Response Surface Study on Molecular Docking Simulations of Citalopram and Donepezil as Potent CNS Drugs

Computer-aided drug design provides broad structural modifications to evolving bioactive molecules without an immediate requirement to observe synthetic restraints or tedious protocols. Subsequently, the most promising guidelines with regard to synthetic and biological resources may be focused on upcoming steps. Molecular docking is common in-silico drug design techniques since it predicts ligand-receptor interaction modes and associated binding affinities. Current docking simulations suffer serious constraints in estimating accurate ligand-receptor binding affinities despite several advantages and historical results. Response surface method (RSM) is an efficient statistical approach for modeling and optimization of various pharmaceutical systems. With the aim of unveiling the full potential of RSM in optimizing molecular docking simulations, this study particularly focused on binding affinity prediction of citalopram-serotonin transporter (SERT) and donepezil-acetyl cholinesterase (AChE) complexes. For this purpose, Box-Behnken design of experiments (DOE) was used to develop a trial matrix for simultaneous variations of AutoDock4.2 driven binding affinity data with selected factor levels. Responses of all docking trials were considered as estimated protein inhibition constants with regard to validated data for each drug. The output matrix was subjected to statistical analysis and constructing polynomial quadratic models. Numerical optimization steps to attain ideal docking accuracies revealed that more accurate results might be envisaged through the best combination of factor levels and considering factor interactions. Results of the current study indicated that the application of RSM in molecular docking simulations might lead to optimized docking protocols with more stable estimates of ligand-target interactions and hence better correlation of in-silico in-vitro data.

[1]  M. Mahmoudian,et al.  FLEXIBLE LIGAND DOCKING STUDIES OF MATRIX METALLOPROTEINASE INHIBITORS USING LAMARCKIAN GENETIC ALGORITHM , 2004 .

[2]  David S. Goodsell,et al.  AutoDock4 and AutoDockTools4: Automated docking with selective receptor flexibility , 2009, J. Comput. Chem..

[3]  S. Agatonovic-Kustrin,et al.  A molecular approach in drug development for Alzheimer's disease. , 2018, Biomedicine & pharmacotherapy = Biomedecine & pharmacotherapie.

[4]  G. Box,et al.  Empirical Model-Building and Response Surfaces. , 1990 .

[5]  Thomas Lengauer,et al.  A fast flexible docking method using an incremental construction algorithm. , 1996, Journal of molecular biology.

[6]  Bhumika Bhatt,et al.  Alzheimer disease immunotherapeutics: Then and now , 2014, Human vaccines & immunotherapeutics.

[7]  P Willett,et al.  Development and validation of a genetic algorithm for flexible docking. , 1997, Journal of molecular biology.

[8]  T. Rosenberry,et al.  Structures of human acetylcholinesterase bound to dihydrotanshinone I and territrem B show peripheral site flexibility. , 2013, ACS medicinal chemistry letters.

[9]  André I. Khuri,et al.  Response surface methodology , 2010, International Encyclopedia of Statistical Science.

[10]  R. Castellani,et al.  Alzheimer disease. , 2010, Disease-a-month : DM.

[11]  M. Rudolph,et al.  Structures of human acetylcholinesterase in complex with pharmacologically important ligands. , 2012, Journal of medicinal chemistry.

[12]  Hege S. Beard,et al.  Glide: a new approach for rapid, accurate docking and scoring. 2. Enrichment factors in database screening. , 2004, Journal of medicinal chemistry.

[13]  C. Ginter,et al.  Structures of paraoxon‐inhibited human acetylcholinesterase reveal perturbations of the acyl loop and the dimer interface , 2016, Proteins.

[14]  F. Goñi-de-Cerio,et al.  Central nervous system diseases and the role of the blood-brain barrier in their treatment , 2013 .

[15]  Matthew P. Repasky,et al.  Glide: a new approach for rapid, accurate docking and scoring. 1. Method and assessment of docking accuracy. , 2004, Journal of medicinal chemistry.

[16]  S. Ferreira,et al.  Box-Behnken design: an alternative for the optimization of analytical methods. , 2007, Analytica chimica acta.

[17]  N. Ghasemi,et al.  Optimization of Key Factors in Serum Free Medium for Production of Human Recombinant GM-CSF Using Response Surface Methodology , 2019, Iranian journal of pharmaceutical research : IJPR.

[18]  E. Gouaux,et al.  X-ray structures and mechanism of the human serotonin transporter , 2016, Nature.

[19]  K. Kahrizi,et al.  Serotonin Transporter Polymorphism (5-HTTLPR) and Citalopram Effectiveness in Iranian Patients with Major Depressive Disorder , 2013, Iranian journal of psychiatry.

[20]  Yi Zheng,et al.  Rational Drug Design , 2012, Methods in Molecular Biology.

[21]  J M Blaney,et al.  A geometric approach to macromolecule-ligand interactions. , 1982, Journal of molecular biology.

[22]  George E. P. Box,et al.  Empirical Model‐Building and Response Surfaces , 1988 .

[23]  T. Furukawa,et al.  Citalopram versus other anti-depressive agents for depression. , 2012, Cochrane Database of Systematic Reviews.

[24]  J. Os,et al.  The size and burden of mental disorders and other disorders of the brain in Europe 2010 , 2011, European Neuropsychopharmacology.

[25]  R. Miri,et al.  Ab initio modeling of a potent isophthalamide-based BACE-1 inhibitor: amino acid decomposition analysis , 2012, Medicinal Chemistry Research.

[26]  D. Selkoe Alzheimer's disease. , 2011, Cold Spring Harbor perspectives in biology.

[27]  Nima Razzaghi-Asl,et al.  Response surface methodology in drug design: A case study on docking analysis of a potent antifungal fluconazole , 2017, Comput. Biol. Chem..

[28]  M. Pohanka,et al.  Possibility of Acetylcholinesterase Overexpression in Alzheimer Disease Patients after Therapy with Acetylcholinesterase Inhibitors. , 2015, Acta medica.

[29]  Ayaz Mahmood Dar,et al.  Molecular Docking: Approaches, Types, Applications and Basic Challenges , 2017 .