Red for highly positive, yes; Green for
negative, no.The “Brain Or Intestinal Estimated permeation, (BOILED-Egg)” method was
utilized as it computes the lipophilicity and polarity of small molecules.
As depicted in Figure 16, in the BOILED-Egg model, the white region represents
the passive absorption of the GI tract, while the BBB penetration is
represented by the yellow region (yolk) represents. The blue color indicator
represents a molecule which is actively effluxed by P-glycoprotein (PGP+),
whereas the red color indicator shows the nonsubstrate P-gp (PGP-).
Figure 16.
BOILED-Egg. Plot of 10 phytochemical compounds isolated from
C. dichogamus and FDA approved antiretroviral
drugs.
FDA indicates Food and Drug Administration.
BOILED-Egg. Plot of 10 phytochemical compounds isolated from
C. dichogamus and FDA approved antiretroviral
drugs.FDA indicates Food and Drug Administration.The results showed that the DLV and RPV have high predicted distribution
volume (VDss), as compared to the other antiretroviral drugs. Among the
phytochemical compounds L135, L216, L293, L214 and L215 were predicted to
have high VDss. It was also noted that compounds with higher AlogP98/WLOGP
values had high predicted VDss, a good example being L293 and RPV.In addition, aleuritolic acid (L12), furocrotinsulolide A (L105), crotoxide B
(L136), crotohaumanoxide (L140), depressin (L214) and cadalene (L4360) were
predicted not to cross the BBB. Among the phytochemical compounds L293 and
L214 were predicted to cross the BBB as determined by the logBB
value > 0.3, while the other compounds were not predicted to cross the
BBB.Among the FDA approved drugs, delaviridine was predicted to be the only
substrate for CYP2D6 enzyme, while all the other drugs were predicted to be
substrates for CYP2D6 and CYP3A4 (except AZT, TDF and ABC), which is in
agreement with previous reports by Gong et al.
Similarly, all the phytochemical compounds were predicted to be
substrates for CYP3A4 (except depressin, L214), suggesting that these
compounds may be metabolized in the liver. Crotonolide E (L104),
crotohaimene B (L293), depressin (L214) and crotodichogamoin A (L215) were
predicted to be CYP2C19 inhibitors.Comparing the in silico PK results on CYP and P-gp, it was found out that
crothalimene B (L293) and crotodichogamoin A (L215) are predicted to inhibit
CYP2C19 and P-glycoprotein. The inhibition of CYP3A4 and P-gp by the
phytochemical compounds could decrease the elimination and pumping of other
antiretreoviral drugs from the systemic circulation and the cells
respectively.Drug clearance prediction shows that the total clearance of L105, L293 and
ABC is the highest followed by L299, L216, L194, L214, L215 and TDF. In
addition, L293 and L214 have shown to be renal OCT2 substrates. Renal
organic cation transporter 2 is a renal uptake transporter that plays an
important role in disposition and renal clearance of drugs and endogenous
compounds. OCT2 substrates also have the potential for adverse interactions
with co-administered OCT2 inhibitors. Assessing candidate’s potential to be
transported by OCT2 provides useful information regarding not only its
clearance but potential contraindication.Drug clearance occurs primarily as a combination of hepatic clearance
(metabolism in the liver and biliary clearance) and renal clearance
(excretion via the kidneys). It is related to molecular weight,
hydrophilicity and bioavailability of compounds, and is important for
determining dosing rates to achieve steady state concentrations.One of the main step in drug discovery is ensuring new drug candidates are
safe to humans, animals, plants or the environment. Toxicity studies help in
determining the harmful effect of drugs. Toxicity studies can be done in
vivo, in vitro or in silico. Toxicity studies involving animals have a
number of challenges with regard to time, ethical consideration and
financial burden. Even though there are efforts to perform in vitro toxicity
studies like cytotoxicity studies, these approaches are still costly and
time consuming. In comparison to experimental approaches, computational
methods of toxicity prediction are considered as fast, cheap and useful
methods to analyze, simulate, visualize to predict the toxicity of chemicals.
