key: cord-0019753-uvtscuzu authors: EL KHATABI, Khalil; AANOUZ, Ilham; El-MERNISSI, Reda; SINGH, Atul Kumar; AJANA, Mohammed Aziz; LAKHLIFI, Tahar; KUMAR, Shashank; BOUACHRINE, Mohammed title: Integrated 3D-QSAR, molecular docking, and molecular dynamics simulation studies on 1,2,3-triazole based derivatives for designing new acetylcholinesterase inhibitors date: 2021-06-30 journal: Turk J Chem DOI: 10.3906/kim-2010-34 sha: 22b39f7e4aa1baa9f9666f8a9dbc9ac78db46ec5 doc_id: 19753 cord_uid: uvtscuzu Alzheimer’s disease (AD) is a multifactorial and polygenic disease. It is the most prevalent reason for dementia in the aging population. A dataset of twenty-six 1,2,3-triazole-based derivatives previously synthetized and evaluated for acetylcholinesterase inhibitory activity were subjected to the three-dimensional quantitative structure-activity relationship (3D-QSAR) study. Good predictability was achieved for comparative molecular field analysis (CoMFA) (Q(2) = 0.604, R(2) = 0.863, r(ext)(2) = 0.701) and comparative molecular similarity indices analysis (CoMSIA) (Q(2) = 0.606, R(2) = 0.854, r(ext)(2) = 0.647). The molecular features characteristics provided by the 3D-QSAR contour plots were quite useful for designing and improving the activity of acetylcholinesterase of this class. Based on these findings, a new series of 1,2,3-triazole based derivatives were designed, among which compound A1 with the highest predictive activity was subjected to detailed molecular docking and compared to the most active compound. The selected compounds were further subjected to 20 ns molecular dynamics (MD) simulations to study the comparative conformation dynamics of the protein after ligand binding, revealing promising results for the designed molecule. Therefore, this study could provide worthy guidance for further experimental analysis of highly effective acetylcholinesterase inhibitors. Computational modeling has held upper hand in further research in order to understand the origin and prognosis of neurodegenerative diseases, as every human brain is unique. In silico approaches including 3D-QSAR, molecular docking and MD simulation could offer solutions to important matters which molecular biology alone might not explain. The point of the current research is designing more potent Alzheimer inhibitors with improved binding infinity which could be more effective agents for the management of AD. Therefore, the relationship between structural features of a series of selective 1,2,3-triazole based derivatives identified as acetylcholinesterase inhibitors and biological activity was revealed by comparative molecular field analysis (CoMFA) and comparative molecular similarity indices analysis (CoMSIA) methods. Consequently, six new compounds with high predicted potency were in silico designed. In addition, molecular docking and molecular dynamics (MD) simulation were performed to ascertain the critical interactions and study the dynamic behavior of ligands in the active sites of AChE related proteins. The integrated approaches have proved to be a promising avenue for drug design, which would provide useful insights into the crucial structural understanding for further synthesis of acetylcholinesterase inhibitors. A series of experimentally reported twenty-six 1,2,3-triazole based derivatives were taken from published studies [16, 17] and employed for molecular modeling. The dataset was divided into a training set of 20 molecules (80%) and test set of 6 molecules (20%) to construct and evaluate the models, respectively. The AChE inhibition activities IC50 (µM) were converted into the corresponding pIC50 values, which were further used as dependent variables for quantitative structureactivity relationship (QSAR) analysis. The chemical structures and activity values of the compounds were depicted in Figure 1 and listed in Table 1 . The 3D structure of the studied compounds was sketched using SYBYL-X 2.0 program [18] and minimized under the Tripos standard force field [19] , with Gasteiger-Hückel atomic partial charges [20] by the Powell method with 0.01 kcal/ mol as the convergence criterion. The compounds were further optimized by density-functional theory (DFT) method B3LYP/6.311 (d, p) basis set level to achieve the equilibrium geometry for each compound [21] . The optimization was performed using Gaussian software (09, Gaussian Inc., Wallingford, CT, USA). The molecular alignment aims to enhance the linearity of 3D-QSAR models. The representative molecule 2 was chosen as template. The remaining molecules were then aligned to common substructure of the template using the simple alignment method in SYBYL [22] , which is shown in Figure 2 . Based on molecular alignment, 3D-QSAR analysis has been utilized to increase further knowledge of the chemical structures of ligands that correlate well with the bioactivity of the observed interactions [23, 24] . These studies were developed to analyze quantitatively, steric, electrostatic, hydrogen bond acceptor (HBA) hydrogen bond donor (HBD), and hydrophobic effects fields. 