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Tapping the potential of intact cell mass spectrometry with a combined data analytical approach applied to Yersinia spp.: Detection, differentiation and identification of Y. pestis

机译:利用应用于耶尔森菌的组合数据分析方法挖掘完整细胞质谱技术的潜力:鼠疫耶尔森氏菌的检测,分化和鉴定

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摘要

In the everyday routine of an analytic lab, one is often confronted with the challenge to identify an unknown microbial sample lacking prior information to set the search limits.In the present work, we propose a workflow, which uses the spectral diversity of a commercial database (SARAMIS) to narrow down the search field at a certain taxonomic level, followed by a refined classification by supervised modelling. As supervised learning algorithm, we have chosen a shrinkage discriminant analysis approach, which takes collinearity of the data into account and provides a scoring system for biomarker ranking. This ranking can be used to tailor specific biomarker subsets, which optimize discrimination between subgroups, allowing a weighting of misclassification.The suitability of the approach was verified based on a dataset containing the mass spectra of three Yersinia species Yersinia enterocolitica, Y. pseudotuberculosis and Yersinia pestis. Thereby, we laid the emphasis on the discrimination between the highly related species Yersinia pseudotuberculosis and Y. pestis.All three species were correctly identified at the genus level by the commercial database. Whereas Y. enterocolitica was correctly identified at the species level, discrimination between the highly related Y. pseudotuberculosis and Y. pestis strains was ambiguous. With the use of the supervised modelling approach, we were able to accurately discriminate all the species even when grown under different culture conditions
机译:在分析实验室的日常工作中,人们经常面临识别缺乏已知信息以设定搜索范围的未知微生物样品的挑战。在本工作中,我们提出一种工作流程,该流程使用商业数据库的光谱多样性(SARAMIS)在特定分类级别缩小搜索范围,然后通过监督建模进行精细分类。作为监督学习算法,我们选择了一种收缩判别分析方法,该方法将数据的共线性考虑在内,并为生物标志物排名提供了评分系统。该排名可用于定制特定的生物标志物子集,从而优化子组之间的区分,从而允许错误分类的权重。该方法的适用性基于包含三种耶尔森菌小肠结肠炎耶尔森菌,假​​结核耶尔森氏菌和耶尔森氏菌的质谱数据集进行了验证。瘟疫。因此,我们着重于对高度相关的物种耶尔森氏菌假结核耶尔森氏菌和鼠疫耶尔森氏菌之间的区分。通过商业数据库在属水平上正确识别了这三个物种。尽管在物种水平上正确鉴定了小肠结肠炎耶尔森氏菌,但高度相关的假结核耶尔森氏菌和鼠疫耶尔森氏菌菌株之间的区别却模棱两可。通过使用监督建模方法,即使在不同的培养条件下生长,我们也能够准确地区分所有物种

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