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Influence of epistasis on response to genomic selection using complete sequence data

机译:利用完整序列数据,上位性对基因组选择反应的影响

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The effect of epistasis on response to selection is a highly debated topic. Here, we investigated the impact of epistasis on response to sequence-based selection via genomic best linear prediction (GBLUP) in a regime of strong non-symmetrical epistasis under divergent selection, using real Drosophila sequence data. We also explored the possible advantage of including epistasis in the evaluation model and/or of knowing the causal mutations. Response to selection was almost exclusively due to changes in allele frequency at a few loci with a large effect. Response was highly asymmetric (about four phenotypic standard deviations higher for upward than downward selection) due to the highly skewed site frequency spectrum. Epistasis accentuated this asymmetry and affected response to selection by modulating the additive genetic variance, which was sustained for longer under upward selection whereas it eroded rapidly under downward selection. Response to selection was quite insensitive to the evaluation model, especially under an additive scenario. Nevertheless, including epistasis in the model when there was none eventually led to lower accuracies as selection proceeded. Accounting for epistasis in the model, if it existed, was beneficial but only in the medium term. There was not much gain in response if causal mutations were known, compared to using sequence data, which is likely due to strong linkage disequilibrium, high heritability and availability of phenotypes on candidates. Epistatic interactions affect the response to genomic selection by modulating the additive genetic variance used for selection. Epistasis releases additive variance that may increase response to selection compared to a pure additive genetic action. Furthermore, genomic evaluation models and, in particular, GBLUP are robust, i.e. adding complexity to the model did not modify substantially the response (for a given architecture).
机译:上位性对选择反应的影响是一个备受争议的话题。在这里,我们使用真实的果蝇序列数据,研究了发散对基因组最佳线性预测(GBLUP)中基于序列选择的响应的影响,该方案在发散选择下的强非对称上位性机制中,使用果蝇真实数据进行。我们还探讨了将上位性纳入评估模型和/或了解因果突变的可能优势。对选择的反应几乎完全是由于在几个基因座处等位基因频率的变化而产生的,且影响很大。由于站点频谱高度偏斜,响应高度不对称(向上选择比向下选择高大约四个表型标准差)。上位性通过调节加性遗传方差加剧了这种不对称性,并影响了对选择的反应,在向上选择时这种持续时间更长,而在向下选择时则迅速消失。对选择的响应对评估模型非常不敏感,尤其是在附加情景下。然而,在选择过程中,当模型中没有上位性时,最终会导致准确性降低。在模型中考虑上位性(如果存在)是有益的,但仅限于中期。与使用序列数据相比,如果已知因果突变,则响应没有太大增加,这很可能是由于强烈的连锁不平衡,高遗传力和候选基因表型的可用性。上位性相互作用通过调节用于选择的加性遗传方差影响对基因组选择的响应。上位性释放的加性方差与纯加性遗传作用相比可能增加对选择的反应。此外,基因组评估模型,尤其是GBLUP是健壮的,即,增加模型的复杂性并不能实质上改变响应(对于给定的体系结构)。

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