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Get Free AccessAbstract Because errors at the DNA level power pathogen evolution, a systematic understanding of the rate and molecular spectra of mutations could guide the avoidance and treatment of infectious diseases. We thus accumulated tens of thousands of spontaneous mutations in 768 repeatedly bottlenecked lineages of 18 strains from various geographical sites, temporal spread, and genetic backgrounds. Entailing over ∼1.36 million generations, the resultant data yield an average mutation rate of ∼0.0005 per genome per generation, with a significant within-species variation. This is one of the lowest bacterial mutation rates reported, giving direct support for a high genome stability in this pathogen resulting from high DNA-mismatch-repair efficiency and replication-machinery fidelity. Pathogenicity genes do not exhibit an accelerated mutation rate, and thus, elevated mutation rates may not be the major determinant for the diversification of toxin and secretion systems. Intriguingly, a low error rate at the transcript level is not observed, suggesting distinct fidelity of the replication and transcription machinery. This study urges more attention on the most basic evolutionary processes of even the best-known human pathogens and deepens the understanding of their genome evolution.
Jiao Pan, Weiyi Li, Jiahao Ni, Kun Wu, Iain R. Konigsberg, Caitlyn E. Rivera, Clayton Tincher, Colin Gregory, Xia Zhou, Thomas G. Doak, Heewook Lee, Yan Wang, Xiang Gao, Michael E Lynch, Hongan Long (2022). Rates of Mutations and Transcript Errors in the Foodborne Pathogen<i>Salmonella enterica</i>subsp.<i>enterica</i>. , 39(4), DOI: https://doi.org/10.1093/molbev/msac081.
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Type
Article
Year
2022
Authors
15
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1093/molbev/msac081
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