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In silico discovery of DNA
    methyltransferase
         inhibitors.
   Angélica M. González-Sánchez¹
    Khrystall K. Ramos-Callejas¹
       Adriana O. Diaz-Quiñones¹
      Héctor M. Maldonado, Ph.D.²
         ¹University of Puerto Rico at Cayey
     ²Universidad Central del Caribe at Bayamón
In Silico discovery of DNA methyltransferase inhibitors.


                    Outline
  • Background and Significance
  • Hypothesis
  • Objectives
  • Methodology
  • Results
  • Conclusions
  • Future Studies
  • Acknowledgements/Questions
Methyltransferase
• Type of transferase enzyme that transfers a methyl group
  from a donor molecule to an acceptor.


• Methylation often occurs on nucleic bases in DNA or
  amino acids in protein structures.


• The methyl donor used by Methytransferases is a reactive
  methyl group bound to sulfur in S-adenosylmethionine
  (SAM).


                           SAM               Methyl Group
DNA methyltransferase
                                 • DNMT1 adds methyl groups to
                                   cytosine bases in newly
                                   replicated DNA.

                                 • These methyl      groups    are
                                   important to:
                                   • Modify how DNA bases are read
                                     during protein synthesis.
                                   • Control expression of genes in
                                     different types of cells.
  Structure of human DNMT1
(residues 600-1600) in complex
        with Sinefungin
        pdb: 3SWR
Significance
• In mammals, regulation of normal growth during
  embryonic stages is modulated by DNA methylation.


• Methylation of both DNA and proteins has also been
  linked to cancer development, as methylations that
  regulate expression of tumor suppressor genes
  promotes tumor genesis and metastasis.
Hypothesis

Specific, high-affinity inhibitors of DNA
 methyltransferase (DNMT1) can be
 identified via an In Silico approach.
Objectives
• To identify potential new targets in DNA
  Methyltransferase.

• Based on previous results, create a
  pharmacophore model for the selected target,
  and perform a primary screening using
  LigandScout.

• To perform a Secondary Screening using
  AutoDock Vina to identify “top-hits”.
Methodology
In general we followed the methodology presented in the In Silico Drug
Discovery Workshop:
• Pharmacophore models were generated using information from drugs
  previously identified and benzene mapping analysis.


• Pharmacophore models generated were then used to "filter" relatively large
  databases of small chemical compounds (drug-like or lead-like). A smaller
  database with the compounds presenting characteristics imposed by the model
  was generated.


• This smaller database of compounds was screened by docking analysis
  against the originally selected target. Results were combined and ranked
  according to predicted binding energies and potential Top-hits identified.


• Results were analyzed and can be used for further refinement of the
  Pharmacophore model.
Drug discovery strategy
Software Used:
 • PyMOL Molecular Graphics System v1.3
   http://www.pymol.org
 • AutoDock (protein-protein docking
   software) http://autodock.scripps.edu/
 • Auto Dock Tools: Graphical Interface for AutoDock
   http://mgltools.scripps.edu/downloads
 • AutoDock Vina: improving the speed and accuracy of
   docking with a new scoring function, efficient optimization
   and multithreading. http://vina.scripps.edu/
 • LigandScout: Advanced Pharmacophore Modeling and
   Screening of Drug Databases.
   http://www.inteligand.com/ligandscout/

Databases Used:
• Research Collaboratory for Structural Bioinformatics (RCSB)
  www.pdb.org
Results
Results




D357 -10.8     D506 -11.0




      M02            M01
•   Clean lead-like ZINC Database (1.7 million compounds)              Results
•   Sample of >150,000 compounds (5 pieces)
•   Pharmacophore M01: 27284; Average BE top 100 hits = 9.86
•   Pharmacophore M02: 39525; Average BE top 100 hits = 9.94
•   27% of filtered compounds fulfilled requirements of both models.
                   Compound       Affinity     Model/pie
                     Name     (Binding Energy)   ce
               1   DNMT1_1         -10.5       M02_0.4
               2   DNMT1_2         -10.5       M02_0.0
               3   DNMT1_3         -10.4       M02_0.4
               4   DNMT1_4         -10.4       M02_0.2
               5   DNMT1_5         -10.4       M02_0.5        Predicted
               6   DNMT1_6         -10.4       M02_0.5                      Number of
                                                           Binding Energy
               7   DNMT1_7         -10.3       M01_0.3                      compounds
                                                             (kcal/mol)
               8   DNMT1_8         -10.3       M02_0.5
               9   DNMT1_9         -10.3       M02_0.4          -10.5            2
              10   DNMT1_10        -10.2       M02_0.3          -10.4            4
              11   DNMT1_11        -10.2       M02_0.4          -10.3            3
              12   DNMT1_12        -10.2       M01_0.4
              13   DNMT1_13        -10.2       M01_0.5
                                                                -10.2          10
              14   DNMT1_14        -10.2       M01_0.0          -10.1           11
              15   DNMT1_15        -10.2       M01_0.3           -10           14
              16   DNMT1_16        -10.2       M01_0.3           -9.9          26
              17   DNMT1_17        -10.2       M02_0.0
              18   DNMT1_18        -10.2       M01_0.0           -9.8          36
              19   DNMT1_19        -10.2       M01_0.0           -9.7          76
              20   DNMT1_20        -10.1       M01_0.4
              21   DNMT1_21        -10.1       M02_0.5
                                                               Total           182
              22   DNMT1_22        -10.1       M02_0.5
              23   DNMT1_23        -10.1       M01_0.3
              24   DNMT1_24        -10.1       M01_0.0
              25   DNMT1_25        -10.1       M02_0.2
Conclusions
• Two Pharmacophore models were generated using
  information obtained from the interaction of two previously
  identified compounds with the DNA methyltransferase as
  target.

