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Genomic Prediction Accuracy for Resistance Against Piscirickettsia salmonis in Farmed Rainbow Trout

机译:人工养殖虹鳟鱼抗鲑鱼的基因组预测准确性

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摘要

Salmonid rickettsial syndrome (SRS), caused by the intracellular bacterium Piscirickettsia salmonis, is one of the main diseases affecting rainbow trout (Oncorhynchus mykiss) farming. To accelerate genetic progress, genomic selection methods can be used as an effective approach to control the disease. The aims of this study were: (i) to compare the accuracy of estimated breeding values using pedigree-based best linear unbiased prediction (PBLUP) with genomic BLUP (GBLUP), single-step GBLUP (ssGBLUP), Bayes C, and Bayesian Lasso (LASSO); and (ii) to test the accuracy of genomic prediction and PBLUP using different marker densities (0.5, 3, 10, 20, and 27 K) for resistance against P. salmonis in rainbow trout. Phenotypes were recorded as number of days to death (DD) and binary survival (BS) from 2416 fish challenged with P. salmonis. A total of 1934 fish were genotyped using a 57 K single-nucleotide polymorphism (SNP) array. All genomic prediction methods achieved higher accuracies than PBLUP. The relative increase in accuracy for different genomic models ranged from 28 to 41% for both DD and BS at 27 K SNP. Between different genomic models, the highest relative increase in accuracy was obtained with Bayes C (∼40%), where 3 K SNP was enough to achieve a similar accuracy to that of the 27 K SNP for both traits. For resistance against P. salmonis in rainbow trout, we showed that genomic predictions using GBLUP, ssGBLUP, Bayes C, and LASSO can increase accuracy compared with PBLUP. Moreover, it is possible to use relatively low-density SNP panels for genomic prediction without compromising accuracy predictions for resistance against P. salmonis in rainbow trout.
机译:鲑鱼立克次氏体引起的鲑鱼立克次氏综合症(SRS)是影响虹鳟(Oncorhynchus mykiss)养殖的主要疾病之一。为了加速遗传进展,基因组选择方法可以用作控制疾病的有效方法。这项研究的目的是:(i)使用基于谱系的最佳线性无偏预测(PBLUP)与基因组BLUP(GBLUP),单步GBLUP(ssGBLUP),Bayes C和Bayesian Lasso比较估计育种值的准确性(套索); (ii)使用不同的标记密度(0.5、3、10、20和27 K)来测试虹鳟对鲑鱼的抗药性,以测试基因组预测和PBLUP的准确性。表型被记录为2416条受鲑鱼假单胞菌攻击的鱼的死亡天数(DD)和二元生存率(BS)。使用57 K单核苷酸多态性(SNP)阵列对1934条鱼进行基因分型。所有基因组预测方法都比PBLUP获得更高的准确性。 DD和BS在27 K SNP时,不同基因组模型的准确度相对增加范围从28%到41%。在不同的基因组模型之间,使用贝叶斯C可获得最高的相对准确度提高(〜40%),其中两个特征的3 K SNP足以达到与27 K SNP相似的准确度。对于彩虹鳟对鲑鱼的抗药性,我们表明,与PBLUP相比,使用GBLUP,ssGBLUP,Bayes C和LASSO进行基因组预测可以提高准确性。此外,可以使用相对低密度的SNP面板进行基因组预测,而不会影响对虹鳟鱼鲑鱼抗性的准确度预测。

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