Momen Mehdi, Mehrgardi Ahmad Ayatollahi, Sheikhy Ayoub, Esmailizadeh Ali, Fozi Masood Asadi, Kranis Andreas, Valente Bruno D, Rosa Guilherme J M, Gianola Daniel
Department of Animal Science, Faculty of Agriculture, Shahid Bahonar University of Kerman (SBUK), Kerman, Iran.
Department of Statistical, Faculty of Mathematic and Computer Science, Shahid Bahonar University of Kerman (SBUK), Kerman, Iran.
Genet Sel Evol. 2017 Feb 1;49(1):16. doi: 10.1186/s12711-017-0290-9.
Genomic selection has been successfully implemented in plant and animal breeding programs to shorten generation intervals and accelerate genetic progress per unit of time. In practice, genomic selection can be used to improve several correlated traits simultaneously via multiple-trait prediction, which exploits correlations between traits. However, few studies have explored multiple-trait genomic selection. Our aim was to infer genetic correlations between three traits measured in broiler chickens by exploring kinship matrices based on a linear combination of measures of pedigree and marker-based relatedness. A predictive assessment was used to gauge genetic correlations.
A multivariate genomic best linear unbiased prediction model was designed to combine information from pedigree and genome-wide markers in order to assess genetic correlations between three complex traits in chickens, i.e. body weight at 35 days of age (BW), ultrasound area of breast meat (BM) and hen-house egg production (HHP). A dataset with 1351 birds that were genotyped with the 600 K Affymetrix platform was used. A kinship kernel (K) was constructed as K = λ G + (1 - λ)A, where A is the numerator relationship matrix, measuring pedigree-based relatedness, and G is a genomic relationship matrix. The weight (λ) assigned to each source of information varied over the grid λ = (0, 0.2, 0.4, 0.6, 0.8, 1). Maximum likelihood estimates of heritability and genetic correlations were obtained at each λ, and the "optimum" λ was determined using cross-validation.
Estimates of genetic correlations were affected by the weight placed on the source of information used to build K. For example, the genetic correlation between BW-HHP and BM-HHP changed markedly when λ varied from 0 (only A used for measuring relatedness) to 1 (only genomic information used). As λ increased, predictive correlations (correlation between observed phenotypes and predicted breeding values) increased and mean-squared predictive error decreased. However, the improvement in predictive ability was not monotonic, with an optimum found at some 0 < λ < 1, i.e., when both sources of information were used together.
Our findings indicate that multiple-trait prediction may benefit from combining pedigree and marker information. Also, it appeared that expected correlated responses to selection computed from standard theory may differ from realized responses. The predictive assessment provided a metric for performance evaluation as well as a means for expressing uncertainty of outcomes of multiple-trait selection.
基因组选择已在植物和动物育种计划中成功实施,以缩短世代间隔并加快单位时间内的遗传进展。在实践中,基因组选择可通过多性状预测同时改善多个相关性状,该方法利用了性状之间的相关性。然而,很少有研究探索多性状基因组选择。我们的目的是通过基于系谱和基于标记的亲缘关系测量的线性组合来探索亲缘关系矩阵,从而推断肉鸡中测量的三个性状之间的遗传相关性。使用预测评估来衡量遗传相关性。
设计了一个多变量基因组最佳线性无偏预测模型,以结合系谱和全基因组标记的信息,从而评估鸡的三个复杂性状之间的遗传相关性,即35日龄体重(BW)、胸肉超声面积(BM)和鸡舍产蛋量(HHP)。使用了一个由1351只鸡组成的数据集,这些鸡使用600K Affymetrix平台进行了基因分型。构建了一个亲缘关系核(K),即K = λG + (1 - λ)A,其中A是分子亲缘关系矩阵,用于测量基于系谱的亲缘关系,G是基因组亲缘关系矩阵。分配给每个信息来源的权重(λ)在网格λ = (0, 0.2, 0.4, 0.6, 0.8, 1)上变化。在每个λ处获得遗传力和遗传相关性的最大似然估计,并使用交叉验证确定“最佳”λ。
遗传相关性估计受到用于构建K的信息来源权重的影响。例如,当λ从0(仅使用A测量亲缘关系)变化到1(仅使用基因组信息)时,BW - HHP和BM - HHP之间的遗传相关性发生了显著变化。随着λ的增加,预测相关性(观察到的表型与预测育种值之间的相关性)增加,平均预测误差平方减小。然而,预测能力的提高不是单调的,在0 < λ < 1的某个值处发现了最佳值,即当两种信息来源一起使用时。
我们的研究结果表明,多性状预测可能受益于结合系谱和标记信息。此外,从标准理论计算的预期选择相关反应似乎可能与实际反应不同。预测评估提供了一个性能评估指标,以及一种表达多性状选择结果不确定性的方法。