Investigation of reflectance, fluorescence, and Raman hyperspectral imaging techniques for rapid detection of aflatoxins in ground maize

被引:29
作者
Kim, Yong-Kyoung [1 ]
Baek, Insuck [2 ]
Lee, Kyung-Min [3 ]
Qin, Jianwei [2 ]
Kim, Geonwoo [2 ]
Shin, Byeung Kon [1 ]
Chan, Diane E. [2 ]
Herrman, Timothy J. [3 ]
Cho, Soon-kil [1 ]
Kim, Moon S. [2 ]
机构
[1] Natl Agr Prod Qual Management Serv, Expt & Res Inst, Div Safety Anal, Gimcheon 39660, South Korea
[2] ARS, Environm Microbial & Food Safety Lab, USDA, Powder Mill Rd,Bldg 303 BARC East, Beltsville, MD 20705 USA
[3] Texas A&M Univ Syst, Texas A&M AgriLife Res, Off Texas State Chemist, College Stn, TX 77841 USA
基金
美国农业部;
关键词
Hyperspectral imaging; Aflatoxin; Maize; Machine learning; Classification; SINGLE CORN KERNELS; CONTAMINATED MAIZE; MYCOTOXIN ANALYSIS; B-1; CLASSIFICATION; SPECTROSCOPY; PRODUCTS; SPECTRA; UPDATE; IMAGES;
D O I
10.1016/j.foodcont.2021.108479
中图分类号
TS2 [食品工业];
学科分类号
0832 ;
摘要
Aflatoxins, commonly found in corn and corn-derived products, can cause severe illness in animals and humans if consumed in significant amounts. Early detection is critical to preventing illness, but the most sensitive and effective of commonly used screening tools for aflatoxins are expensive and cumbersome methods based on chromatography or imunoassays that require technical expertise to perform. Multiple hyperspectral imaging techniques, including reflectance in the visible and near-infrared (VNIR) region and short-wave infrared (SWIR) region, fluorescence by 365 nm ultraviolet (UV) excitation, and Raman by 785 nm laser excitation, were used for detection of aflatoxin in ground maize. Four classification models based on linear discriminant analysis (LDA), linear support vector machines (LSVM), quadratic discriminant analysis (QDA), and quadratic support vector machines (QSVM) algorithms were developed for classification with each hyperspectral imaging mode. The multivariate classification models in combination with different preprocessing methods were applied for screening of maize samples naturally contaminated with aflatoxin. The classification accuracies for fluorescence with QSVM, VNIR with QSVM, SWIR with LSVM, and Raman with LSVM were 95.7%, 82.6%, 95.7%, and 87.0%, respectively, with no false-negative error at the cutoff of 10 mu g/kg. The SWIR and fluorescence models showed slightly higher performance accuracies, suggesting that they may be more effective and efficient analytical tools for aflatoxin analysis in maize compared to conventional wet-chemical methods. These methods show promise as inexpensive, and easy-to-use screening tools for food safety, to rapidly detect aflatoxins in maize or other food ingredients intended for animal or human consumption.
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页数:9
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共 54 条
[1]   Occurrence, Toxicity, and Analysis of Major Mycotoxins in Food [J].
Alshannaq, Ahmad ;
Yu, Jae-Hyuk .
INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH, 2017, 14 (06)
[2]   Aflatoxin B1 contamination in maize in Europe increases due to climate change [J].
Battilani, P. ;
Toscano, P. ;
Van der Fels-Klerx, H. J. ;
Moretti, A. ;
Leggieri, M. Camardo ;
Brera, C. ;
Rortais, A. ;
Goumperis, T. ;
Robinson, T. .
SCIENTIFIC REPORTS, 2016, 6
[3]   Developments in mycotoxin analysis: an update for 2015-2016 [J].
Berthiller, F. ;
Brera, C. ;
Iha, M. H. ;
Krska, R. ;
Lattanzio, V. M. T. ;
MacDonald, S. ;
Malone, R. J. ;
Maragos, C. ;
Solfrizzo, M. ;
Stranska-Zachariasova, M. ;
Stroka, J. ;
Tittlemier, S. A. .
WORLD MYCOTOXIN JOURNAL, 2017, 10 (01) :5-29
[4]   Classification of aflatoxin contaminated single corn kernels by ultraviolet to near infrared spectroscopy [J].
Cheng, Xianbin ;
Vella, Andrea ;
Stasiewicz, Matthew J. .
FOOD CONTROL, 2019, 98 :253-261
[5]   Detection of aflatoxin B1 (AFB1) in individual maize kernels using short wave infrared (SWIR) hyperspectral imaging [J].
Chu, Xuan ;
Wang, Wei ;
Yoon, Seung-Chul ;
Ni, Xinzhi ;
Heitschmidt, Gerald W. .
BIOSYSTEMS ENGINEERING, 2017, 157 :13-23
[6]   Fourier transform near-infrared and mid-infrared spectroscopy as efficient tools for rapid screening of deoxynivalenol contamination in wheat bran [J].
De Girolamo, Annalisa ;
Cervellieri, Salvatore ;
Cortese, Marina ;
Porricelli, Anna Chiara Raffaella ;
Pascale, Michelangelo ;
Longobardi, Francesco ;
von Holst, Christoph ;
Ciaccheri, Leonardo ;
Lippolis, Vincenzo .
JOURNAL OF THE SCIENCE OF FOOD AND AGRICULTURE, 2019, 99 (04) :1946-1953
[7]   Enzyme-linked immunosorbent assay in analysis of deoxynivalenol: investigation of the impact of sample matrix on results accuracy [J].
Dzuman, Zbynek ;
Vaclavikova, Marta ;
Polisenska, Ivana ;
Veprikova, Zdenka ;
Fenclova, Marie ;
Zachariasova, Milena ;
Hajslova, Jana .
ANALYTICAL AND BIOANALYTICAL CHEMISTRY, 2014, 406 (02) :505-514
[8]   A direct assessment of mycotoxin biomarkers in human urine samples by liquid chromatography tandem mass spectrometry [J].
Ediage, Emmanuel Njumbe ;
Di Mavungu, Jose Diana ;
Song, Suquan ;
Wu, Aibo ;
Van Peteghem, Carlos ;
De Saeger, Sarah .
ANALYTICA CHIMICA ACTA, 2012, 741 :58-69
[9]   Quantitative assessment of zearalenone in maize using multivariate algorithms coupled to Raman spectroscopy [J].
Guo, Zhiming ;
Wang, Mingming ;
Wu, Jingzhu ;
Tao, Feifei ;
Chen, Quansheng ;
Wang, Qingyan ;
Ouyang, Qin ;
Shi, Jiyong ;
Zou, Xiaobo .
FOOD CHEMISTRY, 2019, 286 :282-288
[10]   Fast Fluorescence Spectroscopy Methodology to Monitor the Evolution of Extra Virgin Olive Oils Under Illumination [J].
Hernandez-Sanchez, Natalia ;
Lleo, Lourdes ;
Ammari, Faten ;
Cuadrado, Teresa R. ;
Roger, Jean Michel .
FOOD AND BIOPROCESS TECHNOLOGY, 2017, 10 (05) :949-961