Jiang Yong, Schmidt Renate H, Reif Jochen C
Department of Breeding Research, Leibniz Institute of Plant Genetics and Crop Plant Research (IPK) Gatersleben, 06466 Stadt Seeland, Germany.
Department of Breeding Research, Leibniz Institute of Plant Genetics and Crop Plant Research (IPK) Gatersleben, 06466 Stadt Seeland, Germany
G3 (Bethesda). 2018 May 4;8(5):1687-1699. doi: 10.1534/g3.117.300548.
Genome-wide prediction approaches represent versatile tools for the analysis and prediction of complex traits. Mostly they rely on marker-based information, but scenarios have been reported in which models capitalizing on closely-linked markers that were combined into haplotypes outperformed marker-based models. Detailed comparisons were undertaken to reveal under which circumstances haplotype-based genome-wide prediction models are superior to marker-based models. Specifically, it was of interest to analyze whether and how haplotype-based models may take local epistatic effects between markers into account. Assuming that populations consisted of fully homozygous individuals, a marker-based model in which local epistatic effects inside haplotype blocks were exploited (LEGBLUP) was linearly transformable into a haplotype-based model (HGBLUP). This theoretical derivation formally revealed that haplotype-based genome-wide prediction models capitalize on local epistatic effects among markers. Simulation studies corroborated this finding. Due to its computational efficiency the HGBLUP model promises to be an interesting tool for studies in which ultra-high-density SNP data sets are studied. Applying the HGBLUP model to empirical data sets revealed higher prediction accuracies than for marker-based models for both traits studied using a mouse panel. In contrast, only a small subset of the traits analyzed in crop populations showed such a benefit. Cases in which higher prediction accuracies are observed for HGBLUP than for marker-based models are expected to be of immediate relevance for breeders, due to the tight linkage a beneficial haplotype will be preserved for many generations. In this respect the inheritance of local epistatic effects very much resembles the one of additive effects.
全基因组预测方法是分析和预测复杂性状的通用工具。它们大多依赖基于标记的信息,但也有报道称,利用紧密连锁标记组合成单倍型的模型优于基于标记的模型。进行了详细比较,以揭示在何种情况下基于单倍型的全基因组预测模型优于基于标记的模型。具体而言,分析基于单倍型的模型是否以及如何考虑标记间的局部上位效应很有意义。假设群体由完全纯合个体组成,利用单倍型块内局部上位效应的基于标记的模型(LEGBLUP)可线性转化为基于单倍型的模型(HGBLUP)。这一理论推导正式表明,基于单倍型的全基因组预测模型利用了标记间的局部上位效应。模拟研究证实了这一发现。由于其计算效率,HGBLUP模型有望成为研究超高密度SNP数据集的有趣工具。将HGBLUP模型应用于实证数据集表明,对于使用小鼠群体研究的两个性状,其预测准确性均高于基于标记的模型。相比之下,在作物群体中分析的性状只有一小部分显示出这种优势。由于有益单倍型的紧密连锁将在许多代中得以保留,因此对于育种者来说,观察到HGBLUP模型比基于标记的模型具有更高预测准确性的情况具有直接相关性。在这方面,局部上位效应的遗传与加性效应的遗传非常相似。