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首页> 外文期刊>Journal of near infrared spectroscopy >Rapid identification of Lactobacillus species using near infrared spectral features of bacterial colonies
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Rapid identification of Lactobacillus species using near infrared spectral features of bacterial colonies

机译:使用近红外光谱特征的乳杆菌物种的快速鉴定细菌菌落

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The feasibility of rapid identification of Lactobacillus species using near-infrared spectral features coupled with chemometrics was investigated. First, bacterial colonies of 11 Lactobacillus strains covering four species (Lactobacillus casei, Lactobacillus reuteri, Lactobacillus brevis, and Lactobacillus fermentum) were cultured using the spread-plate technique. Near-infrared spectra data of the Lactobacillus species were collected directly from the bacterial colonies. Second, 10 wavenumbers were selected from the near-infrared spectra data using uninformative variables elimination and genetic algorithm, and calibration models based on the 10 selected wavenumbers were built using least squares support vector machine. The identification rates for the prediction set and validation set were 89.04 and 85%, respectively. Third, chemical groups of the Lactobacillus cells contributing to the identification of the Lactobacillus strains were identified using mid infrared. The results of mid infrared data analysis indicated that 9 chemical groups could be considered characteristics for categorizing the 11 Lactobacillus strains. The relationship between the 10 selected wavenumbers and identified chemical groups was identified, which supported the satisfactory performance of the least squares support vector machine calibration model. This study demonstrated that near-infrared spectral features of bacterial colonies could be used for Lactobacillus typing at the strain level.
机译:研究了使用近红外光谱特征进行快速鉴定乳酸杆菌物种的可行性。首先,使用涂抹板技术培养覆盖4种含有四种物种(乳酸杆菌酪虫,乳酸杆菌,乳酸杆菌BEVERIS和乳酸杆菌菌丝)的细菌菌落。直接从细菌菌落中收集乳杆菌物种的近红外光谱数据。其次,使用不正常变量消除和遗传算法的近红外光谱数据选择10个波数,并且使用最小二乘支持向量机建造了基于10个选定波数的校准模型。预测集和验证集的识别率分别为89.04和85%。第三,使用中红外线鉴定有助于鉴定乳酸杆菌菌株的乳酸杆菌细胞的化学基团。中红外数据分析的结果表明,9种化学基团可以被认为是对乳杆菌菌株进行分类的特征。鉴定了10个选定的波数和所识别的化学基团之间的关系,支持最小二乘支持向量机校准模型的令人满意的性能。本研究表明,细菌菌落的近红外光谱特征可用于粘性杆菌在应变水平处键入。

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