Currently, many software and web servers can predict chemical
toxicity before synthesisAMES test formulated by Bruce Ames is a recognized in vitro
assay that uses bacteria, Salmonella typhimurium, to test
whether a given compound is mutagenic and therefore may act as a carcinogen.
A positive test indicates that the compound is mutagenic and
therefore may act as a carcinogen. It predicts whether a given compound is
likely to be Ames positive and hence mutagenic. In our study it is only
zidovudine that was found to be Ames positive, which is in agreement with,
who reported “template-switch mutagensis” by zidovudine, through its
action as a chain terminator during DNA replication. In silico prediction
tools for AMES mutagenicity (Salmonella typhimurium reverse
mutation assay) represent a cost-effective high throughput approach for the
prioritization of compounds before experimental testing.[72,73]Crotodichogamoin B (L216) and three FDA approved drugs (DLV, RPV and ETR)
were predicted to inhibit hERG. Inhibition of the potassium channels encoded
by the hERG (human ether-a-go-go gene) are the principal causes for the
development of acquired long QT syndrome leading to fatal ventricular
arrhythmia. Inhibition of hERG channels has resulted in withdrawal of many
substances from the pharmaceutical market.All the FDA approved drugs studied have predicted hepatotoxicity, which is in
agreement with previous reports and clinical findings as liver toxicity is
one of the most relevant adverse effects of antiretroviral
therapy.[74,75] Among the phytochemicals crothalimene A (L292) have
predicted hepatotoxicity.All the phytochemical compounds and FDA approved drugs have not shown skin
sensitization and predicted toxicity. Skin sensitization is a potential
adverse effect for dermal applied products. The evaluation of whether a
product, which may have encountered the skin can induce allergic contact
dermatitis is an important safety concern.Physicochemical properties associated with chemical compounds that have good
oral bioavailability, low toxicity and optimum values of physicochemical
properties are key parameters for the anti-HIV drug discovery.
Conclusions
In the present study binding mechanism of a phytochemical compounds isolated from
C. dichogamus in the active site of HIV-1 RT have been
elucidated using molecular docking and molecular dynamics simulation studies. Based
on our results, we obtained five potential inhibitors of HIV-1 RT, including
aleuritolic acid, crotoxide A, Crothalimene A, crotodichogamoin B, and crotonolide E
with respective binding energy of -8.48 (Ki = 0.61 μM), -7.73 (Ki = 2.11 μM), -7.48
(Ki = 3.3 μM), -7.42 (Ki = 3.62 μM), -7.31 (Ki = 4.42 μM). These compounds have
shown high binding energy as compared to standard FDA approved antiretreoviral
drugs. Our computational studies have also shown that these phytochemicals form
hydrophobic interactions with ASN 265, GLU 378, GLY 352, HIS 96, ILE 382, SER 268,
TRP 266, hydrogen bonding with ARG 355, ARG 356, ARG 358, GLN 269, ILE 94, LEU 92,
LYS 350, LYS 353, LYS 374, TYR 232 amino acids in the active site of the enzyme.
Thus, we report these top 5 phytochemicals as potentially potent, selective, orally
bioavailable, and nontoxic leads based on the ADMET screening and effective binding
analysis in the active site of the reverse transcriptase (PDBID: 1REV) for further
consideration. The experimental validation of the results should be warranted in
future studies.Click here for additional data file.Supplemental material, sj-docx-1-bbi-10.1177_11779322221125605 for Molecular
Docking, Validation, Dynamics Simulations, and Pharmacokinetic Prediction of
Phytochemicals Isolated From Croton dichogamus Against the HIV-1 Reverse
Transcriptase by Ermias Mergia Terefe and Arabinda Ghosh in Bioinformatics and
Biology Insights
Authors: Fatih M Uckun; Francis Rajamohan; Sharon Pendergrass; Zahide Ozer; Barbara Waurzyniak; Chen Mao Journal: Antimicrob Agents Chemother Date: 2003-03 Impact factor: 5.191
Authors: Garrett M Morris; Ruth Huey; William Lindstrom; Michel F Sanner; Richard K Belew; David S Goodsell; Arthur J Olson Journal: J Comput Chem Date: 2009-12 Impact factor: 3.376