Discrete modelling of bacterial conjugation dynamics
Angel Goni-Moreno, Martyn Amos

TL;DR
This paper introduces an agent-based simulation framework for bacterial conjugation, integrating physical interactions and genetic networks, validated against experimental data, to explore how population mixing influences conjugation dynamics.
Contribution
It provides a novel, flexible simulation platform for studying bacterial conjugation dynamics, combining physical and genetic modeling with validation against experimental results.
Findings
Emergent mixing patterns influence conjugation rates
Simulation framework can be tuned to different bacterial behaviors
Validated model aligns with experimental data
Abstract
In bacterial populations, cells are able to cooperate in order to yield complex collective functionalities. Interest in population-level cellular behaviour is increasing, due to both our expanding knowledge of the underlying biological principles, and the growing range of possible applications for engineered microbial consortia. Researchers in the field of synthetic biology - the application of engineering principles to living systems - have, for example, recently shown how useful decision-making circuits may be distributed across a bacterial population. The ability of cells to interact through small signalling molecules (a mechanism known as it quorum sensing) is the basis for the majority of existing engineered systems. However, horizontal gene transfer (or conjugation) offers the possibility of cells exchanging messages (using DNA) that are much more information-rich. The potential…
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Taxonomy
TopicsGene Regulatory Network Analysis · Bacterial Genetics and Biotechnology · Evolution and Genetic Dynamics
