Inferring regulatory networks from experimental data via probabilistic graphical models is a popular framework to gain insights into biological systems. However, the inherent noise in experimental data coupled with a limited sample size reduces the performance of network reverse engineering. Prior knowledge from existing sources of biological information can address this low signal to noise problem by biasing the network inference towards biologically plausible network structures. Although integrating various sources of information is desirable, their heterogeneous nature makes this task challenging. We propose two computational methods to incorporate various information sources into a probabilistic consensus structure prior to be used in g...
Motivation: The reconstruction of signaling pathways from gene knockdown data is a novel research fi...
Motivation: Reverse engineering GI networks from experimental data is a challenging task due to the ...
Motivation: Reverse engineering gene interaction networks from experimental data is a challenging ta...
<div><p>Inferring regulatory networks from experimental data via probabilistic graphical models is a...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
In this work, we propose approaches for the inference of graphical models in the Bayesian framework....
There have been various attempts to reconstruct gene regulatory networks from microarray expression...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
In this chapter we discuss the advantages of the use of probabilistic graphical models for modelling...
Recent years have seen much interest in the study of systems characterized by multiple interacting c...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
The inference of gene networks from large-scale human genomic data is challenging due to the difficu...
Motivation: The reconstruction of signaling pathways from gene knockdown data is a novel research fi...
Motivation: Reverse engineering GI networks from experimental data is a challenging task due to the ...
Motivation: Reverse engineering gene interaction networks from experimental data is a challenging ta...
<div><p>Inferring regulatory networks from experimental data via probabilistic graphical models is a...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
In this work, we propose approaches for the inference of graphical models in the Bayesian framework....
There have been various attempts to reconstruct gene regulatory networks from microarray expression...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
In this chapter we discuss the advantages of the use of probabilistic graphical models for modelling...
Recent years have seen much interest in the study of systems characterized by multiple interacting c...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
The inference of gene networks from large-scale human genomic data is challenging due to the difficu...
Motivation: The reconstruction of signaling pathways from gene knockdown data is a novel research fi...
Motivation: Reverse engineering GI networks from experimental data is a challenging task due to the ...
Motivation: Reverse engineering gene interaction networks from experimental data is a challenging ta...