Spieß Lukas, de Peinder Peter, van den Bijgaart Harrie
Qlip B.V., P.O. Box 119, 7200 AC Zutphen, The Netherlands.
VibSpec, Haaftenlaan 28, 4006 XL Tiel, The Netherlands.
Foods. 2021 May 18;10(5):1111. doi: 10.3390/foods10051111.
Fourier-transform mid-infrared spectrometry is an attractive technology for screening adulterated liquid milk products. So far, studies on how infrared spectroscopy can be used to screen spectra for atypical milk composition have either used targeted methods to test for specific adulterants, or have used untargeted screening methods that do not reveal in what way the spectra are atypical. In this study, we evaluate the potential of combining untargeted screening methods with cluster algorithms to indicate in what way a spectrum is atypical and, if possible, why. We found that a combination of untargeted screening methods and cluster algorithms can reveal meaningful and generalizable categories of atypical milk spectra. We demonstrate that spectral information (e.g., the compositional milk profile) and meta-data associated with their acquisition (e.g., at what date and which instrument) can be used to understand in what way the milk is atypical and how it can be used to form hypotheses about the underlying causes. Thereby, it was indicated that atypical milk screening can serve as a valuable complementary quality assurance tool in routine FTIR milk analysis.
傅里叶变换中红外光谱法是一种用于筛查掺假液态奶制品的极具吸引力的技术。到目前为止,关于如何利用红外光谱法筛查非典型牛奶成分光谱的研究,要么采用靶向方法检测特定的掺假物,要么采用非靶向筛查方法,但这些方法并未揭示光谱非典型的方式。在本研究中,我们评估了将非靶向筛查方法与聚类算法相结合的潜力,以指出光谱非典型的方式,并在可能的情况下说明原因。我们发现,非靶向筛查方法与聚类算法的结合可以揭示有意义且可推广的非典型牛奶光谱类别。我们证明,光谱信息(例如,牛奶成分概况)及其采集相关的元数据(例如,日期和仪器)可用于了解牛奶非典型的方式,以及如何利用这些信息对潜在原因形成假设。由此表明,非典型牛奶筛查可作为常规傅里叶变换红外光谱牛奶分析中有价值的补充质量保证工具。