Université Paris-Saclay, INRAE, AgroParisTech, GABI, 78350, Jouy-en-Josas, France.
Department of Animal Science, University of the Free State, P.O. Box 339, Bloemfontein, 9300, South Africa.
Genet Sel Evol. 2022 Jun 11;54(1):43. doi: 10.1186/s12711-022-00735-5.
If not accounted for, genotype x environment (G×E) interactions can decrease the accuracy of genetic evaluations and the efficiency of breeding schemes. These interactions are reflected by genetic correlations between countries lower than 1. In countries that are characterized by a heterogeneity of production systems, they are also likely to exist within country, especially when production systems are diverse, as is the case in South Africa. We illustrate several alternative approaches to assess the existence of G×E interactions for production traits and age at first calving in Holsteins in South Africa. Data from 257,836 first lactation cows were used. First, phenotypes that were collected in different regions were considered as separate traits and various multivariate animal models were fitted to calculate the estimates of heritability for each region and the genetic correlations between them. Second, a random regression approach using long-term averages of climatic variables at the herd level in a reaction norm model, was used as an alternative way to account for G×E interactions. Genetic parameter estimates and goodness-of-fit measures were compared.
Genetic correlations between regions as low as 0.80 or even lower were found for production traits, which reflect strong G×E interactions within South Africa that can be linked to the production systems (pasture vs total mixed ration). A random regression model including average rainfall during several decades in the herd surroundings gave the best goodness-of-fit for production traits. This can be related to a preference for total mixed ration on farms with limited rainfall. For age at first calving, the best model was based on a random regression on maximum relative humidity and maximum temperature in summer.
Our results indicate that G×E interactions can be accounted for when genetic evaluations of production traits are performed in South Africa, by either considering production records in different regions as different correlated traits or using a reaction norm model based on herd management characteristics. From a statistical point of view, climatic variables such as average rainfall over a long period can be included in a random regression model as proxies of herd production systems and climate.
如果不考虑基因型与环境(G×E)的相互作用,可能会降低遗传评估的准确性和育种计划的效率。这些相互作用反映在国家之间的遗传相关系数低于 1。在生产系统具有异质性的国家,即使在一个国家内部,也可能存在这些相互作用,南非就是这种情况。我们举例说明了几种评估荷斯坦牛生产性状和首次产犊年龄在南非的 G×E 相互作用的替代方法。使用了 257836 头初产奶牛的数据。首先,将在不同地区收集的表型视为单独的性状,并拟合各种多变量动物模型来计算每个地区的遗传力估计值和它们之间的遗传相关系数。其次,使用基于群体水平的长期气候变量平均值的随机回归方法,在反应规范模型中作为考虑 G×E 相互作用的替代方法。比较了遗传参数估计值和拟合优度度量。
发现生产性状的地区间遗传相关系数低至 0.80,甚至更低,这反映了南非内部强烈的 G×E 相互作用,这可能与生产系统(牧场与全混合日粮)有关。一个包括几十年间群体周围平均降雨量的随机回归模型为生产性状提供了最佳的拟合优度。这可能与降雨量有限的农场对全混合日粮的偏好有关。对于首次产犊年龄,最佳模型是基于夏季最大相对湿度和最高温度的随机回归。
我们的研究结果表明,在南非进行生产性状的遗传评估时,可以通过将不同地区的生产记录视为不同的相关性状,或者使用基于群体管理特征的反应规范模型来考虑 G×E 相互作用。从统计学的角度来看,长时期的平均降雨量等气候变量可以作为群体生产系统和气候的代理变量纳入随机回归模型。