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Structural Modelling and Bioinformatics in Drug Discovery and Infectious Disease Shoba Ranganathan Professor and Chair – Bioinformatics Dept. of Chemistry.

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Presentation on theme: "Structural Modelling and Bioinformatics in Drug Discovery and Infectious Disease Shoba Ranganathan Professor and Chair – Bioinformatics Dept. of Chemistry."— Presentation transcript:

1 Structural Modelling and Bioinformatics in Drug Discovery and Infectious Disease Shoba Ranganathan Professor and Chair – Bioinformatics Dept. of Chemistry and Biomolecular Sciences &Adjunct Professor Biotechnology Research Institute Dept. of Biochemistry Macquarie University Yong Loo Lin School of Medicine Sydney, Australia National University of Singapore, Singapore (shoba.ranganathan@mq.edu.au)(shoba@bic.nus.edu.sg) Visiting scientist @ Institute for Infocomm Research (I 2 R), Singapore

2 Bioinformatics is …..  Bioinformatics is the study of living systems through computation

3 Data in Bioinformatics (in the main) and their management and analysis Networks, pathways and systems Sequences Genomes Transcriptomes Databases, ontologies Data & text mining Evolution and phylogenetics Maths/StatsAlgorithms Physics/ Chemistry Genetics and populations Structures

4 What is Immunoinformatics?  Using Bioinformatics to address problems in Immunology  Application of bioinformatics to accelerate immune system research has the potential to deliver vaccines and address immunotherapeutics.  Computational systems biology of immune response

5 Immunoinformatics Immunology Computer Science Biology

6 Summary  Introduction  Structural Immunoinformatic Database development  Data Analysis  Computational models  Applications Networks, pathways and systems Genetics and populations -omics Basic immunology Clinical immunology

7 The immune system  Composed of many interdependent cell types, organs and tissues  2nd most complex system in the human body Figure by Dr. Standley LJ  Two types: 1.Innate Immune System 2.Adaptive Immune System

8 It is a numbers game….  >10 13 MHC class I haplotypes (IMGT-HLA)  10 7 -10 15 T cell receptors (Arstila et al., 1999)  >10 9 combinatorial antibodies (Jerne, 1993)  10 12 B cell clonotypes (Jerne, 1993)  10 11 linear epitopes composed of nine amino acids  >>10 11 conformational epitopes

9 Adaptive immune system  Major Histocompatabilit y Complex (MHC Class I and II)  Human Leukocyte Antigen (HLA in human)  Peptide binding to MHC  Recognition of pMHC complex by the TCR  Activation of T cells  MHC Class I – CD8+ cytotoxic T cells  MHC Class II – CD4+ helper T cells www.immunologygrid.org

10 1. Epitope 3. T cell receptor How to generate a T cell-mediated immune response 2. MHC

11 1.Degradation of antigen 2.Peptide binding to MHC 3.Recognition of peptide-MHC complex by T-cells Yewdell et al. Ann. Rev Immunol (1999) 20% processed 0.5% bind MHC 50% CTL response 0.05% chance of immunogenicity Antigen processing pathway: peptides, MHC, T-cells

12 Physico-chemical properties affect MHC-peptide binding

13  Suggest candidate epitopes by in silico screening of entire proteins and even proteomes with specificity at:  the allele level  the supertype level  disease-implicated alleles alone.  Minimize the number of wet-lab experiments  Cut down the lead time involved in epitope discovery and vaccine design Computational models can help identify T cell epitopes

14 1.Sequence-based approach  Pattern recognition techniques binding motif, matrices, ANN, HMM, SVM  Main limitations: Require large amount of data for training Preclude data with limited sequence conservation 2.Structure-based approach  Rigid backbone modeling techniques  Flexible docking techniques  Main advantage: large training datasets unnecessary Predicting MHC-binding peptides Tong, Tan and Ranganathan (2007) Briefings in Bioinformatics 8: 96-108

15 Our aim: Structure-based prediction of MHC-binding peptides

16  Great potential to:  generate biologically meaningful data for analysis  predict candidate peptides for alleles that have not been widely studied, where sequence-based approaches fail or are not attempted  predict binding affinity of peptides  predict non-contiguous epitopes  Structure determination through experimental methods is both expensive and time-consuming  Has not been extensively studied due to high computational costs and development complexity Why structure?

