Wang Chengzhi, Fu Xiaping, Zhou Ying, Fu Feng
School of Information Science and Engineering, Zhejiang Sci-Tech University, Hangzhou 310018, China.
Key Laboratory of Transplanting Equipment and Technology of Zhejiang Province, Hangzhou 310018, China.
Foods. 2024 Mar 15;13(6):897. doi: 10.3390/foods13060897.
Deoxynivalenol (DON) is a harmful fungal toxin, and its contamination in wheat flour poses a food safety concern globally. This study proposes the combination of fluorescence hyperspectral imaging (FHSI) and qualitative discrimination methods for the detection of excessive DON content in wheat flour. Wheat flour samples were prepared with varying DON concentrations through the addition of trace amounts of DON using the wet mixing method for fluorescence hyperspectral image collection. SG smoothing and normalization algorithms were applied for original spectra preprocessing. Feature band selection was carried out by applying the successive projection algorithm (SPA), uninformative variable elimination (UVE), competitive adaptive reweighted sampling (CARS), and the random frog algorithm on the fluorescence spectrum. Random forest (RF) and support vector machine (SVM) classification models were utilized to identify wheat flour samples with DON concentrations higher than 1 mg/kg. The results indicate that the SG-CARS-RF and SG-CARS-SVM models showed better performance than other models, achieving the highest recall rate of 98.95% and the highest accuracy of 97.78%, respectively. Additionally, the ROC curves demonstrated higher robustness on the RF algorithm. Deep learning algorithms were also applied to identify the samples that exceeded safety standards, and the convolutional neural network (CNN) model achieved a recognition accuracy rate of 97.78% for the test set. In conclusion, this study demonstrates the feasibility and potential of the FHSI technique in detecting DON infection in wheat flour.
脱氧雪腐镰刀菌烯醇(DON)是一种有害真菌毒素,其在小麦粉中的污染引发了全球食品安全问题。本研究提出将荧光高光谱成像(FHSI)与定性判别方法相结合,用于检测小麦粉中过量的DON含量。通过湿混法添加微量DON制备不同DON浓度的小麦粉样品,用于荧光高光谱图像采集。采用SG平滑和归一化算法对原始光谱进行预处理。通过对荧光光谱应用连续投影算法(SPA)、无信息变量消除(UVE)、竞争性自适应重加权采样(CARS)和随机蛙跳算法进行特征波段选择。利用随机森林(RF)和支持向量机(SVM)分类模型识别DON浓度高于1mg/kg的小麦粉样品。结果表明,SG-CARS-RF和SG-CARS-SVM模型表现优于其他模型,召回率分别达到最高的98.95%和准确率最高的97.78%。此外,ROC曲线表明RF算法具有更高的稳健性。还应用深度学习算法识别超出安全标准的样品,卷积神经网络(CNN)模型对测试集的识别准确率达到97.78%。总之,本研究证明了FHSI技术在检测小麦粉中DON污染方面的可行性和潜力。