Tarrés J, Liu Z, Ducrocq V, Reinhardt F, Reents R
Vereinigte Informationssysteme Tierhaltung w.v., Heideweg 1, 27283 Verden, Germany.
J Dairy Sci. 2007 Oct;90(10):4846-55. doi: 10.3168/jds.2007-0072.
A multitrait, multiple across-country evaluation (MT-MACE) model permitting a variable number of correlated traits per country allows international genetic evaluation models to more closely match national models. Before the MT-MACE evaluation can be applied, genetic (co)variance components within and across country must be estimated. An approximate REML algorithm for parameter estimation was developed and was validated via simulation. This method is based on the expectation maximization REML (EM-REML) algorithm. Because obtaining the inverse of co-efficient matrix is not usually feasible for large amounts of data, an algorithm using the multiple-trait effective daughter contribution (EDC) is proposed to provide approximate diagonal elements of the inverse matrix. The accuracy of the approximate EM-REML was tested with simulated data and compared with an average information REML (AI-REML) from available software. Two simulation studies were performed. First, data of 2 countries were simulated using a single-trait model. Estimates of across-country genetic correlations with the developed algorithm were unbiased and very precise. The precision, however, depended on the percentage of bulls with data in both countries. The results obtained with the approximate EM-REML software were very close to those obtained with the AI-REML software regarding estimated genetic correlations and bulls' estimated breeding values. The second simulation assumed a multiple trait model and the same number of traits, pedigree structure, EDC, and pattern of missing records as for actual observations for milk yield obtained from French and German national Holstein evaluations. As with the single-trait scenarios, the approximate EM-REML gave nearly unbiased and very precise estimates of within- and across-country genetic correlations. The results obtained in both simulation studies confirmed the suitability of the MT-MACE model and approximate EM-REML software in a wide range of situations. Even when the genetic trend was incorrectly estimated by the national evaluations, a joint analysis including a time effect in the MT-MACE model adequately corrected for this bias.
一种多性状、多国评估(MT-MACE)模型允许每个国家的相关性状数量可变,使国际遗传评估模型能更紧密地匹配国家模型。在应用MT-MACE评估之前,必须估计国家内部和国家之间的遗传(协)方差成分。开发了一种用于参数估计的近似REML算法,并通过模拟进行了验证。该方法基于期望最大化REML(EM-REML)算法。由于对于大量数据,通常难以获得系数矩阵的逆矩阵,因此提出了一种使用多性状有效女儿贡献(EDC)的算法来提供逆矩阵的近似对角元素。用模拟数据测试了近似EM-REML的准确性,并与现有软件中的平均信息REML(AI-REML)进行了比较。进行了两项模拟研究。首先,使用单性状模型模拟了两个国家的数据。用所开发算法估计的跨国遗传相关性是无偏的且非常精确。然而,精度取决于两个国家都有数据的公牛的百分比。在估计遗传相关性和公牛的估计育种值方面,近似EM-REML软件得到的结果与AI-REML软件得到的结果非常接近。第二项模拟假设了一个多性状模型,其性状数量、系谱结构、EDC以及缺失记录模式与从法国和德国全国荷斯坦评估中获得的实际产奶量观测值相同。与单性状情况一样,近似EM-REML对国家内部和跨国遗传相关性给出了几乎无偏且非常精确的估计。两项模拟研究的结果都证实了MT-MACE模型和近似EM-REML软件在广泛情况下的适用性。即使国家评估错误地估计了遗传趋势,在MT-MACE模型中包含时间效应的联合分析也能充分校正这种偏差。