| Literature DB >> 31242701 |
Jonne Naarala1, Mikko Kolehmainen2, Jukka Juutilainen.
Abstract
This review discusses the use of systems biology in understanding the biological effectsof electromagnetic fields, with particular focus on induction of genomic instability and cancer. Weintroduce basic concepts of the dynamical systems theory such as the state space and attractors andthe use of these concepts in understanding the behavior of complex biological systems. We thendiscuss genomic instability in the framework of the dynamical systems theory, and describe thehypothesis that environmentally induced genomic instability corresponds to abnormal attractorstates; large enough environmental perturbations can force the biological system to leave normalevolutionarily optimized attractors (corresponding to normal cell phenotypes) and migrate to lessstable variant attractors. We discuss experimental approaches that can be coupled with theoreticalsystems biology such as testable predictions, derived from the theory and experimental methods,that can be used for measuring the state of the complex biological system. We also reviewpotentially informative studies and make recommendations for further studies.Entities:
Keywords: attractor; carcinogenesis; dynamical systems theory; electromagnetic fields; genomic instability; state space; systems biology
Mesh:
Year: 2019 PMID: 31242701 PMCID: PMC6627294 DOI: 10.3390/genes10060479
Source DB: PubMed Journal: Genes (Basel) ISSN: 2073-4425 Impact factor: 4.096
Figure 1A. Bifurcation diagram showing the set of values of the logistic function visited asymptotically at different values of the bifurcation parameter µ. B. The corresponding Lyapunov exponent, which is often used for quantifying the sensitivity of a system to initial conditions [12]. A positive sign of the exponent signifies chaos and its value measures its quantity. Note that the chaotic regimes in A correspond to positive Lyapunov exponent values in B.
Figure 2The behaviour of the logistic map with different values of the control parameter µ. The map has been iterated for 10000 times and the last 50 values of the time series are shown here.
Figure 3Visualization of a state space landscape with five basins (1–5; areas in the state space) of attraction.
Figure 4Schematic representation of cells in normal and variant attractors in one-dimensional projection of the state space.