研究目的
To investigate the feasibility of using visible–near-infrared (Vis–NIR) spectroscopy combined with chemometric methods to detect surface contamination of peanut kernels with aflatoxin B1 (AFB1), aiming for a rapid, nondestructive screening method.
研究成果
Vis-NIR spectroscopy combined with PLS-DA and RF algorithms can effectively detect AFB1 contamination on peanut kernels with high accuracy (up to 94.29%) and reduced data dimensionality. This demonstrates potential for rapid, nondestructive screening, though further research is needed for real-world applications involving natural contamination.
研究不足
The study was conducted under ideal laboratory conditions with artificially contaminated samples, which may not fully represent natural fungal infection scenarios. The method's effectiveness on other agricultural commodities or under field conditions is not verified. Spectral noise at detector range ends limited the usable spectral ranges to 410-1070 nm and 1120-2470 nm.
1:Experimental Design and Method Selection:
The study employed Vis-NIR spectroscopy over 400-2500 nm to detect AFB1 on peanut kernels. Chemometric methods including partial least squares discriminant analysis (PLS-DA) and random frog (RF) algorithm were used for data analysis and variable selection.
2:Sample Selection and Data Sources:
Commercial shelled peanut kernels (runner type) were artificially contaminated with AFB1 standard at levels of 10, 20, 50, 100, 500, and 1000 ppb, with a control group treated with methanol/water solution. A total of 210 samples were prepared.
3:List of Experimental Equipment and Materials:
Foss XDS rapid content analyzer (Foss NIRSystems Inc.) for spectral acquisition, AFB1 standard from Sigma-Aldrich, Inc., peanuts from Premium Peanut, LLC, methanol, and ethanol for sterilization.
4:Experimental Procedures and Operational Workflow:
Samples were surface sterilized, contaminated with AFB1, dried, and scanned in reflectance mode using the Foss XDS analyzer with 32 scans per sample. Spectral data were preprocessed with standard normal variate (SNV) transformation. Data were split into calibration and prediction sets (2/3 and 1/3, respectively). PLS-DA models were developed using full spectra and simplified models with RF-selected wavelengths, evaluated with leave-one-out cross-validation.
5:Data Analysis Methods:
Statistical indices (sensitivity, specificity, overall accuracy) were calculated. RF algorithm was used for variable selection to identify optimal wavelengths for classification.
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