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Презентация была опубликована 11 лет назад пользователемrtcb.iitp.ru
1 Полиморфизм генома человека Алма-Ата, Василий Раменский, Институт молекулярной биологии им. Энгельгардта РАН, Москва
2 People are different…
3 …caccagctcctgtgGggggaggccctgct… …caccagctcctgtgGggggaggccctgct… …caccagctcctgtgGggggaggccctgct… …caccagctcctgtgCggggaggccctgct… …caccagctcctgtgCggggaggccctgct… …and so are their genomes
4 Определение SNP (single nucleotide polymorphism): существование в популяции на одной и той же позиции геномной ДНК двух нуклеотидных вариантов с частотой более редкого варианта (аллеля) 1% A ||||||||||||||||||||||||||||||| T G ||||||||||||||||||||||||||||||| C NaNgNaNg N a +N g = N, N a /N 0.01, N g /N 0.01
5 Комментарии к определению речь идет о сравнении последовательностей одного биол. вида слово «полиморфизм» не имеет в русском языке множественного числа (Н.Ляпунова, личное сообщение) в обыденной речи под «полиморфизмом» чаще всего подразумевают именно нуклеотид (т.е. используют его как синоним слова «мутация») определение подразумевает достоверное измерение частот в популяции(-ях), что в текущей практике пока редкость
6 Типы полиморфизма в геноме * однонуклеотидный (SNP) * короткая вставка/делеция * микросателлитный повтор различной длины (VNTR, variable number tandem repeat) * вставка объекта * множественный нуклеотидный (MNP)
7 Некоторые свойства SNPs Comprise the ~90% of human genetic variation Occur with an average density ~1/600 bp Transition CT(GA) occurs at ~2/3 of all cases, three transversions CA (GT), CG(GC), TA(AT) in ~1/6 of all cases each Most of them (~85%) are common to all populations (with differing allele frequencies)
8 Why SNPs are important? Convenient genetic markers Responsible for existence of various phenotypes, with primary interest in disease ones Pharmacogenomics: individual response to drugs Clues to understand human evolution
9 SNP в геноме человека
10 Классификация SNP по положению в геноме 1. гены 1.1 UTR 1.2 экзоны (cSNP) синонимичные(sSNP) несинонимичные (nsSNP) 1.3 интроны 1.4 сайты сплайсинга 2. регуляторные участки генов (rSNP) 3. межгенные участки
11 Synonymous vs. non-synonymous SNPs: …CAC CAG CTC CTG TGG GGG GAG GCC CTG CT… …CAC CAG CTC CTG TGC GGG GAG GCT CTG CT… HGVBase ID: SNP G C Hypothetical SNP: C T … H Q L L W G E A L … … H Q L L C G E A L … Example: Lysosomal alpha-glucosidase precursor (SwissProt P10253) nsSNP Trp746 Cys sSNP Ala749 Ala
12 Summary of Annotation on human Genome Build 33 dbSNP Build 124 : FUNCTION CLASS CODE SNP COUNT GENE COUNT FUNCTIONAL CLASSIFICATION Locus region Allele synonymous to contig nucleotide Allele nonsynonymous to contig nucleotide untranslated region intron splice site Allele is same as contig nucleotide Coding: synonymy unknown
13 Жизненный цикл SNP (по Miller&Kwok, 2001) I.Появление нового аллельного варианта путем мутации (~100 мутаций на индивидуум) II.«Выживание» до момента появления гомозигот по этому аллелю III.Медленное увеличение частоты в популяции IV.Фиксация нового аллеля (0 vs. 100%), превращение в between-species difference
14 Замечание Описанный выше жизненный цикл SNP занимает ~0.3 млн лет. Предполагая, что разделение человека и шимпанзе произошло ~5 млн лет назад, а выход H.sapiens из Африки и разделение различных популяций ~ млн лет назад, понятно отсутствие (а) одинаковых SNPs у человека и других видов, (б) «private» SNP, т.е. локализованных в пределах одной человеческой популяции
15 Why polymorphisms are maintained in the population? Selectionists: because heterozygotes have higher fitness Neutralists: because all observed polymoprhisms are selectively neutral Reality: is always somewhat more complicated
16 Why SNPs are important? Convenient genetic markers Responsible for existence of various phenotypes, with primary interest in disease ones Pharmacogenomics: individual response to drugs Clues to understand human evolution
