Gianola Daniel, Fernando Rohan L, Stella Alessandra
Department of Animal Science, University of Wisconsin, Madison, Wisconsin 53706, USA.
Genetics. 2006 Jul;173(3):1761-76. doi: 10.1534/genetics.105.049510. Epub 2006 Apr 28.
Semiparametric procedures for prediction of total genetic value for quantitative traits, which make use of phenotypic and genomic data simultaneously, are presented. The methods focus on the treatment of massive information provided by, e.g., single-nucleotide polymorphisms. It is argued that standard parametric methods for quantitative genetic analysis cannot handle the multiplicity of potential interactions arising in models with, e.g., hundreds of thousands of markers, and that most of the assumptions required for an orthogonal decomposition of variance are violated in artificial and natural populations. This makes nonparametric procedures attractive. Kernel regression and reproducing kernel Hilbert spaces regression procedures are embedded into standard mixed-effects linear models, retaining additive genetic effects under multivariate normality for operational reasons. Inferential procedures are presented, and some extensions are suggested. An example is presented, illustrating the potential of the methodology. Implementations can be carried out after modification of standard software developed by animal breeders for likelihood-based or Bayesian analysis.
本文介绍了利用表型和基因组数据同时预测数量性状总遗传值的半参数方法。这些方法着重于处理例如单核苷酸多态性所提供的海量信息。有人认为,用于数量遗传分析的标准参数方法无法处理例如含有数十万标记的模型中出现的多种潜在相互作用,并且在人工群体和自然群体中,方差正交分解所需的大多数假设都不成立。这使得非参数方法颇具吸引力。出于操作原因,在多元正态性条件下,将核回归和再生核希尔伯特空间回归方法嵌入到标准混合效应线性模型中,以保留加性遗传效应。文中给出了推断方法,并提出了一些扩展建议。还给出了一个示例,说明了该方法的潜力。在对动物育种者开发的用于基于似然或贝叶斯分析的标准软件进行修改后,即可实现这些方法。