A Bayesian Inference of Genetic Parameters for Sexual Dimorphism Using Carcass Trait Data

A. Arakawa, H. Iwaisaki
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引用次数: 2

Abstract

Differences in some traits between males and females, called sexual dimorphism, are observed among wild and livestock animals. For traits in which variances may be heterogeneous between sexes in some cases, evaluating the relevant genetic parameters, including genetic correlation between sexes, is an important topic requiring estimation of the components of (co)variances. This study developed a Bayesian approach via the Gibbs sampler to estimate the (co)variance components and genetic parameters of sexual dimorphism. As prior distributions, uniform, multivariate normal, two dimensional scaled inverted Wishart and independent scaled inverted chi-square distributions were used for the macro-environmental effects, breeding values, additive genetic (co)variances and residual variances, respectively. This approach was applied to beef carcass trait data, and the estimates of the (co)variance components and genetic parameters (especially the modes of the marginal posterior densities) were generally in agreement with those obtained using the restricted maximum likelihood procedure.
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利用胴体性状数据进行性别二态性遗传参数的贝叶斯推断
在野生动物和家畜中都观察到雄性和雌性在某些特征上的差异,称为两性二态性。对于某些性状,在某些情况下,差异可能是异质的,评估相关的遗传参数,包括性别之间的遗传相关性,是一个重要的课题,需要估计(co)方差的成分。本研究通过Gibbs采样器建立了贝叶斯方法来估计两性二态性的(co)方差成分和遗传参数。宏观环境效应、育种值、加性遗传方差和残差方差分别采用均匀分布、多元正态分布、二维标度倒Wishart分布和独立标度倒卡方分布作为先验分布。将该方法应用于牛肉胴体性状数据,对(co)方差分量和遗传参数的估计(特别是边际后验密度的模式)与使用限制最大似然程序获得的结果基本一致。
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