Microarray gene expression data can provide insights into biological processes at a system-wide level and is commonly used for reverse engineering gene regulatory networks (GRN). Due to the amalgamation of noise from different sources, microarray expression profiles become inherently noisy leading to significant impact on the GRN reconstruction process. Microarray replicates (both biological and technical), generated to increase the reliability of data obtained under noisy conditions, have limited influence in enhancing the accuracy of reconstruction. Therefore, instead of the conventional GRN modeling approaches which are deterministic, stochastic techniques are becoming increasingly necessary for inferring GRN from noisy microarray data. ...
Recent advances in gene-expression profiling technologies provide large amounts of gene expression d...
Gene regulatory network (GRN) consists of a set of genes and regulatory relationships between the ge...
Gene Regulatory Network (GRN) modelling infers genetic interactions between different genes and othe...
Microarray gene expression data can provide insights into biological processes at a system-wide leve...
Gene regulatory networks (GRNs) consist of thousands of genes and proteins which are dynamically int...
Cells are governed by complex and multi-layered gene regulatory networks, which orchestrate the deve...
Recent advances in gene-expression profiling technologies provide large amounts of gene expression d...
Cells are governed by complex and multi-layered gene regulatory networks, which orchestrate the deve...
BACKGROUND: The steady-state behaviour of gene regulatory networks (GRNs) can provide crucial eviden...
Recent advances in gene-expression profiling technologies provide large amounts of gene expression d...
Microarray expression profiles are inherently noisy and many different sources of variation exist in...
Background Gene expression time series data are usually in the form of high-dimensio...
Motivation: Identification of regulatory networks is typically based on deterministic models of gene...
As basic building blocks of life, genes, as well as their products (proteins), do not work independe...
Gene regulatory network (GRN) reconstruction from high-throughput microarray data is an important pr...
Recent advances in gene-expression profiling technologies provide large amounts of gene expression d...
Gene regulatory network (GRN) consists of a set of genes and regulatory relationships between the ge...
Gene Regulatory Network (GRN) modelling infers genetic interactions between different genes and othe...
Microarray gene expression data can provide insights into biological processes at a system-wide leve...
Gene regulatory networks (GRNs) consist of thousands of genes and proteins which are dynamically int...
Cells are governed by complex and multi-layered gene regulatory networks, which orchestrate the deve...
Recent advances in gene-expression profiling technologies provide large amounts of gene expression d...
Cells are governed by complex and multi-layered gene regulatory networks, which orchestrate the deve...
BACKGROUND: The steady-state behaviour of gene regulatory networks (GRNs) can provide crucial eviden...
Recent advances in gene-expression profiling technologies provide large amounts of gene expression d...
Microarray expression profiles are inherently noisy and many different sources of variation exist in...
Background Gene expression time series data are usually in the form of high-dimensio...
Motivation: Identification of regulatory networks is typically based on deterministic models of gene...
As basic building blocks of life, genes, as well as their products (proteins), do not work independe...
Gene regulatory network (GRN) reconstruction from high-throughput microarray data is an important pr...
Recent advances in gene-expression profiling technologies provide large amounts of gene expression d...
Gene regulatory network (GRN) consists of a set of genes and regulatory relationships between the ge...
Gene Regulatory Network (GRN) modelling infers genetic interactions between different genes and othe...