BMC Genetics
BioMed Central
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Research article
Models and partition of variance for quantitative trait loci with epistasis and linkage disequilibrium Tao Wang1,3 and Zhao-Bang Zeng*1,2 Address: 1Bioinformatics Research Center & Department of Statistics, North Carolina State University, Raleigh, NC 27695, USA, 2Department of Genetics, North Carolina State University, Raleigh, NC 27695, USA and 3Division of Biostatistics & Human Molecular Genetics Center, Medical College of Wisconsin, Milwaukee, Wl 53226, USA Email: Tao Wang -
[email protected]; Zhao-Bang Zeng* -
[email protected] * Corresponding author Published: 10 February 2006 BMC Genetics2006, 7:9
doi:10.1186/1471-2156-7-9
Received: 29 June 2005 Accepted: 10 February 2006
This article is available from: http://www.biomedcentral.com/1471-2156/7/9 © 2006Wang and Zeng; licensee BioMed Central Ltd. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
Abstract Background: A genetic model about quantitative trait loci (QTL) provides a basis to interpret the genetic basis of quantitative traits in a study population, such as additive, dominance and epistatic effects of QTL and the partition of genetic variance. The standard quantitative genetics model is based on the least squares partition of genetic effects and also genetic variance in an equilibrium population. However, over years many specialized QTL models have also been proposed for applications in some specific populations. How are these models related? How to analyze and partition a QTL model and genetic variance when both epistasis and linkage disequilibrium are considered? Results: Starting from the classical description of Cockerham genetic model, we first represent the model in a multiple regression setting by using indicator variables to describe the segregation of QTL alleles. In this setting, the definition of additive, dominance and epistatic effects of QTL and the basis for the partition of genetic variance are elaborated. We then build the connection between this general genetic model and a few specialized models (a haploid model, a diploid F2 model and a general two-allele model), and derive the genetic effects and partition of genetic variance for multiple QTL with epistasis and linkage disequilibrium for these specialized models. Conclusion: In this paper, we study extensively the composition and property of the genetic model parameters, such as genetic effects and partition of genetic variance, when both epistasis and linkage disequilibrium are considered. This is the first time that both epistasis and linkage disequilibrium are considered in modeling multiple QTL. This analysis would help us to understand the structure of genetic parameters and relationship of various genetic quantities, such as allelic frequencies and linkage disequilibrium, on the definition of genetic effects, and will also help us to understand and properly interpret estimates of the genetic effects and variance components in a QTL mapping experiment.
Background Modeling quantitative trait loci (QTL) started with Yule [1,2] and Pearson [3] (see [4,5] for the early history of quantitative genetics). However, it was Fisher [6] who laid the firm foundation for quantitative genetics. Fisher defined gene effects (additive, dominance and epistatic effects) based on the partition of genetic variance. He par-
titioned the genetic variance into a portion due to additive effects (averaged allelic substitution effects), a portion due to dominance effects (allelic interactions), and a portion due to epistatic effects (non-allelic interactions) of genes. He then studied the correlation between relatives using the model. Cockerham [7] used the orthogonal contrasts to redefine the additive and dominance effects of QTL Page 1 of 19 (page number not for citation purposes)
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and, by extending the contrasts to include epistatic effects, he partitioned the epistatic variance of two loci into those due to additive × additive, additive × dominance, dominance × additive and dominance × dominance effects of QTL. Cockerham then generalized the model to multiple loci. This was further generalized by Kempthorne [8,9] to multiple alleles. This model has been used as the basis for studying quantitative genetics ever since. However, over years, many specialized models have also been proposed. Some are just special cases of the general genetic model and some are simplified variants tailored for particular applications or interpretations. With the propagation of numerous quantitative genetic models, there have also been some confusions in literature on the definition and interpretation of additive, dominance and epistatic effects of QTL and their relationship to the partition of genetic variance. Also, there has never been a study that considers both epistasis and linkage disequilibrium in the partition of genetic variance for multiple QTL. In this paper, we try to build the connection between the general genetic model and a few other commonly used genetic models to clarify the basis for the interpretation of different genetic models.
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An important result of [10] is that the genetic effects defined in reference to an equilibrium population also apply to a disequilibrium population. The partial regression coefficients, that define the genetic effects in a disequilibrium population, equal to the simple regression coefficients in a corresponding equilibrium population – the usual basis to define and interpret a genetic effect including an epistatic effect. Hardy-Weinberg and linkage disequilibria only introduce covariances between different genetic effects. With this result, in this paper our discussion on epistasis and linkage disequilibrium is focused on the partition and composition of genetic variances and covariances between different genetic effects in different populations.
Results The genetic model A general genetic model for the partition of genetic variance (particularly epistatic variance) in a random mating population was first given by Cockerham [7,13] and extended to multiple alleles by Kempthorne [8,9], following the basic genetic model formulated by Fisher [6]. The model for two loci A and B with multiple alleles was expressed as follows
We start with an introduction of the genetic model as expressed in [7] in the context of variance components. Then by introducing an indicator variable for each QTL allele, we represent the model in a multiple regression setting and examine the definition and meaning of the genetic effects (additive, dominance and epistatic effects) of QTL and partition of the genetic variance in an equilibrium population and also in a disequilibrium population. Most of previous studies on modeling QTL discuss epistasis only in reference to an equilibrium population. An examination of properties of a model with both epistasis and linkage disequilibrium is important for QTL analysis in both experimental and natural populations. This is another goal of the paper and is studied in great detail here. We discuss a few reduced models used for QTL analysis, such as backcross model (essentially a haploid model) and F2 model. We also give details for a general two-allele model which may be useful for studying the genetic architecture in a natural population using single nucleotide polymorphisms (SNPs).
partitions the total genotypic value into a number of genetic effects which include additive effects of each allele (α's and β's), dominance effects between two alleles at each locus (δ's and γ's), additive × additive interactions between two alleles at two loci ((αβ)'s), additive × dominance interactions involving three alleles ((αγ)'s and (δβ)'s), and dominance × dominance interaction involving all four alleles ((δγ)'s).
Previously, in [10], we compared F2 model and the general two-allele model with another commonly used genetic model, called F∞ model. By specifying the basis of definition for each model, we compared the properties of these models in the estimation and interpretation of QTL effects including epistasis and discussed a few potential problems of using F∞ model in a segregating population for QTL analysis. Similarly, we also compared these models with another model proposed by Cheverud [11,12].
As an ANOVA model, it is known that not all the parameters in model (1) are estimable. A number of constraint conditions on these parameters are therefore needed. Let pi, qk denote allelic frequencies for alleles on paternal gametes, and pj, ql allelic frequencies for alleles on maternal gametes. It is usually assumed that a weighted summation of genetic effects is zero over any index for each genetic component as a deviation from the mean. Some examples are
i i k k i k Gik jl = µ + α + α j + δ j + β + β l + γ l + (α β )
+(α i βl ) + (α j β k ) + (α j βl ) + (α i γ lk )
(1)
+(α j γ lk ) + (δ ji β k ) + (δ ji βl ) + (δ ji γ lk )
where the genotypic value Gik jl is the expected phenotype of an individual carrying alleles Ai, Aj, Bk, and Bl with phased genotype AiBk/AjBl formed by the union of a paternal gamete AiBk and a maternal gamete AjBl. The model
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∑ piα i = 0, ∑ piδ ji = 0, ∑ p jδ ji = 0, i
i
∑ p (α β i
i k
i
j
) = 0, ∑ p (α β ) = 0, k
(2)
i k
with
k
VA1 = ∑ pi (α i )2 + ∑ p j (α j )2
∑ p j (δ ji β k ) = 0, ∑ qk (δ ji β k ) = 0, j
(4)
VG = VA1 + VA2 + VD1 + VD2 + VA1A2 + VA1D2 +VD1A2 + VD1D2
i
k
Under the assumption of random mating and linkage equilibrium and allowing for different allelic frequencies in paternal and maternal gametes, the mean and genetic effects can be expressed as follows based on the least squares principle:
j
VD1 = ∑ p
i
p j (δ ji )2
i, j
VA2 = ∑ qk ( β k )2 + ∑ ql ( βl )2 k
l
VD2 = ∑ q
k
ql (γ lk )2
k ,l
∑
p pjq
α = G..i. α j = G..j.
− G.... , − G.... ,
µ=
i
k
( 3)
ql Gik jl
VA1A2 = ∑ pi qk (α i β k )2 + ∑ p j ql (α j βl )2
i , j ,k ,l i
i ,k
β = G...k − G.... , βl = G...l − G.... ,
i
VA1D2 =
− G...k − G...l + G.... , (α β ) = G..ik − G..i. − G...k + G.... , (α i βl ) = G.il. − G..i. − G...l + G.... , (α j β k ) = G.jk. − G..j. − G...k + G.... ,
VD1A2 = VD1D2 =
(α j γ lk ) = G.jlk − G.jk. − G..lk − G..jl + G..j. + G...k ik i. i. .k .k (δ ji β k ) = Gik j. − G.. − G j. − G j. + G.. + G..
− G.... , − G..jl
(δ ji γ lk ) =
+G...l − G.... , ik ik Gik jl − G j. − G.l
+ G..i.
+ G..j.
i. k ik where G.... = ∑ i , j ,k ,l pi p j qk ql Gik jl , G.. = ∑ j ,k ,l p j q ql G jl ,
on.
VG = ∑ i , j ,k ,l p p j p i
The k
pl (Gik jl
∑
1, (2) zM = k 0, (2) 1, zF = l 0,
− Gijl. + G.jlk + G..ik
−G...k − G..j. − G...j + G....
so
k
(δ ji β k )2
i
p pjq
+ ∑ pi p j ql (δij βl )2 i , j ,l
k
ql (δ ji γ lk )2
total
genetic
for Ai allele from paternal gamete otherwise. for A j allele from maternal gamete otherwise.
for i, j = 1, 2, ..., n1 at locus A, and
+G..jl + Gij.. + G..lk + G.jk. + G.il. − G..i.
and
∑ p pjq
1, (1) zM = i 0, 1, (1) zF = j 0,
+G...l − G.... ,
− G.il.
j ,k ,l
i
Using indicator variables, we can represent model (1) in another form. Assume that the two loci A and B have alleles Ai, i = 1, 2, ..., n1; and Bk, i = 1, 2, ..., n2, respectively. We define the following indicator variables to represent the segregation of alleles in a population.
+G...l − G.... ,
− Gij..
∑ pi qk ql (α i γlk )2 + ∑ p j qk ql (α j γlk )2
i , j ,k ,l
(α i γ lk ) = G.ikl − G..ik − G.il. − G..lk + G..i. + G...k
Gijl.
j ,k
i , j ,k
(α j βl ) = G..jl − G..j. − G...l + G.... ,
(δ ji βl ) =
2
i ,k ,l
= G..lk i k
+G..j.
i
i ,l
δ ji = Gij.. − G..i. − G..j. + G.... , γ lk
j ,l
+ ∑ p ql (α βl ) + ∑ p j qk (α j β k )2
k
variance
is
2
− µ ) , and has an orthogonal
partition under random mating and linkage equilibrium
for Bk allele from paternal gamete otherwise. for Bl allele from maternal gamete otherwise.
for k, l = 1, 2, ..., n2 at locus B. In terms of these indicator variables, we have the following. (1)
• Hardy-Weinberg equilibrium (HWE) implies that { z M , i
(1)
i = 1, 2, ..., n1} are independent of { zF , j = 1, 2, ..., n1}, j
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(2)
(2)
and { z M , k = 1, 2, ..., n2} are independent of { zF , l = k
l
can see this more clearly in the examination of some reduced models later.
