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Dr. Sachchidanand
(HOD) Pharmacoinformatics Dept.
NIPER Hajipur.
Dr. Shailendra S. Chaudhaery
Lecturer Pharmacoinformatics Dept.
NIPER Hajipur.
Under the supervision of :
PAVAN KUMAR
M.S.(Pharm.)
Pharmacoinformatics
4th semester,
NIPER, Hajipur.
Presented by :
Exploration of a potential FtsZ inhibitors as new scaffolds
by Ligand and Structure based drug design methods for
development of novel anti-tubercular drugs
Tuberculosis (TB) is the chronic infectious disease caused
by infection with species belonging to the Mycobacterium
tuberculosis (Mtb).
Mtb is slow-growing bacterium, which remains in dormant
state for long period of time in the host, thus they are
resistant to the effect of antibiotics.
TB typically attacks the lungs but can also affect other
parts of the body.
2
M.tuberculosis
Introduction
The classical symptoms of active TB infection are:
Chronic cough
Blood-tinged sputum
Fever
 Night sweats
Weight loss
Fatigue and finger clubbing
Classical Symptoms of TB
Global burden & epidemiology of TB
• It is estimated that about 8.7 million new cases of TB (13% co-infected with
HIV) and 1.4 million people died from TB in 2011.
• Recent statistics from WHO estimate that there are approximately 9.2
million new tuberculosis (TB) cases every year with a global mortality rate
of 23%.
Category Name of drug Mechanism of action
First line drugs
Isoniazid Inhibition of fatty acid synthesis
Rifampicin Inhibition of protein synthesis
Pyrazinamide Disrupt plasma membrane, disrupt energy metabolism.
Ethambutol Inhibition of arabinogalactan synthesis
Streptomycin Inhibition of protein synthesis
Second line drugs
Fluoroquinolones Inhibit Nucleic Acid Synthesis
Cycloserine Inhibition of cell wall synthesis
Capreomycin Inhibition of protein synthesis
Para aminosalicylic acid Inhibition of folic acid and iron metabolism
Ethionamide Inhibition of fatty acid synthesis
Aminoglycosides
(Amikacin/kanamycin)
Inhibition of protein synthesis
5
Antitubercular drugs
6
Different targets for Tuberculosis
5. FtsZ (Filamentous temperature-sensitive protein Z ) Drug Target for Tuberculosis.
Serial
No.
Drug Target Antibiotic class Drug name Mechanism of action
1. DNA gyrase Fluoroquinolones Moxifloxacin,
gatifloxacin
Inhibition of protein synthesis
2. RNA polymerase Rifamycins Rifapentine Inhibits DNA-dependent RNA
polymerase activity
3. Ribosome Oxazolidinones Linezolid,
PNU-100480,
AZD-5847
Inhibition of protein synthesis
4. ATP synthase Diarylquinoline TMC-207 Depletion of membrane energy
 Multi-drug resistant Mtb is a major worldwide health problem.
Therefore, it is need to develop new antibiotics with novel modes
of action to overcome this emerging resistance problem.
7
1.It is an essential protein for bacterial cell division.
2. This protein is highly conserved, and identified in many bacteria.
3. It is not present in higher eukaryotes organism, So it shows that FtsZ
inhibitors should not be toxic to human cells as well as high
eukaryotes.
FtsZ is an emergent target
8
Filamentous temperature-sensitive protein Z (FtsZ)
 FtsZ is the key protein of bacterial cell division, filament-forming
GTPase and a structural homologue of eukaryotic tubulin.
 It interacts with membrane-associated proteins FtsA and ZipA
and assembles into a ring like structure at the midcell, this ring is
known as Z-ring.
 The formation of the Z-ring is facilitated by the ability of FtsZ to
bind to GTP, which enables polymerization of FtsZ, resulting in
the creation of straight protofilaments.
 It is the first protein to move to the division site, and is essential
for recruiting other proteins that produce a new cell wall between
the dividing cells. So it is an emergent target for new antibiotics.
