State Key Laboratory of Animal Biotech Breeding, National Engineering Laboratory of Animal Breeding, Key Laboratory of Animal Genetics, Breeding and Reproduction, College of Animal Science and Technology, China Agricultural University, Beijing, 100193, China; Wageningen University & Research, Animal Breeding and Genomics, 6700 AH Wageningen, the Netherlands; Wageningen University & Research, Animal Production Systems, 6700 AH Wageningen, the Netherlands.
Department of Comparative Biomedicine and Food Science, University of Padova, Legnaro, 35020, Italy.
J Dairy Sci. 2024 Nov;107(11):9415-9425. doi: 10.3168/jds.2023-24621. Epub 2024 May 31.
Accurate and ex-ante prediction of cows' likelihood of conception (LC) based on milk composition information could improve reproduction management on dairy farms. Milk composition is already routinely measured by mid-infrared (MIR) spectra, which are known to change with advancing stages of pregnancy. For lactating cows, MIR spectra may also be used for predicting the LC. Our objectives were to classify the LC at first insemination using milk MIR spectra data collected from calving to first insemination and to identify the spectral regions that contribute the most to the prediction of LC at first insemination. After quality control, 4,866 MIR spectra, milk production, and reproduction records from 3,451 Holstein cows were used. The classification accuracy and area under the curve (AUC) of 6 models comprising different predictors and 3 machine learning methods were estimated and compared. The results showed that partial least square discriminant analysis (PLS-DA) and random forest had higher prediction accuracies than logistic regression. The classification accuracy of good and poor LC cows and AUC in herd-by-herd validation of the best model were 76.35% ± 10.60% and 0.77 ± 0.11, respectively. All wavenumbers with values of variable importance in the projection higher than 1.00 in PLS-DA belonged to 3 spectral regions, namely from 1,003 to 1,189, 1,794 to 2,260, and 2,300 to 2,660 cm. In conclusion, the model can predict LC in dairy cows from a high productive TMR system before insemination with a relatively good accuracy, allowing farmers to intervene in advance or adjust the insemination schedule for cows with a poor predicted LC.
基于牛奶成分信息准确地预测奶牛的受胎率(LC),可以改善奶牛场的繁殖管理。牛奶成分已经通过中红外(MIR)光谱常规测量,并且已知其随着妊娠阶段的推进而变化。对于泌乳奶牛,MIR 光谱也可用于预测 LC。我们的目标是使用从分娩到第一次配种期间收集的牛奶 MIR 光谱数据对第一次配种时的 LC 进行分类,并确定对首次配种时 LC 预测贡献最大的光谱区域。经过质量控制,使用了来自 3451 头荷斯坦奶牛的 4866 个 MIR 光谱、牛奶产量和繁殖记录。估计并比较了 6 种包含不同预测因子和 3 种机器学习方法的模型的分类准确率和曲线下面积(AUC)。结果表明,偏最小二乘判别分析(PLS-DA)和随机森林的预测准确率高于逻辑回归。最佳模型在群体内验证时,好和差 LC 奶牛的分类准确率和 AUC 分别为 76.35%±10.60%和 0.77±0.11。PLS-DA 中变量重要性投影值大于 1.00 的所有波数均属于 3 个光谱区域,即 1003 至 1189、1794 至 2260 和 2300 至 2660cm。总之,该模型可以在配种前从高生产力的 TMR 系统中预测奶牛的 LC,具有相对较高的准确性,使农民能够提前干预或调整预测 LC 较差的奶牛的配种计划。