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Prediction of fatty acid chain length and unsaturation of milk fat by mid-infrared milk analysis

机译:通过中红外牛奶分析预测牛奶脂肪的脂肪酸链长度和不饱和度

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摘要

Our objective was to develop partial least squares (PLS) models to predict fatty acid chain length and total unsaturation of milk fat directly from a mid-infrared (MIR) spectra of milk at 40℃ and then determine the feasibility of using those measures as correction factors to improve the accuracy of milk fat determination. A set of 268 milks (modified milks, farm bulk tank milks, and individual cow) were analyzed for fat, true protein, and anhydrous lactose with chemical reference methods, and in addition a MIR absorption spectra was collected for each milk. Fat was extracted from another portion of each milk, the fat was saponified to produce free fatty acids, and the free fatty acids were converted to methyl esters and quantified using gas-liquid chroma-tography. The PLS models for predicting the average chain length (carbons per fatty acid) and unsaturation (double bonds per fatty acid) of fatty acids in the fat portion of a milk sample from a MIR milk spectra were developed and validated. The validation performance of the prediction model for chain length and unsaturation had a relative standard deviation of 0.43 and 3.3%, respectively. These measures are unique in that they are fat concentration independent characteristics of fat structure that were predicted directly with transmission MIR analysis of milk. Next, the real-time data output from the MIR spectrophotometer for fatty acid chain length and unsaturation of milk were used to correct the fat A (C=O stretch) and fat B (C-H stretch) measures to improve accuracy of fat prediction. The accuracy validation was done over a period of 5 mo with 12 sets of 10 individual farm milks that were not a part of the PLS modeling population. The correction of a traditional fat B virtual filter result (C-H stretch) for sample-to-sample variation in unsaturation reduced the Euclidean distance for predicted fat from 0.034 to 0.025. The correction of a traditional fat A virtual filter result (C=O stretch) modified with additional information on sample-to-sample variation of chain length and unsaturation gave the largest improvement (reduced Euclidean distance from 0.072 to 0.016) and the best validation accuracy (i.e., lowest Euclidean distance) of all the fat prediction methods.
机译:我们的目标是建立偏最小二乘(PLS)模型,以直接从40℃牛奶的中红外(MIR)光谱中预测牛奶脂肪的脂肪酸链长度和总不饱和度,然后确定使用这些方法作为校正的可行性因素提高乳脂测定的准确性。使用化学参考方法分析了一组268份牛奶(改良奶,农场散装奶和个体母牛)中的脂肪,真实蛋白质和无水乳糖,此外,还针对每种牛奶收集了MIR吸收光谱。从每种牛奶的另一部分中提取脂肪,将其皂化以生成游离脂肪酸,然后将游离脂肪酸转化为甲酯,并使用气液色谱法进行定量。建立并验证了从MIR牛奶光谱中预测牛奶样品脂肪部分中脂肪酸的平均链长(碳/每脂肪酸碳)和不饱和度(每脂肪酸双键)的PLS模型。链长和不饱和度预测模型的验证性能分别具有0.43和3.3%的相对标准偏差。这些措施的独特之处在于它们是不依赖于脂肪浓度的脂肪结构特征,可以通过牛奶的透射MIR分析直接预测。接下来,从MIR分光光度计输出的有关脂肪酸链长和牛奶不饱和度的实时数据用于校正脂肪A(C = O拉伸)和脂肪B(C-H拉伸)措施,以提高脂肪预测的准确性。准确性验证是在5个月内用12组10份独立农场乳汁进行的,这些乳汁不是PLS建模人群的一部分。对于不饱和样品间差异的传统脂肪B虚拟过滤器结果(C-H拉伸)的校正将预测脂肪的欧几里德距离从0.034减少到0.025。对传统脂肪A虚拟过滤器结果(C = O拉伸)进行校正,并用有关链长和不饱和度的样本间差异的其他信息进行修改,从而得到最大的改进(欧几里德距离从0.072减少到0.016)和最佳的验证精度(即最低的欧几里得距离)的所有脂肪预测方法。

著录项

  • 来源
    《Journal of dairy science》 |2016年第11期|8561-8570|共10页
  • 作者单位

    Department of Food Science, Northeast Dairy Foods Research Center, Cornell University, Ithaca, NY 14853;

    Department of Food Science, Northeast Dairy Foods Research Center, Cornell University, Ithaca, NY 14853;

  • 收录信息 美国《科学引文索引》(SCI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    mid-infrared; carbon number; unsaturation;

    机译:中红外碳数不饱和;

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