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牛奶的中红外光谱法用于乳代谢组学研究:两种采样技术的比较及均质化的影响。

Mid-infrared spectrometry of milk for dairy metabolomics: a comparison of two sampling techniques and effect of homogenization.

机构信息

BIOSYST-MeBioS, K.U. Leuven, Kasteelpark Arenberg 30, 3001 Leuven, Belgium.

出版信息

Anal Chim Acta. 2011 Oct 31;705(1-2):88-97. doi: 10.1016/j.aca.2011.04.018. Epub 2011 Apr 20.

Abstract

Milk production is a dominant factor in the metabolism of dairy cows involving a very intensive interaction with the blood circulation. As a result, the extracted milk contains valuable information on the metabolic status of the cow. On-line measurement of milk components during milking two or more times a day would promote early detection of systemic and local alterations, thus providing a great input for strategic and management decisions. The objective of this study was to investigate the potential of mid-infrared (mid-IR) spectroscopy to measure the milk composition using two different measurement modes: micro attenuated total reflection (μATR) and high throughput transmission (HTT). Partial least squares (PLS) regression was used for prediction of fat, crude protein, lactose and urea after preprocessing IR data and selecting the most informative wavenumber variables. The prediction accuracies were determined separately for raw and homogenized copies of a wide range of milk samples in order to estimate the possibility for on-line analysis of the milk. In case of fat content both measurement modes resulted in an excellent prediction for homogenized samples (R(2)>0.92) but in poor results for raw samples (R(2)<0.70). Homogenization was however not mandatory to achieve good predictions for crude protein and lactose with both μATR and HTT, and urea with μATR spectroscopy. Excellent results were obtained for prediction of crude protein, lactose and urea content (R(2)>0.99, 0.98 and 0.86 respectively) in raw and homogenized milk using μATR IR spectroscopy. These results were significantly better than those obtained by HTT IR spectroscopy. However, the prediction performance of HTT was still good for crude protein and lactose content (R(2)>0.86 and 0.78 respectively) in raw and homogenized samples. However, the detection of urea in milk with HTT spectroscopy was significantly better (R(2)=0.69 versus 0.16) after homogenization of the milk samples. Based on these observations it can be concluded that μATR approach is most suitable for rapid at line or even on-line milk composition measurement, although homogenization is crucial to achieve good prediction of the fat content.

摘要

牛奶产量是奶牛代谢的主要因素,涉及与血液循环的非常密集的相互作用。因此,提取的牛奶中含有有关奶牛代谢状态的有价值信息。每天两次或更多次挤奶时在线测量牛奶成分将促进对全身和局部变化的早期检测,从而为战略和管理决策提供重要依据。本研究的目的是调查中红外(mid-IR)光谱法使用两种不同测量模式:微衰减全反射(μATR)和高通量传输(HTT)测量牛奶成分的潜力。偏最小二乘法(PLS)回归用于在预处理 IR 数据并选择信息量最大的波数变量后预测脂肪,粗蛋白,乳糖和尿素。为了估计在线分析牛奶的可能性,分别对广泛的牛奶样品的原始和均化副本进行了预测精度的确定。对于脂肪含量,两种测量模式都可以对均化样品进行出色的预测(R(2)> 0.92),但对原始样品的预测结果较差(R(2)<0.70)。但是,对于使用μATR 和 HTT 的粗蛋白和乳糖,以及对于μATR 光谱的尿素,均化并非获得良好预测的必要条件。使用μATR 红外光谱法,对原始和均化牛奶中的粗蛋白,乳糖和尿素含量的预测效果非常好(R(2)分别为> 0.99、0.98和0.86)。这些结果明显优于 HTT 红外光谱法的结果。但是,HTT 的预测性能对于原始和均化样品中的粗蛋白和乳糖含量仍然良好(R(2)分别为> 0.86和0.78)。但是,在对牛奶样品进行均化后,使用 HTT 光谱法检测牛奶中的尿素的效果明显更好(R(2)= 0.69 与 0.16)。基于这些观察结果,可以得出结论,μATR 方法最适合快速在线或甚至在线牛奶成分测量,尽管均化对于实现脂肪含量的良好预测至关重要。

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