| Literature DB >> 18451979 |
José M Alvarez-Castro1, Arnaud Le Rouzic, Orjan Carlborg.
Abstract
Although the genotype-phenotype map plays a central role both in Quantitative and Evolutionary Genetics, the formalization of a completely general and satisfactory model of genetic effects, particularly accounting for epistasis, remains a theoretical challenge. Here, we use a two-locus genetic system in simulated populations with epistasis to show the convenience of using a recently developed model, NOIA, to perform estimates of genetic effects and the decomposition of the genetic variance that are orthogonal even under deviations from the Hardy-Weinberg proportions. We develop the theory for how to use this model in interval mapping of quantitative trait loci using Halley-Knott regressions, and we analyze a real data set to illustrate the advantage of using this approach in practice. In this example, we show that departures from the Hardy-Weinberg proportions that are expected by sampling alone substantially alter the orthogonal estimates of genetic effects when other statistical models, like F2 or G2A, are used instead of NOIA. Finally, for the first time from real data, we provide estimates of functional genetic effects as sets of effects of natural allele substitutions in a particular genotype, which enriches the debate on the interpretation of genetic effects as implemented both in functional and in statistical models. We also discuss further implementations leading to a completely general genotype-phenotype map.Entities:
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Year: 2008 PMID: 18451979 PMCID: PMC2320976 DOI: 10.1371/journal.pgen.1000062
Source DB: PubMed Journal: PLoS Genet ISSN: 1553-7390 Impact factor: 5.917
Figure 1Effects of departures from the HWP on genetic effects.
The genetic effects were obtained using the F2, G2A and NOIA models in a two locus genetic system that was simulated in nine F2 populations with departures from HWP ranging from zero to 97% (see text for details).
Genotype-phenotype map of the two-locus system used in the simulated populations to evaluate the effect of departures from HWP on genetic effects estimated using the F2, G2A and NOIA models.
| Genotype at locus | |||
| Genotype at locus |
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| 0.25 | −0.75 | −0.75 |
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| −0.75 | 2.25 | 2.25 |
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| −0.75 | 2.25 | 2.25 |
Figure 2Effects of departures from the HWP on the variance components.
The variance decomposition was performed for the same cases as in Figure 1. VP is the phenotypic variance, which (in absence of environmental variance) is equal to VG, the genetic variance. VA is the additive variance, VD is the dominance variance and VI is the epistatic (interaction) variance.
Estimates of statistical genetic effects (to the left of each cell) and components of the genetic variance (to the right) for an epistatic QTL for growth rate pair in a Red junglefowl×White leghorn layer intercross [21] using four different models.
| Vector of genetic effects, E, and components of variance associated to each of the genetic effects | |||||||||
| Model | μ | α | δ | α | δ | αα | αδ | δα | δδ |
| NOIA | 269.49 | 169 | 1.00 | 0.45 | 6.74 | 11.28 | 4.47 | 9.75 | −11.75 | 34.32 | 9.67 | 20.78 | −20.30 | 46.66 | 8.22 | 8.18 | −24.80 | 37.87 |
| G2A | 269.32 | 164 | 1.18 | 0.64 | 7.00 | 12.25 | 4.15 | 8.43 | −10.74 | 28.66 | 9.68 | 20.83 | −20.21 | 46.28 | 8.28 | 8.35 | −24.80 | 38.19 |
| F2 | 269.68 | 177 | 1.53 | 1.07 | 7.44 | 13.84 | 4.90 | 11.80 | −11.15 | 31.08 | 10.48 | 24.76 | −19.70 | 44.56 | 9.50 | 11.07 | −24.80 | 38.44 |
| F∞ | 265.23 | 581 | 11.38 | 59.46 | 19.84 | 212.83 | 0.15 | 0.01 | 1.25 | 0.80 | 10.48 | 24.76 | −19.70 | 90.72 | 9.50 | 23.94 | −24.80 | 169.37 |
The variances in this column are the total genetic variances computed as the sum of the components of variance given in the rest of the columns.
Estimates of functional genetic effects from the reference of genotype A 1 A 1 B 1 B 1, G 1111±σ 1111 = 265.18±8.35 grams, and their standard deviations for an epistatic QTL pair for growth rate in a Red junglefowl×White leghorn intercross [21].
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QTL on chromosome 2 (486 cM).
QTL on chromosome 3 (117 cM).