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Gaussian mixture discriminant analysis for the single-cell differentiation of bacteria using micro-Raman spectroscopy

机译:高斯混合物判别分析,使用微拉曼光谱法对细菌进行单细胞分化

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The differentiation of single bacterial cells using micro-Raman spectroscopy can be hampered by large intra-strain variability of the measured microorganisms due to fluctuating culture ages, nutrition conditions, and cultivation temperatures. Gaussian mixture discriminant analysis (MDA) is an effective classification approach for this task, as it is able to model inhomogeneous and scattering class structures. On the basis of a highly diverse dataset comprising 3642 spectra of 29 different strains of bacteria, the utility of MDA for the differentiation of microorganisms by micro-Raman spectroscopy was demonstrated in comparison to various linear and nonlinear classification algorithms. The employed algorithms include partial least squares discriminant analysis (PLS-DA), linear discriminant analysis (LDA), quadratic discriminant analysis (QDA), k-nearest neighbor classifier (kNN) and support vector machines (SVMs). In a first attempt the best prediction performance was achieved by a SVM model yielding 87.3percent of correctly classified spectra outperforming MDA (80.9percent) and the other classification methods. The prediction accuracy of MDA can be improved markedly by establishing multiple one-class-versus-one-class models and making predictions by a major vote decision over all pairwise classifications. Using this pairwise approach the performance of MDA increased up to 86.6percent, which is statistically equivalent to the performance of a support vector machine. In the case of MDA, the assessment of a posteriori probabilities allows a straightforward novelty detection procedure. Moreover, due to its cluster property, MDA can be employed to visualize the effect of varying cultivation parameters on the group-structure of the investigated dataset. The analysis demonstrates that MDA exhibits useful features for the differentiation of single bacteria by micro-Raman spectroscopy in terms of prediction accuracy, novelty detection, and interpretation of the model.
机译:由于培养年龄,营养条件和培养温度的变化,使用微拉曼光谱法对单个细菌细胞的分化可能会因所测微生物的较大菌株内变异性而受到阻碍。高斯混合判别分析(MDA)是用于此任务的有效分类方法,因为它能够建模不均匀和分散的类结构。在高度多样化的数据集(包含29种不同菌株的3642个光谱)的基础上,与各种线性和非线性分类算法相比,证明了MDA可通过微拉曼光谱法区分微生物。所采用的算法包括偏最小二乘判别分析(PLS-DA),线性判别分析(LDA),二次判别分析(QDA),k最近邻分类器(kNN)和支持向量机(SVM)。在第一次尝试中,最佳的预测性能是通过SVM模型获得的,正确分类的光谱比MDA的分类准确率高87.3%(80.9%),而其他分类方法则更佳。通过建立多个一类对一类模型并通过对所有成对分类的主要投票决定进行预测,可以显着提高MDA的预测准确性。使用这种成对方法,MDA的性能提高了86.6%,这在统计上等同于支持向量机的性能。在MDA的情况下,对后验概率的评估允许进行简单明了的新颖性检测程序。此外,由于其簇属性,MDA可用于可视化变化的培养参数对所研究数据集的组结构的影响。分析表明,在预测准确性,新颖性检测和模型解释方面,MDA在微拉曼光谱学方面表现出了用于区分单个细菌的有用功能。

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