17 nsSNPs vs. disease mutations Disease mutations are rare (
18 Some common nsSNPs are known to affect critical structure features Frequency of the haemochromatosis allelic variant of HLA-H protein Cys260Tyr (with destroyed disulphide bond) is up to 6% in Northern Europe
19 Application area for prediction methods Genetics of complex diseases Analysis of human birth defects Genetics of rare developmental phenotypes (analysis of de novo mutations that cannot be mapped by genetic techniques) Genetics of model organisms (identification of genes involved in diverse processes by mutagenesis screens) Genomics and evolutionary genetics (e.g., quantifying selective pressure)
20 Identifying SNPs responsible for complex diseases: general strategies whole genome scan – hypothesis free approach; extraordinary number of candidate SNPs candidate gene studies – requires a priori models; nevertheless, large numbers of candidate SNPs must be tested
21 Identifying SNPs responsible for complex diseases: application 1. A SNP with established association need not be functional; therefore, in silico expertise is required for selection of potentially functional SNPs 2. Detection of enrichment of rare potentially functional alleles in the disease population (plasma levels of HDL-cholesterol, hypertension, colorectal cancer)
22 Methods for prediction of effect of nsSNPs * Sequence-based methods: analysis of multiple alignment with homologs Ng-Henikoff [2002] * Structure-based methods: analysis of various structural parameters Wang, Moult [2001]; Chasman, Adams [2001] * Combined methods: sequence and structure analysis Sunyaev,Ramensky,Bork [2000, 2001, 2002]
23 PolyPhen : prediction of amino acid substitution effect on protein function Prediction: benign (neutral), damaging (deleterious)
24 Data sources: 1.Sequence annotation of the query protein 2.PSIC profile matrix values derived from multiple alignment with homologous proteins 3.Structural parameters and contacts of query protein structure or its >50% homolog PolyPhen : prediction of amino acid substitution effect on protein function Prediction: benign (neutral), damaging (deleterious)
25 I. Sequence annotation Hereditary hemochromatosis protein precursor (HLA-H, Q30201) Features checked: * bond: DISULFID, THIOLEST, THIOETH * site: BINDING, ACT_SITE, LIPID, METAL, SITE, MOD_RES, SE_CYS * region: TRANSMEM, SIGNAL, PROPEP
26 II. PSIC: profile analysis of homologous sequences 1.Align with homologous proteins with seq. ide %
27 II. PSIC: profile analysis of homologous sequences 2. Calculate the profile matrix with PSIC algorithm Profile matrix: S a,j = ln[ p a,j / q a ], a = {1,..20}, j = {1,..N}, N = alignment length S Asn,4 S Cys,4
28 II. PSIC: profile analysis of homologous sequences 3. Analyse difference between profile scores for two a.a. variants: S Asn,4 S Cys,4 Asn Cys: = | S Asn,4 – S Cys,4 | = 1.591
29 III. 3D structure analysis 1. Residues that are in spatial contact with a ligand or other critical residues Zen 999 residues in 5Å contact with Zen 999 Bos Taurus trypsin [PDB ID :1ql7]
30 III. 3D structure analysis 2. Residues that form the hydrophobic core of the protein (buried residues) Bos Taurus trypsin [PDB ID :1ql7] Surface residues Buried residues
31 Structural parameters and contacts Secondary structure Phi-psi dihedral angles Solvent accessible surface area, normed s.a.s.a Change in accessible surface propensity Change in residue side chain volume Contacts with heteroatoms Interchain contacts Contacts with functional sites (BINDING, ACT_SITE, LIPID, and METAL) Region of the phi-psi map (Ramachandran map) Normalised B-factor (temperature factor)
