Bouvet J-M, Makouanzi G, Cros D, Vigneron Ph
CIRAD, Genetic Improvement and Adaptation of Mediterranean and Tropical Plants (AGAP) Research Unit, Montpellier, France.
Centre de Recherche sur la Durabilité et la Productivité des Plantations Industrielles, Pointe-Noire, Republic of the Congo.
Heredity (Edinb). 2016 Feb;116(2):146-57. doi: 10.1038/hdy.2015.78. Epub 2015 Sep 2.
Hybrids are broadly used in plant breeding and accurate estimation of variance components is crucial for optimizing genetic gain. Genome-wide information may be used to explore models designed to assess the extent of additive and non-additive variance and test their prediction accuracy for the genomic selection. Ten linear mixed models, involving pedigree- and marker-based relationship matrices among parents, were developed to estimate additive (A), dominance (D) and epistatic (AA, AD and DD) effects. Five complementary models, involving the gametic phase to estimate marker-based relationships among hybrid progenies, were developed to assess the same effects. The models were compared using tree height and 3303 single-nucleotide polymorphism markers from 1130 cloned individuals obtained via controlled crosses of 13 Eucalyptus urophylla females with 9 Eucalyptus grandis males. Akaike information criterion (AIC), variance ratios, asymptotic correlation matrices of estimates, goodness-of-fit, prediction accuracy and mean square error (MSE) were used for the comparisons. The variance components and variance ratios differed according to the model. Models with a parent marker-based relationship matrix performed better than those that were pedigree-based, that is, an absence of singularities, lower AIC, higher goodness-of-fit and accuracy and smaller MSE. However, AD and DD variances were estimated with high s.es. Using the same criteria, progeny gametic phase-based models performed better in fitting the observations and predicting genetic values. However, DD variance could not be separated from the dominance variance and null estimates were obtained for AA and AD effects. This study highlighted the advantages of progeny models using genome-wide information.
杂种广泛应用于植物育种,准确估计方差成分对于优化遗传增益至关重要。全基因组信息可用于探索旨在评估加性和非加性方差程度的模型,并测试其对基因组选择的预测准确性。开发了10个线性混合模型,涉及亲本间基于系谱和标记的关系矩阵,以估计加性(A)、显性(D)和上位性(AA、AD和DD)效应。还开发了5个互补模型,涉及配子阶段以估计杂种后代间基于标记的关系,以评估相同的效应。使用通过13个尾叶桉雌性与9个巨桉雄性的控制杂交获得的1130个克隆个体的树高和3303个单核苷酸多态性标记对这些模型进行比较。采用赤池信息准则(AIC)、方差比、估计值的渐近相关矩阵、拟合优度、预测准确性和均方误差(MSE)进行比较。方差成分和方差比因模型而异。基于亲本标记关系矩阵的模型比基于系谱的模型表现更好,即不存在奇异性、AIC较低、拟合优度和准确性较高以及MSE较小。然而,AD和DD方差的估计标准误较高。使用相同标准,基于后代配子阶段的模型在拟合观测值和预测遗传值方面表现更好。然而,DD方差无法与显性方差分离,并且对于AA和AD效应获得了零估计值。本研究突出了使用全基因组信息的后代模型的优势。