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Emergence of Variability in Isogenic Escherichia coli Populations Infected by a Filamentous Virus

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  • Marianne De Paepe
  • Silvia De Monte
  • Lydia Robert
  • Ariel B Lindner
  • François Taddei

Abstract

The spread of epidemics not only depends on the average number of parasites produced per host, but also on the existence of highly infectious individuals. It is widely accepted that infectiousness depends on genetic and environmental determinants. However, even in clonal populations of host and viruses growing in homogeneous conditions, high variability can exist. Here we show that Escherichia coli cells commonly display high differentials in viral burst size, and address the kinetics of emergence of such variability with the non-lytic filamentous virus M13. By single-cell imaging of a virally-encoded fluorescent reporter, we monitor the viral charge distribution in infected bacterial populations at different time following infection. A mathematical model assuming autocatalytic virus replication and inheritance of bacterial growth rates quantitatively reproduces the experimental distributions, demonstrating that deterministic amplification of small host inhomogeneities is a mechanism sufficient to explain large and highly skewed distributions. This mechanism of amplification is general and may occur whenever a parasite has an initial phase of exponential growth within its host. Moreover, it naturally reproduces the shift towards higher virulence when the host is experimenting poor conditions, as observed commonly in host-parasite systems.

Suggested Citation

  • Marianne De Paepe & Silvia De Monte & Lydia Robert & Ariel B Lindner & François Taddei, 2010. "Emergence of Variability in Isogenic Escherichia coli Populations Infected by a Filamentous Virus," PLOS ONE, Public Library of Science, vol. 5(7), pages 1-9, July.
  • Handle: RePEc:plo:pone00:0011823
    DOI: 10.1371/journal.pone.0011823
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    References listed on IDEAS

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