Pacheco Hendyel A, Rossoni Attilio, Cecchinato Alessio, Peñagaricano Francisco
Department of Animal and Dairy Sciences, University of Wisconsin-Madison, Madison, WI 53706.
Italian Brown Breeders Association, Bussolengo, Verona 37012, Italy.
JDS Commun. 2024 Apr 20;5(6):568-571. doi: 10.3168/jdsc.2023-0533. eCollection 2024 Nov.
Bull fertility has been recognized as an important factor affecting dairy herd fertility. The objective of this study was to assess the feasibility of predicting male fertility in Brown Swiss cattle using genomic data. The dataset consisted of 1,102 Italian Brown Swiss bulls with sire conception rate (SCR) records and genotype data for roughly 480k SNP. The analyses included the use of linear kernel-based regression models fitting all SNPs or incorporating markers with large effect. Predictive performance was evaluated in 5-fold cross-validation using the correlation between observed and predicted SCR values and mean squared error of prediction. The entire SNP set exhibited predictive correlations around 0.19. Interestingly, the inclusion of 2 markers with large effect yielded predictive correlations around 0.32. Overall, using linear kernel-based models fitting markers with large effect is a promising approach. Our findings could help Brown Swiss breeders make enhanced genome-guided management and selection decisions on male fertility.
公牛繁殖力一直被认为是影响奶牛群体繁殖力的一个重要因素。本研究的目的是评估利用基因组数据预测瑞士褐牛雄性繁殖力的可行性。数据集包括1102头具有父系受胎率(SCR)记录和大约48万个单核苷酸多态性(SNP)基因型数据的意大利瑞士褐牛公牛。分析包括使用基于线性核的回归模型,拟合所有SNP或纳入具有大效应的标记。在5折交叉验证中,使用观察到的和预测的SCR值之间的相关性以及预测的均方误差来评估预测性能。整个SNP集显示出约为0.19的预测相关性。有趣的是,纳入2个具有大效应的标记产生了约为0.32的预测相关性。总体而言,使用基于线性核的模型拟合具有大效应的标记是一种有前景的方法。我们的研究结果可以帮助瑞士褐牛育种者在雄性繁殖力方面做出更好的基因组指导管理和选择决策。