Cell envelope
DNA
FtsZ ring
10
Mechanism of action of FtsZ
11
Benzimidazoles: A new class of anti-TB drugs
 Benzimidazole nucleus is a constituent of bioactive heterocyclic
compounds and structural isosters of naturally occurring nucleotides,
which allows them to interact easily with the biopolymers of the
living system.
 The 2,5,6-trisubstituted Benzimidazoles series of compound taken
for study having biological activity ranging from 0.06 to 100 µg/ml,
from the literature.
Benzimidazole structure
To build 2D-QSAR model to derive important physicochemical
properties related to FtsZ inhibitors.
To build Gaussian based 3D-QSAR model for FtsZ inhibitors.
 Development of best 3D-Pharmacophore model using Hip-hop
based method.
Analysis of important interaction involve in FtsZ protein using
docking-based approach.
Analysis of Hits obtained through virtual screening using
pharmacophore-based Approach and docking-based Approach.
Aim and objective
• Ligand based drug design Structure based drug design
Methodology
Docking2D-QSAR Pharmacophore
Virtual screening
Novel drug molecule
3D-QSAR
1.QSAR
A quantitative structure-activity relationship (QSAR) correlates
molecular properties to some specific biological activity in terms of
an equation.
Collection of compound from literature
Descriptor Generation
Feature Selection
Model Construct
Model Validation
Model Development flow chart
Ligand based approach
Collection Of Dataset:
Total 59 compounds were collected from the literature, and drawn
using Marvin Sketch program.
Biological Assay:FtsZ polymerization inhibitory assay
Biological activity( MIC) ranging from the 0.06 – 100 µg/ml.
MIC is converted to pMIC values.
Imported to the QSAR Module of Discovery studio Software.
Series of compounds
1. The 2,5,6-trisubstituted benzimidazoles.
, october,2011
Journal of Medicinal Chemistry , September 2011
2D-QSAR
Reference: Kumar, K.; Awasthi, D.; Lee, S.-Y.; Zanardi, I.; Ruzsicska, B.;Knudson, S.;
Tonge, P. J.; Slayden, R. A.; Ojima, I. Novel trisubstituted benzimidazoles, targeting Mtb
FtsZ, as a new class of antitubercular agents. J. Med. Chem. 2011, 54, 374−381.
16
Comp No. R1R2N R3 MIC((µg/ml) pMIC
1 0.63 5.78
2 6.25 4.82
3 100 3.63
4 50 3.96
5 0.06 6.77
Benzimidazole series compounds which
are used in QSAR study
17
MLR PLS
Methods
Training set Test set Training set Test set
r2
1. Random
method
0.936 0.732 0.870 0.696
2. Diversed
method
0.933 0.608 0.849 0.607
Division of Training and Test set
Best 2D-QSAR Model was generated through Random based and MLR method.
Number of molecules in Training set = 48
Number of molecules in Test set = 11
Log (1/C) = 0.415 + 0.407 * (ALogP)- 3.268e-003 * ( Molecular_Weight ) +
0.1909 * (Num_H_Donors ) + 0.3852 * (Num_H_Acceptors) - 0.1666 *
(Num_RotatableBonds) - 0.5808 * (Num_Rings) - 1.433e-002
*
( Num_AromaticRings) + 10.36 * (Molecular_Fractional Polar Surface Area)
2D-QSAR Model
Graph of 2D-QSAR (Random based -MLR)
19
Training set-48 (r2 = 0.936) Test set-11 (r2 = 0.732 )
20
The value of AlogP = 1.6-5.6
Number of HBA = 2-5
Number of HBD = 2-4
Polar surface area = 0.141-0.292
Number of rotatable bonds = 4-12
Number of Rings = 1-3
Conclusion of 2D-QSAR
Benzimidazole scaffolds
3D-QSAR (Gaussian Based Method)
Alignment of molecule Docking
based
Pharmacophore
based
Atom based
method
3D-QSAR exploits the three-dimensional properties of the ligands to
predict their biological activities using chemometric techniques. It has
served as a valuable predictive tool in the design of pharmaceuticals.