1, 2, ..., n2}. • Linkage equilibrium (LE) implies
(1) that { z M , i i
= 1, 2, ..., (1)
(2)
n1} are independent of { z M , k = 1, 2, ..., n2}, and { zF , j
k
(2)
j = 1, 2, ..., n1} are independent of { zF , l = 1, 2, ..., n2}. l
In general, the genetic effects can be defined separately for alleles that are paternally and maternally transmitted to account for possible biological differences. As a fully parameterized model for Gik jl , model (3) may give jk jl il Gik jl ≠ G jk ≠ Gil ≠ Gik depending on how genetic effects
are defined. If locus A has n1 alleles, and locus B has n2
• There is another type of disequilibrium; i.e., the socalled genotypic disequilibrium [14] for two alleles on different gametes and at different loci. So, the genotypic
alleles, there are N = n12n22 possible phased genotypes in total with the partition of the degrees of freedom given in Table 1.
(1)
equilibrium (GE) here means that { z M , i = 1, 2,..., n1} i (2) are independent of { zF , l l
(1) = 1, 2, ..., n2}, and { zF , j j
= 1,
(2)
2, ..., n1} are independent of { z M , k = 1, 2, ..., n2}. k
It is known that under random mating we have both HWE and GE, which together are called gametic phase equilibrium. Now, let G denote the genotypic value of a progeny drawn randomly from the current population. Based on Cockerham model, G can be expressed as n1
G = µ + ∑ α i z M + ∑ α j zF + ∑ δ ji z M zF i
i =1
n2
(1) j
j =1
n2
k
k =1
(2)
i
i, j
j
jl Gik jl = Gik ), the coupling and repulsion heterozygotes il have the same genotypic value (i.e., Gik jl = G jk ), and pater-
nal and maternal gametes have the same gametic frequency distribution, we do not need to distinguish paternal and maternal effects. In this case, the two loci can
(cf. [7]). The total number of genotypes is N = n1(n1 + 1)n2(n2 + 1)/4 and the partition of degrees of freedom is
(2) (2)
l
l =1
paternal gamete AjBl with maternal gamete AiBk(i.e.,
levels produced by the allelic combinations of ni alleles
(1) (1)
+ ∑ β k z M + ∑ βl zF + ∑ γ lk z M zF (2)
maternal gamete AjBl have the same mean effect as that of
be regarded as 2 factors and each factor has ni2 (i = 1, 2)
n1
(1)
If we assume that the union of paternal gamete AiBk with
k ,l
k
shown in Table 2. Since in this case, αi = αi, βk = βk, ..., and
l
+[∑ (α i β k )z M z M + ∑ (α i βl )z M zF
so on, the model can also be expressed as follows
+ ∑ (α j β
G = µ + ∑ α i ( z M + zF ) + ∑ δ ji z M zF
(1) (2) i
i ,k
j ,k
k
(1) (2)
k
(1) (2) )zF z M j k
i
i ,l
+∑ j ,l
i
i ,k ,l
+[ ∑
i , j ,k
+
k
l
(1) (1) (2) (δ ji β k )z M zF z M k i j
n1
(1) (2) (α j βl )zF zF ] j l
+[ ∑ (α i γ lk )z M z M zF + (1) (2) (2)
l
n2
k =1
(1) (1) (2) (δ ji βl )z M zF zF ] i j l
∑ (δ ji γlk )z(M1)i z(F1j) z(M2k) z(F2l )
(2)
(2)
j
(2) (2)
k
k
(1)
( 5)
k
k ,l
l
(1)
i
(2)
(2)
k
i
k
+ ∑ (α i γ lk )( z M + zF )z M zF (1)
i , j ,k ,l
i ,k ,l
This is simply a different presentation of Cockerham model with the same constraint conditions applied on the coefficient parameters. For a given individual with genotype AiBk/AjBl, G will take the same value of
i
i, j
+ ∑ (α i β k )( z M + zF )( z M + zF ) i ,k
Gik jl
(1) (1)
i
+ ∑ β k ( z M + zF ) + ∑ γ lk z M zF
j ,k ,l
i , j ,l
(1)
i
i =1
∑ (α j γlk )z(F1j) z(M2k) z(F2l )]
+∑
(1)
as before.
However, this expression is helpful for us to understand some details about each component of genetic effects. We
(1)
i
(2) (2)
i
k
l
+ ∑ (δ ji β k )z M zF ( z M + zF ) (1) (1)
i , j ,k
+
i
j
(2)
(2)
k
∑ (δ ji γlk )z(M1)i z(F1j) z(M2k) z(F2l ) )
k
(6)
i , j ,k ,l
For the case of an arbitrary number of loci, the situation will become more complicated. In addition to the addi-
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Taking the constraint conditions on the genetic effects into account, we can show that,
Table 1: Partition of degrees of freedom for two loci with number of alleles n1 and n2 (a general case)
Source
Degrees of Freedom
additive (α) dominance (δ) additive (β) dominance (γ) additive × additive (αβ) additive × dominance (αγ) dominance × additive (δβ) dominance × dominance (δγ)
2(n1 - 1) (n1 - 1)2 2(n2 - 1) (n2 - 1)2 4(n1 - 1)(n2 - 1) 2(n1 - 1)(n2 - 1)2 2(n1 - 1)2(n2 - 1) (n1 - 1)2(n2 - 1)2
n1
total
n1
∑α i x(M1) = ∑ αi z(M1) i
∑ i, j
i =1 δ ji x(M1) x(F1) i j
i
i =1
= ∑ δ ji z M zF
(1) (1) j
i
i, j
∑ (α i γlk )x(M1)i x(M2k) x(F2l ) = ∑ (α i γlk )z(M1)i z(M2k) z(F2l ) i ,k ,l
i ,k ,l
∑
i , j ,k ,l
n12n22 - 1
(1) (1) (2) (2) (δ ji γ lk )xM xF xM xF i j k l
∑ (δ ji γlk )z(M1)i z(F1j) z(M2k) z(F2l )
=
i , j ,k ,l
and so on. For example, tive and dominance effects at each locus and two locus interactions (additive × additive, additive × dominance, dominance × additive, dominance × dominance, with a total number of 22 terms), there are 3 locus interactions (additive × additive × additive, additive × additive × dominance, ..., with a total number of 23 terms), 4 locus interactions (additive × additive × additive × additive, ..., with a total number of 24 terms), and so on. Though the extension is straightforward, the total number of terms will increase dramatically. We will show some models with multiple loci in later examples by ignoring trigenic and higher order epistasis. Effects and variance components Let pi, pj (i, j = 1, 2, ..., n1) be allelic frequencies of paternal
and maternal gametes at locus A, respectively. Let also qk, ql (k, l = 1, 2, ..., n2) denote allelic frequencies of paternal and maternal gametes at locus B, respectively. In the analysis of variance for the model, it is convenient to use devi(1)
(1)
(2)
(2)
ations of the indicator variables z M , zF , z M and zF j j i i from their expected values. That is (1)
(1)
(1)
(1)
i
i
i
i
xM = z M − E( z M ) = z M − pi 1 − pi , for Ai allele from paternal gamete = i otherwise − p , Similarly, define (1)
(1)
(1)
(1)
j
j
j
j
xF = zF − E( zF ) = zF − p j (2)
(2)
(2)
(2)
k
k
k
k
(2) xF l
(2) zF l
xM = z M − E( z M ) = z M − qk =
(2) (2) − E( zF ) = zF l l
− ql
n1
n1
i =1 n1
i =1 n1
∑α i x(M1)i = ∑ αi (z(M1)i − pi ) n1
= ∑ α i z M − ∑ α i pi = ∑ α i z M (1) i
i =1
as
i =1
(1) i
i =1
∑ i=1α i pi = 0 n1
by the constrain condition (2). There-
fore, model (5) can be rewritten as
n1
n1
G = µ + ∑ α i xM + ∑ α i xF + ∑ δ ji xM xF (1) i
i =1
n2
(1) j
j =1
n2
(1) (1) i
i, j
j
+ ∑ β k xM + ∑ βl xF + ∑ γ lk xM xF (2) k
k =1
(2)
(2) (2)
l
l =1
k
k ,l
l
+[∑ (α i β k )xM xM + ∑ (α i βl )xM xF (1) (2) i
i ,k
(1) (2)
k
i
i ,l
l
+ ∑ (α j β k )xF xM + ∑ (α j βl )xF xF ] (1) (2) j
j ,k
(1) (2)
k
j
j ,l
+[ ∑ (α i γ lk )xM xM xF + (1) (2) (2) i
i ,k ,l
+[ ∑
i , j ,k
+
k
l
(1) (1) (2) (δ ji β k )xM xF xM k i j
l
∑ (α j γlk )x(F1j) x(M2k) x(F2l )]
j ,k ,l
+ ∑ (δ ji βl )xM xF xF ] (1) (1) (2)
i , j ,l
∑ (δ ji γlk )x(M1)i x(F1j) x(M2k) x(F2l )
i
j
l
(7)
i , j ,k ,l
When we deal with some reduced models in the next section, we will find that the model of this form is especially helpful as it makes the model parameter constraints built into regression variables which is suited for genetic interpretation. The form of model (7) can also facilitate the demonstration that under Hardy-Weinberg, linkage and genotypic equilibria, the regression coefficients (genetic effects) are Cockerham's least squares effects (3) (Appen-
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Table 2: Partition of degrees of freedom for two loci with number of alleles n1 and n2 (a simplified case without distinguishing the paternal and maternal origins)
Source
Degrees of Freedom
additive (α) dominance (δ) additive (β) dominance (γ) additive × additive (αβ) additive × dominance (αγ) dominance × additive (δβ) dominance × dominance (δγ)
n1 - 1 n1(n1 - 1)/2 n2 - 1 n2(n2 - 1)/2 (n1 - 1)(n2 - 1) (n1 - 1)n2(n2 - 1)/2 n1(n1 - 1)(n2 - 1)/2 n1(n1 - 1)n2(n2 - l)/4
(1) (1) (2)
Dik j. = E( x M xF x M ) i
=
Pjik.
j
k
− pi Pj..k
− qk Pji.. − p j P..ik + 2pi p j qk
(1) (2) (2)
D.ikl = E( xM xM xF ) i
= Dijl. =
k
l
P.lik
− pi P..lk − qk P.li. (1) (1) (2) E( xM xF xF ) i j l
− ql P..ik + 2pi qk ql
= Pjli. − pi Pjl.. − p j P..i. − ql Pji.. + 2pi p j ql (1) (2) (2)
D.jlk = E( xF xM xF ) j
total
n1(n1 + 1) n2 (n2 + 1) ⋅ −1 2 2
=
Pjl.k
k
− p j P..lk
l
− qk Pj..l − ql Pj..k + 2p j qk ql
Similarly for the quadrigenic disequilibrium, we may define (1) (1) (2) (2)
dix A), and the genotypic variance VG has the orthogonal partition (4) (Appendix B).
Dik jl = E( x M xF x M xF ) i
=
Now we discuss the properties of model in a disequilibrium situation. As stated in [14], there are three types of disequilibria • Typel: between alleles on the same gametes but at different loci • Type2: between alleles at the same locus but on different gametes
Pjlik
j
− pi Pjl.k
k
l
− p j P.lik − qk Pjli. − ql Pjik.
