Presentation is loading. Please wait.

Presentation is loading. Please wait.

SELECTION OF NEW TARGET PROTEINS FOR DRUG DESIGN IN GENOME OF MYCOBACTERIUM TUBERCULOSIS Alexander V. Veselovsky V.N. Orechovich Institute of Biomedical.

Similar presentations


Presentation on theme: "SELECTION OF NEW TARGET PROTEINS FOR DRUG DESIGN IN GENOME OF MYCOBACTERIUM TUBERCULOSIS Alexander V. Veselovsky V.N. Orechovich Institute of Biomedical."— Presentation transcript:

1 SELECTION OF NEW TARGET PROTEINS FOR DRUG DESIGN IN GENOME OF MYCOBACTERIUM TUBERCULOSIS Alexander V. Veselovsky V.N. Orechovich Institute of Biomedical Chemistry RAMS, Moscow, Russia

2 Modern pipeline of new drug development
Identify disease Find a drug effective against disease protein (2-5 years)‏ Isolate protein involved in disease (2-5 years)‏ Preclinical testing (1-3 years)‏ Human clinical trials (2-10 years)‏ File IND Formulation & Scale-up File NDA Ability to decreasing finance and time cost FDA approval (2-3 years)‏

3 Pipeline of target-based and main steps in drug development

4 Genomics for drug discovery
Genome Annotation and classification of genes Drug targets selection

5 Comparative genomics Human genome Gram(+) bacteria genome
Genes-targets of bacteria that differ from human genes Gram(-) bacteria genome D.T.Moir et al., 1999

6 Requirements of “Ideal” Antimicrobial Agent and to Its Target

7 Target selection (Comparative genomics)‏
favourable similarity Unfavourable similarity Human genome Genomes of related species Target genome Genomes of human symbiont microorganisms Genomes of other strains of target species Proteins with known spatial structures (PDB)‏ 7

8 GeneMesh – program for protein-targets selection for antimicrobial drug discovery using comparative and functional genomics A.V. Dubanov, A.S. Ivanov, A.I. Archakov (2001) Computer searching of new targets for antimicrobial drugs based on comparative analysis of genomes. Vopr. Med. Khim. 47, (in Russian).

9 Algorithm of program GenMesh
BLAST Set of proteins from PDB Spatial structure ability BLAST Genomes of related species Presence of homologs in genomes of related species BLAST Target genome Absence of mutations in other strains of target species databases BLAST Genomes of other strains of target species Absence of homologs in human genome BLAST Human genome

10 Target selection in Mycobacterium tuberculosis H37Rv using broadened set of genomes for analysis
targets for antimycobacterial agents without influencing normal human microflora Common targets for Mycobacteria and fungi

11 3D protein structure modelling
< 150 amino acids Results heavily dependent on human expertise and information from other methods for elimination decoy folds Model and template sequence identity must be > 30% Limitation 4-8 A < 30% Ab initio (De novo)‏ 3-6 A % Threading (Fold recognition) 1-3 A % Homology modelling Accuracy* Approach * - RMSD of C (A) and residues true positions (%)‏

12 Target selection in genome of Mycobacterium tuberculosis H37Rv

13 Potential Targets Found in Genome of M. tuberculosis H37R
Freiberg C, Wieland B, Spaltmann F, Ehlert K, Brötz H, Labischinski H.Identification of novel essential Escherichia coli genes conserved among pathogenic bacteria. J Mol Microbiol Biotechnol Jul;3(3):483-9. Thanassi JA, Hartman-Neumann SL, Dougherty TJ, Dougherty BA, Pucci MJ. Identification of 113 conserved essential genes using a high-throughput gene disruption system in Streptococcus pneumoniae. Nucleic Acids Res Jul 15;30(14):

14 Russian Federal Space Agency
Program for protein crystallization in weightlessness International space station (ISC)‏

15 Target M. tuberculosis H37R

16 Phosphopantetheine adenylyltransferase of bacteria
PPAT 4'-phosphopantetetheine + ATP PPi + 3'dephospho-CoA + Pi Coenzyme A Penultimate and rate-limited enzyme of bacterial coenzyme A biosynthesis

17 Comparison of spatial structures of PPAT M.tuberculosis
Active site Green – from Russia (1,6 A)‏ Yellow – 1TFU.pdb (1,99 A)‏

18 Scheme of virtual screening for new PPAT inhibitors in molecular database
Experimental testing Database preprocessing Manual selection Docking Compounds selection by scoring functions consensus Calculation of additional scoring function

19 Discovery ligands from molecular database by docking method

20 is applicable to 3-D models
Empirical scoring function The method is fast ‏ semi-automated is applicable to 3-D models does not need extensive training

21 Accuracy of scoring function
21

22 Relationship between scoing functions
22

23 Receptor-Ligand complex
Limitation of scoring functions Srt Receptor Ligand in solution HLW HRW Free energy bound water free rotation Sint G = H-TS loosely associated water molecules free water Entropy HLR Enthalpy SW Svib Receptor-Ligand complex 23

24 Consensus of scoring functions

25 The first docking of compounds in PPAT active site
17500 complexes

26 Active site of phosphopantetheine adenylyltransferase M.tuberculosis
26

27 The second docking of compounds in PPAT active site
24000 complexes

28 Experimental testing of selected ligands

29 Institute of Bioorganic Chemistry RAS Institute of Crystallography RAS
Acknowledgments. This work was supported in part by Russian Federal Space Agency (in frame of ground preparation of space research). Participants: Institute of Bioorganic Chemistry RAS Institute of Crystallography RAS Institute of Biomedical Chemistry RAMS 29

30 Thank you for attention!
30


Download ppt "SELECTION OF NEW TARGET PROTEINS FOR DRUG DESIGN IN GENOME OF MYCOBACTERIUM TUBERCULOSIS Alexander V. Veselovsky V.N. Orechovich Institute of Biomedical."

Similar presentations


Ads by Google