Populations and Evolution (q-bio.PE)
Thu, 20 Jul 2023
1.Selected Topics of Social Physics: Nonequilibrium Systems
Authors:V. I. Yukalov
Abstract: This review article is the second part of the project ``Selected Topics of Social Physics". The first part has been devoted to equilibrium systems. The present part considers nonequilibrium systems. The style of the paper combines the features of a tutorial and a review, which, from one side, makes it easy to read for nonspecialists aiming at grasping the basics of social physics, and from the other side, describes several rather recent original models containing new ideas that could be of interest to experienced researchers in the field. The present material is based on the lectures that the author had been giving during several years at the Swiss Federal Institute of Technology in Zurich (ETH Zurich).
2.Soft trade-offs and the stochastic emergence of diversification in E. coli evolution experiments
Authors:Roberto Corral López, Samir Suweis, Sandro Azaele, Miguel A. Muñoz
Abstract: Laboratory experiments of bacterial colonies (e.g., \emph{Escherichia coli}) under well-controlled conditions often lead to evolutionary diversification in which (at least) two ecotypes, each one specialized in the consumption of a different set of metabolic resources, branch out from an initially monomorphic population. Empirical evidence suggests that, even under fixed and stable conditions, such an ``evolutionary branching'' occurs in a stochastic way, meaning that: (i) it is observed in a significant fraction, but not all, of the experimental repetitions, (ii) it may emerge at broadly diverse times, and (iii) the relative abundances of the resulting subpopulations are variable across experiments. Theoretical approaches shedding light on the possible emergence of evolutionary branching in this type of conditions have been previously developed within the theory of ``adaptive dynamics''. Such approaches are typically deterministic -- or incorporate at most demographic or finite-size fluctuations which become negligible for the extremely large populations of these experiments -- and, thus, do not permit to reproduce the empirically observed large degree of variability. Here, we make further progress and shed new light on the stochastic nature of evolutionary outcomes by introducing the idea of ``soft'' trade-offs (as opposed to ``hard'' ones). This introduces a natural new source of stochasticity which allows one to account for the empirically observed variability as well as to make predictions for the likelihood of evolutionary branching to be observed, thus helping to bridge the gap between theory and experiments.