+ pi p j P..lk − pi qk Pjl.. + pi ql Pj..k + p j qk P.li. + p j ql P..ik + qk ql Pji.. − 3pi p j qk ql . If we express Dik jl as a function of lower-order linkage disequilibria, we have ik i .k ik k i. ik Dik jl = Pjl − p D jl − p j D.l − q D jl − ql D j.
• Type3: between alleles on different gametes and at different loci.
− pi p j D..lk − pi qk D..jl − pi ql D.jk. − p j qk D.il. − p j ql D..ik − qk ql Dij.. − pi p j qk ql .
If we denote Pjlik as the genotypic frequency of AiBk/AjBl,
Pji.. as the genotypic frequency of Ai/Aj, and so on, follow-
This definition is the same as that given by [15,16]. Note that
ing [14], the digenic disequilibria can be written as (1)
(2)
i
k
(1) (2)
D..ik = Cov( z M , z M ) = E( xM xM ) = P..ik − pi qk D..jl Dij.. D..lk D.i.j D.jk.
i
=
(1) (2) Cov( zF , zF ) = j l
=
(1) (1) E( xM xF ) = j i
=
(2) (2) E( xM xF ) = P..lk k l
− q ql
=
(1) (2) E( xM xF ) = P.li. i l
i
=
(1) (2) E( xF xM ) = j k
Pji..
k
(1) (2) E( xF xF ) = j l
∑ Dikjl = E[(∑ x(M1)i )x(F1j) x(M2k) x(F2l )] i
i
= E[∑ i
i
− p pj
Pj..k
Pjl.. − p j ql
∑ i z(M1)i = 1 . Then, we have
k
− p ql
(1) (zM i
(1)) (2) (2)
− pi )xF xM xF = 0 j
k
l
In general, Dik jl is summed to zero over any allele involved, so are Dik j. and other disequilibrium measurements.
k
− pjq .
And the trigenic disequilibria
With Hardy-Weinberg and genotypic equilibria but linkage disequilibrium, model (7) leads to the following expression for the overall mean Page 6 of 19 (page number not for citation purposes)
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E(G) = µ + ∑ (α β
i k
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)D..ik
i ,k
+
+∑
(α j βl )D..jl
j ,l
marginal means of genotypic values are changed in a disequilibrium population. Hardy-Weinberg and linkage disequilibria introduce correlation between x variables, thus covariances between different genetic effect components. Define
∑ (δ ji γlk )Dik D jl
i , j ,k ,l
where µ is the mean genotypic value under linkage equilibrium, and ∆ µ = ∑ i ,k (α i β k )D..ik + ∑ j ,l (α j βl )D..jl + ∑ i , j ,k ,l (δ jiγ lk )D..ik D..jl
represents the departure from µ due to linkage disequilibrium and epistasis. If there is no epistasis, linkage disequilibrium does not affect the mean genotypic value. Similar results were given by [17]. Note that for marginal means of the genotypic values, we have
n1
n1
A1 = ∑ α i xM + ∑ α j xF (1) i
i =1
(1) j
j =1
D1 = ∑ δ ji xM xF
(1) (1) i
i, j
A2 =
j
n2
n2
∑ β k x(M2) + ∑ βl x(F2) k
k =1
D2 = ∑ k ,l
l
l =1 k (2) (2) γ l x M xF k l
A1 A2 = ∑ (α i β k )xM xM + ∑ (α i βl )xM xF (1) (2)
G.... =
∑
i. P..ik Pjl..Gik jl , G.. =
i , j ,k ,l
G..ik
=∑
Pjl..Gik jl ,
Gij..
=
j ,l
Gik j. =
1 pj
1 pi p j
1 pi
∑ P..ik Pjl..Gikjl ,
i ,k
∑ k ,l
i
i ,l
(1) (2)
j ,k
A1D2 =
l
j
(1) (2)
k
j ,l
j
l
∑ (α iγ lk )x(M1)i x(M2k) x(F2l )
i ,k ,l
∑ Pjl..Gikjl , ...
+ ∑ (α jγ lk )xF xM xF
(1) (2) (2)
l
and so on.
(1) (2)
k
+ ∑ (α j β k )xF xM + ∑ (α j βl )xF xF
j ,k ,l
Pjl.. P..ik Gik jl ,
i
j
j ,k ,l
A2 D1 =
k
l
∑ (δ ji β k )x(M1)i x(F1j) x(M2k)
i , j ,k
Then the question is what the genetic effects are in a disequilibrium population. Do Hardy-Weinberg and linkage disequilibria change the definition and values of genetic effects? The short answer to this question is "no" in a fully characterized model, but "yes" in a model that ignores some QTL or genetic effects. This is proved and discussed in [10]. With Hardy-Weinberg and linkage disequilibria, the genetic effects no longer correspond to the deviations from marginal means of genotypic values in a disequilibrium population. In a multiple regression model (7), the genetic effects are partial regression coefficients. These partial regression coefficients correspond to the simple regression coefficients, or deviations from marginal means of genotypic values, only in an equilibrium population. In a disequilibrium population, a direct analysis on the partial regression coefficients can be very complex (see the appendix of [10] for a relatively simple example). However, in a full model which includes all relevant loci and genetic effects, the model parameters depend only on how the regressors, i.e. x variables in (7), are defined and are independent of correlations between x variables, i.e. Hardy-Weinberg and linkage disequilibria. So, the genetic effects are still the same as those defined in the equilibrium population, although the population mean and
+ ∑ (δ ji βl )xM xF xF
(1) (1) (2)
i , j ,l
D1D2 =
i
j
l
∑ (δ jiγ lk )x(M1)i x(F1j) x(M2k) x(F2l )
i , j ,k ,l
Then we can write G = µ + A1 + A2 + D1 + D2 + A1A2 + A1D2 + A2D1 + D1D2 In a disequilibrium population, the partition of the genotypic variance becomes 8 8
VG = ∑ ∑ Vij = 1T V1 i =1 j =1
where V = (Vij)8 × 8 It is a symmetric matrix. In Appendix C, we give the detailed result for each component of the matrix with linkage disequilibrium, but assuming Hardy-Weinberg equilibrium. Page 7 of 19 (page number not for citation purposes)
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For the rest of paper, when we discuss disequilibrium, we mainly discuss linkage disequilibrium and assume HardyWeinberg and genotypic equilibria which can be achieved by random mating in one generation. Hardy-Weinberg disequilibrium can be taken into account which will make results more complex and is thus omitted. Reduced models In many genetic applications, experimental population has some regular genetic structure by design. In these cases, the genetic model can be further simplified to reflect the experimental design structure. Also sometimes we may want to simplify the genetic model by imposing certain constrains or assumptions, such as the number of alleles, to increase the feasibility of analysis. In this section, we give a few reduced genetic models that are relevant to many genetic applications.
(r )
(r )
where ar = α1 − α 2 is the substitution effect between homozygote genotype ArAr and heterozygote genotype (r ) ( s)
(r ) ( s)
(r ) ( s)
(r ) ( s)
Ar ar , brs = (α1 α1 ) − (α1 α 2 ) − (α 2 α1 ) + (α 2 α 2 ) is
the (r ) ( s) (t )
interaction
effect
(r ) ( s) (t )
(r ) ( s) (t )
between
(r ) ( s) (t )
(r ) ( s) (t )
(r ) ( s) (t )
loci
r
(r ) ( s) (t )
and (r ) ( s) (t )
s, crst = (α1 α1 α1 ) − (α1 α1 α 2 ) − (α1 α 2 α1 ) + (α1 α 2 α 2 ) − (α 2 α1 α1 ) + (α 2 α1 α 2 ) + (α 2 α 2 α1 ) − (α 2 α 2 α 2 )
, ..., and so on. Taking constraint conditions into account, (r )
we have α1 = -α2, β1 = -β2, and so on. Then, ar = 2α1 , brs (r ) ( s)
(r ) ( s) (t )
= 4( α1 α1 ), and crst = 8( α1 α1 α1 ), and so on. With linkage equilibrium, the genetic effects as the partial regression coefficients of the model correspond to the simple regression coefficients. For example, for the substitution effect of locus r, ar, it is the covariance between gen(r )
1. Backcross population or recombinant inbred population (haploid model) Backcross population or recombinant inbred population is a common experimental design for QTL mapping study. By crossing two inbred lines, we can create a F1 population. If we randomly backcross F1 to one of the inbred lines, we have a backcross population. Let us assume that the cross is AA (paternal) × Aa (maternal). In a randommating backcross population, there are only two possible genotypes at each segregating locus ArAr or Arar, for r = 1, 2, ..., m, where m is the number of QTL. Since for the paternal gametes, (r ) zM 1
1, for Ar allele from paternal gamete = = 1, 0, otherwise
(r ) 2
(r )
divided by the variance of xF . So in general, we have 1 (r )
(r )2
ar = E[(G − µ )xF ]/ E( xF 1
1
)
(r )
= E[G( zF − 1 / 2)]/(1 / 4) 1
(r )
= 2[E(G | zF = 1) − E(G)] 1
(r ) ( s)
(r )2
brs = E[(G − µ )xF xF ]/[E( xF 1
1
1
( s)2
)E( xF
1
(r )
( s)
(r )
1
1
1
)]
= 4[E(G | zF = zF = 1) − E(G | zF = 1) ( s) − E(G | zF 1
= 1) + E(G)] (r ) ( s) (t )
crst = E[(G − µ )xF xF xF ]/
and
zM
otypic value G and substitution effect design variable xF 1
1
1, for ar allele from paternal gamete = = 0, 0, otherwise (r )
(r )
(r )
1
1
(r )2 ( s)2 (t )2 [E( xF )E( xF )E( xF )] 1 1 1 (r )
( s)
(t )
1
1
1
= 8[E(G | zF = zF = zF = 1)
(r )
thus xM = z M − 1 = 0 and xM = z M = 0 for r = 1, 2, ..., 1 1 2 2
(r ) − E(G | zF 1
m. For maternal gametes however,
− E(G | zF = zF = 1)
=
(r )
(r ) 1 / 2, for Ar from maternal gamete xF = 1 −1 / 2, otherwise
=
(r ) − xF , 2
for r = 1, 2, ⋅ ⋅ ⋅, m.
r =1
+
∑
r < s
1
=
= 1)
(r )
( s)
1
1
(t ) + E(G | zF 1
= 1) − E(G)]
The orthogonal partition of the genotypic variance in an equilibrium population is
G = µ + ∑ ar xF + ∑ brs ( xF xF ) (r )
1
(t ) zF 1
+ E(G | zF = 1) + E(G | zF = 1)
Thus the model becomes m
= 1)
(t )
1
( s) − E(G | zF 1
( s) zF 1
(r ) ( s)
r
1
1
(8)
VG =
1 l 2 1 ∑ ar + 42 4 r =1
1
∑ brs2 + 43 ∑
r
r < s
2 crst +
( 9)
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As noted above, linkage disequilibrium does not change the values of genetic effects in a full model. The model parameters are still the same as those defined in the equilibrium population. However, in this case there is a simple relationship between the substitution effects at multiple loci and marginal means of genotypic values in a disequilibrium population [18]. This is noted here. Let (r )
( s)
1
1
Prs = P{zF = zF = 1} , and the digenic linkage disequi-
( s)
1
1
1
1 42
1
brs
(r )
( s)
1
1
(r )
( s)
1
1
(ar bst + as brt + at brs )Drst
+brs bst [(1 − 2ps )Drst + ps (1 − ps )Drt − Drs Dst ] +brt bst [(1 − 2pt )Drst +2
∑
r < s
[brt bsu (Drstu − Drt Dsu )
+bru bst (Drstu − Dru Dst ) +brs btu (Drstu − Drs Dtu )]
( 11 )
where
are three locus and four locus linkage disequilibria. This is a general partition of genetic variance for a haploid model.
