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使用单步基因组最佳线性无偏预测器来加强对猪因热应激造成的季节性损失的缓解。

Using single-step genomic best linear unbiased predictor to enhance the mitigation of seasonal losses due to heat stress in pigs.

作者信息

Fragomeni B O, Lourenco D A L, Tsuruta S, Bradford H L, Gray K A, Huang Y, Misztal I

出版信息

J Anim Sci. 2016 Dec;94(12):5004-5013. doi: 10.2527/jas.2016-0820.

Abstract

The purposes of this study were to analyze the impact of seasonal losses due to heat stress in pigs from different breeds raised in different environments and to evaluate the accuracy improvement from adding genomic information to genetic evaluations. Data were available for 2 different swine populations: purebred Duroc animals raised in Texas and North Carolina and commercial crosses of Duroc and F females (Landrace × Large White) raised in Missouri and North Carolina; pedigrees provided links for animals from different states. Pedigree information was available for 553,442 animals, of which 8,232 pure breeds were genotyped. Traits were BW at 170 d for purebred animals and HCW for crossbred animals. Analyses were done with an animal model as either single- or 2-trait models using phenotypes measured in different states as separate traits. Additionally, reaction norm models were fitted for 1 or 2 traits using heat load index as a covariable. Heat load was calculated as temperature-humidity index greater than 70 and was averaged over 30 d prior to data collection. Variance components were estimated with average information REML, and EBV and genomic EBV (GEBV) with BLUP or single-step genomic BLUP (ssGBLUP). Validation was assessed for 146 genotyped sires with progeny in the last generation. Accuracy was calculated as a correlation between EBV and GEBV using reduced data (all animals, except the last generation) and using complete data. Heritability estimates for purebred animals were similar across states (varying from 0.23 to 0.26), and reaction norm models did not show evidence of a heat stress effect. Genetic correlations between states for heat loads were always strong (>0.91). For crossbred animals, no differences in heritability were found in single- or 2-trait analysis (from 0.17 to 0.18), and genetic correlations between states were moderate (0.43). In the reaction norm for crossbreeds, heritabilities ranged from 0.15 to 0.30 and genetic correlations between heat loads were as weak as 0.36, with heat load ranging from 0 to 12. Accuracies with ssGBLUP were, on average, 25% greater than with BLUP. Accuracies were greater in 2-trait reaction norm models and at extreme heat load values. Impacts of seasonality are evident only for crossbred animals. Genomic information can help producers mitigate heat stress in swine by identifying superior sires that are more resistant to heat stress.

摘要

本研究的目的是分析在不同环境中饲养的不同品种猪因热应激造成的季节性损失影响,并评估在遗传评估中添加基因组信息后准确性的提高。有来自2个不同猪群的数据:在得克萨斯州和北卡罗来纳州饲养的纯种杜洛克猪,以及在密苏里州和北卡罗来纳州饲养的杜洛克与F系母猪(长白猪×大白猪)的商业杂交猪;系谱为来自不同州的动物提供了联系。有553,442头动物的系谱信息,其中8232头纯种进行了基因分型。纯种动物的性状是170日龄时的体重,杂交动物的性状是胴体重量。分析采用动物模型,作为单性状或双性状模型,将在不同州测量的表型作为单独性状。此外,使用热负荷指数作为协变量,对1个或2个性状拟合反应规范模型。热负荷计算为温度 - 湿度指数大于70,并在数据收集前30天进行平均。使用平均信息REML估计方差成分,使用BLUP或单步基因组BLUP(ssGBLUP)估计EBV和基因组EBV(GEBV)。对146头有最后一代后代的基因分型种公猪进行了验证评估。准确性计算为使用简化数据(除最后一代外的所有动物)和完整数据时EBV与GEBV之间的相关性。纯种动物的遗传力估计在不同州相似(从0.23到0.26不等),反应规范模型未显示热应激效应的证据。不同州热负荷之间的遗传相关性始终很强(>0.91)。对于杂交动物,单性状或双性状分析中未发现遗传力差异(从0.17到0.18),不同州之间的遗传相关性为中等(0.43)。在杂交种的反应规范中,遗传力范围为0.15至0.30,热负荷之间的遗传相关性低至0.36,热负荷范围为0至12。使用ssGBLUP的准确性平均比使用BLUP高25%。在双性状反应规范模型和极端热负荷值下准确性更高。季节性影响仅在杂交动物中明显。基因组信息可以帮助生产者通过识别对热应激更具抗性的优良种公猪来减轻猪的热应激。

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