It is hard to bridge the gap between mathematical formulations and biological implementations of Turing patterns, yet this is necessary for both understanding and engineering these networks with synthetic biology approaches. Here, we model a reaction-diffusion system with two morphogens in a monostable regime, inspired by components that we recently described in a synthetic biology study in mammalian cells.1 The model employs a single promoter to express both the activator and inhibitor genes and produces Turing patterns over large regions of parameter space, using biologically interpretable Hill function reactions. We applied a stability analysis and identified rules for choosing biologically tunable parameter relationships to increase the...
<div><p>Efforts to engineer synthetic gene networks that spontaneously produce patterning in multice...
We consider the use of reaction-diffusion equations to model biological pattern formation and descri...
Turing's pattern formation mechanism exhibits sensitivity to the details of the initial conditions s...
It is hard to bridge the gap between mathematical formulations and biological implementations of Tur...
It is hard to bridge the gap between mathematical formulations and biological implementations of Tur...
It is hard to bridge the gap between mathematical formulations and biological implementations of Tur...
Turing pattern provides a paradigm of non-equilibrium self-organization in reaction-diffusion system...
The origin of biological morphology and form is one of the deepest problems in science, underlying o...
The Turing reaction-diffusion model explains how identical cells can self-organize to form spatial p...
The Turing, or reaction-diffusion (RD), model is one of the best-known theoretical models used to ex...
Turing patterns are thought to underlie the formation of many tissue structures during development. ...
We investigate a simple generic model of a reaction–diffusion system consisting of an activator and ...
In this paper we study a four-species reaction-diffusion system where Turing patterns are stabilized...
Reaction–diffusion processes across layered media arise in several scientific domains such as patter...
The reaction-diffusion model presented by Alan Turing has recently been supported by experimental da...
<div><p>Efforts to engineer synthetic gene networks that spontaneously produce patterning in multice...
We consider the use of reaction-diffusion equations to model biological pattern formation and descri...
Turing's pattern formation mechanism exhibits sensitivity to the details of the initial conditions s...
It is hard to bridge the gap between mathematical formulations and biological implementations of Tur...
It is hard to bridge the gap between mathematical formulations and biological implementations of Tur...
It is hard to bridge the gap between mathematical formulations and biological implementations of Tur...
Turing pattern provides a paradigm of non-equilibrium self-organization in reaction-diffusion system...
The origin of biological morphology and form is one of the deepest problems in science, underlying o...
The Turing reaction-diffusion model explains how identical cells can self-organize to form spatial p...
The Turing, or reaction-diffusion (RD), model is one of the best-known theoretical models used to ex...
Turing patterns are thought to underlie the formation of many tissue structures during development. ...
We investigate a simple generic model of a reaction–diffusion system consisting of an activator and ...
In this paper we study a four-species reaction-diffusion system where Turing patterns are stabilized...
Reaction–diffusion processes across layered media arise in several scientific domains such as patter...
The reaction-diffusion model presented by Alan Turing has recently been supported by experimental da...
<div><p>Efforts to engineer synthetic gene networks that spontaneously produce patterning in multice...
We consider the use of reaction-diffusion equations to model biological pattern formation and descri...
Turing's pattern formation mechanism exhibits sensitivity to the details of the initial conditions s...