22Training set-45 (r2 = 0.844 ) Test set -11 (r2 = 0.682)
Compound (Random
based )
r2
Training set (48 comp.) 0.844
Test set (11 comp.) 0.682
Total compounds:59
3D-QSAR GRAPH( Field-based method)
Scatter Plot Analysis
Training set-48 (r2 = 0.839) Test set -11 (r2 = 0.667)
Scatter Plot Analysis
3D-QSAR GRAPH(Gaussian-based method
Compound (Random
based )
r2
Training set (48 comp.) 0.839
Test set (11 comp.) 0.667
Total compounds:59
24
COUNTER MAP OF 3D-QSAR (CoMFA)
Field-Based QSAR-Steric
Field-Based QSAR-Electrostatic
NH1
N
Electropositive
Electronegative
POSITIVER3
25
COUNTER MAP OF 3D-QSAR (CoMSIA)
Gaussian Based QSAR-Steric
POSITIVER3
26
NR3 POSITIVE NEGATIVE
NH1 NElectropositive Electronegative
Gaussian Based QSAR-Hydrophobic
Gaussian Based QSAR-Electrostatic
27
Gaussian Based QSAR-HBD
N
R3
POSITIVE
NEGATIVE
O
R3
NEGATIVE
POSITIVE
Gaussian Based QSAR-HBA
28
HBA
HBD
Steric
Hydrop
hobic
Electropositive
Electronegative
Summary of the 3D-QSAR
2.pharmacophore
A pharmacophore is the ensemble of steric and electronic features
that is necessary to ensure the optimal supramolecular interactions
with a specific biological target structure and to trigger its
biological response.
Model Development flow chart
Input-2D/3D molecules Structure
CHARMm forcefield and Minimization
Diverse Conformation generation
Generation of Hypothesis
validation
Pharmacophore result
Features Rank Direct Hit Partial Hit Max Fit
01 YZHH 116.621 1111111111 0000000000 4
02 YZHH 116.121 1111111111 0000000000 4
03 YZDH 115.918 1111111111 0000000000 4
04 RYZH 115.363 1111111111 0000000000 4
05 RYZH 115.363 1111111111 0000000000 4
06 RYZH 115.159 1111111111 0000000000 4
07 RYZH 115.159 1111111111 0000000000 4
08 YZDH 114.740 1111111111 0000000000 4
09 YZHA 114.621 1111111111 0000000000 4
10 YZHA 114.621 1111111111 0000000000 4
Hy-ali
Hy
HBD: Hydrogen bond donar (D)
HBA: Hydrogen bond acceptor (H)
HY: Hydrobhobic (Z)
Hy-ali: Hydrobhobic aliphatic (Y)
HBA
HBD
31
A. (Most active Compound-5) B. (Least active compound-3)
Alignment of the most potent compound-5 & least active compound-3.
Docking
32
PDB ID= 1RLU Resolution=2.08 R-value=0.182 pH=5.6
LIGAND-C10 H16 N5 O13 P3 S
5'-GUANOSINE-DIPHOSPHATE-
MONOTHIOPHOSPHATE
Structure based approach
Preparation
of protein
Preparation
of ligand
Structure of FtsZ protein
Nucleotide
binding site
GTP γ Thiophosphate
34
Active site residues PDB:1RLU, Ligand-Protein Complex
Molecular structure view
35
Ligand Interaction Diagram
36
RMSD VALUE=0.726
DOCKING SCORE= -8.93
Docking of the substrate on the same active site
Co-crystalised ligand Docked ligand
37
Compound Name
Biological Activity
(pMIC) Docking Score
Compound-5 6.77 -8.11
Compound-39 6.38 -7.32
Compound-43 6.1 -7.07
Compound-14 5.78 -6.27
Compound-30 5.36 -6.61
Compound-37 5.42 -6.81
Compound-7 5.09 -6.62
Compound-38 4.86 -6.33
Compound-48 4.76 -6.27
Compound-18 4.59 -6.22
Compound-21 4.48 -5.50
Compound-3 3.56 -4.98
The important amino acid residue are Glu136, Arg140, Phe 180, Asp184.
