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Biometrical genetics

Biometrical genetics. Manuel AR Ferreira. Massachusetts General Hospital. Harvard Medical School. Boston. Boulder, 2008. Revisit common genetic parameters - such as allele frequencies, genetic effects, dominance, variance components, etc.

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Biometrical genetics

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  1. Biometrical genetics Manuel AR Ferreira Massachusetts General Hospital Harvard Medical School Boston Boulder, 2008

  2. Revisit common genetic parameters - such as allele frequencies, genetic effects, dominance, variance components, etc Use these parameters to construct a biometric genetic model • Model that expresses the: • Mean • Variance • Covariance between individuals • for a quantitative phenotype as a function of the genetic parameters of a given locus. See how the biometric model provides a useful framework for linkage and association methods.

  3. Outline 1. Genetic concepts 2. Very basic statistical concepts 3. Biometrical model 4. Introduction to linkage analysis

  4. 1. Genetic concepts

  5. A. DNA level DNA structure, organization recombination G G G G G G B. Population level G G G Allele and genotype frequencies G G G G G G G G G G G C. Transmission level G G Mendelian segregation Genetic relatedness G G D. Phenotype level Biometrical model P P Additive and dominance components

  6. A. DNA level A DNA molecule is a linear backbone of alternating sugar residues and phosphate groups Attached to carbon atom 1’ of each sugar is a nitrogenous base: A, C, G or T Two DNA molecules are held together in anti-parallel fashion by hydrogen bonds between bases [Watson-Crick rules] Antiparallel double helix A gene is a segment of DNA which is transcribed to give a protein or RNA product Only one strand is read during gene transcription Nucleotide: 1 phosphate group + 1 sugar + 1 base

  7. DNA polymorphisms Microsatellites >100,000 Many alleles, eg. (CA)n repeats, very informative, even, easily automated SNPs 11,883,685 (build 128, 03 Mar ‘08) Most with 2 alleles (up to 4), not very informative, even, easily automated A Copy Number polymorphisms ~2000-3000 (?) Many alleles, even, just recently automated B

  8. DNA organization 22 + 1 2 (22 + 1) 2 (22 + 1) 2 (22 + 1) ♂ ♁ ♂ A - A - A - ♁ B - ♂ ♁ ♁ ♂ Mitosis B - B - chr1 A - A - A - - A A - - A ♁ ♁ ♂ B - B - B - - B B - - B A - - A - A B - - B - B chr1 G1 phase S phase M phase Haploid gametes Diploid zygote 1 cell Diploid zygote >1 cell

  9. DNA recombination 22 + 1 22 + 1 A - NR (♂) B - A - - A chr1 2 (22 + 1) 2 (22 + 1) B - - B - A ♁ Meiosis R chr1 (♂) (♁) ♂ ♁ - B A - A - - A - A chr1 B - B - - B - B A - R chr1 chr1 chr1 chr1 (♁) A - - A B - chr1 Diploid gamete precursor cell B - - B - A chr1 NR - B Haploid gamete precursors chr1 Hap. gametes

  10. DNA recombination between linked loci 22 + 1 A - NR B - (♂) A - - A B - - B 2 (22 + 1) - A ♁ Meiosis NR - B (♂) (♁) ♂ ♁ A - A - - A - A B - B - - B - B A - NR B - (♁) A - - A B - - B Diploid gamete precursor - A - B NR Haploid gamete precursors Hap. gametes

  11. B. Population level 1. Allele frequencies A single locus, with two alleles - Biallelic - Single nucleotide polymorphism, SNP A a a a a A a a A A A a A a Alleles A and a - Frequency of A is p - Frequency of a is q = 1 – p A A A A A a A a A A A a a A genotype is the combination of the two alleles A a Aa

  12. B. Population level 2. Genotype frequencies (Random mating) Allele 1 A (p) a (q) A (p) AA (p2) Aa (pq) Allele 2 a (q) aa (q2) aA (qp) Hardy-Weinberg Equilibrium frequencies P (AA) = p2 P (Aa) = 2pq p2+ 2pq + q2 = 1 P (aa) = q2

  13. C. Transmission level Mendel’s law of segregation Mother (A3A4) Segregation (Meiosis) Gametes A3(½) A4(½) A1(½) A1A3(¼) A1A4(¼) Father (A1A2) A2(½) A2A4(¼) A2A3(¼)

  14. D. Phenotype level 1. Classical Mendelian traits Dominant trait - AA, Aa1 - aa0 Huntington’s disease (CAG)n repeat, huntingtin gene Recessive trait - AA 1 - aa, Aa0 Cystic fibrosis 3 bp deletion exon 10 CFTR gene

  15. AA Aa aa D. Phenotype level 2. Quantitative traits e.g. cholesterol levels

  16. D. Phenotype level Aa P(X) aa AA X aa Aa AA m

  17. D. Phenotype level Aa P(X) Biometric Model aa AA X aa Aa AA m +a d – a Genotypic effect m – a m + d m + a Genotypic means

