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Evaluation of statistical models for genetic analysis of challenge test data on furunculosis resistance in Atlantic salmon (Salmo salar): prediction of field survival.

机译:对大西洋鲑(Salmo salar)的糠un菌抗性挑战测试数据进行遗传分析的统计模型的统计模型评估:田间存活率的预测。

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Challenge test data of Atlantic salmon for survival to Aeromonas salmonicida infection were used in genetic analyses, by defining survival as either a binary trait (test period survival), repeated measures of a binary trait (test-day survival), or time until death. Test period survival was analysed by a linear and a threshold model, while a linear repeatability model was used for analysis of test-day survival, and a proportional hazards Weibull model was applied to time until death. The threshold and the proportional hazards models resulted in the highest heritabilities (0.59 and 0.63, respectively), while the lowest heritability was found for the linear repeatability test-day model (0.02). The different models were ranked according to their ability to predict full-sib family survival to disease outbreak in the field. All models proved to be good predictors, with correlations between predicted full-sib family effects from challenge test and full-sib family field survival ranging from 0.71 to 0.75. The linear repeatability model had the best predictive ability, followed by the cross-sectional threshold model, the Weibull frailty model, and the cross-sectional linear model. The Weibull frailty model was unable to include common environmental family effects in addition to additive genetic effects of sire and dam, possibly reducing the predictive ability of this model. However, a high Spearman correlation coefficient (0.98) was found between the predicted breeding values of the Weibull and the linear repeatability models, both defining survival as a longitudinal trait. If the endpoint of recording was set at 50% mortality, Spearman correlations among predicted breeding values from the different models were all very high (>0.98)..
机译:通过将生存定义为二元性状(测试期生存),重复测量二元性状(测试日生存)或直至死亡的时间,在遗传分析中使用了大西洋鲑对沙门氏菌感染生存的挑战测试数据。通过线性和阈值模型分析测试期生存期,同时使用线性重复性模型分析测试日生存期,并将比例风险威布尔模型应用于直至死亡的时间。阈值风险模型和比例风险模型导致最高的遗传力(分别为0.59和0.63),而线性重复性试验日模型的最低遗传力被发现(0.02)。根据不同模型预测野外同胞全系生存到疾病暴发的能力,对不同模型进行排名。事实证明,所有模型都是很好的预测指标,挑战测试预测的全同胞家庭效应与全同胞家庭野外生存之间的相关性介于0.71至0.75之间。线性可重复性模型具有最佳的预测能力,其次是横截面阈值模型,Weibull脆弱模型和横截面线性模型。 Weibull脆弱模型除了父项和大坝的附加遗传效应外,无法包括常见的环境家庭效应,可能会降低该模型的预测能力。然而,在威布尔的预测繁殖值与线性重复性模型之间发现了很高的Spearman相关系数(0.98),两者都将生存定义为纵向特征。如果记录的终点设置为死亡率的50%,则来自不同模型的预测育种值之间的Spearman相关性都非常高(> 0.98)。

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