Bonfatti Valentina, Faggion Sara, Boschi Elena, Carnier Paolo
Department of Comparative Biomedicine and Food Science, University of Padova, Viale dell'Università 16, 35020 Legnaro, Italy.
Animals (Basel). 2022 Mar 23;12(7):814. doi: 10.3390/ani12070814.
Selection to reduce ham weight losses during dry-curing (WL) requires individual traceability of hams throughout dry-curing, with high phenotyping costs and long generation intervals. Infrared spectroscopy enables cost-effective, high-throughput phenotyping for WL 24 h after slaughter. Direct genomic values (DGV) of crossbred pigs and their purebred sires were estimated, for observed (OB) and infrared-predicted WL (IR), through models developed from 640 and 956 crossbred pigs, respectively. Five Bayesian models and two pseudo-phenotypes (estimated breeding value, EBV, and adjusted phenotype) were tested in random cross-validation and leave-one-family-out validation. The use of EBV as pseudo-phenotypes resulted in the highest accuracies. Accuracies in leave-one-family-out validation were much lower than those obtained in random cross-validation but still satisfactory and very similar for both traits. For sires in the leave-one-family-out validation scenario, the correlation between the DGV for IR and EBV for OB was slightly lower (0.32) than the correlation between the DGV for OB and EBV for OB (0.38). While genomic prediction of OB and IR can be equally suggested to be incorporated in future selection programs aiming at reducing WL, the use of IR enables an early, cost-effective phenotyping, favoring the construction of larger reference populations, with accuracies comparable to those achievable using OB phenotype.
为了减少干腌过程中火腿的重量损失(WL),需要在整个干腌过程中对火腿进行个体可追溯性跟踪,这会带来高昂的表型分析成本和较长的世代间隔。红外光谱技术能够在屠宰后24小时对WL进行经济高效的高通量表型分析。通过分别基于640头和956头杂交猪建立的模型,估计了杂交猪及其纯种父本的直接基因组值(DGV),用于观察到的(OB)和红外预测的WL(IR)。在随机交叉验证和留一家庭验证中测试了五个贝叶斯模型和两种伪表型(估计育种值,EBV,和调整后的表型)。使用EBV作为伪表型可获得最高的准确性。留一家庭验证中的准确性远低于随机交叉验证中的准确性,但对于这两个性状来说仍然令人满意且非常相似。在留一家庭验证场景中,对于父本,IR的DGV与OB的EBV之间的相关性略低于OB的DGV与OB的EBV之间的相关性(0.32对0.38)。虽然可以同样建议将OB和IR的基因组预测纳入未来旨在减少WL的选择计划中,但使用IR能够进行早期、经济高效的表型分析,有利于构建更大的参考群体,其准确性与使用OB表型所能达到的准确性相当。