Cervantes Isabel, Gutiérrez Juan Pablo, García-Ballesteros Silvia, Varona Luis
Departamento de Producción Animal, Universidad Complutense de Madrid, Avda. Puerta de Hierro s/n, E-28040 Madrid, Spain.
Departamento de Mejora Genética Animal, Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria, E-28040 Madrid, Spain.
Animals (Basel). 2020 Jun 22;10(6):1075. doi: 10.3390/ani10061075.
The racing time and rank at finish traits are commonly used for endurance horse breeding programs as a measure of their performance. Even so, given the nature of endurance competitions, many horses do not finish the race. However, the exclusion of non placed horses from the dataset could have an influence on the prediction of individual breeding values. The objective of the present paper was to develop a multitrait model including race time (T), rank (R) and placing (P), with different methodologies, to improve the genetic evaluation in endurance competitions in Spain. The database contained 6135 records from 1419 horses, with 35% of the records not placed. Horse pedigree included 10868 animals, with 52% Arab Horses. All models included gender, age and race effect as systematic effects and combined different random effects beside the animal and residual effects: rider, permanent environmental effect, and interaction horse-rider. The kilometers per race was included as a covariate for T. Heritabilities were estimated as moderately low, ranging from 0.06 to 0.14 for T, 0.09 to 0.15 for P, and 0.07 to 0.17 for R, depending on the model. T and R appeared mostly as inverse measures of the same trait due to their high genetic correlation, suggesting that T can be ignored in future genetic evaluations. P was the most independent trait from the genetic correlations. The possibility of simultaneously processing the threshold, Thurstonian and continuous traits has opened new opportunities for genetic evaluation in horse populations, and much more practical genetic evaluations can be done to help a proper genetic selection.
比赛用时和完赛排名性状通常用于耐力赛马育种计划,作为衡量其性能的指标。即便如此,鉴于耐力赛的性质,许多马匹无法完成比赛。然而,将未获得名次的马匹从数据集中排除可能会影响个体育种值的预测。本文的目的是开发一个多性状模型,包括比赛用时(T)、排名(R)和名次(P),采用不同方法,以改进西班牙耐力赛中的遗传评估。数据库包含来自1419匹马的6135条记录,其中35%的记录未获得名次。马的谱系包括10868只动物,其中52%是阿拉伯马。所有模型都将性别、年龄和比赛效应作为系统效应,并除了动物效应和残差效应外,还组合了不同的随机效应:骑手、永久环境效应以及马-骑手交互效应。每场比赛的公里数作为T的协变量纳入。遗传力估计为中等偏低,根据模型不同,T的遗传力范围为0.06至0.14,P为0.09至0.15,R为0.07至0.17。由于T和R的遗传相关性较高,它们大多表现为同一性状的反向度量,这表明在未来的遗传评估中可以忽略T。P是遗传相关性方面最独立的性状。同时处理阈值性状、瑟斯顿性状和连续性状的可能性为马种群的遗传评估开辟了新机会,并且可以进行更实际的遗传评估以帮助进行适当的遗传选择。