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首页> 外文期刊>Molecular Breeding >Integrated nested Laplace approximation inference and cross-validation to tune variance components in estimation of breeding value
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Integrated nested Laplace approximation inference and cross-validation to tune variance components in estimation of breeding value

机译:集成嵌套拉普拉斯近似推断和交叉验证,可在育种值估计中调整方差成分

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摘要

The main aim of this study was to compare a number of recently proposed Bayesian and frequentist statistical methods for the estimation of genetic parameters and to apply the cross-validation (CV) approach in order to tune the variance components in simulated and field plant breeding datasets. We were especially interested in whether the CV approach was capable of improving the prediction accuracy of breeding values which have been obtained using the residual (or restricted/reduced) maximum likelihood and Markov chain Monte Carlo estimation tools. We showed that the nonsampling-based Bayesian inference method of integrated nested Laplace approximation (INLA) can be used for rapid and accurate estimation of genetic parameters in linear mixed models with multiple random effects such as additive, dominance, and genotype-by-environment interaction effects. Moreover, we also compared the INLA estimates with results obtained using Markov chain Monte Carlo and restricted maximum likelihood methods. In other studies, K-fold CV is primarily used for comparing method performance; however, here we showed that the K-fold CV method can be used to tune genetic parameters and minimize the prediction error in the estimation of breeding value. We also compared the K-fold CV results with different generalized cross-validation methods which are much faster to compute. Analysis results obtained from field and simulated datasets are presented.
机译:这项研究的主要目的是比较一些最近提出的用于估计遗传参数的贝叶斯和频度统计方法,并应用交叉验证(CV)方法来调整模拟和田间植物育种数据集中的方差成分。 。我们尤其对CV方法是否能够提高使用残差(或限制/减少)最大似然度和马尔可夫链蒙特卡洛估计工具获得的育种值的预测准确性感兴趣。我们证明了基于嵌套嵌套拉普拉斯近似(INLA)的基于非采样的贝叶斯推断方法可以用于线性混合模型中遗传参数的快速,准确估计,该模型具有多重随机效应,例如加性,优势和基因型-环境相互作用效果。此外,我们还将INLA估计值与使用马尔可夫链蒙特卡罗方法和受限最大似然方法获得的结果进行了比较。在其他研究中,K折CV主要用于比较方法的性能。但是,在这里我们证明了K折CV方法可用于调整遗传参数并最小化育种价值估算中的预测误差。我们还将K折CV结果与不同的通用交叉验证方法进行了比较,它们的计算速度更快。给出了从现场和模拟数据集获得的分析结果。

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