GeneCology Research Centre, University of the Sunshine Coast, 90 Sippy Downs Dr., Sippy Downs QLD 4556, Australia.
Northern National Broodstock Centre for Mariculture, RIA1, Catba Islands, Hai Phong 180000, Vietnam.
Genes (Basel). 2021 Feb 1;12(2):210. doi: 10.3390/genes12020210.
Genomic selection has been widely used in terrestrial animals but has had limited application in aquaculture due to relatively high genotyping costs. Genomic information has an important role in improving the prediction accuracy of breeding values, especially for traits that are difficult or expensive to measure. The purposes of this study were to further evaluate the use of genomic information to improve prediction accuracies of breeding values from, compare different prediction methods (BayesA, BayesCπ and GBLUP) on prediction accuracies in our field data, and investigate the effects of different SNP marker densities on prediction accuracies of traits in the Portuguese oyster (). The traits studied are all of economic importance and included morphometric traits (shell length, shell width, shell depth, shell weight), edibility traits (tenderness, taste, moisture content), and disease traits ( sp. and ). A total of 18,849 single nucleotide polymorphisms were obtained from genotyping by sequencing and used to estimate genetic parameters (heritability and genetic correlation) and the prediction accuracy of genomic selection for these traits. Multi-locus mixed model analysis indicated high estimates of heritability for edibility traits; 0.44 for moisture content, 0.59 for taste, and 0.72 for tenderness. The morphometric traits, shell length, shell width, shell depth and shell weight had estimated genomic heritabilities ranging from 0.28 to 0.55. The genomic heritabilities were relatively low for the disease related traits: sp. prevalence (0.11) and (0.10). Genomic correlations between whole weight and other morphometric traits were from moderate to high and positive (0.58-0.90). However, unfavourably positive genomic correlations were observed between whole weight and the disease traits (0.35-0.37). The genomic best linear unbiased prediction method (GBLUP) showed slightly higher accuracy for the traits studied (0.240-0.794) compared with both BayesA and BayesCπ methods but these differences were not significant. In addition, there is a large potential for using low-density SNP markers for genomic selection in this population at a number of 3000 SNPs. Therefore, there is the prospect to improve morphometric, edibility and disease related traits using genomic information in this species.
基因组选择已广泛应用于陆地动物,但由于基因分型成本相对较高,在水产养殖中的应用有限。基因组信息在提高育种值预测准确性方面起着重要作用,尤其是对于那些难以或昂贵测量的性状。本研究的目的是进一步评估利用基因组信息来提高育种值预测准确性,比较不同预测方法(BayesA、BayesCπ和 GBLUP)在我们现场数据中的预测准确性,并研究不同 SNP 标记密度对葡萄牙牡蛎()性状预测准确性的影响。研究的性状均具有经济重要性,包括形态性状(壳长、壳宽、壳深、壳重)、可食用性状(嫩度、口感、水分含量)和疾病性状( sp. 和 )。共从测序基因分型中获得 18849 个单核苷酸多态性,用于估计这些性状的遗传参数(遗传力和遗传相关)和基因组选择的预测准确性。多基因混合模型分析表明,可食用性状的遗传力估计值较高;水分含量为 0.44,口感为 0.59,嫩度为 0.72。形态性状,壳长、壳宽、壳深和壳重的基因组遗传力估计值范围为 0.28 至 0.55。与疾病相关的性状, sp. 患病率(0.11)和 (0.10)的基因组遗传力相对较低。全重与其他形态性状之间的基因组相关性从中等到高度且为正相关(0.58-0.90)。然而,全重与疾病性状之间观察到不利的正基因组相关性(0.35-0.37)。基因组最佳线性无偏预测方法(GBLUP)显示,与 BayesA 和 BayesCπ方法相比,研究性状的准确性略高(0.240-0.794),但这些差异并不显著。此外,在该群体中使用 3000 个 SNP 的低密度 SNP 标记进行基因组选择具有很大的潜力。因此,利用该物种的基因组信息有望改善形态、可食用和疾病相关性状。