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Machine Learning-Assisted Synchronous Fluorescence Sensing Approach for Rapid and Simultaneous Quantification of Thiabendazole and Fuberidazole in Red Wine. | LitMetric

Machine Learning-Assisted Synchronous Fluorescence Sensing Approach for Rapid and Simultaneous Quantification of Thiabendazole and Fuberidazole in Red Wine.

Sensors (Basel)

The MOE Key Laboratory of Spectrochemical Analysis & Instrumentation, Department of Chemistry, College of Chemistry and Chemical Engineering, Xiamen University, 422 Siming South Road, Siming District, Xiamen 361005, China.

Published: December 2022

AI Article Synopsis

  • Researchers developed a machine learning-assisted fluorescence sensing method for quickly detecting two pesticides, thiabendazole (TBZ) and fuberidazole (FBZ), in red wine.
  • The approach involves collecting fluorescence spectra data and using machine learning to create a prediction model for rapid analysis, achieving high recovery rates for both pesticides without complex sample pretreatment.
  • This study highlights the potential of combining machine learning with fluorescence techniques to tackle challenges in analyzing complex mixtures in food safety monitoring.

Article Abstract

Rapid analysis of components in complex matrices has always been a major challenge in constructing sensing methods, especially concerning time and cost. The detection of pesticide residues is an important task in food safety monitoring, which needs efficient methods. Here, we constructed a machine learning-assisted synchronous fluorescence sensing approach for the rapid and simultaneous quantitative detection of two important benzimidazole pesticides, thiabendazole (TBZ) and fuberidazole (FBZ), in red wine. First, fluorescence spectra data were collected using a second derivative constant-energy synchronous fluorescence sensor. Next, we established a prediction model through the machine learning approach. With this approach, the recovery rate of TBZ and FBZ detection of pesticide residues in red wine was 101% ± 5% and 101% ± 15%, respectively, without resorting complicated pretreatment procedures. This work provides a new way for the combination of machine learning and fluorescence techniques to solve the complexity in multi-component analysis in practical applications.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9785232PMC
http://dx.doi.org/10.3390/s22249979DOI Listing

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