Understanding cellular growth strategies via optimal control




Mononen T, Kuosmanen T, Cairns J, Mustonen V

PublisherROYAL SOC

2023

Journal of the Royal Society Interface

JOURNAL OF THE ROYAL SOCIETY INTERFACE

J R SOC INTERFACE

20220744

20

10

1742-5689

DOIhttps://doi.org/10.1098/rsif.2022.0744



Evolutionary prediction and control are increasingly interesting research topics that are expanding to new areas of application. Unravelling and anticipating successful adaptations to different selection pressures becomes crucial when steering rapidly evolving cancer or microbial populations towards a chosen target. Here we introduce and apply a rich theoretical framework of optimal control to understand adaptive use of traits, which in turn allows eco-evolutionarily informed population control. Using adaptive metabolism and microbial experimental evolution as a case study, we show how demographic stochasticity alone can lead to lag time evolution, which appears as an emergent property in our model. We further show that the cycle length used in serial transfer experiments has practical importance as it may cause unintentional selection for specific growth strategies and lag times. Finally, we show how frequency-dependent selection can be incorporated to the state-dependent optimal control framework allowing the modelling of complex eco-evolutionary dynamics. Our study demonstrates the utility of optimal control theory in elucidating organismal adaptations and the intrinsic decision making of cellular communities with high adaptive potential.



Last updated on 2024-26-11 at 21:55