| Literature DB >> 29248946 |
Abstract
Explanations based on low-level interacting elements are valuable and powerful since they contribute to identify the key mechanisms of biological functions. However, many dynamic systems based on low-level interacting elements with unambiguous, finite, and complete information of initial states generate future states that cannot be predicted, implying an increase of complexity and open-ended evolution. Such systems are like Turing machines, that overlap with dynamical systems that cannot halt. We argue that organisms find halting conditions by distorting these mechanisms, creating conditions for a constant creativity that drives evolution. We introduce a modulus of elasticity to measure the changes in these mechanisms in response to changes in the computed environment. We test this concept in a population of predators and predated cells with chemotactic mechanisms and demonstrate how the selection of a given mechanism depends on the entire population. We finally explore this concept in different frameworks and postulate that the identification of predictive mechanisms is only successful with small elasticity modulus.Keywords: Computational theory; Elastic mechanisms; Evolution; Open-ended evolution; Systems biology; Turing machines
Mesh:
Year: 2017 PMID: 29248946 DOI: 10.1007/s00239-017-9823-7
Source DB: PubMed Journal: J Mol Evol ISSN: 0022-2844 Impact factor: 2.395