Tanniche Imen, Collakova Eva, Denbow Cynthia, Senger Ryan S
Department of Biological Systems Engineering, Virginia Polytechnic Institute and State University (Virginia Tech), Blacksburg, VA, United States of America.
School of Plant & Environmental Sciences, Virginia Polytechnic Institute and State University (Virginia Tech), Blacksburg, VA, United States of America.
PeerJ. 2020 Mar 30;8:e8535. doi: 10.7717/peerj.8535. eCollection 2020.
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.
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.
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.
在漫长的进化过程中,聚球藻属PCC6803菌株形成了显著的适应多种环境条件的能力。在本研究中,采用拉曼光谱和拉曼化学计量学工具(Rametrix)来研究其对外部应激源的表型变化,并将特定的拉曼谱带与其通过广泛使用的分析方法测定的相应生物分子相关联。
细胞在BG-11培养基中于以下条件下生长:(i)乙酸盐(7.5-30 mM),(ii)氯化钠(50-150 mM),以及(iii)硫酸镁(0-62.5 mM)的限制水平。使用用于MATLAB的Rametrix LITE工具箱进行主成分分析(PCA)和主成分判别分析(DAPC)。接下来,通过Rametrix PRO工具箱对这些模型进行验证,计算未知拉曼光谱的预测准确性、敏感性和特异性。这些分析与统计检验(方差分析和成对比较)相结合,以确定表型反应中的统计学显著变化。最后,用成熟的分析方法测量氨基酸和脂肪酸水平。将获得的数据与先前确定的这些生物分子的拉曼谱带相关联。
在分别分析时,基于外部刺激(即乙酸盐、氯化钠、硫酸镁以及在BG-11培养基上生长的对照)或其浓度观察到了代表表型反应的可区分聚类。对于所有这些情况,Rametrix PRO能够有效地预测未知拉曼光谱在培养基中的相应浓度,其准确性、敏感性和特异性超过随机概率。最后,在成熟的分析方法和拉曼谱带之间观察到所有氨基酸和脂肪酸的相关性(>0.7)。