首页> 外文期刊>Annals of Forest Science >Bayesian inference for multi-environment spatial individual-tree models with additive and full-sib family genetic effects for large forest genetic trials.
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Bayesian inference for multi-environment spatial individual-tree models with additive and full-sib family genetic effects for large forest genetic trials.

机译:针对大型森林遗传试验的具有加性和全同胞族遗传效应的多环境空间个体树模型的贝叶斯推断。

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Context: The gain in accuracy of breeding values with the use of single trial spatial analysis is well known in forestry. However, spatial analyses methodology for single forest genetic trials must be adapted for use with combined analyses of forest genetic trials across sites. Aims: This paper extends a methodology for spatial analysis of single forest genetic trial to a multi-environment trial (MET) setting. Methods: A two-stage spatial MET approach using an individual-tree model with additive and full-sib family genetic effects was developed. Dispersion parameters were estimated using Bayesian techniques via Gibbs sampling. The procedure is illustrated using height growth data at age 10 from eight large Tsuga heterophylla (Raf.) Sarg. second-generation full-sib progeny trials from two series established across seven sites in British Columbia (Canada) and on one in Washington (USA). Results: The proposed multi-environment spatial mixed model displayed a consistent reduction of the posterior mean and an increase in the precision of error variances ( sigma e2) than the model with "sets in replicates" or incomplete block alpha designs. Also, the multi-environment spatial model provided an average increase in the posterior means of the narrow- and broad-sense individual-tree heritabilities (h N2 and h B2, respectively). No consistent changes were observed in the posterior means of additive genetic correlations (r Ajj'). Conclusion: Although computationally demanding, all dispersion parameters were successfully estimated from the proposed multi-environment spatial individual-tree model using Bayesian techniques via Gibbs sampling. The proposed two-stage spatial MET approach produced better results than the commonly used nonspatial MET analysis.Digital Object Identifier http://dx.doi.org/10.1007/s13595-011-0179-7
机译:背景:通过单次试验空间分析获得育种值的准确性在林业中是众所周知的。但是,必须将适用于单个森林遗传试验的空间分析方法与跨站点的森林遗传试验的组合分析一起使用。目的:本文将单一森林遗传试验的空间分析方法扩展到多环境试验(MET)环境。方法:使用具有累加和全同胞家族遗传效应的单树模型,开发了一种两阶段空间MET方法。使用贝叶斯技术通过吉布斯采样估计分散参数。使用来自八个大型Tsuga heterophylla(Raf。)Sarg的10岁时身高生长数据说明了该过程。在不列颠哥伦比亚省(加拿大)的七个地点和华盛顿州(美国)的一个地点建立了两个系列的第二代全同胞后代试验。结果:提出的多环境空间混合模型显示后均值的一致减小和误差方差(sigma e 2 ),而不是带有“重复设置”或不完整的块alpha设计的模型。此外,多环境空间模型提供了狭窄和广义的个体树遗传力( h N 2 < / sup>和 h B 2 )。在加性遗传相关的后验方法( r Ajj' )中未观察到一致的变化。结论:尽管计算要求很高,但是所有的色散参数都是使用贝叶斯技术通过Gibbs采样从所提出的多环境空间个体树模型中成功估计的。提出的两阶段空间MET方法比常用的非空间MET分析产生了更好的结果。数字对象标识符http://dx.doi.org/10.1007/s13595-011-0179-7

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