We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic networks from gene expression data parametrized by a precision matrix and autoregressive coefficient matrix. We consider the time steps as blocks or chains. The proposed approach explores patterns of contemporaneous and dynamic interactions by efficiently combining Gaussian graphical models and Bayesian dynamic networks. We use penalized likelihood inference with a smoothly clipped absolute deviation penalty to explore the relationships among the observed time course gene expressions. The method is illustrated on simulated data and on real data examples from Arabidopsis thaliana and mammary gland time course microarray gene expressions.</p
Dynamic networks models describe a growing number of important scientific processes, from cell biolo...
Dynamic networks models describe a growing number of important scientific processes, from cell biolo...
Factorial Gaussian graphical Models (fGGMs) have recently been proposed for inferring dynamic gene r...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
We present a method for gene network inference and revision based on time-series data. Gene networks...
Summarization: Biological networks are often described as probabilistic graphs in the context of gen...
Dynamic gene-regulatory networks are complex since the interaction patterns between their components...
This chapter presents a survey of recent methods for reconstruction of time-varying biological netwo...
We propose a semiparametric Bayesian model, based on penalized splines, for the recovery of the time...
We propose a semiparametric Bayesian model, based on penalized splines, for the recovery of the time...
Dynamic gene-regulatory networks are complex since the interaction patterns between its components m...
Dynamic networks models describe a growing number of important scientific processes, from cell biolo...
Dynamic networks models describe a growing number of important scientific processes, from cell biolo...
Factorial Gaussian graphical Models (fGGMs) have recently been proposed for inferring dynamic gene r...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
We present a method for gene network inference and revision based on time-series data. Gene networks...
Summarization: Biological networks are often described as probabilistic graphs in the context of gen...
Dynamic gene-regulatory networks are complex since the interaction patterns between their components...
This chapter presents a survey of recent methods for reconstruction of time-varying biological netwo...
We propose a semiparametric Bayesian model, based on penalized splines, for the recovery of the time...
We propose a semiparametric Bayesian model, based on penalized splines, for the recovery of the time...
Dynamic gene-regulatory networks are complex since the interaction patterns between its components m...
Dynamic networks models describe a growing number of important scientific processes, from cell biolo...
Dynamic networks models describe a growing number of important scientific processes, from cell biolo...
Factorial Gaussian graphical Models (fGGMs) have recently been proposed for inferring dynamic gene r...