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美国五个地区牛奶产量之间遗传协方差结构模型参数的贝叶斯估计。

Bayesian estimation of parameters of a structural model for genetic covariances between milk yield in five regions of the United States.

作者信息

Rekaya R, Weigel K A, Gianola D

机构信息

Department of Animal and Dairy Science, University of Georgia, Athens, GA 30602, USA.

出版信息

J Dairy Sci. 2003 May;86(5):1837-44. doi: 10.3168/jds.S0022-0302(03)73770-9.

DOI:10.3168/jds.S0022-0302(03)73770-9
PMID:12778595
Abstract

Inference about genetic covariance matrices using multiple-trait models is often hindered by lack of information. This leads to imprecise estimates of genetic parameters and of breeding values. Patterns in a genetic covariance matrix can be exploited to reduce the number of parameters and to increase quality of inferences. A structural model for genetic covariances was developed and fitted to milk yield data in five regions of the United States. This was compared with a standard multiple-trait analysis using a deviance information criterion, a measure of quality of fit. Data consisted of 3,465,334 Holstein first-lactation records from daughters of 43,755 sires in five regions of the United States (Midwest, Northeast, Northwest, Southeast, Southwest). Parameters of the structural model included an intercept and effects of measures of genetic and of management similarity on genetic covariances. Genetic similarity depended on the number of records contributed by sires that were common to a pair of regions. Management similarity was a function of the quantity of concentrate used to produce 1000 kg of milk in each pair of regions. The structural and the multiple-trait models gave similar estimates of genetic covariances, but the number of parameters was 8 in the former vs. 15 in the latter. Hence, estimates of genetic covariances were more precise with the structural model. A deviance information criterion suggested a slight superiority of the multiple-trait model, although probably within sampling error. For both models, genetic correlations between milk yield in five regions of the United States were larger than 0.93.

摘要

使用多性状模型推断遗传协方差矩阵往往因信息不足而受阻。这导致遗传参数和育种值的估计不准确。遗传协方差矩阵中的模式可被利用来减少参数数量并提高推断质量。开发了一种遗传协方差的结构模型,并将其应用于美国五个地区的牛奶产量数据。使用偏差信息准则(一种拟合优度的度量)将其与标准多性状分析进行比较。数据包括来自美国五个地区(中西部、东北部、西北部、东南部、西南部)43755头公牛女儿的3465334条荷斯坦牛第一胎记录。结构模型的参数包括一个截距以及遗传相似性和管理相似性度量对遗传协方差的影响。遗传相似性取决于一对地区共有的公牛贡献的记录数量。管理相似性是每对地区用于生产1000千克牛奶的浓缩饲料量的函数。结构模型和多性状模型给出的遗传协方差估计值相似,但前者的参数数量为8个,后者为15个。因此,结构模型对遗传协方差的估计更精确。偏差信息准则表明多性状模型略有优势,尽管可能在抽样误差范围内。对于这两种模型,美国五个地区牛奶产量之间的遗传相关性均大于0.93。

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