Dimple Saikia, Cebajel Bhanwarlal Tanan, G. Dhananjaya, Basavraj Hungund, Nilkamal Mahanta, Surya P. Singh
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引用次数: 0
摘要
可乐定抗生素被视为治疗革兰氏阴性细菌感染的最后一道防线。拉曼光谱(RS)与多种机器学习方法的结合有助于解开各种微生物学问题的复杂性。这种方法为鉴定抗菌药耐药性(AMR)提供了一种无需培养、快速而客观的工具。在本研究中,我们采用了机器学习和 RS 的组合方法,以确定与耐可乐定革兰阴性大肠杆菌脂质 A 分子中磷乙醇胺修饰相关的新型光谱标记。该标记的可见光谱指纹已通过偏最小二乘法回归和判别分析进行了验证。该光谱特征的来源已通过高光谱成像和单个细菌细胞的 K-means 聚类得到证实。金标准 MALDI-TOF 质谱法验证了修饰脂质 A 分子的化学结构。我们的研究结果支持这一光谱标记在客观识别对可乐定敏感和耐药细菌方面的应用前景。
Validating phosphoethanolamine modification as a potential spectral marker of colistin resistance
Colistin antibiotic is regarded as the final line of defense for treating infections caused by gram-negative bacteria. The combination of Raman spectroscopy (RS) with diverse machine learning methods has helped to unravel the complexity of various microbiology problems. This approach offers a culture-free, rapid, and objective tool for identifying antimicrobial resistance (AMR). In this study, we employed the combinatorial approach of machine learning and RS to identify a novel spectral marker associated with phosphoethanolamine modification in lipid A moiety of colistin resistant gram-negative Escherichia coli. The visible spectral fingerprints of this marker have been validated by partial least square regression and discriminant analysis. The origin of the spectral feature has been confirmed by hyperspectral imaging and K-means clustering of a single bacterial cell. The chemical structure of the modified lipid A moiety has been verified by gold standard MALDI-TOF mass spectrometry. Our findings support futuristic applicability of this spectroscopic marker in objectively identifying colistin-sensitive and resistant.