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牛奶样品的傅里叶变换红外光谱分析作为评估泌乳奶牛能量平衡、能量和干物质摄入量的工具。

Fourier transform infrared spectroscopy of milk samples as a tool to estimate energy balance, energy- and dry matter intake in lactating dairy cows.

机构信息

Faculty of Veterinary Medicine, Norwegian University of Life Sciences, Oslo, Norway.

Department of Sustainable Energy Technology, Sintef Industry, Trondheim, Norway.

出版信息

J Dairy Res. 2020 Nov;87(4):436-443. doi: 10.1017/S0022029920001004. Epub 2020 Dec 1.

Abstract

The objective of the study was to evaluate the potential of Fourier transform infrared spectroscopy (FTIR) analysis of milk samples to predict body energy status and related traits (energy balance (EB), dry matter intake (DMI) and efficient energy intake (EEI)) in lactating dairy cows. The data included 2371 milk samples from 63 Norwegian Red dairy cows collected during the first 105 days in milk (DIM). To predict the body energy status traits, calibration models were developed using Partial Least Squares Regression (PLSR). Calibration models were established using split-sample (leave-one cow-out) cross-validation approach and validated using an external test set. The PLSR method was implemented using just the FTIR spectra or using the FTIR together with milk yield (MY) or concentrate intake (CONCTR) as predictors of traits. Analyses were conducted for the entire first 105 DIM and separately for the two lactation periods: 5 ≤ DIM ≤ 55 and 55 < DIM ≤ 105. To test the models, an external validation using an independent test set was performed. Predictions depending on the parity (1st, 2nd and 3rd-to 6th parities) in early lactation were also investigated. Accuracy of prediction (r) for both cross-validation and external test set was defined as the correlation between the predicted and observed values for body energy status traits. Analyzing FTIR in combination with MY by PLSR, resulted in relatively high r-values to estimate EB (r = 0.63), DMI (r = 0.83), EEI (r = 0.84) using an external validation. Only moderate correlations between FTIR spectra and traits like EB, EEI and dry matter intake (DMI) have so far been published. Our hypothesis was that improvements in the FTIR predictions of EB, EEI and DMI can be obtained by (1) stratification into different stages of lactations and different parities, or (2) by adding additional information on milking and feeding traits. Stratification of the lactation stages improved predictions compared with the analyses including all data 5 ≤ DIM ≤105. The accuracy was improved if additional data (MY or CONCTR) were included in the prediction model. Furthermore, stratification into parity groups, improved the predictions of body energy status. Our results show that FTIR spectral data combined with MY or CONCTR can be used to obtain improved estimation of body energy status compared to only using the FTIR spectra in Norwegian Red dairy cattle. The best prediction results were achieved using FTIR spectra together with MY for early lactation. The results obtained in the study suggest that the modeling approach used in this paper can be considered as a viable method for predicting an individual cow's energy status.

摘要

本研究的目的是评估傅里叶变换红外光谱(FTIR)分析牛奶样本预测泌乳奶牛体能量状态及相关性状(能量平衡(EB)、干物质采食量(DMI)和有效能采食量(EEI))的潜力。数据包括 63 头挪威红牛奶牛在泌乳第 105 天内采集的 2371 个牛奶样本。为了预测体能量状态性状,使用偏最小二乘回归(PLSR)建立了校准模型。采用分样(每头牛留一个)交叉验证方法建立校准模型,并采用外部测试集进行验证。PLSR 方法仅使用 FTIR 光谱或使用 FTIR 与产奶量(MY)或精饲料采食量(CONCTR)一起作为性状预测因子。分析了整个前 105 天的数据,以及两个泌乳期的数据:5 ≤ DIM ≤ 55 和 55 < DIM ≤ 105。为了测试模型,使用独立测试集进行了外部验证。还研究了早期泌乳中基于胎次(1、2 和 3 至 6 胎)的预测。预测的准确性(r)对于交叉验证和外部测试集都是根据体能量状态性状的预测值和观察值之间的相关性来定义的。通过 PLSR 分析 FTIR 与 MY 的组合,使用外部验证得到了相对较高的 r 值来估计 EB(r = 0.63)、DMI(r = 0.83)、EEI(r = 0.84)。迄今为止,仅发表了关于 FTIR 光谱与 EB、EEI 和干物质采食量(DMI)等性状之间的中等相关性的文章。我们的假设是,通过(1)分层为不同的泌乳阶段和不同的胎次,或(2)添加挤奶和饲养性状的额外信息,可以提高 EB、EEI 和 DMI 的 FTIR 预测准确性。与包括所有数据 5 ≤ DIM ≤105 的分析相比,泌乳阶段的分层提高了预测准确性。如果在预测模型中包含更多数据(MY 或 CONCTR),则准确性会提高。此外,按胎次分组可提高体能量状态的预测。我们的结果表明,与仅使用挪威红牛奶牛的 FTIR 光谱相比,FTIR 光谱数据与 MY 或 CONCTR 结合可用于获得更好的体能量状态估计。在早期泌乳中,使用 FTIR 光谱与 MY 的结合可获得最佳的预测结果。本研究的结果表明,本文中使用的建模方法可以作为预测个体奶牛能量状态的可行方法。

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