  18. 2. Very basic statistical concepts

  19. Mean, variance, covariance 1. Mean (X)

  20. Mean, variance, covariance 2. Variance (X)

  21. Mean, variance, covariance 3. Covariance (X,Y)

  22. 3. Biometrical model

  23. Biometrical model for single biallelic QTL Biallelic locus - Genotypes: AA, Aa, aa - Genotype frequencies: p2, 2pq, q2 Alleles at this locus are transmitted from P-O according to Mendel’s law of segregation Genotypes for this locus influence the expression of a quantitative trait X (i.e. locus is a QTL) Biometrical genetic modelthat estimates the contribution of this QTL towards the (1) Mean, (2) Variance and (3) Covariancebetween individuals for this quantitative trait X

  24. Biometrical model for single biallelic QTL 1. Contribution of the QTL to the Mean (X) e.g. cholesterol levels in the population Genotypes Aa aa AA a d -a Effect, x p2 2pq q2 Frequencies, f(x) Mean (X) = a(p2) + d(2pq) – a(q2) = a(p-q) + 2pqd

  25. Biometrical model for single biallelic QTL 2. Contribution of the QTL to the Variance (X) Genotypes Aa aa AA a d -a Effect, x p2 2pq q2 Frequencies, f(x) Var (X) = (a-m)2p2 + (d-m)22pq + (-a-m)2q2 = VQTL Broad-sense heritability of X at this locus = VQTL/ V Total

  26. Biometrical model for single biallelic QTL Var (X) = (a-m)2p2 + (d-m)22pq + (-a-m)2q2 =2pq[a+(q-p)d]2 + (2pqd)2 m = a(p-q) + 2pqd = VAQTL+ VDQTL Demonstration: final 3 slides Additive effects: the main effects of individual alleles Dominance effects: represent the interaction between alleles

  27. Biometrical model for single biallelic QTL d = 0 d +a – a +a +a m = 0 aa Aa AA Additive

  28. Biometrical model for single biallelic QTL d > 0 d +a – a +a+d +a-d m = 0 aa Aa AA Dominant

  29. Biometrical model for single biallelic QTL d < 0 d +a – a +a-d +a+d m = 0 aa Aa AA Recessive

  30. Statistical definition of dominance is scale dependent +4 +4 +0.7 +0.4 log (x) aa AA aa AA Aa Aa No departure from additivity Significant departure from additivity

  31. Biometrical model for single biallelic QTL a 0 Genotypic mean -a aa AA aa AA aa AA aa AA Aa Aa Aa Aa Additive Dominant Recessive Var (X) = Regression Variance + Residual Variance = Additive Variance + Dominance Variance = VAQTL+ VDQTL

  32. Practical H:\ferreira\biometric\sgene.exe

  33. Practical Aim Visualize graphically how allele frequencies, genetic effects, dominance, etc, influence trait mean and variance Ex1 a=0, d=0, p=0.4, Residual Variance = 0.04, Scale = 2. Vary a from 0 to 1. Ex2 a=1, d=0, p=0.4, Residual Variance = 0.04, Scale = 2. Vary d from -1 to 1. Ex3 a=1, d=0, p=0.4, Residual Variance = 0.04, Scale = 2. Vary p from 0 to 1. Look at scatter-plot, histogram and variance components.

  34. Some conclusions • Additive genetic variance depends on allele frequency p & additive genetic value a as well as dominance deviation d • Additive genetic variance typically greater than dominance variance

  35. Biometrical model for single biallelic QTL 1. Contribution of the QTL to the Mean (X) 2. Contribution of the QTL to the Variance (X) 3. Contribution of the QTL to the Covariance (X,Y)

  36. Biometrical model for single biallelic QTL 3. Contribution of the QTL to the Cov (X,Y) (a-m) Aa aa (-a-m) (d-m) AA (a-m)2 (a-m) AA (d-m) (a-m) (d-m) (d-m)2 Aa aa (-a-m)2 (-a-m) (-a-m) (d-m) (-a-m) (a-m)

  37. Biometrical model for single biallelic QTL 3A. Contribution of the QTL to the Cov (X,Y) – MZ twins (a-m) Aa aa (-a-m) (d-m) AA p2 (a-m)2 (a-m) AA (d-m) (a-m) (d-m) (d-m)2 Aa 0 2pq aa (-a-m)2 (-a-m) (-a-m) (d-m) (-a-m) q2 0 (a-m) 0 Cov(X,Y) = (a-m)2p2 + (d-m)22pq + (-a-m)2q2 = VAQTL+ VDQTL =2pq[a+(q-p)d]2 + (2pqd)2

