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ACE Problems Greg Carey BGA, 2009 Minneapolis, MN Thought Experiment 1: • Future technology identifies all loci and alleles that contribute to a phenotype. • Genotype a very large sample for all these loci. • Code the alleles for additive effects. • Regress the phenotypes on the additive codes. • Predicted values of the phenotypes are the additive genetic values = numerical estimates of latent variable A. Locus 2 Locus 1 A11 A1i A21 ^ P A2j Locus n An1 Ank Assumption 1: • Phenotypes are influenced by concrete environmental events or Xs. Thought Experiment 2: • Measure all the Xs for a large sample of individuals. • Regress the phenotype on all the Xs. • Predicted values equal the total environmental values = numerical estimates of the sum of latent variables C + E. X1 X2 ^ P Xn Problem at Hand: • If (C + E) = SbiXi, we should be able to find weights for C and weights for E so that: (1) C and E are uncorrelated in an individual; (2) the Es for siblings are uncorrelated. X11 X12 E1 C1 P1 Necessary Condition 1: • Every X variable can be placed into one of two mutually exclusive classes—those predicting E and those predicting C. • (X variables can be either green or red). X1e X1c E1 C1 P1 Necessary Condition 2: • X variables predicting the unique environment cannot be correlated with X variables predicting the common environment within an individual. • (No magenta correlations). X1e X1c X2c X2e E1 C1 C2 E2 P1 P2 Necessary Condition 3: • No sibling correlations among the Xs for the unique environment. • (Green Xs cannot correlate across siblings or no green correlational paths). X1e X1c X2c X2e E1 C1 C2 E2 P1 P2 Necessary Condition 4: • No X for sib 1’s unique environment can correlate with any X for sib 2’s common environment. • (No magenta correlational paths) X1e X1c X2c X2e E1 C1 C2 E2 P1 P2 Necessary Condition 5: • When C1 = C2, Necessary Condition 5: • When C1 = C2, • (With some algebra), a red X for sib 1 and its counterpart for sib 2 must correlate 1.0. X1ke X11e XXjc12 X1c E1 X21e E2 C P1 X2ke P2 ACE Model Assumption: • Select any X variable. ACE Model Assumption: • Select any X variable. • That X must correlate either 0.0 or 1.0 for the relatives. ACE Model Assumption: • Select any X variable. • That X must correlate either 0.0 or 1.0 for the relatives. • It is not possible to have an X that correlates, say, .43 between sibs. ACE Model Assumption: • Conversely, if peer substance abuse correlates .38 among sibs, then ACE Model Assumption: • Conversely, if peer substance abuse correlates .38 among sibs, then • Peer substance abuse can NOT be an environmental influence on substance abuse. What Happened? • In the beginning, What Happened? • In the beginning, there was G1, G2, E1, and E2 (Jinks & Fulker, 1970). What Happened? • In the beginning, there was G1, G2, E1, and E2 (Jinks & Fulker, 1970). • E2 variance component morphed into variable C in path analysis. What Happened? • In the beginning, there was G1, G2, E1, and E2 (Jinks & Fulker, 1970). • E2 variance component morphed into variable C in path analysis. • E1 variance component morphed into variable E in path analysis. What Happened? • In the beginning, there was G1, G2, E1, and E2 (Jinks & Fulker, 1970). • E2 variance component morphed into variable C in path analysis. • E1 variance component morphed into variable E in path analysis. • Variance components G1 and G2 were eliminated and replaced with variable A. What Happened? • In the process, we overlooked the fact that correlation (variance components) does not necessarily imply causality. Res1 Pupil1 School Res2 Pupil2 Can legitimately calculate: • Variance component for School. Can legitimately calculate: • Variance component for School. • Orthogonal variance component for Error. Can legitimately calculate: • Variance component for School. • Orthogonal variance component for Error. • Test of significance of the variance component for School. Can legitimately calculate: • Variance component for School. • Orthogonal variance component for Error. • Test of significance of the variance component for School. • Intraclass correlation for School. But is this causal? But is this causal? • Not necessarily! Family1 Res1 Pupil1 Family2 School Res2 Pupil2 How Important Is This? • For the simple analysis of a single phenotype, no problem. • For some models of GE correlation, how does a variable (G) correlate with a variance component? • What about multivariate models? Solution? Solution? Common and Unique Environment Solution? Shared and Nonshared Environment Solution? Use Total Environment =C+E a Ab 1 Eb 1 e a P1 h Eb 2 A b 2 a e P2 $5,000 prize $5,000 prize Bouchard Prize $5,000 prize Bouchard Prize Prove me wrong or irrelevant $5,000 prize Bouchard Prize Prove me wrong or irrelevant Equations, not words