Solving the stochastic dynamics of population growth

Marrec, Loïc; Bank, Claudia; Bertrand, Thibault (2023). Solving the stochastic dynamics of population growth. Ecology and evolution, 13(8), pp. 1-20. John Wiley & Sons, Inc. 10.1002/ece3.10295

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Population growth is a fundamental process in ecology and evolution. The population size dynamics during growth are often described by deterministic equations derived from kinetic models. Here, we simulate several population growth models and compare the size averaged over many stochastic realizations with the deterministic predictions. We show that these deterministic equations are generically bad predictors of the average stochastic population dynamics. Specifically, deterministic predictions overestimate the simulated population sizes, especially those of populations starting
with a small number of individuals. Describing population growth as a stochastic birth process, we prove that the discrepancy between deterministic predictions and simulated data is due to unclosed-moment dynamics. In other words, the deterministic approach does not consider the variability of birth times, which is particularly important with small population sizes. We show that some moment-closure approximations describe the growth dynamics better than the deterministic prediction. However, they do not reduce the error satisfactorily and only apply to some population growth
models. We explicitly solve the stochastic growth dynamics, and our solution applies to any population growth model. We show that our solution exactly quantifies the dynamics of a community composed of different strains and correctly predicts the fixation probability of a strain in a serial dilution experiment. Our work sets the foundations for a more faithful modeling of community and population dynamics. It will allow the development of new tools for a more accurate analysis of experimental and
empirical results, including the inference of important growth parameters.

Item Type:

Journal Article (Original Article)

Division/Institute:

08 Faculty of Science > Department of Biology > Institute of Ecology and Evolution (IEE) > Population Genetics
08 Faculty of Science > Department of Biology > Institute of Ecology and Evolution (IEE)
08 Faculty of Science > Department of Biology > Institute of Ecology and Evolution (IEE) > Theoretical Ecology and Evolution

UniBE Contributor:

Marrec, Loïc, Bank, Claudia

Subjects:

500 Science > 570 Life sciences; biology

ISSN:

2045-7758

Publisher:

John Wiley & Sons, Inc.

Language:

English

Submitter:

Susanne Holenstein

Date Deposited:

07 Aug 2023 07:25

Last Modified:

07 Aug 2023 07:25

Publisher DOI:

10.1002/ece3.10295

PubMed ID:

37529585

BORIS DOI:

10.48350/185230

URI:

https://boris.unibe.ch/id/eprint/185230

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