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取决于亲本数量、亲缘关系和祖先连锁不平衡的合成群体中基因组预测的准确性。

Accuracy of Genomic Prediction in Synthetic Populations Depending on the Number of Parents, Relatedness, and Ancestral Linkage Disequilibrium.

作者信息

Schopp Pascal, Müller Dominik, Technow Frank, Melchinger Albrecht E

机构信息

Institute of Plant Breeding, Seed Science and Population Genetics, University of Hohenheim, 70599 Stuttgart, Germany.

Institute of Plant Breeding, Seed Science and Population Genetics, University of Hohenheim, 70599 Stuttgart, Germany

出版信息

Genetics. 2017 Jan;205(1):441-454. doi: 10.1534/genetics.116.193243. Epub 2016 Nov 9.

Abstract

Synthetics play an important role in quantitative genetic research and plant breeding, but few studies have investigated the application of genomic prediction (GP) to these populations. Synthetics are generated by intermating a small number of parents ([Formula: see text] and thereby possess unique genetic properties, which make them especially suited for systematic investigations of factors contributing to the accuracy of GP. We generated synthetics in silico from [Formula: see text]2 to 32 maize (Zea mays L.) lines taken from an ancestral population with either short- or long-range linkage disequilibrium (LD). In eight scenarios differing in relatedness of the training and prediction sets and in the types of data used to calculate the relationship matrix (QTL, SNPs, tag markers, and pedigree), we investigated the prediction accuracy (PA) of Genomic best linear unbiased prediction (GBLUP) and analyzed contributions from pedigree relationships captured by SNP markers, as well as from cosegregation and ancestral LD between QTL and SNPs. The effects of training set size [Formula: see text] and marker density were also studied. Sampling few parents ([Formula: see text]) generates substantial sample LD that carries over into synthetics through cosegregation of alleles at linked loci. For fixed [Formula: see text], [Formula: see text] influences PA most strongly. If the training and prediction set are related, using [Formula: see text] parents yields high PA regardless of ancestral LD because SNPs capture pedigree relationships and Mendelian sampling through cosegregation. As [Formula: see text] increases, ancestral LD contributes more information, while other factors contribute less due to lower frequencies of closely related individuals. For unrelated prediction sets, only ancestral LD contributes information and accuracies were poor and highly variable for [Formula: see text] due to large sample LD. For large [Formula: see text], achieving moderate accuracy requires large [Formula: see text], long-range ancestral LD, and high marker density. Our approach for analyzing PA in synthetics provides new insights into the prospects of GP for many types of source populations encountered in plant breeding.

摘要

合成群体在数量遗传学研究和植物育种中发挥着重要作用,但很少有研究探讨基因组预测(GP)在这些群体中的应用。合成群体是通过少数亲本([公式:见正文])相互交配产生的,因此具有独特的遗传特性,这使得它们特别适合对影响GP准确性的因素进行系统研究。我们从具有短程或长程连锁不平衡(LD)的祖先群体中选取[公式:见正文]2至32个玉米(Zea mays L.)品系,在计算机上生成合成群体。在训练集和预测集的亲缘关系以及用于计算关系矩阵(QTL、SNP、标签标记和系谱)的数据类型不同的八种情况下,我们研究了基因组最佳线性无偏预测(GBLUP)的预测准确性(PA),并分析了SNP标记捕获的系谱关系以及QTL和SNP之间的共分离和祖先LD的贡献。还研究了训练集大小[公式:见正文]和标记密度效应。对少数亲本([公式:见正文])进行抽样会产生大量的样本LD,这些LD通过连锁位点上等位基因的共分离传递到合成群体中。对于固定的[公式:见正文],[公式:见正文]对PA的影响最为强烈。如果训练集和预测集相关,无论祖先LD如何,使用[公式:见正文]个亲本都会产生较高的PA,因为SNP通过共分离捕获系谱关系和孟德尔抽样。随着[公式:见正文]的增加,祖先LD贡献的信息更多,而由于亲缘关系密切的个体频率较低,其他因素贡献的信息较少。对于不相关的预测集,只有祖先LD贡献信息,并且由于样本LD较大,对于[公式:见正文],准确性较差且高度可变。对于较大的[公式:见正文],要达到中等准确性需要较大的[公式:见正文]、长程祖先LD和高标记密度。我们分析合成群体中PA的方法为植物育种中遇到的许多类型源群体的GP前景提供了新的见解。

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