Evolutionary action of mutations reveals antimicrobial resistance genes in Escherichia coli

Since antibiotic development lags, we search for potential drug targets through directed evolution experiments. A challenge is that many resistance genes hide in a noisy mutational background as mutator clones emerge in the adaptive population. Here, to overcome this noise, we quantify the impact of...

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Veröffentlicht in:Nature communications 2022-06, Vol.13 (1), p.3189-3189, Article 3189
Hauptverfasser: Marciano, David C., Wang, Chen, Hsu, Teng-Kuei, Bourquard, Thomas, Atri, Benu, Nehring, Ralf B., Abel, Nicholas S., Bowling, Elizabeth A., Chen, Taylor J., Lurie, Pamela D., Katsonis, Panagiotis, Rosenberg, Susan M., Herman, Christophe, Lichtarge, Olivier
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Sprache:eng
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Zusammenfassung:Since antibiotic development lags, we search for potential drug targets through directed evolution experiments. A challenge is that many resistance genes hide in a noisy mutational background as mutator clones emerge in the adaptive population. Here, to overcome this noise, we quantify the impact of mutations through evolutionary action (EA). After sequencing ciprofloxacin or colistin resistance strains grown under different mutational regimes, we find that an elevated sum of the evolutionary action of mutations in a gene identifies known resistance drivers. This EA integration approach also suggests new antibiotic resistance genes which are then shown to provide a fitness advantage in competition experiments. Moreover, EA integration analysis of clinical and environmental isolates of antibiotic resistant of E. coli identifies gene drivers of resistance where a standard approach fails. Together these results inform the genetic basis of de novo colistin resistance and support the robust discovery of phenotype-driving genes via the evolutionary action of genetic perturbations in fitness landscapes. The emergence of antibiotic resistance, even against last-line antibiotics such as colistin, is a serious public health threat. To guide treatment and drug development strategies, Marciano et al. apply evolutionary action (EA) analysis to identify driver mutations in a noisy mutational background in experimental evolution experiments and inform about de novo colistin resistance drivers.
ISSN:2041-1723
2041-1723
DOI:10.1038/s41467-022-30889-1