Open AccessJournal Article
Fast stochastic algorithm for simulating evolutionary population dynamics
TL;DR: In this article, the authors introduce an exact algorithm for fast fully stochastic simulations of evolutionary dynamics that include birth, death and mutation events. But the algorithm is computationally expensive.
read more
Abstract: MOTIVATION\nMany important aspects of evolutionary dynamics can only be addressed through simulations. However, accurate simulations of realistically large populations over long periods of time needed for evolution to proceed are computationally expensive. Mutants can be present in very small numbers and yet (if they are more fit than others) be the key part of the evolutionary process. This leads to significant stochasticity that needs to be accounted for. Different evolutionary events occur at very different time scales: mutations are typically much rarer than reproduction and deaths.\n\n\nRESULTS\nWe introduce a new exact algorithm for fast fully stochastic simulations of evolutionary dynamics that include birth, death and mutation events. It produces a significant speedup compared to direct stochastic simulations in a typical case when the population size is large and the mutation rates are much smaller than birth and death rates. The algorithm performance is illustrated by several examples that include evolution on a smooth and rugged fitness landscape. We also show how this algorithm can be adapted for approximate simulations of more complex evolutionary problems and illustrate it by simulations of a stochastic competitive growth model.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Modeling cell population dynamics
TL;DR: Overall, this work presents a summary of mathematical models used to describe cell population dynamics, which may aid future model development and highlights the importance of population modeling in biology.
Implications of Noise on Neural Correlates of Consciousness: A Computational Analysis of Stochastic Systems of Mutually Connected Processes.
TL;DR: Stochastic modeling and analysis results reveal that large dynamical systems of mutually connected and negatively regulated processes are more robust against inherent noise than small systems.
7
•Dissertation
Entrainment of Bacterial Synthetic Oscillators using Proteolytic Queueing and Aperiodic Signaling
Philip Louis Hochendoner
- 12 Dec 2015
TL;DR: This study investigates experimentally and theoretically the entrainment of a synthetic gene oscillator in E. coli by a noisy stimulus and seeks to use synthetic biology as a platform to understand how aperiodic signals can strongly correlate the behavior of cells.
4
OncoSimulR: genetic simulation of cancer progression with arbitrary epistasis and mutator genes
TL;DR: OncoSimulR implements forward-in-time genetic simulations of diallelic loci in asexual populations with special focus on cancer progression, and sampling from single or multiple simulations, including single-cell sampling, plotting the parent-child relationships of the clones and generating and plotting random fitness landscapes.
2
Simulating Evolution in Asexual Populations with Epistasis.
TL;DR: This chapter shows how to use OncoSimulR, software for forward-time genetic simulations, to simulate evolution of asexual populations in the presence of epistatic interactions.
References
Exact Stochastic Simulation of Coupled Chemical Reactions
TL;DR: In this article, a simulation algorithm for the stochastic formulation of chemical kinetics is proposed, which uses a rigorously derived Monte Carlo procedure to numerically simulate the time evolution of a given chemical system.
Evolution in Mendelian Populations.
TL;DR: Page 108, last line of text, for "P/P″" read "P′/ P″."
Related Papers (5)
L. Montrucchio,F. Privileggi +1 more
- 01 Jan 1998
G. J. S. Ross
- 01 Jan 1971
Brian J. Ross
- 01 Jan 2007