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利用基于家系的单倍型进行基因组预测的效果。

The effect of using genealogy-based haplotypes for genomic prediction.

机构信息

Center for Quantitative Genetics and Genomics, Department of Molecular Biology and Genetics, Aarhus University, Tjele DK-8830, Denmark.

出版信息

Genet Sel Evol. 2013 Mar 6;45(1):5. doi: 10.1186/1297-9686-45-5.

Abstract

BACKGROUND

Genomic prediction uses two sources of information: linkage disequilibrium between markers and quantitative trait loci, and additive genetic relationships between individuals. One way to increase the accuracy of genomic prediction is to capture more linkage disequilibrium by regression on haplotypes instead of regression on individual markers. The aim of this study was to investigate the accuracy of genomic prediction using haplotypes based on local genealogy information.

METHODS

A total of 4429 Danish Holstein bulls were genotyped with the 50K SNP chip. Haplotypes were constructed using local genealogical trees. Effects of haplotype covariates were estimated with two types of prediction models: (1) assuming that effects had the same distribution for all haplotype covariates, i.e. the GBLUP method and (2) assuming that a large proportion (π) of the haplotype covariates had zero effect, i.e. a Bayesian mixture method.

RESULTS

About 7.5 times more covariate effects were estimated when fitting haplotypes based on local genealogical trees compared to fitting individuals markers. Genealogy-based haplotype clustering slightly increased the accuracy of genomic prediction and, in some cases, decreased the bias of prediction. With the Bayesian method, accuracy of prediction was less sensitive to parameter π when fitting haplotypes compared to fitting markers.

CONCLUSIONS

Use of haplotypes based on genealogy can slightly increase the accuracy of genomic prediction. Improved methods to cluster the haplotypes constructed from local genealogy could lead to additional gains in accuracy.

摘要

背景

基因组预测利用两种信息来源:标记与数量性状基因座之间的连锁不平衡,以及个体间的加性遗传关系。增加基因组预测准确性的一种方法是通过对单倍型进行回归而不是对个体标记进行回归来捕获更多的连锁不平衡。本研究旨在探讨基于局部系谱信息的单倍型进行基因组预测的准确性。

方法

总共对 4429 头丹麦荷斯坦公牛进行了 50K SNP 芯片的基因分型。使用局部系谱树构建单倍型。使用两种预测模型估计单倍型协变量的效应:(1)假设所有单倍型协变量的效应具有相同的分布,即 GBLUP 方法,以及(2)假设单倍型协变量的很大一部分(π)具有零效应,即贝叶斯混合方法。

结果

与拟合个体标记相比,基于局部系谱树拟合单倍型时估计的协变量效应约多 7.5 倍。基于系谱的单倍型聚类略微提高了基因组预测的准确性,并且在某些情况下降低了预测的偏差。与拟合标记相比,使用贝叶斯方法拟合单倍型时,预测的准确性对参数π的敏感性较低。

结论

使用基于系谱的单倍型可以略微提高基因组预测的准确性。改进的聚类方法可以进一步提高准确性。

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