Waldmann Patrik, Hallander Jon, Hoti Fabian, Sillanpää Mikko J
Department of Forest Genetics and Plant Physiology, Swedish Agricultural University (SLU), SE-901 83 Umeå, Sweden.
Genetics. 2008 Jun;179(2):1101-12. doi: 10.1534/genetics.107.084160.
Accurate and fast computation of quantitative genetic variance parameters is of great importance in both natural and breeding populations. For experimental designs with complex relationship structures it can be important to include both additive and dominance variance components in the statistical model. In this study, we introduce a Bayesian Gibbs sampling approach for estimation of additive and dominance genetic variances in the traditional infinitesimal model. The method can handle general pedigrees without inbreeding. To optimize between computational time and good mixing of the Markov chain Monte Carlo (MCMC) chains, we used a hybrid Gibbs sampler that combines a single site and a blocked Gibbs sampler. The speed of the hybrid sampler and the mixing of the single-site sampler were further improved by the use of pretransformed variables. Two traits (height and trunk diameter) from a previously published diallel progeny test of Scots pine (Pinus sylvestris L.) and two large simulated data sets with different levels of dominance variance were analyzed. We also performed Bayesian model comparison on the basis of the posterior predictive loss approach. Results showed that models with both additive and dominance components had the best fit for both height and diameter and for the simulated data with high dominance. For the simulated data with low dominance, we needed an informative prior to avoid the dominance variance component becoming overestimated. The narrow-sense heritability estimates in the Scots pine data were lower compared to the earlier results, which is not surprising because the level of dominance variance was rather high, especially for diameter. In general, the hybrid sampler was considerably faster than the blocked sampler and displayed better mixing properties than the single-site sampler.
在自然种群和育种群体中,准确快速地计算数量遗传方差参数都非常重要。对于具有复杂关系结构的实验设计,在统计模型中纳入加性和显性方差成分可能很重要。在本研究中,我们引入了一种贝叶斯吉布斯采样方法,用于在传统微效多基因模型中估计加性和显性遗传方差。该方法可以处理无近亲繁殖的一般谱系。为了在计算时间和马尔可夫链蒙特卡罗(MCMC)链的良好混合之间进行优化,我们使用了一种结合单位点和分块吉布斯采样器的混合吉布斯采样器。通过使用预变换变量,进一步提高了混合采样器的速度和单位点采样器的混合效果。分析了来自先前发表的欧洲赤松(Pinus sylvestris L.)双列杂交子代试验的两个性状(树高和树干直径)以及两个具有不同显性方差水平的大型模拟数据集。我们还基于后验预测损失方法进行了贝叶斯模型比较。结果表明,同时包含加性和显性成分的模型对树高和直径以及具有高显性的模拟数据拟合最佳。对于具有低显性的模拟数据,我们需要一个信息性先验来避免显性方差成分被高估。与早期结果相比,欧洲赤松数据中的狭义遗传力估计值较低,这并不奇怪,因为显性方差水平相当高,尤其是对于直径。总体而言,混合采样器比分块采样器快得多,并且比单位点采样器表现出更好的混合特性。