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Immunological Bioinformatics Ole Lund Center for Biological Sequence Analysis BioCentrum-DTU Technical University of Denmark [email protected] Infectious Diseases •More than 400 microbial agents are associated with disease in healthy adult humans •There are only licensed vaccines in the United states for 22 microbial agents (vaccines for 34 pathogens have been developed) •Immunological Bioinformatics may be used to •Identify immunogenic regions in pathogen •These regions may be used as in rational vaccine design •Which pathogens to focus on? Infectious diseases may be ranked based on •Impact on health •Dangerousness •Economic impact Infectious Diseases in the World •11 million (19%) of the 57 million people who died in the world in 2002 were killed by infectious or parasitic infection [WHO, 2004] •The three main single infectious diseases are HIV/AIDS, tuberculosis, and malaria, each of which causes more than 1 million deaths Deaths from infectious diseases in the world in 2002 www.who.int/entity/whr/2004/annex/topic/en/annex_2_en.pdf Pathogenic Viruses •1st column (and color of name) DNA Advisory Committee guidelines [RAC, 2002] which includes those biological agents known to infect humans, as well as selected animal agents that may pose theoretical risks if inoculated into humans. RAC divides pathogens into four classes. Risk group 1 (RG1). Agents that are not associated with disease in healthy adult humans Risk group 2 (RG2). Agents that are associated with human disease which is rarely serious and for which preventive or therapeutic interventions are often available Risk group 3 (RG3). Agents that are associated with serious or lethal human disease for which preventive or therapeutic interventions may be available (high individual risk but low community risk) Risk group 4 (RG4). Agents that are likely to cause serious or lethal human disease for which preventive or therapeutic interventions are not usually available (high individual risk and high community risk) 2nd column classification of the pathogens according to the Centers for Disease Control and Prevention (CDC) bioterror categories A–C, where category A pathogens are considered the worst bioterror threats 3rd column A letter indicating the type of vaccine if one is available (A: acellular/adsorbet; C: conjugate; I: inactivated; L: live; P: polysaccharide; R: recombinant; S staphage lysate; T: toxoid). Lower case indicates that the vaccine is released as an investigational new drug (IND)). Adapted from Immunological Bioinformatics, The MIT press. Data derived from /www.cbs.dtu.dk/databases/Dodo. Pathogenic Bacteria Adapted from Immunological Bioinformatics, The MIT press. Data derived from www.cbs.dtu.dk/databases/Dodo. Pathogenic Parasites Adapted from Immunological Bioinformatics, The MIT press. Data derived from www.cbs.dtu.dk/databases/Dodo. Pathogenic Fungi Adapted from Immunological Bioinformatics, The MIT press. Data derived from www.cbs.dtu.dk/databases/Dodo. Vaccines Market • The vaccine market has increased fivefold from 1990 to 2000 • Annual sales of 6 billion euros • Less than 2% of the total pharma market. • Major producers (85% of the market) • GlaxoSmithKline (GSK), Merck, Aventis Pasteur, Wyeth, Chiron • Main products (>50% of the market) • Hepatitis B, flu, MMR (measles, mumps, and rubella) and DTP (diphtheria, tetanus, pertussis) • 40% are produced in the United States and the rest is evenly split between Europe and the rest of the world [Gréco, 2002] • It currently costs between 200 and 500 million US dollars to bring a new vaccine from the concept stage to market [André, 2002] Figure by Thomas Blicher. Biodefence Targets www2.niaid.nih.gov/Biodefense/ bandc_priority.htm How does the immune system “see” a virus? The immune system The innate immune system – Found in animals and plants – Fast response – Complement, Toll like