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In Silico Analysis of 9H-(Fluorenyl) Methyl Lysine Carbamate Derivatives as Butyrylcholinesterase Inhibitors

Mahalakshmi C. S. Parepalli 1, 2 and Rajitha Galla2*

1Department of Pharmaceutical Chemistry, G. Pulla Reddy College of Pharmacy, Mehdipatnam, Hyderabad, Telangana, India.

2Institute of Pharmaceutical Technology, Sri Padmavati Mahila Visvavidyalayam, Tirupati, Andhra Pradesh, India.

Corresponding Author E-mail:grajitha@spmvv.ac.in

Article Publishing History
Article Received on : 07 Oct 2024
Article Accepted on :
Article Published : 13 Nov 2024
Article Metrics
Article Review Details
Reviewed by: Dr. Anitha Medchem
Second Review by: Dr. Ayssar Nahle
Final Approval by: Dr. Tanay Pramanik
ABSTRACT:

The successful treatment strategy for Alzheimer's disease focuses on inhibiting acetylcholinesterase (AChE) and butyrylcholinesterase (BChE) to enhance cholinergic activity. This study aimed to design fifteen 9H-(fluorenyl)methyl lysine carbamate derivatives (4a-o) as potential BChE inhibitors and perform molecular docking studies to identify their binding sites and evaluate their binding mechanisms on the BChE protein by Glide software. The results revealed that the most potent compounds were 4a, 4c, and 4j, with docking scores of -10.53, -10.57, and -10.85 kcal/mol, respectively indicating strong binding affinities with the BChE enzyme, suggesting as potential inhibitors. Notably, compound 4j exhibited complete oral absorption, high permeability in MDCK cells, and good skin permeability. Its surface area components were within acceptable ranges. Thus, compound 4j is proposed as a promising candidate for experimental evaluation as a BChE inhibitor.

KEYWORDS:

Alzheimer Disease; Acetylcholinesterase; ADME studies; Butyrylcholinesterase; Molecular Docking

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Parepalli M. C. S, Galla R. In Silico Analysis of 9H-(Fluorenyl) Methyl Lysine Carbamate Derivatives as Butyrylcholinesterase Inhibitors. Orient J Chem 2024;40(6).


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Parepalli M. C. S, Galla R. In Silico Analysis of 9H-(Fluorenyl) Methyl Lysine Carbamate Derivatives as Butyrylcholinesterase Inhibitors. Orient J Chem 2024;40(6). Available from: https://bit.ly/3Z2ax2h


Introduction

Progressive cognitive decline and memory loss characterizes Alzheimer’s disease (AD), a complex neurological disease that has a major influence on quality of life and places heavy societal and economic obligations on society as a whole 1. Cholinergic dysfunction plays an important role in the progression of Alzheimer’s disease.2. Traditional treatment for cognitive issues have included the use of acetylcholinesterase (AChE) inhibitors such as donepezil, galantamine and rivastigmine, which function by maintaining levels of acetylcholine (ACh). The first-line treatment for Alzheimer’s disease involves the use of acetylcholinesterase inhibitors3 (Figure 1).  However, these inhibitors have dose dependant limitations and poor long-term efficacy4.

Recent research suggests that butyrylcholinesterase (BChE) inhibitors or mixed acetyl and butyryl cholinesterase inhibitors are more effective in treating Alzheimer’s disease and have fewer side effects compared to traditional acetylcholinesterase inhibitors5. A promising area of study for anti-AD drugs focuses on dual-target cholinesterase inhibitors. The enzyme butyrylcholinesterase is mainly found in the brain, plasma, and liver. Hydrolysis of ACh can be facilitated in mammalian brains by AChE and BChE. Both enzymes differ genetically, structurally, and kinetically6. BChE is mostly located in glial cells, whereas AChE can be found in synaptic cleft (soluble) and membranes (membrane-bound). Although BChE’s precise physiological role is still unknown, recent research suggests it may have a role in the development of Alzheimer’s. Notably, in the advanced stages of this condition, there is an increase in BChE activity in the brain, which contributes to the breakdown of neurotransmitter acetylcholine. The underlying concept is that the decrease in acetylcholinesterase levels is countered by an increase in butyrylcholinesterase activity, leading to more pronounced cholinergic deficits.7.

