Microbial Interaction Network Inference in Microfluidic Droplets
- PMID: 31494089
- PMCID: PMC6763379
- DOI: 10.1016/j.cels.2019.06.008
Microbial Interaction Network Inference in Microfluidic Droplets
Abstract
Microbial interactions are major drivers of microbial community dynamics and functions but remain challenging to identify because of limitations in parallel culturing and absolute abundance quantification of community members across environments and replicates. To this end, we developed Microbial Interaction Network Inference in microdroplets (MINI-Drop). Fluorescence microscopy coupled to computer vision techniques were used to rapidly determine the absolute abundance of each strain in hundreds to thousands of droplets per condition. We showed that MINI-Drop could accurately infer pairwise and higher-order interactions in synthetic consortia. We developed a stochastic model of community assembly to provide insight into the heterogeneity in community states across droplets. Finally, we elucidated the complex web of interactions linking antibiotics and different species in a synthetic consortium. In sum, we demonstrated a robust and generalizable method to infer microbial interaction networks by random encapsulation of sub-communities into microfluidic droplets.
Keywords: antibiotics; droplet microfluidics; microbial ecology; microbial interaction network; stochastic modeling.
Copyright © 2019 Elsevier Inc. All rights reserved.
Conflict of interest statement
DECLARATION OF INTERESTS
The authors declare no competing interests.
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