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Validation of Hierarchical Cluster Analysis for Identification of Bacterial Species Using 42 Bacterial Isolates

机译:使用42种细菌分离株进行层次聚类分析以鉴定细菌种类的验证

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Recent studies have demonstrated the potential advantages of the use of Raman spectroscopy in the biomedical field due to its rapidity and noninvasive nature. In this study, Raman spectroscopy is applied as a method for differentiating between bacteria isolates for Gram status and Genus species. We created models for identifying 28 bacterial isolates using spectra collected with a 785 nm laser excitation Raman spectroscopic system. In order to investigate the groupings of these samples, partial least squares discriminant analysis (PLSDA) and hierarchical cluster analysis (HCA) was implemented. In addition, cluster analyses of the isolates were performed using various data types consisting of, biochemical tests, gene sequence alignment, high resolution melt (HRM) analysis and antimicrobial susceptibility tests of minimum inhibitory concentration (MIC) and degree of antimicrobial resistance (SIR). In order to evaluate the ability of these models to correctly classify bacterial isolates using solely Raman spectroscopic data, a set of 14 validation samples were tested using the PLSDA models and consequently the HCA models. External cluster evaluation criteria of purity and Rand index were calculated at different taxonomic levels to compare the performance of clustering using Raman spectra as well as the other datasets. Results showed that Raman spectra performed comparably, and in some cases better than, the other data types with Rand index and purity values up to 0.933 and 0.947, respectively. This study clearly demonstrates that the discrimination of bacterial species using Raman spectroscopic data and hierarchical cluster analysis is possible and has the potential to be a powerful point-of-care tool in clinical settings.
机译:最近的研究表明,由于拉曼光谱的快速性和无创性,在生物医学领域中使用拉曼光谱具有潜在的优势。在这项研究中,拉曼光谱法被用作区分革兰氏菌属和属菌种的方法。我们使用785 nm激光激发拉曼光谱系统收集的光谱创建了用于识别28种细菌分离物的模型。为了调查这些样本的分组,实施了偏最小二乘判别分析(PLSDA)和层次聚类分析(HCA)。此外,还使用各种数据类型对分离物进行了聚类分析,包括生化测试,基因序列比对,高分辨率熔解(HRM)分析和最小抑菌浓度(MIC)和抗菌素耐药性(SIR)的抗菌素敏感性测试。 。为了评估这些模型仅使用拉曼光谱数据对细菌分离物进行正确分类的能力,使用PLSDA模型(因此使用HCA模型)对一组14个验证样品进行了测试。在不同分类级别上计算了纯度和兰德指数的外部聚类评估标准,以比较使用拉曼光谱和其他数据集进行聚类的性能。结果表明,拉曼光谱的性能相当,在某些情况下要好于其他数据类型,其兰德指数和纯度值分别高达0.933和0.947。这项研究清楚地表明,使用拉曼光谱数据和层次聚类分析来鉴别细菌物种是可能的,并且有可能在临床环境中成为强大的即时医疗工具。

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