where I is a m × m identity matrix, D = (Dij)m × m with all diagonal elements being zeros; (i )
q = (q1, q2, ..., qm,)T, with qi = E(G| zF = 1) - E(G), for i = 1
1, 2, ..., m. The partition of genetic variance with linkage disequilibrium is complex. Here we give details of the partition of genotypic variance for the following model
G = µ + ∑ ar xF + ∑ brs ( xF xF ) (r ) ( s)
r
∑
r < s
Drst = E(xrxsxt) and Drstu = E(xrxsxtxu)
= (I + 4D)−1(2q)
r =1
+2
+ pt (1 − pt )Drs − Drt Dst ]}
Then the substitution effects can be expressed as a function of marginal means in the disequilibrium population as
1
∑
r < s
−4[E(G | zF = 1) + E(G | zF = 1) − E(G)]
(r )
r
− pr (1 − pr )Dst − Drs Drt ]
brs = 42[Prs E(G | zF = zF = 1) − Drs µ ]
m
+ V(∑ brs xr x s )
+ pr (1 − pr )ps (1 − ps ) − Drs2 +2 ∑ { brs brt [(1 − 2pr )Drst
Therefore, the digenic interaction effects can be expressed as
a1 a2 al
r
r
Drs ∑ [ (1 − 2pr )(1 − 2ps )D
1 (r ) E (G − µ )xF = ar + ∑ Drr ’ ar ’ 1 4 r ’≠ r (r ) ( s)
r
r<
1
Ignoring trigenic and higher order linkage disequilibria, we have
E[(G − µ )xF xF ] =
VG = V (∑ ar xr ) + 2Cov(∑ ar xr , ∑ brs xr x s )
+2∑ [ar brs (1 − 2pr )Drs + as brs (1 − 2ps )Drs ]
(r ) ( s)
Drs = Cov(zF , zF ) = E( xF xF ) 1
( s)
The genotypic variance is
=∑
librium be defined as (r )
(r )
Let xr = xF and xs = xF to simplify the notation here. 1 1
1
1
For the backcross population, it can be shown that Drst = 0 (see Appendix D for both backcross and F2 populations) and Drstu = DrsDtu for loci r, s, t and u in this order under the assumption of no crossing-over interference. Also with this assumption, Drt = 4DrsDst and Drs = (1 - 2λrs)/4, where λrs is the recombination frequency between loci r and s. Since, pr = ps = 1/2, the variance becomes
( 10 ) Page 9 of 19 (page number not for citation purposes)
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VG =
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1 ∑ ar2 + 2∑ ar as Drs + 4 r r
1 ∑ brsbrt (1 − 16Drs2 )Dst 2 r < s
+brt bst (1 − 16Dst2 )Drs +2 ∑ (brt bsu + bru bst ) r < s
(1 − 16Dst2 )Drs Dtu
( 12 )
In this partition of variance, the first summation term is the genetic variance due to the substitution effect of each QTL, the second summation term is the covariance between substitution effects of QTL pairs due to linkage disequilibrium, the third summation term is the genetic variance due to epistatic effects of QTL, and the fourth and fifth summation terms are the covariance between different epistatic effects of QTL due to linkage disequilibrium. There is no covariance between the main substitution effects and epistatic effects (see also [19]). For a backcross population, the genetic interpretation of the substitution effect ar depends on which parental line is backcrossed. In one backcross AA × Aa, the substitution effect is traditionally defined as the difference between the additive effect and dominance effects, and in the other backcross Aa × aa, it is the sum of the additive and dominance effects. Only with both backcrosses, can one estimate both additive and dominance effects separately (for example [20]). The same model also applies to a recombinant inbred population which is another very popular experimental design for QTL mapping study. For a recombinant inbred population, the substitution effects of QTL are the additive effects and the epistatic effects are the additive × additive interaction effects. Statistical methods to map QTL and to estimate various components of the genetic variance due to QTL including epistasis has been developed through the maximum likelihood approach [19,21]. In a few cases where the method was applied, we estimated, for the first time, how the quantitative genetic variance was partitioned into various components in designed experimental populations. For example, Weber et al. [22] reported the result of QTL mapping for wing shape on the third chromosome of Drosophila melanogaster from a cross of divergent selection lines. From 519 recombinant inbred lines, 11 QTL were mapped on the third chromosome. Nine QTL pairs showed significant epistatic effects. The total genetic variance amounts to 95.5% of the phenotypic variance in the recombinant inbred lines with phenotypes measured and averaged over 50 male flies for each recombinant
inbred line. The partition of the genetic variance is as follows (see Table 6 and 7 of [22]): 27.4% due to the variances of additive effects (equivalent to the first summation term of (12)); 67.3% due to the covariances between additive effects (the second summation term); 7.2% due to the variances of epistatic effects (the third summation term); and -6.0% due to the covariances between epistatic effects (the fourth and fifth summation terms). The covariances between additive and epistatic effects, expected to be 0, account for -0.4% due to sampling. Similar kind of partition of the genetic variance is also observed in a group of 701 second chromosome recombinant inbred lines from a cross of the same divergent selection lines (see Table 4 and 5 of [23]). See also [20] for another example. 2. F2 population F2 is created from a cross between pairs of F1 individuals. It is also a very popular experimental design for QTL mapping study. The advantage of this design is that both additive and dominance effects of a QTL can be estimated as well as various epistatic effects. The design also has more statistical power for QTL detection as compared to a backcross population. In a random-mating F2 population, there are only two alleles at each segregating locus and allelic frequencies are expected to be one half if there is no segregation distortion.
Let us consider only two loci first. Let A and a denote the two alleles at locus 1, and B and b at locus 2. In this case, (1)
(1)
1
2
xM = − xM
(1)
(1)
1
2
xF = − xF .
and
Assuming
Gijjl = Gikjl = Giljk = Giljk , it also holds that α1 = α1 = -α2 = -
α2, δ11 = δ 22 = −δ12 , and so on. The additive term for locus 1 then becomes (1)
(1)
1
2
(1)
(1)
1
2
A1 = α 1( xM − xM ) + α1( xF − xF ) = 2α1 w1 with
1, for AA at locus 1 w1 = + = 0, for Aa at locus 1 −1, for aa at locus 1 and the dominance term is (1) xM 1
(1) xF 1
(1) (1)
( 13 )
(1) (1)
D1 = 2(δ11 )( xM xF + xM xF ) = (−2)(δ11 )v1 1
1
1
1
with −1 / 2, for AA at locus 1 (1) (1) v1 = (−2)xM xF = 1 / 2, for Aa at locus 1 1 1 −1 / 2, for aa at locus 1
( 14 )
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Note that the v variable in this section for F2 differ, by a factor -2, from the v variable in the next section for a general two-allele model to conform to the usual definition for the F2 model. Similarly, for locus 2
The orthogonal partition of the genotypic variance is 1 2 1 2 1 2 1 2 1 2 a1 + d1 + a2 + d2 + (aa)12 2 4 2 4 4 1 1 1 2 2 2 . + (ad)12 + (da)12 + (dd)12 16 8 8
VG =
A2 = 2β1w2 and D2 = (-2)( γ 12 )v2
Recently, Kao and Zeng [18] have examined many genetic and statistical issues of the above F2 model and the effects of linkage disequilibrium. As we have shown here, the F2 model is a special case of Cockerham model with two alleles at each locus and all allelic frequencies being 1/2.
with
1, for BB at locus 2 w2 = 0, for Bb at locus 2 −1, for bb at lo ocus 2
Now we give the partition of genetic variance for m loci with epistasis and linkage disequilibrium in the F2 population. Generalizing model (16) to m loci and ignoring the trigenic and higher order epistasis, we have the following model
and
−1 / 2, for BB at locus 2 v2 = 1 / 2, for Bb at locus 2 −1 / 2, for bb at locus 2
( 15 )
+(aa)12 (w1w2 ) + (ad)12 (w1v2 ) +(da)12 (v1w2 ) + (dd)12 (v1v2 )
-
d2 =
- −2γ 11 ,
(aa)12 = 4(α1β1), (ad)12 =
d1 = E[(G − µ )v1]/ E(v12 ) = (−2)(G11.. − 2G1... + G.... ) a2 = 2(G...1 − G.... ) d2 = (−2)(G..11 − 2G..1. + G.... ) (aa)12 = E[(G − µ )w1w2 ]/ E(w12 w22 ) − G...1
r =1
r
= + G.... (ad)12 = E[(G − µ )w1v2 ]/ E(w12 v22 ) .1 .. = (−4)(G11 − 2G11 − G..11 + G1... + 2G...1 − G.... ) (da)12 = E[(G − µ )v1w2 ]/ E(v12 w22 ) .. 1. = (−4)(G11 − 2G11 − G11.. + G...1 + 2G1... − G.... ) (dd)12 = E[(G − µ )v1v2 ] / E(v12 v22 ) .1 .. 11 1. = 4(G11 − 2G11 − 2G11 + G11.. + G..11 + 4G11 −2G1... − 2G...1 + G.... )
r
= µ + A + D + AA + Ad + DD
( 16 )
a1 = E[G − µ )w1]/ E(w12 ) = 2(G1... − G.... )
− G1...
r =1
r≠s
( 18 )
The partition of genetic variance for this model under the assumption of Hardy-Weinberg equilibrium is
8( α1γ 11 ),
(da)12 = 8( δ11 β1 ), (dd)12 = 16( δ11γ 11 ). With random mating and linkage equilibrium, we have
4(G..11
m
+ ∑ (ad)rs (wr v s ) + ∑ (dd)rs (vr v s )
where the parameters are related as a1 = 2α1, a2 = 2β2, d1 =
−2δ11 ,
m
G = µ + ∑ ar wr + ∑ dr vr + ∑ (aa)rs (wr w s )
The model can then be written as
G = µ + a1w1 + d1v1 + a2 w2 + d2 v2
( 17 )
VG = VA + VD + VAA + VAD + VDD +2Cov( A, D) + 2Cov( A, AA) + 2Cov( A, AD) +2Cov(A,DD)+2Cov(D, AA) + 2Cov(D, AD) +2Cov(D, DD) + 2Cov( AA, AD) +2Cov(AA, DD) + 2Cov( AD, DD).
( 19 )
The detail of each component is presented in Appendix D. The F2 model is a special case of the general two-allele model with pr = 1/2. Note the difference on the v variable used for the F2 model and for the general two-allele model below. This partition of genetic variance can provide a basis for the interpretation of genetic variance estimation by multiple interval mapping in a F2 population [19,21]. 3. A general two-allele model Here, we provide details of a general two-allele model for multiple loci. This model is probably useful for studying genetic architecture of a quantitative trait in natural populations. Let the two alleles at locus r be Ar and ar for r = 1,
2, ..., m with m the number of QTL. Assume that the frequencies and genetic effects of alleles are the same for both paternal and maternal gametes. Let pr denote the frequency of allele Ar at locus r. Note that in this case (r )
(r )
1
2
z M = 1 − z M , r = 1, 2, ..., m.
