AquaGen AS, P,O, Box 1240, Sluppen, NO-7462 Trondheim, Norway.
Genet Sel Evol. 2014 Jan 20;46(1):3. doi: 10.1186/1297-9686-46-3.
Genomic selection methods require dense and widespread genotyping data, posing a particular challenge if both sexes are subject to intense selection (e.g., aquaculture species). This study focuses on alternative low-cost genomic selection methods (IBD-GS) that use selective genotyping with sparse marker panels to estimate identity-by-descent relationships through linkage analysis. Our aim was to evaluate the potential of these methods in selection programs for continuous traits measured on sibs of selection candidates in a typical aquaculture breeding population.
Phenotypic and genomic data were generated by stochastic simulation, assuming low to moderate heritabilities (0.10 to 0.30) for a Gaussian trait measured on sibs of the selection candidates in a typical aquaculture breeding population that consisted of 100 families (100 training animals and 20 selection candidates per family). Low-density marker genotype data (~ 40 markers per Morgan) were used to trace genomic identity-by-descent relationships. Genotyping was restricted to selection candidates from 30 phenotypically top-ranking families and varying fractions of their phenotypically extreme training sibs. All phenotypes were included in the genetic analyses. Classical pedigree-based and IBD-GS models were compared based on realized genetic gain over one generation of selection.
Genetic gain increased substantially (13 to 32%) with IBD-GS compared to classical selection and was greatest with higher heritability. Most of the extra gain from IBD-GS was obtained already by genotyping the 5% phenotypically most extreme sibs within the pre-selected families. Additional genotyping further increased genetic gains, but these were small when going from genotyping 20% of the extremes to all phenotyped sibs. The success of IBD-GS with sparse and selective genotyping can be explained by the fact that within-family haplotype blocks are accurately traced even with low-marker densities and that most of the within-family variance for normally distributed traits is captured by a small proportion of the phenotypically extreme sibs.
IBD-GS was substantially more effective than classical selection, even when based on very few markers and combined with selective genotyping of small fractions of the population. The study shows that low-cost GS programs can be successful by combining sparse and selective genotyping with pedigree and linkage information.
基因组选择方法需要密集且广泛的基因分型数据,如果两性都受到强烈选择(例如,水产养殖物种),则会带来特殊的挑战。本研究关注替代的低成本基因组选择方法(IBD-GS),该方法使用选择性基因分型和稀疏标记面板,通过连锁分析估计亲缘关系。我们的目的是评估这些方法在水产养殖典型育种群体中,对候选选择个体的同窝个体连续性状的选择计划中的潜力。
通过随机模拟生成表型和基因组数据,假设在典型水产养殖育种群体中,候选选择个体的同窝个体的正态性状具有低到中等的遗传力(0.10 到 0.30),该群体由 100 个家系组成(每个家系 100 个训练动物和 20 个选择候选)。使用低密度标记基因型数据(每个摩根 40 个标记左右)来追踪基因组的亲缘关系。基因分型仅限于 30 个表型排名最高的家系中的选择候选个体及其表型极端的训练同窝个体的不同部分。所有表型均包含在遗传分析中。基于实现的遗传增益,比较了经典的基于系谱的和 IBD-GS 模型,增益跨越一代的选择。
与经典选择相比,IBD-GS 使遗传增益显著增加(13%至 32%),并且遗传力越高,增益越大。通过对预选家系中表型最极端的 5%同窝个体进行基因分型,IBD-GS 获得了大部分额外增益。通过对 20%的极端个体进行基因分型来进一步增加遗传增益,但当从对 20%的极端个体进行基因分型增加到对所有表型个体进行基因分型时,增益增加很小。IBD-GS 利用稀疏和选择性基因分型的成功可以解释为,即使在低标记密度下,家系内的单倍型块也能准确追踪,并且对于正态分布性状的家系内方差,仅通过一小部分表型极端的同窝个体即可捕获。
即使使用很少的标记,并且结合对群体的小部分进行选择性基因分型,IBD-GS 也比经典选择更为有效。本研究表明,通过将稀疏和选择性基因分型与系谱和连锁信息相结合,可以成功实施低成本的 GS 计划。