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Recent Advances on Sorting Methods of High-Throughput Droplet-Based Microfluidics in Enzyme Directed Evolution

机译:基于高通量液滴的微流体分选方法的最新进展

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摘要

Droplet-based microfluidics has been widely applied in enzyme directed evolution (DE), in either cell or cell-free system, due to its low cost and high throughput. As the isolation principles are based on the labeled or label-free characteristics in the droplets, sorting method contributes mostly to the efficiency of the whole system. Fluorescence-activated droplet sorting (FADS) is the mostly applied labeled method but faces challenges of target enzyme scope. Label-free sorting methods show potential to greatly broaden the microfluidic application range. Here, we review the developments of droplet sorting methods through a comprehensive literature survey, including labeled detections [FADS and absorbance-activated droplet sorting (AADS)] and label-free detections [electrochemical-based droplet sorting (ECDS), mass-activated droplet sorting (MADS), Raman-activated droplet sorting (RADS), and nuclear magnetic resonance-based droplet sorting (NMR-DS)]. We highlight recent cases in the last 5 years in which novel enzymes or highly efficient variants are generated by microfluidic DE. In addition, the advantages and challenges of different sorting methods are briefly discussed to provide an outlook for future applications in enzyme DE.
机译:由于其低成本和高通量,基于液滴的微流体已被广泛应用于细胞或无细胞系统中的酶导向(DE)。由于隔离原理基于液滴中的标记或无标记特性,因此分选方法主要贡献整个系统的效率。荧光激活液滴分选(FADS)是主要施加的标记方法,但面临靶酶范围的挑战。无标签分拣方法显示大大拓宽微流体应用范围。在这里,我们通过综合文献测量审查液滴分选方法的发展,包括标记检测[FADS和吸光度激活液滴分选(AADS)]和无标签检测[电化学液滴分选(ECDS),质量激活液滴排序(疯狂),拉曼激活液滴分选(RAD)和基于核磁共振的液滴分选(NMR-DS)]。我们突出了最近5年的案件,其中新的酶或高效变异由微流体DE产生。此外,简要讨论了不同分类方法的优点和挑战,以提供酶DE中未来应用的前景。

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