Single-Cell Center, CAS Key Laboratory of Biofuels, Shandong Key Laboratory of Energy Genetics and Shandong Energy Institute, Qingdao Institute of Bioenergy and Bioprocess Technology, Chinese Academy of Sciences, Qingdao 266101 Shandong, China.
Laboratory for Marine Biology and Biotechnology, Qingdao National Laboratory for Marine Science and Technology, Qingdao 266101 Shandong, China.
Anal Chem. 2021 Jun 29;93(25):8872-8880. doi: 10.1021/acs.analchem.1c01015. Epub 2021 Jun 18.
Microalgae are among the most genetically and metabolically diverse organisms on earth, yet their identification and metabolic profiling have generally been slow and tedious. Here, we established a reference ramanome database consisting of single-cell Raman spectra (SCRS) from >9000 cells of 27 phylogenetically diverse microalgal species, each under stationary and exponential states. When combined, prequenching ("pigment spectrum" (PS)) and postquenching ("whole spectrum" (WS)) signals can classify species and states with 97% accuracy via ensemble machine learning. Moreover, the biosynthetic profile of Raman-sensitive metabolites was unveiled at single cells, and their interconversion was detected via intra-ramanome correlation analysis. Furthermore, not-yet-cultured cells from the environment were functionally characterized via PS and WS and then phylogenetically identified by Raman-activated sorting and sequencing. This PS-WS combined approach for rapidly identifying and metabolically profiling single cells, either cultured or uncultured, greatly accelerates the mining of microalgae and their products.
微藻是地球上基因和代谢多样性最丰富的生物之一,但它们的鉴定和代谢特征分析通常既缓慢又繁琐。在这里,我们建立了一个参考拉曼组数据库,其中包含 27 个不同系统发育的微藻物种的超过 9000 个细胞的单细胞拉曼光谱(SCRS),每个细胞都处于静止和指数生长状态。当结合使用预淬火(“色素光谱”(PS))和后淬火(“全光谱”(WS))信号时,通过集成机器学习可以以 97%的准确率对物种和状态进行分类。此外,在单细胞水平揭示了对拉曼敏感代谢物的生物合成特征,并通过细胞内拉曼组内相关分析检测到它们的相互转化。此外,通过 PS 和 WS 对环境中尚未培养的细胞进行功能表征,然后通过拉曼激活分选和测序进行系统发育鉴定。这种 PS-WS 联合方法可快速识别和代谢分析培养或未培养的单细胞,极大地加速了微藻及其产物的挖掘。