receptors The adaptive Immune system – Found in vertebrates – Stronger response 2nd time – B lymphocytes • Produce antibodies (Abs) recognizes 3D shapes • Neutralize virus/bacteria outside cells – T lymphocytes • Cytotoxic T lymphocytes (CTLs) - MHC class I – Recognize foreign protein sequences in infected cells – Kill infected cells • Helper T lymphocytes (HTLs) - MHC class II – Recognize foreign protein sequences presented by immune cells – Activates cells MHC Class I pathway Figure by Eric A.J. Reits Genomes to vaccines Lauemøller et al., 2000 Vaccination •Vaccination •Administration of a substance to a person with the purpose of preventing a disease •Traditionally composed of a killed or weakened microorganism •Vaccination works by creating a type of immune response that enables the memory cells to later respond to a similar organism before it can cause disease Early History of Vaccination •Pioneered India and China in the 17th century •The tradition of vaccination may have originated in India in AD 1000 •Powdered scabs from people infected with smallpox was used to protect against the disease •Smallpox was responsible for 8 to 20% of all deaths in several European countries in the 18th century •In 1721 Lady Mary Wortley Montagu brought the knowledge of these techniques from Constantinople (now Istanbul) to England •Two to three percent of the smallpox vaccinees, however, died from the vaccination itself •Benjamin Jesty and, later, Edward Jenner could show that vaccination with the less dangerous cowpox could protect against infection with smallpox •The word vaccination, which is derived from vacca, the Latin word for cow. Early History of Vaccination II •In 1879 Louis Pasteur showed that chicken cholera weakened by growing it in the laboratory could protect against infection with more virulent strains •1881 he showed in a public experiment at Pouilly-Le-Fort that his anthrax vaccine was efficient in protecting sheep, a goat, and cows. •In 1885 Pasteur developed a vaccine against rabies based on a live attenuated virus •A year later Edmund Salmon and Theobald Smith developed a (heat) killed cholera vaccine. •Over the next 20 years killed typhoid and plague vaccines were developed •In 1927 the bacille Calmette-Guérin (BCG vaccine) against tuberculosis vere developed Vaccination since WW II •After the Second World War the ability to make cell cultures, i.e., the ability to grow cells from higher organisms such as vertebrates in the laboratory, made it easier to develop new vaccines, and the number of pathogens for which vaccines can be made have almost doubled. •Many vaccines were grown in chicken embryo cells (from eggs), and even today many vaccines such as the influenza vaccine, are still produced in eggs •Alternatives are being investigated Human Vaccines against pathogens Immunological Bioinformatics, The MIT press. Vaccination Today •Vaccines have been made for only 34 of the more than 400 known pathogens that are harmful to man (<10%). •Immunization saves the lives of 3 million children each year, but that 2 million more lives could be saved if existing vaccines were applied on a full-scale worldwide Categories of Vaccines •Live vaccines •Are able to replicate in the host but are attenuated (weakened), i.e., they do not cause disease •Subunit vaccines •Part of organism •Genetic Vaccines Live Vaccines •Characteristics •Able to replicate in the host •Attenuated (weakened) so they do not cause disease •Advantages •Induce a broad immune response (cellular and humoral) •Low doses of vaccine are normally sufficient •Long-lasting protection are often induced •Disadvantages •May cause adverse reactions •May be transmitted from person to person Subunit Vaccines •Relatively easy to produce (not live) •Induce little CTL (viral and bacterial proteins are not produced within cells) •Classically produced by inactivating a whole virus or bacterium by heat or by