Gene expression is a readily-observed quantification of transcriptional activity and cellular state that enables the recovery of the relationships between regulators and their target genes. Reconstructing transcriptional regulatory networks from gene expression data is a problem that has attracted much attention, but previous work often makes the simplifying (but unrealistic) assumption that regulator activity is represented by mRNA levels. We use a latent tree graphical model to analyze gene expression without relying on transcription factor expression as a proxy for regulator activity. The latent tree model is a type of Markov random field that includes both observed gene variables and latent (hidden) variables, which factorize on a Marko...
The high complexity in the gene regulation mechanism and the prevalent noise in high-throughput dete...
<div><p>Regulatory networks that control gene expression are important in diverse biological context...
We propose a kernel-based method for inferring regulatory networks from gene expression data that ex...
Gene expression is a readily-observed quantification of transcriptional activity and cellular state ...
Understanding the organization and function of transcriptional regulatory networks by analyzing high...
Motivation: Genetic networks regulate key processes in living cells. Various methods have been sugge...
Understanding the organization and function of transcriptional regulatory networks by analyzing high...
The recent availability of whole-genome scale data sets that investigate complementary and diverse a...
(A) Our network inference algorithm takes as input a gene expression matrix, X, and a prior on netwo...
Background: Transcriptional gene regulation is one of the most important mechanisms in controlling m...
Abstract We present IDEA (the Induction Dynamics gene Expression Atlas), a dataset constructed by in...
Regulation of gene expression at the transcriptional level is a fundamental mechanism that is well c...
In this thesis we present a new model for identifying dependencies withina gene regulatory cycle. Th...
Gene regulatory networks (GRNs) are useful tools to help understand biological pathways on a molecul...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
The high complexity in the gene regulation mechanism and the prevalent noise in high-throughput dete...
<div><p>Regulatory networks that control gene expression are important in diverse biological context...
We propose a kernel-based method for inferring regulatory networks from gene expression data that ex...
Gene expression is a readily-observed quantification of transcriptional activity and cellular state ...
Understanding the organization and function of transcriptional regulatory networks by analyzing high...
Motivation: Genetic networks regulate key processes in living cells. Various methods have been sugge...
Understanding the organization and function of transcriptional regulatory networks by analyzing high...
The recent availability of whole-genome scale data sets that investigate complementary and diverse a...
(A) Our network inference algorithm takes as input a gene expression matrix, X, and a prior on netwo...
Background: Transcriptional gene regulation is one of the most important mechanisms in controlling m...
Abstract We present IDEA (the Induction Dynamics gene Expression Atlas), a dataset constructed by in...
Regulation of gene expression at the transcriptional level is a fundamental mechanism that is well c...
In this thesis we present a new model for identifying dependencies withina gene regulatory cycle. Th...
Gene regulatory networks (GRNs) are useful tools to help understand biological pathways on a molecul...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
The high complexity in the gene regulation mechanism and the prevalent noise in high-throughput dete...
<div><p>Regulatory networks that control gene expression are important in diverse biological context...
We propose a kernel-based method for inferring regulatory networks from gene expression data that ex...