Université Clermont Auvergne, INRAE, VetAgro Sup, UMR 1213 Herbivores, F-63122 Saint-Genès-Champanelle, France.
Université Clermont Auvergne, INRAE, VetAgro Sup, UMR 1213 Herbivores, F-63122 Saint-Genès-Champanelle, France.
J Dairy Sci. 2021 Jan;104(1):112-125. doi: 10.3168/jds.2020-18468. Epub 2020 Nov 6.
The ability of mid-infrared spectroscopy (MIR) to predict indicators (1) of diet composition in dairy herds and (2) for the authentication of the cow feeding restrictions included in the specification of 2 Protected Designation of Origin (PDO) cheeses (Cantal and Laguiole) was tested on 7,607 bulk milk spectra from 1,355 farms located in the Massif Central area of France. For each milk sample, the corresponding cow diet composition data were obtained through on-farm surveys. The cow diet compositions varied largely (i.e., from full grazing for extensive farming systems to corn silage-based diets, which are typical of more intensive farming systems). Partial least square regression and discriminant analysis were used to predict the proportion of different feedstuffs in the cows' diets and to authenticate the cow feeding restrictions for the PDO cheese specifications, respectively. The groups for the discriminant analysis were created by dividing the data set according to the threshold of a specific feedstuff. They were issued based on the specifications of the restriction of the PDO cheese. The pasture proportion in the cows' diets was predicted by MIR with an coefficient of determination in external validation (RV) = 0.81 and a standard error of prediction of 11.7% dry matter. Pasture + hay, corn silage, conserved herbage, fermented forage, and total herbage proportion in the cows' diets were predicted with a RV >0.61 and a standard error of prediction <14.8. The discrimination models for pasture presence, pasture ≥50%, and pasture ≥57% in the cows' diets achieved an accuracy and specificity ≥90%. A sensitivity and precision ≥85% were also observed for the pasture proportion discrimination models, but both of these indexes decreased at increasing thresholds from 0 to 50, and 57% pasture in the cows' diets. An accuracy ≥80% was also observed for pasture + hay ≥72%, herbage ≥50%, pasture + hay ≥25%, absence of fermented herbage, absence of corn silage, and corn silage ≤30% in the cows' diets, but for several models, either the sensitivity or precision was lower than the accuracy. Models built on the simultaneous respect of all the criteria of the feeding restrictions of PDO cheese specifications achieved an accuracy, specificity, sensitivity, and precision >90%. Both the regression and discriminant MIR models for bulk milk can provide useful indicators of cow diet composition and PDO cheese specifications to producers and consumers (farmers, dairy plants).
中红外光谱(MIR)能够预测(1)奶牛群饮食成分指标和(2)用于验证 2 种受保护原产地名称(PDO)奶酪(Cantal 和 Laguiole)规范中包含的奶牛饲养限制,该能力已在法国中央高原地区的 1355 个农场的 7607 个牛奶样本上进行了测试。对于每个牛奶样本,通过农场调查获得相应的奶牛饮食组成数据。奶牛的饮食组成差异很大(即,从粗放养殖系统的完全放牧到玉米青贮饲料,这是更集约化养殖系统的典型饲料)。偏最小二乘回归和判别分析分别用于预测奶牛饮食中不同饲料的比例,并分别验证 PDO 奶酪规范的奶牛饲养限制。判别分析的组是根据特定饲料的阈值将数据集划分创建的。它们是根据 PDO 奶酪的限制规范发布的。MIR 可以预测奶牛饮食中的牧草比例,外部验证的决定系数(RV)为 0.81,预测误差为 11.7%干物质。通过 MIR 预测牧草+干草、玉米青贮、青贮饲料、发酵饲料和总牧草在奶牛饮食中的比例,RV>0.61,预测误差<14.8%。用于奶牛饮食中牧草存在、牧草≥50%和牧草≥57%的判别模型,准确率和特异性均≥90%。对于牧草比例判别模型,还观察到灵敏度和精度≥85%,但随着从 0 到 50 和 57%的牧草在奶牛饮食中阈值的增加,这两个指标均下降。对于牧草+干草≥72%、牧草≥50%、牧草+干草≥25%、不存在发酵饲料、不存在玉米青贮和玉米青贮≤30%的奶牛饮食,也观察到准确率≥80%,但对于某些模型,灵敏度或精度低于准确率。同时满足 PDO 奶酪规范的饲养限制所有标准的模型,准确率、特异性、灵敏度和精度均>90%。MIR 用于牛奶的回归和判别模型都可以为生产者和消费者(农民、乳品厂)提供有关奶牛饮食成分和 PDO 奶酪规范的有用指标。