Docking of the selected FtsZ Inhibitors
38
Interaction of Most active compound-5 & Least active compound-3
Compound-5
Compound-3
Compound-3
Compound-5
39
Virtual screening workflow
Database ( Asinex database with
100000 molecules)
Filter (Lipinski rule of 5)
Shape based
screening (ROCS)
Retrieval of protein information
from PDB (PDB ID 1RLU)
Protein preparation
Pharmacophore-based
virtual screening
5 Hit Compounds
Receptor grid generation500 Compounds
78000 Compounds
Docking studies
Novel Hit Molecules
40
Compound
number
Compound name Fit value
Hit 1 1-(3-Benzyl-2-butyl-5-methyl-3H-imidazo[4,5-
b]pyridin-6-yl)-3-(3-chloro-phenyl)
3.65885
Hit 2 Pentanoic acid {2,5-dimethoxy-4-[3-(tetrahydro-
furan-2-ylmethyl)-thioureido]-ph
3.54616
Hit 3 N-[2-(5-Methyl-furan-2-yl)-1H-benzoimidazol-
5-yl]-butyramide_35
3.54553
Hit 4 Cyclopropanecarboxylic acid {2,5-diethoxy-4-
[3-(tetrahydro-furan-2-ylmethyl)-th
3.53696
Hit 5 1-[2-Butyl-3-(4-chloro-benzyl)-5-methyl-3H-
imidazo[4,5-b]pyridin-6-yl]-3-(3-chl
3.51725
Virtual screening Result Analysis
Table : Compound name and fit value of Hits molecules
41
Hit 3
Hit 1 Hit 2
Hit 4 Hit 5
Hit molecules from Virtual screening
42
Conclusion
The study of 2D-QSAR of FtsZ inhibitors concluded that the
descriptor ALogP, HBA, HBD, PSA are important for
antitubercular activity.
3D-QSAR models were interpreted in the form of contour maps,
concluded that steric field contribution is higher as compared to
other field intensities. The contour map of steric, hydrophobic,
electro-negative, electro-positive, HBA at R3 position and
electro-positive, HBD at R1 and R2 position responsible for
increased in antitubercular activity.
The best hypothesis with four point pharmacophore concluded
that the best model generated is the 3rd
number hypothesis i.e.
compound-5 (YZDH).
43
 The docking study concluded that Glu136, Arg140, Phe180
and Asp184 are important residues for ligand binding. Asp184
also provides essential H-bond interactions for favourable
ligand binding. And Asp184 should be taken in drug design
targeting the FtsZ.
Virtual screening method from Asinex database resulted in
identification of five new Hits, as potential Hits for testing of
novel inhibitors, these hits may responsible for the antitubercular
activity.
So finally we concluded that FtsZ is an emergent target for the
development of new antitubercular drugs.
REFERENCES
2. Leung AKW, White EL, Ross LJ, Reynolds RC, DeVito JA, Borhani
DW. Structure of Mycobacterium tuberculosis FtsZ reveals unexpected, G
protein-like conformational switches. J Mol Biol 2009, 342(3), 953–970.
3. Margalit DN, Romberg L, Mets RB, et al. Targeting cell division: small-
molecule inhibitors of FtsZ GTPase perturb cytokinetic ring assembly and
induce bacterial lethality. [Erratum to document citedin CA141:271048].
Proc Natl Acad Sci USA 2004, 101(38), 13969.
4. Scheffers D-J, de Wit JG, den Blaauwen T, Driessen AJM. GTP
hydrolysis of cell division protein FtsZ: evidence that the active site is
formed by the association of monomers. Biochemistry 2002, 41(2), 521–529.
1. K. Kumar, et al. Discovery of anti-TB agents that target the cell-division
protein FtsZ, Future Med Chem, 2010, 2 (8), 1305-1323.
