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Turing meets synthetic biology

Month-icon.pngIntroduction

The work of Turing

In 1952 Alan M. Turing in his classical paper called The chemical basis of morphogenesis he sugested that "...a system of chemical substances, called morphogens, reacting together and diffusing through a tissue, is adequate to account for the main phenomena of morphogenesis." This system is amazing by its simplicity. With only two morphogens it's possible to reproduce nontrivial patterns that are similar to those of zebras or leopards.

Although there is not enough evidence of the existence of these morphogens in living organisms, the likeliness of the patterns obtained by theoretical means using this model with the ones found in nature is astonishing.

Turing assumed that the morphogenes can react with each other and diffuse through cells. It is necessary that at the beginning there is a non-homogeneous distribuition of these morphogenes, which is often called chemical prepattern and can be given merely by random disturbances. An intuitive notion would tell us that the diffusion of the morphogenes starting from this chemical prepattern would led to a homogenous state of the system, but surprisingly the Turing proposal says that non-homgenous structures will arise, as a direct consequence of diffusion (the turing hyphotesis); reaching a stable state with regions with high concentrantions of one morphogen and regions with high concentration of the others. This non-homogeneous distribuition patterns of morphogens resembles those found in nature during some stages of morhpogenesis (from the gastrulation or the tentacle patterns on hydras to the jaguar spots).

Reaction-Diffusion equations

Turing formally described his proposal with a set of Partial Differential Equations where is possible to represent the chemical interactions of the morphogens and the way they move over the space. This kind of dynamics are commonly called reaction-diffusion mechanisms, and the equations that describe them are named Reaction-Diffusion equations. In section modeling we formally present them.

The Activator-Inhibitor

In 1972 A. Gierer and H. Meinhardt published his work called A theory of biological pattern formation presenting a network based in the interaction of at least two morphogenes acting as an activator and an inhibitor. The main qualitative dynamics of the morphogens is:

Short range activation, longer range inhibition and a conceptual distinction between effective concentrations of activator and inhibitor, on one hand, and the density of their sources on the other.

Schematically we can see this description as:

IMAGEN


J.D. Murray presented a good example of how patterns can arise from this kind of dynamics so we cite his text literally:

Consider a field of dry grass in which there is a large number of grasshoppers
which can generate a lot of moisture by sweating if they get warm. Now suppose the
grass is set alight at some point and a flame front starts to propagate. We can think of
the grasshopper as an inhibitor and the fire as an activator. If there were no moisture
to quench the flames the fire would simply spread over the whole field which would
result in a uniform charred area. Suppose, however, that when the grasshoppers get
warm enough they can generate enough moisture to dampen the grass so that when the
flames reach such a pre-moistened area the grass will not burn. The scenario for spatial
pattern is then as follows. The fire starts to spread it is one of the reactants, the
activator, with a diffusion coefficient DF say. When the grasshoppers, the inhibitor
reactant, ahead of the flame front feel it coming they move quickly well ahead of
it; that is, they have a diffusion coefficient, DG say, which is much larger than DF .
The grasshoppers then sweat profusely and generate enough moisture to prevent the
fire spreading into the moistened area. In this way the charred area is restricted to a
finite domain which depends on the diffusion coefficients of the reactants fire and
grasshopperand various reaction parameters. If, instead of a single initial fire, there
were a random scattering of them we can see how this process would result in a final
spatially heterogeneous steady state distribution of charred and uncharred regions in
the field and a spatial distribution of grasshoppers, since around each fire the above
scenario would take place. If the grasshoppers and flame front diffused at the same
speed no such spatial pattern could evolve.


Synthesizing, we can now represent the interactions between the activator and the inhibitor as follows:

The activator is autocathalyzed and it also triggers the formation of the inhibitor. Accordingly to its name, the inhibitor inhibits the production of the activator, leading to a simple but very rich dymamics (For more details on the acivator-inhibitor equations please go to modelling section). From the grass field and the fire analogy we can deduce that the diffusion coefficients of the fire should be slower than the grasshoppers one; if not the fire (activator) would spread completely in the area. This is an important fact that we mention again later.

GENERAL CONDITIONS FOR PATTERN GENERATION

Although this kind of conditions refers mainly to a mathematical analyses of the reaction-diffusion systems like the Activator-Inhibitor (check MURRAY REF), we can qualitative simplify and establish according to this analyses the general conditions for pattern formation:


  1. The existence of at least of two morphogenes with different nature that interacts chemically between them diffuse over the space
  2. The coefficient rates of diffusion should be different.
  3. The starting distribution of morphogenes should not be completely homogeneous over the space.
  4. The Gierer and Mainhardt proposal: local activation and longe range inhibition.



Month-icon.pngMorphogenesis qualitative mechanisms

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Month-icon.pngReaction-Diffusion systems implemented on Biobricks

Reaction

Lac inverter

Lac Inverter


Tet inverter

AI Tet.jpg


Diffusion

Lux AHL

Lux AHL

Las AHL

Las AHL


Substrates

[http://openwetware.org/wiki/IPTG IPTG] & [http://openwetware.org/wiki/ATc ATC]

substrates


Month-icon.png The Activator-Inhibitor system on biobricks: The dynamics

Autocatalisis

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Activation

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Inhibition

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Diffusion

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Substrates

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Complete system

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