Characterizing Metabolic Stress-induced Phenotypes of PCC6803 with Raman Spectroscopy
Overview
Environmental Health
General Medicine
Affiliations
Background: During their long evolution, sp. PCC6803 developed a remarkable capacity to acclimate to diverse environmental conditions. In this study, Raman spectroscopy and Raman chemometrics tools (Rametrix) were employed to investigate the phenotypic changes in response to external stressors and correlate specific Raman bands with their corresponding biomolecules determined with widely used analytical methods.
Methods: cells were grown in the presence of (i) acetate (7.5-30 mM), (ii) NaCl (50-150 mM) and (iii) limiting levels of MgSO (0-62.5 mM) in BG-11 media. Principal component analysis (PCA) and discriminant analysis of PCs (DAPC) were performed with the Rametrix LITE Toolbox for MATLAB. Next, validation of these models was realized via Rametrix PRO Toolbox where prediction of accuracy, sensitivity, and specificity for an unknown Raman spectrum was calculated. These analyses were coupled with statistical tests (ANOVA and pairwise comparison) to determine statistically significant changes in the phenotypic responses. Finally, amino acid and fatty acid levels were measured with well-established analytical methods. The obtained data were correlated with previously established Raman bands assigned to these biomolecules.
Results: Distinguishable clusters representative of phenotypic responses were observed based on the external stimuli (i.e., acetate, NaCl, MgSO, and controls grown on BG-11 medium) or its concentration when analyzing separately. For all these cases, Rametrix PRO was able to predict efficiently the corresponding concentration in the culture media for an unknown Raman spectra with accuracy, sensitivity and specificity exceeding random chance. Finally, correlations ( > 0.7) were observed for all amino acids and fatty acids between well-established analytical methods and Raman bands.
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Meixner K, Daffert C, Dalnodar D, Mrazova K, Hrubanova K, Krzyzanek V J Appl Phycol. 2022; 34(3):1227-1241.
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Rebrosova K, Samek O, Kizovsky M, Bernatova S, Hola V, Ruzicka F Front Cell Infect Microbiol. 2022; 12:866463.
PMID: 35531343 PMC: 9072635. DOI: 10.3389/fcimb.2022.866463.