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(r )
(r )
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(r )
(r )
(r )
(r )
Also xM = z M − E[z M ] = (1 − z M ) − E(1 − z M ) = − xM . 1 1 1 2 2 2 Similarly,
(r ) xF 2
=
(r ) − xF 1
(r )
ar = α1 −
Ignoring higher order epistasis
dr =
involving at least three loci, we can define a two-allele model as m
m
r =1
r =1
(aa)rs =
G = µ + ∑ ar wr + ∑ dr vr + ∑ (aa)rs (wr w s ) r
+ ∑ (ad)rs (wr v s ) + ∑ (dd)rs (vr v s ) r≠s
( 20 )
r
(r )
1 (r ) ( s) (α α ) (1 − pr )(1 − ps ) 1 1 1
(r ) 1
(1 − pr ) for Ar Ar at locus r = 1 − 2pr for Ar ar at locus r −2p for ar ar at locus r r
( 21 )
( x) ( x) x M xF 1 1
(1 − pr )2 for Ar Ar at locus r = − pr (1 − pr ) for Ar ar at locus r 2 for ar ar at locus r pr
(1 − pr )(1 − ps ) 1
dr = (aa)rs = (ad)rs =
(dd)rs =
( 22 )
α1(r ) − α 2(r ) δ11(r ) − δ 21(r ) − δ12(r ) + δ 22(r ) (r ) ( s) (r ) ( s) (r ) ( s) (α1 α1 ) − (α1 α 2 ) − (α 2 α1 ) ( s) +(α 2α 2 ) (r ) 1( s) (r ) 2( s) (r ) 1( s) (α1 δ1 ) − (α1 δ 2 ) − (α1 δ1 ) (r ) 2( s) (r ) 1( s) (r ) 1( s) +(α1 δ 2 ) − (α 2 δ1 ) + (α 2 δ 2 ) (r ) 2( s) (r ) 2( s) +(α 2 δ1 ) − (α 2 δ 2 ) 1(r ) 1( s) 1(r ) 2( s) 1(r ) 1( s) (δ1 δ1 ) − (δ1 δ 2 ) − (δ1 δ1 ) 1(r ) 1( s) 1(r ) 1( s) 1(r ) 2( s) +(δ1 δ 2 ) − (δ 2 δ1 ) + (δ 2 δ 2 ) 2(r ) 1( s) 1(r ) 2( s) 1(r ) 2( s) +(δ 2 δ1 ) − (δ 2 δ 2 ) − (δ1 δ1 ) 2(r ) 1( s) 2(r ) 2( s) 2(r ) 2( s) +(δ1 δ 2 ) + (δ1 δ1 ) − (δ1 δ 2 ) 2(r ) 1( s) 2(r ) 1( s) 2(r ) 2( s) +(δ 2 δ1 ) − (δ 2 δ 2 ) − (δ 2 δ1 ) 2(r ) 2( s) +(δ 2 δ 2 )
The constraint conditions further lead to
)
1(r ) 1( s)
2
ar
=
dr
=
2
(δ1 δ1
1 (r ) [E(G | z M = 1) − E(G)] 1 (1 − pr ) 1
(r )
(r )
[E(G | z M = zF = 1)
(1 − pr )2
1
1
(r )
for r = 1, 2, ..., m. The coefficients are associated with the original parameters in Cockerham model as follows.
ar =
(r ) 1( s)
(α1 δ1
2
) (1 − pr ) (1 − ps ) With Hardy-Weinberg, linkage and genotypic equilibria, the partial regression coefficients in the above model correspond to the simple regression coefficients
wr = xM + xF 1
δ 1(r ) 2 1
(1 − pr )
(dd)rs =
where
vr =
(ad)rs =
1
(− pr ) (r ) 1 α = α (r ) (1 − pr ) 1 (1 − pr ) 1
−2E(G | z M = 1) + E(G)] 1
(aa)rs
=
1 (r ) ( s) [E(G | z M = z M = 1) 1 1 (1 − pr )(1 − ps ) (r )
( s)
1
1
− E(G | z M = 1) − E(G | z M = 1) + E(G)] (ad)rs
=
1 (r )
(r )
( s)
1
1
( s)
[E(G | z M = z M = zF = 1)
(1 − pr )(1 − ps )2
1
( s)
−2E(G | z M = z M = 1) 1
( s) − E(G | z M 1
=
( s) +2E(G | z M 1
(dd)rs
=
1
( s) zF 1
(r )
= 1) + E(G | z M = 1) 1
= 1) − E(G)]
1 2
(1 − pr ) (1 − ps )2 (r )
(r )
( s)
( s)
[E(G | z M = zF = z M = zF = 1) 1
(r ) −2E(G | z M 1
=
1
1
(r ) zF 1
( s) zM 1
(r )
( s)
1
1
=
1
= 1)
( s)
−2E(G | z M = z M = zF = 1) (r ) − E(G | z M 1
=
( s)
(r ) zF 1
1
= 1)
(r )
+ E(G | z M = zF = 1) 1
1
(r ) +4E(G | z M 1
= zF = 1)
(r ) −2E(G | z M 1
= 1) − 2E(G | z M = 1)
( s) 1
( s)
1
+ E(G)]
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Note that in this case the genetic effects in the original model are
α1(r )
(r )
= E(G | z M = 1) − E(G) =
(r ) E(G | z M 1
r≠s
2 + ∑ pr2 ps2 (1 − pr )2 (1 − ps )2 (dd)rs
1
=
( s) zM 1
=
r
= 1)
(r )
( s)
1
1
− E(G | z M = 1) − E(G | z M = 1) + E(G) (r ) 1( s)
(α1 δ1
)
( s)
1
1
( s)
= E(G | z M = z M = zF = 1) (r ) −2E(G | z M 1 ( s) − E(G | z M 1
=
=
1
( s) zM 1
( s) zF 1
+
= 1)
+
= 1)
(r )
( s)
1
1
+ E(G | z M = 1) + 2E(G | z M = 1) − E(G) 1(r ) 1( s)
(δ1 δ1
(r )
(r )
( s)
( s)
) = E(G | z M = zF = z M = zF = 1) 1
1
(r ) −2E(G | z M 1
=
1
(r ) zF 1
(r )
( s)
1
1
=
1
( s) zM 1
= 1)
( s)
−2E(G | z M = z M = zF = 1) (r ) + E(G | z M 1 ( s) + E(G | z M 1
=
(r ) zF 1
= 1]
=
( s) zF 1
= 1)
(r )
(r ) −2E(G | z M 1
+
m 2pr m (r ) 2 pr2 1(r ) (α1 ) + (δ1 )2 ∑ ∑ 2 (1 − pr ) r =1 (1 − pr ) r =1
4pr ps ∑ (α (r )α (s) )2 (1 − pr )(1 − ps ) r < s 1 1 2pr p2s
∑ (α1 δ1 (1 − pr )(1 − ps )2 r ≠ s
(r ) 1( s) 2
pr2 ps2 2
2
( 24 )
)
∑ (δ11(r )δ11(s) )2
(1 − pr ) (1 − ps ) r < s
The partition of the genetic variance with epistasis and linkage disequilibrium is complex. We give the result with trigenic and quadrigenic linkage disequilibria included as well. The partition of variance has a similar form as (19). The detail of each component is presented in Appendix E.
1
Discussion
( s)
+4E(G | z M = zF = 1) 1
( 23 )
or VG =
(r )
r =1
+2∑ pr (1 − pr )p2s (1 − ps )2 (ad)2rs
1
(r )
(r ) E(G | z M 1
r =1
r
(r )
= zF = 1)
−2E(G | z M = 1) + E(G) (r ) ( s) (α1 α1 )
m
+4∑ pr ps (1 − pr )(1 − ps )(aaa)2rs
1
δ11(r )
m
VG = 2∑ pr (1 − pr )ar2 + ∑ pr2 (1 − pr )2 dr2
1
( s)
= 1) − 2E(G | z M = 1) 1
+ E(G) They are the same as the least squares definition. Yet another form of this result is shown in Table 1 of [10]. Zeng et al. [10] also show that linkage disequilibrium does not change the values of genetic effects in a full model. This means that the partial regression coefficients in a disequilibrium population equal to the simple regression coefficients in a corresponding equilibrium population with the same allelic frequency configuration. The partition of genotypic variance in an equilibrium population is
In this paper we explore various properties of the standard quantitative genetic model with multiple interacting loci in linkage equilibrium and disequilibrium. Starting from the traditional least squares model, we represent it in the setting of multiple regression with standardized allelic indicator variables and their products as the independent variables and the trait value as the dependent variable. Then the partial regression coefficients associated with these indicator variables define the additive, dominance and epistatic effects for QTL. This is the original definition of QTL effects introduced by Fisher [6] and extended to epistasis by Cockerham [7]. We examine the properties and meaning of these QTL effects in an equilibrium population and also in a disequilibrium population. We show details of the partition of genetic variance for both equilibrium and disequilibrium populations in terms of QTL effects, allelic frequencies and disequilibrium measures. Moreover, we relate this general model to several reduced models used for QTL mapping analysis in cross populations from inbred lines, such as F2, backcross and recombinant inbred lines. The detailed partition of genetic variance in these populations can provide a basis for the interpretation of genetic variance component estimates from multiple interval mapping [21].
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The purpose of modeling QTL is to provide a meaningful and convenient framework and basis to infer and interpret relative significance of each QTL and intricate inter-relationship among QTL on a set of quantitative traits in an experimental or natural population for genetic study. The linear model provides a framework to study the effects of QTL on the mean and variance of the distribution of a trait or multiple traits in a population. With the assumption of a normal distribution for both genotypic and phenotypic values of a quantitative trait or multiple traits, this analysis on the first and second order statistics is sufficient to characterize the relationship between QTL and trait (s). Otherwise, it is an approximation on the relationship. In this model, the model parameters are partitioned into two parts: one is the effects of QTL (additive, dominance and epistatic effects), and the other is frequencies and correlations (Hardy-Weinberg and linkage disequilibria) of QTL alleles. Together they characterize the genetic architecture of quantitative traits in a population. This linear model also provides a framework for statistical inference of genetic model parameters. If QTL genotypes are known and directly observed, a regression analysis of trait phenotype on QTL genotypes would provide a direct estimation of the genetic model parameters. However, if QTL genotypes are unknown and are only indirectly observed through molecular markers, the statistical inference of QTL and model parameters becomes more complicated. Statistically, we can regard QTL genotypes as missing data with trait phenotypes and marker genotypes as observed data and use a mixture model through the maximum likelihood analysis to infer the conditional distribution of missing data and through that to infer QTL parameters which also include the number and genomic position of QTL [19,24,25]. The likely positions of QTL are searched in the whole genome if data permit and the number of significant QTL positions can be estimated through some model selection procedure. On modeling QTL, the consistence of model parameters in a multiple-locus setting is an important consideration. It is important for a model to be multiple-locus consistent, and the relationship within and between loci can be clearly and readily analyzed, estimated and interpreted. Here the consistence means that the effect of a QTL is consistently defined in a reference equilibrium population for one, two or multiple loci. In statistics, this is the property of orthogonality. This property is particularly important for the study of epistasis. With that the additive, dominance and epistatic effects can be independently and consistently estimated for one, two, three or multiple loci in the reference population where the model is defined and interpreted. Thus, if the number of QTL is incorrectly identified which seems to be always the case in practice, the parameter values for those identified QTL can still be
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consistently estimated. However, the situation would certainly be different and complicated if the population is not at equilibrium, for example for QTL in linkage disequilibrium. Linkage disequilibrium would complicate the partition of genetic variance, and could certainly bias the estimation of parameter values for those identified QTL if the QTL model (number and genomic position of QTL) is miss-identified. In this paper, we study extensively the composition and property of the genetic model parameters, such as genetic effects and partition of genetic variance, when both epistasis and linkage disequilibrium are considered. This would help us to understand the relationship of various genetic quantities, such as allelic frequencies and linkage disequilibrium, on the definition of genetic effects. It would also help us to understand and properly interpret estimates of the genetic effects and variance components in a QTL mapping experiment. It is important to emphasize that modeling QTL is inherently population based as it defines the variation of QTL in reference to a population, either a study population, cross population or natural population. The very basic concept of additive effect of a QTL is a population concept and is population dependent. It depends on the genotypes at other loci and depends on the genetic structure of the population (allelic frequencies, HardyWeinberg and linkage disequilibria). We also clarify the connection between the general genetic model and some reduced models. By restricting the number of alleles at each locus to two and setting allelic frequencies to half, the general genetic model is reduced to the F2 model. This simplification reduces the partition of genetic variance enormously. Another property for this F2 population is that, if there is no crossing-over interference, the three-locus linkage disequilibrium is expected to be zero regardlessly whether the loci are linked. Also the four-locus disequilibrium is reduced to the product of the two-locus disequilibria for the two non-adjacent locus pairs. If there is crossing-over interference, the three-locus linkage disequilibrium would be a good measure of the interference. As many QTL mapping experiments are performed in a F2 population, this reduced model is very relevant to QTL mapping analysis for the interpretation of genetic architecture in a F2 population. Another reduced model is the backcross model which is essentially a haploid model. We give many details for a general two-allele model with epistasis and linkage disequilibrium. Research on QTL mapping analysis has been shifted in recent years from inbred line crosses to natural populations. With the availability of very dense SNP markers, it is now possible to use SNP for fine mapping of QTL in a natural population.