chemicals •The vaccine may be purified further by selecting one or a few proteins which confer protection •This has been done for the Bordetella pertussis vaccine to create a better-tolerated vaccine that is free from whole microorganism cells Subunit Vaccines: Polysaccharides •Polysaccharides •Many bacteria have polysaccharides in their outer membrane •Basis of vaccines against Neisseria meningitidis and Streptococcus pneumoniae. •Generate a T cell-independent response making them inefficient in children younger than 2 years old. •Overcome by conjugating the polysaccharides to peptides •Used in vaccines against Haemophilus influenzae Streptococcus pneumoniae and Subunit Vaccines: Toxoids •Toxins •Responsible for the pathogenesis of many bacteria. •Vaccines based on inactivated toxins (toxoids) have been developed for Bordetella pertussis, Clostridium tetani, and Corynebacterium diphtheriae •Traditionally done by chemical means • but now also by altering the DNA sequences important toxicity Subunit Vaccines: Recombinant •The hepatitis B virus (HBV) vaccine was originally based on the surface antigen purified from the blood of chronically infected individuals. •Due to safety concerns, the HBV vaccine became the first to be produced using recombinant DNA technology •It is now produced in bakers’ yeast (Saccharomyces cerevisiae) •Recombinant technologies can also be used to produce viral proteins that self-assemble to viral-like particles (VLPs) with the same size as the native virus. •VLP is the basis of a promising new vaccine against human papilloma virus (HPV) Genetic Vaccines •Introduce DNA or RNA into the host •Injected (Naked) •Coated on gold particles •Carried by viruses such as vaccinia, adenovirus, or alphaviruses, and bacteria such as Salmonella typhi or Mycobacterium tuberculosis •Advantages •Easy to produce •Induce cellular response •Disadvantages •Low response in 1st generation Epitope based vaccines •Advantages(Ishioka et al. [1999]): •Can be more potent •Can be controlled better •Can induce subdominant epitopes (e.g. against tumor antigens where there is tolerance against dominant epitopes) •Can target multiple conserved epitopes in rapidly mutating pathogens like HIV and Hepatitis C virus (HCV) •Can be designed to break tolerance •Can overcome safety concerns associated with entire organisms or proteins •Epitope-based vaccines have been shown to confer protection in animal models ([Snyder et al., 2004], Rodriguez et al. [1998] and Sette and Sidney [1999]) MHC Class I pathway Figure by Eric A.J. Reits Weight matrices (Hidden Markov models) YMNGTMSQV GILGFVFTL ALWGFFPVV ILKEPVHGV ILGFVFTLT LLFGYPVYV GLSPTVWLS WLSLLVPFV FLPSDFFPS CVGGLLTMV FIAGNSAYE A2 Logo G F C A Lauemøller et al., 2000 The MHC gene region From Bill Paul, ”Fundamental Immunology”, 4th Ed Human Leukocyte antigen (HLA=MHC in humans) polymorphism - alleles A total of 229 HLA-A 464 HLA-B 111 HLA-C class I alleles have been named, a total of 2 HLA-DRA, 364 HLA-DRB 22 HLA-DQA1, 48 HLA-DQB1 20 HLA-DPA1, 96 HLA-DPB1 class II sequences have also been assigned. As of October 2001 (http://www.anthonynolan.com/HIG/index.html) HLA polymorphism - supertypes •Each HLA molecule within a supertype essentially binds the same peptides •Nine major HLA class I supertypes have been defined •HLA-A1, A2, A3, A24,B7, B27, B44, B58, B62 Sette et al, Immunogenetics (1999) 50:201-212 HLA polymorphism - frequencies Supertypes Phenotype frequencies Caucasian Black Japanese A2,A3, B27 83 % 86 % 88 % 88 % 86 % 86% +A1, A24, B44 100 % 98 % 100 % 100 % 99 % 99 % +B7, B58, B62 100 % 100 % 100 % 100 % 100 % 100 % A Sette et al, Immunogenetics (1999) 50:201-212 Chinese Hispanic Average O Lund et al., Immunogenetics. 2004 55:797-810 O Lund et al., Immunogenetics. 2004 55:797-810 O Lund et al., Immunogenetics. 2004 55:797-810 O Lund et al., Immunogenetics. 2004 55:797-810 O Lund et al., Immunogenetics. 