Ceramic Physics Laboratory, Kyoto Institute of Technology, Sakyo-ku, Matsugasaki, Kyoto 606-8585, Japan.
Department of Immunology, Graduate School of Medical Science, Kyoto Prefectural University of Medicine, Kamigyo-ku, 465 Kajii-cho, Kyoto 602-8566, Japan.
Int J Mol Sci. 2022 Oct 3;23(19):11736. doi: 10.3390/ijms231911736.
This study targets on-site/real-time taxonomic identification and metabolic profiling of seven different clades/subclades by means of Raman spectroscopy and imaging. Representative Raman spectra from different samples were systematically deconvoluted by means of a customized machine-learning algorithm linked to a Raman database in order to decode structural differences at the molecular scale. Raman analyses of metabolites revealed clear differences in cell walls and membrane structure among clades/subclades. Such differences are key in maintaining the integrity and physical strength of the cell walls in the dynamic response to external stress and drugs. It was found that cells use the glucan structure of the extracellular matrix, the degree of α-chitin crystallinity, and the concentration of hydrogen bonds between its antiparallel chains to tailor cell walls' flexibility. Besides being an effective ploy in survivorship by providing stiff shields in the α-1,3-glucan polymorph, the α-1,3-glycosidic linkages are also water-insoluble, thus forming a rigid and hydrophobic scaffold surrounded by a matrix of pliable and hydrated β-glucans. Raman analysis revealed a variety of strategies by different clades to balance stiffness, hydrophobicity, and impermeability in their cell walls. The selected strategies lead to differences in resistance toward specific environmental stresses of cationic/osmotic, oxidative, and nitrosative origins. A statistical validation based on principal component analysis was found only partially capable of distinguishing among Raman spectra of clades and subclades. Raman barcoding based on an algorithm converting spectrally deconvoluted Raman sub-bands into barcodes allowed for circumventing any speciation deficiency. Empowered by barcoding bioinformatics, Raman analyses, which are fast and require no sample preparation, allow on-site speciation and real-time selection of appropriate treatments.
本研究旨在通过拉曼光谱和成像技术对七个不同的分支/亚分支进行现场/实时分类鉴定和代谢分析。通过与拉曼数据库相关联的定制机器学习算法对来自不同样本的代表性拉曼光谱进行系统去卷积,以解码分子水平上的结构差异。代谢物的拉曼分析揭示了分支/亚分支之间细胞壁和膜结构的明显差异。这些差异对于维持细胞壁在对外界压力和药物的动态响应中的完整性和物理强度至关重要。研究发现,细胞利用细胞外基质的葡聚糖结构、α-壳聚糖结晶度和其反平行链之间氢键的浓度来调整细胞壁的柔韧性。除了通过在α-1,3-葡聚糖多晶型中提供坚硬的盾牌来有效地生存外,α-1,3-糖苷键也不易溶于水,从而形成一个刚性和疏水性的支架,周围是柔韧和水合的β-葡聚糖基质。拉曼分析揭示了不同分支在细胞壁的刚度、疏水性和不透性之间取得平衡的各种策略。所选策略导致它们对阳离子/渗透、氧化和亚硝化来源的特定环境压力的抗性存在差异。基于主成分分析的统计验证发现,它只能部分地区分分支和亚分支的拉曼光谱。基于将光谱去卷积后的拉曼子带转换为条形码的算法的条形码编码允许规避任何分类不足。借助条形码生物信息学,拉曼分析快速且无需样品制备,允许在现场进行分类鉴定,并实时选择合适的治疗方法。