基因组
稳定同位素探测
分类
单元格排序
微流控
计算生物学
计算机科学
细菌
拉曼光谱
生物
化学
纳米技术
微生物
细胞
材料科学
生物化学
遗传学
基因
物理
程序设计语言
光学
作者
Kang Soo Lee,Márton Palatinszky,Fátima C. Pereira,Jen Nguyen,Vicente I. Fernandez,Anna J. Mueller,Filippo Menolascina,Holger Daims,David Berry,Michael Wagner,Roman Stocker
标识
DOI:10.1038/s41564-019-0394-9
摘要
Stable-isotope probing is widely used to study the function of microbial taxa in their natural environment, but sorting of isotopically labelled microbial cells from complex samples for subsequent genomic analysis or cultivation is still in its early infancy. Here, we introduce an optofluidic platform for automated sorting of stable-isotope-probing-labelled microbial cells, combining microfluidics, optical tweezing and Raman microspectroscopy, which yields live cells suitable for subsequent single-cell genomics, mini-metagenomics or cultivation. We describe the design and optimization of this Raman-activated cell-sorting approach, illustrate its operation with four model bacteria (two intestinal, one soil and one marine) and demonstrate its high sorting accuracy (98.3 ± 1.7%), throughput (200–500 cells h−1; 3.3–8.3 cells min−1) and compatibility with cultivation. Application of this sorting approach for the metagenomic characterization of bacteria involved in mucin degradation in the mouse colon revealed a diverse consortium of bacteria, including several members of the underexplored family Muribaculaceae, highlighting both the complexity of this niche and the potential of Raman-activated cell sorting for identifying key players in targeted processes. Here, the authors developed an automated, high-throughput method for the sorting of single live cells based on their functional phenotype for downstream genomics or cultivation. Application of the platform to murine gut microbiota samples identified a diverse community of mucin degraders.
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