Although the use of microarray technology has seen exponential growth, analysis of microarray data remains a challenge to many investigators. One difficulty lies in the interpretation of a list of differentially expressed genes, or in how to plan new experiments given that knowledge. Clustering methods can be used to identify groups of genes with similar expression patterns, and genes with unknown function can be provisionally annotated based on the concept of “guilt by association”, where function is tentatively inferred from the known functions of genes with similar expression patterns. These methods frequently suffer from two limitations: (1) visualization usually only gives access to group membership, rather than specific information ab...
DNA-Microarrays are powerful tools to obtain expression data on the genome-wide scale. We performed ...
Cellular processes involve million of molecules playing a coherent role in the exchange of matter, e...
This dissertation proposes a set of computational methods for inference of gene networks from hetero...
Network analysis transcends conventional pairwise approaches to data analysis as the context of comp...
[[abstract]]The transcriptional regulation of gene expression has been known to be a key mechanism i...
The advent of genome-wide high-throughput techniques has produced vast amounts of data that provide ...
The possible applications of modeling and simulation in the field of bioinformatics are very extensi...
The comparison of gene expression profiles among DNA microarray experiments enables the identificati...
Microarray technologyi provides an opportunity to monitor mRNA levels of expression of thousands of ...
Correlation networks have been used in biological networks to analyze and model high-throughput biol...
Motivation: Microarrays have become a central tool in bio-logical research. Their applications range...
BACKGROUND: DNA microarrays are used to produce large sets of expression measurements from which spe...
Motivation: One of the most challenging tasks in the post-genomic era is the reconstruction of trans...
BACKGROUND: The most common method of identifying groups of functionally related genes in microarray...
Allowing the parallel monitoring of the transcription of thousands of genes, microarrays constitute ...
DNA-Microarrays are powerful tools to obtain expression data on the genome-wide scale. We performed ...
Cellular processes involve million of molecules playing a coherent role in the exchange of matter, e...
This dissertation proposes a set of computational methods for inference of gene networks from hetero...
Network analysis transcends conventional pairwise approaches to data analysis as the context of comp...
[[abstract]]The transcriptional regulation of gene expression has been known to be a key mechanism i...
The advent of genome-wide high-throughput techniques has produced vast amounts of data that provide ...
The possible applications of modeling and simulation in the field of bioinformatics are very extensi...
The comparison of gene expression profiles among DNA microarray experiments enables the identificati...
Microarray technologyi provides an opportunity to monitor mRNA levels of expression of thousands of ...
Correlation networks have been used in biological networks to analyze and model high-throughput biol...
Motivation: Microarrays have become a central tool in bio-logical research. Their applications range...
BACKGROUND: DNA microarrays are used to produce large sets of expression measurements from which spe...
Motivation: One of the most challenging tasks in the post-genomic era is the reconstruction of trans...
BACKGROUND: The most common method of identifying groups of functionally related genes in microarray...
Allowing the parallel monitoring of the transcription of thousands of genes, microarrays constitute ...
DNA-Microarrays are powerful tools to obtain expression data on the genome-wide scale. We performed ...
Cellular processes involve million of molecules playing a coherent role in the exchange of matter, e...
This dissertation proposes a set of computational methods for inference of gene networks from hetero...