| Literature DB >> 26005422 |
Sergi Valverde1, Sebastian Ohse2, Malgorzata Turalska3, Bruce J West4, Jordi Garcia-Ojalvo5.
Abstract
Many adaptive evolutionary systems display spatial and temporal features, such as long-range correlations, typically associated with the critical point of a phase transition in statistical physics. Empirical and theoretical studies suggest that operating near criticality enhances the functionality of biological networks, such as brain and gene networks, in terms for instance of information processing, robustness, and evolvability. While previous studies have explained criticality with specific system features, we still lack a general theory of critical behavior in biological systems. Here we look at this problem from the complex systems perspective, since in principle all critical biological circuits have in common the fact that their internal organization can be described as a complex network. An important question is how self-similar structure influences self-similar dynamics. Modularity and heterogeneity, for instance, affect the location of critical points and can be used to tune the system toward criticality. We review and discuss recent studies on the criticality of neuronal and genetic networks, and discuss the implications of network theory when assessing the evolutionary features of criticality.Entities:
Keywords: criticality; evolution; gene regulatory networks; hierarchical modular networks; neural networks; power laws; robustness
Year: 2015 PMID: 26005422 PMCID: PMC4424853 DOI: 10.3389/fphys.2015.00127
Source DB: PubMed Journal: Front Physiol ISSN: 1664-042X Impact factor: 4.566
Figure 1Critical dynamics in neural networks and gene regulatory networks emerges from a balance between positive and negative interactions between the network components. Top: An efficient neural network poises itself near the critical point that balances inactivity (death) and chaotic dynamics (epilepsy). This is analogous to the sandpile metaphor: a falling grain dissipates some of its energy to the neighbors, triggering an avalanche of events. Bottom: Criticality in gene regulatory networks is described as a boundary between ordered and chaotic dynamics. Switching mechanisms creates complex patterns of gene activation and repression. At the critical point, we observe long-range correlations at all scales.
Figure 2The existence of feedback loops can self-organize neural networks at the critical point. One problem is that perturbations can displace the system outside the critical domain (bottom). According to Moretti and Muñoz (2013), a hierarchical modular network is a path to stretched criticality. This means that a heterogeneous architecture can extend criticality from a critical point to a critical region. This extended parameter range for critical behavior makes hierarchical systems (top) more robust to perturbations than homogeneous networks (bottom).
Figure 3Natural selection pushes gene regulatory networks toward the critical regime due to the opposing forces of conserving essential network function and allowing for the evolution of potentially beneficial modifications. Arrows between nodes denote regulatory interactions. Those retained or gained under selection are highlighted (red dashed). The manifestation of hub-like nodes (red square) has been observed under simulations of network evolution (Torres-Sosa et al., 2012).