32 RULES (connected with logical AND) PREDICTION PSIC score difference : Substitution site properties:Substitution type properties: arbitrary annotated as a functional* or bond formation** site arbitrary probably damaging not considered in a region annotated or predicted as transmembrane PHAT matrix difference resulting from substitution is negative possibly damaging 0.5 arbitrary benign >1.0 atoms are closer than 3.0Å to atoms of a ligand or residue annotated as BINDING, ACT_SITE, LIPID, METAL arbitraryprobably damaging 0.5< 1.5 normed accessibility ACC 15% absolute change of accessible surface propensity is 0.75 or absolute change of side chain volume is 60 possibly damaging normed accessibility ACC 5% absolute change of accessible surface propensity is 1.0 or absolute change of side chain volume is 80 probably damaging 1.5< 2.0 arbitrary possibly damaging >2.0 arbitrary probably damaging
33 alldamunknown dam/(dam+ben) ––––––––––––––––––––––––––––––––––––––––––––– Disease mutations Strict set % Total2,7822, % Between species substitutions Total % Validation: control sets
34 Validation: case studies APEX1 protein: 24 out of 26 substitutions predicted correctly (Xi et al.) Plasminogen activator inhibitor-2: 18 out of 20 (Di Guisto et al.) 3 HapMap populations and 10 primate species: analysis of ~27,000 nsSNPs with frequencies (Victoria Carlton, AFFYMETRIX, private communication)
35 Validation: allele frequency
36 Validation: nsSNPs vs. human-mouse interspecies variation
37 PolyPhen predictions for dbSNP b.121 All: 9,502unknown 27,991benign % 7,905possibly damaging % 5,521probably damaging % 50,919total (44,005 unique rss) With structure: 42unknown 2,142benign % 531possibly damaging % 1,076probably damaging % 3,791total (,167 uniqe rss) [ Ivan Adzhubei, 2004 ]
38 PolyPhen predictions for dbSNP b.121 All: Filtered: 5 seq. in multiple alignment 16,813benign % 5,195possibly damaging % 4,168probably damaging % 26,176total (21,677 unique rss) With structure: Filtered: 5 seq. in multiple alignment 2,021benign % 499possibly damaging % 1,050probably damaging % 3,570total (2,983 unique rss) [ Ivan Adzhubei, 2004 ]
39 Hydrophobic core stability parameters are the best predictors Ramensky et al., Nucleic Acids Res. (2002) 30:
40 PolyPhen PolyPhen input : Protein identifier OR sequence Substitution position Substitution type
41 PolyPhen
42 PolyPhen: nsSNPs data collection
43 DAMAGING nsSNPs Transphyretin (PDB: 1tyr, SNP ) Thr118 Asn occurs at the ligand (REA) binding site Thr 118 REA 130
44 DAMAGING nsSNPs Trypsin (PDB: 1trn, SNP ) Ser142 Phe results in the strong side chain volume change at a buried position Ser 142
45 Damaging nsSNPs We estimate that ~20% of non-synonymous cSNPs from databases are damaging Average allele frequency of non-synonymous cSNPs predicted to be damaging is twice lower than for benign non-synonymous cSNPs We propose to use these predictions for prioritisation of candidates for association studies
46 Development directions Better multiple alignment pipeline Compensated nsSNPs Non-globular structural regions Non-coding SNPs
47 An example of compensated pathogenic deviation
48 Polyphenism : the ability of a single genome to produce two or more alternative morphologies within a single population in response to an environmental cue (such as temperature, photoperiod, or nutrition). [ Dr. Ehab Abouheif, McGill University, Montréal Québec ] The seasonal morphs of the buckeye butterfly, Precis coenia ( Nymphalidae ). The ventral surfaces are shown. The Summer morph ("linea") is on the left; the Fall morph ("rosa") is on the right. [ Scott F.Gilbert, A Companion to Developmental Biology. Chapter 22, Seasonal Polyphenism in Butterfly Wings ]
49 People Shamil Sunyaev(1), Vasily Ramensky(2), Steffen Schmidt(1), Ivan Adzhubei(1) (1) Division of Genetics, Department of Medicine, Brigham and Womens Hospital, Harvard Medical School, Boston, USA) (2) Engelhardt Institute of Molecular Biology Moscow Russia) Peer Bork, Yan P. Yuan (European Molecular Biology Laboratory, Heidelberg, Germany)
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