Department of Chemistry, University of Alberta, Edmonton, Alberta, Canada.
Department of Chemistry, University of Alberta, Edmonton, Alberta, Canada.
Anal Chim Acta. 2018 Feb 25;1001:78-85. doi: 10.1016/j.aca.2017.11.019. Epub 2017 Nov 14.
There is an increasing demand for donor human milk to feed infants for various reasons including that a mother may be unable to provide sufficient amounts of milk for their child or the milk is considered unsafe for the baby. Selling and buying human milk via the Internet has gained popularity. However, there is a risk of human milk sold containing other adulterants such as animal or plant milk. Analytical tools for rapid detection of adulterants in human milk are needed. We report a quantitative metabolomics method for detecting potential milk adulterants (soy, almond, cow, goat and infant formula milk) in human milk. It is based on the use of a high-performance chemical isotope labeling (CIL) LC-MS platform to profile the metabolome of an unknown milk sample, followed by multivariate or univariate comparison of the resultant metabolomic profile with that of human milk to determine the differences. Using dansylation LC-MS to profile the amine/phenol submetabolome, we could detect an average of 4129 ± 297 (n = 9) soy metabolites, 3080 ± 470 (n = 9) almond metabolites, 4256 ± 136 (n = 18) cow metabolites, 4318 ± 198 (n = 9) goat metabolites, 4444 ± 563 (n = 9) infant formula metabolites, and 4020 ± 375 (n = 30) human metabolites. This high level of coverage allowed us to readily differentiate the six different types of samples. From the analysis of binary mixtures of human milk containing 5, 10, 25, 50 and 75% other type of milk, we demonstrated that this method could be used to detect the presence of as low as 5% adulterant in human milk. We envisage that this method could be applied to detect contaminant or adulterant in other types of food or drinks.
由于各种原因,人们对捐赠人乳的需求不断增加,包括母亲可能无法为孩子提供足够的乳汁,或者母乳对婴儿不安全。通过互联网买卖人乳已经变得流行起来。然而,人乳中可能存在其他掺杂物,如动物或植物奶。因此,需要快速检测人乳中掺杂物的分析工具。我们报告了一种定量代谢组学方法,用于检测人乳中的潜在奶掺杂物(大豆、杏仁、牛、山羊和婴儿配方奶粉)。它基于使用高性能化学同位素标记(CIL)LC-MS 平台来分析未知人乳样品的代谢组,然后对代谢组图谱进行多元或单变量比较,以确定与人乳的差异。使用 Dansylation LC-MS 来分析胺/酚亚代谢组,我们可以检测到平均 4129 ± 297(n = 9)种大豆代谢物、3080 ± 470(n = 9)种杏仁代谢物、4256 ± 136(n = 18)种奶牛代谢物、4318 ± 198(n = 9)种山羊代谢物、4444 ± 563(n = 9)种婴儿配方奶粉代谢物和 4020 ± 375(n = 30)种人代谢物。这种高覆盖率使我们能够轻松区分六种不同类型的样品。通过分析含有 5%、10%、25%、50%和 75%其他类型牛奶的人乳二元混合物,我们证明该方法可用于检测人乳中低至 5%的掺杂物的存在。我们设想该方法可用于检测其他类型的食品或饮料中的污染物或掺杂物。