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通过数据分析和机器学习对 MALDI-TOF 质谱进行细菌种属鉴定。

Bacterial species identification from MALDI-TOF mass spectra through data analysis and machine learning.

机构信息

Laboratory of Microbiology, Ghent University, K.L. Ledeganckstraat 35, 9000 Ghent, Belgium.

出版信息

Syst Appl Microbiol. 2011 Feb;34(1):20-9. doi: 10.1016/j.syapm.2010.11.003. Epub 2011 Feb 4.

DOI:10.1016/j.syapm.2010.11.003
PMID:21295428
Abstract

At present, there is much variability between MALDI-TOF MS methodology for the characterization of bacteria through differences in e.g., sample preparation methods, matrix solutions, organic solvents, acquisition methods and data analysis methods. After evaluation of the existing methods, a standard protocol was developed to generate MALDI-TOF mass spectra obtained from a collection of reference strains belonging to the genera Leuconostoc, Fructobacillus and Lactococcus. Bacterial cells were harvested after 24h of growth at 28°C on the media MRS or TSA. Mass spectra were generated, using the CHCA matrix combined with a 50:48:2 acetonitrile:water:trifluoroacetic acid matrix solution, and analyzed by the cell smear method and the cell extract method. After a data preprocessing step, the resulting high quality data set was used for PCA, distance calculation and multi-dimensional scaling. Using these analyses, species-specific information in the MALDI-TOF mass spectra could be demonstrated. As a next step, the spectra, as well as the binary character set derived from these spectra, were successfully used for species identification within the genera Leuconostoc, Fructobacillus, and Lactococcus. Using MALDI-TOF MS identification libraries for Leuconostoc and Fructobacillus strains, 84% of the MALDI-TOF mass spectra were correctly identified at the species level. Similarly, the same analysis strategy within the genus Lactococcus resulted in 94% correct identifications, taking species and subspecies levels into consideration. Finally, two machine learning techniques were evaluated as alternative species identification tools. The two techniques, support vector machines and random forests, resulted in accuracies between 94% and 98% for the identification of Leuconostoc and Fructobacillus species, respectively.

摘要

目前,基质辅助激光解吸电离飞行时间质谱(MALDI-TOF MS)技术在细菌鉴定方面存在很大的变异性,例如在样品制备方法、基质溶液、有机溶剂、采集方法和数据分析方法等方面存在差异。在对现有方法进行评估后,开发了一种标准协议,用于生成来自属于肠膜明串珠菌属、果糖杆菌属和乳球菌属的参考菌株的 MALDI-TOF 质谱。细菌细胞在 MRS 或 TSA 培养基上于 28°C 培养 24 小时后收获。使用 CHCA 基质与 50:48:2 乙腈:水:三氟乙酸基质溶液组合生成质谱,并通过细胞涂抹法和细胞提取法进行分析。在进行数据预处理步骤后,使用高质量数据集进行 PCA、距离计算和多维缩放分析。通过这些分析,可以证明 MALDI-TOF 质谱中存在物种特异性信息。下一步,成功地将这些光谱以及从这些光谱衍生的二进制字符集用于肠膜明串珠菌属、果糖杆菌属和乳球菌属内的物种鉴定。使用肠膜明串珠菌和果糖杆菌菌株的 MALDI-TOF MS 鉴定库,84%的 MALDI-TOF 质谱在物种水平上得到正确鉴定。同样,在乳球菌属内进行相同的分析策略,考虑到物种和亚种水平,94%的鉴定结果正确。最后,评估了两种机器学习技术作为替代物种鉴定工具。这两种技术,支持向量机和随机森林,分别用于肠膜明串珠菌和果糖杆菌属的鉴定,准确率在 94%至 98%之间。

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