School of Chemistry and Manchester Interdisciplinary Biocentre, The University of Manchester, 131 Princess Street, Manchester, M1 7DN United Kingdom.
J Dairy Sci. 2010 Dec;93(12):5651-60. doi: 10.3168/jds.2010-3619.
The authenticity of milk and milk products is important and has extended health, cultural, and financial implications. Current analytical methods for the detection of milk adulteration are slow, laborious, and therefore impractical for use in routine milk screening by the dairy industry. Fourier transform infrared (FT-IR) spectroscopy is a rapid biochemical fingerprinting technique that could be used to reduce this sample analysis period significantly. To test this hypothesis we investigated 3 types of milk: cow, goat, and sheep milk. From these, 4 mixtures were prepared. The first 3 were binary mixtures of sheep and cow milk, goat and cow milk, or sheep and goat milk; in all mixtures the mixtures contained between 0 and 100% of each milk in increments of 5%. The fourth combination was a tertiary mixture containing sheep, cow, and goat milk also in increments of 5%. Analysis by FT-IR spectroscopy in combination with multivariate statistical methods, including partial least squares (PLS) regression and nonlinear kernel partial least squares (KPLS) regression, were used for multivariate calibration to quantify the different levels of adulterated milk. The FT-IR spectra showed a reasonably good predictive value for the binary mixtures, with an error level of 6.5 to 8% when analyzed using PLS. The results improved and excellent predictions were achieved (only 4-6% error) when KPLS was employed. Excellent predictions were achieved by both PLS and KPLS with errors of 3.4 to 4.9% and 3.9 to 6.4%, respectively, when the tertiary mixtures were analyzed. We believe that these results show that FT-IR spectroscopy has excellent potential for use in the dairy industry as a rapid method of detection and quantification in milk adulteration.
牛奶及其制品的真实性很重要,这涉及到健康、文化和经济等方面。目前用于检测牛奶掺假的分析方法速度较慢,且繁琐,因此不适合乳制品行业进行常规牛奶筛选。傅里叶变换红外(FT-IR)光谱是一种快速的生化指纹技术,可大大缩短样品分析时间。为了验证这一假设,我们研究了 3 种牛奶:牛奶、羊奶和山羊奶。从这 3 种奶中制备了 4 种混合物。前 3 种是绵羊奶和牛奶、山羊奶和牛奶、绵羊奶和山羊奶的二元混合物;在所有混合物中,每种牛奶的含量在 0 到 100%之间,以 5%的增量递增。第 4 种组合是一种三元混合物,含有绵羊、牛奶和山羊奶,也以 5%的增量递增。采用傅里叶变换红外光谱结合多元统计方法,包括偏最小二乘法(PLS)回归和非线性核偏最小二乘法(KPLS)回归进行分析,对不同掺假水平的牛奶进行多元校准。FT-IR 光谱对二元混合物具有相当好的预测值,使用 PLS 分析时误差水平为 6.5%至 8%。当使用 KPLS 时,结果得到改善,达到了优异的预测效果(仅 4%至 6%的误差)。当分析三元混合物时,PLS 和 KPLS 都能达到优异的预测效果,误差分别为 3.4%至 4.9%和 3.9%至 6.4%。我们相信,这些结果表明傅里叶变换红外光谱具有作为牛奶掺假快速检测和定量的快速方法在乳制品行业中的巨大应用潜力。