• Ranking of predicted top-hits indicated that results obtained
  by Model 2 are superior to the results obtained with Model 1.

• Although close to 27% of the compounds obtained were
  selected by both models, a significant number of compounds
  with predicted high binding energies was also obtained with
  Model 1.

• A total of 182 compounds with predicted binding energies
  equal or higher than -9.7 kcal/mol was found between the two
  models used in this pilot project.
Future studies
• Complete the analysis of the interactions between the
  top-hits and the target and evaluate possibility of
  refining the Pharmacophore model.


• Broaden the sample of the compound database to
  include a larger number of drugs (1.7 million lead-like
  compounds).


• Identify top-hits and test a group of these compounds
  in a bioassay (proof-of-concept).
References
Chik F, Szyf M. 2010. Effects of specific DMNT gene depletion on cancer cell
transformation and breast cancer cell invasion; toward selective DMNT
inhibitors. Carcinogenesis. 32(2):224-232.


Fandy T. 2009. Development of DNA Methyltransferase Inhibitors for the
Treatment of Neoplastic Diseases. Current Medicinal Chemistry. 16(17):2075-
2085.


Goodsell, D. 2011. Molecule of the month: DNA Methyltransferases. RCBS
Protein Data Bank. http://www.pdb.org/pdb/101/motm.do?momID=139


Perry A, Watson W, Lawler M, Hollywood D. 2010. The epigenome as a
therapeutic target in prostate cancer. Nature Reviews on Urology. 7(1):668-680.
Acknowledgements

  Dr. Héctor M. Maldonado
Ms. Adriana O. Díaz-Quiñones
       RISE Program
Questions




Thanks for your attention!

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In silico discovery of dna methyltransferase inhibitors 05 05 (1) (1)

