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Bivariate analysis HGEN619 class 2006.

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Presentation on theme: "Bivariate analysis HGEN619 class 2006."— Presentation transcript:

1 Bivariate analysis HGEN619 class 2006

2 Univariate ACE model

3 Expected Covariance Matrices

4 Bivariate Questions I Univariate Analysis: What are the contributions of additive genetic, dominance/shared environmental and unique environmental factors to the variance? Bivariate Analysis: What are the contributions of genetic and environmental factors to the covariance between two traits?

5 Two Traits

6 Bivariate Questions II
Two or more traits can be correlated because they share common genes or common environmental influences e.g. Are the same genetic/environmental factors influencing the traits? With twin data on multiple traits it is possible to partition the covariation into its genetic and environmental components Goal: to understand what factors make sets of variables correlate or co-vary

7 Bivariate Twin Data individual twin within between trait covariance
(cross-twin within-trait) covariance (within-twin within-trait co)variance (cross-twin within-trait) covariance cross-twin cross-trait covariance

8 Bivariate Twin Covariance Matrix
Y1 X2 Y2 VX CX1X2 CX2X VX2 CX1Y1 CX2Y2 CX1Y2 CX2Y1 CY1X2 CY2X1 CY1X1 CY2X2 VY CY1Y2 CY2Y VY2

9 Genetic Correlation

10 Alternative Representations

11 Cholesky Decomposition

12 More Variables

13 Bivariate AE Model

14 MZ Twin Covariance Matrix
Y1 X2 Y2 a112+e112 a112 a21*a11+ e21*e11 a222+a212+ e222+e212 a21*a11 a222+a212

15 DZ Twin Covariance Matrix
Y1 X2 Y2 a112+e112 .5a112 a21*a11+ e21*e11 a222+a212+ e222+e212 .5a21*a11 .5a222+ .5a212

16 Within-Twin Covariances [Mx]

17 Within-Twin Covariances

18 Cross-Twin Covariances

19 Cross-Trait Covariances
Within-twin cross-trait covariances imply common etiological influences Cross-twin cross-trait covariances imply familial common etiological influences MZ/DZ ratio of cross-twin cross-trait covariances reflects whether common etiological influences are genetic or environmental

20 Univariate Expected Covariances

21 Univariate Expected Covariances II

22 Bivariate Expected Covariances

23 Practical Example I Dataset: MCV-CVT Study 1983-1993
BMI, skinfolds (bic,tri,calf,sil,ssc) Longitudinal: 11 years N MZF: 107, DZF: 60

24 Practical Example II Dataset: NL MRI Study 1990’s
Working Memory, Gray & White Matter N MZFY: 68, DZF: 21


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