17  Protein Threading [Altuvia et al. 1995; Schueler-Furman et al. 2000]  Homology Modeling [Michielin et al. 2000]  Rigid/Flexible Docking [Rosenfeld et al. 1993; Sezerman et al. 1996; Rognan et al. 1999; Desmet et al. 2000; Michielin et al. 2003] Existing Structure-based Prediction Techniques

18 1.Quality of predicted structures  Protein Threading, Homology Modeling and Rigid Docking  Cannot handle peptide flexibility  Available flexible docking techniques  Poor accuracy  Too slow 2.Usability of Models to predict binding  Existing free energy scoring functions  Tested only on small datasets  Poor correlation with experimental data Will existing structure-based techniques suffice?

19 Hypothesis for epitope selection  Peptides bound to MHC alleles are similar to substrates bound to enzymes  “Lock-and-key” mechanism for peptide selection  Shape  Size  Electrostatic characteristics

20  Introduction  Structural Immunoinformatic Database development  Data Analysis  Computational models  Applications Sequences Databases, ontologies Basic immunology Genetics and populations Structures

21 MPID:MHC-Peptide Interaction Database Govindarajan et al. (2003) Bioinformatics, 19: 309-310 RDB of 82 curated pMHC complexes (Class I: 64 & Class II:18)

22 Gap index = Peptide/MHC interaction characteristics Gap Volume Intermolecular hydrogen bonds Interface area Gap volume Interface area Interacting Residues Peptide Length

23 MPID-T: MHC-Peptide-T Cell Receptor Interaction Database Tong et al. (2006) Applied Bioinformatics, 5: 111-114  187 curated pMHC  16 with TCR  Human:110, Murine:74 and Rat:3  Alleles: 40 (interface area, H bonds, gap volume and gap index)

24  101 new entries  187 entries (Human: 110; Murine: 74; Rat: 3)  134 non-redundant entries (class I: 100; class II: 34)  121 class I and 41 class II entries  26 HLA alleles (class I: 18; class II: 8)  14 rodent alleles (class I: 8; class II: 6)  16 TCR/peptide/MHC complexes Distribution of MHC by allele

25 Peptide/MHC binding motifs  Conserved peptide properties in solution structures  Classified according to Alleles Peptide length PolarAmideBasicAcidicHydrophobic

26 1.There were only 36 crystal structures of unique MHC (2006) alleles vs. 1765 unique MHC alleles identified in IMGT/HLA database 2.Structure determination through experimental methods is both expensive and time- consuming 3.Homology model building for alleles with no structural data! How to obtain structures of experimentally unsolved alleles?

27  Introduction  Structural Immunoinformatic Database development  Data Analysis of pMHC Class I complexes  Computational models  Applications Data & text mining Maths/Stats Structures

28  Class I peptides  N-termini residues 0.02 – 0.29 Å  C-termini residues 0.00 – 0.25 Å  Class II binding registers  Only 9 residues fit in the binding groove  N-termini residues 0.01 – 0.22 Å  C-termini residues 0.02 – 0.27 Å Conservation of nonamer peptide backbone conformation

29  Introduction  Structural Immunoinformatic Database development  Data Analysis  Computational models  Applications Maths/Stats Structures Sequences Physics/ Chemistry

30 1.Finding the best fit conformation (docking) of peptides within the MHC binding groove 2.Screening potential binders from the background Two-step approach to predict MHC-binding peptides

31 Docking is a computationally exhaustive procedure  Large number of possible peptide conformations  3 global translational degrees of freedom  3 global rotational degrees of freedom  1 conformational degree of freedom for each rotatable bond y x z R N C C C C O  >10 10 possible conformations for a 10-residue peptide

32 Rapid docking of peptide to MHC Tong, Tan & Ranganathan (2004) Protein Sci. 13:2523-2532 Anchoring root fragments to reduce search space ( Pseudo-Brownian rigid body docking ) Loop modeling ( Loop closure of central backbone by satisfaction of spatial restraints) Ligand backbone and side-chain refinement ( entire backbone and interacting side-chains 2 3 1

