Kuehn Larry A, Lewis Ronald M, Notter David R
Department of Animal and Poultry Sciences, Virginia Polytechnic Institute and State University, Blacksburg, Virginia 24061, USA.
Genet Sel Evol. 2007 May-Jun;39(3):225-47. doi: 10.1186/1297-9686-39-3-225. Epub 2007 Apr 14.
Comparing predicted breeding values (BV) among animals in different management units (e.g. flocks, herds) is challenging if units have different genetic means. Unbiased estimates of differences in BV may be obtained by assigning base animals to genetic groups according to their unit of origin, but units must be connected to estimate group effects. If many small groups exist, error of BV prediction may be increased. Alternatively, genetic groups can be excluded from the statistical model, which may bias BV predictions. If adequate genetic connections exist among units, bias is reduced. Several measures of connectedness have been proposed, but their relationships to potential bias in BV predictions are not well defined. This study compares alternative strategies to connect small units and assesses the ability of different connectedness statistics to quantify potential bias in BV prediction. Connections established using common sires across units were most effective in reducing bias. The coefficient of determination of the mean difference in predicted BV was a perfect indicator of potential bias remaining when comparing individuals in separate units. However, this measure is difficult to calculate; correlated measures such as prediction errors of differences in unit means and correlations among prediction errors are suggested as practical alternatives.
如果不同管理单元(如禽群、畜群)的遗传均值不同,那么比较这些单元中动物的预测育种值(BV)具有挑战性。通过根据基础动物的来源单元将其分配到遗传组中,可以获得BV差异的无偏估计,但各单元必须相互关联才能估计组效应。如果存在许多小群体,BV预测的误差可能会增加。或者,可以将遗传组从统计模型中排除,这可能会使BV预测产生偏差。如果各单元之间存在足够的遗传关联,则偏差会减小。已经提出了几种连通性度量方法,但它们与BV预测中潜在偏差的关系尚未明确界定。本研究比较了连接小单元的替代策略,并评估了不同连通性统计量量化BV预测中潜在偏差的能力。通过跨单元使用共同父系建立的连接在减少偏差方面最为有效。预测BV平均差异的决定系数是比较不同单元中个体时剩余潜在偏差的完美指标。然而,该度量难以计算;建议使用相关度量,如单元均值差异的预测误差和预测误差之间的相关性,作为实际替代方法。