Institute for Genetics and Biometry, Leibniz Institute for Farm Animal Biology, Dummerstorf, Mecklenburg-Western Pomerania, Germany.
PLoS One. 2013 Aug 21;8(8):e70256. doi: 10.1371/journal.pone.0070256. eCollection 2013.
In this study the benefit of metabolome level analysis for the prediction of genetic value of three traditional milk traits was investigated. Our proposed approach consists of three steps: First, milk metabolite profiles are used to predict three traditional milk traits of 1,305 Holstein cows. Two regression methods, both enabling variable selection, are applied to identify important milk metabolites in this step. Second, the prediction of these important milk metabolite from single nucleotide polymorphisms (SNPs) enables the detection of SNPs with significant genetic effects. Finally, these SNPs are used to predict milk traits. The observed precision of predicted genetic values was compared to the results observed for the classical genotype-phenotype prediction using all SNPs or a reduced SNP subset (reduced classical approach). To enable a comparison between SNP subsets, a special invariable evaluation design was implemented. SNPs close to or within known quantitative trait loci (QTL) were determined. This enabled us to determine if detected important SNP subsets were enriched in these regions. The results show that our approach can lead to genetic value prediction, but requires less than 1% of the total amount of (40,317) SNPs., significantly more important SNPs in known QTL regions were detected using our approach compared to the reduced classical approach. Concluding, our approach allows a deeper insight into the associations between the different levels of the genotype-phenotype map (genotype-metabolome, metabolome-phenotype, genotype-phenotype).
在这项研究中,我们调查了代谢组水平分析在预测三种传统牛奶性状遗传值方面的益处。我们提出的方法包括三个步骤:首先,利用牛奶代谢物图谱预测 1305 头荷斯坦奶牛的三种传统牛奶性状。在这一步骤中,我们应用了两种回归方法,都能实现变量选择,以识别重要的牛奶代谢物。其次,这些重要的牛奶代谢物的 SNP 预测可以检测到具有显著遗传效应的 SNP。最后,这些 SNP 用于预测牛奶性状。观察到的预测遗传值的精度与使用所有 SNP 或减少的 SNP 子集(减少的经典方法)进行经典基因型-表型预测的结果进行了比较。为了能够在 SNP 子集中进行比较,我们实施了一个特殊的不变评价设计。确定了靠近或位于已知数量性状基因座 (QTL) 的 SNP。这使我们能够确定检测到的重要 SNP 子集是否在这些区域中富集。结果表明,我们的方法可以实现遗传值预测,但所需的 SNP 数量(40,317)不到总数量的 1%,与减少的经典方法相比,我们的方法在已知的 QTL 区域中检测到了更多更重要的 SNP。总之,我们的方法可以更深入地了解基因型-表型图谱(基因型-代谢组、代谢组-表型、基因型-表型)之间的关联。