33 Benchmarking with existing techniques AuthorTechniquePeptideRMSD a RMSD b Rognan et al.Simulated Annealing TLTSCNTSV1.040.46 FLPSDFFPSV1.591.10 GILGFVFTL0.460.32 ILKEPVHGV0.87 LLFGYPVYV0.780.33 Desmet et al.Combinatorial Buildup Algorithm RGYVYQGL0.560.32 Rosenfeld et al.Multiple Copy Algorithm FAPGNYPAL2.700.40 GILGFVFTL1.400.32 Sezerman et al.Combinatorial Buildup Algorithm LLFGYPVYV1.400.33 ILKGPVHGV1.300.87 GILGFVFTL1.600.32 TLTSCNTSV2.200.46 a RMSD of peptide backbone obtained from respective authors. b RMSD of peptide backbone obtained in our work from redocking bound complexes and single template respectively.

34 Quantitative separation of binders from non-binders: empirical free energy scoring function  DQ3.2  involved in several autoimmune diseases:  Celiac disease  insulin-dependent diabetes mellitus  IDDM-associated periodontal disease  autoimmune polyendocrine syndrome type II

35  G bind = α  G H + β  G S +  G EL + C   G bind = binding free energy   G H = hydrophobic term   G S = decrease in side chain entropy   G EL = electrostatic term  C = entropy change in system due to external factors  α, β, γ optimized by least-square multivariate regression with experimental binding affinities (IC 50 ) of MHC-peptides in training dataset (Rognan et al., 1999) Quantitative separation of binders from non-binders: empirical free energy scoring function

36 Test case: MHC Class II DQ8  DQ3.2  (DQA1*0301/DQB1*0302)  is involved in several autoimmune diseases:  Celiac disease  insulin-dependent diabetes mellitus  IDDM-associated periodontal disease  autoimmune polyendocrine syndrome type II

37 Data used  Structure: 1JK8 - DQ3.2β–insulin B9-23 complex  Dataset I: 127 peptides with experimentally determined IC 50 values [70 high-affinity (IC 50 < 500 nM), 13 medium- affinity (500 nM < IC 50 < 1500 nM )and 23 low-affinity (1500 < IC 50 < 5000 nM) binders and 21 non-binders (5000 < IC 50 )] derived from biochemical studies.  87 with known binding registers.  Dataset II: 12 Dermatophagoides pternnyssinus (Der p 2) peptides with experimental T-cell proliferation values from functional studies, with 7 peptides eliciting DQ3.2β- restricted T-cell proliferation.

38  Training  56 binding conformations with known registers  30 non-binding conformations from 3 non- binders  Testing  Test set 1 – 68 peptides from biochemical studies  16 strong ; 13 medium; 21 weak; 18 non-binders  Test set 2 – 12 peptides from functional studies  7 elicit T-cell proliferation Scoring: Training & testing datasets

39 Y Q T I E E N I K I F E E D A E285B 112-126 peptide Core sequenceBinding Energy YQTIEENIK-23.12 QTIEENIKI-21.34 TIEENIKIF-25.32 IEENIKIFE-29.53 EENIKIFEE-32.27 ENIKIFEED-21.72 NIKIFEEDA-22.95 Screening class II binding register: a sliding window approach

40 Training and test sets Training of the DQ3.2β prediction model was performed by sampling 1.the bound conformations of binding peptides with experimentally determined registers that can be recognized by MHC, and 2.the best conformations of non-binding peptides without any preferred register in the binding groove. Dataset I was divided into training and test datasets. 1.Training set: 59 peptides with 56 binding conformations with known registers and 30 non-binding conformations generated from the 3 non-binding peptides without any binding registers. 2.Test set 1: 68 peptides (the rest of Dataset I) with experimental IC50 values (16 high-affinity binders, 13 medium affinity binders, 21 low affinity binders and 18 non-binders) from biochemical studies (with 31 binding registers) and 3.Test set 2: all 12 peptides from Dataset II, with known T-cell proliferation values.

