| Literature DB >> 31881826 |
Cesar Augusto Nieto-Acuna1, Cesar Augusto Vargas-Garcia2, Abhyudai Singh3, Juan Manuel Pedraza1.
Abstract
BACKGROUND: How small, fast-growing bacteria ensure tight cell-size distributions remains elusive. High-throughput measurement techniques have propelled efforts to build modeling tools that help to shed light on the relationships between cell size, growth and cycle progression. Most proposed models describe cell division as a discrete map between size at birth and size at division with stochastic fluctuations assumed. However, such models underestimate the role of cell size transient dynamics by excluding them.Entities:
Keywords: Finite state projection; Stochastic hybrid systems
Mesh:
Year: 2019 PMID: 31881826 PMCID: PMC6933677 DOI: 10.1186/s12859-019-3213-7
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Fig. 1Time dynamics of the first five Ps defined by (9)
Fig. 2Transient dynamics of the first moments of Pa. Asymptotic behavior of 〈n〉 showing that . b. reaches a steady value as t→∞. The shaded area corresponds to a 95% confidence interval of the mean and variance of 10K SSA trajectories
Fig. 3Time dynamics of size distribution ρ(s,t) defined by Eq. (13) with initial conditions ρ(s,t)=δ(s−s0). Red is the 95% confidence interval for a MonteCarlo simulation for 10000 cells (Stochastic Simulation Algorithm) and Black is the expected value obtained by the integration of P(t) using a Finite State Projection algorithm. a. Expected relative mean size vs. time. b. Variance of size population vs. time
Fig. 4Limit ρ(s) defined as the envelope of the Dirac delta distributions for different initial conditions () after a time t=7τ. Every stem is the result of 10K SSA simulations