<p>Boolean networks are important models of biochemical systems, located at the high end of the abstraction spectrum. A number of Boolean gene networks have been inferred following essentially the same method. Such a method first considers experimental data for a typically underdetermined “regulation” graph. Next, Boolean networks are inferred by using biological constraints to narrow the search space, such as a desired set of (fixed-point or cyclic) attractors. We describe Griffin, a computer tool enhancing this method. Griffin incorporates a number of well-established algorithms, such as Dubrova and Teslenko's algorithm for finding attractors in synchronous Boolean networks. In addition, a formal definition of regulation allows Griffin to...
Among the various phenomena that can be modeled by Boolean networks, i.e., discrete-time dynamical s...
A Boolean model of gene and protein regulatory network with memory (GPBN) has recently attracted int...
Motivation: As the study of information processing in living cells moves from individual pathways to...
<p>Boolean networks are important models of biochemical systems, located at the high end of the abst...
Boolean networks are important models of biochemical systems, located at the high end of the abstrac...
Gene-regulatory networks control the expression of genes and therefore the phenotype of cells. Model...
Boolean networks are a popular modeling framework in computational biology to capture the dynamics o...
Motivation: As the study of information processing in living cells moves from individual pathways to...
Boolean networks are a popular modeling framework in computational biology to capture the dynamics o...
In biological systems, the dynamic analysis method has gained increasing attention in the past decad...
Regulatory networks play a central role in cellular behavior and decision making. Learning these reg...
Regulatory networks play a central role in cellular behavior and decision making. Learning these reg...
In a network, the components of a given system are represented as nodes, the interactions are abstra...
Bioinformatics and network biology provide exciting and challenging research and application areas f...
Biological networks, such as genetic regulatory networks, often contain positive and negative feedba...
Among the various phenomena that can be modeled by Boolean networks, i.e., discrete-time dynamical s...
A Boolean model of gene and protein regulatory network with memory (GPBN) has recently attracted int...
Motivation: As the study of information processing in living cells moves from individual pathways to...
<p>Boolean networks are important models of biochemical systems, located at the high end of the abst...
Boolean networks are important models of biochemical systems, located at the high end of the abstrac...
Gene-regulatory networks control the expression of genes and therefore the phenotype of cells. Model...
Boolean networks are a popular modeling framework in computational biology to capture the dynamics o...
Motivation: As the study of information processing in living cells moves from individual pathways to...
Boolean networks are a popular modeling framework in computational biology to capture the dynamics o...
In biological systems, the dynamic analysis method has gained increasing attention in the past decad...
Regulatory networks play a central role in cellular behavior and decision making. Learning these reg...
Regulatory networks play a central role in cellular behavior and decision making. Learning these reg...
In a network, the components of a given system are represented as nodes, the interactions are abstra...
Bioinformatics and network biology provide exciting and challenging research and application areas f...
Biological networks, such as genetic regulatory networks, often contain positive and negative feedba...
Among the various phenomena that can be modeled by Boolean networks, i.e., discrete-time dynamical s...
A Boolean model of gene and protein regulatory network with memory (GPBN) has recently attracted int...
Motivation: As the study of information processing in living cells moves from individual pathways to...