Many current works aiming to learn regulatory networks from systems biology data must balance model complexity with respect to data availability and quality. Methods that learn regulatory associations based on unit-less metrics, such as Mutual Information, are attractive in that they scale well and reduce the number of free parameters (model complexity) per interaction to a minimum. In contrast, methods for learning regulatory networks based on explicit dynamical models are more complex and scale less gracefully, but are attractive as they may allow direct prediction of transcriptional dynamics and resolve the directionality of many regulatory interactions.We aim to investigate whether scalable information based methods (like the Context Li...
BACKGROUND: Characterising programs of gene regulation by studying individual protein-DNA and protei...
Machine learning approaches offer the potential to systematically identify transcriptional regulator...
We develop a new regression algorithm, cMIKANA, for inference of gene regulatory networks from combi...
Many current works aiming to learn regulatory networks from systems biology data must balance model ...
Current technologies have lead to the availability of multiple genomic data types in sufficient quan...
Machine learning approaches offer the potential to systematically identify transcriptional regulator...
Numerous methods have been developed for inferring gene regulatory networks from expression data, ho...
(A) Our network inference algorithm takes as input a gene expression matrix, X, and a prior on netwo...
To understand how the components of a complex system like the biological cell interact and regulate ...
Motivation: To improve the understanding of molecular regulation events, various approaches have bee...
Machine learning approaches offer the potential to systematically identify transcriptional regulator...
Gene regulatory networks are composed of sub-networks that are often shared across biological proces...
Gene regulatory networks are composed of sub-networks that are often shared across biological proces...
Motivation: To improve the understanding of molecular regulation events, various approaches have bee...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
BACKGROUND: Characterising programs of gene regulation by studying individual protein-DNA and protei...
Machine learning approaches offer the potential to systematically identify transcriptional regulator...
We develop a new regression algorithm, cMIKANA, for inference of gene regulatory networks from combi...
Many current works aiming to learn regulatory networks from systems biology data must balance model ...
Current technologies have lead to the availability of multiple genomic data types in sufficient quan...
Machine learning approaches offer the potential to systematically identify transcriptional regulator...
Numerous methods have been developed for inferring gene regulatory networks from expression data, ho...
(A) Our network inference algorithm takes as input a gene expression matrix, X, and a prior on netwo...
To understand how the components of a complex system like the biological cell interact and regulate ...
Motivation: To improve the understanding of molecular regulation events, various approaches have bee...
Machine learning approaches offer the potential to systematically identify transcriptional regulator...
Gene regulatory networks are composed of sub-networks that are often shared across biological proces...
Gene regulatory networks are composed of sub-networks that are often shared across biological proces...
Motivation: To improve the understanding of molecular regulation events, various approaches have bee...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
BACKGROUND: Characterising programs of gene regulation by studying individual protein-DNA and protei...
Machine learning approaches offer the potential to systematically identify transcriptional regulator...
We develop a new regression algorithm, cMIKANA, for inference of gene regulatory networks from combi...