Gene regulatory networks represent the interactions among genes regulating the activation of specific cell functionalities and they have been successfully modeled using threshold Boolean networks. In this paper we propose a systematic translation of threshold Boolean networks into reaction systems. Our translation produces a non redundant set of rules with a minimal number of objects. This translation allows us to simulate the behavior of a Boolean network simply by executing the (closed) reaction system we obtain. This can be very useful for investigating the role of different genes simply by 'playing' with the rules. We developed a tool able to systematically translate a threshold Boolean network into a reaction system. We use our tool to...
Because of their simplicity, boolean networks are a popular formalism to model gene regulatory netwo...
Abstract. In order to understand complex genetic regulatory networks researchers require automated f...
Gene regulatory networks (GRNs) are useful tools to help understand biological pathways on a molecul...
Gene regulatory networks represent the interactions among genes regulating the activation of specifi...
Gene Regulatory Networks represent the interactions among genes regulating the activation of specifi...
Gene Regulatory Networks represent the interactions among genes regulating the activation of specifi...
Gene Regulatory Networks represent the interactions among genes regulating the activation of specifi...
Gene regulatory networks represent the interactions among genes regulating the activation of specifi...
Gene regulatory networks represent the interactions among genes regulating the activation of specifi...
Abstract. Boolean threshold networks have recently been proposed as useful tools to model the dynami...
Gene-on-gene regulations are key components of every living organism. Dynamical abstract models of g...
Gene-regulatory networks control the expression of genes and therefore the phenotype of cells. Model...
<p>Nodes with states ON/OFF represent the presence of proteins. Arrows represent interactions betwee...
The inference of Gene Regulatory Networks (GRNs) from time series gene expression data is an effecti...
A Boolean model is a simple, discrete and dynamic model without the need to consider the effects at ...
Because of their simplicity, boolean networks are a popular formalism to model gene regulatory netwo...
Abstract. In order to understand complex genetic regulatory networks researchers require automated f...
Gene regulatory networks (GRNs) are useful tools to help understand biological pathways on a molecul...
Gene regulatory networks represent the interactions among genes regulating the activation of specifi...
Gene Regulatory Networks represent the interactions among genes regulating the activation of specifi...
Gene Regulatory Networks represent the interactions among genes regulating the activation of specifi...
Gene Regulatory Networks represent the interactions among genes regulating the activation of specifi...
Gene regulatory networks represent the interactions among genes regulating the activation of specifi...
Gene regulatory networks represent the interactions among genes regulating the activation of specifi...
Abstract. Boolean threshold networks have recently been proposed as useful tools to model the dynami...
Gene-on-gene regulations are key components of every living organism. Dynamical abstract models of g...
Gene-regulatory networks control the expression of genes and therefore the phenotype of cells. Model...
<p>Nodes with states ON/OFF represent the presence of proteins. Arrows represent interactions betwee...
The inference of Gene Regulatory Networks (GRNs) from time series gene expression data is an effecti...
A Boolean model is a simple, discrete and dynamic model without the need to consider the effects at ...
Because of their simplicity, boolean networks are a popular formalism to model gene regulatory netwo...
Abstract. In order to understand complex genetic regulatory networks researchers require automated f...
Gene regulatory networks (GRNs) are useful tools to help understand biological pathways on a molecul...