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Hierarchical spatial modeling of additive and dominance genetic variance for large spatial trial datasets.

机译:大型空间试验数据集的累加和优势遗传方差的分层空间建模。

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SUMMARY: This article expands upon recent interest in Bayesian hierarchical models in quantitative genetics by developing spatial process models for inference on additive and dominance genetic variance within the context of large spatially referenced trial datasets. Direct application of such models to large spatial datasets are, however, computationally infeasible because of cubic-order matrix algorithms involved in estimation. The situation is even worse in Markov chain Monte Carlo (MCMC) contexts where such computations are performed for several iterations. Here, we discuss approaches that help obviate these hurdles without sacrificing the richness in modeling. For genetic effects, we demonstrate how an initial spectral decomposition of the relationship matrices negate the expensive matrix inversions required in previously proposed MCMC methods. For spatial effects, we outline two approaches for circumventing the prohibitively expensive matrix decompositions: the first leverages analytical results from Ornstein-Uhlenbeck processes that yield computationally efficient tridiagonal structures, whereas the second derives a modified predictive process model from the original model by projecting its realizations to a lower-dimensional subspace, thereby reducing the computational burden. We illustrate the proposed methods using a synthetic dataset with additive, dominance, genetic effects and anisotropic spatial residuals, and a large dataset from a Scots pine (Pinus sylvestris L.) progeny study conducted in northern Sweden. Our approaches enable us to provide a comprehensive analysis of this large trial, which amply demonstrates that, in addition to violating basic assumptions of the linear model, ignoring spatial effects can result in downwardly biased measures of heritability.
机译:摘要:本文通过开发用于推断大型空间参考试验数据集内的加性和优势遗传方差的空间过程模型,扩大了对定量遗传学中贝叶斯层次模型的最新兴趣。但是,由于估计中涉及的立方阶矩阵算法,将此类模型直接应用于大型空间数据集在计算上是不可行的。在马尔可夫链蒙特卡洛(MCMC)上下文中,这种计算要进行几次迭代,情况甚至更糟。在这里,我们讨论在不牺牲建模丰富性的情况下有助于消除这些障碍的方法。对于遗传效应,我们证明了关系矩阵的初始频谱分解如何消除先前提出的MCMC方法所需的昂贵的矩阵求逆。对于空间效应,我们概述了两种方法来避免代价高昂的矩阵分解:第一种方法利用了Ornstein-Uhlenbeck过程的分析结果,该分析结果产生了计算上有效的三对角结构,而第二种方法则通过投影其实现从原始模型中获得了改进的预测过程模型。到低维子空间,从而减轻了计算负担。我们用具有加性,优势,遗传效应和各向异性空间残差的合成数据集,以及在瑞典北部进行的苏格兰松树(Pinus sylvestris L.)后代研究的大型数据集,说明了所提出的方法。我们的方法使我们能够对该大型试验进行全面的分析,充分表明,除了违反线性模型的基本假设之外,忽略空间效应还可能导致遗传力的测度偏差。

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