45

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Exploration of a potential FtsZ inhibitors as new scaffolds by Ligand and Structure based drug design methods for development of novel anti-tubercular drugs

  • 1. 1 Dr. Sachchidanand (HOD) Pharmacoinformatics Dept. NIPER Hajipur. Dr. Shailendra S. Chaudhaery Lecturer Pharmacoinformatics Dept. NIPER Hajipur. Under the supervision of : PAVAN KUMAR M.S.(Pharm.) Pharmacoinformatics 4th semester, NIPER, Hajipur. Presented by : Exploration of a potential FtsZ inhibitors as new scaffolds by Ligand and Structure based drug design methods for development of novel anti-tubercular drugs
  • 2. Tuberculosis (TB) is the chronic infectious disease caused by infection with species belonging to the Mycobacterium tuberculosis (Mtb). Mtb is slow-growing bacterium, which remains in dormant state for long period of time in the host, thus they are resistant to the effect of antibiotics. TB typically attacks the lungs but can also affect other parts of the body. 2 M.tuberculosis Introduction
  • 3. The classical symptoms of active TB infection are: Chronic cough Blood-tinged sputum Fever  Night sweats Weight loss Fatigue and finger clubbing Classical Symptoms of TB
  • 4. Global burden & epidemiology of TB • It is estimated that about 8.7 million new cases of TB (13% co-infected with HIV) and 1.4 million people died from TB in 2011. • Recent statistics from WHO estimate that there are approximately 9.2 million new tuberculosis (TB) cases every year with a global mortality rate of 23%.
  • 5. Category Name of drug Mechanism of action First line drugs Isoniazid Inhibition of fatty acid synthesis Rifampicin Inhibition of protein synthesis Pyrazinamide Disrupt plasma membrane, disrupt energy metabolism. Ethambutol Inhibition of arabinogalactan synthesis Streptomycin Inhibition of protein synthesis Second line drugs Fluoroquinolones Inhibit Nucleic Acid Synthesis Cycloserine Inhibition of cell wall synthesis Capreomycin Inhibition of protein synthesis Para aminosalicylic acid Inhibition of folic acid and iron metabolism Ethionamide Inhibition of fatty acid synthesis Aminoglycosides (Amikacin/kanamycin) Inhibition of protein synthesis 5 Antitubercular drugs
  • 6. 6 Different targets for Tuberculosis 5. FtsZ (Filamentous temperature-sensitive protein Z ) Drug Target for Tuberculosis. Serial No. Drug Target Antibiotic class Drug name Mechanism of action 1. DNA gyrase Fluoroquinolones Moxifloxacin, gatifloxacin Inhibition of protein synthesis 2. RNA polymerase Rifamycins Rifapentine Inhibits DNA-dependent RNA polymerase activity 3. Ribosome Oxazolidinones Linezolid, PNU-100480, AZD-5847 Inhibition of protein synthesis 4. ATP synthase Diarylquinoline TMC-207 Depletion of membrane energy  Multi-drug resistant Mtb is a major worldwide health problem. Therefore, it is need to develop new antibiotics with novel modes of action to overcome this emerging resistance problem.
  • 7. 7 1.It is an essential protein for bacterial cell division. 2. This protein is highly conserved, and identified in many bacteria. 3. It is not present in higher eukaryotes organism, So it shows that FtsZ inhibitors should not be toxic to human cells as well as high eukaryotes. FtsZ is an emergent target
  • 8. 8 Filamentous temperature-sensitive protein Z (FtsZ)  FtsZ is the key protein of bacterial cell division, filament-forming GTPase and a structural homologue of eukaryotic tubulin.  It interacts with membrane-associated proteins FtsA and ZipA and assembles into a ring like structure at the midcell, this ring is known as Z-ring.  The formation of the Z-ring is facilitated by the ability of FtsZ to bind to GTP, which enables polymerization of FtsZ, resulting in the creation of straight protofilaments.  It is the first protein to move to the division site, and is essential for recruiting other proteins that produce a new cell wall between the dividing cells. So it is an emergent target for new antibiotics.
