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首页> 外文期刊>Genetics, selection, evolution >A Bayesian generalized random regression model for estimating heritability using overdispersed count data
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A Bayesian generalized random regression model for estimating heritability using overdispersed count data

机译:贝叶斯广义随机回归模型,用于使用过度分散的计数数据估算遗传力

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Background Faecal egg counts are a common indicator of nematode infection and since it is a heritable trait, it provides a marker for selective breeding. However, since resistance to disease changes as the adaptive immune system develops, quantifying temporal changes in heritability could help improve selective breeding programs. Faecal egg counts can be extremely skewed and difficult to handle statistically. Therefore, previous heritability analyses have log transformed faecal egg counts to estimate heritability on a latent scale. However, such transformations may not always be appropriate. In addition, analyses of faecal egg counts have typically used univariate rather than multivariate analyses such as random regression that are appropriate when traits are correlated. We present a method for estimating the heritability of untransformed faecal egg counts over the grazing season using random regression. Results Replicating standard univariate analyses, we showed the dependence of heritability estimates on choice of transformation. Then, using a multitrait model, we exposed temporal correlations, highlighting the need for a random regression approach. Since random regression can sometimes involve the estimation of more parameters than observations or result in computationally intractable problems, we chose to investigate reduced rank random regression. Using standard software (WOMBAT), we discuss the estimation of variance components for log transformed data using both full and reduced rank analyses. Then, we modelled the untransformed data assuming it to be negative binomially distributed and used Metropolis Hastings to fit a generalized reduced rank random regression model with an additive genetic, permanent environmental and maternal effect. These three variance components explained more than 80 % of the total phenotypic variation, whereas the variance components for the log transformed data accounted for considerably less. The heritability, on a link scale, increased from around 0.25 at the beginning of the grazing season to around 0.4 at the end. Conclusions Random regressions are a useful tool for quantifying sources of variation across time. Our MCMC (Markov chain Monte Carlo) algorithm provides a flexible approach to fitting random regression models to non-normal data. Here we applied the algorithm to negative binomially distributed faecal egg count data, but this method is readily applicable to other types of overdispersed data.
机译:背景粪便卵数是线虫感染的常见指标,并且由于它是遗传性状,因此它为选择性育种提供了标志。但是,由于随着适应性免疫系统的发展,对疾病的抵抗力也会发生变化,因此对遗传力的时间变化进行量化可以帮助改善选择性育种程序。粪便卵数可能会非常偏斜并且难以统计。因此,以前的遗传力分析已记录了转换后的粪便卵数,以潜在地估计遗传力。但是,这种转换可能并不总是合适的。此外,粪便卵数的分析通常使用单变量而不是多变量分析,例如当性状相关时适合的随机回归。我们提出了一种使用随机回归估计放牧季节未转化粪便卵数的遗传力的方法。结果重复标准单变量分析,我们显示了遗传力估计值对转化选择的依赖。然后,使用多特征模型,我们揭示了时间相关性,强调了对随机回归方法的需求。由于随机回归有时可能涉及比观察值更多的参数估计或导致计算上棘手的问题,因此我们选择研究降阶随机回归。使用标准软件(WOMBAT),我们讨论了使用完整秩和最小秩分析对对数转换数据的方差分量的估计。然后,我们对未转换的数据进行建模,假设其为负二项式分布,并使用Metropolis Hastings来拟合具有附加遗传,永久环境和母体效应的广义降阶随机回归模型。这三个方差成分解释了总表型变异的80%以上,而对数转换数据的方差成分所占的比例要小得多。从连锁度来看,遗传力从放牧季节开始时的约0.25增加到结束时的约0.4。结论随机回归是量化随时间变化的来源的有用工具。我们的MCMC(马尔可夫链蒙特卡洛)算法为将随机回归模型拟合到非正态数据提供了一种灵活的方法。在这里,我们将算法应用于负二项分布的粪便卵数数据,但是该方法很容易应用于其他类型的过度分散数据。

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