| Literature DB >> 32150943 |
Ruben A Chavez1, Xianbin Cheng1, Matthew J Stasiewicz1.
Abstract
Current detection methods for contamination of aflatoxin and fumonisin used in the corn industry are based on bulk level. However, literature demonstrates that contamination of these mycotoxins is highly skewed and bulk samples do not always represent accurately the overall contamination in a batch of corn. Single kernel analysis can provide an insightful level of analysis of the contamination of aflatoxin and fumonisin, as well as suggest a possible remediation to the skewness present in bulk detection. Current literature describes analytical methods capable of detecting aflatoxin and fumonisin at a single kernel level, such as liquid chromatography, fluorescence imaging, and reflectance imaging. These methods could provide tools to classify mycotoxin contaminated kernels and study potential co-occurrence of aflatoxin and fumonisin. Analysis at a single kernel level could provide a solution to the skewness present in mycotoxin contamination detection and offer improved remediation methods through sorting that could impact food security and management of food waste.Entities:
Keywords: aflatoxin; corn; fumonisin; global food safety; mycotoxin; mycotoxin prevention; mycotoxin surveillance; single kernel
Year: 2020 PMID: 32150943 PMCID: PMC7143881 DOI: 10.3390/foods9030297
Source DB: PubMed Journal: Foods ISSN: 2304-8158
Summary of research studies that report single corn kernel aflatoxin and fumonisin contamination detection using different analytical methods.
| Analytical Method used | Mycotoxin tested | Contaminated corn source | Kernel Motion State | Measurement Type | Spectral Analysis method* | Classification Accuracies and Major Results | Reference |
|---|---|---|---|---|---|---|---|
| Liquid Chromatography | Total Fumonisin | Contaminated and uncontaminated samples obtained from farmers | - | Tandem mass spectrometry | - | 39% of kernels (155/400) were contaminated with 1.84–1428 mg/kg fumonisin. Only 4% were above 100 ppb fumonisin and removal of these kernel reduced average fumonisin content by 71%. | [ |
| Fluorescence Imaging | Fumonisin | In field inoculated samples | - | Fluorescence Polarization | - | Fumonisin concentration was correlated with fluorescence (r2 = 0.85–0.88). | [ |
| Fluorescence Imaging/Liquid Chromatography | Fumonisin | Obtained from commercial sources | - | Fluorescence detection (FD), mass spectrometry | - | Data validation method reproducibility ≤ 15.9% and recovery 78–110%. | [ |
| Fluorescence Imaging | Total Aflatoxin | In field inoculated samples | Stationary | Fluorescence emission | Linear regression | 84% classification accuracy at threshold of 20ppb, and 86% at classification threshold of 100ppb. | [ |
| Fluorescence/Reflectance Imaging | Total Aflatoxin | In field Inoculated samples | Stationary | Fluorescence, reflectance visible near-infrared (VNIR) | KNN | 84% sensitivity and 96% specificity for classification model at a threshold of 20 ppb. | [ |
| Fluorescence/Reflectance Imaging | Total Aflatoxin | In Field inoculated samples | Stationary | Fluorescence, reflectance visible near-infrared (VNIR) | PCA, LS-SVM, KNN | Threshold values of 20 and 100 ppb were used. Classification models: 92% sensitivity and 96% at threshold of 100 ppb; 89% sensitivity and 96% specificity threshold of 20 ppb. | [ |
| Fluorescence Imaging | Total Aflatoxin | Artificially inoculated kernels from commercial samples | Stationary | Dual-camera multispectral fluorescence | NDFI | Contamination levels were 0.011 to 20 ppb. Screening of contaminated samples demonstrated a high sensitivity (0.987) and high specificity (0.96) at threshold of 20 ppb | [ |
| Infrared Imaging | Total Aflatoxin | In field inoculation | Stationary | Reflectance and Transmittance spectra | PLS-DA | >95% accuracy for classifying kernels with >100ppb or <10ppb. | [ |
| Infrared Imaging | Total Aflatoxin, Total Fumonisin | In field inoculation | Stationary | High speed dual-wavelength Reflectance | FWHM | Absorbance at 750 and 1200 nm correctly identify >99% of kernels. 98% accuracy for classifying kernels with >100ppb or uncontaminated. | [ |
| Infrared Imaging | Fumonisin | Natural contamination form local farmers | - | Fourier transform near infrared spectroscopy | PLS | Coefficients of correlation, root mean square error and standard error of calibration were 0.964, 0.630 and 0.632, respectively | [ |
| Infrared Imaging | Aflatoxin | Artificial inoculation from commercial samples | Stationary | Short wave infrared hyperspectral imaging | PLS-DA | Yellow, white, and purple corn were scanned. Classification between kernels < 10 ppb and > 1000 ppb was achieved with an accuracy of 97%. | [ |
| Infrared Imaging | Total Aflatoxin, Fumonisin | Natural contamination from local farmers | In motion | Infrared, Visible, and Ultraviolet Reflectance | LDA, RF, SVM | Skewed distribution of contamination. Spectrometer capable to classify contamination (sensitivity 77%, specificity 83%) and sort at a lower cost. | [ |
| Infrared Imaging | Aflatoxin | In field inoculation | Stationary | Short wave infrared hyperspectral imaging | PCA, SVM | 11% of the kernels (13/120) were > 2000 ppb. Classification accuracies were 84% and 83% for calibration and validation set, respectively, at thresholds of 20 ppb and 100 ppb. | [ |
| Infrared Imaging | Aflatoxin | Surface deposition from commercial samples | Stationary | Visible, near-infrared hyperspectral imaging | FDA, PCA | 96%–100% validation accuracy for classification at 5 thresholds: 0, 10, 20, 100, 500 ppb. | [ |
| Infrared Imaging/Fluorescence | Total Aflatoxin | Wound Inoculation | In motion | Infrared, Visible, and Ultraviolet Reflectance | RF | 86% sensitivity and 97% specificity at a classification threshold of 20 ppb. Spectral data highly skewed. | [ |
| Infrared Imaging | Total Aflatoxin | Artificial Inoculation | Stationary | Visible, near- infrared reflectance | PLS-DA | 87% accuracy for classification of contaminated kernels at threshold of 20 ppb and 100 ppb. | [ |
* Acronyms definition: K nearest neighbors (KNN), Principal component analysis (PCA), Least square support vector machine (LS-SVM), Normalized Fluorescence index (NDFI), Partial Least-square principal component analysis (PLS-DA), Full with half maximum (FWHM), Partial least squares (PLS), Range factor (RF), Support vector machine (SVM), Factorial discriminant analysis (FDA).