  • 11. 11 Benzimidazoles: A new class of anti-TB drugs  Benzimidazole nucleus is a constituent of bioactive heterocyclic compounds and structural isosters of naturally occurring nucleotides, which allows them to interact easily with the biopolymers of the living system.  The 2,5,6-trisubstituted Benzimidazoles series of compound taken for study having biological activity ranging from 0.06 to 100 µg/ml, from the literature. Benzimidazole structure
  • 12. To build 2D-QSAR model to derive important physicochemical properties related to FtsZ inhibitors. To build Gaussian based 3D-QSAR model for FtsZ inhibitors.  Development of best 3D-Pharmacophore model using Hip-hop based method. Analysis of important interaction involve in FtsZ protein using docking-based approach. Analysis of Hits obtained through virtual screening using pharmacophore-based Approach and docking-based Approach. Aim and objective
  • 13. • Ligand based drug design Structure based drug design Methodology Docking2D-QSAR Pharmacophore Virtual screening Novel drug molecule 3D-QSAR
  • 14. 1.QSAR A quantitative structure-activity relationship (QSAR) correlates molecular properties to some specific biological activity in terms of an equation. Collection of compound from literature Descriptor Generation Feature Selection Model Construct Model Validation Model Development flow chart Ligand based approach
  • 15. Collection Of Dataset: Total 59 compounds were collected from the literature, and drawn using Marvin Sketch program. Biological Assay:FtsZ polymerization inhibitory assay Biological activity( MIC) ranging from the 0.06 – 100 µg/ml. MIC is converted to pMIC values. Imported to the QSAR Module of Discovery studio Software. Series of compounds 1. The 2,5,6-trisubstituted benzimidazoles. , october,2011 Journal of Medicinal Chemistry , September 2011 2D-QSAR Reference: Kumar, K.; Awasthi, D.; Lee, S.-Y.; Zanardi, I.; Ruzsicska, B.;Knudson, S.; Tonge, P. J.; Slayden, R. A.; Ojima, I. Novel trisubstituted benzimidazoles, targeting Mtb FtsZ, as a new class of antitubercular agents. J. Med. Chem. 2011, 54, 374−381.
  • 16. 16 Comp No. R1R2N R3 MIC((µg/ml) pMIC 1 0.63 5.78 2 6.25 4.82 3 100 3.63 4 50 3.96 5 0.06 6.77 Benzimidazole series compounds which are used in QSAR study
  • 17. 17 MLR PLS Methods Training set Test set Training set Test set r2 1. Random method 0.936 0.732 0.870 0.696 2. Diversed method 0.933 0.608 0.849 0.607 Division of Training and Test set Best 2D-QSAR Model was generated through Random based and MLR method. Number of molecules in Training set = 48 Number of molecules in Test set = 11
  • 18. Log (1/C) = 0.415 + 0.407 * (ALogP)- 3.268e-003 * ( Molecular_Weight ) + 0.1909 * (Num_H_Donors ) + 0.3852 * (Num_H_Acceptors) - 0.1666 * (Num_RotatableBonds) - 0.5808 * (Num_Rings) - 1.433e-002 * ( Num_AromaticRings) + 10.36 * (Molecular_Fractional Polar Surface Area) 2D-QSAR Model
  • 19. Graph of 2D-QSAR (Random based -MLR) 19 Training set-48 (r2 = 0.936) Test set-11 (r2 = 0.732 )
  • 20. 20 The value of AlogP = 1.6-5.6 Number of HBA = 2-5 Number of HBD = 2-4 Polar surface area = 0.141-0.292 Number of rotatable bonds = 4-12 Number of Rings = 1-3 Conclusion of 2D-QSAR Benzimidazole scaffolds
  • 21. 3D-QSAR (Gaussian Based Method) Alignment of molecule Docking based Pharmacophore based Atom based method 3D-QSAR exploits the three-dimensional properties of the ligands to predict their biological activities using chemometric techniques. It has served as a valuable predictive tool in the design of pharmaceuticals.