41 Binding energy determination  ICM software (Abagyan and Totrov, 1999)  hydrophobic energy computed as the product of solvent accessible surface area  entropic contribution from the protein side-chains computed from the maximal burial entropies for each type of amino acid and their relative accessibilities  electrostatic term composed of receptor-ligand coulombic interactions and the desolvation of partial charges transferred from an aqueous medium to a protein core environment  numeric solution of the Poisson equation using an implementation of the boundary element algorithm  entropy change in the system due to the decrease of free molecular concentration and the loss of rotational/ translational degrees of freedom upon binding.

42 Docking Anchoring root fragments (probes) to reduce search space Loop modeling Refinement of binding register Extension of flanking residues for MHC Class II A B C D 4-step protocol used

43 Parameters optimized  Default ICM coefficients (  =  =  =1; C=0) resulted in poor correlation (r 2 =0.43, s=2.91 kJ/mol)  The optimal scoring function, after 10-fold cross-validation (q 2 =0.85, s press =2.20 kJ/mol):

44 Accuracy estimates  Sensitivity (SE), specificity (SP) and receiver operating characteristic (ROC) analysis  % Predicted binders: SE=TP/(TP+FN) and non-binders: SP=TN/(TN+FP),  ROC curve is generated by plotting SE as a function of (1- SP) for various classification thresholds.  The area under the ROC curve (A ROC ) provides a measure of overall prediction accuracy:  A ROC <70% for poor,  A ROC >80% for good and  A ROC >90% for excellent predictions  We consider values of SP≥80% useful in practice and assessed SE for three values of SP (80%, 90% and 95%).

45  Sensitivity (SE) = number of binders correctly predicted = TP/AP (TP+FN)  Specificity (SP) = number of non-binders correctly predicted = TN/AN (TN+FP) Accuracy estimates Area under ROC (receiver operating characteristics) curve: >90% excellent >80% good

46 Results for Training set  High SE (good for most predictions)  Very few FPs, but also fewer predictions

47 GroupLMHMHH A ROC 0.880.93 Screening class II binding register: HLA-DQ8 prediction accuracy for Test Set I  Classification of binding peptides  High-affinity binders (H)  IC50 ≤ 500 nM  Medium-affinity binders (M)  500 nM < IC50 ≤ 1500 nM  Low-affinity binders (L)  1500 < IC50 ≤ 5000 nM

48 Test Set 1: Improved detection of binders lacking position specific binding motifs

49 Binding registers 20/23 (87%) binding registers Only register (aa 4-12) from Test Set 2 (Der p 2: 1-20) (SE=0.80; SP(LMH)=0.90)  Top 5 predictions are experimental positives at very stringent threshold criteria (SE=0.95; SP(H)=0.63) T-cell proliferation

50 Multiple registers (SP=0.95, SE(LMHP =0.81): 58% of Test Set 1)  Mainly for medium and high binders  Experimental support: Sinha et al. for DRB1*0402  Is this why binding motifs are unsuccessful?

51  Introduction  Structural Immunoinformatic Database development  Data Analysis  Computational models developed  Applications

52  Autoimmune blistering skin disorder  Characterized by autoantibodies targeting desmoglein-3 (Dsg3)  Strong association with DR4 and DR6 alleles Pemphigus vulgaris (PV) http://www.medscape.com adam.about.com www.aafp.org

53 Who are the major players in PV?  DR4 PV implicated alleles (for Semitic)  DRB1*0401  DRB1*0402  DRB1*0404  DRB1*0406  DR6 PV implicated alleles (for Caucasians)  DRB1*1401  DRB1*1404  DRB1*1405  DQB1*0503

54 DR4 PV implicated alleles (DRB1*0401, *0402, *0404, *0406)  High sequence conservation  97.9 – 99.0% identity  98.4 – 99.5% similarity  High structural conservation  Cα RMSD <0.22 Å for all key binding pockets  7 polymorphic residues within binding cleft  Pocket 1 (β86),  Pocket 4 (β70, 71, 74)  Pocket 6 (β11)  Pocket 7 (β71)  Pocket 9 (β37) What is known about DR4?

55 DR6 PV implicated alleles (DRB1*1401, *1404, *1405, DQB1*0503)  High sequence conservation  85.8 – 94.1% identity  83.2 – 97.3% similarity  High structural conservation  Cα RMSD <0.22 Å for all key binding pockets  14 polymorphic residues within binding clefts  Pocket 1 (β86)  Pocket 4 (β13, 70, 71, 74, 78)  Pocket 6 (β11)  Pocket 7 (β28, 30, 67, 71)  Pocket 9 (β9, 37, 57, 60) What is known about DR6?