2004 55:797-810 Conclusions We suggest to – Split some of the alleles in the A1 supertype into a new A26 supertype – Split some of the alleles in the B27 supertype into a new B39 supertype. – The B8 alleles may define their own supertype – The specificities of the class II molecules can be clustered into nine classes, which only partly correspond to the serological classification O Lund et al., Immunogenetics. 2004 55:797-810 Proteasomal cleavage Polytope construction Linker NH2 M Epitope COOH C-terminal cleavage Cleavage within epitopes cleavage New epitopes Polytope optimization •Successful immunization can be obtained only if the epitopes encoded by the polytope are correctly processed and presented. •Cleavage by the proteasome in the cytosol, translocation into the ER by the TAP complex, as well as binding to MHC class I should be taken into account in an integrative manner. •The design of a polytope can be done in an effective way by modifying the sequential order of the different epitopes, and by inserting specific amino acids that will favor optimal cleavage and transport by the TAP complex, as linkers between the epitopes. Polytope starting configuration Immunological Bioinformatics, The MIT press. Polytope optimization Algorithm • Optimization of of four measures: 1. The number of poor C-terminal cleavage sites of epitopes (predicted cleavage < 0.9) 2. The number of internal cleavage sites (within epitope cleavages with a prediction larger than the predicted C-terminal cleavage) 3. The number of new epitopes (number of processed and presented epitopes in the fusing regions spanning the epitopes) 4. The length of the linker region inserted between epitopes. • The optimization seeks to minimize the above four terms by use of Monte Carlo Metropolis simulations [Metropolis et al., 1953] Polytope final configuation Immunological Bioinformatics, The MIT press. World-wide Spread of SARS Status as of July 11, 2003: 8437 Infected, 813 Dead New corona viruses 1978 Porcine Epidemic diarrhea virus (PEDV) Probably from humans 1984 Porcine Respiratory Coronavirus 1987 Porcine Reproductive and Respiratory Syndrome (PRRS) 1993 Bovine corona virus 2003 SARS Michael Buchmeier, Beijing June, 2003 Epitope predictions Binding to MHC class I High probability for C-terminal proteasomal cleavage No sequence variation Inside out: 1. Position in RNA 2. Translated regions (blue) 3. Observed variable spots 4. Predicted proteasomal cleavage 5. Predicted A1 epitopes 6. Predicted A*0204 epitopes 7. Predicted A*1101 epitopes 8. Predicted A24 epitopes 9. Predicted B7 epitopes 10. Predicted B27 epitopes 11. Predicted B44 epitopes 12. Predicted B58 epitopes 13. Predicted B62 epitopes Strategy for the quantitative ELISA assay C. Sylvester-Hvid, et al., Tissue antigens, 2002: 59:251 Step I: Folding of MHC class I molecules in solution b2m Heavy chain peptide Incubation Peptide-MHC complex Step II: Detection of de novo folded MHC class I molecules by ELISA Development C Sylvester-Hvid et al., Tissue Antigens. 2002 59:251-8 SARS project We scanned HLA supertypes and identified almost 100 potential vaccine candidates. These should be further validated in SARS survivors and may be used for vaccine formulation. Prediction method available: www.cbs.dtu.dk/services/NetMHC/ C Sylvester-Hvid et al., Tissue Antigens. 2004 63:395-400 MHC Class II binding Virtual matrices – TEPITOPE: Hammer, J., Current Opinion in Immunology 7, 263-269, 1995, – PROPRED: Singh H, Raghava GP Bioinformatics 2001 Dec;17(12):1236-7 Web interface http://www.imtech.res.in/raghava/propred Prediction Results Virtual matrices HLA-DR molecules sharing the same pocket amino acid pattern, are assumed to have identical amino acid binding preferences. MHC class II prediction Complexity of problem – Peptides of different length – Weak motif signal Alignment crucial Gibbs Monte Carlo sampler M Nielsen et al., Bioinformatics. 