Background: The highly dimensional data produced by functional genomic (FG) studies makes it difficult to visualize relationships between gene products and experimental conditions (i.e., assays). Although dimensionality reduction methods such as principal component analysis (PCA) have been very useful, their application to identify assay-specific signatures has been limited by the lack of appropriate methodologies. This article proposes a new and powerful PCA-based method for the identification of assay-specific gene signatures in FG studies. Results: The proposed method (PM) is unique for several reasons. First, it is the only one, to our knowledge, that uses gene contribution, a product of the loading and expression level, to obtain assay...
AbstractIn this investigation we used statistical methods to select genes with expression profiles t...
A common approach to molecular characterisation of microbial communities in natural environments is ...
We report a DNA microarray-based method for genome-wide monitoring of competitively grown transforma...
Abstract Background: The highly dimensional data produced by functional genomic (FG) studies makes i...
Background: Microarray data sets provide relative expression levels for thousands of genes for a sma...
Microarray data sets contain a wealth of information on the gene expression levels for thousands of ...
The very high dimensional space of gene expression measurements obtained by DNA microarrays impedes ...
Motivation: Microarray experiments typically analyze thousands to tens of thousands of genes from sm...
AbstractHigh-throughput technologies such as DNA microarray are in the process of revolutionising th...
Background: There are many methods for analyzing microarray data that group together genes having si...
The genomic revolution has resulted in both the development of techniques for obtaining large quanti...
In analysis of bioinformatics data, a unique challenge arises from the high dimensionality of measur...
Nowadays microarray technology enables scientists to monitor the expression levels of hundreds of th...
AbstractBy using principal components analysis (PCA) we demonstrate here that the information releva...
Biology has entered a challenging, information-intense period where computational experiments are co...
AbstractIn this investigation we used statistical methods to select genes with expression profiles t...
A common approach to molecular characterisation of microbial communities in natural environments is ...
We report a DNA microarray-based method for genome-wide monitoring of competitively grown transforma...
Abstract Background: The highly dimensional data produced by functional genomic (FG) studies makes i...
Background: Microarray data sets provide relative expression levels for thousands of genes for a sma...
Microarray data sets contain a wealth of information on the gene expression levels for thousands of ...
The very high dimensional space of gene expression measurements obtained by DNA microarrays impedes ...
Motivation: Microarray experiments typically analyze thousands to tens of thousands of genes from sm...
AbstractHigh-throughput technologies such as DNA microarray are in the process of revolutionising th...
Background: There are many methods for analyzing microarray data that group together genes having si...
The genomic revolution has resulted in both the development of techniques for obtaining large quanti...
In analysis of bioinformatics data, a unique challenge arises from the high dimensionality of measur...
Nowadays microarray technology enables scientists to monitor the expression levels of hundreds of th...
AbstractBy using principal components analysis (PCA) we demonstrate here that the information releva...
Biology has entered a challenging, information-intense period where computational experiments are co...
AbstractIn this investigation we used statistical methods to select genes with expression profiles t...
A common approach to molecular characterisation of microbial communities in natural environments is ...
We report a DNA microarray-based method for genome-wide monitoring of competitively grown transforma...