It has been suggested that a more successful therapeutic approach, particularly in the latter stages of AD, would be to simultaneously block AChE and BChE. To improve cholinergic neurotransmission, it is necessary to preserve ACh levels, and this can be accomplished by targeting both enzymes8. One drug that exemplifies the therapeutic promise of this strategy is rivastigmine, which is used to treat Alzheimer’s disease. Rivastigmine is unique among cholinesterase inhibitors in that it can reversibly bind to and block both enzymes, leading to a rise in acetylcholine levels9. Furthermore, not only does BChE play a part in ACh hydrolysis, but it may also be involved in non-cholinergic pathways that contribute to the pathophysiology of Alzheimer’s disease10 Research suggests that BChE can impact the development of Aβ plaques and is involved in controlling beta-amyloid (Aβ) aggregation. In addition, it has been suggested that BChE may modulate tau pathology and neurofibrillary tangles through its interactions with tau protein, another characteristic feature of AD 11.

Researchers are making significant efforts to identify BChE inhibitors due to the complex role BChE plays in AD. Improving therapeutic efficacy while reducing side effects is the goal to develop novel drugs that preferentially inhibit BChE or display dual AChE/BChE inhibition12. The belief that effective disease management requires a holistic strategy addressing all facets of AD pathogenesis is the guiding principle behind these initiatives.13

Figure 1: Reported Cholinesterase inhibitors

Click here to View Figure

Design of 9H-(fluorenyl) methyl lysine carbamate derivatives

In 1993, Tacrine (THA), a tricyclic compound became the first drug approved for treating Alzheimer’s disease which act by inhibiting AChE14. However, by 2013, it was removed from the market due to its hepatotoxicity and gastrointestinal side effects15.

In this study, we developed new compounds with structures similar to other tricyclic congeners, such as THA or carbazole, which are known for their cholinesterase inhibitory and neuroprotective properties. Specifically, the incorporation of Fmoc (9-fluorenyl methoxy carbonyl) significantly enhances the selectivity and stability of these compounds, establishing them as promising inhibitors of BChE16. Therefore, it was planned to design Fmoc-Lysine analogs that act as potent inhibitors of BChE and are well accommodated within the active site of the enzyme thereby advancing the potential for developing therapeutic agents aimed at treating neurological disorders like Alzheimer’s disease (AD). (Fig. 2).  

Figure 2: Design of 9H-(fluorenyl) methyl lysine carbamate derivatives

Click here to View Figure

Materials and Methods

Docking Studies

The digital structure of Human butyrylcholinesterase (HBChE) in complex with tacrine (PDB ID 4BDS) was sourced from the protein databank 17. The structure underwent optimization, which included the removal of unbound water molecules, the addition of hydrogen atoms to fulfill valence requirements, the incorporation of amino acids that were missed to enhance side chain stability, and energy minimization using the Protein Preparation Wizard tool from the Schrodinger Suite alongside the OPLS-2005 force field. Subsequently, the Glide Xp docking methodology was employed to investigate protein-ligand interactions with the optimized protein structure. Initially, all ligands from the dataset were docked into a three-dimensional grid designed to align with the binding pocket of target protein 18. Binding interactions and efficiency were assessed using the Glide Score, which incorporates factors such as hydrophilic and hydrophobic interactions, Van der Waals, metal binding groups, frozen rotatable bonds, and polar interactions with receptors.

Ligand Preparation

The 2D structures of the planned derivatives were transformed into 3D using sophisticated algorithms and highly effective force fields. The Schrödinger suite’s LigPrep program was used to do early geometric optimization and energy minimization on the compounds. Using the EPIK program, the LigPrep module generated a number of ionization states as well as numerous possible conformers and tautomers.

 ADME Studies

The molecule descriptors and pharmaceutically relevant aspects of the results were calculated using Qikprop 4.4. that utilizes physicochemical factors to assess whether a compound possesses drug-like properties. Key factors assessed include molecular weight (MW), partition coefficient (QPlogPo/w), water solubility (QPlogS), alongside indices for intestinal absorption such as Caco-2 and MDCK permeability 19. These comprehensive analyses facilitate the identification of compounds with optimal ADME profiles, enhancing the drug development process.

Results and Discussion

Chemistry

Fifteen compounds were designed targeting the butyrylcholinesterase protein (PDB ID: 4BDS). These compounds were created by incorporating various substitutions at the carbamide moiety. The IUPAC nomenclature of designed derivatives, 4a-o are presented in Table 1.

