Masia Francesco, Glen Adam, Stephens Phil, Langbein Wolfgang, Borri Paola
School of Physics and Astronomy, Cardiff University, Cardiff, UK.
School of Dentistry, Cardiff University, Cardiff, UK.
J Biophotonics. 2018 Jul;11(7):e201700219. doi: 10.1002/jbio.201700219. Epub 2018 Apr 19.
Stem cells have received much attention recently for their potential utility in regenerative medicine. The identification of their differentiated progeny often requires complex staining procedures, and is challenging for intermediary stages which are a priori unknown. In this work, the ability of label-free quantitative coherent anti-Stokes Raman scattering (CARS) micro-spectroscopy to identify populations of intermediate cell states during the differentiation of murine embryonic stem cells into adipocytes is assessed. Cells were imaged at different days of differentiation by hyperspectral CARS, and images were analysed with an unsupervised factorization algorithm providing Raman-like spectra and spatially resolved maps of chemical components. Chemical decomposition combined with a statistical analysis of their spatial distributions provided a set of parameters that were used for classification analysis. The first 2 principal components of these parameters indicated 3 main groups, attributed to undifferentiated cells, cells differentiated into committed white pre-adipocytes, and differentiating cells exhibiting a distinct protein globular structure with adjacent lipid droplets. An unsupervised classification methodology was developed, separating undifferentiated cell from cells in other stages, using a novel method to estimate the optimal number of clusters. The proposed unsupervised classification pipeline of hyperspectral CARS data offers a promising new tool for automated cell sorting in lineage analysis.
干细胞因其在再生医学中的潜在应用价值,近年来备受关注。鉴定其分化后代往往需要复杂的染色程序,对于先验未知的中间阶段而言具有挑战性。在这项工作中,评估了无标记定量相干反斯托克斯拉曼散射(CARS)显微光谱技术在鉴定小鼠胚胎干细胞向脂肪细胞分化过程中中间细胞状态群体方面的能力。通过高光谱CARS在分化的不同天数对细胞进行成像,并使用无监督分解算法分析图像,该算法可提供类似拉曼光谱以及化学成分的空间分辨图谱。化学分解结合其空间分布的统计分析提供了一组用于分类分析的参数。这些参数的前两个主成分表明存在3个主要群体,分别归因于未分化细胞、分化为定型白色前脂肪细胞的细胞以及呈现出具有相邻脂滴的独特蛋白质球状结构的分化细胞。开发了一种无监督分类方法,使用一种估计最佳聚类数的新方法,将未分化细胞与其他阶段的细胞区分开来。所提出的高光谱CARS数据无监督分类流程为谱系分析中的自动细胞分选提供了一种有前景的新工具。