AbstractBackgroundMicroarray data analysis has been the subject of extensive and ongoing pipeline development due to its complexity, the availability of several options at each analysis step, and the development of new analysis demands, including integration with new data sources. Bioinformatics pipelines are usually custom built for different applications, making them typically difficult to modify, extend and repurpose. Scientific workflow systems are intended to address these issues by providing general-purpose frameworks in which to develop and execute such pipelines. The Kepler workflow environment is a well-established system under continual development that is employed in several areas of scientific research. Kepler provides a flexibl...
International audienceData analysis pipelines are now established as an effective means for specifyi...
Background: The microarray data analysis realm is ever growing through the development of various to...
Abstract: Background: Pre-processing, including normalization of raw microarray data is crucial to m...
AbstractIncreasing numbers of genomic technologies are leading to massive amounts of genomic data, a...
We present how we used a workflow system to create a computational pipeline for storing, preprocessi...
AbstractThere has been a massive increase in the number of large scale biological datasets during th...
Next-generation DNA sequencing machines are generating a very large amount of sequence data with app...
In this paper, we discuss data sets that are being generated by microarray technology, which makes i...
Background: There has been a dramatic increase in the amount of quantitative data derived from the m...
We have implemented a self-contained package for DNA microarray analysis in R. The package is named ...
Background: Microarray data analysis presents a significant challenge to researchers who are unable ...
End of project reportDNA microarrays are widely used for gene expression profiling. Raw data resulti...
Microarrays are state technologies of the art for the measurement of expression of thousands of gene...
In order to perform complex scientific data analysis, multiple software and skillsets are generally ...
Biological, clinical, and pharmacological research now often involves analyses of genomes, transcrip...
International audienceData analysis pipelines are now established as an effective means for specifyi...
Background: The microarray data analysis realm is ever growing through the development of various to...
Abstract: Background: Pre-processing, including normalization of raw microarray data is crucial to m...
AbstractIncreasing numbers of genomic technologies are leading to massive amounts of genomic data, a...
We present how we used a workflow system to create a computational pipeline for storing, preprocessi...
AbstractThere has been a massive increase in the number of large scale biological datasets during th...
Next-generation DNA sequencing machines are generating a very large amount of sequence data with app...
In this paper, we discuss data sets that are being generated by microarray technology, which makes i...
Background: There has been a dramatic increase in the amount of quantitative data derived from the m...
We have implemented a self-contained package for DNA microarray analysis in R. The package is named ...
Background: Microarray data analysis presents a significant challenge to researchers who are unable ...
End of project reportDNA microarrays are widely used for gene expression profiling. Raw data resulti...
Microarrays are state technologies of the art for the measurement of expression of thousands of gene...
In order to perform complex scientific data analysis, multiple software and skillsets are generally ...
Biological, clinical, and pharmacological research now often involves analyses of genomes, transcrip...
International audienceData analysis pipelines are now established as an effective means for specifyi...
Background: The microarray data analysis realm is ever growing through the development of various to...
Abstract: Background: Pre-processing, including normalization of raw microarray data is crucial to m...