2004 20:1388-97 RFFGGDRGAPKRG YLDPLIRGLLARPAKLQV KPGQPPRLLIYDASNRATGIPA GSLFVYNITTNKYKAFLDKQ SALLSSDITASVNCAK PKYVHQNTLKLAT GFKGEQGPKGEP DVFKELKVHHANENI SRYWAIRTRSGGI TYSTNEIDLQLSQEDGQTIE Class II binding motif Alignment by Gibbs sampler Random RFFGGDRGAPKRG YLDPLIRGLLARPAKLQV KPGQPPRLLIYDASNRATGIPA GSLFVYNITTNKYKAFLDKQ SALLSSDITASVNCAK PKYVHQNTLKLAT GFKGEQGPKGEP DVFKELKVHHANENI SRYWAIRTRSGGI TYSTNEIDLQLSQEDGQTI M Nielsen et al., Bioinformatics. 2004 20:1388-97 ClustalW Gibbs sampler O Lund et al., Immunogenetics. 2004 55:797-810 O Lund et al., Immunogenetics. 2004 55:797-810 Prediction of Antibody epitopes Linear – Hydrophilicity scales (average in ~7 window) • Hoop and Woods (1981) • Kyte and Doolittle (1982) • Parker et al. (1986) – Other scales & combinations • Pellequer and van Regenmortel • Alix – New improved method (Pontoppidan et al. in preparation) • http://www.cbs.dtu.dk/services/BepiPred/ Discontinuous – Protrusion (Novotny, Thornton, 1986) Secondary structure in epitopes Sec struct: H T B E S G I . Log odds ratio -0.19 0.30 0.21 -0.27 0.24 -0.04 0.00 0.17 H: G: I: E: B: S: T: .: Alpha-helix (hydrogen bond from residue i to residue i+4) 310-helix (hydrogen bond from residue i to residue i+3) Pi helix (hydrogen bond from residue i to residue i+5) Extended strand Beta bridge (one residue short strand) Bend (five-residue bend centered at residue i) H-bonded turn (3-turn, 4-turn or 5-turn) Coil Amino acids in epitopes Amino G A V L I M P F W S e/E 0.09 0.07 0.05 0.08 0.04 0.02 0.06 0.03 0.01 0.08 . 0.07 0.08 0.07 0.10 0.06 0.03 0.05 0.05 0.02 0.07 Amino C T Q N H Y E D K R e/E 0.03 0.08 0.04 0.04 0.02 0.04 0.06 0.07 0.07 0.04 . 0.03 0.06 0.04 0.05 0.02 0.03 0.04 0.04 0.05 0.04 Dihedral angles in epitopes Z-scores for number of dihedral angle combinations in epitopes vs. non epitopes Phi\Psi 1 2 3 4 5 6 7 8 9 10 11 12 1 -0.47 0.44 -0.58 0.45 0.46 0.00 0.00 -0.73 -0.79 0.00 -0.83 1.42 2 -0.01 -0.12 -1.82 0.52 1.75 0.00 0.00 0.00 1.42 -0.82 0.00 0.00 3 1.82 -2.26 -1.57 0.48 0.10 0.00 -0.77 0.45 1.77 0.00 -0.82 0.99 4 1.76 1.15 -0.34 0.75 0.00 0.00 0.97 0.16 0.38 1.03 0.00 0.00 5 -0.85 0.45 -1.09 0.57 0.00 0.00 0.00 0.13 1.52 0.00 1.02 -0.79 6 0.60 1.28 1.30 1.73 0.00 0.00 0.00 0.00 1.32 -0.89 -0.76 0.00 7 0.27 -0.91 1.67 -0.51 0.00 0.00 0.00 0.00 -1.02 -1.09 0.00 0.00 8 0.93 1.21 -0.23 -3.63 0.49 0.00 0.00 0.00 0.00 -0.19 0.31 -0.82 9 0.00 0.28 -0.67 0.33 0.01 -0.83 0.00 0.00 0.87 0.23 0.00 0.00 10 0.00 0.95 1.71 -0.70 0.00 0.00 0.00 1.29 1.08 0.00 1.00 0.00 11 0.00 0.00 1.02 0.00 0.00 0.00 0.00 0.86 -0.75 0.00 0.00 0.00 12 0.42 0.83 0.28 1.68 0.00 0.00 0.00 0.00 1.03 -0.21 -0.79 0.93 Immunological bioinformatics Classical experimental research – Few data points – Data recorded by pencil and paper/spreadsheet New experimental methods – Sequencing – DNA arrays – Proteomics Need to develop new methods for handling these large data sets • Immunological Bioinformatics/Immunoinformatics Links •Overview over web based tools for vaccine design •HTML version •http://www.cbs.dtu.dk/researchgroups/immunology/webreview.html •PDF version •http://hiv-web.lanl.gov/content/ immunology/pdf/2002/1/Lund2002.pdf Acknowledgements Immunological Bioinformatics group, CBS, Technical University of Denmark (www.cbs.dtu.dk) Morten Nielsen HLA binding Claus Lundegaard Data bases, HLA binding Anne Mølgaard MHC binding Mette Voldby Larsen CTL prediction Pernille Haste Andersen B cell epitopes Sune Frankild Databases Jens Pontoppidan Linear B cell epitopes Collaborators IMMI, University of Copenhagen Søren Buus MHC binding Mogens H Claesson CTL La Jolla Institute of Allergy and Infectious Diseases Allesandro Sette Epitope DB Leiden University Medical Center Tom Ottenhoff Tuberculosis Michel Klein Ganymed Ugur Sahin Genetic library University of Tubingen Stefan Stevanovic MHC ligands INSERM Peter van Endert Tap University of Mainz Hansjörg Schild Proteasome Schafer-Nielsen Claus Schafer-Nielsen Peptides