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Feasibility study on non-destructive detection of microplastic content in flour based on portable Raman spectroscopy system combined with mixed variable selection method

Spectrochimica Acta Part A Molecular and Biomolecular Spectroscopy 2024 12 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 60 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Jiaming Kan, Hui Jiang Hui Jiang Jiaming Kan, Hui Jiang Jiaming Kan, Jiaming Kan, Jihong Deng, Jihong Deng, Zhidong Ding, Zhidong Ding, Zhidong Ding, Zhidong Ding, Hui Jiang Quansheng Chen, Quansheng Chen, Hui Jiang Hui Jiang Hui Jiang

Summary

Scientists demonstrated that a portable Raman spectroscopy device can detect and measure microplastic contamination in flour with over 98% accuracy. The technique is non-destructive, meaning it does not alter the food being tested. This technology could enable rapid, on-site testing of food products for microplastic contamination, helping to protect consumers from unknowing exposure through their diet.

Polymers

Microplastics, as emerging environmental pollutants, have garnered considerable attention due to their contamination of both the environment and food. Microplastics can infiltrate the human food chain through multiple pathways, potentially posing health risks to humans. Currently, non-destructive testing of microplastics in food is considered challenging. This study aims to investigate the feasibility of employing a portable Raman spectroscopy system for non-destructive detection of microplastic content (polystyrene, PS; polyethylene, PE) in flour. In this study, a portable spectrometer was used to collect flour spectra of different abundances of microplastics. To enhance the predictive performance of the partial least squares (PLS) model, a mixed variable selection strategy that combined the wavelength interval selection method (Synergy interval partial least squares, siPLS) and the wavelength point selection method (Least absolute shrinkage and selection operator, LASSO; Multiple feature-spaces ensemble by least absolute shrinkage and selection operator, MFE-LASSO) was proposed. Four regression models (PLS, siPLS, siPLS-LASSO, siPLS-MFE-LASSO) were developed and compared for detecting PS and PE content in flour. The siPLS-MFE-LASSO model exhibited the best generalization performance in the prediction set, and was considered to have the best generalization performance (PS: R = 0.9889, RMSEP=0.0344 %; PE: R = 0.9878, RMSEP=0.0361 %). In conclusion, this study has demonstrated the potential of using a portable Raman spectrometer in conjunction with a mixed variable selection algorithm for non-destructive detection of PS and PE content in flour, providing more possibilities for non-destructive detection of microplastic content in food.

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