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Rapid and green discrimination of bovine milk according to fat content, thermal treatment, brand and manufacturer via colloidal fingerprinting

Food Chemistry 2023 3 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 35 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Stefano Giordani, Stefano Giordani, Valentina Marassi Nicholas Kassouf, Alessandro Zappi, Andrea Zattoni, Valentina Marassi Andrea Zattoni, Andrea Zattoni, Barbara Roda, Barbara Roda, Dora Melucci, Valentina Marassi Valentina Marassi Dora Melucci, Stefano Giordani, Barbara Roda, Valentina Marassi

Summary

Researchers applied a green, rapid analytical technique called Field Flow Fractionation to fingerprint bovine milk samples by their colloidal particle profiles, successfully distinguishing milk by fat content, heat treatment, brand, and manufacturing plant from a single analysis. This approach offers a sustainable, low-chemical method for detecting food fraud and quality control.

Addressing food safety and detecting food fraud while fulfilling greenness requisites for analysis is a challenging but necessary task. The use of sustainable techniques, with limited pretreatment, non-toxic chemicals, high throughput results, is recommended. A combination of Field Flow Fractionation (FFF), working in saline carrier and with minimal preprocessing, and chemometrics was for the first time applied to bovine milk grouping. A set of 47 bovine milk samples was analyzed: a single analysis yielded a characteristic multidimensional colloidal dataset, that once processed with multivariate tools allowed simultaneously for different discriminations: fat content, thermal treatment, brand and manufacturing plant. The analytical methodology is fast, green, simple, and inexpensive and could offer great help in the field of quality control and frauds identification. This work represents also the first attempt to identify milk sub-typologies based on colloidal profiles, and the most complete study concerning multivariate analysis of FFF fingerprint.

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