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A Rapid and Nondestructive Method for Simultaneous Determination of Aflatoxigenic Fungus and Aflatoxin Contamination on Corn Kernels

机译:一种快速和非破坏性方法,用于同时测定玉米粒子上的黄萎毒性真菌和黄曲霉毒素污染

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摘要

Conventional methods for detecting aflatoxigenic fungus and aflatoxin contamination are generally timeconsuming, sample-destructive, and require skilled personnel to perform, making them impossible for large-scale nondestructive screening detection, real-time, and on-site analysis. Therefore, the potential of visible-near-infrared (Vis-NIR) spectroscopy over the 400-2500 nm spectral range was examined for determination of aflatoxigenic fungus infection and the corresponding aflatoxin contamination on corn kernels in a rapid and nondestructive manner. The two A. flavus strains, AF13 and AF38, were used to represent the aflatoxigenic fungus and nonaflatoxigenic fungus, respectively, for artificial inoculation on corn kernels. The partial least-squares discriminant analysis (PLS-DA) models based on different combinations of spectral range (I: 410-1070 nm; II: 1120-2470 nm), corn side (endosperm or germ side), spectral variable number (full spectra or selected variables), modeling approach (two-step or one-step), and classification threshold (20 or 100 ppb) were developed and their performances were compared. The first study focusing on detection of aflatoxigenic fungus-infected corn kernels showed that, in classifying the "control+AF38-inoculated" and AF13-inoculated corn kernels, the full spectral PLS-DA models using the preprocessed spectra over range II and one-step approach yielded more accurate prediction results than using the spectra over range I and the two-step approach. The advantage of the full spectral PLS-DA models established using one corn side than the other side were not consistent in the explored combination cases. The best full spectral PLS-DA model obtained was obtained using the germ-side spectra over range II with the one-step approach, which achieved an overall accuracy of 91.11%. The established CARS-PLSDA models performed better than the corresponding full-spectral PLS-DA models, with the better model achieved an overall accuracy of 97.78% in separating the AF13-inoculated corn kernels and the uninfected control and AF38-inoculated corn kernels. The second study focusing on the detection of aflatoxin-contaminated corn kernels showed that, based on the aflatoxin threshold of 20 and 100 ppb, the best overall accuracy in classifying the aflatoxin-contaminated and healthy corn kernels attained 86.67% and 84.44%, respectively, using the CARS-PLSDA models. The quantitative modeling results using partial least-squares regression (PLSR) obtained the correlation coefficient of prediction set (R-p) of 0.91, which indicated the possibility of using Vis-NIR spectroscopy to quantify aflatoxin concentration in aflatoxigenic fungus-infected corn kernels.
机译:用于检测黄曲霉毒素的真菌和黄曲霉毒素污染的常规方法通常耗时,样本破坏性的,并且需要熟练的人员来执行,使得它们不可能用于大规模筛选无损检测,实时,和现场分析。因此,检查了用于测定黄曲霉毒素真菌感染的和以快速和非破坏性的方式上的玉米粒对应的黄曲霉毒素污染可见光 - 近红外(显示-NIR)光谱在400-2500纳米的光谱范围内的电势。两个黄曲霉菌,AF13和AF38,分别用来表示黄曲霉毒素的真菌和真菌nonaflatoxigenic分别对玉米粒人工接种。偏最小二乘判别分析基于的光谱范围内的不同组合(PLS-DA)模型(I:410-1070纳米; II:1120至2470年纳米),玉米侧(胚乳或胚侧),谱可变数目(全光谱或选定的变量),建模方法(两步或一步)和分类阈值(20或100 ppb)的进行了开发和它们的性能进行了比较。第一项研究着眼于检测黄曲霉毒素的真菌感染的玉米粒的显示,在分类“对照+ AF38接种”和AF13接种玉米粒,全光谱PLS-DA模型中使用超范围II和单经预处理的光谱步骤的方法产生了更准确的预测的结果比使用在范围I的光谱和两步法。全光谱PLS-DA模型的优势建立一个使用玉米一侧比另一侧都不在探索组合的情况下是一致的。使用在范围II胚芽侧谱与所述一个步骤的方法,其实现了91.11%的总精度,获得所获得的最好的全光谱PLS-DA模型。所建立的CARS-PLSDA模型比相应的全光谱PLSDA模型中进行较好,更好的模型中分离AF13接种玉米粒和未感染的对照和AF38接种玉米粒达到97.78%的总精度。第二项研究着眼于检测黄曲霉毒素污染的玉米粒的显示,根据20和100ppb的的黄曲霉毒素的阈值,在黄曲霉毒素污染的和健康的玉米粒进行分类的最佳总体精度达到86.67%和84.44%,分别使用CARS-PLSDA模型。使用偏最小二乘回归(PLSR)定量建模结果获得的0.91预测组(R-P),这表明使用可见 - 近红外光谱法来定量黄曲霉毒素的真菌感染的玉米粒的黄曲霉毒素浓度的可能性的相关系数。

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