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Genomic selection in dairy cattle simulated populations

机译:奶牛模拟种群的基因组选择

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Genomic selection is arguably the most promising tool for improving genetic gain in domestic animals to emerge in the last few decades, but is an expensive process. The aim of this study was to evaluate the economic impact related to the implementation of genomic selection in a simulated dairy cattle population. The software QMSim was used to simulate genomic and phenotypic data. The simulated genome contained 30 chromosomes with 100 cm each, 1666 SNPs markers equally spread and 266 QTLs randomly designated for each chromosome. The numbers of markers and QTLs were designated according to information available from Animal QTL (http://www.animalge-nome.org/QTLdb) and Bovine QTL (http://bovineqtl.tamu.edu/). The allelic frequency changes were assigned in a gamma distribution with alpha parameters equal to 0-4. Recurrent mutation rates of 1 -0e~(-4) were assumed to apply to markers and QTLs. A historic population of 1000 individuals was generated and the total number of animals was reduced gradually along 850 generations until we obtained a number of 200 animals in the last generation, characterizing a bottleneck effect. Progenies were created along generations from random mating of the male and female gametes, assuming the same proportion of both genders. Than the population was extended for another 150 generations until we obtained 17 000 animals, with only 320 male individuals in the last generation. After this period a 25 year of selection was simulated taking into account a trait limited by sex with heritability of 0-30 (i.e. milk yield), one progeny/cow/year and variance equal to 1 -0. Annually, 320 bulls were mated with 16 000 dams, assuming a replacement rate of 60 and 40% for males and females, respectively. Selection and discard criteria were based in four strategies to obtain the EBVs assuming as breeding objective to maximize milk yield. The progeny replaced the discarded animals creating an overlapping generation structure. The selection strategies were: RS is selection based on random values; PS is selection based on phenotypic values; Blup is selection based on EBVs estimated by BLUP; and GEBV is selection based on genomic estimated breeding values in one step, using high (GBlup) and low (GBlupi) density panels. Results indicated that the genetic evaluation using the aid of genomic information could provide better genetic gain rates in dairy cattle breeding programs as well as reduce the average inbreeding coefficient in the population. The economic viability indicators showed that only Blup and GBIup/GBlupi strategies, the ones that used milk control and genetic evaluation were economic viable, considering a discount rate of 6-32% per year.
机译:基因组选择可以说是近几十年来提高家畜遗传增益的最有前途的工具,但这是一个昂贵的过程。这项研究的目的是评估与模拟奶牛种群中基因组选择的实施相关的经济影响。 QMSim软件用于模拟基因组和表型数据。模拟的基因组包含30条染色体,每条100 cm,均等分布的1666个SNPs标记和为每个染色体随机指定的266个QTL。根据可从Animal QTL(http://www.animalge-nome.org/QTLdb)和Bovine QTL(http://bovineqtl.tamu.edu/)获得的信息指定标记和QTL的数量。等位基因频率变化以伽马分布分配,α参数等于0-4。假定1 -0e〜(-4)的复发突变率适用于标记和QTL。产生了1000个历史种群,沿850代逐渐减少了动物总数,直到最后一代获得200只动物为止,这具有瓶颈效应。假定性别相同的比例,子代是由雄配子和雌配子随机交配产生的。人口再扩展了150代,直到我们获得了17,000只动物,最后一代只有320只雄性。在这段时间之后,模拟了25年的选择,考虑了受性别限制的性状,遗传度为0-30(即牛奶产量),一个子代/牛/年且方差等于1 -0。每年,假设公牛和母猪的替代率分别为60%和40%,则将320头公牛与1.6万只水坝交配。选择和丢弃标准基于四种策略来获得EBV,并以此作为育种目标以最大化牛奶产量。后代取代了废弃的动物,形成了重叠的世代结构。选择策略是:RS是基于随机值的选择; PS是基于表型值的选择; Blup是根据BLUP估计的EBV选择的; GEBV使用高密度(GBlup)和低密度(GBlupi)面板,一步一步根据基因组估计育种值进行选择。结果表明,利用基因组信息进行遗传评估可以提高奶牛育种计划的遗传增益,并降低种群的平均近交系数。经济可行性指标表明,仅考虑使用牛奶控制和基因评估的Blup和GBIup / GBlupi策略,在经济上可行,考虑每年贴现率为6-32%。

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