English

A statistical-mechanical study of evolution of robustness in noisy environment

Disordered Systems and Neural Networks 2015-05-13 v3 Statistical Mechanics

Abstract

In biological systems, expression dynamics that can provide fitted phenotype patterns with respect to a specific function have evolved through mutations. This has been observed in the evolution of proteins for realizing folding dynamics through which a target structure is shaped. We study this evolutionary process by introducing a statistical-mechanical model of interacting spins, where a configuration of spins and their interactions J\bm{J} represent a phenotype and genotype, respectively. The phenotype dynamics are given by a stochastic process with temperature TST_{S} under a Hamiltonian with J\bm{J}. The evolution of J\bm{J} is also stochastic with temperature TJT_{J} and follows mutations introduced into J\bm{J} and selection based on a fitness defined for a configuration of a given set of target spins. Below a certain temperature TSc2T_{S}^{c2}, the interactions J\bm{J} that achieve the target pattern evolve, whereas another phase transition is observed at TSc1<TSc2T_{S}^{c1}<T_{S}^{c2}. At low temperatures TS<TSc1T_{S}<T_{S}^{c1}, the Hamiltonian exhibits a spin-glass like phase, where the dynamics toward the target pattern require long time steps, and the fitness often decreases drastically as a result of a single mutation to J\bm{J}. In the intermediate-temperature region, the dynamics to shape the target pattern proceed rapidly and are robust to mutations of J\bm{J}. The interactions in this region have no frustration around the target pattern and results in funnel-type dynamics. We propose that the ubiquity of funnel-type dynamics, as observed in protein folding, is a consequence of evolution subjected to thermal noise beyond a certain level; this also leads to mutational robustness of the fitness.

Keywords

Cite

@article{arxiv.0906.0900,
  title  = {A statistical-mechanical study of evolution of robustness in noisy environment},
  author = {Ayaka Sakata and Koji Hukushima and Kunihiko Kaneko},
  journal= {arXiv preprint arXiv:0906.0900},
  year   = {2015}
}

Comments

14 pages, 14 figures

R2 v1 2026-06-21T13:09:37.328Z