3D-QSAR analysis was performed by using SYBYL with standard settings. The value of column filtering is set to 2.0 kcal/mol with 30 kcal/mol as the energy cutoff value [25] . The partial least squares method [26] is an extension of multiple regression analysis employed to linearly correlate the independent variables (CoMFA and CoMSIA fields) to dependent variables (pIC50 values). The PLS with leave-one-out cross-validation was carried out using a training set of twenty molecules to obtain simultaneously the cross-validation correlation coefficient (Q 2 ) and the optimum number of components (N). Subsequently, the correlation coefficient (R 2 ), Fisher test (F) and standard error of estimate (SEE) were obtained by applying noncross validation and without column filtering. In general, (Q 2 > 0.50 and R 2 > 0.60) are required conditions for the internal predictability of a QSAR model [27, 28] . The best models were also judged based on low optimal number of component and SEE values. To further evaluate the predictability of a model, an external validation was performed using a test set of six molecules, where the required condition (r ext 2 > 0.6) must be satisfied [29] . The Y-Randomization test is performed to survey the strength of the generated models [30] . After every iteration, a new QSAR models is created by using the dependent variable (-logIC50) randomly shuffled. The low values of Q 2 and R 2 of the model indicate that the developed 3D-QSAR model with original data is powerful and is not inferred by chance. The molecular docking is a powerful approach, which was conducted by the Surflex-Dock [18] to predict the optimized binding conformation of a ligand and understand the receptor-ligand structural interactions. The obtained results were analyzed using PyMol and Discovery studio 2016 software [31, 32] . The ligands and protein preparation steps for the docking protocol were applied to establish molecular docking and predict the binding modes. The X-ray crystal structure of AChE (PDB code: 1EVE) was downloaded from the RCSB data bank. Its cocrystallized ligand was removed, and the obtained protein structure was utilized for this study. The Discovery Studio 2016 was used to prepare the protein by addition of polar hydrogens and removing water molecules in 1EVE receptor. The most active compound of database and the newly designed molecules were docked into the binding pocket of 1EVE receptor. The binding mode between the receptor and docked molecules was studied, compared, and selected for further analysis. The AChE complexed with drug candidates were subjected to MD simulation to understand the dynamic behaviors and conformational changes of ligands. GROMACS 5.1.1 software package with gromos54a7 force field was used to run 20 nanoseconds MD simulation on docked complexes of inhibitor and protein. Ligand parameters were generated with the same force field using PRODRG server [33] . The cubic simulation box was generated by gmx editconf tool. The system was solvated with SPC water model using gmx solvate tool. The electro-neutralization of the system was performed using gmx genion tool. Afterwards, energy minimization was carried out to eliminate steric clashes and optimize of structure. Following energy minimization, equilibration was performed in two steps. The NVT equilibration was performed for 100 picoseconds at 300 K to stabilize the temperature of the system. This was followed by 100 picoseconds NPT equilibration at 1 bar pressure. The pressure coupling at 1 bar was maintained using Parrinello-Rahman barostat [34] . Using the LINear Constraint Solver (LINCS) algorithm, bond lengths were kept conserved [35] . Particle mesh ewald (PME) was applied to deal with long-distance electrostatics interactions [36] . Finally, the 20 ns MD simulation was applied for each complex with desired temperature and pressure on a Linux machine with Intel core i-7 processor (32 GB RAM). Based on the 3D-QSAR modeling, it seemed that the created models have a credible fitting for predicting new antiacetylcholinesterase agents as contained in the PLS analyses summary ( Table 2 ). The experimental and predicted pIC50 are shown in Table 3 belonged to CoMSIA. The high Q 2 , R 2 and r ext 2 values along with low SEE value and an optimum number of components, suggest that both models possess high predictive abilities and significant statistical reliability of the QSAR models. To identify the structure requirements contributing to the binding affinity, the CoMFA/CoMSIA contour maps were generated, which could provide an increase in the biological activity of the molecules. The modification in certain area according to the useful information provided by the contour maps would rationally guide lead optimization. Compound 2 was used as a reference structure since it is the most active compound and then superposed over the CoMFA and CoMSIA contour maps as displayed in Figures 3 and 4 , respectively. CoMFA steric interactions are displayed in green (80% contribution) and yellow (20% contribution) colored contours. The bulky substituents are favored around green regions, while yellow regions' bulky groups are unfavored. As depicted in Figure 3 -A, two small green contour maps located at C-3 and C-6 positions of the phenyl, indicate sterically favorable bulky substituents at these positions, which could increase activity. A yellow contour map is covered the C-4 position of the phenyl ring, indicating that position is not favorable for larger substituent, which could be demonstrated by compound 5. For example, the compound 9 (pIC50 = 5.690) with OCH 3 group at the C-4 position of the phenyl ring showed lowest activity than those with no or less bulky substitute at the same position. CoMFA electrostatic interactions are displayed in red (20% contribution) and blue (80% contribution) colored contours. The electropositive charge groups are favorable in the blue regions of electrostatic contours for enhancing the inhibitory activity, while the