Boitor Radu, Sinjab Faris, Strohbuecker Stephanie, Sottile Virginie, Notingher Ioan
School of Physics and Astronomy, University of Nottingham, University Park, Nottingham NG7 2RD, UK.
Wolfson STEM Centre, School of Medicine, University of Nottingham, University Park, Nottingham NG7 2RD, UK.
Faraday Discuss. 2016 Jun 23;187:199-212. doi: 10.1039/c5fd00172b.
Raman micro-spectroscopy (RMS) is a non-invasive technique for imaging live cells in vitro. However, obtaining quantitative molecular information from Raman spectra is difficult because the intensity of a Raman band is proportional to the number of molecules in the sampled volume, which depends on the local molecular concentration and the thickness of the cell. In order to understand these effects, we combined RMS with atomic force microscopy (AFM), a technique that can measure accurately the thickness profile of the cells. Solution-based calibration models for RNA and albumin were developed to create quantitative maps of RNA and proteins in individual fixed cells. The maps were built by applying the solution-based calibration models, based on partial least squares fitting (PLS), on raster-scan Raman maps, after accounting for the local cell height obtained from the AFM. We found that concentrations of RNA in the cytoplasm of mouse neuroprogenitor stem cells (NSCs) were as high as 25 ± 6 mg ml(-1), while proteins were distributed more uniformly and reached concentrations as high as ∼50 ± 12 mg ml(-1). The combined AFM-Raman datasets from fixed cells were also used to investigate potential improvements for normalization of Raman spectral maps. For all Raman maps of fixed cells (n = 10), we found a linear relationship between the scores corresponding to the first component (PC1) and the cell height profile obtained by AFM. We used PC1 scores to reconstruct the relative height profiles of independent cells (n = 10), and obtained correlation coefficients with AFM maps higher than 0.99. Using this normalization method, qualitative maps of RNA and protein were used to obtain concentrations for live NSCs. While this study demonstrates the potential of using AFM and RMS for measuring concentration maps for individual NSCs in vitro, further studies are required to establish the robustness of the normalization method based on principal component analysis when comparing Raman spectra of cells with large morphological differences.
拉曼显微光谱(RMS)是一种用于体外对活细胞进行成像的非侵入性技术。然而,从拉曼光谱中获取定量分子信息很困难,因为拉曼峰的强度与采样体积中的分子数量成正比,而这又取决于局部分子浓度和细胞厚度。为了理解这些影响,我们将RMS与原子力显微镜(AFM)相结合,AFM是一种能够精确测量细胞厚度轮廓的技术。我们开发了基于溶液的RNA和白蛋白校准模型,以创建单个固定细胞中RNA和蛋白质的定量图谱。这些图谱是通过在考虑从AFM获得的局部细胞高度后,将基于偏最小二乘拟合(PLS)的基于溶液的校准模型应用于光栅扫描拉曼图谱而构建的。我们发现,小鼠神经祖干细胞(NSCs)细胞质中的RNA浓度高达25±6 mg ml⁻¹,而蛋白质分布更为均匀,浓度高达约50±12 mg ml⁻¹。来自固定细胞的AFM-Raman组合数据集还用于研究拉曼光谱图归一化的潜在改进。对于所有固定细胞的拉曼图谱(n = 10),我们发现对应于第一主成分(PC1)的得分与通过AFM获得的细胞高度轮廓之间存在线性关系。我们使用PC1得分重建独立细胞(n = 10)的相对高度轮廓,并获得与AFM图谱的相关系数高于0.99。使用这种归一化方法,RNA和蛋白质的定性图谱被用于获得活NSCs的浓度。虽然这项研究证明了使用AFM和RMS在体外测量单个NSCs浓度图谱的潜力,但在比较具有大形态差异的细胞的拉曼光谱时,还需要进一步研究来确定基于主成分分析的归一化方法的稳健性。