Department of Mathematics and Statistics, University of Helsinki, Helsinki, Finland.
Heredity (Edinb). 2012 Feb;108(2):134-46. doi: 10.1038/hdy.2011.56. Epub 2011 Jul 27.
A novel hierarchical quantitative trait locus (QTL) mapping method using a polynomial growth function and a multiple-QTL model (with no dependence in time) in a multitrait framework is presented. The method considers a population-based sample where individuals have been phenotyped (over time) with respect to some dynamic trait and genotyped at a given set of loci. A specific feature of the proposed approach is that, instead of an average functional curve, each individual has its own functional curve. Moreover, each QTL can modify the dynamic characteristics of the trait value of an individual through its influence on one or more growth curve parameters. Apparent advantages of the approach include: (1) assumption of time-independent QTL and environmental effects, (2) alleviating the necessity for an autoregressive covariance structure for residuals and (3) the flexibility to use variable selection methods. As a by-product of the method, heritabilities and genetic correlations can also be estimated for individual growth curve parameters, which are considered as latent traits. For selecting trait-associated loci in the model, we use a modified version of the well-known Bayesian adaptive shrinkage technique. We illustrate our approach by analysing a sub sample of 500 individuals from the simulated QTLMAS 2009 data set, as well as simulation replicates and a real Scots pine (Pinus sylvestris) data set, using temporal measurements of height as dynamic trait of interest.
本文提出了一种新的层次定量性状位点(QTL)映射方法,该方法使用多项式增长函数和多 QTL 模型(无时间依赖性)在多性状框架中。该方法考虑了基于群体的样本,其中个体在给定的一些动态性状上进行了表型(随时间变化),并在给定的一组位点上进行了基因型。所提出方法的一个特点是,每个个体都有自己的功能曲线,而不是平均功能曲线。此外,每个 QTL 可以通过影响一个或多个生长曲线参数来改变个体性状值的动态特征。该方法的明显优势包括:(1)假设 QTL 和环境效应是时间独立的,(2)减轻了对残差自回归协方差结构的必要性,(3)具有使用变量选择方法的灵活性。作为该方法的副产品,也可以估计个体生长曲线参数的遗传力和遗传相关性,这些参数被视为潜在性状。为了在模型中选择与性状相关的位点,我们使用了一种著名的贝叶斯自适应收缩技术的修改版本。我们通过分析模拟 QTLMAS 2009 数据集的 500 个个体的子样本、模拟重复和真实的苏格兰松树(Pinus sylvestris)数据集,使用感兴趣的动态性状——高度的时间测量来演示我们的方法。