  • 22. 22Training set-45 (r2 = 0.844 ) Test set -11 (r2 = 0.682) Compound (Random based ) r2 Training set (48 comp.) 0.844 Test set (11 comp.) 0.682 Total compounds:59 3D-QSAR GRAPH( Field-based method) Scatter Plot Analysis
  • 23. Training set-48 (r2 = 0.839) Test set -11 (r2 = 0.667) Scatter Plot Analysis 3D-QSAR GRAPH(Gaussian-based method Compound (Random based ) r2 Training set (48 comp.) 0.839 Test set (11 comp.) 0.667 Total compounds:59
  • 24. 24 COUNTER MAP OF 3D-QSAR (CoMFA) Field-Based QSAR-Steric Field-Based QSAR-Electrostatic NH1 N Electropositive Electronegative POSITIVER3
  • 25. 25 COUNTER MAP OF 3D-QSAR (CoMSIA) Gaussian Based QSAR-Steric POSITIVER3
  • 26. 26 NR3 POSITIVE NEGATIVE NH1 NElectropositive Electronegative Gaussian Based QSAR-Hydrophobic Gaussian Based QSAR-Electrostatic
  • 29. 2.pharmacophore A pharmacophore is the ensemble of steric and electronic features that is necessary to ensure the optimal supramolecular interactions with a specific biological target structure and to trigger its biological response. Model Development flow chart Input-2D/3D molecules Structure CHARMm forcefield and Minimization Diverse Conformation generation Generation of Hypothesis validation
  • 30. Pharmacophore result Features Rank Direct Hit Partial Hit Max Fit 01 YZHH 116.621 1111111111 0000000000 4 02 YZHH 116.121 1111111111 0000000000 4 03 YZDH 115.918 1111111111 0000000000 4 04 RYZH 115.363 1111111111 0000000000 4 05 RYZH 115.363 1111111111 0000000000 4 06 RYZH 115.159 1111111111 0000000000 4 07 RYZH 115.159 1111111111 0000000000 4 08 YZDH 114.740 1111111111 0000000000 4 09 YZHA 114.621 1111111111 0000000000 4 10 YZHA 114.621 1111111111 0000000000 4 Hy-ali Hy HBD: Hydrogen bond donar (D) HBA: Hydrogen bond acceptor (H) HY: Hydrobhobic (Z) Hy-ali: Hydrobhobic aliphatic (Y) HBA HBD
  • 31. 31 A. (Most active Compound-5) B. (Least active compound-3) Alignment of the most potent compound-5 & least active compound-3.
  • 32. Docking 32 PDB ID= 1RLU Resolution=2.08 R-value=0.182 pH=5.6 LIGAND-C10 H16 N5 O13 P3 S 5'-GUANOSINE-DIPHOSPHATE- MONOTHIOPHOSPHATE Structure based approach Preparation of protein Preparation of ligand
  • 33. Structure of FtsZ protein Nucleotide binding site GTP γ Thiophosphate
  • 34. 34 Active site residues PDB:1RLU, Ligand-Protein Complex Molecular structure view
  • 36. 36 RMSD VALUE=0.726 DOCKING SCORE= -8.93 Docking of the substrate on the same active site Co-crystalised ligand Docked ligand
  • 37. 37 Compound Name Biological Activity (pMIC) Docking Score Compound-5 6.77 -8.11 Compound-39 6.38 -7.32 Compound-43 6.1 -7.07 Compound-14 5.78 -6.27 Compound-30 5.36 -6.61 Compound-37 5.42 -6.81 Compound-7 5.09 -6.62 Compound-38 4.86 -6.33 Compound-48 4.76 -6.27 Compound-18 4.59 -6.22 Compound-21 4.48 -5.50 Compound-3 3.56 -4.98 The important amino acid residue are Glu136, Arg140, Phe 180, Asp184. Docking of the selected FtsZ Inhibitors
  • 38. 38 Interaction of Most active compound-5 & Least active compound-3 Compound-5 Compound-3 Compound-3 Compound-5
  • 39. 39 Virtual screening workflow Database ( Asinex database with 100000 molecules) Filter (Lipinski rule of 5) Shape based screening (ROCS) Retrieval of protein information from PDB (PDB ID 1RLU) Protein preparation Pharmacophore-based virtual screening 5 Hit Compounds Receptor grid generation500 Compounds 78000 Compounds Docking studies Novel Hit Molecules
