We improve the reliability of detecting coexpressed gene pairs from microarray data by introducing a novel probe-level quality-weighted similarity measure for combining data across different Affymetrix experiments. In construction of gene coexpression networks, the proposed procedure is less sensitive to noise than the corresponding single-experiment approaches or the conventional integrative approaches, even when a relatively small number of samples and conditions is available. The present results indicate how the accumulated microarray data can be effectively exploited to increase the quality of the inferred networks. In particular, we demonstrate its biological relevance in identifying coexpressions in mouse T helper cell differentiation
Gene coexpression networks inferred by correlation from high-throughput profiling such as microarray...
Motivation: Coexpression networks are data-derived representations of genes behaving in a similar wa...
Motivation :Microarray experiments that allow simultaneous expression profiling of thousands of g...
Motivation: Coexpression networks have recently emerged as a novel holistic approach to microarray d...
Gene expression microarray data can be used for the assembly of genetic coexpression network graphs....
Background: Large microarray datasets have enabled gene regulation to be studied through coexpressio...
Model organisms are commonly used to study human diseases and to develop suitable interventions. The...
Abstract Background Microarray techniques have become...
Gene coexpression analysis constitutes a widely used practice for gene partner identification and ge...
Background: Large microarray datasets have enabled gene regulation to be studied through coexpressio...
Microarray expression data sets vary in size, data quality and other features, but most methods for ...
Abstract- In the past several years, the amount of microarray data accessible on the Internet has gr...
Gene coexpression networks inferred by correlation from high-throughput profiling such as microarray...
Motivation: Coexpression networks are data-derived representations of genes behaving in a similar wa...
Motivation :Microarray experiments that allow simultaneous expression profiling of thousands of g...
Motivation: Coexpression networks have recently emerged as a novel holistic approach to microarray d...
Gene expression microarray data can be used for the assembly of genetic coexpression network graphs....
Background: Large microarray datasets have enabled gene regulation to be studied through coexpressio...
Model organisms are commonly used to study human diseases and to develop suitable interventions. The...
Abstract Background Microarray techniques have become...
Gene coexpression analysis constitutes a widely used practice for gene partner identification and ge...
Background: Large microarray datasets have enabled gene regulation to be studied through coexpressio...
Microarray expression data sets vary in size, data quality and other features, but most methods for ...
Abstract- In the past several years, the amount of microarray data accessible on the Internet has gr...
Gene coexpression networks inferred by correlation from high-throughput profiling such as microarray...
Motivation: Coexpression networks are data-derived representations of genes behaving in a similar wa...
Motivation :Microarray experiments that allow simultaneous expression profiling of thousands of g...