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Currently most QTL fine mapping studies are concentrated on candidate genes. It will be increasingly possible to have genome-wide SNP data for a sample of individuals from a natural population. The general two-allele model can be used as a framework to interpret and estimate the genome-wide genetic architecture for a quantitative trait in a natural population. The model can be extended to multiple alleles to take haplotypes into account if needed.
Authors' contributions TW conducted the initial derivation of models and partition of variance and drafted the initial manuscript. ZBZ extended the derivation of models and partition of variance, revised and finalized the manuscript. Both authors have read and approved the final manuscript. Comments and requests should be addressed to ZBZ or TW.
• Dominance effects: For locus 1, we have
E[(G − µ )xM xF ] = E[( ∑ δ ji ’’ xM xF )xM xF ] i j i’ j’ i j (1) (1)
(1) (1)
(1) (1)
i ’, j ’
=∑ j’
∑ ∑ δ ji ’’ E(x(M1) x(M1) )E(x(F1) x(F1) )
δ ji ’ E(x(M1)2 )E(x(F1) x(F1) ) + i j j’
i
i ’≠ i j ’
i’
j
j’
(1) (1) (1) (1) = pi (1 − pi )∑ δ ji ’ E( xF xF ) + ∑ (− pi pi ’ )∑ δ ji ’’ E( xF xF ) j
j’
j’
i ’≠ i
j
j’
j’
(1) (1) (1) (1) = pi ∑ δ ji ’ E( xF xF ’ ) − ∑ pi pi ’ ∑ δ ji ’ E( xF xF ) j
j
j’
i’
j
j’
j’
(1) (1) = pi (p jδ ji + ∑ δ ji ’ p j ’ ) − pi ∑ E( xF xF )∑ pi ’δ ji ’’ j’
=p
i
p jδ ji
j
j’
j’
i’
for i, j = 1, 2,… , n1.
On the other hand,
Appendix A. Cockerham least squares estimates In this appendix, we show that the regression coefficients (genetic effects) in model (7) are Cockerham least squares estimates under Hardy-Weinberg, linkage and genotypic equilibria. First, note that at each locus only one allele is present on a gamete. That is if an individual inherits an (1)
allele Ai from a parental gamete, z M = 1 and the other i (1)
(1) (1)
z M = 0 for j ≠ i Therefore, when i ≠ j, we have E( z M z M ) j
i
= 0 or
(1) (1) E( xM xM ) = i j
(1) (1) (1) (1) E( z M z M ) − E( z M )E( z M ) = i j i j
j
− pi p j .
Using these relationships, we can show the following for model (7).
(1) (1)
(1)
i
j
i
(1) (1)
(1) E[(G − µ )xM ] = i
E[(∑ i’ i’
α i ’ x(M1) )x(M1) ] = α i E(x(M1)2 ) + i’ i i
∑α
i ’≠ i i’ i’
i’
(1) (1) E( x ’ xM ) i Mi
= α i pi (1 − pi ) + ∑ α (− pi ’ pi ) = α i pi + (− pi )∑ α p = α i pi , i ’≠ i
i’
On the other hand,
(1)
j
i
j
(1) (1)
(1)
i
(1)
(1)
(1)
j
j
j
i
i
j
(1)
(1)
(1)
i
i
i
i
(1) (1) (1) = E[E(Gz M | z M )] − pi G.... = pi E(G | z M = 1) − pi G.... = pi (G..i. − G.... ). i i i
Therefore, δ ji = Gij.. − G..i. − G..j. + G.... for i, j = 1, 2, ..., n1. Similar results can be derived for other dominance terms at locus 2. • Additive × additive effects: Note that (1) (2)
E[(G − µ )xM xM ] = i
k
∑ (α i′ β k′ )E(x(M1) x(M1) )E(x(M2) x(M2) )
β =
G...k
− G.... ,
i′
i
i′,k′
k
k′
= ∑ (α i β k′ )E( xM )E( xM xM ) + ∑ ∑ (α i′ β k′ )(− pi pi′ )E( xM xM ) i k k′ k k′ ’ k i
=p
(2) (2)
(2) (2)
i′≠ i k′
i k′
∑ (α β
k′ i k
(2) (2) )E( xM xM ) − pi k k′
∑ ∑ (α i′ β k′ )pi′ E(x(M2) x(M2) ) k
i′ k ′
k′
i k′
= p q (α β )
and
− G....
for i = 1, 2, ..., n1. Similarly, we
βl =
G...l
− G....
for k, l = 1, 2, ..., n2.
k
(1) (2) i
k
(1)
(2))
i
k
We have (α i β k ) = G..ik − G..i. − G...k + G.... for i = 1, 2, ..., n1 and k = 1, 2, ..., n2. Similar results can be derived for other additive by additive terms. • Additive × dominance effects: Note that
can show that α j = G..j. − G.... for j = 1, 2, ..., n1, and k
i
= pi p j (Gij.. − G..i. − G..j. + G.... )
(1) (2)
(1)
Therefore, α =
(1)
i
E[(G − µ )xM xM ] = E(GxM xM ) = E[G( z M − pi )( z M − qk )] = pi qk (G..ik − G..i. − G...k + G.... )
E[(G − µ )xM ] = E(G xM ) = E[G( z M − pi )] = E(Gz M ) − pi E(G)
G..i.
(1)
= E[E(Gz M zF | z M , zF )] − pi E[E(GzF | zF ]) − p j E[E(Gz M | z M )] + pi p j G....
i
i
j
(1)
= E(Gz M zF − pi E(GzF ) − p j E(Gz M ) + pi p j E(G)
(1)2
• Additive effects: For i = 1, 2, ..., n1, we can show
(1)
E[(G − µ )xM xF ] = E[G( z M − pi )( zF − p j )]
(1) (2) (2)
(1) (2) (2)
E[(G − µ )xM xM xF ] = E[xM xM xF i k l i k l =
∑ (α i′γ lk′ ′ )x(M1)i′ x(M2k)′ x(F2l′ )]
i′,k′,l′
∑ (α iγ lk′ ′ )E(x(M1)i 2 )E(x(M2k) x(M2k)′ )E(x(F2l ) x(F2l′ ) ) = pi ∑ (α iγ lk′ ′ )E(x(M2k) x(M2k)′ )E(x(F2l ) x(F2l′ ) ) = pi qk ql (α iγ lk )
k′,l′
k′,l′
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and
Therefore, the total genotypic variance VG can be partitioned as (1) (2) (2)
(1)
(2)
(2))
E[(G − µ )xM xM xF ] = E[G( z M − pi )( z M − qk )( zF − ql )] i k l i k l i k
=pq
ql (G.ikl
− G.il.
− G..ik
− G..lk
+ G..i.
+ G...k
+ G...l
− G.... )
VG = VA1 + VA2 + VD1 + VD2 + VA1A2 + VA1D2 + VD1A2 + VD1D2
with each component analyzed below.
For i = 1, 2, ..., n1 and k, l = 1, 2, ..., n2, we have • The additive variance: For locus 1,
(α iγ lk ) =
G.ikl
− G..ik
− G.il.
− G..lk
+ G..i.
+ G...k
+ G...l
− G....
n1
Similar results can be derived for dominance by additive terms.
(1)
= =
∑
(1) (1) (2) (2))
i′ , j ′
(1)
(1)
(2)
l
i
j
k
l
− G.ikl
− Gijl.
n1
j
j =1
(1) j
j =1 n1
− G.jlk
+ G..ik
+ G..jl
+ Gij..
+ G..lk
+ G.jk.
+ G.il.
(1)
i =1
i
n1
n1
i =1
j =1
(1) j
j =1
n1
as
− G..i.
− G...k
− G..j.
∑ α i pi = 0
by the constrain condition (2). Similarly,
i =1
For i, j = 1, 2, ..., n1 and k, l = 1, 2, ..., n2, we have − Gik j.
j =1
n1
(1)
= ∑ (α i )2 pi + ∑ (α j )2 p j
(2)
+Gij.. + G..lk + G.jk. + G.il. − G..i. − G...k − G.j.. − G...l + G.... )
Gik jl
i =1
i
n1
.k ik .. ik ik i. = pi p j qk ql (Gik jl − G j. − G.l − G jl − G jl + G.. + G jl
(δ jiγ lk ) =
n1
= ∑ (α i )2 E[( z M )2 ] + ∑ (α j )2 E[( zF )2 ]
(1) (1) (2) (2) k
− G...l
+ G....
for locus 2, we have VA2 =
n2
n2
k =1
j =1
∑ (β k )2 qk + ∑ (βl )2 ql .
B. Partition of genotypic variance in linkage equilibrium Here we show that the genotypic variance VG of model (7)
• The dominance variance: For locus 1,
has the orthogonal partition (4) under Hardy-Weinberg, linkage and genotypic equilibria. First, note that the index
VD1 = Var(∑ δ ji xM xF ) = E[(∑ δ ji ( z M ) − pi )( zF − p j ))2 ]
variables
(1) xM , i
(1) xF , j
(2) xM , k
(2) xF l
(r ) (r ) E( xM xF ) = i j
(1) (1) i
i, j
have expectation zero. Sec-
ond, the assumption of Hardy-Weinberg, linkage and genotypic equilibria mean that all alleles in different gametes and loci are independent so that, for example, (r ) (r ) Cov( xM , xF ) = i j
(r ) (r ) E( xM )E( xF ) = i j
0
(r ) (r ) (r ) E( xM )E( xM )E( xF ) = k i j
(1)
i
i, j
j
= E[(∑ δ ji z M zF − ∑ p jδ ji z M − ∑ piδ ji zF + ∑ pi p jδ ji )2 ] (1) (1) i
i, j
= E[(∑ i, j
(1)
j
(1)
i
i, j
δ ji z(M1) z(F1) )2 ] = i j
∑ i, j
j
i, j
i, j
(1)2 (1)2 (δ ji )2 E( z M )E( zF ) = i j
∑ (δ ji )2 pi p j i, j
k ,l
• The additive × additive variance: VA1A2 = Var(∑ (α i β k )xM xM ) + Var(∑ (α i βl )xM xF ) (1) (2) i
i ,k
(r ) (r ) (r ) E( xM xM xF ) = k i j
(1)
j
Similarly, for locus 2, we have VD2 = ∑ (γ lk )2 qk ql .