  38. Biometrical model for single biallelic QTL 3B. Contribution of the QTL to the Cov (X,Y) – Parent-Offspring (a-m) Aa aa (-a-m) (d-m) AA p3 (a-m)2 (a-m) AA (d-m) (a-m) (d-m) (d-m)2 Aa p2q pq aa (-a-m)2 (-a-m) (-a-m) (d-m) (-a-m) q3 0 (a-m) pq2

  39. e.g. given an AAfather, an AAoffspring can come from either AAx AAor AAx Aaparental mating types AAx AA will occur p2× p2 = p4 and have AA offspring Prob()=1 AAx Aa will occur p2× 2pq = 2p3q and have AA offspring Prob()=0.5 and have Aa offspring Prob()=0.5 Therefore, P(AA father & AAoffspring) = p4 + p3q = p3(p+q) = p3

  40. Biometrical model for single biallelic QTL 3B. Contribution of the QTL to the Cov (X,Y) – Parent-Offspring (a-m) Aa aa (-a-m) (d-m) AA p3 (a-m)2 (a-m) AA (d-m) (a-m) (d-m) (d-m)2 Aa p2q pq aa (-a-m)2 (-a-m) (-a-m) (d-m) (-a-m) q3 0 (a-m) pq2 Cov (X,Y) = (a-m)2p3 + … + (-a-m)2q3 = ½VAQTL =pq[a+(q-p)d]2

  41. Biometrical model for single biallelic QTL 3C. Contribution of the QTL to the Cov (X,Y) – Unrelated individuals (a-m) Aa aa (-a-m) (d-m) AA p4 (a-m)2 (a-m) AA (d-m) (a-m) (d-m) (d-m)2 Aa 2p3q 4p2q2 aa (-a-m)2 (-a-m) (-a-m) (d-m) (-a-m) q4 p2q2 (a-m) 2pq3 Cov (X,Y) = (a-m)2p4 + … + (-a-m)2q4 = 0

  42. Biometrical model for single biallelic QTL 3D. Contribution of the QTL to the Cov (X,Y) – DZ twins and full sibs ¼ genome ¼ genome ¼ genome ¼ genome # identical alleles inherited from parents 2 1 (father) 0 1 (mother) ¼ (2 alleles) + ½ (1 allele) + ¼ (0 alleles) Unrelateds MZ twins P-O Cov (X,Y) = ¼ Cov(MZ) + ½ Cov(P-O) + ¼ Cov(Unrel) = ¼(VAQTL+VDQTL) + ½ (½ VAQTL) + ¼ (0) = ½ VAQTL + ¼VDQTL

  43. Summary so far…

  44. Biometrical model predicts contribution of a QTL to the mean, variance and covariances of a trait Association analysis = a(p-q) + 2pqd Mean (X) Linkage analysis = VAQTL+ VDQTL Var (X) = VAQTL+ VDQTL Cov (MZ) On average! = ½VAQTL+ ¼VDQTL Cov (DZ) For a sib-pair, do the two sibs have 0, 1 or 2 alleles in common? 0, 1/2 or 1 0 or 1 IBD estimation / Linkage

  45. 4. Introduction to Linkage Analysis

  46. For a heritable trait... Linkage: localize region of the genome where a QTL that regulates the trait is likely to be harboured Family-specific phenomenon: Affected individuals in a family share the same ancestral predisposing DNA segment at a given QTL Association: identify a QTL that regulates the trait Population-specific phenomenon: Affected individuals in a population share the same ancestral predisposing DNA segment at a given QTL

  47. Linkage Analysis: Parametric vs. Nonparametric Gene Chromosome Recombination Genetic factors M Q A Mode of inheritance Dominant trait 1 - AA, Aa 0 - aa Correlation D Phe C E Environmental factors Adapted from Weiss & Terwilliger 2000

  48. Approach Parametric: genotypes marker locus & genotypes trait locus (latter inferred from phenotype according to a specific disease model) Parameter of interest: θbetween marker and trait loci Nonparametric: genotypes marker locus & phenotype If a trait locus truly regulates the expression of a phenotype, then two relatives with similar phenotypes should have similar genotypes at a marker in the vicinity of the trait locus, and vice-versa. Interest: correlation between phenotypic similarity and marker genotypic similarity No need to specify mode of inheritance, allele frequencies, etc...

  49. Phenotypic similarity between relatives Squared trait differences Squared trait sums Trait cross-product Trait variance-covariance matrix Affection concordance T2 T1

  50. Genotypic similarity between relatives IBSAlleles shared Identical By State “look the same”, may have the same DNA sequence but they are not necessarily derived from a known common ancestor M3 M1 M2 M3 Q3 Q1 Q2 Q4 IBDAlleles shared Identical By Descent are a copy of the same ancestor allele M1 M2 M3 M3 Q1 Q2 Q3 Q4 IBD IBS M1 M3 M1 M3 2 1 Q1 Q4 Q1 Q3 0 0 1 0 1 Inheritance vector (M)

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