基于 LIBS 结合不同机器学习算法的病原菌分类模型构建。
Construction of classification models for pathogenic bacteria based on LIBS combined with different machine learning algorithms.
出版信息
Appl Opt. 2022 Jul 20;61(21):6177-6185. doi: 10.1364/AO.463278.
Bacteria, especially foodborne pathogens, seriously threaten human life and health. Rapid discrimination techniques for foodborne pathogens are still urgently needed. At present, laser-induced breakdown spectroscopy (LIBS), combined with machine learning algorithms, is seen as fast recognition technology for pathogenic bacteria. However, there is still a lack of research on evaluating the differences between different bacterial classification models. In this work, five species of foodborne pathogens were analyzed via LIBS; then, the preprocessing effect of five filtering methods was compared to improve accuracy. The preprocessed spectral data were further analyzed with a support vector machine (SVM), a backpropagation neural network (BP), and -nearest neighbor (KNN). Upon comparing the capacity of the three algorithms to classify pathogenic bacteria, the most suitable one was selected. The signal-to-noise ratio and mean square error of the spectral data after applying a Savitzky-Golay filter reached 17.4540 and 0.0020, respectively. The SVM algorithm, BP algorithm, and KNN algorithm attained the highest classification accuracy for pathogenic bacteria, reaching 98%, 97%, and 96%, respectively. The results indicate that, with the support of a machine learning algorithm, LIBS technology demonstrates superior performance, and the combination of the two is expected to be a powerful tool for pathogen classification.
细菌,特别是食源性致病菌,严重威胁着人类的生命和健康。因此,仍然迫切需要快速鉴别食源性致病菌的技术。目前,激光诱导击穿光谱(LIBS)结合机器学习算法被认为是一种快速识别致病菌的技术。然而,对于不同细菌分类模型之间的差异评估研究仍相对较少。在这项工作中,我们利用 LIBS 分析了 5 种食源性致病菌,然后比较了 5 种滤波方法的预处理效果,以提高准确性。进一步采用支持向量机(SVM)、反向传播神经网络(BP)和 -近邻(KNN)对预处理后的光谱数据进行分析。通过比较这三种算法对致病菌分类的能力,选择了最合适的算法。在应用 Savitzky-Golay 滤波器后,光谱数据的信噪比和均方误差分别达到 17.4540 和 0.0020。SVM 算法、BP 算法和 KNN 算法对致病菌的分类准确率最高,分别达到 98%、97%和 96%。结果表明,在机器学习算法的支持下,LIBS 技术具有优异的性能,两者的结合有望成为一种强大的病原体分类工具。