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首页> 外文期刊>Analytical Biochemistry: An International Journal of Analytical and Preparative Methods >Principal coordinate analysis assisted chromatographic analysis of bacterial cell wall collection: A robust classification approach
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Principal coordinate analysis assisted chromatographic analysis of bacterial cell wall collection: A robust classification approach

机译:基本坐标分析细菌细胞壁收集辅助色谱分析:一种鲁棒的分类方法

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摘要

In the present work, Principal coordinate analysis (PCoA) is introduced to develop a robust model to classify the chromatographic data sets of peptidoglycan sample. PcoA captures the heterogeneity present in the data sets by using the dissimilarity matrix as input. Thus, in principle, it can even capture the subtle differences in the bacterial peptidoglycan composition and can provide a more robust and fast approach for classifying the bacterial collection and identifying the novel cell wall targets for further biological and clinical studies. The utility of the proposed approach is successfully demonstrated by analysing the two different kind of bacterial collections. The first set comprised of peptidoglycan sample belonging to different subclasses of Alphaproteobacteria. Whereas, the second set that is relatively more intricate for the chemometric analysis consist of different wild type Vibrio Cholerae and its mutants having subtle differences in their peptidoglycan composition. The present work clearly proposes a useful approach that can classify the chromatographic data sets of chromatographic peptidoglycan samples having subtle differences. Furthermore, present work clearly suggest that PCoA can be a method of choice in any data analysis workflow.
机译:在本作工作中,引入了主坐标分析(PCOA)以开发鲁棒模型以分类肽聚糖样本的色谱数据集。 PCOA通过使用与输入的不同矩阵捕获数据集中存在的异质性。因此,原则上,它甚至可以捕获细菌肽聚糖组合物的微妙差异,并且可以提供更稳健和快速的方法,用于对细菌收集进行分类并鉴定用于进一步生物和临床研究的新型细胞壁靶标。通过分析两种不同种类的细菌收集,成功地证明了所提出的方法的效用。第一组由属于αproteobacteria的不同亚类的肽聚糖样本组成。然而,对于化学计量分析相对更复杂的第二组包括不同的野生型霍乱和其肽聚糖组合物具有微妙差异的突变体。本作本作清楚地提出了一种可用的方法,可以对具有细微差异的色谱数据集的色谱数据组分类。此外,目前的工作明确表明PCOA可以是任何数据分析工作流程中的选择方法。

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