| Literature DB >> 35197530 |
Dorje C Brody1,2.
Abstract
Stochastic Schrödinger equations that govern the dynamics of open quantum systems are given by the equations for signal processing. In particular, the Brownian motion that drives the wave function of the system does not represent noise, but provides purely the arrival of new information. Thus the wave function is guided by the optimal signal detection about the conditions of the environments under noisy observations. This behaviour is similar to biological systems that detect environmental cues, process this information, and adapt to them optimally by minimising uncertainties about the conditions of their environments. It is postulated that information-processing capability is a fundamental law of nature, and hence that models describing open quantum systems can equally be applied to biological systems to model their dynamics. For illustration, simple stochastic models are considered to capture heliotropic and gravitropic motions of plants. The advantage of such dynamical models is that they allow for the quantification of information processed by the plants. By considering the consequence of information erasure, it is argued that biological systems can process environmental signals relatively close to the Landauer limit of computation, and that loss of information must lie at the heart of ageing in biological systems.Entities:
Year: 2022 PMID: 35197530 PMCID: PMC8866431 DOI: 10.1038/s41598-022-07102-w
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.996
Figure 1Model simulation of the binary root reorientation. In a model with , assume that the plant is initially 95% confident that the gravitational force is pointing down (the signal ); but at time zero it is flipped upside-down (the signal ). Depending on the value of the parameter the reorientation (and hence the loss of the initial memory) can be slow or fast. Four sample paths for the order parameter are shown here each for the two chosen values of . The order parameter represents the vertical component of the unit directional vector of the root. Because the reorientation timescale is proportional to , although in all cases the root will eventually point down, this process can take a long time if is small (the left panel); whereas for a larger value of the reorientation takes place rapidly (the right panel).