Wagner's Gene Network Model
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Wagner's gene network model is a computational model of artificial gene networks, which explicitly modeled the developmental and evolutionary process of
genetic regulatory networks A gene (or genetic) regulatory network (GRN) is a collection of molecular regulators that interact with each other and with other substances in the cell to govern the gene expression levels of mRNA and proteins which, in turn, determine the fun ...
. A population with multiple organisms can be created and evolved from generation to generation. It was first developed by Andreas Wagner in 1996 and has been investigated by other groups to study the evolution of
gene network A gene (or genetic) regulatory network (GRN) is a collection of molecular regulators that interact with each other and with other substances in the cell to govern the gene expression levels of mRNA and proteins which, in turn, determine the fu ...
s,
gene expression Gene expression is the process by which information from a gene is used in the synthesis of a functional gene product that enables it to produce end products, protein or non-coding RNA, and ultimately affect a phenotype, as the final effect. The ...
,
robustness Robustness is the property of being strong and healthy in constitution. When it is transposed into a system, it refers to the ability of tolerating perturbations that might affect the system’s functional body. In the same line ''robustness'' ca ...
,
plasticity Plasticity may refer to: Science * Plasticity (physics), in engineering and physics, the propensity of a solid material to undergo permanent deformation under load * Neuroplasticity, in neuroscience, how entire brain structures, and the brain it ...
and
epistasis Epistasis is a phenomenon in genetics in which the effect of a gene mutation is dependent on the presence or absence of mutations in one or more other genes, respectively termed modifier genes. In other words, the effect of the mutation is dep ...
.


Assumptions

The model and its variants have a number of simplifying assumptions. Three of them are listing below. #The organisms are modeled as gene regulatory networks. The models assume that gene expression is regulated exclusively at the transcriptional level; #The product of a gene can regulate the expression of (be a regulator of) that source gene or other genes. The models assume that a gene can only produce one active transcriptional regulator; #The effects of one regulator are independent of effects of other regulators on the same target gene.


Genotype

The model represents individuals as networks of interacting transcriptional regulators. Each individual expresses n genes encoding transcription factors. The product of each gene can regulate the expression level of itself and/or the other genes through cis-regulatory elements. The interactions among genes constitute a gene network that is represented by a N × N regulatory matrix (R) in the model. The elements in matrix ''R'' represent the interaction strength. Positive values within the matrix represent the activation of the target gene, while negative ones represent repression. Matrix elements with value 0 indicate the absence of interactions between two genes.


Phenotype

The phenotype of each individual is modeled as the
gene expression Gene expression is the process by which information from a gene is used in the synthesis of a functional gene product that enables it to produce end products, protein or non-coding RNA, and ultimately affect a phenotype, as the final effect. The ...
pattern at time t. It is represented by a state vector S(t) in this model. S(t)\ :=\ (s_1(t),\ . . .,\ s_N(t)) whose element s_i(t) denotes the expression state of gene ''i'' at time ''t''. In the original Wagner model, s_i(t)\ where 1 represents the gene is expressed while -1 implies the gene is not expressed. The expression pattern can only be ON or OFF. The continuous expression pattern between -1 (or 0) and 1 is also implemented in some other variants.


Development

The development process is modeled as the development of gene expression states. The gene expression pattern S(0) at time t=0 is defined as the initial expression state. The interactions among genes change the expression states during the development process. This process is modeled by the following differential equations S_l(t+\tau) = \sigma sum_^N w_ S_j(t)= \sigma _it), where S_l(t+τ) represents the expression state of G_l at time t+\tau. It is determined by a filter function σ(x). h_i(t) represents the weighted sum of regulatory effects (w_) of all genes on gene G_i at time t. In the original Wagner model, the filter function is a step function \sigma(x) = \begin -1, & (x<0) \\ 1, & (x>0) \\ 0, & (x=0). \end In other variants, the filter function is implemented as a sigmoidal function \sigma(x)=\frac-1 In this way, the expression states will acquire a continuous distribution. The gene expression will reach the final state if it reaches a stable pattern.


Evolution

Evolutionary simulations are performed by reproduction-mutation-selection life cycle. Populations are fixed at size N and they will not go extinct. Non-overlapping generations are employed. In a typical evolutionary simulation, a single random viable individual that can produce a stable gene expression pattern is chosen as the founder. Cloned individuals are generated to create a population of N identical individuals. According to the asexual or sexual reproductive mode, offspring are produced by randomly choosing (with replacement) parent individual(s) from current generation. Mutations can be acquired with probability μ and survive with probability equal to their fitness. This process is repeated until N individuals are produced that go on to found the following generation.


Fitness

Fitness in this model is the probability that an individual survives to reproduce. In the simplest implementation of the model, developmentally stable genotypes survive (i.e. their fitness is 1) and developmentally unstable ones do not (i.e. their fitness is 0).


Mutation

Mutations are modeled as the changes in gene regulation, i.e., the changes of the elements in the regulatory matrix R.


Reproduction

Both sexual and
asexual reproduction Asexual reproduction is a type of reproduction that does not involve the fusion of gametes or change in the number of chromosomes. The offspring that arise by asexual reproduction from either unicellular or multicellular organisms inherit the fu ...
s are implemented. Asexual reproduction is implemented as producing the offspring's genome (the gene network) by directly copying the parent's genome. Sexual reproduction is implemented as the recombination of the two parents' genomes.


Selection

An organism is considered viable if it reaches a stable gene expression pattern. An organism with oscillated expression pattern is discarded and cannot enter the next generation.


References

{{Reflist, refs= Wagner A (1996).
Does Evolutionary Plasticity Evolve?
, ''Evolution'', 50(3):1008-1023.
Bergman A and Siegal ML (2003).

, ''Nature'', 424(6948):549-552.
Azevedo RBR, Lohaus R and Srinivasan S and Dang KK and Burch CL (2006).

, ''Nature'', 440(7080):87-90.
Huerta-Sanchez E, Durrett R (2007).
Wagner's canalization model
, ''Theoretical Population Biology'', 71(2):121-130.


External links


Andreas Wagner Lab Webpage
Gene expression Networks Systems biology