首页> 外文期刊>Animal Genetics >Use of locally weighted scatterplot smoothing (LOWESS) regression to study selection signatures in Piedmontese and Italian Brown cattle breeds.
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Use of locally weighted scatterplot smoothing (LOWESS) regression to study selection signatures in Piedmontese and Italian Brown cattle breeds.

机译:使用局部加权散点图平滑(LOWESS)回归研究皮埃蒙特和意大利布朗牛品种的选择特征。

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摘要

Selection is the major force affecting local levels of genetic variation in species. The availability of dense marker maps offers new opportunities for a detailed understanding of genetic diversity distribution across the animal genome. Over the last 50 years, cattle breeds have been subjected to intense artificial selection. Consequently, regions controlling traits of economic importance are expected to exhibit selection signatures. The fixation index (Fst) is an estimate of population differentiation, based on genetic polymorphism data, and it is calculated using the relationship between inbreeding and heterozygosity. In the present study, locally weighted scatterplot smoothing (LOWESS) regression and a control chart approach were used to investigate selection signatures in two cattle breeds with different production aptitudes (dairy and beef). Fst was calculated for 42 514 SNP marker loci distributed across the genome in 749 Italian Brown and 364 Piedmontese bulls. The statistical significance of Fst values was assessed using a control chart. The LOWESS technique was efficient in removing noise from the raw data and was able to highlight selection signatures in chromosomes known to harbour genes affecting dairy and beef traits. Examples include the peaks detected for BTA2 in the region where the myostatin gene is located and for BTA6 in the region harbouring the ABCG2 locus. Moreover, several loci not previously reported in cattle studies were detected.
机译:选择是影响物种遗传变异局部水平的主要力量。密集标记图的可用性为详细了解整个动物基因组中的遗传多样性分布提供了新的机会。在过去的50年中,对牛的品种进行了严格的人工选择。因此,控制经济重要性的地区有望表现出选择特征。固着指数(F st )是基于遗传多态性数据的种群分化估计,并使用近交与杂合性之间的关系计算得出。在本研究中,使用局部加权散点图平滑(LOWESS)回归和控制图方法研究了具有不同生产能力的两种牛(乳制品和牛肉)的选择特征。计算了749个意大利布朗公牛和364个皮埃蒙特公牛在整个基因组中分布的42 514个SNP标记基因座的F st 。使用控制图评估F st 值的统计显着性。 LOWESS技术可以有效地从原始数据中消除噪音,并且能够突出显示已知具有影响奶牛和牛肉性状的基因的染色体中的选择特征。实例包括在肌生长抑制素基因所在区域检测到的BTA2峰,在包含ABCG2基因座的区域检测到BTA6峰。此外,还发现了牛研究中先前未报道的几个基因座。

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