Table 1: IUPAC nomenclature of derivatives (4a-o).

Compound

R

IUPAC Nomenclature

4a

-C6H5

(9H-fluorenyl) methyl(6-benzamido-1-hydroxyhexan-2yl) carbamate

4b

-CH2C6H5

(9H-fluorenyl) methyl (1-hydroxy-6-(2-phenyl acetamido) hexan-2-yl) carbamate

4c

– CH2C6H5(O-Cl)

(9H-fluorenyl)methyl(6-(2-(2-chlorophenyl)acetamido)-1-hydroxyhexan-2-yl) carbamate

4d

-CH2C6H5(P-Cl)

(9H-fluorenyl)methyl(6-(2-(4-chlorophenyl)acetamido)-1-hydroxyhexan-2-yl) carbamate

4e

-cyclopropyl

(9H-fluorenyl)methyl(6-(cyclopropanecarboxamido)-1-hydroxyhexan-2-yl)-1-hydroxyhexan-2-yl) carbamate

4f

-CH2CH3

(9H-fluorenyl) methyl (1-hydroxy-6-propionamidohexan-2-yl) carbamate

4g

-CH2CH2CH3

(9H-fluorenyl)methyl (6-butyramido-1-hydroxyhexan-2-yl) carbamate

4h

-CH2C6H5(P-OCH3)

(9H-fluorenyl) methyl (1-hydroxy-6-(2-(4-methoxyphenyl) acetamido) hexan-2-yl) carbamate

4i

-C6H5(P-Cl)

(9H-fluorenyl)methyl(6-(4-chlorobenzamido)-1-hydroxyhexan-2-yl) carbamate

4j

-C6H5(O-F)

(9H-fluorenyl)methyl(6-(2-fluorobenzamido)-1-hydroxyhexan-2-yl) carbamate

4k

-C6H5(P-Br)

(9H-fluorenyl)methyl(6-(4-bromobenzamido)-1-hydroxyhexan-2-yl) carbamate

4l

-CH2Cl

(9H-fluorenyl)methyl(6-(2-chloroacetamido)-1-hydroxyhexan-2-yl) carbamate

4m

-C6H5(P-F)

(9H-fluorenyl)methyl(6-(4-fluorobenzamido)-1-hydroxyhexan-2-yl) carbamate

4n

-C6H5(O-Br)

(9H-fluorenyl)methyl(6-(2-bromobenzamido)-1-hydroxyhexan-2-yl) carbamate

4o

-CH2C6H5(O-OCH3)

(9H-fluorenyl) methyl (1-hydroxy-6-(2-(2-methoxyphenyl) acetamido) hexan-2-yl) carbamate

 

Molecular Docking Studies

Docking studies were conducted to predict and compare the binding mode of the target molecules with the known butyrylcholinesterase enzyme inhibitor, rivastigmine 20 . Molecular docking was utilized to evaluate possible interactions between proteins and ligands, as well as to analyze the conformational alterations of the ligands within the protein environment. The Glide XP module facilitates the generation of approximately 100 unique protein-ligand complex conformations for each docked complex, with only one being selected based on the Emodel energy. The docked compounds and co-crystal inhibitor were strategically placed within the proposed binding site of the protein to identify an optimal binding orientation. Following this, molecular docking was conducted to evaluate their binding modes and interactions with critical amino acids in the active site of the butyrylcholinesterase enzyme. The crystal structure of Human butyrylcholinesterase (HBChE) complexed with tacrine (PDB ID 4BDS) served as the basis for the initial docking model of HBChE. The successful docking of tacrine into the binding site validated the docking methodology, with rivastigmine as a reference standard.

