Leibniz Institute of Photonic Technology, Albert-Einstein-Str. 9, 07745 Jena, Germany.
Analyst. 2016 Nov 14;141(23):6387-6395. doi: 10.1039/c6an01018k.
Raman spectroscopy has previously been used to identify eukaryotic and prokaryotic cells. While prokaryotic cells are small in size and can be assessed by a single Raman spectrum, the larger size of eukaryotic cells and their complex organization requires the acquisition of multiple Raman spectra to properly characterize them. A Raman spectrum from a diffraction-limited spot at an arbitrary location within a cell results in spectral variations that affect classification approaches. To probe whole cells with Raman imaging at high spatial resolution is time consuming, because a large number of Raman spectra need to be collected, resulting in low cell throughput and impairing statistical analysis due to low cell numbers. Here we propose a method to overcome the effects of cellular heterogeneity by acquiring integrated Raman spectra covering a large portion of a cell. The acquired spectrum represents the mean macromolecular composition of a cell with an exposure time that is comparable to acquisition of a single Raman spectrum. Data sets were collected from T lymphocyte Jurkat cells, and pancreatic cell lines Capan1 and MiaPaca2. Cell classification by support vector machines was compared for single spectra, spectra of images and integrated Raman spectra of cells. The integrated approach provides better and more stable prediction for individual cells, and in the current implementation, the mean macromolecular information of a cell can be acquired faster than with the acquisition of individual spectra from a comparable region. It is expected that this approach will have a major impact on the implementation of Raman based cell classification.
拉曼光谱以前曾被用于鉴定真核细胞和原核细胞。虽然原核细胞体积小,可以通过单个拉曼光谱进行评估,但真核细胞体积较大且组织结构复杂,需要获取多个拉曼光谱才能对其进行正确表征。在细胞内任意位置的衍射极限点采集的拉曼光谱会导致光谱变化,从而影响分类方法。要以高空间分辨率对整个细胞进行拉曼成像探测非常耗时,因为需要采集大量的拉曼光谱,从而导致细胞通量低,并由于细胞数量低而影响统计分析。在这里,我们提出了一种通过获取覆盖细胞大部分区域的集成拉曼光谱来克服细胞异质性影响的方法。所获取的光谱代表了细胞的平均大分子组成,其曝光时间与单个拉曼光谱的采集时间相当。从 T 淋巴细胞 Jurkat 细胞、胰腺细胞系 Capan1 和 MiaPaca2 中收集了数据集。通过支持向量机对单个光谱、图像光谱和细胞集成拉曼光谱进行细胞分类比较。集成方法为单个细胞提供了更好、更稳定的预测,并且在当前的实现中,比从可比区域获取单个光谱快,可以更快地获取细胞的平均大分子信息。预计这种方法将对基于拉曼的细胞分类的实现产生重大影响。