Department of Animal Sciences, University of Wisconsin, Madison, Wisconsin 53706, USA.
Genetics. 2009 Sep;183(1):347-63. doi: 10.1534/genetics.109.103952. Epub 2009 Jul 20.
The use of all available molecular markers in statistical models for prediction of quantitative traits has led to what could be termed a genomic-assisted selection paradigm in animal and plant breeding. This article provides a critical review of some theoretical and statistical concepts in the context of genomic-assisted genetic evaluation of animals and crops. First, relationships between the (Bayesian) variance of marker effects in some regression models and additive genetic variance are examined under standard assumptions. Second, the connection between marker genotypes and resemblance between relatives is explored, and linkages between a marker-based model and the infinitesimal model are reviewed. Third, issues associated with the use of Bayesian models for marker-assisted selection, with a focus on the role of the priors, are examined from a theoretical angle. The sensitivity of a Bayesian specification that has been proposed (called "Bayes A") with respect to priors is illustrated with a simulation. Methods that can solve potential shortcomings of some of these Bayesian regression procedures are discussed briefly.
利用所有可用的分子标记物在统计模型中预测数量性状,导致了在动植物育种中可以被称为基因组辅助选择的范例。本文批判性地回顾了一些关于动物和作物基因组辅助遗传评估的理论和统计概念。首先,在标准假设下,检查了某些回归模型中(贝叶斯)标记效应方差与加性遗传方差之间的关系。其次,探索了标记基因型与亲属之间相似性之间的关系,并回顾了基于标记的模型与无穷小模型之间的联系。第三,从理论角度探讨了用于标记辅助选择的贝叶斯模型的使用相关问题,重点关注先验的作用。通过模拟说明了已提出的(称为“贝叶斯 A”)贝叶斯规范对先验的敏感性。简要讨论了可以解决这些贝叶斯回归过程中的一些潜在缺点的方法。