Department of Optoelectronic Engineering, Jinan University, Guangzhou 510632, People's Republic of China.
Guangzhou Huibiao Testing Technology Center, Guangzhou 510700, People's Republic of China.
J Food Prot. 2021 Jul 1;84(8):1315-1320. doi: 10.4315/JFP-20-447.
This study was conducted to establish a rapid and accurate method for identifying aflatoxin contamination in peanut oil. Attenuated total reflection Fourier transform infrared (ATR-FTIR) spectroscopy combined with either partial least squares discriminant analysis (PLS-DA) or a support vector machine (SVM) algorithm were used to construct discriminative models for distinguishing between uncontaminated and aflatoxin-contaminated peanut oil. Peanut oil samples containing various concentrations of aflatoxin B1 were examined with an ATR-FTIR spectrometer. Preprocessed spectral data were input to PLS-DA and SVM algorithms to construct discriminative models for aflatoxin contamination in peanut oil. SVM penalty and kernel function parameters were optimized using grid search, a genetic algorithm, and particle swarm optimization. The PLS-DA model established using spectral data had an accuracy of 94.64% and better discrimination than did models established based on preprocessed data. The SVM model established after data normalization and grid search optimization with a penalty parameter of 16 and a kernel function parameter of 0.0359 had the best discrimination, with 98.2143% accuracy. The discriminative models for aflatoxin contamination in peanut oil established by combining ATR-FTIR spectral data and nonlinear SVM algorithm were superior to the linear PLS-DA models.
本研究旨在建立一种快速准确的方法来识别花生油中的黄曲霉毒素污染。采用衰减全反射傅里叶变换红外(ATR-FTIR)光谱结合偏最小二乘判别分析(PLS-DA)或支持向量机(SVM)算法,建立用于区分未污染和黄曲霉毒素污染花生油的判别模型。使用 ATR-FTIR 光谱仪检测含有不同浓度黄曲霉毒素 B1 的花生油样品。将预处理后的光谱数据输入 PLS-DA 和 SVM 算法,建立用于区分花生油中黄曲霉毒素污染的判别模型。使用网格搜索、遗传算法和粒子群优化对 SVM 惩罚和核函数参数进行优化。使用光谱数据建立的 PLS-DA 模型的准确性为 94.64%,比基于预处理数据建立的模型具有更好的区分能力。经过数据归一化和网格搜索优化,惩罚参数为 16,核函数参数为 0.0359 的 SVM 模型具有最佳的区分能力,准确率为 98.2143%。结合 ATR-FTIR 光谱数据和非线性 SVM 算法建立的花生油黄曲霉毒素污染判别模型优于线性 PLS-DA 模型。