Published July 23, 2015 | Version v1
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Noise-Driven Phenotypic Heterogeneity with Finite Correlation Time in Clonal Populations

  • 1. University of Chicago
  • 2. University of Sheffield

Description

There has been increasing awareness in the wider biological community of the role of clonal phenotypic heterogeneity in playing key roles in phenomena such as cellular bet-hedging and decision making, as in the case of the phage-λ lysis/lysogeny and B. Subtilis competence/vegetative pathways. Here, we report on the effect of stochasticity in growth rate, cellular memory/intermittency, and its relation to phenotypic heterogeneity. We first present a linear stochastic differential model with finite auto-correlation time, where a randomly fluctuating growth rate with a negative average is shown to result in exponential growth for sufficiently large fluctuations in growth rate. We then present a non-linear stochastic self-regulation model where the loss of coherent self-regulation and an increase in noise can induce a shift from bounded to unbounded growth. An important consequence of these models is that while the average change in phenotype may not differ for various parameter sets, the variance of the resulting distributions may considerably change. This demonstrates the necessity of understanding the influence of variance and heterogeneity within seemingly identical clonal populations, while providing a mechanism for varying functional consequences of such heterogeneity. Our results highlight the importance of a paradigm shift from a deterministic to a probabilistic view of clonality in understanding selection as an optimization problem on noise-driven processes, resulting in a wide range of biological implications, from robustness to environmental stress to the development of drug resistance.

Data availability

All relevant data are within the paper and its Supporting Information files.

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Additional details

Identifiers

DOI
10.1371/journal.pone.0132397
Other
oai:uchicago.tind.io:9565

Funding

National Institute of Health
GM 87630
National Institute of Health
RO1CA-184494

UChicago Information

Division(s)
Biological Sciences Division, Physical Sciences Division
Department(s)
Ben May Department for Cancer Research, Biochemistry and Molecular Biology, Ecology and Evolution, Genetics, Genomics, and Systems Biology, Statistics