High-throughput identification and quantification of single bacterial cells in the microbiota

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作者
Jianshi Jin
Reiko Yamamoto
Tadashi Takeuchi
Guangwei Cui
Eiji Miyauchi
Nozomi Hojo
Koichi Ikuta
Hiroshi Ohno
Katsuyuki Shiroguchi
机构
[1] Laboratory for Prediction of Cell Systems Dynamics,Department of Microbiology and Immunology
[2] RIKEN Center for Biosystems Dynamics Research (BDR),Laboratory of Immune Regulation, Department of Virus Research, Institute for Frontier Life and Medical Sciences
[3] Laboratory for Intestinal Ecosystem,Graduate School of Medical Life Science
[4] RIKEN Center for Integrative Medical Sciences (IMS),undefined
[5] Keio University School of Medicine,undefined
[6] Kyoto University,undefined
[7] Intestinal Microbiota Project,undefined
[8] Kanagawa Institute of Industrial Science and Technology,undefined
[9] Yokohama City University,undefined
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摘要
The bacterial microbiota works as a community that consists of many individual organisms, i.e., cells. To fully understand the function of bacterial microbiota, individual cells must be identified; however, it is difficult with current techniques. Here, we develop a method, Barcoding Bacteria for Identification and Quantification (BarBIQ), which classifies single bacterial cells into taxa–named herein cell-based operational taxonomy units (cOTUs)–based on cellularly barcoded 16S rRNA sequences with single-base accuracy, and quantifies the cell number for each cOTU in the microbiota in a high-throughput manner. We apply BarBIQ to murine cecal microbiotas and quantify in total 3.4 × 105 bacterial cells containing 810 cOTUs. Interestingly, we find location-dependent global differences in the cecal microbiota depending on the dietary vitamin A deficiency, and more differentially abundant cOTUs at the proximal location than the distal location. Importantly, these location differences are not clearly shown by conventional 16S rRNA gene-amplicon sequencing methods, which quantify the 16S rRNA genes, not the cells. Thus, BarBIQ enables microbiota characterization with the identification and quantification of individual constituent bacteria, which is a cornerstone for microbiota studies.
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