The docking analysis revealed that all compounds occupied the enzyme’s active site in a manner comparable to that of tacrine. The Glide dock scores of the compounds, co-crystal ligand (tacrine) and reference standard (rivastigmine) with interacting amino acids were depicted in Table 2. The results revealed that the main interaction force of the candidate compounds, co-crystal ligand and reference standard with the HBChE active site is hydrophobic and π-π stacking interactions. All these form hydrophobic interactions with the residues (green colour) such as Val 288, Phe 329, Phe 398, Ala 199, Leu 286, Trp 231, and Ile 442. The Docking scores for all compounds varied from -6.43 kcal/mole to -10.85 kcal/mol and were found to be good inhibitors of butyrylcholinesterase. Compounds 4a, 4c and 4j are more potent than the rest of the compounds. 4j had the highest dock score of -10.851 kcal/mol, followed by 4c (-10.57 kcal/mol) and 4a (-10.53 kcal/mol) with binding energies -53.43, -67.47 and -61.583 kcal/mol respectively. These compounds exhibited greater potency compared to the standard drug rivastigmine, which has a docking score of -6.42 kcal/mol. The amino acids most frequently involved in Hydrogen bond with the ligands are Tyr 128, His 438, and Glu 197. Additionally, all compounds, including tacrine, interacted through π-π stacking interactions with Tyr 332, Trp 231, and Phe 329. These findings indicate that the tricyclic moiety, present in all the synthesized compounds as well as tacrine, plays a crucial role in binding to the target, which is essential for effective inhibition of the BChE enzyme. Docking interactions of 4a, 4c, 4j andrivastigmine are depicted in fig. 3.

Table 2: Docking results of the compounds 4a-o

Compound

Glide Dock score

(Kcal/mol)

No. of Hydrogen

bonds

Amino acid residues interacted

Binding Energy

(Kcal/mol)

4a

-10.53

2

Glu 197, Tyr 128

-61.583

4b

-6.57

1

His 438

-64.56

4c

-10.57

1

Tyr 128

-67.47

4d

-9.557

1

Tyr 128

-59.23

4e

-7.03

1

His 438

-56.89

4f

-9.04

3

Tyr128, Glu197, His 438

-61.052

4g

-7.23

1

His 438

-54.79

4h

-7.83

1

Glu 197

-49.76

4i

7.35

1

His 438

-60.12

4j

-10.851

1

His 438

-53.437

4k

-6.78

1

Tyr 128

-61.75

4l

-6.92

1

His 438

-64.46

4m

-7.43

0

His 438

-62.34

4n

-7.12

1

His 438

-63.12

4o

-6.43

0

His 438

-63.98

Tacrine a

-9.46

1

Tyr 128

-61.52

Rivastigmine b

-6.42

1

Gly 116

-49.275

a co-crystal ligand present in the human butyrylcholinesterase enzyme (PDB Id: 4BDS),

 b reference standard drug.

Figure 3: 2D interaction diagrams illustrating the docked conformations of a) 4a b) 4c c) 4j  and d) rivastigmine in the human butyrylcholinesterase enzyme (PDB Id: 4BDS)

Click here to View Figure

 ADME Molecular Properties

ADME modeling has garnered significant interest in pharmaceutical research for drug development due to its high-throughput nature and cost-effectiveness. Table 3 and Table 4 display the outcomes of molecular properties and ADME prediction produced by Qikprop for the 15 compounds. The molecular characteristics of 15 compounds were analysed, and no molecular weight violations were found. The surface area components were utilized to estimate SASA, FOSA, FISA, PISA, and volume within the recommended ranges of 300-1000, 0-750, 7-330, 0.0-450.0, and 500-2000, respectively 21. Most of the values of 4a-o were within the permissible range specified by Schrodinger’s Qikprop guidance.

Compound permeability was predicted using the values of QPlogBB (brain-blood partition coefficient) and QPPCaco (gut-blood barrier model). A permeability score of 500 or more is considered good. Among the designed compounds, 4n has the highest projected value, 615.777. When it comes to CNS activity, none of the substances are active. Regarding QPlogBB, each compound exhibits negative values, which suggests that they have poor permeability and are polar. According to the prediction, every compound has good skin permeability (log Kp in the -8.0-1.0 range), but only a few compounds (4d, 4i, 4j, 4k and 4n) have apparent MDCK cell permeability (<25: bad, >500: excellent). Almost all the compounds strongly binded to human serum albumin. (QPlogKhsa, -1.5 to +1.5) Compound 4j demonstrated a 100% oral absorption rate (HOA) in humans, while other compounds also show a good percentage of human oral absorption.

