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Chromatographic analysis of peptidoglycan samples with the aid of a chemometric technique: introducing a novel analytical procedure to classify bacterial cell wall collection

机译:借助化学计量技术对肽聚糖样品进行色谱分析:引入新的分析程序对细菌细胞壁收集进行分类

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The technical development of liquid chromatography has provided the necessary sensitivity to characterise peptidoglycan samples. However, the analysis of large numbers of complex chromatographic data sets without the aid of a proper chemometric technique is a laborious task, carrying a high risk of losing important biochemical information. The present work describes the development of a simple analytical procedure using self-organising map (SOM) analysis to analyse the large number of complex chromatographic data sets from bacterial peptidoglycan samples. SOM analysis essentially maps the samples to a hexagonal sheet based on their compositional similarity, and thus provides an approach to classify the bacterial cell wall collection in an unsupervised manner. The utility of the proposed approach was successfully validated by analysing peptidoglycan samples belonging to the Alphaproteobacterium class. The classification results achieved with SOM analysis were found to correlate well with their relative similarity in peptidoglycan compositions. In summary, the SOM analysis-based analytical procedure is shown to be useful towards automatising the analyses of chromatographic data sets of peptidoglycan samples from bacterial collections.
机译:液相色谱的技术发展为表征肽聚糖样品提供了必要的灵敏度。但是,在没有适当的化学计量学技术的帮助下分析大量复杂的色谱数据集是一项艰巨的任务,具有丢失重要生化信息的高风险。本工作描述了使用自组织图(SOM)分析来分析细菌肽聚糖样品中大量复杂色谱数据集的简单分析程序的开发。 SOM分析实质上是根据样本的组成相似性将样本映射到六边形,从而提供了一种以无监督方式对细菌细胞壁收集进行分类的方法。通过分析属于Alteproteobacter类的肽聚糖样品,成功验证了所提出方法的实用性。发现通过SOM分析获得的分类结果与其在肽聚糖组合物中的相对相似性良好相关。总而言之,基于SOM分析的分析程序显示出对自动化细菌收集肽聚糖样品色谱数据集分析的有用。

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