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遗传结构对全基因组评估方法的影响。

The impact of genetic architecture on genome-wide evaluation methods.

机构信息

The Roslin Institute and Royal (Dick) School of Veterinary Studies, The University of Edinburgh, Roslin EH25 9PS, United Kingdom.

出版信息

Genetics. 2010 Jul;185(3):1021-31. doi: 10.1534/genetics.110.116855. Epub 2010 Apr 20.

Abstract

The rapid increase in high-throughput single-nucleotide polymorphism data has led to a great interest in applying genome-wide evaluation methods to identify an individual's genetic merit. Genome-wide evaluation combines statistical methods with genomic data to predict genetic values for complex traits. Considerable uncertainty currently exists in determining which genome-wide evaluation method is the most appropriate. We hypothesize that genome-wide methods deal differently with the genetic architecture of quantitative traits and genomes. A genomic linear method (GBLUP), and a genomic nonlinear Bayesian variable selection method (BayesB) are compared using stochastic simulation across three effective population sizes and a wide range of numbers of quantitative trait loci (N(QTL)). GBLUP had a constant accuracy, for a given heritability and sample size, regardless of N(QTL). BayesB had a higher accuracy than GBLUP when N(QTL) was low, but this advantage diminished as N(QTL) increased and when N(QTL) became large, GBLUP slightly outperformed BayesB. In addition, deterministic equations are extended to predict the accuracy of both methods and to estimate the number of independent chromosome segments (M(e)) and N(QTL). The predictions of accuracy and estimates of M(e) and N(QTL) were generally in good agreement with results from simulated data. We conclude that the relative accuracy of GBLUP and BayesB for a given number of records and heritability are highly dependent on M(e,) which is a property of the target genome, as well as the architecture of the trait (N(QTL)).

摘要

高通量单核苷酸多态性数据的快速增长使得人们对应用全基因组评估方法来识别个体的遗传优势产生了浓厚的兴趣。全基因组评估将统计方法与基因组数据相结合,以预测复杂性状的遗传值。目前,在确定哪种全基因组评估方法最合适方面存在很大的不确定性。我们假设全基因组方法对数量性状和基因组的遗传结构有不同的处理方式。本文使用随机模拟方法,在三个有效种群大小和广泛的数量性状位点(N(QTL))范围内,比较了基因组线性方法(GBLUP)和基因组非线性贝叶斯变量选择方法(BayesB)。对于给定的遗传力和样本量,GBLUP 的准确性是恒定的,而与 N(QTL)无关。当 N(QTL)较低时,BayesB 的准确性高于 GBLUP,但随着 N(QTL)的增加,这种优势减弱,当 N(QTL)较大时,GBLUP 略优于 BayesB。此外,还扩展了确定性方程来预测两种方法的准确性,并估计独立染色体片段数(M(e))和 N(QTL)。准确性预测和 M(e)和 N(QTL)的估计值通常与模拟数据的结果非常吻合。我们得出结论,对于给定的记录数和遗传力,GBLUP 和 BayesB 的相对准确性高度依赖于 M(e),这是目标基因组的一个特性,以及性状的结构(N(QTL))。

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