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Biometrical Genetics

Biometrical Genetics. Pak Sham & Shaun Purcell Twin Workshop, March 2002. Aims. To gain an appreciation of the scope and rationale of biometric genetics To understand how the covariance structure of twin data is determined by genetic and environmental factors. Maternal. A 3. A 4. ½. ½.

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Biometrical Genetics

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  1. Biometrical Genetics Pak Sham & Shaun Purcell Twin Workshop, March 2002

  2. Aims • To gain an appreciation of the scope and rationale of biometric genetics • To understand how the covariance structure of twin data is determined by genetic and environmental factors

  3. Maternal A3 A4 ½ ½ A1 A1 A3 A4 ½ ¼ ¼ A1 Paternal A2 A2 A2 A3 A4 ½ ¼ ¼ Mendel’s Law of Segregation

  4. Classical Mendelian Traits • Dominant trait D, absence R • AA, Aa  D; aa  R • Recessive trait R, absence D • AA  D; Aa, aa  R • Co-dominant trait, X, Y, Z • AA  X; Aa  Y; aa  Z

  5. Biometrical Genetic Model Genotype means 0 AA m + a -a +a d Aa m + d aa m – a

  6. Quantitative Traits • Mendel’s laws of inheritance apply to complex traits influenced by many genes • Assume 2 alleles per loci acting additively Genotype AA Aa aa Phenotype 1 0 -1 • Multiple loci • Normal distribution of continuous variation

  7. 1 Gene  3 Genotypes  3 Phenotypes 2 Genes  9 Genotypes  5 Phenotypes 3 Genes  27 Genotypes  7 Phenotypes 4 Genes  81 Genotypes  9 Phenotypes Quantitative Traits Central Limit Theorem  Normal Distribution

  8. Continuous Variation 95% probability 2.5% 2.5% -1.96 1.96 0 Normal distribution Mean , variance 2

  9. Familial Covariation Bivariate normal disttribution Relative 2 Relative 1

  10. Means, Variances and Covariances

  11. Covariance Algebra Forms Basis for Path Tracing Rules

  12. Covariance and Correlation Correlation is covariance scaled to range [-1,1].

  13. Genotype Frequencies (random mating) A a A p2 pqp a qpq2 q p q Hardy-Weinberg frequencies p(AA) = p2 p(Aa) = 2pq p(aa) = q2

  14. Biometrical Model for Single Locus Genotype AA Aa aa Frequency p2 2pq q2 Deviation (x) a d -a Residual var 2 2 2 Mean m = p2(a) + 2pq(d) + q2(-a) = (p-q)a + 2pqd

  15. Genetic Variance under Random Mating Genotype AA Aa aa Frequency p2 2pq q2 (x-m)2 (a-m)2 (d-m)2 (-a-m)2 Variance = (a-m)2p2 + (d-m)22pq + (-a-m)2q2 = 2pq[d+(q-p)d]2 + (2pqd)2 = VA + VD

  16. a d m -a Additive and Dominance Variance aa Aa AA Total Variance = Regression Variance + Residual Variance = Additive Variance + Dominance Variance

  17. Cross-Products of Deviations for Pairs of Relatives AA Aa aa AA (a-m)2 Aa (a-m)(d-m) (d-m)2 aa (a-m)(-a-m) (-a-m)(d-m) (-a-m)2 The covariance between relatives of a certain class is the weighted average of these cross-products, where each cross-product is weighted by its frequency in that class.

  18. Covariance for MZ Twins AA Aa aa AA p2 Aa 0 2pq aa 0 0 q2 Covariance = (a-m)2p2 + (d-m)22pq + (-a-m)2q2 = 2pq[d+(q-p)d]2 + (2pqd)2 = VA + VD

  19. Genotype tables : Parent-offspring AA Aa aa AA p2 Aa 0 2pq aa 0 0 q2

  20. Genotype tables : Unrelated AA Aa aa AA p4 Aa 2p3q 4p2q2 aa p2q2 2pq3 q2 Covariance = … = 0

  21. Genotype tables : DZ twins AA Aa aa AA p4 Aa 2p3q 4p2q2 aa p2q2 2pq3 q2 • Weighted average • ¼ MZ twins • ½ Parent-offspring • ¼ Unrelated Covariance = … = ½VA+¼VD

  22. Environmental components • Shared (C) • Correlation = 1 • Nonshared (E) • Correlation = 0

  23. ACE Model for twin data 1 [0.5/1] E C A A C E e c a a c e PT1 PT2

  24. Implied covariance matrices

  25. Components of variance Phenotypic Variance Environmental Genetic GxE interaction

  26. Components of variance Phenotypic Variance Environmental Genetic GxE interaction Additive Dominance Epistasis

  27. Components of variance Phenotypic Variance Environmental Genetic GxE interaction Additive Dominance Epistasis Quantitative trait loci

  28. Parent-offspring

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