Department of Agronomy, Food, Natural Resources, Animals and Environment, University of Padova, 35020 Legnaro (PD), Italy.
Magnetic Resonance Center (CERM) and Department of Chemistry "Ugo Schiff," University of Florence, 50019 Sesto Fiorentino, Italy; Consorzio Interuniversitario Risonanze Magnetiche Metallo Proteine (CIRMMP), 50019 Sesto Fiorentino, Italy.
J Dairy Sci. 2022 Nov;105(12):9702-9712. doi: 10.3168/jds.2022-22072. Epub 2022 Oct 26.
Effective traceability tools able to characterize milk from pasture are important to safeguard low-input farming systems, niche dairy products, and local traditions. The aims of the present study were to investigate the ability of proton nuclear magnetic resonance (H NMR) spectroscopy to discriminate between milk produced from cows before and after the beginning of the grazing season, and to assess the effects of grazing on milk metabolites. The research trial involved a single alpine holding with 72 lactating cows. Individual milks were repeatedly sampled from the same animals before (i.e., d -3 and -1) and after (i.e., d 2, 3, 7, 10, and 14) the onset of the grazing period. One-dimensional H NMR spectra of milk extracts were collected through a Bruker spectrometer. Random forest discriminant analysis was applied to H NMR spectra to predict the period of collection for each sample. Data concerning the relative abundance of milk metabolites were analyzed through a linear mixed model, which included the fixed effects of period of sampling, cow breed, stage of lactation, and parity, and the random effect of cow nested within breed. The random forest model exhibited great accuracy (93.1%) in discriminating between samples collected on d -3, -1, 2, and 3 and those collected on d 7, 10, and 14. Univariate analysis performed on the 40 detected metabolites highlighted that milk samples from pasture had lower levels of 14 compounds (with fumarate being the most depressed metabolite) and greater levels of 15 compounds (with methanol and hippurate being the most elevated metabolites). Results indicate that milk H NMR spectra are promising to identify milk produced in different conditions. Also, our study highlights that grazing is associated with significant changes of milk metabolic profile, suggesting the potential use of several metabolites as indicators of farm management.
能够对来自放牧奶牛的牛奶进行特征分析的有效可追溯性工具,对于保障低投入农业系统、特色乳制品和当地传统非常重要。本研究的目的是调查质子磁共振(1H NMR)光谱区分放牧前和放牧后奶牛牛奶的能力,并评估放牧对牛奶代谢物的影响。研究试验涉及一个单一的高山牧场,有 72 头泌乳奶牛。在放牧期开始前后(即 d-3 和-1 以及 d2、3、7、10 和 14),从同一动物身上反复采集个体牛奶。通过布鲁克光谱仪采集牛奶提取物的一维 1H NMR 光谱。随机森林判别分析应用于 1H NMR 光谱,以预测每个样品的采集时间。通过线性混合模型分析与牛奶代谢物相对丰度有关的数据,该模型包括采样期、奶牛品种、泌乳阶段和胎次的固定效应,以及品种内奶牛的随机效应。随机森林模型在区分 d-3、-1、2 和 3 采集的样品和 d7、10 和 14 采集的样品方面表现出很高的准确性(93.1%)。对 40 种检测到的代谢物进行的单变量分析表明,来自放牧的牛奶样品中 14 种化合物的水平较低(延胡索酸是受抑制最严重的代谢物),15 种化合物的水平较高(甲醇和马尿酸是受影响最显著的代谢物)。结果表明,牛奶 1H NMR 光谱可用于识别不同条件下生产的牛奶。此外,我们的研究还表明,放牧与牛奶代谢谱的显著变化有关,这表明可以将几种代谢物用作农场管理的指标。