Jin Yuanyin, Li Chun, Huang Zhengwei, Jiang Ling
College of Information Science and Technology, Nanjing Forestry University, 159 Longpan Road, Nanjing 210037, China.
Foods. 2023 Nov 26;12(23):4267. doi: 10.3390/foods12234267.
As an ingredient of great economic value, Tricholoma matsutake has received widespread attention. However, heavy metal residues and preservatives in it will affect the quality of Tricholoma matsutake and endanger the health of consumers. Here, we present a method for the simultaneous detection of low concentrations of potassium sorbate and lead in Tricholoma matsutakes based on surface-enhanced Raman spectroscopy (SERS) and fluorescence (FLU) spectroscopy to test the safety of consumption. Data fusion strategies combined with multiple machine learning methods, including partial least-squares regression (PLSR), deep forest (DF) and convolutional neural networks (CNN) are used for model training. The results show that combined with reasonable band selection, the CNN prediction model based on decision-level fusion achieves the best performance, the correlation coefficients () were increased to 0.9963 and 0.9934, and the root mean square errors () were reduced to 0.0712 g·kg and 0.0795 mg·kg, respectively. The method proposed in this paper accurately predicts preservatives and heavy metals remaining in Tricholoma matsutake and provides a reference for other food safety testing.
作为一种具有巨大经济价值的食材,松茸受到了广泛关注。然而,其中的重金属残留和防腐剂会影响松茸的品质,并危及消费者的健康。在此,我们提出一种基于表面增强拉曼光谱(SERS)和荧光(FLU)光谱同时检测松茸中低浓度山梨酸钾和铅的方法,以检测其食用安全性。结合偏最小二乘回归(PLSR)、深度森林(DF)和卷积神经网络(CNN)等多种机器学习方法的数据融合策略用于模型训练。结果表明,结合合理的波段选择,基于决策级融合的CNN预测模型性能最佳,相关系数()分别提高到0.9963和0.9934,均方根误差()分别降低到0.0712 g·kg和0.0795 mg·kg。本文提出的方法准确预测了松茸中残留的防腐剂和重金属,为其他食品安全检测提供了参考。