Table 3: In silico prediction of molecular properties of 4a-o

Compound

MW

Dipole

SASA

FOSA

FISA

PISA

Volume

4a

458.556

0

851.772

214.554

133.632

503.585

1525.299

4b

472.583

0

873.99

251.267

133.519

489.204

1581.493

4c

507.028

0

888.318

245.024

130.687

462.428

1614.283

4d

507.028

0

898.482

251.303

133.69

441.847

1626.308

4e

422.523

0

826.835

375.166

144.74

306.929

1455.462

4f

410.512

0

792.149

353.775

136.778

301.596

1405.812

4g

424.539

0

825.167

387.05

136.527

301.59

1466.476

4h

502.609

0

922.009

349.872

135.576

436.561

1665.317

4i

493.001

0

875.839

214.554

133.638

455.994

1569.471

4j

476.546

0

856.613

213.308

129.841

479.026

1537.596

4k

537.452

0

880.853

214.546

133.629

455.275

1578.358

4l

430.93

0

783.41

270.431

140.318

301.586

1389.67

4m

476.546

0

860.811

214.554

133.636

465.597

1541.441

4n

537.452

0

871.059

210.422

127.225

471.254

1569.899

4o

502.609

0

911.675

331.785

132.083

447.807

1659.986

SASA : Solvent Accessible Surface Area, FOSA : hydrophobic component, FISA : hydrophilic component, and PISA : pi component.

Table 4: In silico prediction of ADME profiles of 4a-o

Compound

CNS

QPlog

Po/w

QPlogS

QPlog

HERG

QPP

Caco

QPlog

BB

QPP

MDCK

QPlog

Kp

QPlog

Khsa

HOA (%)

4a

-2

5.353

-7.216

-7.941

535.387

-1.673

251.81

-1.152

0.823

94.167

4b

-2

5.062

-6.459

-6.518

311.811

-1.738

252.481

-1.105

0.607

88.264

4c

-2

5.446

-6.98

-6.422

341.365

-1.589

508.331

-1.147

0.693

78.259

4d

-2

5.555

-7.212

-6.401

312.702

-1.592

620.762

-1.275

0.721

78.214

4e

-2

3.983

-6.004

-5.647

272.643

-1.81

193.739

-2.05

0.316

93.857

4f

-2

3.735

-5.322

-5.38

309.24

-1.653

233.79

-1.922

0.199

93.385

4g

-2

4.106

-5.732

-5.536

311.894

-1.75

235.178

-1.821

0.307

95.627

4h

-2

5.2

-6.745

-6.496

275.863

-1.884

240.516

-1.232

0.638

75.159

4i

-2

5.842

-7.947

-7.821

535.32

-1.526

621.63

-1.32

0.935

96.014

4j

-2

5.558

-7.451

-7.828

581.592

-1.545

625.184

-1.169

0.855

100

4k

-2

5.918

-8.06

-7.841

535.426

-1.518

668.532

-1.322

0.958

84.517

4l

-2

3.883

-5.427

-5.338

253.679

-1.448

527.095

-2.083

0.202

92.716

4m

-2

5.587

-7.578

-7.803

535.342

-1.569

455.653

-1.286

0.864

95.535

4n

-2

5.874

-7.823

-7.825

615.777

-1.455

641.567

-1.148

0.939

85.347

4o

-2

5.209

-6.738

-6.44

327.512

-1.812

261.186

-1.128

0.63

76.549

QPlogHERG:predicted IC50 value for the inhibition of HERG potassium channels. QPPMDCK:predicted permeability of MDCK cells in nanometers per second.

Conclusion

In conclusion, this study focuses on the advancement of selective inhibitors of butyrylcholinesterase (BChE), an enzyme involved in the development of Alzheimer’s disease. A series of fifteen 9H-(fluorenyl) methyl lysine carbamate derivatives (4a-o) were rationally developed and tested using in silico procedures. Among the compounds, 4j had the highest potency, with a docking score of -10.851 kcal/mol. Furthermore, ADME research demonstrated that compound 4j had 100% oral absorption rate, great permeability in MDCK cells, and good skin permeability. The surface area properties, including SASA, FOSA, FISA, PISA, and molecular volume, all fell within the required range. These findings indicate that compound 4j is a promising candidate among the series of designed compounds and can be explored further for Alzheimer’s disease treatment.

Acknowledgement

The authors would like to acknowledge the G. Pulla Reddy College of Pharmacy, Hyderabad and the Institute of Pharmaceutical Technology, Sri Padmavati Mahila Visvavidyalayam, Tirupati for providing a favourable research environment and supplying the necessary resources to successfully complete the work.

Funding Sources

The author(s) received no financial support for the research, authorship, and/or publication of this article.

Conflict of Interest

The author(s) do not have any conflict of interest.

Data Availability Statement

This statement does not apply to this article.

Ethics Statement

This research did not involve human participants, animal subjects, or any material that requires ethical approval.

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