In statistical genomics and systems biology non-homogeneous dynamic Bayesian networks (NH-DBNs) have become an important tool for learning regulatory networks and signalling pathways from post-genomic data, such as gene expression time series. This chapter gives an overview of various state-of-the-art NH-DBN models with a variety of features. All NH-DBNs presented here have in common that they are Bayesian models that combine linear regression with multiple changepoint processes. The NH-DBN models can be used for learning the network structures of time-varying regulatory processes from data, where the regulatory interactions are subject to temporal change. We conclude this chapter with an illustration of the methodology on two applications,...
Recently, a Bayesian network model for inferring non-stationary regulatory processes from gene expre...
Dynamic Bayesian networks (DBNs) can be used for the discovery of gene regulatory networks (GRNs) fr...
Recently, there has been much interest in reverse engineering genetic networks from time series data...
In statistical genomics and systems biology non-homogeneous dynamic Bayesian networks (NH-DBNs) have...
An important and challenging problem in systems biology is the inference of gene regulatory networks...
An important and challenging problem in systems biology is the inference of gene regulatory networks...
In systems biology, nonhomogeneous dynamic Bayesian networks (NH-DBNs) have become a popular modelin...
The focus of this PhD thesis has been on two well-known and widely applied statistical model classes...
Motivation: Non-homogeneous dynamic Bayesian networks (NH-DBNs) are a popular modelling tool for lea...
Since the regulatory relationship between genes is usually non-stationary, the homogeneity assumptio...
In the topical field of systems biology there is considerable interest in learning regulatory networ...
In this chapter, we review the problem of network inference from time-course data, focusing on a cla...
Motivation: Non-homogeneous dynamic Bayesian networks (NH-DBNs) are a popular tool for learning netw...
Recently, a Bayesian network model for inferring non-stationary regulatory processes from gene expre...
Dynamic Bayesian networks (DBNs) can be used for the discovery of gene regulatory networks (GRNs) fr...
Recently, there has been much interest in reverse engineering genetic networks from time series data...
In statistical genomics and systems biology non-homogeneous dynamic Bayesian networks (NH-DBNs) have...
An important and challenging problem in systems biology is the inference of gene regulatory networks...
An important and challenging problem in systems biology is the inference of gene regulatory networks...
In systems biology, nonhomogeneous dynamic Bayesian networks (NH-DBNs) have become a popular modelin...
The focus of this PhD thesis has been on two well-known and widely applied statistical model classes...
Motivation: Non-homogeneous dynamic Bayesian networks (NH-DBNs) are a popular modelling tool for lea...
Since the regulatory relationship between genes is usually non-stationary, the homogeneity assumptio...
In the topical field of systems biology there is considerable interest in learning regulatory networ...
In this chapter, we review the problem of network inference from time-course data, focusing on a cla...
Motivation: Non-homogeneous dynamic Bayesian networks (NH-DBNs) are a popular tool for learning netw...
Recently, a Bayesian network model for inferring non-stationary regulatory processes from gene expre...
Dynamic Bayesian networks (DBNs) can be used for the discovery of gene regulatory networks (GRNs) fr...
Recently, there has been much interest in reverse engineering genetic networks from time series data...