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Genomic Prediction from Multiple-Trait Bayesian Regression Methods Using Mixture Priors

机译:使用混合前导者的多特质贝叶斯回归方法的基因组预测

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Bayesian multiple-regression methods incorporating different mixture priors for marker effects are used widely in genomic prediction. Improvement in prediction accuracies from using those methods, such as BayesB, BayesC, and BayesC, have been shown in single-trait analyses with both simulated and real data. These methods have been extended to multi-trait analyses, but only under the restrictive assumption that a locus simultaneously affects all the traits or none of them. This assumption is not biologically meaningful, especially in multi-trait analyses involving many traits. In this paper, we develop and implement a more general multi-trait BayesC and BayesB methods allowing a broader range of mixture priors. Our methods allow a locus to affect any combination of traits, e.g., in a 5-trait analysis, the "restrictive" model only allows two situations, whereas ours allow all 32 situations. Further, we compare our methods to single-trait methods and the "restrictive" multi-trait formulation using real and simulated data. In the real data analysis, higher prediction accuracies were observed from both our new broad-based multi-trait methods and the restrictive formulation. The broad-based and restrictive multi-trait methods showed similar prediction accuracies. In the simulated data analysis, higher prediction accuracies to the restrictive method were observed from our general multi-trait methods for intermediate training population size. The software tool JWAS offers open-source routines to perform these analyses.
机译:包含不同混合电极的贝叶斯多元回归方法用于标记效应广泛用于基因组预测。使用这些方法(例如Bayesb,Bayesc和Bayesc)的预测准确性的改进已经显示在具有模拟和实际数据的单个特征分析中。这些方法已经扩展到多个特征分析,但仅在限制性假设下,轨迹同时影响所有特征或它们都不是。这种假设在生物学上不是生物学意义,尤其是涉及许多特征的多特征分析。在本文中,我们开发和实施更一般的多特质贝母和贝贝布方法,允许更广泛的混合前导。我们的方法允许轨迹影响特征的任何组合,例如,在5个特征分析中,“限制性”模型仅允许两个情况,而我们允许所有32个局势。此外,我们使用真实和模拟数据将方法与单个特征方法和“限制性”多特征配方进行比较。在真实数据分析中,从我们新的广泛的多特征方法和限制性配方中观察到更高的预测精度。基于广泛的和限制性多特征方法显示出类似的预测精度。在模拟数据分析中,从我们的一般多特征方法观察到限制性方法的更高的预测精度,用于中间训练人口大小。软件工具JWAS提供开源例程以执行这些分析。

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