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Advances in Atypical FT-IR Milk Screening: Combining Untargeted Spectra Screening and Cluster Algorithms

Overview
Journal Foods
Specialty Biotechnology
Date 2021 Jun 2
PMID 34069770
Citations 2
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Abstract

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.

Citing Articles

Spectral Profiling (Fourier Transform Infrared Spectroscopy) and Machine Learning for the Recognition of Milk from Different Bovine Breeds.

Spina A, Ceniti C, De Fazio R, Oppedisano F, Palma E, Gugliandolo E Animals (Basel). 2024; 14(9).

PMID: 38731274 PMC: 11083570. DOI: 10.3390/ani14091271.


Spectroscopic technologies and data fusion: Applications for the dairy industry.

Hayes E, Greene D, ODonnell C, OShea N, Fenelon M Front Nutr. 2023; 9:1074688.

PMID: 36712542 PMC: 9875022. DOI: 10.3389/fnut.2022.1074688.

References
1.
Mayerhofer T, Pahlow S, Hubner U, Popp J . Removing interference-based effects from infrared spectra - interference fringes re-revisited. Analyst. 2020; 145(9):3385-3394. DOI: 10.1039/d0an00062k. View

2.
Fleming A, Schenkel F, Chen J, Malchiodi F, Bonfatti V, Ali R . Prediction of milk fatty acid content with mid-infrared spectroscopy in Canadian dairy cattle using differently distributed model development sets. J Dairy Sci. 2017; 100(6):5073-5081. DOI: 10.3168/jds.2016-12102. View

3.
Coitinho T, Cassoli L, Cerqueira P, da Silva H, Coitinho J, Machado P . Adulteration identification in raw milk using Fourier transform infrared spectroscopy. J Food Sci Technol. 2017; 54(8):2394-2402. PMC: 5502033. DOI: 10.1007/s13197-017-2680-y. View

4.
Harris C, Millman K, van der Walt S, Gommers R, Virtanen P, Cournapeau D . Array programming with NumPy. Nature. 2020; 585(7825):357-362. PMC: 7759461. DOI: 10.1038/s41586-020-2649-2. View

5.
Neto H, Tavares W, Ribeiro D, Alves R, Fonseca L, Campos S . On the utilization of deep and ensemble learning to detect milk adulteration. BioData Min. 2019; 12:13. PMC: 6615233. DOI: 10.1186/s13040-019-0200-5. View