Thus the additive and dominance effects within a locus are orthogonal to each other because (r ) (r ) (r ) Cov( xM , xM , xF ) = k i j
j
j
n1
(1)
i =1
E[(G − µ )xM xF xM xF ] = E[G( z M − pi )( xF − p j )( z M − qk )( zF − ql )] j
j =1
= E[(∑ α i z M )2 ] + E[(∑ α j zF )2 ]
On the other hand
i
(1)
(1)
j =1
i
n1
j′
j
i
i =1
n1
(1)
i =1
∑ E(x(M1) x(M1) )E(x(F1) x(F1) )(δ ji′′γ lk )qk ql = (δ jiγ lk )pi p j qk ql i′
j =1
i
n1
∑
i
n1
(1)
= E[(∑ α i z M ) − ∑ α i pi )2 ] + E[(∑ α j xF − ∑ α j p j )2 ]
(δ ji′′γ lk′ ′ )xM xF xM xF ] i′ j′ k′ l′
(1) (1) (1) (1) (2) (2) (2) (2) E( xM xM )E( xF xF ) (δ ji′′γ lk′ ′ )E( xM xM )E( xF xF ) i i′ j j′ k k′ l l′ ′ ′ ′ ′ k ,l i ,j
∑
j
(1)
i =1
(1) (1) (2) (2)
i′, j′,k′,l′
n1
(1)
= E[(∑ α i xM )2 ] + E[(∑ α j xF )2 ]
• Dominance × dominance effects: Note that (1) (1) (2) (2)
i
i =1
n1
E[(G − µ )xM xF xM xF ] = E[xM xF xM xF i j k l i j k l
n1
VA1 = Var(∑ α i xM + ∑ α j xF ) = Var(∑ α i xM ) + Var(∑ α j xF )
0
for any 1 ≤ i, j, k ≤ n1 and locus r = 1 or 2. Similarly, the epistatic effects between loci are orthogonal to additive and dominance effects and also to other epistatic effects.
(1) (2)
k
i
i ,l
l
+ Var(∑ (α j β k )xF xM ) + Var(∑ (α j βl )xF xF ) (1) (2)
j ,k
j
k
(1) (2) j
j ,l
l
= ∑ pi qk (α i β k )2 + ∑ p j ql (α j βl )2 + ∑ pi ql (α i β l )2 + ∑ p j qk (α j β k )2 i ,k
j ,l
i ,l
j ,k
• The additive × dominance variance: Page 16 of 19 (page number not for citation purposes)
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VA1D2 = Var(∑ (α iγ lk )xM xM xF ) + Var( ∑ (α jγ lk )xF xM xF ) (1) (2) (2) i
i,k,l
∑p q
i k
=
k
ql (α iγ lk )2
+
i,k,l
Similarly,
the
(1) (2) (2)
l
j
j,k,ll
∑ pjq
k
k
l
ql (α jγ lk )2
i ,k
dominance
i,j,k
j ,l
∑
Cov(D1 , D2 ) =
j,k,l
(δ ji )(γ lk )D..jl D..ik
i , j ,k ,l
×
additive
variance
is
∑ pi p j qk (δ ji β k )2 + ∑ pi p j ql (δ ji βl )2 .
VD1A2 =
Cov( A1 , A2 ) = ∑ (α i β k )D..ik + ∑ (α j βl )D..jl
Cov( A1 , D1 ) = Cov( A1 , D2 ) = Cov( A2 , D1 ) = Cov( A2 , D2 ) = 0 • The covariances related to additive × additive effects:
Cov( A1 , A1 A2 ) = ∑ (α i )(α i β k )D..ik + ∑ (α j )(α j βl )D..jl
i,j,l
i ,k
j ,l
Cov( A2 , A1 A2 ) = ∑ ( β )(α β
• The dominance × dominance variance:
k
i k
)D..ik
i ,k
VD1D2 = Var(
∑
i , j ,k ,l
= E[(
(1) (1) (2) (2)
(δ jiγ lk )xM xF xM xF ) i
j
k
Cov(D1 , A1 A2 ) =
l
∑
+ ∑ ( βl )(α j βl )D..jl j ,l
p j (δ ji )(α j β k )D..ik
i , j ,k
∑ (δ jiγ lk )z(M1)i z(F1j) z(M2k) z(F2l ) )2 ] = ∑
pi p j qk ql (δ jiγ lk )2
i , j ,k ,l
i , j ,k ,l
Cov(D2 , A1 A2 ) =
∑ ql (α
i , j ,l
i
βl )(γ lk )D..ik
i ,k ,l
C. Partition of genotypic variance in linkage disequilibrium We present the partition of the genotypic variance based on model (7) under the assumption of Hardy-Weinberg equilibrium but linkage disequilibrium.
Cov( A1 , A1D2 )
n1
i , j ,k ,l
=
∑ ql (βl )(α iγ lk )D..ik + ∑ qk (β k )(α jγ lk )D..jl
i ,k ,l
i =1
j =1
VA1 = ∑ pi (α i )2 + ∑ p j (α j )2 , VA2 =
Cov( A1 , D1 A2 )
=
n2
n2
Cov( A2 , D1 A2 )
=
k =1
j =1
Cov(D1 , A1D2 )
=
∑ qk (β k )2 + ∑ ql (βl )2
• The dominance variance:
∑ (δ ji )[(α iγ lk ) + (α jγ lk )]D..jl D.ik.
i , j ,k ,l
=
∑ ql (γ lk )(α iγ lk )D..ik + ∑ qk (γ lk )(α jγ lk )D..jl
Cov(D1 , D1 A2 )
=
Cov(D2 , D1 A2 )
=
Cov( A1 A2 , A1D2 )
=
j ,k ,l
∑ p j (δ ji )(δ ji β k )D..ik + ∑ pi (δ ji )(δ ji βl )D..jl
i , j ,k
k ,l
i , j ,l
∑ [(β k )(δ ji βl ) + (βl )(δ ji β k )]D..jl D..ik
i ,k ,l
i, j
j ,k ,l
∑ p j (α j )(δ ji β k )D..ik + ∑ pi (α i )(δ ji βl )D.jl.
i , j ,k ,l
Cov(D2 , A1D2 )
VD1 = ∑ (δ ji )2 pi p j , VD2 =∑ (γ lk )2 qk ql
∑ qk (α j β k )(γ lk )D..jl
j ,k ,l
∑ [(α i )(α jγ lk ) + (α j )(α i γlk )]D..jl D..ik
=
i , j ,k
n1
+
• The covariances related to additive × dominance and dominance × additive effects:
Cov( A2 , A1D2 )
• The additive variance:
+ ∑ pi (δ ji )(α i βl )D..jl
i , j ,l
∑ (γ lk )[(δ ji β k ) +(δ ji βl )]D..jl D..ik
i , j ,k ,l
• The additive × additive variance:
∑ ql (α i βl )(α iγ lk )D..ik + ∑ qk (α j β k )(α jγ lk )D..jl
i ,k ,l
+
j ,k ,l
∑ [(α i β k )(α jγ lk ) + (α i βl )(α jγ lk ) + (α j β k )(α iγ lk ) + (α j βl )(α iγ lk )]D..jl D..ik
i , j ,k ,l
VA1A2 =
∑ (pi qk + D..ik )(α i β k )2 − [∑ (α i β k )D..ik ]2 + ∑ (p j ql + D.jl. )(α j βl )2 i ,k
i ,k
+2
i ,l
∑ (α βl )(α j β i
i , j ,k ,l
k
j ,k
)D.jl. D..ik
+ 2(∑ (α β
i k
i ,k
∑
+
(α i β k )(α j βl )D..jl D..ik
∑
(α j βl )D..jl )
i , j ,l
∑ [(α i β k )(δ ji β l) + (α j β k )(δ ji βl ) + (α i βl )(δ ji β k ) + (α j βl )(δ ji β k )]D..jl D..ik
i , j ,k ,l
i , j ,k ,l
)D..ik )(
Cov( A1D2 , D1 A2 )
∑ [(α iγ lk )(δ ji β k )(D.ik. + pi qk )D..jl + (α iγ lk )(δ ji βl )D..jl D..ik
=
i , j ,k ,l
j ,l
+(α jγ lk )(δ ji β k )D..jl D..ik + (α jγ lk )(δ ji βl )(D..jl + p j ql )D..ik ]
• The additive × dominance variance: VA1D2 =
∑ p j (α j β k )(δ ji β k )D..ik + ∑ pi (α i βl )(δ ji βl )D..jl
i , j ,k
j ,l
−[∑ (α j βl )D..jl ]2 + ∑ pi ql (α i βl )2 + ∑ p j qk (α j β k )2 + 2 j ,l
Cov( A1 , A2 , D1 A2 ) =
• The covariances related to dominance × dominance effects:
∑ ql (pi qk + D..ik )(α iγ lk )2 + ∑ qk (p j ql + D..jl )(α jγ lk )2 + 2 ∑ (α iγ lk )(α jγ lk )D..jl D..ik
i ,k ,l
j ,k ,l
i , j ,k ,l
• The dominance × additive variance:
Cov( A1 , D1D2 ) =
∑ (δ jiγ lk )(α i + α j )D..jl D..ik
i , j ,k ,l
Cov( A2 , D1D2 ) =
∑ (δ jiγ lk )(β k + βl )D..jl D..ik
i , j ,k ,l
VD1A2 =
∑ p j (pi qk + D..ik )(δ ji β k )2 + ∑ pi (p j ql + D..jl )(δ ji βl )2 + 2 ∑ (δ ji β k )(δ ji βl )D..jl D..ik
i , j ,k
i , j ,l
• The dominance × dominance variance:
VD1D2 =
∑
Cov(D1 , D1D2 ) =
(δ jiγ lk )2 (D..ik + pi qk )(D..jl + p j ql )
i , j ,k ,l
• The covariances related to additive and dominance effects:
∑ (δ jiγ lk )(δ ji )D..jl D..ik
i , j ,k ,l
i , j ,k ,l
Cov(D2 , D1D2 ) =
∑ (δ jiγ lk )(γ lk )D..jl D..ik
i , j ,k ,l
Cov( A1 A2 , D1D2 ) = − ∑ (α i β k )D..ik + ∑ (α j βl )D..jl j ,l i ,k
∑ (δ jiγ lk )D..jl D..ik i , j ,k ,l
+ ∑ (δ jiγ lk ) [(α i β k ) i , j ,k ,l
{
+(α i βl ) + (α j β k ) + (α j βl )]D..jl D..ik + (α i β k )pi qk D..jl + (α j βl )p j ql D..ik Cov( A1D2 , D1D2 ) =
}
∑ (δ jiγ lk )[(α iγ lk )(D.ik. + pi qk )D..jl + (α jγ lk )(D..jl + p j ql )D..ik ]
i , j ,k ,l
Cov(D1 A2 , D1D2 ) =
∑ (δ jiγ lk )[(δ ji β k )(D..ik + pi qk )D..jl + (δ ji βl )(D..jl + p j ql )D..ik ]
i , j ,k ,l
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D. Partition of genotypic variance in F2 population with linkage disequilibrium Detail of each component of equation (19) for F2 population is presented here.