56  9 stimulatory Dsg3 peptides tested on PV patients possessing DR4 and DR6 PV implicated alleles 1.Dsg3 96-112 (DR4, DR6) 2.Dsg3 191-205 (DR4, DR6) 3.Dsg3 206-220 (DR4, DR6) 4.Dsg3 252-266 (DR4, DR6) 5.Dsg3 342-356 (DR4, DR6) 6.Dsg3 380-394 (DR4, DR6) 7.Dsg3 763-777 (DR4, DR6) 8.Dsg3 810-824 (DR4) 9.Dsg3 963-977 (DR4) Clues…

57 DR4 PV  8/9 investigated Dsg3 peptides fit perfectly into DRB1*0402  Atomic clashes with all other investigated DR4 subtypes DR6 PV  6/9 investigated Dsg3 peptides fit perfectly into DRB1*0503  Atomic clashes with all other investigated DR6 subtypes  HLA association in DR6 PV more likely to be at DQ than DR locus  Consistent with experimental work done by Sinha et al. (2002, 2005, 2006) Disease associated alleles vs. innocent bystanders Tong et al. (2006) Immunome Research, 2: 1

58  1/9 investigated Dsg3 peptides fits existing binding motifs  Flanking residues – clashes in fitting binding register  Register-shift for Peptide V (Dsg3 342-356)  Detected binding register: Dsg3 346-354  Binding motifs: Dsg3 347-355 (Veldman et al., 2003) : Dsg3 345-353 (Sinha et al., 2006) Whither sequence motifs (again!)?

59  Docking of 936 15mer Dsg3 peptides generated using a sliding window of size 15 across the entire Dsg3 glycoprotein Large-scale screening of Dsg3 peptides Dsg3 peptide (sliding window width 15) NC Binding register (sliding window width 9) Flanking residues Tong et al. (2006) BMC Bioinformatics, 7(Suppl 5): S7  Training set: 8 peptides each, with exp. IC 50 values and known binding registers (5 binders and 3 non-binders)

60 Large-scale screening of Dsg3 peptides

61 Common epitopes possibly responsible for inducing disease in DR4 & DR6 patients Significant level of cross reactivity observed between DRB1*0402 and DQB1*0503 ( A ROC =0.93)  57% of peptides investigated in this study predicted to bind to both alleles with high affinity  90% of known Dsg3 peptides predicted to bind to both alleles  12/20 top predicted DQB1*0503-specific Dsg3 peptides from transmembrane region  All top predicted DQB1*0402-specific Dsg3 peptides from extracellular regions  Disease initiation implications: DR4 from ECD; DR6 from TM

62 Multiple binding registers revisited  76% (410/539) predicted high-affinity binders to DRB1*0402 possess > 2 binding registers  57% (384/673) predicted high-affinity binders to DQB1*0503 possess > 2 binding registers  66% (354/539) bind both alleles at different registers  Similar proportion (70%) detected in known binders to both alleles  Both alleles bind similar peptides via different binding registers

63 What next?  We have developed a predictive model for HLA-C (Cw*0401) with very limited (only six) experimental binding values.  The model yields excellent results for test data (A ROC =0.93).  Application to determine immunological hot spots for HIV-1 p24 gag and gp160 gag glycoproteins shows binding energies similar to HLA-A and –B.

64 Conclusions  Computational models for immunogenic epitope prediction can be successfully developed, even for alleles with limited experimental data.  While computations can never completely replace “wet-lab” experiments, in silico predictions can significantly cut down the development time of therapeutic vaccines.

65 Acknowledgements  Dr. (Victor) J.C. Tong, I2R, Singapore  A/Prof. Tin Wee Tan, NUS  Dr. Animesh Sinha, Weill Medical College of Cornell University & Michigan State University, USA  Drs. J. Tom August (JHU) and Vladimir Brusic (DFCI) (NIAID-NIH Grant #5 U19 AI56541 & Contract #HHSN266200400085C).  All of you!


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