2021
DOI: 10.1016/j.gpb.2021.03.010
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Integration of Droplet Microfluidic Tools for Single-Cell Functional Metagenomics: An Engineering Head Start

Abstract: Droplet microfluidic techniques have shown promising outcome to study single cells at high throughput. However, their adoption in laboratories studying “-omics” sciences is still irrelevant due to the complex and multidisciplinary nature of the field. To facilitate their use, here we provide engineering details and organized protocols for integrating three droplet-based microfluidic technologies into the metagenomic pipeline to enable functional screening of bioproducts at high throughput. First, a device enca… Show more

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Cited by 5 publications
(1 citation statement)
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“…Nguyen et al described the development of Polar Gini Curve, a method for characterizing cluster markers by analyzing scRNA-seq data, which can help users characterize the shape and density distribution of cells in a particular cluster [25] . Conchouso et al provided engineering details and organized protocols for integrating three droplet-based microfluidic technologies into the metagenomic pipeline to enable functional screening of bioproducts at high throughput [26] .…”
mentioning
confidence: 99%
“…Nguyen et al described the development of Polar Gini Curve, a method for characterizing cluster markers by analyzing scRNA-seq data, which can help users characterize the shape and density distribution of cells in a particular cluster [25] . Conchouso et al provided engineering details and organized protocols for integrating three droplet-based microfluidic technologies into the metagenomic pipeline to enable functional screening of bioproducts at high throughput [26] .…”
mentioning
confidence: 99%