• The additive variance:
= E( zr z s zt − pr z s zt − zr ps zt − zr z s pt + pr ps zt + pr z s pt + zr ps pt − pr ps pt ) = E( zr z s zt −
1 1 1 1 z s zt − zr zt − zr z s + ) 2 2 2 4
Let r1 be the recombination frequency between loci r and s, r2 be that between s and t, and r12 be that between r and
1 m VA = ∑ ar2 + 2∑ ar as Drs 2 r =1 r≠s
t. Under the assumption of no crossing-over interference, 1 for loci r, s, t in this order, we have E(zrzszt) = (1 - r1)(1 2 1 1 - r2), E(zrzs) = (1 - r1), E(zszt) = (1 - r2), and E(zrzt) = 2 2 1 (1 - r12). Since the assumption of no crossing-over 2 interferene implies r12 = r1 + r2 - 2r1r2, thus Drst = 0.
• The dominance variance:
VD =
Drst = E( xr x s xt ) = E(( zr − pr )( z s − ps )( zt − pt ))
1 m 2 ∑ dr + 4∑ dr ds Drs2 4 r =1 r≠s
• The additive × additive variance: 1 ∑ (aa)2rs + ∑ (aa)rs (aa)rs′ Dss′ 4 r
VAA =
E. Partition of genotypic variance for the general twoallele model with linkage disequilibrium Detail of each component of equation (19) for the general two-allele model is presented here.
• The additive × dominance variance: • The additive variance: VAD
1 1 2 2 = ∑ (ad)rs + ∑ (ad)rs (ad)sr Drs + 2 ∑ (ad)rs (ad)rs′ Dss ′ + (ad)ss′ Dss′ Drs′ 8 r≠s 2 r≠s r ≠ s ≠ s′ +(ad)s′r Drs Dss′
1 + (ad)s′s Drs′ + 8 ∑ (ad)rs (ad)r ′s′ Drsr ′s′ Dss′ 4 r ≠ s ≠ r ′≠ s′
• The dominance × dominance variance: VDD =
1
∑ (dd)rs2 (16 − 16Drs4 ) + ∑
r
+4
r ≠ s≠ s ’
∑
r ≠ s ≠ r ’≠ s ’
2 2 2 (dd)rs (dd)rs ’ (Dss ’ − 16Drs Drs ’ )
2 2 2 (dd)rs (dd)r ’ s ’ (Drsr ’ s ’ − Drs Dr ’ s ’ )
• The covariances: Cov(A, D) = Cov(A, AA) = Cov(A, DD) = Cov(D, AD) = Cov(D, DD) = Cov(AA, AD) = Cov(AD, DD) = 0, and
m
VA = 2∑ pr (1 − pr )ar2 + 2∑ ar as Drs r =1
r≠s
• The dominance variance: m
∑ pr2(1 − pr )2 dr2 + ∑ dr ds Drs2
VD =
r =1
r≠s
• The additive × additive variance: 2 VAA = 2∑ (aa)rs [ (1 − 2pr )(1 − 2ps )Drs + 2pr (1 − pr )ps (1 − ps ) ] r
∑
+2
r ≠ s≠ s ’
Cov( A, AD) = − ∑ ar Drs [ 4(ad)rs Drs + (ad)sr ] − 4 r≠s
Cov(D, AA) = − ∑ (dr + ds )(aa)rs Drs −4 r
Cov( AA, DD) =
∑
∑
r ≠ s≠r ’
r ≠ s≠r ’
dr ’ (aa)rs Drr ’ Dr ’ s
1
∑ (aa)rs (dd)rs ( 2 Drs − 8Drs3 ) + ∑
r
r ≠ s≠ s ’
+2
∑
r ≠ s ≠ r ’≠ s ’
ar ’ (ad)rs Drs Dr ’ s
(aa)rs (dd)rs ’ (2Drs ’ Dss ’ − 8Drs Drs2 ’ )
(aa)rs (dd)r ’ s ’ (Drsr ’ s ’ Dr ’ s ’ − Drs Dr2’ s ’ )
where (aa)sr = (aa)rs and (dd)sr = (dd)rs for r
+
1 ∑ (aa)rs (aa)r ’ s ’(Drr ’ ss ’ + Drs ’Dr ’ s + Drr ’Dss ’ − Drs Dr ’ s ’ ) 2 r ≠ s ≠ r ’≠ s ’
• The additive × dominance variance: VAD = 2∑ (ad)2rs (1 − 2ps )2 Drs2 + (1 − 2pr )(1 − 2ps )ps (1 − ps )Drs + pr (1 − pr )p2s (1 − ps )2 r≠s
+2∑ (ad)rs (ad)sr Drs [ 2(1 − 2pr )(1 − 2ps )Drs + pr (1 − pr )ps (1 − ps ) ] r≠s
+2
In this presentation, we utilized the assumption of no crossing-over interference which results in the third order linkage disequilibrium of three loci being zero, i.e. Drss' = 0. It may be instructive to show this result.
(aa)rs (aa)rs ’ [ (1 − 2pr )Drss ’ + 2pr (1 − pr )Dss ’ ]
∑
r ≠ s≠ s ’
{
2 2 (ad)rs (ad)rs ’ Drss ’ + (1 − 2pr )Drss ’ Dss ’ + pr (1 − pr )Dss ’
+(ad)ss ’ [ 2(1 − 2ps )Drss ’ Dss ’ + ps (1 − ps )Dss ’ Drs ’ ] +(ad)s ’ r [ 2(1 − 2pr )Drss ’ Drs + pr (1 − pr )Drs Dss ’ ]
+(ad)s ’ s (1 − 2ps )2 Drs Dss ’ + (1 − 2ps )ps (1 − ps )Drss ’ + p2s (1 − ps )2 Drs ’ +2
∑
r ≠ s ≠ r ’≠ s ’
}
(ad)rs (ad)r ’ s ’ (Drsr ’ s ’ Dss ’ + Drss ’ Dsr ’ s ’ )
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References • The dominance × dominance variance: VDD
=
1.
∑ (dd)2rs {[ (1 − 2pr )(1 − 2ps )Drs + pr (1 − pr )ps (1 − ps ) ]
} −D D } 2
r
+
∑
r ≠ s≠ s ’
+
(dd)rs (dd)rs ’
{[ (1 − 2p )D r
rss ’
+ pr (1 − pr )Dss ’ ]
2
2 2 rs rs ’
1 2 2 2 ∑ (dd)rs (dd)r ’ s ’(Drsr ’ s ’ − Drs Dr ’ s ’ ) 4 r ≠ s ≠ r ’≠ s ’
5. 6.
= 0
Cov( A, AA)
= 2∑ (aa)rs Drs [ (1 − 2pr )ar + (1 − 2ps )as ] +
Cov( A, AD)
= 2∑ ar Drs [ (ad)rs Drs + pr (1 − pr )(ad)sr ] + 2
Cov( A, DD)
= 2∑ (dd)rs Drs2 [ (1 − 2pr )ar + (1 − 2ps )as ] + 2
r
r≠s
∑
r ≠ s≠r ’
∑
ar ’ (ad)rs Drs Dr ’ s
∑
ar ’ (dd)rs Drsr ’ Drs
r ≠ s≠r ’
= 2∑ (aa)rs Drs [ pr (1 − pr )dr + ps (1 − ps )ds ] + 2 r
Cov(D, AD)
ar ’ (aa)rs Dr ’ rs
r ≠ s≠r ’
r
Cov(D, AA)
3.
4.
• The covariances: Cov( A, D)
2.
− Drs4
∑
r ≠ s≠r ’
dr ’ (aa)rs Drr ’ Dr ’ s
= 2∑ dr Drs (1 − 2pr )[ Drs (ad)rs + pr (1 − pr )(ad)sr ] + 2
∑
r ≠ s≠r ’
r≠s
∑ (dd)rs Drs2 (1 − 2pr )2 dr + (1 − 2ps )2 ds + 2
∑
=
Cov( AA, AD)
= 2∑ (aa)rs Drs {(ad)rs [ (1 − 2pr )ps (1 − ps ) + 2(1 − 2ps )Drs ]
r ≠ s≠r ’
dr ’ (ad)rs Dr ’ rs Dr ’ s
dr ’ (dd)rs Dr2’ rs
Cov(D, DD)
r
r
+(ad)sr [ (1 − 2ps )pr (1 − pr ) + 2(1 − 2pr )Drs ]} +2
∑
r ≠ s≠ s ’
(aa)rs {(ad)ss ’ [ (1 − 2ps )Dss ’ Drs ’ + 2Drss ’ Dss ’ ]
+(ad)s ’ s [ 2(1 − 2ps )Drs Dss ’ + ps (1 − ps )Drss ’ ]}
∑
+
r ≠ss ≠ r ’≠ s ’
7.
(aa)rs (ad)r ’ s ’ (Drss ’ Dr ’ s + Drr ’ s ’ Dss ’ + Dr ’ ss ’ Drs ’ )
8. 9. 10. 11. 12. 13.
Cov( AA, DD) = 2∑ (aa)rs (dd)rs 2(1 − 2pr )(1 − 2ps )Drs2 + pr (1 − pr )ps (1 − ps )Drs − Drs3 r
+2
∑
r ≠ s≠ s ’
+
(aa)rs (dd)rs ’ 2(1 − 2pr )Drss ’ Drs ’ + pr (1 − pr )Drs ’ Dss ’ − Drs Drs2 ’
1 ∑ (aa)rs (dd)r ’ s ’(Drsr ’ s ’Dr ’ s ’ + Drr ’ s ’Dsr ’ s ’ − Drs Dr2’ s ’ ) 2 r ≠ s ≠ r ’≠ s ’
Cov( AD, DD) = 2∑ (ad)rs (dd)rs Drs (1 − 2ps )[ (1 − 2pr )(1 − 2ps )Drs + pr (1 − pr )ps (1 − ps ) ] r≠s
+2
∑
r ≠ s≠ s ’
(ad)rs {(dd)rs ’ Drss ’ [ (1 − 2pr )Drss ’ + pr (1 − pr )Dss ’ ]
+(dd)ss ’ Dss ’ (1 − 2ps )[ (1 − 2ps )Drss ’ + ps (1 − ps )Drs ’ ]} +
∑
r ≠ s ≠ r ’≠ s ’
14. 15. 16. 17.
(ad)rs (dd)r ’ s ’ Drss ’ Drsr ’ s ’
where (aa)sr = (aa)rs and (dd)sr = (dd)rs for r
18. 19. 20. 21. 22. 23.
Acknowledgements We are grateful to Bill Hill and Bruce Weir for very helpful discussions and comments and to Wei Zou, Sheng Feng, Sheng-Mao Cheng and Jessica Maia for checking some results. This work was partially supported by NIH GM45344 and by the National Research Initiative of the USDA Cooperative State Research, Education and Extension Service, grant number #200500754.
24. 25.
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