  • 40. 40 Compound number Compound name Fit value Hit 1 1-(3-Benzyl-2-butyl-5-methyl-3H-imidazo[4,5- b]pyridin-6-yl)-3-(3-chloro-phenyl) 3.65885 Hit 2 Pentanoic acid {2,5-dimethoxy-4-[3-(tetrahydro- furan-2-ylmethyl)-thioureido]-ph 3.54616 Hit 3 N-[2-(5-Methyl-furan-2-yl)-1H-benzoimidazol- 5-yl]-butyramide_35 3.54553 Hit 4 Cyclopropanecarboxylic acid {2,5-diethoxy-4- [3-(tetrahydro-furan-2-ylmethyl)-th 3.53696 Hit 5 1-[2-Butyl-3-(4-chloro-benzyl)-5-methyl-3H- imidazo[4,5-b]pyridin-6-yl]-3-(3-chl 3.51725 Virtual screening Result Analysis Table : Compound name and fit value of Hits molecules
  • 41. 41 Hit 3 Hit 1 Hit 2 Hit 4 Hit 5 Hit molecules from Virtual screening
  • 42. 42 Conclusion The study of 2D-QSAR of FtsZ inhibitors concluded that the descriptor ALogP, HBA, HBD, PSA are important for antitubercular activity. 3D-QSAR models were interpreted in the form of contour maps, concluded that steric field contribution is higher as compared to other field intensities. The contour map of steric, hydrophobic, electro-negative, electro-positive, HBA at R3 position and electro-positive, HBD at R1 and R2 position responsible for increased in antitubercular activity. The best hypothesis with four point pharmacophore concluded that the best model generated is the 3rd number hypothesis i.e. compound-5 (YZDH).
  • 43. 43  The docking study concluded that Glu136, Arg140, Phe180 and Asp184 are important residues for ligand binding. Asp184 also provides essential H-bond interactions for favourable ligand binding. And Asp184 should be taken in drug design targeting the FtsZ. Virtual screening method from Asinex database resulted in identification of five new Hits, as potential Hits for testing of novel inhibitors, these hits may responsible for the antitubercular activity. So finally we concluded that FtsZ is an emergent target for the development of new antitubercular drugs.
  • 44. REFERENCES 2. Leung AKW, White EL, Ross LJ, Reynolds RC, DeVito JA, Borhani DW. Structure of Mycobacterium tuberculosis FtsZ reveals unexpected, G protein-like conformational switches. J Mol Biol 2009, 342(3), 953–970. 3. Margalit DN, Romberg L, Mets RB, et al. Targeting cell division: small- molecule inhibitors of FtsZ GTPase perturb cytokinetic ring assembly and induce bacterial lethality. [Erratum to document citedin CA141:271048]. Proc Natl Acad Sci USA 2004, 101(38), 13969. 4. Scheffers D-J, de Wit JG, den Blaauwen T, Driessen AJM. GTP hydrolysis of cell division protein FtsZ: evidence that the active site is formed by the association of monomers. Biochemistry 2002, 41(2), 521–529. 1. K. Kumar, et al. Discovery of anti-TB agents that target the cell-division protein FtsZ, Future Med Chem, 2010, 2 (8), 1305-1323.
  • 45. 45

Editor's Notes

  1. FtsZ Drug Target for Tuberculosis
  2. Z ring
  3. c
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  7. conclusion
  8. Benzimidazole scaffolds
  9. dhjfdvghdgvgv
  10. Field based
  11. disddhfchjdvjjv
  12. wdkwdjdskjfjfj
  13. FJIJ
  14. sdlfldkfdkggkkgk
  15. Collection of the Dtabase ( Asinex database with 100000 molecules)
  16. D
  17. Hit molecules from Virtual screening