Near-infrared spectroscopy based on colorimetric sensor array coupled with convolutional neural network detecting zearalenone in wheat

•Near-infrared spectroscopy extracted the information of colorimetric sensor array.•Convolutional neural network was proposed for two-dimensional spectral analysis.•Two non-destructive detection techniques were combined to detect ZEN content in wheat. Wheat is a vital global cereal crop, but its sus...

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Published inFood Chemistry: X Vol. 22; p. 101322
Main Authors Zhao, Yongqin, Deng, Jihong, Chen, Quansheng, Jiang, Hui
Format Journal Article
LanguageEnglish
Published Netherlands Elsevier Ltd 30.06.2024
Elsevier
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Summary:•Near-infrared spectroscopy extracted the information of colorimetric sensor array.•Convolutional neural network was proposed for two-dimensional spectral analysis.•Two non-destructive detection techniques were combined to detect ZEN content in wheat. Wheat is a vital global cereal crop, but its susceptibility to contamination by mycotoxins can render it unusable. This study explored the integration of two novel non-destructive detection methodologies with convolutional neural network (CNN) for the identification of zearalenone (ZEN) contamination in wheat. Firstly, the colorimetric sensor array composed of six selected porphyrin-based materials was used to capture the olfactory signatures of wheat samples. Subsequently, the colorimetric sensor array, after undergoing a reaction, was characterized by its near-infrared spectral features. Then, the CNN quantitative analysis model was proposed based on the data, alongside the establishment of traditional machine learning models, partial least squares regression (PLSR) and support vector machine regression (SVR), for comparative purposes. The outcomes demonstrated that the CNN model had superior predictive performance, with a root mean square error of prediction (RMSEP) of 40.92 μ g ∙ kg−1 and a coefficient of determination on the prediction (RP2) of 0.91. These results affirmed the potential of integrating colorimetric sensor array with near-infrared spectroscopy in evaluating the safety of wheat and potentially other grains. Moreover, CNN can have the capacity to autonomously learn and distill features from spectral data, enabling further spectral analysis and making it a forward-looking spectroscopic tool.
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ISSN:2590-1575
2590-1575
DOI:10.1016/j.fochx.2024.101322