red contour may lead to an increase in inhibitory activity of the electronegative charges as shown in (Figure 3-B) . Two red contour maps are seen near C-1, C-2, and C-6 positions of the phenyl ring, suggested that electronegative groups at these positions would exhibit good anti-acetylcholinesterase activity, this can explain why the activity of compounds 6 and 7 with an electronegative substituent in C-2 position of phenyl ring, showed a slight increase of inhibition affinity. On the other hand, a medium sized blue contour is observed close to the C-3 and C-4 positions, which suggested that electropositive groups at these positions are favorable to increase the inhibitory potency of 1,2,3-triazole based analogs. The CoMSIA contour plot analysis was carried out to describe the important molecular properties of the steric, electrostatic, H-bonding, and hydrophobic interaction fields. Since the steric and electrostatic contour maps obtained from the CoMFA and CoMSIA model were consistent, only the hydrophobic and H-bonding contour maps were described and analyzed here. As mapped in Figure 4 -A, the yellow areas (80% contribution) are where hydrophobic groups predicted to enhance biological activity, whereas white domains (20% contribution) represent areas where hydrophobic groups are predicted to be detrimental to activity. A yellow contour can be observed around the C-6 position of the phenyl ring, which indicates that replacing this position with hydrophobic groups may increase the activity. In contrast, a white contour near the C3 and C4 positions revealed hydrophobic groups at these positions would result in the loss of the bioactivity. For example, derivatives 17, 19, 25, and 26 (pIC50 = 4.301-4.790) bearing hydrophobic groups (i.e., F, Cl, and Me) at C-3 position presented distinct decrease. Moreover, two medium sized white contours are observed on the other side of the molecule close to benzylpiperidine which suggested that hydrophilic groups at these positions are favorable to increase the inhibitory potency. The cyan (80% contribution) and purple (20% contribution) contours (Figure 4 -B) represented the desired and undesired positions for donating hydrogen bond, respectively. A cyan contour is seen on the bridge between the piperidine and benzylpiperidine indicates that hydrogen bond donors at this area could improve the potency. The favorable and unfavorable positions for HBA groups are shown as magenta (80% contribution) and red (20% contribution) contours, respectively (Figure 4 -C). The magenta contour around benzylpiperidine illustrated favorable region where HBA groups are beneficial for the biological activity, while a very small red contour located at piperidine implies that the HBA groups at this position would decrease the inhibitory activity. Table 4 shows the results of nine random shuffles for the Y-randomization test. The Q 2 and R 2 obtained by the nine iteration were ranging from -0.014 to 0.227 and 0.116 to 0.402, respectively, for CoMFA, while for CoMSIA, the Q 2 and R 2 were in the range (from -0.099 to 0.235) and (0.137-0.329), respectively. This indicates that the developed models are robust and are not inferred by chance correlations. Figure 5 summarized the information provided by CoMFA and CoMSIA studies, which could supply some meaningful clues to design new molecules with high predictive activity. Various modifications were tried on certain areas by use of outcome of the SAR results. According to the main structure-activity relationship revealed by the present study, six (A1-A6) new 1,2,3-triazole based derivatives were in silico designed by modifying chemical structure of compound 2. Figure 6 shows the structural template of the newly designed molecules. The predicted activity values of the newly designed compounds were in the range (6.026-6.569) and (6.062-6.597) for CoMFA and CoMSIA models, respectively. All the designed molecules showed greater predicted activities not only than that of compound 2, but also than its experimental activity (pIC50 = 5.744) as shown in Table 5 . The most active compound and designed compounds were molecularly docked with the X-ray crystallized complex of AChE (PDB:1EVE) using Surflex-dock to gain deeper insight into the binding modes and explore the interactions between the protein and these inhibitors. Compound 2 and the proposed compound A1 were further subjected to detailed molecular analysis and compared. They were all well-superimposed in the ligand-binding pocket of the protein. The proposed compound A1 was scored as high as 6.7088. It was found higher than that of compound 2 (total score = 5.8942). As shown in the two-dimensional diagram of the molecular docking (Figure 7) , the 1,2,3-triazole linker and the C-O of amide bond made both a hydrogen bond with TYR120. Moreover, the NH on the bridge between 1,2,3-triazole linker and the phenyl substituted by two methyl was in Pi-donor hydrogen bond contact with SER122. On the other side of the ligand, benzyl moiety made a Pi Lone Pair interaction with SER286. The results of docking showed favorable and convenient interactions for the proposed compound A1 (Figure 8 ) by presenting a conventional hydrogen bond. The NH of amide bond made a hydrogen bond with TYR70; the NH substituent in C4 position of the benzyl ring connected to 1,2,3-triazole formed a hydrogen bond interaction with GLU199. Moreover, the coumarin fragment with planar structure bound to the aromatic amino acid PHE331 by a π-π stacking interaction. Furthermore, the docking