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Chromosomal Barcoding of E. Coli Populations Reveals Lineage Diversity Dynamics at High Resolution

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2020-03

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Nature Publishing Group
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Jasinska, Weronika, Michael Manhart, Jesse Lerner, Louis Gauthier, Adrian W. R Serohijos, and Shimon Bershtein. 2020. “Chromosomal Barcoding of E. Coli Populations Reveals Lineage Diversity Dynamics at High Resolution.” Nature Ecology & Evolution 4 (3): 437–52. https://doi.org/10.1038/s41559-020-1103-z.

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Abstract

Evolutionary dynamics in large asexual populations is strongly influenced by multiple competing beneficial lineages, most of which segregate at very low frequencies. However, technical barriers to tracking a large number of these rare lineages in bacterial populations have so far prevented a detailed elucidation of evolutionary dynamics. Here, we overcome this hurdle by developing a chromosomal-barcoding technique that allows simultaneous tracking of ~450,000 distinct lineages in E. coli, which we use to test the effect of sub-inhibitory concentrations of common antibiotics on the evolutionary dynamics of low-frequency lineages. We find that populations lose lineage diversity at distinct rates corresponding to their antibiotic regimen. We also determine that some lineages have similar fates across independent experiments. By analyzing the trajectory dynamics, we attribute the reproducible fates of these lineages to the presence of pre-existing beneficial mutations, and we demonstrate how the relative contribution of pre-existing and de novo mutations varies across drug regimens. Finally, we reproduce the observed lineage dynamics by simulations. Altogether, our results provide both a valuable methodology for studying bacterial evolution as well as insights into evolution under sub-inhibitory antibiotic levels.

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Evolutionary biology, Evolutionary ecology, Experimental evolution, Molecular evolution, Population genetics

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