Abstract Background Microarray data sets provide relative expression levels for thousands of genes for a small number, in comparison, of different experimental conditions called assays. Data mining techniques are used to extract specific information of genes as they relate to the assays. The multivariate statistical technique of principal component analysis (PCA) has proven useful in providing effective data mining methods. This article extends the PCA approach of Rollins et al. to the development of ranking genes of microarray data sets that express most differently between two biologically different grouping of assays. This method is evaluated on real and simulated data and compared to a current approach on the basis of false discovery ra...
The purpose of many microarray studies is to find the association between gene expression and sample...
AbstractIn this investigation we used statistical methods to select genes with expression profiles t...
Background: There are many methods for analyzing microarray data that group together genes having si...
Background: Microarray data sets provide relative expression levels for thousands of genes for a sma...
Abstract Background: The highly dimensional data produced by functional genomic (FG) studies makes i...
Microarray data sets contain a wealth of information on the gene expression levels for thousands of ...
Motivation: Microarray experiments typically analyze thousands to tens of thousands of genes from sm...
Nowadays microarray technology enables scientists to monitor the expression levels of hundreds of th...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
Motivation: Gene set analysis allows formal testing of subtle but coordinated changes in a group of ...
The very high dimensional space of gene expression measurements obtained by DNA microarrays impedes ...
The advances known by Microarray technology have provided birth to enormous ameliorations and invest...
Abstract Background DNA microarrays are used to investigate differences in gene expression between t...
Motivation: The field of microarray data analysis is shifting emphasis from methods for identifying ...
In microarray data analysis, the comparison of gene-expression profiles with respect to different co...
The purpose of many microarray studies is to find the association between gene expression and sample...
AbstractIn this investigation we used statistical methods to select genes with expression profiles t...
Background: There are many methods for analyzing microarray data that group together genes having si...
Background: Microarray data sets provide relative expression levels for thousands of genes for a sma...
Abstract Background: The highly dimensional data produced by functional genomic (FG) studies makes i...
Microarray data sets contain a wealth of information on the gene expression levels for thousands of ...
Motivation: Microarray experiments typically analyze thousands to tens of thousands of genes from sm...
Nowadays microarray technology enables scientists to monitor the expression levels of hundreds of th...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
Motivation: Gene set analysis allows formal testing of subtle but coordinated changes in a group of ...
The very high dimensional space of gene expression measurements obtained by DNA microarrays impedes ...
The advances known by Microarray technology have provided birth to enormous ameliorations and invest...
Abstract Background DNA microarrays are used to investigate differences in gene expression between t...
Motivation: The field of microarray data analysis is shifting emphasis from methods for identifying ...
In microarray data analysis, the comparison of gene-expression profiles with respect to different co...
The purpose of many microarray studies is to find the association between gene expression and sample...
AbstractIn this investigation we used statistical methods to select genes with expression profiles t...
Background: There are many methods for analyzing microarray data that group together genes having si...