College of Science and Information, Qingdao Agricultural University, Qingdao, 266109, China.
College of Science and Information, Qingdao Agricultural University, Qingdao, 266109, China.
Food Chem Toxicol. 2020 Mar;137:111159. doi: 10.1016/j.fct.2020.111159. Epub 2020 Jan 25.
Aflatoxin is a highly toxic and carcinogenic substance with fluorescence characteristic. To explore the feasibility of detection the degree of aflatoxin contamination using hyperspectral imaging technology, we proposed a machine learning detection method based on support vector machine (SVM) combining band index and narrow band. First, five concentrations of aflatoxin solutions (10ug/L, 20ug/L, 50ug/L, 100ug/L and 10 mg/L) were prepared and dripped onto the surface of different peanut kernels. Next, hyperspectral images with 33 bands (400-720 nm) were acquired for each sample using a hyperspectral imaging system under 365 nm ultraviolet (UV) light. Then four fluorescence indexes including Radiation Index (RI), Difference Radiation Indexes (DRI), Ratio Radiation Index (RRI) and Normalized Difference Radiation Index (NDRI) were proposed. Finally, Fisher method was used to optimize and obtain a narrowband spectrum, and RBF-SVM model was used to recognize aflatoxin and make regression analysis on the degree of aflatoxin contamination. Experimental results showed that DRI index had the optimal performance, and the accuracy rate of 5-fold cross validation of SVM were 95.5% and the mean square error (MSE) and correlation coefficient R were respectively 0.0223 and 0.9785. Results of this paper are of positive significance for the online aflatoxin detection and grading of agricultural products.
黄曲霉毒素是一种具有荧光特性的高毒性和致癌物质。为了探索利用高光谱成像技术检测黄曲霉毒素污染程度的可行性,我们提出了一种基于支持向量机(SVM)的机器学习检测方法,该方法结合了带指数和窄带。首先,制备了五种浓度的黄曲霉毒素溶液(10μg/L、20μg/L、50μg/L、100μg/L 和 10mg/L),并将其滴在不同花生仁的表面。接下来,使用高光谱成像系统在 365nm 紫外(UV)光下获取每个样品的 33 个波段(400-720nm)的高光谱图像。然后提出了四个荧光指标,包括辐射指数(RI)、差异辐射指数(DRI)、比辐射指数(RRI)和归一化差异辐射指数(NDRI)。最后,使用 Fisher 方法对窄带光谱进行优化,并使用 RBF-SVM 模型识别黄曲霉毒素,并对黄曲霉毒素污染程度进行回归分析。实验结果表明,DRI 指数性能最佳,SVM 的 5 重交叉验证准确率为 95.5%,均方误差(MSE)和相关系数 R 分别为 0.0223 和 0.9785。本文的研究结果对农产品的在线黄曲霉毒素检测和分级具有积极意义。