AbstractInference of gene expression networks has become one of the primary challenges in computational biology. Analysis of microarray experiments using appropriate mathematical models can reveal interactions among protein regulators and target genes. This paper presents a combined approach to the inference of gene expression networks from time series measurements, ChIP-on-chip experiments, analyses of promoter sequences, and protein–protein interaction data. A recursive model of gene expression allowing for identification of active gene expression control networks with up to two regulators of one target gene is presented. The model was used to inspect all possible regulator–target gene combinations and predict those that are active during...
A major challenge in systems biology is the ability to model complex regulatory interactions, such a...
We develop a new regression algorithm, cMIKANA, for inference of gene regulatory networks from combi...
Abstract Background Elucidating the dynamic behaviour of genetic regulatory networks is one of the m...
Motivation: Inferring the relationships between transcription factors (TFs) and their targets has ut...
The high complexity in the gene regulation mechanism and the prevalent noise in high-throughput dete...
Motivation: Genetic networks regulate key processes in living cells. Various methods have been sugge...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
We propose a new method for finding potential regulatory relationships between pairs of genes from m...
UnrestrictedUnderstanding the gene regulatory network has always been one of the important and chall...
Background: Transcriptional gene regulation is one of the most important mechanisms in controlling m...
Regulatory networks consist of genes encoding transcription factors (TFs) and the genes they activat...
(A) Our network inference algorithm takes as input a gene expression matrix, X, and a prior on netwo...
Background Gene expression microarray and other multiplex data hold promise for addressing the chal...
Motivation Quantitative estimation of the regulatory relationship be-tween transcription factors and...
Abstract We present IDEA (the Induction Dynamics gene Expression Atlas), a dataset constructed by in...
A major challenge in systems biology is the ability to model complex regulatory interactions, such a...
We develop a new regression algorithm, cMIKANA, for inference of gene regulatory networks from combi...
Abstract Background Elucidating the dynamic behaviour of genetic regulatory networks is one of the m...
Motivation: Inferring the relationships between transcription factors (TFs) and their targets has ut...
The high complexity in the gene regulation mechanism and the prevalent noise in high-throughput dete...
Motivation: Genetic networks regulate key processes in living cells. Various methods have been sugge...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
We propose a new method for finding potential regulatory relationships between pairs of genes from m...
UnrestrictedUnderstanding the gene regulatory network has always been one of the important and chall...
Background: Transcriptional gene regulation is one of the most important mechanisms in controlling m...
Regulatory networks consist of genes encoding transcription factors (TFs) and the genes they activat...
(A) Our network inference algorithm takes as input a gene expression matrix, X, and a prior on netwo...
Background Gene expression microarray and other multiplex data hold promise for addressing the chal...
Motivation Quantitative estimation of the regulatory relationship be-tween transcription factors and...
Abstract We present IDEA (the Induction Dynamics gene Expression Atlas), a dataset constructed by in...
A major challenge in systems biology is the ability to model complex regulatory interactions, such a...
We develop a new regression algorithm, cMIKANA, for inference of gene regulatory networks from combi...
Abstract Background Elucidating the dynamic behaviour of genetic regulatory networks is one of the m...