results had been compared with the QSAR results to confirm mutually the correlation. The binding interactions match well with the results of electrostatic and hydrophobic contour maps. These findings support the selected pose of the proposed compound A1, which would form a stronger inhibitory effect on the receptor protein. We utilized the X-ray crystal structure of AChE protein (PDB ID: 1EVE) to dock the 1EVE compounds. These virtual structures were subjected to 20 ns MD simulations to study the comparative conformation dynamics of the protein after ligand binding. Energy, temperature, pressure, and density of the compound bound protein were stable during the 20 ns simulation. Table 6 shows the average values of various MD related properties. Root mean-square deviation (RMSD) analysis computes the average distance between the atoms of 1EVE protein during simulation. The analysis provides insights into protein conformation, stability, and equilibrium of the system during simulation [37] . The average backbone RMSD for protein-active molecule complex and protein designed molecule complex were found to be 0.2565 ± 0.0341 nm and 0.2540 ± 0.0280 nm respectively ( Figure 9A ). Furthermore, RMSD of the protein for protein-active molecule complex and protein designed molecule complex was found to be 0.3129 ± 0.0336 nm and 0.3090 ± 0.0308 nm, respectively ( Figure 9B ). RMSD analysis of both complexes indicates that protein designed molecule complex was slightly more stable during the 20 ns MD simulation. Next, we analyzed the effect of active molecule and designed molecule binding on internal dynamics of target protein by calculating the root mean square fluctuation (RMSF) ( Figure 9C ). Average RMSF value for protein-active molecule complex and protein designed molecule complex was found to be 0.1531 ± 0.0731 nm and 0.1431 ± 0.0694 nm, respectively. RMSF analysis indicated that binding of designed molecule to the target protein resulted in less fluctuation in comparison to the binding of active molecule. Radius of gyration (Rg) is a parameter to assess the folding of regular secondary structures into 3-dimensional protein structure. Rg indicates change in protein structure compactness and its overall dimension. The effect of active molecule and designed molecule binding on Rg value of the protein was computed ( Figure 9D ). Average Rg values for protein-active molecule complex and protein designed molecule complex were 2.3604 ± 0.0081 nm and 2.3600 ± 0.0072 nm, respectively. Rg analysis shows that there is no significant difference in compactness of folding of target protein after binding of both active molecule and designed molecule. Solvent accessible surface area (SASA) determines the bimolecular surface area assessable to surrounding solvent molecules. The change in SASA for protein-active molecule complex and protein designed molecule complex were analyzed ( Figure 10A ). Average values of SASA for protein-active molecule complex and protein designed molecule complex were reported as 235.5676 ± 4.5732 nm 2 and 241.7229 ± 3.5879 nm 2 , respectively. Protein designed molecule complex has significantly high SASA in comparison to protein-active molecule complex. Hydrogen bond formation plays an important role in the stabilization of protein and protein-ligand complex structures by minimizing the energy of the system. Intra-protein ( Figure 10B ) and protein-ligand hydrogen bonding pattern were studied in both complexes ( Figure 10C, 10D) . Average value of intra-protein hydrogen bonds in protein-active molecule complex and protein designed molecule complex were 399.9980 ± 10.4525 and 397.3213 ± 9.7869, respectively. Furthermore, hydrogen bond formation between target protein-active molecule ( Figure 10C ) and target protein-designed molecule ( Figure 10D ) were also studied. Designed molecule forms significantly high number of hydrogen bonds with target protein in comparison to the active molecule, which indicates the strong binding activity of designed molecule. Further, we conducted secondary analysis for the both complexes to find out the changes in the secondary structures induced by the binding of both active molecule and designed molecule ( Figure 11A, 11B ). There were no significant changes in secondary structure observed upon binding of both molecules. The outcome of this study gave insights into the design of novel AChE inhibitors for the treatment of Alzheimer. In this paper, a series of 1,2,3-triazole based derivatives previously identified as acetylcholinesterase inhibitors was studied using in silico techniques, such as 3D-QSAR. The overall contour plots analyses revealed that electrostatic and hydrophobic substitutions were found to be critical for increasing the AChE inhibitory activity. Overall, these findings were very useful for designing six novel AChE inhibitors, among which compound A1 with the highest predictive activity was selected for detailed analyses and compared to the most active compound. Furthermore, validation of 3D-QSAR study was performed by docking-assisted MD simulation study. The comparison illustrated that designed molecule combined with AChE was more stable than the most active compound with the same targeted protein. The designed molecule had a stronger electrostatic and hydrophobic interactions with receptor. The identified structure features for AChE inhibition through docking and MD simulation studies showed a satisfactory correlation with the 3D-QSAR study. 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