Probabilistic Boolean networks (PBNs) have received much attention in modeling genetic regulatory networks. A PBN can be regarded as a Markov chain process and is characterised by a transition probability matrix. In this study, the authors propose efficient algorithms for constructing a PBN when its transition probability matrix is given. The complexities of the algorithms are also analysed. This is an interesting inverse problem in network inference using steady-state data. The problem is important as most microarray data sets are assumed to be obtained from sampling the steady-state. © 2009 © The Institution of Engineering and Technology.link_to_subscribed_fulltex
Building genetic regulatory networks from time series data of gene expression patterns is an importa...
Abstract—A key issue of genomic signal processing is the design of gene regulatory networks. A proba...
Modeling genetic regulatory networks is an important research issue in systems biology. Many mathema...
Probabilistic Boolean Networks (PBNs) have received much attention for modeling genetic regulatory ...
Probabilistic Boolean Networks (PBNs) are useful models for modeling genetic regulatory networks. In...
Modeling genetic regulatory networks is an important problem in genomic research. Boolean Networks (...
Motivation: Probabilistic Boolean networks (PBNs) have been proposed to model genetic regulatory int...
The inference of gene regulatory networks is a key issue for genomic signal processing. This paper a...
In this brief, we consider the problem of finding a probabilistic Boolean network (PBN) based on a n...
AbstractModeling genetic regulatory interactions is an important issue in systems biology. Probabili...
Boolean Network (BN) and its extension Probabilistic Boolean network (PBN) have received much attent...
Abstract Boolean Network (BN) and its extension Probabilistic Boolean network (PBN) have received mu...
AbstractGiven a Probabilistic Boolean Network (PBN), an important problem is to study its steady-sta...
Abstract—Probabilistic Boolean networks (PBNs) have been recently introduced as a paradigm for model...
Interactions between different genes become more and more important in understanding how they collec...
Building genetic regulatory networks from time series data of gene expression patterns is an importa...
Abstract—A key issue of genomic signal processing is the design of gene regulatory networks. A proba...
Modeling genetic regulatory networks is an important research issue in systems biology. Many mathema...
Probabilistic Boolean Networks (PBNs) have received much attention for modeling genetic regulatory ...
Probabilistic Boolean Networks (PBNs) are useful models for modeling genetic regulatory networks. In...
Modeling genetic regulatory networks is an important problem in genomic research. Boolean Networks (...
Motivation: Probabilistic Boolean networks (PBNs) have been proposed to model genetic regulatory int...
The inference of gene regulatory networks is a key issue for genomic signal processing. This paper a...
In this brief, we consider the problem of finding a probabilistic Boolean network (PBN) based on a n...
AbstractModeling genetic regulatory interactions is an important issue in systems biology. Probabili...
Boolean Network (BN) and its extension Probabilistic Boolean network (PBN) have received much attent...
Abstract Boolean Network (BN) and its extension Probabilistic Boolean network (PBN) have received mu...
AbstractGiven a Probabilistic Boolean Network (PBN), an important problem is to study its steady-sta...
Abstract—Probabilistic Boolean networks (PBNs) have been recently introduced as a paradigm for model...
Interactions between different genes become more and more important in understanding how they collec...
Building genetic regulatory networks from time series data of gene expression patterns is an importa...
Abstract—A key issue of genomic signal processing is the design of gene regulatory networks. A proba...
Modeling genetic regulatory networks is an important research issue in systems biology. Many mathema...