  • 1. In silico discovery of DNA methyltransferase inhibitors. Angélica M. González-Sánchez¹ Khrystall K. Ramos-Callejas¹ Adriana O. Diaz-Quiñones¹ Héctor M. Maldonado, Ph.D.² ¹University of Puerto Rico at Cayey ²Universidad Central del Caribe at Bayamón
  • 2. In Silico discovery of DNA methyltransferase inhibitors. Outline • Background and Significance • Hypothesis • Objectives • Methodology • Results • Conclusions • Future Studies • Acknowledgements/Questions
  • 3. Methyltransferase • Type of transferase enzyme that transfers a methyl group from a donor molecule to an acceptor. • Methylation often occurs on nucleic bases in DNA or amino acids in protein structures. • The methyl donor used by Methytransferases is a reactive methyl group bound to sulfur in S-adenosylmethionine (SAM). SAM Methyl Group
  • 4. DNA methyltransferase • DNMT1 adds methyl groups to cytosine bases in newly replicated DNA. • These methyl groups are important to: • Modify how DNA bases are read during protein synthesis. • Control expression of genes in different types of cells. Structure of human DNMT1 (residues 600-1600) in complex with Sinefungin pdb: 3SWR
  • 5. Significance • In mammals, regulation of normal growth during embryonic stages is modulated by DNA methylation. • Methylation of both DNA and proteins has also been linked to cancer development, as methylations that regulate expression of tumor suppressor genes promotes tumor genesis and metastasis.
  • 6. Hypothesis Specific, high-affinity inhibitors of DNA methyltransferase (DNMT1) can be identified via an In Silico approach.
  • 7. Objectives • To identify potential new targets in DNA Methyltransferase. • Based on previous results, create a pharmacophore model for the selected target, and perform a primary screening using LigandScout. • To perform a Secondary Screening using AutoDock Vina to identify “top-hits”.
  • 8. Methodology In general we followed the methodology presented in the In Silico Drug Discovery Workshop: • Pharmacophore models were generated using information from drugs previously identified and benzene mapping analysis. • Pharmacophore models generated were then used to "filter" relatively large databases of small chemical compounds (drug-like or lead-like). A smaller database with the compounds presenting characteristics imposed by the model was generated. • This smaller database of compounds was screened by docking analysis against the originally selected target. Results were combined and ranked according to predicted binding energies and potential Top-hits identified. • Results were analyzed and can be used for further refinement of the Pharmacophore model.
  • 9. Drug discovery strategy Software Used: • PyMOL Molecular Graphics System v1.3 http://www.pymol.org • AutoDock (protein-protein docking software) http://autodock.scripps.edu/ • Auto Dock Tools: Graphical Interface for AutoDock http://mgltools.scripps.edu/downloads • AutoDock Vina: improving the speed and accuracy of docking with a new scoring function, efficient optimization and multithreading. http://vina.scripps.edu/ • LigandScout: Advanced Pharmacophore Modeling and Screening of Drug Databases. http://www.inteligand.com/ligandscout/ Databases Used: • Research Collaboratory for Structural Bioinformatics (RCSB) www.pdb.org
  • 11. Results D357 -10.8 D506 -11.0 M02 M01
  • 12. Clean lead-like ZINC Database (1.7 million compounds) Results • Sample of >150,000 compounds (5 pieces) • Pharmacophore M01: 27284; Average BE top 100 hits = 9.86 • Pharmacophore M02: 39525; Average BE top 100 hits = 9.94 • 27% of filtered compounds fulfilled requirements of both models. Compound Affinity Model/pie Name (Binding Energy) ce 1 DNMT1_1 -10.5 M02_0.4 2 DNMT1_2 -10.5 M02_0.0 3 DNMT1_3 -10.4 M02_0.4 4 DNMT1_4 -10.4 M02_0.2 5 DNMT1_5 -10.4 M02_0.5 Predicted 6 DNMT1_6 -10.4 M02_0.5 Number of Binding Energy 7 DNMT1_7 -10.3 M01_0.3 compounds (kcal/mol) 8 DNMT1_8 -10.3 M02_0.5 9 DNMT1_9 -10.3 M02_0.4 -10.5 2 10 DNMT1_10 -10.2 M02_0.3 -10.4 4 11 DNMT1_11 -10.2 M02_0.4 -10.3 3 12 DNMT1_12 -10.2 M01_0.4 13 DNMT1_13 -10.2 M01_0.5 -10.2 10 14 DNMT1_14 -10.2 M01_0.0 -10.1 11 15 DNMT1_15 -10.2 M01_0.3 -10 14 16 DNMT1_16 -10.2 M01_0.3 -9.9 26 17 DNMT1_17 -10.2 M02_0.0 18 DNMT1_18 -10.2 M01_0.0 -9.8 36 19 DNMT1_19 -10.2 M01_0.0 -9.7 76 20 DNMT1_20 -10.1 M01_0.4 21 DNMT1_21 -10.1 M02_0.5 Total 182 22 DNMT1_22 -10.1 M02_0.5 23 DNMT1_23 -10.1 M01_0.3 24 DNMT1_24 -10.1 M01_0.0 25 DNMT1_25 -10.1 M02_0.2
  • 13. Conclusions • Two Pharmacophore models were generated using information obtained from the interaction of two previously identified compounds with the DNA methyltransferase as target. • Ranking of predicted top-hits indicated that results obtained by Model 2 are superior to the results obtained with Model 1. • Although close to 27% of the compounds obtained were selected by both models, a significant number of compounds with predicted high binding energies was also obtained with Model 1. • A total of 182 compounds with predicted binding energies equal or higher than -9.7 kcal/mol was found between the two models used in this pilot project.
  • 14. Future studies • Complete the analysis of the interactions between the top-hits and the target and evaluate possibility of refining the Pharmacophore model. • Broaden the sample of the compound database to include a larger number of drugs (1.7 million lead-like compounds). • Identify top-hits and test a group of these compounds in a bioassay (proof-of-concept).
  • 15. References Chik F, Szyf M. 2010. Effects of specific DMNT gene depletion on cancer cell transformation and breast cancer cell invasion; toward selective DMNT inhibitors. Carcinogenesis. 32(2):224-232. Fandy T. 2009. Development of DNA Methyltransferase Inhibitors for the Treatment of Neoplastic Diseases. Current Medicinal Chemistry. 16(17):2075- 2085. Goodsell, D. 2011. Molecule of the month: DNA Methyltransferases. RCBS Protein Data Bank. http://www.pdb.org/pdb/101/motm.do?momID=139 Perry A, Watson W, Lawler M, Hollywood D. 2010. The epigenome as a therapeutic target in prostate cancer. Nature Reviews on Urology. 7(1):668-680.
  • 16. Acknowledgements Dr. Héctor M. Maldonado Ms. Adriana O. Díaz-Quiñones RISE Program

Editor's Notes

  1. exclusion volumes?? (Esto lo podemosarreglar en la semana o me dicen y yo se los mando)