Cellular and Molecular Biotechnology Research Institute, National Institute of Advanced Industrial Science and Technology (AIST), Central 5-41, 1-1-1 Higashi, Tsukuba, Ibaraki, 305-8565, Japan.
Advanced Photonics and Biosensing Open Innovation Laboratory, National Institute of Advanced Industrial Science and Technology (AIST), Central 5-41, 1-1-1 Higashi, Tsukuba, Ibaraki, 305-8565, Japan.
Sci Rep. 2021 Apr 23;11(1):8818. doi: 10.1038/s41598-021-88056-3.
Raman scattering represents the distribution and abundance of intracellular molecules, including proteins and lipids, facilitating distinction between cellular states non-invasively and without staining. However, the scattered light obtained from cells is faint and cells have complex structures, making it difficult to obtain a Raman spectrum covering the entire cell in a short time using conventional methods. This also prevents efficient label-free cell classification. In the present study, we developed the Paint Raman Express Spectroscopy System, which uses two fast-rotating galvano mirrors to obtain spectra from a wide area of a cell. By using this system and applying machine learning, we were able to acquire broad spectra of a variety of human and mouse cell types, including pluripotent stem cells and confirmed that each cell type can be classified with high accuracy. Moreover, we classified different activation states of human T cells, despite their similar morphology. This system could be used for rapid and low-cost drug evaluation and quality management for drug screening in cell-based assays.
拉曼散射代表了细胞内分子的分布和丰度,包括蛋白质和脂质,可实现对细胞状态的非侵入式、无需染色的区分。然而,从细胞中获得的散射光很微弱,且细胞结构复杂,因此很难使用传统方法在短时间内获得涵盖整个细胞的拉曼光谱。这也妨碍了有效的无标记细胞分类。在本研究中,我们开发了 Paint Raman Express 光谱系统,该系统使用两个快速旋转的振镜来获取细胞大面积的光谱。通过使用该系统并应用机器学习,我们能够获取多种人类和小鼠细胞类型的宽光谱,包括多能干细胞,并证实每种细胞类型都可以高精度分类。此外,我们还对人类 T 细胞的不同激活状态进行了分类,尽管它们的形态相似。该系统可用于快速、低成本的药物评价和基于细胞的药物筛选中的药物质量控制。