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Correcting within-family pre-selection in genetic evaluation of growth A simulation study on rainbow trout

机译:在生长遗传评估中校正家庭内部预选虹鳟鱼的模拟研究

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Genetic improvement programs for some fish species apply a two-stage selection scheme in which phenotypic selection is first practiced within families based on early body size. Pre-selection improves genetic gain in the breeding objective traits correlated with the pre-selection criteria, and it can also reduce management costs of a program. In this study, stochastic simulation of a rainbow trout, Oncorhynchus mykiss, breeding scheme with 150 full-sib families (2:2 mating design) was utilized to explore how within-family pre-selection and different information on the culled fish affect variance estimates and accuracy of genetic evaluation in grow-out body weights. The bias in genetic parameters and breeding values (EBVs) was quantified for fingerling weight at id-tagging (BW1), used as the criterion for pre-selection, and for two harvest weights recorded at the freshwater nucleus (BW2) and sea test station (BW2(sea)) in a split-family design. At tagging, fish from each full-sib family were either randomly sampled (R) or pre-selected, and the BW1 records of the culled fish were either individually measured (S + IND), augmented with the replicated family-specific averages of the culled fish (S + AVER), or were treated as missing (S-MIS). These four alternative data treatments were compared using a fixed initial family size of 100 individuals before tagging and two different pre-selection intensities (40% or 21% of fish per family selected). Variance estimates in Rand S + IND did not diverge from the simulated a priori values in either of the selection intensities studied. The strategy S + AVER resulted in unbiased genetic variance estimates but decreased the residual variance, especially for BW1 and BW2. The accuracy of EBVs was, nevertheless, equally high for R, S + IND and S + AVER, and these values did not essentially differ between the two selection intensities. For S-MIS, the variance estimates were strongly biased in each trait, and the EBV accuracies were, on average, lower than in the other three treatments. Common environment variances were consistently overestimated and residual variances underestimated, whereas genetic variances were biased in both directions depending on the trait and pre-selection intensity. Further, for S-MIS, frequent convergence problems occurred in the estimation of variance components. For fish breeding schemes applying within-family pre-selection, data augmentation for culled fish by their average values of BW1 will sufficiently control for selection bias in genetic evaluation of growth. For accurate estimation of variance components either random samples from families or individual records from all culled fish are preferable. (C) 2014 Elsevier B.V. All rights reserved.
机译:一些鱼类的遗传改良计划采用两阶段选择方案,其中首先根据早期个体大小在家庭中进行表型选择。预选可以提高与预选标准相关的育种目标性状的遗传增益,还可以降低程序的管理成本。在这项研究中,利用虹鳟鱼Oncorhynchus mykiss的随机模拟,采用150个全同胞科的繁殖方案(2:2交配设计)来探索家庭内的预选以及关于被淘汰鱼的不同信息如何影响方差估计体重的遗传评估的准确性和准确性。遗传参数和育种值(EBVs)的偏差被量化为id标记处的鱼种重量(BW1),用作预选标准,淡水核(BW2)和海试站记录的两次收获重量(BW2(sea))采用分户式设计。标记时,随机抽样(R)或预先选择每个同胞全家的鱼,并单独测量(S + IND)选出被淘汰鱼的BW1记录,并用复制的特定于家的平均值进行补充。剔除鱼类(S + AVER),或被视为缺失(S-MIS)。使用标记之前固定的100个原始家庭规模和两种不同的预选强度(每个选定家庭40%或21%的鱼类),对这四种替代数据处理进行了比较。在研究的两种选择强度中,Rand S + IND的方差估计均与模拟的先验值无差异。策略S + AVER导致无偏的遗传方差估计,但减少了残留方差,尤其是对于BW1和BW2。但是,对于R,S + IND和S + AVER来说,EBV的准确性同样很高,并且两个选择强度之间的这些值基本上没有差异。对于S-MIS,每个特征的方差估计存在很大偏差,并且EBV准确性平均低于其他三种治疗方法。共同环境的差异始终被高估,而剩余的差异却被低估,而遗传差异在两个方向上均受性状和预选强度的影响。此外,对于S-MIS,在方差分量的估计中经常出现收敛问题。对于采用家庭内部预选的鱼类育种方案,通过其平均BW1值对被淘汰鱼的数据进行增强将足以控制生长遗传评估中的选择偏向。为了准确估计方差成分,最好是来自家庭的随机样本或来自所有淘汰鱼的个人记录。 (C)2014 Elsevier B.V.保留所有权利。

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    《Aquaculture 》 |2014年第null期| 共7页
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  • 中图分类 水产、渔业 ;
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