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Raman Spectroscopy Classification of Foodborne Pathogenic Bacteria Based on PCA-Stacking Model

机译:基于PCA叠加模型的食源性致病菌拉曼光谱分类

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The rapid identification of foodborne pathogenic bacteria is an important task. Compared with traditional detection methods, Raman spectroscopy is a non-destructive testing method and it can reduce the identification time. In order to improve the accuracy and efficiency of Raman spectra identification of Escherichia coil O157:H7 and Brucellasuis vaccine strain 2, this paper proposes a classification model that based on principal component analysis and Stacking algorithm. Grid search and K-fold cross validation are used to improve the robustness of the model. Compared with other models such as K Nearest Neighbor, and Support Vector Machine, the experimental results show that the Stacking algorithm as an ensemble algorithm has the highest accuracy rate of 95.73%, which has achieved the expected results.
机译:快速鉴定食源性致病细菌是一项重要任务。与传统的检测方法相比,拉曼光谱法是一种无损检测方法,可减少识别时间。为了提高大肠杆菌O157:H7和布鲁氏菌疫苗株2的拉曼光谱鉴定的准确性和效率,提出了一种基于主成分分析和堆积算法的分类模型。网格搜索和K折交叉验证用于提高模型的鲁棒性。与K最近邻和支持向量机等模型相比,实验结果表明,作为集成算法的Stacking算法具有最高的准确率95.73%,达到了预期的效果。

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