Motivation: Inferring genetic networks from time-series expression data has been a great deal of interest. In most cases, however, the number of genes exceeds that of data points which, in principle, makes it impossible to recover the underlying networks. To address the dimensionality problem, we apply the subset selection method to a linear system of difference equations. Previous approaches assign the single most likely combination of regulators to each target gene, which often causes over-fitting of the small number of data. Results: Here, we propose a new algorithm, named LEARNe, which merges the predictions from all the combinations of regulators that have a certain level of likelihood. LEARNe provides more accurate and robust predicti...
Reverse engineering of biochemical networks remains an important open challenge in computational sys...
Motivation: Inferring the genetic interaction mechanism using Bayesian networks has recently drawn i...
Motivation: The solution of high-dimensional inference and prediction problems in computational biol...
Motivation: Inferring genetic networks from time-series expression data has been a great deal of int...
Abstract In this chapter, we study different gene regulatory network learning methods based on penal...
Motivation: Reverse engineering of genetic regulatory networks from experimental data is the first s...
We present a method for gene network inference and revision based on time-series data. Gene networks...
One of the pressing open problems of computational systems biology is the elucidation of the topolog...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
We propose a local search approach for learning dynamic systems from time-series data, using network...
The inference of gene regulatory network (GRN) from gene expression data is an unsolved problem of g...
The inference of gene regulatory network (GRN) from gene expression data is an unsolved problem of g...
The construction of genetic regulatory networks from time series gene expression data is an importan...
The construction of genetic regulatory networks from time series gene expression data is an importan...
Background\ud Reverse engineering gene networks and identifying regulatory interactions are integral...
Reverse engineering of biochemical networks remains an important open challenge in computational sys...
Motivation: Inferring the genetic interaction mechanism using Bayesian networks has recently drawn i...
Motivation: The solution of high-dimensional inference and prediction problems in computational biol...
Motivation: Inferring genetic networks from time-series expression data has been a great deal of int...
Abstract In this chapter, we study different gene regulatory network learning methods based on penal...
Motivation: Reverse engineering of genetic regulatory networks from experimental data is the first s...
We present a method for gene network inference and revision based on time-series data. Gene networks...
One of the pressing open problems of computational systems biology is the elucidation of the topolog...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
We propose a local search approach for learning dynamic systems from time-series data, using network...
The inference of gene regulatory network (GRN) from gene expression data is an unsolved problem of g...
The inference of gene regulatory network (GRN) from gene expression data is an unsolved problem of g...
The construction of genetic regulatory networks from time series gene expression data is an importan...
The construction of genetic regulatory networks from time series gene expression data is an importan...
Background\ud Reverse engineering gene networks and identifying regulatory interactions are integral...
Reverse engineering of biochemical networks remains an important open challenge in computational sys...
Motivation: Inferring the genetic interaction mechanism using Bayesian networks has recently drawn i...
Motivation: The solution of high-dimensional inference and prediction problems in computational biol...