Background: In the analysis of effects by cell treatment such as drug dosing, identifying changes on gene network structures between normal and treated cells is a key task. A possible way for identifying the changes is to compare structures of networks estimated from data on normal and treated cells separately. However, this approach usually fails to estimate accurate gene networks due to the limited length of time series data and measurement noise. Thus, approaches that identify changes on regulations by using time series data on both conditions in an efficient manner are demanded. Methods: We propose a new statistical approach that is based on the state space representation of the vector autoregressive model and estimates gene networks on...
We develop a new regression algorithm, cMIKANA, for inference of gene regulatory networks from combi...
Biological networks have arisen as an attractive paradigm of genomic science ever since the introduc...
Motivation: Conventional identification methods for gene regulatory networks (GRNs) have overwhelmin...
Background: In the analysis of effects by cell treatment such as drug dosing, identifying changes on...
<div><p>Comprehensive understanding of gene regulatory networks (GRNs) is a major challenge in the f...
Dynamic gene-regulatory networks are complex since the interaction patterns between their components...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Recently, nonlinear vector autoregressive (NVAR) model based on Granger causality was proposed to in...
Gene regulatory networks represent an abstract mapping of gene regulations in living cells. They aim...
State Space Model (SSM) is an approach to inferring gene regulatory networks. It requires less compu...
Abstract Background To understand the molecular mecha...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
Background Gene expression time series data are usually in the form of high-dimensio...
Dynamic gene-regulatory networks are complex since the interaction patterns between its components m...
Background\ud Reverse engineering gene networks and identifying regulatory interactions are integral...
We develop a new regression algorithm, cMIKANA, for inference of gene regulatory networks from combi...
Biological networks have arisen as an attractive paradigm of genomic science ever since the introduc...
Motivation: Conventional identification methods for gene regulatory networks (GRNs) have overwhelmin...
Background: In the analysis of effects by cell treatment such as drug dosing, identifying changes on...
<div><p>Comprehensive understanding of gene regulatory networks (GRNs) is a major challenge in the f...
Dynamic gene-regulatory networks are complex since the interaction patterns between their components...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Recently, nonlinear vector autoregressive (NVAR) model based on Granger causality was proposed to in...
Gene regulatory networks represent an abstract mapping of gene regulations in living cells. They aim...
State Space Model (SSM) is an approach to inferring gene regulatory networks. It requires less compu...
Abstract Background To understand the molecular mecha...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
Background Gene expression time series data are usually in the form of high-dimensio...
Dynamic gene-regulatory networks are complex since the interaction patterns between its components m...
Background\ud Reverse engineering gene networks and identifying regulatory interactions are integral...
We develop a new regression algorithm, cMIKANA, for inference of gene regulatory networks from combi...
Biological networks have arisen as an attractive paradigm of genomic science ever since the introduc...
Motivation: Conventional identification methods for gene regulatory networks (GRNs) have overwhelmin...